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Mechanisms of Betulinic acid‐induced cell death
Potze, L.
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Citation for published version (APA):Potze, L. (2015). Mechanisms of Betulinic acid‐induced cell death.
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Download date: 03 Jan 2020
Mechanisms of Betulinic acid-induced cell death
Lisette Potze
2015
Mechanism
s of Betulinic acid-induced cell death
Lisette Potze
Uitnodiging
Voor het bijwonen van de openbare verdediging van
het proefschrift:
Mechansisms of Betulinic acid-induced cell death
doorLisette Potze
Op dinsdag 24 novemberom 10.00 uur
in de AgnietenkapelOudezijds Voorburgwal 231
1012 EZ Amsterdam
Aansluitend bent u van harte welkom bij de receptie
in de Agnietenkapel
ParanimfenDaisy Picavet06-24920886
Danique ten Pas06-11283870
Lisette PotzeWeth. Insingerstraat 72
1107 XD Amsterdamlisette.potze@gmail.com
Mechanisms of Betulinic acid‐induced cell death
Lisette Potze
Mechanisms of Betulinic acid‐induced cell death
© 2015 Lisette Potze. Thesis University of Amsterdam, The Netherlands.
All rights reserved. No part of this thesis may be reproduced, stored or transmitted in any form or by any means, without the prior permission of the author, or, when applicable, of the publishers of the scientific papers.
ISBN: 978‐94‐6299‐201‐6
Printing: Ridderprint BV, the Netherlands
Lay‐out: Lisette Potze
About the cover: The author got inspired by the painting La Gerbe (1953) by H. Matisse. On the front
cover a caricature of the painting where instead of leaves the inner membrane of the mitochondria
are schematic represented. The different colors used, represent the different mechanisms of Betulinic
acid and the chapters in this thesis. Cover design by Lisette Potze and René Scriwanek.
The research described in this thesis was performed at the Center for Experimental and Molecular
Medicine (CEMM), Laboratory of Experimental Oncology and Radiobiology (LEXOR) at the Academic
Medical Center (AMC), University of Amsterdam (UVA), The Netherlands.
The research described in this thesis was supported by a grant of Stichting Nationaal Fonds tegen
Kanker. This support is gratefully acknowledged.
Printing of this thesis was financially supported by:
The Academic Medical Center Amsterdam, ABN Amro Bank, Rob & Gerda Potze.
Mechanisms of Betulinic acid‐induced cell death
ACADEMISCH PROEFSCHRIFT
ter verkrijging van de graad van doctor
aan de Universiteit van Amsterdam
op gezag van de Rector Magnificus
prof. dr. D.C. van den Boom
ten overstaan van een door het College voor Promoties ingestelde commissie,
in het openbaar te verdedigen in de Agnietenkapel
op dinsdag 24 november 2015, te 10.00 uur
door
Lisette Potze
geboren te Alkmaar
Promotiecommissie
Promotor:
Prof. dr. J.P. Medema Universiteit van Amsterdam
Copromotores:
dr. J.H. Kessler Universiteit van Amsterdam
dr. F.M. Vaz Universiteit van Amsterdam
Overige leden:
Prof. dr. C.J.F. van Noorden Universiteit van Amsterdam
Prof. dr. E.F. Eldering Universiteit van Amsterdam
Prof. dr. R.J.A. Wanders Universiteit van Amsterdam
Prof. dr. A.J. Verhoeven Universiteit van Amsterdam
Prof. dr. S. de Jong Rijksuniversiteit Groningen
dr. S.W.G. Tait University of Glasgow
Faculteit der Geneeskunde
“An expert is someone who has made all the mistakes which can be made, in a very
narrow field.”
Niels Bohr
aan mijn ouders
Table of contents Chapter 1
General introduction 9
Chapter 2
Betulinic acid‐induced mitochrondria‐dependent cell death 55
is counter balanced by an autophagic salvage response
Chapter 3
Betulinic acid induces a novel cell death pathway that 77
depends on cardiolipin modification
Chapter 4
Betulinic acid induces a rapid form of cell death in colon 107
cancer stem cells
Chapter 5
Improved identification of lipids using physico‐chemical properties: 127
application to lipidomics analysis of Betulinic acid treatment
Chapter 6
General discussion 147
Annexes
Summary 165
Nederlandse samenvatting 171
Dankwoord/Words of gratitude 179
Curriculum Vitae 189
Portfolio 193
Publication list 197
Chapter 1
Introduction
"Begin at the beginning," the King said gravely, "and go on till you come to the end; then
stop."
Lewis Carroll, Alice in Wonderland
Introduction
11
1. Cancer
Cancer is a group of diseases characterized by unregulated cell growth and the invasion and
spread of cells from the site of origin, or primary site, to other sites in the body. Cancer has
defects in regulatory circuits that control normal cell proliferation and homeostasis,
resulting in uncontrolled expansion of cells. Processes that contribute to the overall net cell
number are cell proliferation and elimination of cells by programmed cell death (discussed
below). Cancer is a genetic disease, where mutation in oncogenes (genes that have
dominant gain of function due to mutation, amplification and/or overexpression) and tumor
suppressor genes (genes with recessive loss of function mutations, deletion and/or
epigenetic silencing of these genes) dictate the defects in cellular expansion.(1, 2) In 2000,
Hanahan and Weinberg proposed that cancer arises through a multistep, mutagenic process
in which oncogenes and tumor suppressor genes play an important role, whereby cancer
cells acquire essential alterations (hallmarks) in the physiology of the cell that combined
result in malignant growth.(3) These hallmarks include self‐sufficiency in growth signals,
insensitivity to anti‐growth signals, tissue invasion and metastasis, limitless replicative
potential, sustained angiogenesis and evasion of apoptosis. Conceptual progress has been
made after the description of the first hallmarks and therefore a decade after these
descriptions were proposed, Hanahan and Weinberg added two additional characteristics
and two emerging hallmarks. These include: deregulated cellular energetics, evasion of anti‐
cancer immunity, tumor promoting‐inflammation and genome instability and mutation.(4)
The hallmarks of cancer have attributed to our understanding of the disease and are a
potential target for the treatment of cancer.
In this introduction we will focus on the following hallmarks: evading apoptosis and
deregulated cellular energetics. We provide an overview of cell death mechanisms and how
these are altered in cancer, followed by an overview of cell metabolism and its alterations
occurring in cancer.
2. Programmed cell death
Programmed cell death (PCD) is an evolutionary highly conserved fundamental biological
process. PCD removes old needless cells during tissue formation thereby maintaining tissue
homeostasis. Homeostasis is needed to keep internal conditions stable and relatively
constant. To maintain homeostasis, PCD also removes damaged or abnormal cells. Several
forms of PCD exist and the last few years more accurate definitions of these cell death
pathways have been postulated by the Nomenclature Committee on Cell Death (NCCD).
These definitions are based on molecular characteristics instead of the classical
morphological traits and include extrinsic apoptosis, caspase‐dependent or caspase‐
independent intrinsic apoptosis, autophagic cell death, regulated necrosis and mitotic
catastrophe.(5) Apoptosis is a cell autonomous program of damaged or stressed cells
Chapter 1
12
resulting in ‘organized’ cell death which can be executed by two distinguishable pathways:
the extrinsic pathway and the intrinsic pathway.
2.1. Extrinsic apoptosis
The extrinsic pathway, also known as death receptor pathway, is activated by binding of a
so‐called death ligand to its receptor belonging to the tumor necrosis factor (TNF)
superfamily. Members of the TNF family share similar cysteine‐rich extracellular domains
and have a cytoplasmic domain about 80 amino acids in size called the death domain.(6) The
best characterized ligands are FasL/CD95L, TNF‐alpha and TNF‐related apoptosis inducing
ligand (TRAIL). The corresponding receptors are Fas/CD95, TNFR1‐2 and TRAILR 1‐4,
respectively.(5, 7‐9) Binding of a death receptor ligand to its receptor results in the
recruitment of adaptor protein Fas‐associated death domain (FADD) and in case of TNFR‐1
like proteins, TNFR‐associated death domain (TRADD) is first recruited followed by FADD.(10)
Besides FADD and TRADD, cellular inhibitor of apoptosis proteins (cIAPs), cellular FADD‐like
interleukin‐1β‐converting enzyme (FLICE)‐like inhibiting proteins (cFLIPs), receptor‐
interacting protein kinase 1 (RIPK1 also known as RIP1 ), E3 ubiquitin ligases and pro‐
caspase‐8 and pro‐caspase‐10 are recruited to the death domain.(5) The resulting complex,
named ‘death‐inducing signaling complex (DISC), constitutes a platform that regulates the
activation of caspase‐8 and caspase‐10.(5, 11, 12) Depending on cell type (type 1 or type 2 cells)
two different routes of further downstream pathways are known.(13, 14) In type 1 cells, active
caspase‐8 directly activates caspase‐3 and thereby trigger the executioner phase. In type 2
cells, caspase‐8 mediates the cleavage of BH3 interacting domain death agonist (BID) this
results in the generation of truncated BID, wich translocates to the mitochondria and
releases cytochrome c and results in mitochondrial outer membrane permeabilization
(MOMP).(5) These pathways are tightly regulated. At the level of DISC inhibitory proteins like
cFLIPs and cIAPs can prevent the recruitment of procaspase‐8 by competitive binding to the
death domain of FADD or by inhibition of caspase‐8 activation within the cFLIP‐containing
DISC.(10) In type 2 signaling, apoptosis can, in addition to regulation at the DISC, be regulated
by anti‐apoptotic BCL2 proteins like BCL2 or BCL‐XL to block the truncated BID‐mediated
apoptosis. Another route of inhibition is by inhibitor of apoptosis proteins (IAPs), which
prevents caspase‐9 activation.(10) These inhibitory proteins themselves are counteracted by
mitochondrial proteins such as SMAC/DIABLO. More information about mitochondrial
involvement in apoptosis and the proteins involved is described below.
2.2. Caspase‐dependent and caspase‐independent intrinsic apoptosis
Intrinsic apoptosis is triggered by intracellular stress signals such as growth factor
withdrawal, DNA damage, oxidative stress or oncogene activation.(15) Intrinsic apoptosis is
defined as a cell death process that is mediated by mitochondrial outer membrane
permeabilization (MOMP) and is consequently associated with loss of mitochondrial
Introduction
13
transmembrane potential, release of mitochondrial intermembrane space proteins (i.e
cytochrome c) into the cytosol and loss of mitochondrial respitory chain activity.(5)
Currently it is still debated how cytochrome c is released from the mitochondria, however
it is known that the release is tightly regulated by the B cell CLL/lymphoma‐2 (BCL‐2) family
proteins which consists of pro‐apoptotic proteins and pro‐survival proteins.(15, 16) The BCL‐2
family is a large set of proteins which al contain at least one conserved BCL‐2 homology (BH)
domain. The anti‐apoptotic proteins (BCL‐2, BCL‐XL, BCL‐W, Mcl1 and A1) share four BCL‐2
homology domains (BH1–BH4) among each other, with the exception of Mcl‐1 that contains
only three BH domains.(17) The anti‐apoptotic proteins are generally integrated within the
outer mitochondrial membrane (OMM) but can also found in the cytosol and endoplasmic
reticulum.(18)
The pro‐apoptotic BCL2 family members can be divided into two groups: BAX like molecules
(BAX, BAK, BOK, BCL‐G and BFK, also known as effector proteins) which contains multiple
(at least two) BH domains (BH1, BH2, BH3 and BH4).(16, 18) The second group of proteins are
the BH3‐only proteins (amongst others: BID, BIM, BAD, PUMA (p53 upregulated modulator
of apoptosis), Noxa, BIK, HRK and BMF) which share only the BH3 domain.(17)
In initiation of intrinsic apoptosis, BAK/BAX activation is crucial. Oligomerization of BAK/BAX
results in proteolipid pores within the OMM and thereby promote MOMP with subsequent
cytochrome c release. Combined deletion of BAK/BAX prevents release of cytochrome c and
results in resistance to all death stimuli of the intrinsic apoptosis pathway.(19) BH3 only
proteins are cell death initiators, which are activated by transcriptional or posttranslational
mechanisms in a tissue‐restricted and signal specific manner.(20‐22) They act upstream of
BAK/BAX and can be subdivided based on their ability to interact with the anti‐apoptotic
proteins or both anti‐apoptotic as well as BAK like molecules (the effectors). BH3‐only
proteins that only bind and inhibit the anti‐apoptotic proteins are called “sensitizers” or
“de‐repressors” (BAD, BIK, Noxa and HRK), while BIM, BID and PUMA, known as
“activators”, can bind the anti‐apoptotic proteins as well as directly bind to BAK/BAX and
inducing oligomerization and MOMP.(18, 23) Each sensitizer/de‐repressor protein has a
unique binding profile for the anti‐apoptotic proteins. Sensitization lowers the threshold for
the activation of BAK/BAX and MOMP, but does not cause apoptosis itself. In de‐repression,
a direct activator is bound by an anti‐apoptotic protein, and a subsequent BH3‐only protein
releases the activator to promote MOMP.(18)
Upon MOMP, the released cytochrome c binds apoptotic protease activating factor 1 (APAF‐
1), inducing its conformational change and oligomerization leading to the formation of a
caspase activation platform called the apoptosome. The apoptosome recruits, dimerizes
and activates caspase 9 (an initiator caspase), which can cleave and activate caspase 3 and
caspase 7 and results in apoptosis.(24) MOMP results also in the release of mitochondrial
release of second mitochondria‐derived activator of caspase (SMAC, also known as DIABLO)
Chapter 1
14
and OMI (also known as HTRA2) which block X‐linked inhibitor of apoptosis protein (XIAP)‐
mediated inhibition of caspase activity.(24‐27)
Tumor suppressor protein p53
Upon cell stress and DNA damage, a tumor suppressor gene called p53 is activated, and has
several downstream effects including cell cycle arrest, DNA repair, inhibition of
angiogenesis and apoptosis. With these effects the cells get a chance to repair the damage.
p53 induces the expression of genes that encode for death receptors and pro‐apoptotic
proteins (i.e. Fas receptor, BAK and BAX)(28‐31) while on the other hand it represses the
expression of anti‐apoptotic proteins (i.e. BCL‐2, BCL‐XL and IAPs) The pro‐apoptotic protein
PUMA is a direct target of p53.(32) It has been proposed that p53 can also induce apoptosis
independently of its transcriptional activity by activating BAX in the cytoplasm and
subsequent cytochrome c release.(33) Taken together one can conclude that p53 is a key
regulator in apoptosis signaling.
Figure 1: Apoptotic signaling. Induction of apoptosis by the extrinsic pathway depends on the binding of
ligand to its receptor. A death‐inducing signaling complex is formed and active caspase 8 generated, which
can be inhibited by high levels of c‐FLIP. Crosstalk between extrinsic and intrinsic pathway can occur through
BID cleavage, which leads to activation of the pro‐apoptotic BCL2 family proteins BAX and BAK, resulting in
MOMP. The intrinsic apoptosis pathway depends on MOMP and apoptosome formation which results in
caspase 3 activation and apoptosis. Intrinsic apoptosis is tightly regulated by the balance between the anti‐
apoptotic and pro‐apoptotic members of the BCL‐2 family. Abbreviations: APAF1, apoptotic protease‐
activating factor 1; DISC, death‐inducing signaling complex; FADD, Fas‐associated protein with death
domain; c‐FLIP, cellular FLICE‐like inhibitory protein; FasL, Fas ligand; MOMP, mitochondrial outer
membrane permeabilization; SMAC, second mitochondria‐derived activator of caspase; XIAP, X‐linked
inhibitor of apoptosis protein.
Extrinsic pathway
Intrinsic pathway
Procaspase 8 Caspase 8
c-FLIP
BID
tBID BAX BAK
BCL2 BCL-XL
Procaspase 3
Caspase 3
Apoptosis
MOMP
Procaspase 9 APAF-1
Cytochrome cApoptosome
Caspase 9
SMACXIAP
FasL
Fas
FADD
Introduction
15
2.3. Autophagy
Autophagy is a highly conserved cellular proteolytic (lysosomal) degradation process in
which cytosolic components are first encapsulated by a membrane and subsequently
degraded in the lysosome, thereby providing new building blocks for the cell and is typically
induced upon nutrient starvation. In cells without stress, basal levels of autophagy take
place to perform homeostatic functions such as protein and organelle turnover.
There are three forms of autophagy which are mediated by distinct mechanisms. In
chaperone‐mediated autophagy, targeted proteins are translocated across the lysosomal
membrane in a complex with chaperone proteins (i.e. Hsc‐70) that are recognized by the
lysosomal membrane receptor lysosomal‐associated membrane protein 2A (LAMP‐2A),
resulting in their unfolding and degradation.(34, 35) In contrast, micro‐ and macroautophagy
involves the sequestration of cargo (both selective and non‐selective mechanisms) via a
sequestering membrane. In microautophagy the sequestration of cytosolic components
occurs directly by the lysosomes, while in macroautophagy the cargo is sequestered within
a unique double membrane cytosolic vesicle (an autophagosome) which later on fuses with
a lysosome for degradation of the cargo.(36, 37) Selective degradation involves targeting
specific cargoes (i.e. organelles (i.e. damaged mitochondria) or invasive microbes).
Macro autophagy starts with an isolated membrane (phagophore), which is suggested to be
derived from lipid bilayer contributed by endoplasmic reticulum, trans‐Golgi system and
endosomes.(38) The phagophore expands so it can engulf cytosolic cargo (i.e organelles,
ribosomes, protein aggregates) to form a double‐membraned autophagosome.(39) The
autophagosome fuses with a lysosome, promoting degradation of the cargo by lysosomal
proteases. The resulting amino acids and other by‐products of degradation are released to
the cytosol via lysosomal permeases and lysosomal transporters where they can be used as
building blocks.(39) Canonical autophagy involves five steps where autophagy related
proteins play an important role: (1) initiation (which depends on ULK1 complex (ULK1,
ATG13 and ATG17) and receives stress signals from mTOR complex 1), (2) nucleation (which
depends on the BECLIN1–PtdIns3KC3–ATG14L complex), (3) elongation and closure of
autophagosome (which depend on ATG12–ATG5 (including ATG7) and LC3–PE conjugation
systems), (4) recycling (which depends on ATG9) and (5) degradation by fusion to the
lysosome.(40) The formation of functional autophagosomes can bypass some of these steps,
although these alternative mechanisms are currently under debate and are named non‐
canonical autophagy. There are some forms of non‐canonical autophagy pathways that
have been identified under certain cellular circumstances: one that bypasses the proteins
involved in elongation and closure (ATG7, ATG5 and LC3) and others that bypass proteins
that are important for initiation (ULK1) and nucleation (BECLIN1). (reviewed in (40) )
The capacity for large scale degradation carries a certain risk for cells, as unregulated
degradation of cytoplasm or organelles is likely to be lethal.(37) Therefore induction of
Chapter 1
16
autophagy is tightly regulated by several proteins. Two evolutionarily conserved nutrient
sensors play a role in autophagy regulation: (1) the mammalian target of rapamycin (mTOR)
kinase which under normal conditions inhibits autophagy). When mTORC1 kinase activity is
inhibited autophagosome formation occurs.(41, 42) Second the eukaryotic initiation factor 2α
(eIF2α) kinase Gcn2 and its downstream target Gcn4 (a transcriptional transactivator of
autophagy genes) turn on autophagy during nutrient depletion.(43) Also p53 plays a role in
regulating autophagy. As a transcription factor in the nucleus it can activate proteins (i.e
DRAM) which activates autophagy.(44)
Figure 2: An overview of several forms of autophagy. Macroautophagy, microautophagy and chaperone
mediated autophagy are depicted. See text for detailed information.
2.4. Autophagic cell death
The definition of autophagic cell death (according to NCCD) is cell death that is mediated by
autophagy and as such can be suppressed by the inhibition of the autophagic pathway by
genetic means (gene knockout or RNA interference for i.e. ATG5, ATG12)) and/or chemicals
(i.e., agents that target VPS34).(5) Certain dying cells display the morphological hallmarks of
autophagy, however the question whether autophagy has a causative role in cell death has
been debated. It has been suggested that under specific circumstances that depend on the
nature of the stimulus, the duration and its amplitude, extensive autophagy may cause cell
death.(45) The discovery of chemical compounds (i.e 3‐ methyladenine (3‐MA) and
wortmannin) that can inhibit autophagy resulted in several reports about autophagic cell
death. These reports describe the existence of a caspase‐independent cell death which
Cytosolic chaperone complex
Cytosolic protein
CMA
LAMP-2A
Microautophagy
Macroautophagy
Phagophore
Autophagosome
Lysosome
Introduction
17
proceeded with an accumulation of autophagosomes and increased lysosomal activity, and
using the inhibitors of autophagy a reduction in cell death was observed. For example, a
study using oncogenic Ras‐induced death of glioma or gastric cells showed cell death in the
absence of caspase activation, which was not inhibited by the overexpression of anti‐
apoptotic BCL‐2 protein.(46) Another study showed reduced cell death using 3‐MA for anti‐
estrogen induced cell death in MCF‐7 cells.(47) However, in these studies, autophagy
occurred in cells thought to die by apoptosis, and it was presumed that autophagy triggered
apoptosis, instead of playing a causative role. Moreover, 3‐MA is not specific for class III
PI3K kinases and can inhibit other kinases as well as inhibiting the permeability transition in
mitochondria.(48) Thus, it is not possible to directly implicate autophagy in death execution
from these 3‐MA inhibitor studies. A different approach was taken with RNA interference
(RNAi) of two ATG genes, ATG7 and BECLIN1, this resulted in cell death in mouse L929 cells
and in macrophages when caspase inhibitor zVAD was used.(49, 50) RNAi against ATG5 and
BECLIN1 resulted in an inhibition in cell death in BAK/BAX knock out murine embryonic
fibroblasts (MEFs) treated with etopside or staurosporin.(51) Notably, in these studies,
apoptosis was blocked and the ATG gene RNAi blocked the cell death. These findings
exclude that autophagy is triggering apoptosis, nonetheless they raise the question if
autophagy could be a cell death mechanism is cells whose apoptotic machinery is intact.(52)
In etopside‐treated wild type MEFs (which die via apoptosis) only small amounts of
autophagy were detected and inhibition of autophagy by 3‐MA did not reduce the etopside‐
induced cell death. This indicates that autophagy cannot perform cell death induction
unless apoptosis is blocked.(51) It could be that cells prefer to die via apoptosis but will die
by an alternative route if the stimuli is harsh enough.(53) A different possibility is that
apoptotic cell death is faster than autophagic cell death and therefore the last one is
observed only in apoptotic deficient cells.(52) So up to now it is still debatable if autophagic
cell death occurs in cells which have intact apoptosis.
2.5. Regulated necrosis
Necrosis is a form of passive cell death that is induced upon strong insults such as
mechanical injury of cells. Typical features include swelling, rupture of organelle
membranes as well as the outer cell membrane and as a result the cell contents are
released, often causing inflammation in vivo.(54) In the past, necrosis has been considered
as an accidental cell death mechanism defined by the absence of morphological
characteristics of apoptosis and autophagy.(55) However, several laboratories have now
shown that necrosis can occur in a regulated manner.(56) Under selected circumstances
regulated necrosis can be induced by several triggers like excitotoxins, ligation of death
receptors and alkylating DNA damage.(57‐60) Regulated necrosis was first described that it
include caspase inhibition (especially caspase‐8) by pharmacological agents (i.e., chemical
caspase inhibitors like Z‐VAD‐fmk) or genetic manipulations (i.e., RNA interference or gene
knockout), followed by a block in degradation of receptor interacting protein 1 (RIP1) and
Chapter 1
18
RIP3. The latter two proteins in turn form a multiprotein complex called the nescrosome,
which further activates players for execution of necrotic cell death.(56) However later
research showed that regulated necrosis does not occur only in caspase‐incompetent cells
upon the activation of the receptor interacting protein 1 (RIPK1) homolog RIPK3. There are
multiple molecular circuits that can drive regulated necrosis including (but not limited to)
necroptosis (RIP1 dependent, inhibitable by necrostatin 1 form of TNFR1 induced regulated
necrosis), mitochondrial permeability transition (MPT)‐dependent regulated necrosis (relies
on cyclophylin D, reviewed in (61)), and parthanatos (a non‐apoptotic cell death subroutine
that critically relies on the (hyper)activation of poly(ADP‐ribose) (PAR) polymerase 1
(PARP1).(62, 63) Over the past years it has become clear that regulated necrosis plays a role in
physiological scenarios (e.g., embryonic development) and pathological settings (e.g.,
ischaemic injury, neurodegeneration and viral infection). This led to the suggestion that
patients might benefit from pharmacological modulation of regulated necrosis.(11, 56, 64)
2.6. Lysosomal cell death
Lysosomes are the main compartment for intracellular degradation and subsequent
recycling of cellular constituents. The degradation is carried out by a number of acid
hydrolases (i.e phosphatases, nucleases, glycosidases, proteases, peptidases, sulfatases and
lipases) capable of digesting all major cellular macromolecules.(65, 66) The best‐studied
lysosomal hydrolases are the cathepsin proteases. Based on their active site amino acid, i.e.
cysteine (B, C, H), aspartate (D and E) and serine (G) cathepsins they are divided into three
subgroups.(67) Lysosome membrane permeabilization and the consequent leaking of
hydrolases (mainly cathepsin proteases) into the cytosol, can initiate the intrinsic apoptosis
pathway (68) but also can trigger caspase‐independent non‐apoptotic cell death pathway,
indicating that the lysosomal hydrolases can act as initiators as well as effectors of PCD.(66, 69, 70) This form of cell death where lysosomal hydrolases are the key activation step is called
lysosomal cell death.(66, 71) Although the induction of lysosomal cell death is clearly distinct
from necrosis and apoptosis, the execution phase is similar.
The function of lysosomal cathepsin proteases is not limited to intralysosomal protein
turnover and degradation of extracellular matrix when secreted. The last years many
specific functions of the cathepsin proteases have been discovered. These specific functions
include roles in cell death, bone remodeling, antigen presentation, epidermal homeostasis,
angiogenesis and cancer cell invasion.(66, 72‐75)
In cancer, cysteine cathepsins (i.e. B, C, H) are upregulated by a variety of mechanisms like
gene amplification, transcription regulation, post‐transcriptional modifications and
epigenetic regulation.(76) Trafficking and subcellular localization of these cysteine cathepsins
changes during neoplastic progression, resulting in active and inactive forms which have
pro‐oncogenic effects. The enhanced secretion of these cathepsins initiate tumor growth,
migration, invasion, angiogenesis and metastasis that increase neoplastic progression. This
role of cathepsins in cancer has been well studied in vitro and in vivo. (reviewed in (76)) At
Introduction
19
the same time the upregulation of these cathepsins may sensitize cells towards the
lysosomal cell death pathway. Especially cell death could occur in tumor cells with several
defects in the classical apoptosis pathways.(77)
Cancer cells have developed several strategies to protect them from lysosomal membrane
permeabilization and the acid hydrolases leaking into the cytosol. One strategy is
upregulation of lysosomal protease inhibitors, the best characterized inhibitors are the
squamous cell carcinoma antigens (SCCA) 1 and 2. SCCA 1 and 2 are tumor‐associated
proteins which can inhibit serine proteases and whose levels are used in diagnosis of
squamous cell carcinoma.(78) Cysteine cathepsins can be inhibited by cystatin A and B and
serine protease inhibitor 2A.(66, 79, 80) In cystatin B‐deficient mice an increase in apoptosis
was observed, demonstrating the importance of these inhibitors in preventing cell death.(81)
A second strategy is upregulation of heat shock protein 70 (Hsp70), heat shock proteins are
molecular chaperones that interact with several proteins to assist in their folding, stability
and function. Hsp70 stabilizes lysosomes by binding to phospholipid bis‐(monoacylglycero)‐
phosphate (BMP), which is highly present in intraluminal membranes of the lysosomes.(70,
82, 83) BMP is a well described docking lipid for enzymes and cofactors involved in lysosomal
degradation of sphingolipids.(82) One of these enzymes is acid sphingomyelinase (ASM),
which activity depends on its recruitment to the intralysosmal membranes by BMP (84), and
plays a crucial role in the Hsp70‐mediated stabilization of lysosomes.(83) Hsp70 mediates an
increase in ASM activity, which leads to higher lysosomal ceramide content and increased
lysosomal stability.(70) How Hsp70 affects the stability of the lysosome is still unclear but the
hypothesis is that the change in lipid composition of the intralysosomal membranes has an
influence on the stability of the entire lysosome. It could be that an ASM dependent
increase of ceramide alters the properties of membranes in such a way that it has a positive
effect on the stability of the outer membrane.(70)
In light of the dependence on these survival strategies further elucidation of these
mechanisms controlling lysosomal membrane stability could lead to potential cancer drug
targets.
3. Cell death in cancer
3.1. Apoptosis and cell death
The transforming effects of proto‐oncogenes (i.e. Myc) that mediate unrestrained cell
proliferation are countered by “intrinsic tumor suppressor mechanisms” that most often
trigger apoptosis.(85) Defects in the apoptotic machinery play an important role in
oncogenesis, allowing neoplastic cells to survive over intended lifespans, subverting the
need for exogenous survival factors and providing protection from oxidative stress and
hypoxia as the tumor mass expands.(86) Apoptosis defects are considered an important
complement of pro‐oncogene activation, as many deregulated oncoproteins (i.e. Myc,
Cyclin‐D1) that drive cell division also trigger apoptosis.(87) For example, Myc constantly
Chapter 1
20
induces cell proliferation and apoptosis. To facilitate myc‐driven tumorigenesis, inhibition
of apoptosis (e.g., loss of function of p53 or overexpression of BCL2) is required.(85)
Mutations that affect the extrinsic pathway of apoptosis are for example mutations in death
receptor genes. Epigenetic silencing of death receptors occur like epigenetic silencing of
TRAIL‐R1 results in apoptosis resistance in gliomas(88) and ovarian cancer.(89) Furthermore,
cFLIP is overexpressed in many tumors and thereby block caspase 8.(90, 91) Beside blocking
of caspase‐8, loss of caspase‐8 expression (i.e. by epigenetic silencing or loss of
heterozygosity (LOH)) has been observed.(92) Downregulation/loss of Fas expression has
been also found in a variety of tumors including melanoma, lung adenocarcinomas and
esophageal cancer.(93‐95)
A well‐known alteration in the resistance to intrinsic apoptosis are mutations in the tumor
suppressor gene p53. This results in loss of induction of BAX and PUMA and to some extent
NOXA and as a consequence a block in apoptosis.(96)
Next to loss of p53‐dependent apoptosis, overexpression of anti‐apoptotic BCL‐2 or BCL‐XL
probably occurs in more than half of all cancers(97), rendering tumor cells resistant to
apoptotic stimuli, including most cytotoxic anticancer drugs. Cancer cells can acquire
resistance to apoptosis by down regulation or mutation of pro‐apoptotic proteins such as
BAK and BAX. For example, haploid loss of BAX results in accelerated tumor progression in
breast cancer mice models (98) and in myc‐mediated lymphogenesis.(99) In tumors with
microsatellite instability, several mutation in BAX are observed leading to decreased
apoptosis and thus increased tumor progression.(100, 101) In general, cancer cells have
acquired many different mutations that result in a diminished or complete block in
apoptosis, thereby promoting tumor progression.
3.2. Autophagy and cancer
The regulation of autophagy overlaps closely with signaling pathways that regulate
tumorigenesis. Tumor suppressor genes like p53, PTEN, TSC1 and TSC2 involved in the
upstream inhibition of mTOR signaling, can stimulate autophagy. In contrast oncogene
products like class I PI3K, AKT and BCL‐2 can activate mTOR signaling and inhibit
autophagy.(102, 103) In cancer, anti‐apoptotic proteins BCL‐2 and BCL‐XL are upregulated in
many tumors and they inhibit autophagy by binding to the BECLIN‐1 autophagy protein.(104,
105) In 40‐75% of the cases of human ovarian, prostate and breast cancer one allele of
BECLIN‐1 is deleted. This is important in oncogenesis because mice with heterozygous
disruption of BECLIN‐1 have a diminished autophagy and were more prone to develop
tumors.(106, 107) These data suggest that autophagy acts as a tumor suppressive mechanisms,
however the mechanism by which autophagy functions in tumor suppression is still unclear.
Autophagy also plays a role genomic stability, mono‐allelic or bi‐allelic loss of BECLIN‐1 or
ATG5 results in increased DNA damage, gene amplification and aneuploidy in parallel with
increased oncogenesis.(108) For the mechanism behind this more research is needed.
Introduction
21
3.3. Necrosis and cancer
In (regulated) necrosis cells release many pro‐inflammatory signals to the surrounding,
resulting in recruitment of immune inflammatory cells(109), which have been shown to
actively promote tumorigenesis by fostering angiogenesis and cancer cell proliferation and
invasiveness.(4) On top of that, necrotic cells release bioactive regulatory factors (i.e IL‐1α)
which can directly stimulate the microenvironment to proliferate facilitating neoplastic
progression.(110)
Thus in general, cancer cells can make evasive adaptations in all different cell death
mechanisms or use them to their benefit. These alterations render the cells to resistance to
conventional therapies like chemotherapy and radiotherapy.
4. Metabolism
Activation of oncogenes and the loss of tumor suppressor genes promote metabolic
reprogramming in cancer. This hallmark of cancer cells is mirrored in enhanced nutrient
uptake to supply energy and building blocks for biosynthetic pathways. Moreover, cancer
cells are typified by their ability to exhibit metabolic flexibility to sustain their growth and
survival when nutrients are limited.(111) Over the last decade, researchers started to unravel
the precise mechanisms behind the multitude of metabolic changes observed in cancer
cells. This has been and still is a formidable task as cellular metabolism in eukaryotes is a
complex system with more than 5000 metabolic reactions catalyzed by more than 10.000
enzymes.(112) and www.genome.jp/kegg) Metabolism pathways are divided into two main
categories, which are energy metabolism pathways (such as glycolysis, Krebs cycle, fatty
acid oxidation and oxidative phosphorylation) and biosynthesis pathways (such as lipid and
fatty acid synthesis and biosynthesis of nucleotides via the pentose phosphate pathway).
4.1. Energy metabolism
Adenosine triphosphate (ATP) is an energy carrier in all mammalian cells. Cells produce ATP
via multiple pathways. Exogenous glucose is via glycolysis converted to pyruvate, resulting
in a net gain of two ATP molecules. In the absence of oxygen, pyruvate is further
metabolized to lactate without a further gain in ATP molecules. In the presence of oxygen,
pyruvate is converted into acetyl CoA and this product can enter the citric acid cycle (also
known as Krebs cycle), which is a continuous cycle where acetyl CoA and oxaloacetate are
processed by 8 different enzymes. The first conversion is to citrate followed by processing
to cis‐Aconitate, isocitrate, which is further oxidized to oxalosuccinate and converted to α‐
ketoglutarate. α‐ketoglutarate is processed to succinyl‐CoA, then to succinate. Succinate
dehydrogenase converts succinate into fumarate, which is then processed into l‐malate.
The final step involves the oxidation of l‐malate into the starting product oxaloacetate,
which can then with a new molecule acetyl CoA restart the cycle. The crucial product of the
Chapter 1
22
Krebs cycle is NADH and FADH2 which are used to generate ATP via oxidative
phosphorylation. Via glycolysis and the Krebs cycle the breakdown of one glucose molecule
results in a total of 36 ATP molecules.
Next to glucose other biomolecules can enter the Krebs cycle and tumor cells utilize another
source for energy production via the so called glutaminolysis pathway. This pathway shunts
glutamine via glutamate into the Krebs cycle at the level of α‐ketoglutarate and can
therefore also generate NADH and FADH2.
4.2. Biosynthesis
Dividing cells need nucleotides, lipids and amino acids to create new DNA, membranes and
proteins. The pentose phosphate pathway (PPP) produces ribose‐5‐phosphate, which can
be used to create nucleic acids and nucleotides. Fatty acids from exogenous sources can be
taken up by cells via fatty acids transporters(113) or are synthesized de novo, which under
physiological conditions occurs mainly in the liver and to a lesser extent in adipose tissue
and in lactating breast.(114) Acetyl‐CoA gets carboxylated by acetyl‐CoA carboxylase (ACC) to
form malonyl‐CoA. The malonyl‐CoA is further converted by fatty acid synthase (FASN) to
saturated long chain fatty acids.(115) The maximum length of de novo synthesized fatty acids
via this pathway contains 16 carbon atoms (palmitate C16:0). These fatty acids can undergo
modifications to be elongated into longer fatty acids by fatty acid elongases or can be
desaturated by stearoyl CoA desaturase 1 (SCD‐1) to create unsaturated fatty acids.
Unsaturated fatty acids are essential components of cell membranes and desaturation of
fatty acids occurs to maintain a healthy pool of fatty acids. These processes are regulated
by sterol regulatory element binding proteins (SREBPs), a family of transcription factors that
regulate lipid homeostasis by controlling the expression of a range of enzymes (ATP‐citrate
lyase (ACL), ACC and FASN) required for endogenous cholesterol, fatty acid (FA),
triacylglycerol and phospholipid synthesis.(116) SREBPs are regulated by SREBP cleavage
activating protein (Scap) and ER‐resident protein Insig. In a sterol rich environment, Scap
binds to cholesterol in the ER membrane and to Insig. This retains the SREBP‐Scap complex
in the ER. In sterol low conditions, Scap no longer binds Insig and the SREBP‐Scap complex
is sorted into COPII‐coated vesicles to the Golgi, where SREBP is proteolytic cleaved by site1
(S1P) and site 2 (S2P) proteases which results in the release of the N‐terminal transcription
factor.(117)
Fatty acids can also be a source of energy, when fatty acids are degraded via β‐oxidation to
generate acetyl‐CoA. When acetyl‐CoA enters the Krebs cycle energy is produced as
described above.
Introduction
23
Figure 3: Overview of cell metabolism. The main metabolic pathways that contribute to the production of
macromolecules in mammalian cells are nucleotide synthesis, the pentose phosphate pathway,
glutaminolysis, cholesterol synthesis, fatty‐acid synthesis and desaturation and elongation. The enzymes
involved in these pathways are shown in bold. See text for more detail. Abbreviations: ACC, acetyl‐CoA
carboxylase; ACL, ATP citrate lyase; ACO, aconitase CoA; coenzyme A; CS, citrate synthase; ELOVL6, fatty
acid elongase 6; FASN, fatty‐acid synthase; F1,6BP, fructose‐1,6‐ bisphosphate; F6P, fructose‐6‐phosphate;
FH, fumarate dysratase; GLS, glutaminase; G6P, glucose‐6‐phosphate; G6PD, G6P dehydrogenase; HK,
hexokinase; HMGCR, 3‐hydroxy‐3‐methylglutaryl‐CoA reductase; IDH, isocitrate dehygronease; MDH,
malate dehydrogenase; PDHK1, pyruvate dehydrogenase kinase; PEP, phosphoenolpyruvate; PFK,
phosphofructokinase; PKM2, pyruvate kinase M2; PL, phospholipids; SCD‐1, stearoyl‐CoA desaturase 1;
SDH, succinate dehygrogenase TAG, triacylglycerides.
4.3. Energy metabolism and cancer
Over time, more evidence appeared showing the importance of a shift in cellular
metabolism in cancer cells. The first discovery of a necessary metabolic alteration has been
made > 80 years ago by Otto Warburg. He observed that glycolysis is upregulated in tumor
cells even if enough oxygen in the surrounding of the cells is available to create ATP. This
phenomenon was coined the Warburg effect.(118, 119) This very fast but inefficient way to
produce energy might constitutes an advantage for tumor growth. Firstly, cells that rely on
oxidative phosphorylation need a constant flux of oxygen. In tumors hypoxic circumstances
with fluctuating oxygen levels are omnipresent. By upregulating glycolysis tumor cells are
not harmed by these oxygen fluctuations.(120‐122) Secondly, the Warburg effect leads to the
Glucose
G6P
F6P
F1,6BP
Glyceraldehyde-3-P
PEP
3-Phosphoglycerate
Pyruvate
Ribulose-5-P
Pentose phosphate pathway
HK
Glycerol-3-P Phosphatidic acid
Acetyl-CoA
Citrate
Isocitrate
Succinate
Fumarate
Oxaloacetate
Malate Krebscycle
α-KG
Citrate Acetyl-CoAACL
Malonyl-CoAACC
HMGCRMevalonate
Cholesterol
Cholesterol synthesis
FASN
Palmitate
Stearate
ELOVL6
SCD-1
G6PD
PKM2
Glutamate
Glutamine
GlutaminolysisGLS
Fatty-acid synthesis
Elongation
Desaturation
PFK1
SDH
FH
MDHCS
ACO
IDH2/3
TAG PL
Palmitoleic acid Oleic acid
SCD-1
Desaturation
Chapter 1
24
production of a high level of lactate acids. These acids are suggested to condition the
microenvironment of the tumor, favor tumor invasion and suppress anti‐cancer immune
effectors.(120, 123‐125) Third, cancer cells use intermediates of the glycolytic pathway i.e. ribose
sugars for nucleotides, glycerol and citrate for lipids, nonessential amino acids and via the
pentose phosphate pathway NADPH.(120, 126, 127)
In glycolysis, hexokinases catalyzes the essentially irreversible first step in this pathway
where glucose is rapidly phosphorylated to glucose‐6‐phosphate. Hexokinases are strongly
upregulated in cancer.(128) Hexokinase (HK)‐II is located in the mitochondria and bound to
the outer membrane via the voltage‐dependent anion channel (VDAC). HK‐II binds ATP
(brought to HK‐II by VDAC) and the glucose to produce glucose‐6‐phosphate. Tumor cells
have multiple genetic, epigenetic, transcriptional and post‐translational strategies to
enhance expression and function of hexokinase (HK) II. (reviewed in (128)) Besides playing a
role in glycolysis HK‐II via its mitochondrial location also suppresses death of cancer cells.
Binding of HK‐II to VDAC diminish the availability of free VDAC sites that can interact with
activated pro‐apoptotic molecules.(129, 130)
Glucose provides the cell with acetyl CoA, which can be converted to citrate which is
shuttled out of the mitochondria for de novo fatty acid synthesis, however continuous
export of citrate introduces a deficiency to the Krebs cycle which must be replaced by an
anaplerotic flux to maintain fatty acid synthesis to take place.(131) In glutaminolysis,
glutamine is shuttled into the Krebs cycle where it is converted by glutaminases to
glutamate. This route is typically bidirectional (glutamine synthetase to create glutamate)
but in cancer glutaminases are overexpressed and/or glutamine synthetase are suppressed,
favoring the reaction to create glutamate.(132‐134) Glutamate is converted into α‐
ketoglutarate and thereby replenishing the intermediates in the Krebs cycle. The citrate
produced can be cleaved to generate oxaloacetate which is converted into malate and
ultimately lactate. Glutamine can also be converted into lactate when mitochondrial malate
is exported to the cytoplasm. In tumor cells this pathway is a major source of NADPH.(131)
Under normal conditions the transcription factor hypoxia‐inducible factor 1α HIF‐1α (active
subunit of HIF‐1) is posttranslational modified by prolyl hydroxylation, which promotes
association with the von Hippel‐Lindau (VHL) tumor suppressor resulting in degradation of
HIF‐1α by ubiquitination.(126) During hypoxia a process involving reactive oxygen species
(ROS) generated in the mitochondria, inhibits the prolyl hydroxylation resulting in
stabilization of HIF‐1α(135) which stimulates cells to consume glucose and produce
lactate.(136) Stabilization of HIF‐1α during normoxia occurs in tumors by mutations in VHL,
or mutations in succinate dehygrogenase and fumarate hydratase (Krebs cycle intermediate
enzymes) Active HIF‐1α can enter the nucleus and activates transcription of glucose
transporters, glycolytic enzymes (i.e. pyruvate dehygrogenase kinase 1 (PDK1)) and lactate
dehygrogenase A (LDH‐A).(126)
Introduction
25
4.4. Biosynthesis and cancer
In order to keep up with the rapid cell proliferation, tumor cells increase the rate of
metabolic reactions to generate amino acids, nucleotides and lipids that are needed to
create new biomass.(122) In tumor cells the PPP pathway activity is increased. The higher
activity of this pathway results not only in increased nucleotide biosynthesis but also
enhances the antioxidant capacity of the cell, due to generation of NADPH, and thus
protects cells against chemotherapeutics and a harmful microenvironment.(120, 122, 127)
Cancer requires an enormous supply of lipids for membrane biogenesis and protein
modifications. To meet this requirement cancer cells undergo major changes in their lipid
metabolism and shift towards de novo lipid synthesis.(112, 114, 137, 138) Increased fatty acid
synthesis is found in 20% to 90% of tumors and is reflected in the up‐regulation of key
enzymes (FASN, ACC and ACL) involved in this pathway.(139‐143) In cancer multiple oncogenic
mutations leads to a rapid fatty acid synthesis i.e. mutations in the phosphatidylinositol 3
kinase (PI3K)/Akt/mTOR pathway. Activating mutations of PI3K or elimination of negative
regulator PTEN results in the overexpression of SREBs.(114, 139, 144) Overexpression of mTOR
results in an increase in surface expression of glucose transporters.(145, 146) The breakdown
of lipids by β‐oxidation is suppressed by PI3K/AKT.(147) In hematopeoic cells PI3K/AKT
suppresses carnitine palmitoyltransferase‐1A (CPT1A). CPT1A is the rate‐limiting enzyme for
β‐oxidation.(148) To fulfill the need of unsaturated fatty acids SCD‐1 is overexpressed in
several tumors.(149) These enzymes and genes mentioned above, have been proposed as
novel targets for tumor treatment.(138, 150)
Despite the growing evidence demonstrating deregulated fatty acid metabolism as a
feature of cancer, the exact role of these metabolic alterations in the development and
maintenance of the disease is not fully understood. Besides being needed for membrane
biosynthesis, energy rich lipids could serve as a source of energy when nutrients are low. It
has also been suggested that lipid biogenesis could play a more active role in cell
transformation and cancer development. (reviewed in (151)) Lipids acts as signaling
molecules in cancer, i.e. phosphatidylinositol (3,4,5)‐trisphosphate (PIP3).PIP3 is a produced
by PI3K pathway in response to growth factor signaling and mediates the recruitment and
activation of Akt.(151) Lipids also play a role in the tumor microenviroment. Activation of
SREBP and induction of enzymes of the mevalonate pathway are involved in the disruption
of normal tissue architecture. Lipids are also involved in the interaction of cancer cells with
components of the tumor stroma. For example, cancer‐associated fibroblasts (CAFs) show
increased expression of FASN.(152) A study in ovarian cancer cells showed that they
preferentially metastise to an abdominal fat pad (omentum). In this study it was found that
omental adipocytes promote homing of these ovarian cancer cells through the induction of
specific adipocyte derived cytokines.(153) Taken together, it is clear that altered lipid
metabolism has beneficial effects for tumors.
Chapter 1
26
5. Cardiolipin
Cardiolipin (CL) is a unique phospholipid, which is predominantly localized in the inner
mitochondrial membrane (IMM) where it is synthesized from phosphatidylglycerol and
cytidinediphosphate‐diacylglycerol with the last step being catalyzed by the enzyme
cardiolipin synthase.(154, 155), CL contains a glycerol backbone and four acyl chains which are
highly unsaturated. These unsaturated acyl chains are necessary for the normal cellular
function.(156) The precise mechanism of remodeling of the acyl chains is unclear, however it
is known that newly synthesized CL is deacylated by a CL‐specific deacylase (Cld1).(156, 157)
One saturated fatty acyl chain is removed from CL by Cld1 to form monolysocardiolipin.(157)
To form mature CL, an unsaturated fatty acid is reacylated into monolysocardiolipin by the
transacylase tafazzin (Taz1) (see figure 4).(158‐160) Mutations in the tafazzin gene results in a
disease called Barth syndrome, an X‐linked recessive childhood disorder. (MIM 302060) The
characteristics of the disease are cardioskeletal myopathy, neutropenia and abnormal
growth.(161, 162) Biochemically, Barth syndrome is characterized by decreased levels of CL and
increases in monolysocardiolipin(163, 164) and a shift is observed in the level of unsaturation
of the acyl side chains.(164) In addition, the CL species in Barth syndrome cells are more
saturated than the CL species in control cells.(164)
Phospholipids are the main component of membranes and are important for maintaining
the structural integrity of membranes. CL has several functions in the mitochondria. CL is
required for optimal activity of complex I (NADH: ubiquinone oxido‐reductase), complex III
(ubiquinone: cytochrome c oxido‐reductase), complex IV (cytochrome c oxidase) and
complex V (ATP synthase).(165) CL is associated with and modulates the activity of several
enzymes involved in the respitory chain, including cytochrome c oxidase, carnitine
palmitoyltransferase, creatinephospokinase, the pyruvate translocator, the phosphate
transporter, mono‐, di‐, and tricarboxylate carriers, glycerol‐3‐phosphate dehydrogenase,
ATP/ADP translocase and ATP synthase.(154, 166, 167 )
Next to its role in normal mitochondrial physiology, CL has also been shown to associate
with members of the apoptotic machinery, including cytochrome c, Bid and caspase 8.(165)
Cytochrome c interacts with CL in the outer leaflet of the IMM through two independent
binding sites.(168‐171) Kagan et al. found that CL‐bound cytochrome c acts as a peroxidase
capable of catalyzing H2O2‐dependent peroxidation of CL and that this CL oxidation is an
essential step in the release of cytochrome c during apoptosis.(172) During apoptosis, Bid is
cleaved by caspase 8 to produce tBid. tBid translocates to the mitochondria and binds to
CL‐enriched contact sites and induces the translocation of BAK and BAX to the
mitochondrial outer membrane.(154, 173) In Fas receptor activated apoptosis, CL provides an
anchor and activating platform for caspase 8 translocation to the mitochondria.(174) CL is
also necessary for the function and stabilization of the caspase‐8/BID complex.(175) The
translocation of CL from IMM to the contact sites is mediated by phospholipid scramblase
Introduction
27
3 and is important for the apoptotic signal.(176) Mitofusin‐1 interacts with OPA1, which
controls the tight structure of the mitochondrial cristae, keeping most cytochrome c in the
cristae. tBid formation also results in the disruption of OPA1‐mediated tight structure of the
cristae resulting in the release of cytochrome c into the intermembrane space and thereby
facilitates its release from mitochondria when these are permeabilized.(154)
Figure 4: Cardiolipin synthesis and remodeling in eukaryotes. In cardiolipin synthesis, phosphatidic is
converted into cytidinediphosphate‐diacylglycerol (CDP‐DAG) by CDP‐DAG synthase (CDS). CDP‐DAG is
converted by phosphatidylglycerolphosphate (PG‐P) synthase (PGPS) to PG‐P. Dephosphorylation of PG‐P
by a phosphatase results in phosphatidylglycerol (PG). In the final step of CL biosynthesis, condensation of
one molecule of PG and one molecule of CDP‐DAG by CL synthase (CS) results in the formation of immature
CL. Remodeling occurs via Taffazin where phospholipase A2 (PLA2) hydrolysis an acyl chain from immature
cardiolipin to generate monolyso‐cardiolipin (MLCL). Taffazin reacylates MLCL to generate mature and
remodeled cardiolipin. Cardiolipin is degraded by hydrolysation by PLA2 via MLCL and dilyso‐cardiolipin
(DLCL).
6. Cancer therapeutics: history and trends
Cancer therapy was initially mainly focused on targeting DNA integrity and/or replication of
DNA, or on blocking mitosis by interfering with microtubule dynamics of the mitotic
spindle.(177) An example of these types of drugs are the platinum based derivatives (i.e
cisplatin), topoisomerease inhibitors (i.e irinotecan), vinca alkaloids (i.e vinblastine) and
taxanes (i.e taxol). These chemotherapeutics are still widely used in the clinic today.
Unfortunately, in a lot of instances resistance occurs.(178) For instance, in the case of cisplatin
DNA damage is followed by apoptosis, which can be counteracted by a multitude of
resistance mechanisms that can for instance arise as a consequence of intracellular changes
P
Phosphatidic acid
CDS
CMP
CDP-DAG
PGPS
P P
OH
P
PGPP
OH
P OH
PG-P PG
CS
P
OH
P
Immature CL
P
OH
PP
OH
P
OH
TAZ
MLCL Remodeled CL
P
OH
P
OHOH
DLCL
PLA2
Degradation
PLA2
C18:1 C18:1 C18:1
C16:0
C18:2 C18:2 C18:2C18:2
C18:1 C18:1 C18:1
Chapter 1
28
that either effectively repair cisplatin‐induced DNA‐adduct, prevent DNA damage signals
from activating the apoptotic machinery, or prevent cisplatin uptake.(179) Mechanisms that
interfere with DNA damage signal to the apoptotic machinery include loss of damage
recognition, loss of p53 function, overexpression of HER‐2/neu, activation of the PI3‐K/Akt
pathway, overexpression of anti‐apoptotic proteins, and interference in caspase
activation.(179) Another downside of these agents are that they block DNA replication and
cell division, thereby killing all cells that are rapidly dividing, not only cancer cells.
The growing insight into the hallmarks of cancer and several important technical
developments like the next generation DNA sequencing techniques and advances in
pharmaceutical drug discovery (180) have contributed to the search for therapies specifically
targeting these hallmarks, the so‐called targeted therapies. Some cellular targets are
genetically altered in cancer cells and are essential to tumor development and survival. This
phenomenon has been coined oncogene addiction.(181) Other targets are not genetically
altered, but still their expression is more important in cancer cells than in normal cells,
which is known as non‐oncogene addiction.(181) For an overview of different targeted
therapies see table 1.
A well‐known prototype and the first clinically approved targeted drug is imatinib (Gleevec,
Novartis), a small molecule inhibiting the Abelson tyrosine kinase (ABL) that is translocated
from chromosome 9 to the breaking point cluster region (BCR) gene on chromosome 22,
forming an oncogenic BCR‐ABL gene fusion, which is found in chronic myeloid leukemia
(CML). Imatinib is well tolerated as chronic therapy and induces molecular remission in
chronic CML.(182) Initially, the dramatic molecular and clinical effects of imatinib raised the
hope that this drug would be curative for most treated patients, however soon it became
apparent that therapy resistance to this inhibitor is frequent owing to mutations in the BCR‐
ABL kinase domain.(183)
There is growing evidence that tumors can escape hallmark‐targeting therapy. For example,
a targeted therapeutic agent inhibiting one key pathway in a tumor may not completely
block a hallmark, allowing some tumor cells to survive with residual function. These cells or
their progeny will eventually adapt to the selective pressure established by the therapy
applied. The adaptations can be accomplished by mutation, epigenetic changes or
remodeling of the microenvironment resulting in renewed tumor growth and clinical
relapse.(4) In response to targeted therapy, cancer cells can reduce their dependence on one
hallmark, becoming more dependent on another. This phenomenon was for instance shown
by the unexpected responses to antiangiogenic therapies. Folkman and Kalluri anticipated
that effective inhibition of angiogenesis would lead to dormant tumors and maybe lead to
their dissolution.(184) However, the clinical responses to antiangiogenic drugs have been
found to be transient.(185‐187) Clinical validation for this evasive resistance is shown by the
increased invasion and local metastasis observed in glioblastomas treated with
Introduction
29
antiangiogenic therapies.(188, 189) These acquired resistance to therapies targeting only one
hallmark are an obstacle in cancer therapy therefore cotargeting of multiple core and
emerging hallmarks will result in more effective therapies.(4)
6.1. Synthetic lethality
To overcome resistance and to specifically target cancer cells but not normal cells, the
exploitation of the concept of synthetic lethality has shown to be of great potential.(203, 204)
Synthetic lethality is derived from classical genetic studies and is based on the interaction
of two genes that both contribute to an essential process. When either gene is mutated
alone, the cell is viable, however the combination of mutations in both genes results in cell
death. This process is referred to as synthetic lethality as it is not possible to directly isolate
such cells as they die instantly when they have both mutations.(205) In cancer therapy this
synthetic lethality is being explored by developing therapies inhibiting a specific gene
product that is the synthetic lethal partner of the cancer related mutation. Not all
oncogenes are targetable by pharmacological intervention, thus synthetic lethality is an
option for these undrugable targets. On top of that, synthetic lethal therapeutic agents can
be applied alone by monotherapy, or in combination with more conventional
treatments.(206‐208) Therapies that target synthetic lethal partners of mutations in cancers
cells are cancer specific, resulting in less off‐target side effects. Examples of this method is
PARP1 inhibition in BRCA1/2 mutant tumors. BRCA1/2 are important in DNA repair of
double strand breaks, PARP1 is an enzyme involved in single strand break repair. Inhibition
of PARP1 results in an accumulation of DNA breaks which are not repaired resulting in cell
death.(209, 210)
An example that looks like synthetic lethality is targeting the RAF‐MEK pathway in KRAS
mutant tumors. Combination of RAF inhibition together with MEK inhibition results in
synthetic lethality of colorectal cancer and lung cancer cells that have a KRAS mutation.(211)
They found that inhibition of MEK increases the GTP‐bound fraction of KRAS, promotes the
formation of RAF1‐BRAF heterodimers and drives constitutive phosphorylation of ERK.(211)
Inhibition of RAF1 therefore results in a block in the phosphorylation of ERK. These results
are in accordance with a report showing that RAF1 knockdown enhanced MEK inhibition in
a KRAS mutant model.(212)
Synthetic lethality is a promising treatment mechanism, which could target tumors very
effectively with less off‐target effects. Currently with all these targeted therapies and
synthetic lethality approaches researchers are doing their best to find a cure for cancer.
However, still a lot of therapies fail to eradicate the tumor. This is suggested to be a cause
of so‐called cancer stem cells. This will be discussed below
Chapter 1
30
Table 1: Therapeutic Targeting of the Hallmarks of Cancer.
Cancer Hallmark
Targeted therapy (example)
Cancer type Drug name Resistance
Sustaining proliferative signaling
Tyrosine kinase inhibitors
Colorectal cancer, Lung cancer, Chronic myeloid leukemia
Cetuximab, Erlotinib, Imatinib
Yes (183, 190‐192)
Evading apoptosis
Cyclin‐dependent kinase inhibitors
Chronic lymphocytic leukemia, lung cancer
Alvocidib, Seliciclib n.o (193)
Avoiding immune destruction
Immune activating mAb
Melanoma, non‐Hodgkin lymphoma
Tremelimumab, Rituximab
n.o, yes (Rituximab)(194, 195)
Enabling replicative immorality
Telomerase inhibitors
Multiple myeloma, myelofibrosis
Imetalstat n.o (Clinical trials.gov)
Tumor promoting inflammation
Selective anti‐inflammatory drugs
Familial adenomatous polpolis
Celecoxib n.o (196, 197)
Activating invasion & metastasis
Inhibitors of HGF/c‐Met
Lung cancer, medullary thyroid cancer
Cabozantinib, Foretinib, Tivatinib
n.o ((198) and Clinical trial.gov)
Inducing angiogenesis
Inhibitors of VEGF signaling
Metastatic cancers (colon, lung,ovarian)
Bevacizumab Yes (199)
Genome instability &mutation
PARP inhibitors
Ovarian, breast, prostate
Olaparib n.o (200)
Resisting cell death
Proaoptotic BH3 mimetics
Acute myeloid leukemia, chronic lymphocytic leukemia
ABT‐199, ABT‐263 n.o ( (201) and Clinical trial.gov)
Deregulating cellular energetics
Aerobic glycolysis inhibitors
Pre‐clinical 3‐bromopyruvate n.o (202)
Abbreviations: mAb, monoclonal antibody; n.o, not observed. This lists only represents a small part of the
therapeutics currently used or under investigation.
Introduction
31
7. Tumor heterogeneity and cancer stem cells
Intra‐tumor heterogeneity arise among cancer cells within the same tumor as a
consequence of genetic changes, environmental differences, epigenetic changes and
reversible changes in cell properties.(213) Two main conceptual frameworks have been
elaborated to conceptualize the link between intra‐tumor heterogeneity and therapy
resistance. The first, and most established idea, is clonal evolution, where the tumor arises
from a single mutated cell and over time acquires additional mutations resulting in
subpopulations with evolutionary advantages.(214) The other one is the cancer stem‐cell
model. This model hypothesizes that cancers are organized into a hierarchy of
subpopulations of tumorigenic cancer stem cells (CSCs) and their non‐tumorigenic
progeny.(213, 215‐217) CSCs are defined as a subset of tumor cells which possess self‐renewal
and multi‐lineage differentiation potential(218‐220) CSCs can be identified by various
markers(219), and in vivo experiments have shown that CSCs very efficiently form tumors that
resemble the original tumor from which the CSCs were derived.(221) It has been suggested
that CSCs are responsible for recurrences and metastasis(219), because they are thought to
be therapy resistant (both chemo‐ and radiotherapy) and to effectively repopulate the
tumor.(4, 221, 222)
Currently, a lot of research is being done on targeting CSCs and deplete the tumor. However,
up to date no specific CSCs targeted therapy is available. Therefore, drugs attacking cancer
cells more broadly may be usable across multiple cancers and CSCs. This possible new
approach consists of compounds that are not per se cancer‐specific but work selective
against cancer due to alterations in metabolism and phenotype of cancer cells as compared
to normal cells. Currently, several natural compounds are intensively investigated as
potential cancer drugs in this perspective.
8. Natural compounds
A significant percentage of golden standard chemotherapeutic agents are based on
compounds from nature. Currently there are several classes of natural compounds or their
semi‐synthetic derivatives used in the clinic like vinca alkaloids, taxanes and
anthracyclines.(223‐228) Vinca alkaloids were introduced into the clinics in late 1950s as
Velban® and Oncovin®, and later on Eldisine® and Navelbine® followed.(223) The mechanism
of action of these compounds has been identified as the destabilization of microtubules,
which leads to G2/M cell cycle arrest and apoptosis.(229) Taxanes belong to the terpenoids
and one well known compound is Taxol (from Taxus)(225), which was shown in 1979 to
stabilize microtubule assembly.(226) It is used in the clinic for the treatment of various cancer
types, including ovarian, lung and breast cancer.(227) Anthracyclines are DNA‐intercalating
agents that block cell division and they are derived from bacteria (Streptomyces).
Doxorubicin is one of the best known members of this family and is used in the clinic for
treatment of several cancer types.(228, 230)
Chapter 1
32
Terpenoids (containing five‐carbon isoprene units) of which the triterpenoids (containing
six‐carbon isoprene units; e.g. plant sterols) are a subclass(231) can be isolated from many
different plant sources and occur in different variations.(232) Several of these variations or
their synthetic derivatives are investigated as potential medicinal products against various
diseases including cancer.(233) One of the most promising triterpenoids with anti‐cancer
activity is Betulinic acid (BetA, 3b‐hydroxy‐lup‐20(29)‐en‐28‐oic acid, C30H48O3), which is
discussed extensively below.
8.1. Betulinic acid
BetA is a pentacyclic triterpene of the lupane type that can be isolated from various plant
sources in small amounts. Its precursor betuline, which can be easily converted by oxidation
into BetA, is available in high abundance from the bark of the white birch (Betula
pubescens). Betulinic acid was for the first time isolated in 1948 from the bark of the London
plane tree (Platanus acerifolia) by Bruckner.(234)
8.2. Betulinic acid: pharmaceutical properties
Different pharmaceutical properties have been attributed to BetA. In particular its capacity
to suppress HIV infection has attracted much attention. In 1994 it was shown for the first
time that BetA has an potent anti‐HIV activity.(235) The wish to still optimize its anti‐HIV
activity together with intellectual property issues, has led to the synthesis of various BetA
derivatives. Improved activity against HIV‐1(236, 237), and HIV‐2(238) of several BetA derivatives
has been documented. Especially BetA derivative PA‐457 has been preclinically developed
as HIV‐1 maturation inhibitor that specifically inhibit the last step in processing of Gag. (237)
Under the name Bevirimat this compound has been tested as HIV‐1 drug in the clinic in
phase I/II clinical trials as single dose administration with no Bevirimat resistance mutations
occurring in this study.(239) Unfortunately, other studies showed that mutations in Gag occur
and result in resistance to the compound.(240‐243) Optimization of BetA derivatives against
HIV‐1 and HIV‐2 and Bevirimat is still ongoing with reported positive results.(244‐246)
Besides its anti‐ HIV activity, BetA and its derivatives have been described to have
therapeutic activity against inflammation (247, 248) and malaria.(249‐252) Anti‐angiogenic(253‐256),
and anti‐fibrotic activity by BetA has also been reported.(257)
Introduction
33
Figure 5: Chemical structure of BetA
8.3 Anti‐cancer activity of Betulinic acid
In 1995, BetA was selected out of 2500 plant extracts in a screen by the National Cancer
Institute as it displayed potent in vitro cytotoxic effects against human melanoma cells.
Follow‐up studies showed the first in vivo efficacy of BetA against melanoma.(258)
Subsequently, it was shown that BetA is also effective against other tumor types like brain
tumors, including the neuroectodermal glioma, medulloblastoma and glioblastoma and
showed no toxicity in murine non‐malignant neuronal cells.(259‐262) In 2001, anti‐proliferative
effects of BetA in non‐small and small cell lung cancer, ovarian carcinoma, cervix carcinoma
were observed, while in contrast, peripheral blood lymphocytes and human normal dermal
fibroblast were not affected by BetA, suggesting that BetA has a tumor specific effect.(263)
Two years later, head and neck squamous cellular carcinoma cells were also shown to be
sensitive to BetA(264) Until 2007 no research had been performed on the efficacy of BetA in
prevalent solid tumor types such as breast‐, lung‐, colon‐ and prostate cancer. In a study
conducted by our group, using three different assays, all tested cell lines from solid tumors
were sensitive to BetA: 10 lung cancer cell lines, 10 colorectal cancer cell lines, 9 breast
cancer cell lines, 4 prostate cancer cell lines and 3 cervix carcinoma cell lines were strongly
affected in their growth potential and viability after BetA treatment.(265) BetA was shown to
be a very potent agent against tumor with EC50 values around 10µg/ml in lung cancer cell
lines, prostate cancer cell lines, cervical cancer cell lines and values ranging from 4‐16 µg/ml
in colorectal cancer cell lines and breast cancer cell lines.(265) In this study it was also shown
that BetA even in high doses has no effect on healthy cells such as human blood‐derived
PBMC, cytotoxic T lymphocyte clones and activated B cells.(265) The efficacy of BetA was also
shown in hepatoblastoma(266), rhabdomyosarcoma(267) and nasopharyngeal carcinoma(268)
using several concentrations of BetA ranging up to 20 µg/ml. BetA has also been shown to
be effective in hematological malignancies i.e BetA induced cell death in murine leukemia
OH
O
HO
Chapter 1
34
cell line L1210(269) and in leukemia cells form patients and cell lines.(270) The last study
showed cell death inducing capacities of BetA independent of risk stratification, age and sex
of the patient and leukemia type.(270) BetA also induced cell death in human CML cell line K‐
562.(271) Combined these studies indicate that BetA is a promising anti‐cancer compound
because of its potent and broad tumor selective activity.
8.4. Mechanism of Betulinic acid
Thus far, the precise mechanism of anti‐cancer action of BetA has not been identified.
Although various and broad intra cellular anti‐cancer effects of the compound have been
revealed until now, these effects were difficult to be linked with unique and defined
molecular target(s). However, accumulating research of various research groups has
revealed important characteristics of BetA‐induced cancer cell death.
8.4.1. Betulinic acid and apoptosis
In 1997 Fulda et al. showed that in SHEP neuroblastoma cells apoptosis was induced after
BetA treatment and that overexpression of BCL‐2 and BCL‐XL blocked BetA‐induced loss of
mitochondrial membrane potential, PARP cleavage, caspase processing and ROS
production.(259) Subsequently, in isolated mitochondria of SHEP cells, BetA triggered
permeability transition (PT) and cytochrome c release, while mitochondria derived from
SHEP cells that overexpressed BCL‐2 or BCL‐XL were resistant to BetA.(272) Consistent with
these data, BetA induced ROS production, which was inhibited by BCL‐2 overexpression or
antioxidants.(262)
Although BCL‐2 overexpression showed protection against BetA‐induced apoptosis in SHEP
and glioma cells, it only partially protected Jurkat cells(270, 273), MCF‐7 cells(273) and melanoma
cells(274) against BetA. These results suggest that the protective effects of anti‐apoptotic
BCL‐2 family members are possibly cell type dependent. In 2009, our group showed that
BetA induced cytochrome c release and apoptosis in BAK/BAX double deficient mouse
embryonic fibroblasts (MEFs) and in HCT116 double knock out BAK/BAX cells. The levels of
apoptosis induced in the double deficient cells were comparable with the wild‐type control
cells, suggesting that BetA induces cytochrome c release and apoptosis independent of
BAK/BAX.(273) Our study also showed that BetA‐induced cell death could be blocked by the
addition of cyclosporine A, a PT‐pore inhibitor suggesting an important role for this pore in
BetA‐induced cell death.(273)
Interestingly, our group showed that BetA induced cell death in the presence of pan‐caspase
inhibitor zVAD.fmk in Jurkat cells, and at the same time PARP processing and DNA
fragmentation were completely blocked.(265) These results suggest that the cytotoxic effects
of BetA are not completely caspase dependent and that other cell death pathways are likely
involved.
Introduction
35
8.4.2. Betulinic acid and autophagic cell death
The focus in unraveling the mechanism of BetA has been mainly on apoptosis. However in
2012 a study of Gonzalez et al. showed that treatment with a glycosylated derivative of
BetA, named B10, leads to autophagic cell death. In this work it was shown that
downregulation of autophagy genes ATG7, ATG5 and BECN1 by RNAi‐mediated suppression
significantly decreased B10‐induced cell death. B10 induces autophagy and disrupts
autophagic flux as measured by LC3 lipidation.(275) Subsequently, by another research group
it was shown that BetA induces autophagy in multiple myeloma cells by an induction of LC3
lipidation. However a block in autophagic flux was observed as P62 levels were also
increased after BetA treatment.(276) The main conclusion of the latter study was that BetA
inhibits autophagic flux and the compound induced cell death via apoptosis. These two
studies, one using a derivative of BetA, are the only studies described.
With these contradicting results and as above mentioned the role of autophagy in the
induction of cell death remains unclear. Therefore more research about the role of BetA in
autophagic cell death is needed. In this thesis we investigated the role of autophagy as a
cell death mechanism (chapter 2)
8.5. Betulinic acid in combination therapy
Several studies have described the effect of BetA in combination with another therapeutic
intervention. In 2000, it was shown that the combination of BetA with radiotherapy had an
additive effect in human melanoma cells.(277) BetA improved vincristine‐induced cytoxicity
in mouse melanoma cells and reduced the number of metastases in vivo.(278) Fulda et al.
showed that combination of BetA and anticancer drugs cisplatin or doxorubicin cooperated
to induce apoptosis and to inhibit clonogenic survival of tumor cells.(279) It was also shown
that BetA sensitizes drug‐resistant colon cancer cells and esophageal squamous carcinoma
cells to oxaliplatin, irinotecan and 5‐fluorouacil.(280, 281) The combination of BetA and
docetaxel or 2‐methoxyestradiol resulted in increased apoptosis.(282) A study by the group
of Vordermark showed that an additive effect of BetA and radiotherapy was also observed
in glioma cells. This effect was most pronounced when cells were hypoxic.(283) On top of that
it was shown that in pancreatic cancer the combination of BetA and mithramycin A (a DNA‐
binding, anti‐tumor and neuroprotective antibiotic originally isolated from S. grieseus)
resulted in an inhibitory effect on cell proliferation, invasion and angiogenesis.(284) This
combination also resulted in less discernible side effects than gemcitabine alone, which was
used as a standard reference drug.(284) Together these data indicate that BetA is a very
potent compounds for combination treatments.
Chapter 1
36
8.6. Betulinic acid in vivo
Besides many in vitro studies, BetA has also been shown to be effective in vivo. Because of
the lipophilic characteristics of BetA and its consequently poor solubility in vivo studies has
been limited. The first study describing in vivo application of BetA used athymic mice with
human melanomas xenografted subcutaneously that were treated by intraperitoneal
injections of BetA in a formulation with polyvinylpyrrolidone (PVP).(258) A dose of 50 mg/kg
body weight was injected every four days for six times resulting in tumor regression. In this
study no toxicity as measured by weight loss was observed up to 500 mg/kg body weight.(258)
As described before BetA and in combination with vincristine reduced the number of
metastases. The treatment dose of BetA (dissolved in DMSO) was 10 mg/kg divided over 10
days out of 17 days.(278) BetA dissolved in DMSO was also used in breast cancer xenograft
model where mice were treated intraperitoneal with 50 and 100 mg/kg bodyweight BetA
every 3‐4 days for 6 doses resulting in delayed tumor growth.(285) Another study, using
human ovarian carcinoma xenograft model showed a clear survival benefit for mice treated
with intraperitoneal injections of a formulation of ethanol, Tween‐80 and water (10%, 10%
and 80%). Mice were injected every 3‐4 days with 100 mg/kg bodyweight for a total of six
injections.(263) Oral treatment with 10 or 20 mg/kg bodyweight BetA in corn oil in mice
bearing subcutaneously grafted prostate cancer cell line resulted in inhibition of tumor
outgrowth as compared to corn oil alone.(286) Also intravenous injection of BetA (10 mg/kg
bodyweight, every day for 14 days) has been shown to reduce adenomacarcinoma
xenograft size.(287) All these studies showed no systemic signs of toxicity, however the
formulations used are either not suitable for human application or are not precisely defined
and therefore cannot be standardized. Therefore our group investigated liposomes as a
delivery system of BetA. Liposomes are small vesicles consisting of one or more concentric
phospholipid bilayers with an aqueous core.(288) Both water soluble as well as lipophilic
compounds can be incorporated in the liposomes. This study showed that intravenous
injection of liposomes containing BetA both reduced tumor growth and prolongs survival of
colon carcinoma and lung carcinoma bearing mice. Mice were treated three times a week
with 50mg/kg bodyweight for three months (lung carcinoma) and two months (colon
carcinoma).(288) This study also showed that oral administration of BetA liposomes reduces
tumor growth and prolongs survival of colon carcinoma bearing mice, although these data
were less pronounced as intravenous injections.(288) In this study no systemic toxicity was
observed, suggesting that BetA‐liposome formulation is a possible formulation for BetA to
be used in preclinical studies.
Introduction
37
Outline of this thesis
The scope of this thesis was to investigate the mechanisms by which BetA induces cell death
in cancer cells in more detail. At the start of the studies described in this thesis several
questions urgently needed an answer. Although BetA induces cell death via apoptosis, when
blocking this form of cell death cancer cells still die.(265) In tumor therapy it is still unclear
whether activation of autophagy contributes to cell death or rather represents a
resistance/survival mechanism. We therefore investigated the roles of other cell death
mechanisms including necroptosis and autophagy in BetA‐induced cell death. The results of
this investigation are described in chapter 2. BetA induces cell death independently of
BAK/BAX but in a mitochondrial dependent fashion, but no reports exist revealing how this
form of cell death occurs, we set off to study the mechanism by which BetA induces cell
death in more detail. We found that BetA interferes with lipid cell metabolism. The results
of this research are described in chapter 3. Cancer stem cells are tumor resistant and
currently no effective therapy has been shown for these cells. BetA is a very potent and
broad acting compound therefore we treated colon cancer stem cells with BetA. Results of
these experiments are laid out in chapter 4. Finally, we were also interested in the effect of
BetA on several lipids in the cell. We set‐up a lipidomics pipeline and used a BetA dataset
to test the functionality of this pipeline as well as to investigate the difference in lipids after
BetA treatment. Chapter 5 contains these results. In chapter 6 all data of this thesis are
discussed in relation to the literature.
Chapter 1
38
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237. Li F, Goila‐Gaur R, Salzwedel K, Kilgore NR, Reddick M, Matallana C, et al. PA‐457: a potent HIV inhibitor that disrupts core condensation by targeting a late step in Gag processing. Proc Natl Acad Sci U S A. 2003;100(23):13555‐60. 238. Dang Z, Lai W, Qian K, Ho P, Lee KH, Chen CH, et al. Betulinic acid derivatives as human immunodeficiency virus type 2 (HIV‐2) inhibitors. J Med Chem. 2009;52(23):7887‐91. 239. Smith PF, Ogundele A, Forrest A, Wilton J, Salzwedel K, Doto J, et al. Phase I and II study of the safety, virologic effect, and pharmacokinetics/pharmacodynamics of single‐dose 3‐o‐(3',3'‐dimethylsuccinyl)betulinic acid (bevirimat) against human immunodeficiency virus infection. Antimicrob Agents Chemother. 2007;51(10):3574‐81. 240. Adamson CS, Waki K, Ablan SD, Salzwedel K, Freed EO. Impact of human immunodeficiency virus type 1 resistance to protease inhibitors on evolution of resistance to the maturation inhibitor bevirimat (PA‐457). J Virol. 2009;83(10):4884‐94. 241. Zhou J, Chen CH, Aiken C. Human immunodeficiency virus type 1 resistance to the small molecule maturation inhibitor 3‐O‐(3',3'‐dimethylsuccinyl)‐betulinic acid is conferred by a variety of single amino acid substitutions at the CA‐SP1 cleavage site in Gag. J Virol. 2006;80(24):12095‐101. 242. Verheyen J, Verhofstede C, Knops E, Vandekerckhove L, Fun A, Brunen D, et al. High prevalence of bevirimat resistance mutations in protease inhibitor‐resistant HIV isolates. AIDS. 2010;24(5):669‐73. 243. Seclen E, Gonzalez Mdel M, Corral A, de Mendoza C, Soriano V, Poveda E. High prevalence of natural polymorphisms in Gag (CA‐SP1) associated with reduced response to Bevirimat, an HIV‐1 maturation inhibitor. AIDS. 2010;24(3):467‐9.
244. Dang Z, Qian K, Ho P, Zhu L, Lee KH, Huang L, et al. Synthesis of betulinic acid derivatives as entry inhibitors against HIV‐1 and bevirimat‐resistant HIV‐1 variants. Bioorg Med Chem Lett. 2012;22(16):5190‐4. 245. Qian K, Bori ID, Chen CH, Huang L, Lee KH. Anti‐AIDS agents 90. novel C‐28 modified bevirimat analogues as potent HIV maturation inhibitors. J Med Chem. 2012;55(18):8128‐36. 246. Dang Z, Ho P, Zhu L, Qian K, Lee KH, Huang L, et al. New betulinic acid derivatives for bevirimat‐resistant human immunodeficiency virus type‐1. J Med Chem. 2013;56(5):2029‐37. 247. Gautam R, Jachak SM. Recent developments in anti‐inflammatory natural products. Med Res Rev. 2009;29(5):767‐820. 248. Enwerem NM, Okogun JI, Wambebe CO, Okorie DA, Akah PA. Anthelmintic activity of the stem bark extracts of Berlina grandiflora and one of its active principles, Betulinic acid. Phytomedicine. 2001;8(2):112‐4. 249. Steele JC, Warhurst DC, Kirby GC, Simmonds MS. In vitro and in vivo evaluation of betulinic acid as an antimalarial. Phytother Res. 1999;13(2):115‐9. 250. de Sa MS, Costa JF, Krettli AU, Zalis MG, Maia GL, Sette IM, et al. Antimalarial activity of betulinic acid and derivatives in vitro against Plasmodium falciparum and in vivo in P. berghei‐infected mice. Parasitol Res. 2009;105(1):275‐9. 251. Innocente AM, Silva GN, Cruz LN, Moraes MS, Nakabashi M, Sonnet P, et al. Synthesis and antiplasmodial activity of betulinic acid and ursolic acid analogues. Molecules. 2012;17(10):12003‐14. 252. da Silva GN, Maria NR, Schuck DC, Cruz LN, de Moraes MS, Nakabashi M, et al. Two series of new semisynthetic triterpene derivatives: differences in anti‐malarial activity, cytotoxicity and mechanism of action. Malar J. 2013;12:89.
Introduction
51
253. Dehelean CA, Feflea S, Ganta S, Amiji M. Anti‐angiogenic effects of betulinic acid administered in nanoemulsion formulation using chorioallantoic membrane assay. J Biomed Nanotechnol. 2011;7(2):317‐24. 254. Shin J, Lee HJ, Jung DB, Jung JH, Lee HJ, Lee EO, et al. Suppression of STAT3 and HIF‐1 alpha mediates anti‐angiogenic activity of betulinic acid in hypoxic PC‐3 prostate cancer cells. PLoS One. 2011;6(6):e21492. 255. Yun Y, Han S, Park E, Yim D, Lee S, Lee CK, et al. Immunomodulatory activity of betulinic acid by producing pro‐inflammatory cytokines and activation of macrophages. Arch Pharm Res. 2003;26(12):1087‐95. 256. Saaby L, Jager AK, Moesby L, Hansen EW, Christensen SB. Isolation of immunomodulatory triterpene acids from a standardized rose hip powder (Rosa canina L.). Phytother Res. 2011;25(2):195‐201. 257. Wan Y, Wu YL, Lian LH, Xie WX, Li X, Ouyang BQ, et al. The anti‐fibrotic effect of betulinic acid is mediated through the inhibition of NF‐kappaB nuclear protein translocation. Chem Biol Interact. 2012;195(3):215‐23. 258. Pisha E, Chai H, Lee IS, Chagwedera TE, Farnsworth NR, Cordell GA, et al. Discovery of betulinic acid as a selective inhibitor of human melanoma that functions by induction of apoptosis. Nat Med. 1995;1(10):1046‐51. 259. Fulda S, Friesen C, Los M, Scaffidi C, Mier W, Benedict M, et al. Betulinic acid triggers CD95 (APO‐1/Fas)‐ and p53‐independent apoptosis via activation of caspases in neuroectodermal tumors. Cancer Res. 1997;57(21):4956‐64. 260. Schmidt ML, Kuzmanoff KL, Ling‐Indeck L, Pezzuto JM. Betulinic acid induces apoptosis in human neuroblastoma cell lines. Eur J Cancer. 1997;33(12):2007‐10. 261. Wick W, Grimmel C, Wagenknecht B, Dichgans J, Weller M. Betulinic acid‐induced
apoptosis in glioma cells: A sequential requirement for new protein synthesis, formation of reactive oxygen species, and caspase processing. J Pharmacol Exp Ther. 1999;289(3):1306‐12. 262. Fulda S, Jeremias I, Steiner HH, Pietsch T, Debatin KM. Betulinic acid: a new cytotoxic agent against malignant brain‐tumor cells. IntJ Cancer. 1999;82(3):435‐41. 263. Zuco V, Supino R, Righetti SC, Cleris L, Marchesi E, Gambacorti‐Passerini C, et al. Selective cytotoxicity of betulinic acid on tumor cell lines, but not on normal cells. Cancer Lett. 2002;175(1):17‐25. 264. Thurnher D, Turhani D, Pelzmann M, Wannemacher B, Knerer B, Formanek M, et al. Betulinic acid: a new cytotoxic compound against malignant head and neck cancer cells. Head Neck. 2003;25(9):732‐40. 265. Kessler JH, Mullauer FB, de Roo GM, Medema JP. Broad in vitro efficacy of plant‐derived betulinic acid against cell lines derived from the most prevalent human cancer types. Cancer Lett. 2007;251(1):132‐45. 266. Eichenmuller M, von Schweinitz D, Kappler R. Betulinic acid treatment promotes apoptosis in hepatoblastoma cells. Int J Oncol. 2009;35(4):873‐9. 267. Eichenmuller M, Hemmerlein B, von Schweinitz D, Kappler R. Betulinic acid induces apoptosis and inhibits hedgehog signalling in rhabdomyosarcoma. Br J Cancer. 2010;103(1):43‐51. 268. Liu Y, Luo W. Betulinic acid induces Bax/Bak‐independent cytochrome c release in human nasopharyngeal carcinoma cells. Mol Cells. 2012;33(5):517‐24. 269. Noda Y, Kaiya T, Kohda K, Kawazoe Y. Enhanced cytotoxicity of some triterpenes toward leukemia L1210 cells cultured in low pH media: possibility of a new mode of cell
Chapter 1
52
killing. Chem Pharm Bull (Tokyo). 1997;45(10):1665‐70. 270. Ehrhardt H, Fulda S, Fuhrer M, Debatin KM, Jeremias I. Betulinic acid‐induced apoptosis in leukemia cells. Leukemia. 2004;18(8):1406‐12. 271. Raghuvar Gopal DV, Narkar AA, Badrinath Y, Mishra KP, Joshi DS. Betulinic acid induces apoptosis in human chronic myelogenous leukemia (CML) cell line K‐562 without altering the levels of Bcr‐Abl. Toxicol Lett. 2005;155(3):343‐51. 272. Fulda S, Scaffidi C, Susin SA, Krammer PH, Kroemer G, Peter ME, et al. Activation of mitochondria and release of mitochondrial apoptogenic factors by betulinic acid. J BiolChem. 1998;273(51):33942‐8. 273. Mullauer FB, Kessler JH, Medema JP. Betulinic acid induces cytochrome c release and apoptosis in a Bax/Bak‐independent, permeability transition pore dependent fashion. Apoptosis. 2009;14(2):191‐202. 274. Raisova M, Hossini AM, Eberle J, Riebeling C, Wieder T, Sturm I, et al. The Bax/Bcl‐2 ratio determines the susceptibility of human melanoma cells to CD95/Fas‐mediated apoptosis. J Invest Dermatol. 2001;117(2):333‐40. 275. Gonzalez P, Mader I, Tchoghandjian A, Enzenmuller S, Cristofanon S, Basit F, et al. Impairment of lysosomal integrity by B10, a glycosylated derivative of betulinic acid, leads to lysosomal cell death and converts autophagy into a detrimental process. Cell DeathDiffer. 2012;19(8):1337‐46. 276. Yang LJ, Chen Y, He J, Yi S, Wen L, Zhao J, et al. Betulinic acid inhibits autophagic flux and induces apoptosis in human multiple myeloma cells in vitro. Acta PharmacolSin. 2012;33(12):1542‐8. 277. Selzer E, Pimentel E, Wacheck V, Schlegel W, Pehamberger H, Jansen B, et al. Effects of betulinic acid alone and in combination with
irradiation in human melanoma cells. J Invest Dermatol. 2000;114(5):935‐40. 278. Sawada N, Kataoka K, Kondo K, Arimochi H, Fujino H, Takahashi Y, et al. Betulinic acid augments the inhibitory effects of vincristine on growth and lung metastasis of B16F10 melanoma cells in mice. BrJCancer. 2004;90(8):1672‐8. 279. Fulda S, Debatin KM. Sensitization for anticancer drug‐induced apoptosis by betulinic Acid. Neoplasia. 2005;7(2):162‐70. 280. Jung GR, Kim KJ, Choi CH, Lee TB, Han SI, Han HK, et al. Effect of betulinic acid on anticancer drug‐resistant colon cancer cells. Basic ClinPharmacolToxicol. 2007;101(4):277‐85. 281. Yamai H, Sawada N, Yoshida T, Seike J, Takizawa H, Kenzaki K, et al. Triterpenes augment the inhibitory effects of anticancer drugs on growth of human esophageal carcinoma cells in vitro and suppress experimental metastasis in vivo. IntJCancer. 2009;125(4):952‐60. 282. Parrondo R, de las Pozas A, Reiner T, Rai P, Perez‐Stable C. NF‐kappaB activation enhances cell death by antimitotic drugs in human prostate cancer cells. Mol Cancer. 2010;9:182. 283. Bache M, Zschornak MP, Passin S, Kessler J, Wichmann H, Kappler M, et al. Increased betulinic acid induced cytotoxicity and radiosensitivity in glioma cells under hypoxic conditions. Radiat Oncol. 2011;6:111. 284. Gao Y, Jia Z, Kong X, Li Q, Chang DZ, Wei D, et al. Combining betulinic acid and mithramycin a effectively suppresses pancreatic cancer by inhibiting proliferation, invasion, and angiogenesis. Cancer Res. 2011;71(15):5182‐93. 285. Damle AA, Pawar YP, Narkar AA. Anticancer activity of betulinic acid on MCF‐7 tumors in nude mice. Indian J Exp Biol. 2013;51(7):485‐91.
Introduction
53
286. Chintharlapalli S, Papineni S, Ramaiah SK, Safe S. Betulinic acid inhibits prostate cancer growth through inhibition of specificity protein transcription factors. Cancer Res. 2007;67(6):2816‐23. 287. Rajendran P, Jaggi M, Singh MK, Mukherjee R, Burman AC. Pharmacological evaluation of C‐3 modified Betulinic acid derivatives with potent anticancer activity. Invest New Drugs. 2008;26(1):25‐34. 288. Mullauer FB, van BL, Daalhuisen JB, Ten Brink MS, Storm G, Medema JP, et al. Betulinic acid delivered in liposomes reduces growth of human lung and colon cancers in mice without causing systemic toxicity. Anticancer Drugs. 2011;22(3):223‐33.
Chapter 2
Betulinic acid‐induced mitochrondria‐
dependent cell death is counter
balanced by an autophagic salvage
response
Lisette Potze, Franziska B. Mullauer, Selcuk Colak, Jan H. Kessler,
Jan Paul Medema
Cell Death and Disease 2014
"Tut, tut, child!" said the Duchess. "Every thing's got a moral, if only you can find it."
Lewis Carroll, Alice in Wonderland
Chapter 2
56
Abstract
Betulinic acid (BetA) is a plant‐derived pentacyclic triterpenoid that exerts potent anti‐
cancer effects in vitro and in vivo. It was shown to induce apoptosis via a direct effect on
mitochondria. This is largely independent of proapoptotic BAK and BAX, but can be inhibited
by cyclosporin A (CsA), an inhibitor of the permeability transition (PT) pore. Here we show
that blocking apoptosis with general caspase inhibitors did not prevent cell death, indicating
that alternative, caspase‐independent cell death pathways were activated. BetA did not
induce necroptosis, but we observed a strong induction of autophagy in several cancer cell
lines. Autophagy was functional as shown by enhanced flux and degradation of long‐lived
proteins. BetA‐induced autophagy could be blocked, just like apoptosis, with CsA,
suggesting that autophagy is activated as a response to the mitochondrial damage inflicted
by BetA. As both a survival and cell death role have been attributed to autophagy,
autophagy‐deficient tumor cells and mouse embryo fibroblasts were analyzed to determine
the role of autophagy in BetA‐induced cell death. This clearly established BetA‐induced
autophagy as a survival mechanism and indicates that BetA utilizes an as yet‐undefined
mechanism to kill cancer cells.
Betulinic acid induces a rescue autophagy response
57
Introduction
Betulinic acid (BetA) is a naturally occurring triterpenoid with potent cytotoxic effects on
cancer cells.1–4 It was initially proposed to have a direct effect on the mitochondria and to
induce apoptosis in a BCL‐2‐dependent fashion.5–7 However, BCL‐2 overexpression can only
provide short‐term protection and eventually these cells do succumb to apoptosis. In
addition, BAK/BAX double deficiency does not protect against BetA‐induced cell death,8
indicating that cell death ensues independently of the BCL‐2 family. Mitochondrial outer
membrane permeabilization (MOMP), however, is crucial as cyclosporin A (CsA) and
bongkrekic acid, both inhibitors of the permeability transition pore (PT‐pore), and as a
consequence MOMP were able to protect BetA‐treated cells from releasing cytochrome c
and subsequent apoptosis.7,8 Downstream of the mitochondria caspases are activated, but
direct inhibition of caspase activity with the pan‐caspase inhibitor zVAD.fmk (N‐
benzyloxycarbonyl‐Val‐Ala‐Asp‐fluoromethylketone) did not offer protection to BetA‐
induced cell death.4 Combined this indicates that BetA does induce apoptosis, but that
additional mechanisms must exist by which cell death is induced by the compound.
Alternative cell death pathways include necrosis, necroptosis, lysosomal membrane
permeabilization (LMP) and autophagy. Necrosis is a form of passive cell death that is
induced upon strong insults such as mechanical injury of cells. Typical features include
swelling, rupture of organelle membranes as well as the outer cell membrane and as a result
the cell contents are released, often causing inflammation in vivo.9 Necroptosis, a highly
regulated form of necrosis, can be induced by ligation of death receptors in the presence of
caspase inhibitors.10 Necroptosis is regulated by distinct complexes called the necrosome
or ripoptosome that include receptor interacting protein (RIP) kinases, FAS‐associated
death domain and caspase‐8.10,11 Necroptosis can be blocked by small molecules, such as
necrostatin‐1, that allosterically block the kinase activity of RIP1.12,13
Lysosomal cell death is induced by a destabilization of the lysosomal membrane.14 The cell
death depends on the leakage of lysosomal components into the cytoplasm, and the activity
of cathepsins that can induce a necrotic‐like or apoptotic cell death depending on the extent
of the leakage. As such the induction of cell death is clearly distinct from necrosis and
apoptosis; nevertheless, the execution phase is similar.
Autophagy is a highly conserved cellular proteolytic degradation process in which cytosolic
components are first encapsulated by a membrane and subsequently degraded in the
lysosome, thereby providing new building blocks for the cell. Autophagy is typically induced
upon nutrient starvation. However, autophagy also involves sequestration of damaged
cytoplasmic components and organelles, via induction of de novo double‐membrane
vesicles (autophagosomes) that surround the cargo. The autophagosome transports the
Chapter 2
58
cargo to the lysosome where fusion of the autophagosome and lysosome leads to
degradation of the cargo (autophagic flux).15 Autophagy, even though initially regarded as
a cell survival mechanism, has also been suggested to serve a role in inducing cell death. It
may therefore represent a balancing mechanism between cell survival and cell death.16–18
Autophagy can target cytosolic components specific for degradation, known as specific
autophagy. Specific autophagy can include ubiquitinated proteins, peroxisomes and
mitochondria.19–21 Mitophagy involves the selective degradation of mitochondria and is
among others used for clearance of damaged mitochondria.17,22 Previously, BetA and a
derivative of BetA, B10, have been shown to induce autophagosome formation in multiple
myeloma cells and glioblastoma cells.23,24 In these studies it was suggested that the
autophagic flux was prevented, leading to an accumulation of undigested autophagosomes.
Although both studies observed autophagy, the role of autophagy as a cell death
mechanism was not addressed for BetA.23,24
We hypothesized that autophagy/mitophagy is induced upon BetA treatment to clear the
damaged mitochondria. We show that autophagy is massively induced in various BetA‐
treated tumor cells, but is prevented by CsA, suggesting that autophagy occurs downstream
of the BetA‐induced mitochondrial damage. With the use of knockout and knockdown
studies of key regulators of the autophagy pathway, we demonstrate that autophagy serves
as a rescue pathway and is not responsible for the cell death induced by BetA.
Results
BetA‐induced cell death is independent of apoptosis.
BetA induced a very potent form of cell death in HeLa cells that displayed features like cell
membrane rupture (Figure 1a), apoptosis (Figures 1b and c) and mitochondrial
depolarization (Figures 1d and e). The effect of BetA was, as shown before, concentration
dependent, starting at 7.5 µg/ml and reaching a plateau at 10 µg/ml (Supplementary Figure
1). Previously we have shown, in Jurkat cells, that BetA‐induced apoptosis is blocked by co‐
treatment with zVAD.fmk, but that this pan‐caspase inhibitor does not prevent cell death
as measured by propidium iodide (PI) exclusion.4 Similarly, cell death induced by BetA in
HeLa cells was only partly blocked with a more potent caspase inhibitor Q‐VD‐OPh (Figure
1f), which did block apoptotic features like DNA fragmentation (results not shown). This
indicates that caspase inhibition was effective, but not sufficient to block the induction of
cell death. Thus, while apoptosis is induced by BetA, these findings indicate that alternative
cell death pathways are activated as well. To study whether necroptosis serves as an
alternative cell death mechanism induced by BetA, we made use of necrostatin, a specific
inhibitor of this cell death mechanism. Either necrostatin alone or in combination with
caspase inhibition failed to prevent cell death (Figure 1f). As a control for the action of
Betulinic acid induces a rescue autophagy response
59
necrostatin, U937 cells were used, which have been reported to undergo necroptosis upon
tumor necrosis factor‐α (TNF‐ α) treatment12 in the presence caspase inhibitors. In
accordance with literature12 this indeed led to a significant induction necroptosis, which was
prevented by necrostatin (Supplementary Figure 2). As this combination did not inhibit
BetA‐induced cell death, our data point to a cell death mechanism that is independent of
caspases and necroptosis.
Figure 1. BetA induces cell death independent of apoptosis and necroptosis. HeLa cells were subjected to
10 µg/ml BetA for 48 h after which cell death by PI exclusion (a), DNA fragmentation (b), phosphatidylserine
(PS) exposure (c), and loss of mitochondrial activity by mitotracker orange (d) or JC‐1 (e) were assessed (f)
HeLa cells were pre‐treated for 1 h with or without 20 µM Q‐VD‐Oph and with or without 25 µM necrostatin‐
1 and subjected to 10 µg/ml BetA for 48 h after which cell death was assessed via PI exclusion. Mean ± S.D.
of three independent experiments are shown, *P< 0.05; **P< 0.01; ***P<0.001; NS, not significant.
BetA induces autophagy
To determine whether autophagy is responsible for the cell death observed, LC3
conjugation was studied. Conjugated LC3 (LC3‐II) is associated with autophagic membranes
and therefore fusion of LC3 to green fluorescent protein (GFP) can be used to detect
autophagosomes.25 In untreated cells, LC3–GFP is evenly dispersed in the cells, with a slight
preference for the nucleus, whereas in cells where autophagy is induced, LC3 translocation
is evident (Figure 2a).25 Both HeLa\LC3–GFP and MCF‐7\LC3–GFP cells treated with the
classical autophagy inducer rapamycin displayed a clear induction of punctuated LC3–GFP
structures. Interestingly, BetA was even more potent in inducing autophagy, showing
ba c d e
f
BetAQ-VD-OPh
--
-+
+- -
--+ +-
necrostatin - - - -+ ++
++
+++
***** *** *** ***
**
*ns
% P
Ipo
s
%A
nne
xin
Vp
os
% D
epo
lariz
atio
n
% M
itotr
acke
rn
eg
0
20
40
60
80
BetADMSO BetADMSO BetADMSO BetADMSO0
20
40
60
80
0
20
40
60
80
0
20
40
60
80
BetADMSO0
20
40
60
80
0
20
40
60
80
% D
NA
fra
gm
enta
tion
% P
Ipo
s
Chapter 2
60
enlarged punctae (Figure 2a). To validate that BetA indeed induced autophagy, a separate
measure to monitor the induction of autophagy was used, namely the processing of LC3‐I
to its PE‐conjugated LC3‐II using immunoblotting.26 Rapamycin treatment resulted in
enhanced LC3‐II levels in HeLa\LC3–GFP, A549, MCF‐7\LC3–GFP and SW480\LC3‐GFP cells
as compared with their DMSO‐treated counterparts (Figure 2b). Analyzing multiple
independent assays consistently revealed this induction, but due to the variation in
background levels of LC3‐II it only reached significance in HeLa and A549 cells (Figure 2c). In
contrast, BetA‐induced LC3‐II levels are significantly elevated in all cell lines and were clearly
more pronounced as compared with rapamycin (Figures 2b and c), similar to the
observations with LC3–GFP staining. The effect of BetA on autophagy occurs relatively rapid
upon BetA treatment and required concentrations that are also exerting a toxic effect (7.5–
10 µg/ml) (Supplementary Figures 3a and b).
Both detection of LC3‐II via immunoblotting and LC3–GFP translocation are measures for
the amount of autophagosomes present at a certain time point, but do not provide
information about the cause of this phenotype. It is possible that an increased number of
autophagosomes is caused by an inhibition of basal autophagic flux rather than by induction
of autophagy.27,28 Previously, it was reported that BetA in KM3 cells dose‐dependently
induces the expression of LC3‐II, but also of p62, a protein that is normally degraded during
autophagy. This study suggested that BetA rather inhibited autophagic flux instead of
inducing autophagy.24 To analyze the effect of BetA on p62 we studied its expression in HeLa
cells. This confirmed a strong induction of p62 upon BetA treatment (Supplementary Figure
3c). However, this is due to induction of de novo synthesis and could be blocked with the
addition of cycloheximide. The combination of cycloheximide and BetA did reveal
degradation of p62, pointing to a functional flux (Supplementary Figure 3c). To better
evaluate this autophagic flux, degradation of long‐lived proteins was measured, which
reportedly are at least in part degraded by autophagy.27–29 In agreement, rapamycin clearly
induced degradation of these long‐lived proteins after 14 h (Figure 2d). Moreover,
degradation continued after this time point as was evident from analyzing the release of
labeled amino acids in the time period between 14 and 20 h (Figure 2e). In contrast to the
finding of Yang et al.24 That BetA prevents autophagic flux, BetA clearly increased the
degradation of long‐lived proteins after 14 h and the following 6 h after medium change.
This was also more pronounced as compared to rapamycin‐induced degradation (Figures
2d and e). Because degradation of long‐lived proteins is not solely specific for autophagy
and cannot discriminate between proteasomal‐ and autophagosomal degradation more
specific assays using tandem RFP/eGFP‐tagged LC3 as well as a tandem mCherry/GFP‐
tagged p62 were used.30 As RFP and mCherry are pH stable, they remain fluorescent after
fusion of the autophagosomes with the lysosomal compartment, while eGFP fluorescence
is lost. This allows detection of autophagic flux by simply observing the formation of red
fluorescent lysosomes from green/red fluorescent autophagosomes. Using either LC3
Betulinic acid induces a rescue autophagy response
61
(Figure 2f) or p62 (Supplementary Figure 3d) we observed that rapamycin as well as BetA
induced a functional autophagic flux using. This confirms that BetA is a potent inducer of
autophagy resulting in an enhanced autophagic flux.
Figure 2. BetA induces autophagy (a) HeLa\LC3‐GFP cells and MCF‐7\LC3‐GFP cells were treated with 10
µg/ml BetA or 10 µM rapamycin and after 18 h cells were analyzed by confocal microscopy. Quantification
of LC3 punta was perfomed using Image J. Mean of positive pixels/total pixel cell (%) ± S.D. of three fields of
view per sample are shown. (b) HeLa\LC3‐GFP, A549, MCF‐7\LC3‐GFP and SW480\LC3‐GFP were treated
with 10 µg/ml BetA or 10 µM rapamycin for 18 h. LC3 processing was assessed via immunoblotting. Results
for endogenous LC3 are shown. LC3‐I (18 kDa) and LC3‐II (16 kDa). Tubulin is used as a control. (c) Band
intensity of western blot was quantified using Image J software. DMSO control is set to 1. Mean ± S.D. of
three indendent experiments are shown, *P < 0.05; **P< 0.01; ***P<0.001; n.s., not significant. (d) MCF7
cells were treated with the indicated concentrations of BetA or 1 µM rapamycin and after 14 h degradation
of long‐lived proteins was measured or (e) after 14 h medium was refreshed and degradation in the following
6 h was measured. Mean ± S.D. of triplicates are shown (f) HeLa and A549 cells with tandem fluorescent LC3
(mRFP‐eGFP‐LC3) were treated with 10 µg/ml BetA or 10 µM rapamycin and after 18 h cells were analyzed
by confocal microscopy. Quantification of red LC3 puncta was performed using Image J. Mean of positive
pixels/total pixel cell (%) ± S.D. of three fields of view per sample are shown.
DMSO rapamycinBetA
MC
F-7
\LC
3-G
FP
HeL
a\LC
3-G
FP
5.795 ±0.86
10.36 ±1.8 3.707 ±0.61
DMSO rapamycinBetA
1.452 ±2.1
a
d
0.5
1.0
1.5
2.0
Degra
dation (
ratio)
0 5 7.5 10 1µM
BetA (µg/ml) Rapa
0.5
1.0
1.5
2.0
0 5 7.5 10 1µMBetA (µg/ml) Rapa
De
gra
da
tio
n (
ratio
)
e
LC
3 I
I /
LC
3 I
0
2
4
6 ***
**
**ns
*ns
A549HeLa SW480MCF-7
0.042 ±0.04 8.415 ±2.8
0.16 ±0.2
c
He
La
0 µm 10 0 µm 10 0 µm 10
f
A5
49
0 µm 25 0 µm 25 0 µm 25
BetArapamycin
+- - - - - - - -+ + ++ + + + +-------
2.539 ±2.7 10.99 ±9.0 5.218 ±4.4
8.36 ±6.9 6.637 ±3.1
b
LC3 I
LC3 II
Tubulin
A549HeLa SW480MCF-7
BetArapamycin
+- - - - - - - -+ + ++ + + + +------
Chapter 2
62
Cyclosporin A blocks BetA‐induced autophagy.
Permeability transition pore (PT‐pore) opening results in membrane depolarization and
leads to cytochrome c release and subsequent caspase activation.31 The proposed structure
of the pore is formed by a voltage‐dependent anion channel, adenine nucleotide
translocator and cyclophilin D complex,32 and opening of the PT‐pore can be blocked by
inhibition of cyclophilin D using CsA.33 Previously we have shown that BetA‐induced
apoptosis and cytochrome c release proceeded in a PT‐pore‐dependent fashion.8 As CsA
inhibits BetA‐induced apoptotic features,8 the effect of CsA on BetA‐induced autophagy was
investigated. HeLa\LC3–GFP cells were treated with BetA alone or in combination with CsA
and analyzed via confocal microscopy. Autophagosome formation was clearly inhibited in
the presence of CsA (Figure 3a). A similar CsA dependency was observed in MCF‐7\LC3 cells
(Figure 3a). The effect of CsA was confirmed by immunoblotting for LC3 in BetA‐treated
HeLa, but also in other cancer lines (A549, MCF‐7 and SW480). In all tested cell lines, BetA‐
induced formation of lipidated LC3‐II was reduced when cells were pretreated with CsA
(Figures 3b and c). These data suggest that BetA‐induced autophagy is a consequence of
mitochondrial damage triggered by BetA and can be prevented by inhibition of PT‐pore
opening.
Autophagy serves as a rescue pathway, not as an alternative cell death pathway
in BetA‐treated cells.
Autophagy, even though initially regarded as a cell survival pathway, can play a role in dying
cells as well and has been suggested to serve as a balancing mechanism between cell
survival and cell death.16,17 Autophagy is detectable already at low BetA concentrations (7.5
µg/ml) and we reasoned that it is primarily induced as a rescue mechanism. However, it is
feasible that at higher BetA concentrations autophagy is induced beyond a certain
threshold, which shifts the balance from cell survival to cell death.17,34 To test this
hypothesis, we used cell lines with a deficiency in ATG5 or ATG7, which are crucial regulators
in the induction of autophagy.35,36 First we used retroviral shRNA against ATG5 in HeLa and
HeLa\LC3–GFP cells. ATG5 knockdown levels of 77 and 86% were obtained with shRNA
against ATG5 in HeLa and HeLa\LC3–GFP cells, respectively (Supplementary Figure 4a). The
abrogation of autophagy in these cells was confirmed by confocal microscopy (Figure 4a).
Importantly, when analyzing BetA‐induced cell death in HeLa ATG5 knockdown cells, this
was found, if anything, to be enhanced as compared to the cell death induced in control
knockdown cells (Figure 4b). The increase in BetA‐induced cell death in autophagy‐impaired
cells was also observed in MCF‐7\LC3–GFP cells (Supplementary Figures 4a and b). To
formally confirm that impaired autophagy enhances BetA‐induced cell death, MEFs derived
from Atg5 or Atg7 knockout mice were used. While these cells are completely autophagy
deficient, they showed increased levels of BetA‐induced cell death (Figure 4c) and Annexin
Betulinic acid induces a rescue autophagy response
63
V exposure (Supplementary Figure 4c). Interestingly, caspase inhibition in these autophagy‐
deficient cells did not prevent cell death either (Figure 4d). However, both autophagy‐
proficient and –deficient cells displayed a similar increase in mitochondrial depolarization
(Figure 4e), suggesting that the initial mitochondrial insults are independent of the
induction of autophagy. Combined these data indicate that autophagy serves primarily as a
survival mechanism in BetA‐treated cells and that BetA‐induced cell death is independent
of autophagy, necroptosis and caspases and follows an as yet‐undefined pathway.
Figure 3. CsA inhibits BetA‐induced autophagy (a) HeLa\LC3‐GFP cells and MCF‐7\LC3‐GFP cells were pre‐
treated with 10 µg/ml CsA for one hour and subjected to 10 µg/ml BetA for 18 h and analyzed by confocal
microscopy. Quantification of LC3 puncta was performed using Image J. Mean of positive pixels/total pixel
cell (%) + S.D. of three fields of view per sample are shown. (b) HeLa\LC3‐GFP, A549, MCF‐7\LC3‐GFP and
SW480\LC3‐GFP were pre‐treated with 10 µg/ml CsA for one hour and subjected to 10 µg/ml BetA for 18 h.
LC3 processing was assessed via immunoblotting. Results for endogenous LC3 are shown; LC3‐I (18 kDa) and
LC3‐II (16 kDa). Tubulin is used as a control. (c) Band intensity of LC3 western blot was quantified using
Image J software. DMSO control is set to 1. Mean + S.D. of three independent experiments are shown, *P <
0.05; **P< 0.01; ***P<0.001; N.S., not significant.
a
b
LC3 ILC3 II
A549HeLa SW480MCF-7
BetACsA
+- - - - - - - -+ + + + + + ++ + + + + + + +- - - - - - - -
LC3
II / L
C3
I
Tubulin
0.0
2.5
5.0
7.5
10.0
A549HeLa SW480MCF-7
BetACsA
+- - - - - - - -+ + + + + + ++ + + + + + + +- - - - - - - -
c
DMSO BetA CsA BetA + CsA
MC
F-7
\LC
3-G
FP
He
La\L
C3
-GF
P
*** * * ns
1.09 ±1.1 6.152 ±0.48 0.664 ±0.53 1.192 ±1.5
1.152 ±0.99 4.611 ±1.39 0.869 ±1.1 1.56 ±0.69
Chapter 2
64
Figure 4. Autophagy serves as a rescue pathway (a) HeLa\LC3‐GFP cells with pSuper empty (control) or
ATG5 #2 knockdown were treated with 10 µM rapamycin for 6 h and analyzed with confocal microscopy.
Representative pictures of two experiments are shown. Quantification of LC3 puncta was performed using
Image J software. Mean of positive pixels/total pixel cell (%) ± S.D. of three fields of view per sample are
shown. (b) HeLa cells with ATG5 #2 knockdown and the control were subjected to different concentrations
of BetA for 48 h after which cell death was measured via PI exclusion and DNA fragmentation was assessed.
Mean ± S.D. of triplicates are shown. (c) Mouse embryonic fibroblasts lacking either ATG5 or ATG7 and their
respective control cells were subjected to different concentrations of BetA and cell death (24 h) using (c) PI
exclusion was measured. (d) Mouse embryonic fibroblasts lacking either ATG5 or ATG7 and their respective
control cells were subjected to different concentrations of BetA for 24 h in the presence or absence of 20
µM zVAD.fmk and cell death using PI exclusion was measured. Mean ± S.D. of three independent
experiments are shown. (e) Loss of mitochondrial activity measured by JC‐1 after 18 h was assessed. Mean
± S.D. of three independent experiments are shown.
Discussion
BetA is a promising anti‐cancer agent with apoptosis‐inducing effects that acts on the PT‐
pore in a BAX/BAK‐independent fashion.8 Here we show that BetA highly efficiently induced
autophagy in several cancer cells. Autophagic flux was found to be functional and led to
a
c
DMSOco
ntro
lsh
RN
AA
TG
5 2
rapamycin
d
0
10
20
30
40
50
% D
NA
frag
men
tatio
n0 5 10 15
controlsh RNAATG5 #2
0
20
40
60
80
100
% P
Ipo
s
0 5 10 15
bcontrolsh RNAATG5 #2
e
0.088 ±0.07 0.2178 ±0.18
1.245 ±1.02 0.339 ±0.5
+ ZVAD-fmk
+ ZVAD-fmk0 5 10 15 20
0
20
40
60
80
100
% P
Ipo
s
0 5 10 15 200
20
40
60
80
100
% P
Ipo
s
BetA (µg/ml)
wtAtg5 -/-
BetA (µg/ml)
wtAtg5 -/-
Atg7 -/-Atg7 +/-
0 5 10 15 200
20
40
60
80
100
% P
Ipo
s
BetA (µg/ml)0 5 10 15 20
0
20
40
60
80
100
% P
Ipo
s
Atg7 +/-Atg7 -/-
wtAtg5 -/-
Atg7 +/-Atg7 -/-
0
20
40
60
80
100
% D
epol
ariz
atio
n0 5 10 15 20
0
20
40
60
80
100%
Dep
olar
izat
ion
0 5 10 15 20
Betulinic acid induces a rescue autophagy response
65
enhanced degradation of long‐lived proteins and degradation of GFP in tandem fluorescent
LC3 and p62 proteins (Figure 2 and Supplementary Figure 3). Our observations are in
contrast to previous findings by Yang et al.24 reporting that BetA inhibits autophagic flux in
human multiple myeloma cells as measured by accumulation of p62 protein. Similar to BetA,
B10, a semi‐synthetic glycosylated derivative of BetA, induced cell death in both an
apoptosis‐dependent and apoptosis‐independent fashion. In response to B10 treatment,
LMP and subsequent release of lysosomal enzymes was observed in a human glioblastoma
cell line, impairing autophagy in later stages.23 LMP results in the release of lysosomal
hydrolases and cathepsins into the cytosol.37 Massive lysosomal leakage leads to
uncontrolled necrosis, whereas minor LMP can activate either the intrinsic caspase‐
dependent apoptosis pathway or caspase‐independent alternative cell death programs.38–
43 LMP could therefore also be a possible mechanism by which BetA induces cell death.
However, in contrast to B10, which disrupts the autophagic flux, our data show that
autophagy is enhanced after BetA treatment. It could well be that at later time points the
flux is halted, potentially due to an overload of cargo. This could explain the relatively large
LC3–GFP structures that are observed at later time points. Nevertheless, we show that the
initial enhanced autophagic flux also serves a protective function as it delays the execution
of cell death, while it does not appear to limit the mitochondrial depolarization. Blocking
autophagy completely is detrimental to the cells confirming that the observed increase in
autophagosomes and LC3‐II is not simply due to a block in the flux.
An interesting connection between BetA‐induced apoptosis and autophagy is the fact that
both are efficiently inhibited by CsA, an inhibitor of the PT‐pore8 (Figure 3) CsA has been
reported to block mitophagy induced by loss of MOMP in rat hepatocytes.44,45 Blocking of
apoptosis and autophagy by CsA hints to a scenario in which both pathways are triggered
by a common upstream event that is related to PT‐pore opening. How this is achieved by
BetA remains yet to be established. It is consistent though with the observations in
autophagy‐deficient cells, which do show a decrease in cell death, but not in mitochondrial
defects. This suggests that the primary insult is independent of autophagy, but that the
execution of cell death is dampened by an initial salvage response through the induction of
autophagy. The fact that autophagy occurs relatively rapid upon BetA treatment is also in
line with this notion.
Even though our results suggest that autophagy does not primarily serve as a cell death
mechanism, it is conceivable that it plays an indirect role in the toxicity exerted by BetA. At
higher concentration of BetA, autophagy may keep the balance up for a period of time, after
which either the mitochondrial damage is too massive to be counteracted by autophagy or
that lysosomal exhaustion occurs, which as a consequence will prevent further autophagic
flux. This may then result in release of cytochrome c, activation of caspases and subsequent
apoptosis. This is supported by the observations that BetA‐induced cell death is higher in
Chapter 2
66
autophagy‐deficient cells compared to control cells (Figure 4 and Supplementary Figure 4).
Nevertheless, even under these conditions caspase inactivation is not sufficient to rescue
the cells either, suggesting that the mitochondrial damage inflicted is not compatible with
cellular survival.
Taken together our findings show that BetA‐induced cell death is independent of caspases,
necroptosis and autophagy and, thus, alternative cell death mechanisms must be involved.
This potentially explains the high tumoricidal efficacy of BetA, as it induces cell death that
is not prevented by classical antiapoptotic mechanisms.
Materials and Methods
Chemicals/antibodies.
Betulinic acid (BioSolution Halle, Halle, Germany, (>99% purity) was dissolved in DMSO at 4
mg/ml and stored at ‐80 °C. PI and CsA were purchased from Sigma‐Aldrich (St. Louis, MO,
USA). Rapamycin was purchased from VWR (Amsterdam, The Netherlands) and C‐14 valine
(CFB75‐50 µCi) from Amersham Biosciences (Amersham, UK). Q‐VD‐OPh was purchased
from R&D Systems (Minneapolis, MN, USA). Necrostatin‐1 and TNF‐α were obtained from
Enzo Life Sciences (Farmingdale, NY, USA). Anti‐LC3 antibody (51520) was obtained from
Abcam (Cambridge, UK). Anti‐ATG5 antibody and anti‐ SQSTM1/p62 were from Cell
Signaling Technology (Danvers, MA, USA). Anti α Tubulin antibody was from Santa Cruz
Biotechnology (Dallas, TX, USA). Annexin V‐APC and 7‐AAD were from BD Biosciences
(Franklin Lakes, NJ, USA). Mitotracker Orange CMTMRos and JC‐1 were obtained from Life
Technologies (Carlsbad, CA, USA).
Cell culture.
HeLa cells, A549 cells, MCF‐7 cells, SW480 and U937 cells were obtained from the ATCC
(Manassas, VA, USA). MCF‐7 cells overexpressing LC3– GFP were generated as described.46
HeLa cells and SW480 cells overexpressing LC3‐GFP were made by stable transfection of
plasmid pEGFP‐C1‐LC3, which was a gift from G. Kroemer (Institut Gustave Roussy, Villejuif,
France). All LC3–GFP overexpressing cell lines were cultured with 500 µg/ml G418 in order
to select for LC3–GFP. ATG5 knockout and the corresponding control MEFs were kindly
provided by N Mizushima (Department of Cell Biology, Okazaki, Japan)25 and the ATG7
knockout and corresponding control MEFs were obtained from M Komatsu (Department of
Molecular Oncology, Tokyo, Japan).35
All cells were cultured in IMDM supplemented with 8% FCS, 2mM L‐glutamine, 40 U/ml
penicillin and 40 µg/ml streptomycin.
RNA interference.
Retroviral vectors pSuper ATG5 #2, pSuper ATG5 #3 and pSuper empty, a gift from S.W. Tait
(Beatson Institute, Institute of Cancer Sciences, Glasgow, UK),47 were transfected into
Betulinic acid induces a rescue autophagy response
67
Phoenix Amphothrophic cells using the standard Ca²+‐phosphate procedure. After 48 h, the
virus containing medium was centrifuged at 1200 r.p.m. to purify virus from cell debris and
supernatant was supplemented with 10 µg/ml polybrene. Target cells were plated at 70%
confluence and allowed to attach overnight in standard medium. For infections, the culture
medium was replaced with the virus containing medium and incubated for 8 h at 37 °C.
Transduced cell populations were subsequently selected with 1–2 µg/ml puromycin,
depending on cell type (2 µg/ml for HeLa cells and 1 µg/ml for MCF‐7 cells). After 1 week of
selection, expression of the targeted proteins was determined by western blot.
Cell death analysis.
Cell death was determined by PI exclusion. In short, 50 000 cells were plated in a 24‐well
plate and allowed to attach overnight. Cells were treated for 48 h and harvested. The cell
pellet was resuspended in 200 µl medium and stained with PI at 1 µg/ml just before
measuring by flow cytometry. Samples were analyzed using FlowJo software (Tree Star Inc.,
Ashland, OR, USA). For quantification of apoptotic DNA fragmentation (Nicoletti assay) cells
were resuspended in Nicoletti buffer48 supplemented with 50 µg/ml PI for 12 h, subsequent
flow cytometric measurement of PI‐stained nuclei was performed. Phosphatidylserine
exposure during apoptosis was detected by annexin V assay. In short, 50 000 cells were
plated in a 24‐well plate and allowed to attach overnight. Cells were treated for 48 h and
harvested. The cell pellet was stained with annexin V‐APC and 7‐AAD for 15 min at RT,
subsequently flow cytometric measurement of annexin V and 7‐AAD was performed.
Mitochondrial membrane potential analysis.
Mitochondrial activity was measured with Mitotracker Orange CMTMRos. Treated cells
were incubated for 30 min with 25 nM Mitotracker Orange at 37 °C. After staining, cells
were washed and 7‐AAD was added followed by cytometric analysis.
As a second mitochondrial membrane potential assay, JC‐1 staining was used. Cells were
stained for 30 min at RT with 4 µM JC‐1. Depolarization was measured in FITC and PE
channel by flow cytometry.
LC3 fluorescence microscopy.
HeLa and MCF‐7 cells overexpressing LC3–GFP were cultured on Poly‐D‐lysine‐coated 24
mm diameter glass coverslips in six‐well plates and treated with BetA, rapamycin and CsA
for indicated time points and concentrations. The glass coverslips were mounted into a
chamber of the microscope for live‐cell imaging and Z‐stack measurements and placed in a
Leica DMI 6000 (TCS SP8) microscope (with adaptive focus, Motorized XY‐Stage and SuperZ
Galvo) and a case incubator at 37 °C. Samples were analyzed using Leica Las AF software.
Quantification was performed with Image J49 generating a cut‐off for the basal dispersed
LC3 fluorescence, allowing for the quantification of fluorescence in the concentrated areas
(LC3–GFP‐associated autophagosomes).
Chapter 2
68
Tandem fluorescence microscopy.
HeLa and A549 cells were transiently transfected with tandem fluorescent LC3 (mRFP–
eGFP–LC3, kindly provided by T Yoshimori30 using polyethylenimine (PEI) transfection
(Brunschwig, The Netherlands). 24 h after transfection cells were treated with 10 µg/ml
BetA or 10 µM rapamycin for 18 h. HeLa cells were transiently transfected with tandem
fluoresecent p62 (pDest‐mCherry‐EGFP‐p62, kindly provided by E Reits, AMC, The
Netherlands), using PEI transfection. Twenty‐four hours after transfection, cells were
treated with 10 µg/ml BetA or 10 µM rapamycin for 12 h.
Degradation of long‐lived proteins.
MCF‐7 cells were seeded in 12‐well plates. The next day cells were labeled with C‐14 valine
(0.2 µCi/ml). After 24 h, a cold chase using cell culture medium only was performed before
adding BetA or rapamycin for various time points. Supernatants and cells were collected
separately and both were precipitated for 30 min on ice in 10% TCA (trichloroacetic acid).
Precipitates were collected via centrifugation for 10 min at 10 000 r.p.m. and subsequently
dissolved in 0.5M NaOH. Radioactivity in supernatant and cell samples was measured and
the ratio determined. The relative degradation ratio in the control cells was set to ‘one’ and
compared with the degradation ratios in BetA and rapamycin‐treated samples.
Western blot analysis.
Cells were lysed in 1x RIPA lysis buffer (Thermo Fisher Scientific, Waltham, MA, USA)
containing complete proteinase inhibitor (Roche, Penzberg, Germany) and subjected to
protein quantification using a BCA kit (Pierce, Thermo Fisher Scientific, Waltham, MA, USA).
A quantity of 25 µg protein per lane was applied for SDS‐PAGE. Subsequent blotting was
performed using a PVDF membrane (Amersham Biosciences, Amersham, UK). Membranes
were blocked in 5% milk (blocking buffer) in TRIS phosphate‐buffered saline solution
containing TWEEN 20 (0.2%) (TBST‐T) for 1 h at room temperature. Primary antibody
incubations were performed in 1% milk/TBS‐T (LC3 antibody, tubulin antibody) or 5%
BSA/TBS‐T (ATG5 antibody, p62 antibody and ERK1/2 antibody) overnight at 4°C.
Membranes were washed three times and incubated in blocking buffer for 1 h with a
secondary HRP (horseradish peroxidase)‐labeled antibody (anti‐rabbit IgG (H+L) or anti‐
mouse IgG (H+L); Southern Biotech, Birmingham, AL, USA). For chemiluminescent
visualization, Lumi‐Light plus substrate (Roche, Penzberg, Germany) was used. Blots were
analyzed by ImageQuant LAS4000. Band intensities were quantified using Image J software
(NIH, Bethesda, MD, USA).
Statistical analysis.
Statistical analyses were performed with Prism 5 (GraphPad Software, La Jolla, CA, USA)
applying Student’s t‐test. Differences were considered significant with P‐values <0.05 (*),
<0.01 (**) and <0.001 (***).
Betulinic acid induces a rescue autophagy response
69
Conflict of Interest
The authors declare no conflict of interest.
Acknowledgements
We would like to thank G Kroemer (Institut Gustave Roussy, Villejuif, France) for the LC3–
GFP construct, N Mizushima (Department of Cell Biology, Okazaki, Japan) and M Komatsu
(Department of Molecular Oncology, Tokyo, Japan) for providing MEFs, SW Tait (Beatson
Institute, Institute of Cancer Sciences Glasgow, UK) for the plasmids. The microscopy images
were taken at the core facility Cellular Imaging/LCAM‐AMC. We would like to thank DI
Picavet for technical assistance, furthermore MF Bijlsma for his valuable scientific input and
helpful discussions. This work was supported by a grant of the Stichting Nationaal Fonds
tegen Kanker (SNFK), Amsterdam, The Netherlands.
Chapter 2
70
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Supplementary figures
Supplementary Figure 1. BetA induces cell death in a concentration dependent fashion. HeLa cells were
treated for 48 hours with indicated concentrations of BetA after which cell death was assessed by PI
exclusion.
Supplementary Figure 2. Necrostatin blocks TNF‐induced necroptosis. U937 cells were pre‐treated with or
without 10 µM zVAD.fmk and with or without 25 µM necrostatin‐1 for one hour and subjected to 40 ng/ml
TNF‐α for 48 h after which cell death was assessed through PI exclusion. Mean + S.D. of three indendent
experiments are shown, ***P<0.001.
0
20
40
60
80
100
% P
Ipos
0 5 7.5 10
μg/ml BetA
***
***%
PIpo
s
Q-VD-OPh--
-+
+
- --
-
necrostatin - - ++
++
++
TNF-α
***
0
20
40
60
+
***
Chapter 2
74
Supplementary Figure 3. BetA induces autophagy and autophagic flux. HeLa cells were treated with (a)
indicated concentrations of BetA for 18 hours or (b) indicated time points. LC3 processing was assessed via
immunoblotting. Results for endogenous LC3 are shown. LC3 I (18 kDa) and LC3 II (16 kDa). Tubulin is used
as a control. Band intensity of western blot was quantified using Image J software. Mean + S.D. of three
independent experiments are shown, *P < 0.05; **P< 0.01; ***P<0.001; n.s., not significant. (c) HeLa cells
were pre‐treated for 1 hour with 10 µg/ml cycloheximide followed by 48 h of BetA treatment. P62 levels
were determined via western blot. ERK1/2 is used as a control. Band intensity was quantified using Image J
software. Single experiment is shown. (d) HeLa cells and A549 cells with tandem fluorescent P62 (pDest‐
mCherry‐EGFP‐p62) were treated with 10 µg/ml BetA or 10 µM rapamycin and after 18 h cells were analyzed
by confocal microscopy. Representative pictures are shown of three experiments.
a
LC3 I
LC3 II
Tubulin
0 5 7.5 10 μg/ml BetA2.5 - + - + - + μg/ml BetA6h 12h 18h
b
LC3 I
LC3 II
Tubulin
0
1
2
3
LC
3 I
I /
LC
3 I
μg/ml BetA0 5 7.5 102.50
2.5
5
LC
3 I
I /
LC
3 I
- + - + - + μg/ml BetA6h 12h 18h
nsns
*****
ns * *
c
DMSO rapamycinBetA
0 µm 10 0 µm 10 0 µm 10
0 µm 10 0 µm 10 0 µm 10
0 25µm 0 25µm 0 25µm
HeL
aA
549
d
0
1
2
rel. p
62
p62
Erk1/2
rapamycin-- -
++
- --
-cycloheximide - -+
+ +
+BetA
+- -
Betulinic acid induces a rescue autophagy response
75
Supplementary Figure 4. ATG deficiency results in increased BetA‐induced cell death (a) Knockdown of
ATG5 in HeLa, HeLa\LC3‐GFP and MCF‐7\LC3‐GFP cells with shRNA control, shRNA ATG5 #1 and shRNA ATG5
#3 was assessed via immunoblotting. (b) MCF‐7\LC3‐GFP cells with ATG5 knockdown #1 and #2 and control
cells were subjected to different concentrations of BetA. After 48 h after cell death was measured via PI
exclusion and DNA fragmentation was assessed. Mean + S.D. of three independent experiments are shown.
(c) Mouse embryonic fibroblasts lacking either AtTG5 or ATG7 and their respective control cells were
subjected to different concentrations of BetA for 18 h and phosphatidylserine (PS) exposure was measured.
Mean + S.D. of three independent experiments are shown.
a
+
+-
-control
ATG5 #2
Atg5
level ATG5
ATG5 #1
+
++
+
--
- --
- -
- --
HeLaMCF-7LC3-GFP
HeLaLC3-GFP
+
++
-- -
- --
1.00 0.28 0.22 0.251.00 1.000.14 0.42 0.29
controlshRNAATG5 #1shRNAATG5 #2
0 5 10 150
20
40
60
80
100
BetA (µg/ml) BetA (µg/ml)0 5 10 15
0
10
20
30
40
50
% D
NA
fra
gmen
tatio
nb
c
% P
Ipos
BetA (µg/ml) BetA (µg/ml)
controlshRNAATG5 #1shRNAATG5 #2
0
20
40
60
80
100
% A
nnex
in V
pos
0 5 10 15 20 0 5 10 15 200
20
40
60
80
100
% A
nnex
in V
pos
wtAtg5 -/-
Atg7 +/-Atg7 -/-
Chapter 3
Betulinic acid induces a novel cell death
pathway that depends on cardiolipin
modification
Lisette Potze, Simone di Franco, Mia Pras‐Raves, Daisy I. Picavet,
Henk A. van Veen, Henk van Lenthe, Franziska B. Mullauer,
Nicole N. van der Wel, Angela Luyf, Antoine H. C. van Kampen,
Stephen Kemp, Vincent Everts, Jan H. Kessler, Frédéric M. Vaz,
Jan Paul Medema
Oncogene 2015
“The more there is of mine, the less there is of yours”
Lewis Carroll, Alice in Wonderland
Chapter 3
78
Abstract
Cancer is associated with strong changes in lipid metabolism. For instance, normal cells take
up fatty acids (FAs) from the circulation, while tumour cells generate their own and become
dependent on de novo FA synthesis, which could provide a vulnerability to target tumour
cells. Betulinic acid (BetA) is a natural compound that selectively kills tumour cells through
an ill‐defined mechanism that is independent of BAX and BAK, but depends on
mitochondrial permeability transition‐pore opening. Here we unravel this pathway and
show that BetA inhibits the activity of stearoyl‐CoA‐desaturase (SCD‐1). This enzyme is
overexpressed in tumour cells and critically important for cells that utilize de novo FA
synthesis as it converts newly synthesized saturated FAs to unsaturated FAs. Intriguingly,
we find that inhibition of SCD‐1 by BetA or, alternatively, with a specific SCD‐1 inhibitor
directly and rapidly impacts on the saturation level of cardiolipin (CL), a mitochondrial lipid
that has important structural and metabolic functions and at the same time regulates
mitochondria‐dependent cell death. As a result of the enhanced CL saturation mitochondria
of cancer cells, but not normal cells that do not depend on de novo FA synthesis, undergo
ultrastructural changes, release cytochrome c and quickly induce cell death. Importantly,
addition of unsaturated FAs circumvented the need for SCD‐1 activity and thereby
prevented BetA‐induced CL saturation and subsequent cytotoxicity, supporting the
importance of this novel pathway in the cytotoxicity induced by BetA.
BetA‐induced cell death by cardiolipin saturation
79
Introduction
Cancer is characterized by cell growth and proliferation, which requires an enormous surge
in novel building blocks, such as nucleic acids, lipids and amino acids. To meet these
requirements, cancer cells undergo major changes in their metabolism. For instance, lipid
metabolism undergoes a dramatic shift towards lipid synthesis.1–3 For cellular lipid
production, fatty acids (FAs) are needed as building blocks, which are either derived from
exogenous sources or from de novo FA synthesis. Whereas normal cells prefer exogenous
sources, tumour cells favour de novo synthesis.4–6 This differential usage of FA source is
supported by observations that enzymes involved in FA synthesis, such as ATP‐citrate lyase
and FA synthase, are required for transformation of cells and upregulated in several tumour
types.7–10 The main products of FA synthesis are palmitic acid (PA) and stearic acid,
saturated FAs that are toxic for the cell at high levels and therefore converted to their
monounsaturated forms (palmitoleic acid (POA) and oleic acid) by stearoyl‐CoA‐desaturase
(SCD‐1). This enzyme, located in the endoplasmatic reticulum, catalyses the introduction of
a double bond at the ω‐9 position of saturated FAs and is overexpressed in cancer cells.11–
16 Unsaturated FAs are abundantly present in mammalian cells, as their structural properties
are needed to maintain optimal fluidity of cellular membranes. Due to its tumour‐selective
activation, de novo FA synthesis has been suggested as an attractive target of anticancer
therapy.8
Betulinic acid (BetA) is a cytotoxic plant‐derived compound that is tumour selective and
does not kill normal cells.17–19 It induces apoptosis in a wide variety of tumour types through
a not completely understood, but mitochondria‐dependent mechanism.20–23 Importantly,
this involves mitochondrial permeability transition (PT)‐pore opening, but is independent
of BAX and BAK, pointing to a distinct mechanism as compared with classical mitochondrial‐
dependent apoptosis. The general anti‐cancer applicability of BetA and its selectivity
suggests that it targets an essential and common pathway in tumour cells. Here we show
that BetA affects mitochondrial morphology by changing the FA composition of cardiolipin
(CL). CL is a unique mitochondrial phospholipid that contains four FA side chains. It is
associated with several mitochondrial proteins and respiratory chain complexes and is
essential for mitochondrial function and structural integrity of the organelle.24–27 In addition,
CL is known to have an important role in apoptosis due to its interaction with core apoptotic
machinery components, such as cytochrome c, caspase‐ 8, BCL‐2 family members and PT‐
pore components.25, 28–31
Our study demonstrates that BetA treatment increases the incorporation of saturated FAs
in CL through inhibition of SCD‐1. This is detrimental for mitochondrial morphology and
leads to apoptotic cancer cell death.
Chapter 3
80
Results
Mitochondrial morphology is changed and CL saturation increased upon BetA
treatment
In untreated cancer cells and normal cells, mitochondria appeared as a tubular network
evenly divided throughout the cell (Figure 1a and Supplementary Figure 1). In contrast, in
cancer cells treated with BetA the mitochondrial network changed in a concentration
dependent manner and became more fragmented (Figure 1a and Supplementary Figure 1).
Strikingly, this fragmentation is not observed in non‐transformed human fibroblasts (Co18;
Supplementary Figure 1). To gain more insight into these mitochondrial changes at the
ultrastructural level, transmission electron microscopy was employed. Untreated cells
contained mitochondria with a typical longitudinal cristae. Upon BetA treatment,
mitochondria were more electron dense and displayed significant ultrastructural changes,
in particular, concentric (circular shaped) cristae were evident (Figure 1b). Interestingly,
such cristae abnormalities have previously been observed in tissues of Barth syndrome
(BTHS) patients,32 a disease that is caused by a germline mutation in the Tafazzin gene,
which encodes a transacylase involved in CL remodelling and maturation. Cells of BTHS
patients display characteristic changes in CL, which cause mitochondrial ultrastructural as
well as functional abnormalities.33
To determine whether the observed BetA‐induced mitochondrial changes were also due to
changes in the composition of CL, analysis of CL in several cancer cell lines was performed
using high‐performance liquid chromatography–mass spectrometry. A large variety of CL
molecules is normally detected, which is due to a difference in the length and saturation of
the four FA side chains in CL. In untreated tumour cells, CL appeared as six major clusters
containing FA side chains of increasing length (from C64 to C74). The individual clusters are
then further subdivided based on the level of saturation of their FA side chains (indicated
by CL(64:X) to CL(74:X), where X denotes the number of unsaturations, that is, double bonds
in the FA side chains; Figure 2a). The major CL cluster detected contained 68 side chain
carbons (C68) and one to five double bonds (C68:1 to C68:5; Figure 2a and c). Importantly,
BetA treatment of several cancer cell lines resulted in significant changes in the composition
of CL that is evident from a shift in CL clusters to higher m/z values and hence less
unsaturated CL species (Figure 2b). Zooming in on the major C68 cluster in these cell lines
revealed a strong decrease in CL species with four or five double bonds and a concomitant
increase of more saturated C68 CL species with only two or three unsaturations (Figure 2c
and e, Supplementary Figure 2A, B and Supplementary Figure 6B and C). This profile is very
similar to the one observed in fibroblasts from BTHS patients (Figure 2f and h), which as a
consequence have major defects in their mitochondria, suggesting that the BetA‐induced
CL modification is instrumental in the mitochondrial changes.
BetA‐induced cell death by cardiolipin saturation
81
The changes in FA composition of CL can be brought about by either de novo synthesis of
complete CL molecules or by direct modification of the FA side chains by specific
remodelling enzymes.34 To monitor the effect of BetA on de novo FA incorporation in CL,
cells were incubated with heptadecanoic acid (C17:0), which is a low‐abundant FA in normal
physiology. Within a day, C17‐containing CL clusters (odd numbered CL species) made up a
significant proportion of the CL present in cells, indicating that this odd‐chain FA was rapidly
incorporated into CL (Figure 2i and k). These observations indicate that CL is relatively
rapidly metabolized in cancer cells. In addition, the degree of unsaturation of C17‐
containing CL clusters was comparable to the existing (even numbered) clusters (Figure 2m),
which suggested that exogenous C17:0 was taken up into the FA pool and also converted to
its monounsaturated form, C17:1. Importantly, in BetA‐treated cells rapid CL side chain
turnover was also observed. However, in the presence of BetA the C17‐containing clusters
were more saturated (Figure 2j and l), a shift that was similar to the even‐numbered
counterparts (Figure 2e and n). This indicated that BetA‐induced CL modification is a direct
result from incorporation of novel FA side chains that in the presence of BetA are more
saturated. Importantly, phosphaditylglycerol, which is the precursor of CL, also
accumulated in a relatively saturated form in BetA‐treated cells (Supplementary Figure 3A
and B). Modification of CL was therefore dependent on a step further upstream in the
biosynthesis of CL.
SCD‐1 activity is instrumental in BetA‐induced mitochondrial damage
In cells, de novo synthesized and exogenous saturated FAs are converted to unsaturated
FAs via the enzyme SCD‐1 (Figure 3a). In cancer cells SCD‐1 RNA levels are higher as
compared with normal fibroblasts (Supplementary Figure 4A). This is consistent with
literature reports and suggests that cancer cells are more dependent on desaturase
activity13,16 due to the activation of de novo FA synthesis in favour of FA uptake.
Accumulation of saturated FAs in phosphaditylglycerol and CL could therefore be a direct
result of dysfunctional FA conversion by SCD‐1. To measure SCD‐1 activity, stable isotope
labelled 2H3‐C16:0 and 2H5‐C18:0 were added to live cells and conversion rates to
unsaturated FAs were measured. Untreated cancer cells displayed a rapid conversion to the
monounsaturated FAs, which was blocked by a specific SCD‐1 inhibitor or genetic
knockdown of SCD‐1, confirming that SCD‐1 was responsible for this conversion (Figure 3b
and d and Supplementary Figure 4B and C). In line with the RNA levels, the SCD‐1 activity is
significantly lower in Co18 as compared with cancer cells.
Importantly, generation of unsaturated FAs by SCD‐1 was strongly reduced by addition of
BetA in all lines tested. This indicates that BetA inhibited SCD‐1 activity (Figure 3b and c and
Supplementary Figure 4C) and directly affects the pool of intracellular FAs, which then
impacts on the saturation level of CL. In agreement, inhibition of SCD‐1 with a commercial
inhibitor also resulted in a rapid change in the composition of CL (Figure 3g) as well as in a
Chapter 3
82
significant change in the size, ultrastructure and network of mitochondria (Figure 3h and
Supplementary Figure 5). These data suggest that blocking FA desaturation is detrimental
for the mitochondria through a rapid modification of CL side chains.
Figure 1. BetA‐induced mitochondrial morphology changes (a) HeLa cells with MitoRFP were treated with
vehicle (DMSO), 5 µg/ml or 10 µg/ml BetA and after 18h cells were analysed by confocal microscopy. (b)
HeLa cells were treated with vehicle (DMSO) or 10 µg/ml BetA for 18 h after which cells were fixed and
processed for TEM analysis. Pictures representative for 3 experiments are shown.
Unsaturated FAs revert CL modification and mitochondrial changes
High levels of saturated FAs are known to be cytotoxic and our current data point to a direct
impact on the mitochondria.35,36 If this model is correct then addition of a surplus of
saturated FAs would aggravate, while addition of unsaturated FAs would rather revert BetA‐
induced mitochondrial damage. Cells were therefore first treated with either PA (C16:0) or
POA (C16:1). Addition of PA had relatively little impact on the composition of CL, as
exemplified by the C68 cluster (Figure 3e and f and Supplementary Figure 6A and C),
indicating that the added FA did not change normal CL metabolism. Single addition of POA
slightly enhanced the level of unsaturation in CL as compared with untreated tumour cells
(Figure 3e and f and Supplementary Figure 6A and C). However, the most striking effect was
A DMSO 5 μg/ml BetA 10 μg/ml BetA
ZO
OM
B
ZO
OM
ZO
OM
DM
SO
Bet
A
0 μm 25 0 μm 25 0 μm 25
500nm 500nm
BetA‐induced cell death by cardiolipin saturation
83
observed when POA was added together with BetA as this prevented the induction of CL
saturation significantly (Figure 3e and f and Supplementary Figure 6A and C). Similar effects
were observed when CL saturation was induced by SCD‐1 inhibitor (Figure 3g and
Supplementary Figure 6D), indicating that the desaturase inhibition indeed directly impacts
on CL due to a decrease in the production of unsaturated FAs. In contrast, PA addition rather
enhanced the effect that BetA and SCD‐1 inhibition exerted on CL saturation (Figure 3e and
g and Supplementary Figure 6A and D). This confirmed that blocking SCD‐1 activity is
instrumental in BetA‐induced CL changes as saturation can be prevented by the addition of
unsaturated FAs, which bypasses the need for SCD‐1 activity. The causal link between SCD‐
1 activity and CL saturation prompted us to investigate whether BetA‐induced
mitochondrial morphology changes were a direct result of CL saturation or whether they
are induced through alternative pathways. Addition of either saturated (PA) or unsaturated
(POA) FAs had no effect on the tubular mitochondrial network and cristae structure of
mitochondria (Supplementary Figure 7A and B). However, the BetA‐induced mitochondrial
changes were clearly potentiated by addition of saturated FAs (PA) and more importantly
prevented by unsaturated FAs (POA; Figure 3i and j), establishing a causal relationship
between SCD‐1 activity, CL FA composition and mitochondrial morphology.
CL modification evokes cell death and decreases clonogenic survival
Previously, we provided evidence that BetA induces mitochondrial leakage, cytochrome c
release in a PT‐pore dependent fashion and subsequent cell death.23 Cytochrome c release
was indeed observed upon BetA treatment and with SCD‐1 inhibitor treatment (Figure 4a
and c), but interestingly, this release was significantly reduced when treatments were
combined with POA. Vice versa, addition of PA enhanced the amount of cells showing
cytochrome c release (Figure 4a and c), indicating that the inhibitory effects of BetA on SCD‐
1 activity directly impact on mitochondrial damage and lead to cytochrome c release.
Moreover, these observations extend to the actual induction of cell death as measured by
propidium iodide exclusion (Figure 4d and e). The validity of this novel cell death pathway
was further substantiated with the use of SCD‐1 inhibitor or genetic knockdown, which, next
to mitochondrial defects, also induced cell death that could be blocked by exogenous
addition of POA (Figure 4f and Supplementary Figure 8A and B). These data suggest that
BetA‐induced cell death by inhibiting SCD‐1. It is important to realize though that BetA‐
induced death is more rapid than SCD‐1‐induced cell death, whereas the effects on SCD‐1
activity are if anything more effective with SCD‐1 inhibitors. This suggests that BetA may
have additional effects that enhance the dependency on SCD‐1 activity. In agreement,
combining BetA with SCD‐1 inhibitor resulted in enhanced cell death as compared with SCD‐
1 inhibitor alone, confirming that BetA has a stronger impact on cells. We hypothesize that
BetA enhances the need for unsaturated FA by increasing the turnover of lipids and as
Chapter 3
84
m/z
m/z
670 680 690 700 710 720 730 740
20
100
0
40
60
80
rela
tive
inte
nsity
(%
)
672.4673.4
674.4
686.5685.5
687.5
698.5
699.5
700.5
701.5
711.5
712.5
713.5
714.5
715.5724.5
725.5
726.5 727.5
728.5
737.5
738.5
739.5
C74
C72PG(32:x)
C70C68
20
100
0
40
60
80
rela
tive
inte
nsity
(%
)
672.4
673.4674.4
675.4
668.5
686.5
687.5
688.5
689.5
698.5
699.5
701.5
702.5
700.5
711.5
712.5
713.5 714.5
715.5
716.5
PG(32:x)
724.5
725.5
726.5727.5
728.5
737.5
738.5739.5
698 699 700 701 702 703
100
80
60
40
20
0
Rel
ativ
e in
tens
ity (
%)
698 699 700 701 702 703
100
80
60
40
20
0
Rel
ativ
e in
tens
ity (
%)
DMSO BetA
698 699 700 701 702 703
100
80
60
40
20
0
Re
lativ
e in
tens
ity (
%)
704 698 699 700 701 702 703
100
80
60
40
20
0
Rel
ativ
e in
tens
ity (
%)
704m/z
m/z m/z
AAA
B
C D E
F G H
fo
ld in
crea
se/d
ecre
ase
Bet
A v
s. a
vg.
DM
SO
( 2lo
g)
f
old
incr
eas
e/d
ecre
ase
BH
TS
vs.
avg
. co
ntro
l ( 2lo
g)
1.0
1.5
0.0
0.5
-1.0
-1.5
-0.5
0.0
2.0
4.0
-2.0
-4.0
Control BTHS
DMSO
BetA
C64
C66
C74
C72
C70
C68
C64
C66
C68:5
C68:4
C68:3C68:2
C68:1
C68:5
C68:4
C68:3
C68:2
C68:1
C68:5
C68:4
C68:3
C68:2
C68:1C68:5
C68:4
C68:2
C68:1
C68:5C68:4
C68:3
C68:2
C68:1
CL(68:2)
CL(68:3)
CL(68:4)
CL(68:5)
CL(68:2)
CL(68:3)
CL(68:4)
CL(68:5)
C68:3
BetA‐induced cell death by cardiolipin saturation
85
Figure 2. BetA‐induced cardiolipin saturation (a) HeLa cells were treated for 18 h with vehicle (DMSO)
followed by CL analysis by HPLC mass spectrometry. (b) HeLa cells were treated for 18 h with 10 µg/ml BetA
followed by CL analysis by HPLC mass spectrometry. (c) Zoom in of CL C68 cluster (containing 2 x C16 and 2
x C18 fatty acids) of DMSO treated cells 18 h (d) Zoom in of CL C68 cluster of 10 µg/ml BetA treated cells.
(e) Quantification of fold change of C68:X species in BetA treated (18 h) HeLa cells (n=8) compared to vehicle
treated HeLa cells (n=8). (f) Zoom in of CL C68 cluster of control fibroblasts. (g) Zoom in of CL C68 cluster of
BTHS patients. (h) Quantification of fold change of C68:X species in BTHS patients (n=3) compared to
controls (n=3). HeLa cells were pre‐treated for 4 hours with vehicle (DMSO) (i, j) or 50 µM heptadecanoic
acid (C17:0) (k, l) after which vehicle (DMSO) i, k) or 10 µg/ml BetA (j, l) was applied for 18h. Zoom in of CL
clusters of C68 and C69 (containing C17) are shown. (m) Quantitative analysis of CL content in C68 and C69
CL cluster of DMSO C17:0 treated cells (n=2). (n) Quantification of change of C68:X species in BetA treated
HeLa cells compared to vehicle (DMSO) treated HeLa cells (n=2)
100
80
60
40
20
0
5
4
3
2
1
54 3
21
698 700 702 704 706 708 710
5
43
2
1
5
4 32
1
698 700 702 704 706 708 710
5
4
3
2
1
5
4
3
2
1
100
80
60
40
20
0698 700 702 704 706 708 710
5
43
2
15
4
3
2
1
698 700 702 704 706 708 710
DMSO BetA
DMSO + C17 BetA + C17
Rel
ativ
e in
tens
ity (
%)
Rel
ativ
e in
tens
ity (
%)
m/zm/z
m/zm/z
nmol
CL/
mg
pro
tein
0.0
0.2
0.4
0.6
0.8
C68 C69
4
5
3
2
fold
incr
ease
/decr
ease
BetA
vsavg
.D
MS
O (
2lo
g)
C68 C69 C68 C69
C68 C69C68 C69
-1.5
-1.0
-0.5
0.0
0.5
1.0
1.5
I J
K L
M N
100
80
60
40
20
0
100
80
60
40
20
0
4
5
3
2
Chapter 3
86
0.00
0.05
0.10
0.15
ratio
2H
3-
C16
:1/2
H3-
C16
:0 ***
***
0.0
0.2
0.4
0.6***
***
SCD-1 inhibBetA
+-- -
-+
SCD-1 inhibBetA
+-- -
-+
CO
S
CoA
CO
S
CoA
C9 C10
SCD-1
Saturated fatty acids
Unsaturated fatty acids
A B C
DMSO
PO
AD
MS
O
100
80
60
40
20
0
C68:1
C68:2
C68:3
C68:4
C68:5
698 699 700 701 702 703
100
80
60
40
20
0
Re
lativ
e in
ten
sity
(%
)
C68:1
C68:2
C68:3
C68:4
C68:5
698 699 700 701 702 703
C68:1
C68:2
C68:3
C68:4
C68:5
698 699 700 701 702 703
m/z
C68:1
C68:2
C68:3
C68:4
C68:5
698 699 700 701 702 703
C68:1
C68:2
C68:3C68:4
C68:5
698 699 700 701 702 703
C68:1
C68:2
C68:3C68:4
C68:5
698 699 700 701 702 703
PA
BetAD
0
1
2
3
rela
tive
CL
satu
ratio
nPOA
PABetA
+- - - -- -- -- - -
+
+ +++
+
*
nsE
ratio
2H
5-
C18
:1/2
H5-
C18
:0
100
80
60
40
20
0
m/z
1.5
0.0
0.5
1.0
rela
tive
CL
satu
ratio
n
**
***
POAPA
+- - - -- -- -- - -
+
+ +++
+SCD-1 inhib
F
500nm
DMSO SCD-1 inhibitor
500nm
G
Re
lativ
e in
ten
sity
(%
)R
ela
tive
inte
nsi
ty (
%)
BetA‐induced cell death by cardiolipin saturation
87
Figure 3. Desaturase activity is instrumental in BetA‐induced mitochondrial damage (a) SCD‐1 enzyme,
introduces a double bond in saturated fatty acids at the n‐9 position producing unsaturated fatty acids. (b)
HeLa cells were treated with vehicle (DMSO), 150 nM SCD‐1 inhibitor or 10 µg/ml BetA for 18 h after which 2H3‐C16:0 was applied for additional 6 h. Conversion to 2H3‐C16:1 was measured. Mean ± SD of 3
experiments are shown. ***P<0.001. (c) HeLa cells were treated with vehicle, 150 nm SCD‐1 inhibitor or 10
µg/ml BetA for 18 h after which 2H5‐C18:0 was applied for additional 6 h. Conversion to 2H5‐C18:1 was
measured. Mean ± SD of 3 experiments are shown. ***P<0.001. (d) Zoom in of CL C68 clusters. HeLa cells
were incubated with vehicle (DMSO), 10 µg/ml BetA , 50 µM POA, 50 µM PA or a combination of 10 µg/ml
BetA with 50 µM POA or 50 µM PA for 18 h after which CL analysis was performed using HPLC mass
spectrometry (e) Quantification of CL saturation as measured in (d). Relative C68 CL saturation is shown
which is calculated as (C68:2 + C68:3) / (C68:4 + C68:5). Mean ± SD of 2 experiments are shown. * P< 0.05;
ns, not significant. (f) HeLa cells were subjected to vehicle (DMSO) or 200 nM SCD‐1 inhibitor with or without
50 µM POA or 50 µM PA for 40 h after which CLs were analysed by HPLC mass spectrometry. Relative C68
CL saturation is shown which was calculated as (C68:2 + C68:3) / (C68:4 + C68:5). Mean ± SD of 3 experiments
are shown. **P< 0.01; ***P<0.001. (g) HeLa cells were treated with vehicle (DMSO) or 200 nM SCD‐1
inhibitor for 40h after which cells were analysed via TEM. (h) HeLa cells with MitoRFP were subjected to
vehicle (DMSO) or 10 µg/ml BetA with or without 50 µM POA or 50 µM PA and after 18 h cells were analysed
via confocal microscopy. Pictures representative for 3 experiments are shown. (i) HeLa cells were subjected
to vehicle (DMSO), 10 µg/ml BetA with or without 50 µM POA or 50 µM PA and after 18 h cells were analysed
via TEM. Pictures representative for 3 experiments are shown.
DMSO BetA BetA + POA BetA + PAZ
OO
M
ZO
OM
ZO
OM
ZO
OM
0 μm 25 0 μm 25 0 μm 25 0 μm 25
DMSO BetA BetA + POA BetA + PA
500nm 500nm 500nm 500nm
H
I
Chapter 3
88
such increases the incorporation of toxic saturated FA into lipids. Sustaining a stable pool of
unsaturated FAs, by exogenous addition, therefore maintains the unsaturation grade of CL,
mitochondrial integrity and thereby allows for cell survival. The maintenance of the
unsaturated FA pool exerted long‐term protection as it even resulted in the recurrence of
clonogenic potential of BetA or SCD‐1 inhibitor‐treated cells. Single addition of these
compounds resulted in a complete loss of clonogenic growth (Figure 4g and h), which was
regained by the simple addition of POA. This effect was selective for this pathway and for
instance not observed when cells were treated with classical chemotherapy such as
etoposide (Supplementary Figure 8D). Taken together these data indicate that tumour cells
carry an intrinsic mitochondrial vulnerability that can be effectively targeted by inhibition
of SCD‐1, using either specific inhibitors or the natural compound BetA and is not observed
in normal fibroblasts. This vulnerability depends on enhancing the saturation of CL leading
to altered mitochondrial structure, membrane permeability and as a consequence cell
death and loss of clonogenic growth occur.
Discussion
Altered lipid metabolism is a key feature of tumour cells and required to sustain the
constant need for new biomass. Our current study provides strong evidence for an
unexpected mitochondrial vulnerability of tumour cells that depends on this de novo lipid
synthesis. De novo FA synthesis generates intrinsically toxic FAs, which need to be converted
by SCD‐1 into monounsaturated FAs. Here we show that inhibition of this final step in the
generation of preferred FAs results in cell death and loss of clonogenic growth. Interestingly,
we confirmed that normal cells do not contain high levels of SCD‐1 expression or activity
consistent with the idea that these cells do not utilize de novo FA synthesis but instead
acquire unsaturated FA from the surrounding. Although this effect of SCD‐1 inhibition on
tumour cells has been documented before, our data now provides an unexpected
mechanistic explanation of this observed toxicity. Firstly, we show that SCD‐1 inhibition
quickly impacts on the composition of CL FA side chains, resulting in mitochondrial
abnormalities, cytochrome c release and subsequent cell death. Secondly, we demonstrate
that BetA, which is a potent anti‐cancer agent, does so by inhibiting SCD‐1 and therefore
utilizes this tumour cell vulnerability. Together these data point to an upstream effect of
BetA on CL biosynthesis. The fact that SCD‐1 inhibitors mimic the effect of BetA and the
observation that both can be reverted by the simple addition of unsaturated FAs all point
to SCD‐1 as the vulnerability in the CL biosynthesis pathway of tumour cells. Previously, we
observed that BetA‐induced cell death is tumour selective and that normal cells are not
affected at doses that kill tumour cells both in vitro and in vivo. 22,37 In agreement, the BetA
or SCD‐1‐induced mitochondrial fragmentation in cancer cells is not detected in normal
cells. The here proposed mechanism of action could
BetA‐induced cell death by cardiolipin saturation
89
Figure 4. CL modification evokes cell death and decreases clonogenic survival (a) HeLa cells were pre‐treated for 24h with 50 µM POA after which vehicle (DMSO) or 10 µg/ml BetA was applied for 40 h. Other
samples were left untreated for 24 h after which 50 µM PA with or without 10 µg/ml BetA for 40 h was
applied. After treatment cytochrome c release was assessed via FACS. Data of 3 independent experiments
are shown. * P< 0.05, ns not significant. (b, c) HeLa cells were pre‐treated with 50 µM POA after which
vehicle (DMSO) or 10 µg/ml BetA was applied for 48 h. Other samples were left untreated for 24 h after
which 50 µM PA with or without 10 µg/ml BetA for 48h was applied. Cell death was assessed via PI exclusion.
Mean ± SD of 3 experiments are shown. * P< 0.05, ns not significant. (d) HeLa cells were subjected to vehicle
or 75 nM SCD‐1 inhibitor with or without 50 µM POA or 50 µM PA for 72 h after which cell death was
assessed via PI exclusion. Mean ± SD of 3 experiments are shown. **P< 0.01; ***P<0.001 (e) HeLa cells were
treated for 48 h with vehicle (DMSO) or 10 µg/ml BetA with or without 50 µM POA or 50 µM PA after which
fresh medium was applied for 72h. Cells were stained with crystal violet blue for 6h. Mean ± SD of 3
experiments are shown. **P< 0.01. (f) HeLa cells were treated for 72 h with 75 nM SCD‐1 inhibitor with or
without 50 µM POA or 50 µM PA after which fresh medium was applied for 48h. Cells were stained with
crystal violet blue for 6h. Mean ± SD of 2 experiments are shown. ***P<0.001.
POAPA
BetA
+- - - -- -- -- - -
+
+ +++
+
0
20
40
60
80
100
% P
Ipos
*
ns
FCS-H
DMSO POA PA
PIpo
s
BetA BetA + POA BetA + PA
3.1% 2.6% 3.3%
53.8% 23.9% 72.6%
0
20
40
60
80
% C
ytoc
hro
me
c re
lea
se
POAPA
BetA
+- - - -- -- -- - -
+
+ +++
+
1
0
2
3
POAPA
BetA
+- - - -- -- -- - -
+
+ +++
+
**
**
*
ns
A B
C D
E
**
***
0
20
40
60
80
100%
PIpo
s
POAPA
+- - - -- -- -- - -
+
+ +++
+SCD-1 inhib
abs
590
- 6
30
0
0.5
1.0
1.5
2.0
******
F
POAPA
+- - - -- -- -- - -
+
+ +++
+SCD-1 inhib
abs
590
- 6
30
Chapter 3
90
provide an explanation to this tumour selectivity. First, tumour cells appear addicted to de
novo FA synthesis2–5 and as such continuously generate saturated FAs that need to be
converted to unsaturated FAs. It is not completely clear why tumour cells prefer this
synthetic pathway even in the presence of exogenous FAs. Except for adipocytes, this
pathway is not utilized by normal cells, which acquire their FAs from exogenous sources.38
The latter provides a stable source of unsaturated FAs, and as such alleviates the need for
desaturase activity in normal cells. Second, tumour cells have previously been shown to
already contain CL species that are relatively more saturated as compared with normal
cells.39 This could be a consequence of the apparently higher turnover of CL in tumour cells
allowing for a less intense side chain modification or, alternatively, may be caused by the
fact that mainly monounsaturated FAs are generated by de novo synthesis. Indeed,
saturated FAs are abundantly found in cancer cells and also an increased content of
monounsaturated at the expense of poly‐unsaturated FAs is observed in transformed and
cancer cells.40–42
The higher saturation of CL suggests that tumour cells are closer to an unacceptable level
of saturation than normal cells and therefore appear to be nearer to the tipping point of
detrimental mitochondrial ultrastructural modifications and subsequent mitochondrial
permeability. In agreement, BTHS patients contain a similarly low level of unsaturated FA
side chains in CL and contain the same ultrastructural changes. However, this modification
by itself is not sufficient for the actual mitochondrial leakage to occur as most cells in BTHS
patients do not undergo cell death, suggesting that additional changes are needed. These
could involve increased ROS production, which is often observed in tumour cells43,44 or a
change in the way mitochondria are utilized in tumour cells, in particular in relation to the
so‐called Warburg effect.45,46 In agreement, our data show that BetA exerts cell death more
rapidly and more vigorously than SCD‐1 inhibition, which supports the idea that BetA is
more potent in inducing cell death despite the fact that we observe more potent SCD‐1
activity inhibition with SCD‐1 inhibitors. We believe this is due to the fact that BetA
enhances the need for new FA production. In essence we think that BetA not only stops the
production of unsaturated FA, but on the other end increases the turnover of lipids and
thereby the incorporation of saturated FA, which in the case of CL results in the toxic effects
on mitochondria. This could explain the tumour selectivity as normal cells are not as
dependent on SCD‐1 and can maintain a relatively stable pool of unsaturated FA by uptake
from the environment. The nature of this enhanced lipid turnover is not completely clear,
but could for instance be a result of the massive induction of autophagy observed with
BetA,67 which generates an enormous need for de novo membrane formation and thus lipid
synthesis. Further insight into these additional changes may reveal another vulnerability
that converges on the same pathway. Clues for these changes may come from neutrophils
in BTHS patients as these display a relatively high level of apoptosis and indeed these
patients frequently suffer from neutropenia.32,47
BetA‐induced cell death by cardiolipin saturation
91
The direct link between BetA‐induced cell death and mitochondria is consistent with
previous data which indicate that cell death ensues in a BAX and BAK‐independent
manner,23 but requires mitochondria and opening of the PT‐pore. In agreement,
cyclosporine A, an inhibitor of the PT‐pore, blocks cell death induced by BetA23 and data not
shown. Interestingly, recent data suggested that the FO c‐subunit ring of F1FO ATP synthase
can form a channel, which can lead to uncontrolled depolarisation and MOMP when opened
persistently.48 Whether this represents the PT‐pore remains to be confirmed, but it is
important to mention that F1FO ATP synthase as well as several of the other proposed
constituents of the PT‐pore associate with CL49 and CL can regulate PT‐pore opening.31
Similarly, cytochrome c, which is released upon BetA treatment, interacts directly with CL
through two independent binding sites.29,50–53 Moreover, Kagan et al.54 found that CL‐bound
cytochrome c acts as a peroxidase capable of catalysing H2O2‐dependent peroxidation of CL
and that this CL oxidation is an essential step in the release of cytochrome c during
apoptosis. Whether the increased CL saturation has similar effects on the release of
cytochrome c needs to be determined, but is a reasonable possibility. However, this initial
release of cytochrome c from the inner membrane is not sufficient for apoptosis to occur.
This requires mitochondrial outer membrane permeabilization either through BAX‐
dependent pore formation or through opening of the PT‐pore.31 As BetA‐induced death
depends on the latter it seems likely to assume that CL saturation also affects the opening
of the PT‐pore.
In addition to the release of cytochrome c, mitochondrial fragmentation was rapidly
observed in cells that have impaired SCD‐1 activity and therefore modified CL FA side chains.
The mitochondrial network is maintained by a continuous process of fusion (elongation of
mitochondria) and fission (fragmentation of mitochondria). It is debated whether
fusion/fission is important for cytochrome c release, but during apoptosis mitochondria are
remodelled via activation of the fission machinery and synchronal neutralization of the
fusion machinery.55,56 Importantly, this favoured mitochondrial fission occurs at the same
time as BAX activation and permeabilization of the outer mitochondrial membrane, leading
to cytochrome c release,57 suggesting that the events could be coupled. Mitochondrial
fusion/fission itself is orchestrated by proteins such as Drp1 and Opa1, but also the
structural, flexible, properties of CL.26,56,58 The observed mitochondrial fragmentation could
therefore also be a direct effect of increased CL saturation, but how this would favour
fragmentation is unclear and will require further analysis. Combined, our data point to a
rapid effect of SCD‐1 inhibition on the structural flexibility of CL and subsequently the
mitochondrial integrity. Previous observations highlighted the importance of SCD‐1 in
tumours. Neoplastic cells contain higher levels of SCD‐1 as compared with normal human
skin fibroblasts13 and SCD‐1 expression and activity are increased in several types of
cancer.16 Moreover, normal cells appear to be resistant to the cytotoxic effect of SCD‐1
inhibition.15 These observations suggests that a constantly active SCD‐1 must be present in
Chapter 3
92
cancer cells in order to maintain the level of unsaturated FAs to be incorporated in major
cell lipids and thereby protect the tumour cells from excess saturated FAs.13,15,59–62 In
agreement, knockdown of SCD‐1 or inhibition with a specific small molecule inhibitor led to
impaired biosynthesis of FAs, cholesteryl ester, triacylglycerol and phospholipid
synthesis12,15,63,64 and induced death, confirming a pivotal role for SCD‐1 in cancer.63 Several
studies have reported the use of pharmacologic inhibitors of SCD‐1 to reduce tumour
growth in preclinical cancer models.65,66 In line with our data, toxicity induced by impaired
SCD‐1 expression sensitized cancer cells to the pro‐apoptotic effects of PA.12,64 Our data
now provide mechanistic insight and indicate that inhibition of SCD‐1 rapidly changes the
side chain saturation of CL and impairs normal mitochondrial structure. We conclude that
CL is a crucial player in mitochondrial integrity that is strongly dependent on the level of
saturation of its side chains. Targeting of this saturation or potentially even CL synthase in
cancer cells provides a tumour‐selective cell death mechanism that is induced by BetA.
MATERIALS AND METHODS
Chemicals/antibodies
BetA (BioSolution, Halle, Germany, >99% purity) was dissolved in dimethylsulfoxide at 4
mg/ml and stored at − 80 °C. POA, PA, heptadecanoic acid and etoposide were purchased
from Sigma‐Aldrich (St Louis, MO, USA). SCD‐1 inhibitor (cat# 1716) was from Biovision
Chemscene (Milpitas, CA, USA). Primary antibody to cytochrome c (6H2B4) was obtained
from BD Pharmingen (Franklin Lakes, NJ, USA), secondary antibody fluorescein
isothiocyanate conjugated antibody was obtained from Beckman Coulter (Fullerton, CA,
USA). Crystal violet blue and glutaraldehyde were purchased from Merck (Darmstadt,
Germany).
Cell culture
HeLa cells, A549 cells, MCF‐7 cells, RKO cells and Co18 were obtained from the ATCC
(Manassas, VA, USA). Cells were cultured in Iscove's modified Dulbecco's medium
supplemented with 8% fetal calf serum, 2 mM L‐glutamine, 40 U/ml penicillin and 40 μg/ml
streptomycin.
RNA interference
Lentiviral vectors TRIPZ SCD small hairpin RNAs (GE Healthcare, cod. RHS4740‐EG6319,
Buckinghamshire, UK), or the non‐silencing small hairpin RNA (GE Healthcare, cod.
RHS4743) were transfected into HEK‐293 T cells using polyethylenimine (Brunschwig, The
Netherlands) according to vendor’s instructions. After 48 h and 72 h, the virus containing
medium was collected and filtered using Amicon Ultra‐15 Centrifugal Filter Unit with
Ultracel‐100 membrane (Millipore, Billerica, MA, USA). The virus were resuspended in
medium and HeLa cells were infected 24–48 h with virus containing medium supplemented
with 10 μg/ml polybrene. Transduced cell populations were subsequently selected with 1
BetA‐induced cell death by cardiolipin saturation
93
μg/ml puromycin and knockdown was induced by 72 h 2 μg/ml doxycycline treatment after
which expression of the targeted proteins were determined via quantitative real‐time PCR.
RNA isolation and quantitative PCR
RNA was isolated using the Superscript III Reverse Transcriptase Kit (Invitrogen, Waltham,
MA, USA). Total RNA was retrotranscribed using Nucleospin RNA Kit (Macherey‐Nagel,
Düren, Germany). Quantitative PCR analysis was performed using the following primers:
SCD‐1‐F (5′‐TCTAG CTCCTATACCACCACCA‐3′), SCD‐1‐R (5′‐TCGTCTCCAACTTATCTCCTCC‐3′),
GAPDH‐F (5′‐AATCCCATCACCATCTTCCA‐3′) and GAPDH‐R (5′‐TGGACTCC ACGACGTACTCA‐
3′).
Cell death analysis and cytochrome c release
Cell death was determined by propidium iodide exclusion as described before.67
Cytochrome c release was performed according to the protocol of N. Waterhouse.68 Briefly,
cells were permeabilized with 50 μg/ml digitonin/phosphate‐buffered saline/KCl buffer,
fixed for 30 min with paraformaldehyde and incubated in blocking buffer (3% BSA, 0.05%
saponin, 0.02% azide and 1:200 normal goat serum in phosphate‐buffered saline). Anti‐
cytochrome c incubation was performed overnight at 4 °C, after washing, fluorescein
isothiocyanate conjugated secondary antibody was applied for 1 h at room temperature.
Electron microscope
After the indicated treatment, cells were fixed in 1% glutaraldehyde and 4%
paraformaldehyde in 0.1 M sodium cacodylate buffer (McDowell fixative) and postfixed
with 1% osmiumtetroxide (OsO4, Electron microscopy sciences, Hatfield, PA, USA) and
kaliumhexacyanoferrate (K3FE(CN)6), VWR, Amsterdam, The Netherlands) in cacodylate
buffer. Subsequently, the cells were dehydrated in an alcohol series and embedded into
Epon (LX‐112 resin Ladd Research, Williston, VT, USA). Ultrathin sections were collected on
formvar‐coated grids, counterstained with uranil acetate and lead citrate and visualized
with transmission electron microscope (FEI technai 12).
Confocal fluorescence microscopy
HeLa cells transiently transfected using polyethylenimine according to vendor’s
instructions, with MitoRFP were grown on Poly‐D‐lysine coated 24 mm diameter glass cover
slips in six‐well plates. Cells were treated with BetA alone or in combination with the
indicated concentrations of PA or POA for 18 h. A549, MCF‐7, RKO and Co18 cells were
grown on Poly‐Dlysine coated 24 mm diameter glass cover slips in six‐well plates. Cells were
treated with vehicle or 10 μg/ml BetA for 18 h and stained 30 min with 100 nM mitotracker
red CMXROS. The glass cover slips were mounted and placed in a Leica DMI 6000 (TCS SP8)
microscope (with adaptive focus, Motorized XY‐Stage and SuperZ Galvo) and a case
Chapter 3
94
incubator at 37 °C for Z‐stack measurements. Samples were analysed using Leica Las AF
software (Leica Microsystems, Wetzlar, Germany).
Mass spectrometry measurements of CL
HeLa and A549 cells were harvested by trypsin and centrifugation at 300 g for 5 min at room
temperature, washed once with phosphate‐buffered saline, pelleted by centrifugation at
300 g for 5 min at room temperature. CL was analysed essentially as described previously.33
The relative abundances of the species in the sample‐extracts were determined by high‐
performance liquid chromatography‐mass spectrometry using a Surveyor high‐
performance liquid chromatography system hyphenated to a TSQ Quantum AM tandem
mass spectrometer (Thermo Finnigan Corporation, San Jose, CA, USA). The MS was
operated in the negative ion electrospray ionisation mode. Data were analysed using
Xcalibur software (Thermo Fisher Scientific, Waltham, MA, USA).
Desaturase activity measurements
Cells were treated for 18 h with 10 μg/ml BetA or 150 nM SCD‐1 inhibitor after which 50
μM 2H3‐palmitate (2H3‐C16:0; Cambridge Isotope Laboratories) or for HeLa cells, 50 μM 2H5‐
stearate (2H5‐C18:0; Cambridge Isotope Laboratories) was added for an additional 6 h.
Conversion of these saturated deuterium‐containing FAs to unsaturated 2H3‐C16:1 or 2H5‐
C18:1 was measured as described before.69,70
Clonogenic growth
HeLa cells were seeded in a 24‐well plate and treated with 10 μg/ml BetA, indicated
concentrations of SCD‐1 inhibitor or with 1 μg/ml etoposide, with or without 50 μM POA or
50 μM PA for 48 h (BetA) or 72 h (SCD‐1 inhibitor). After treatment, medium was changed
and cells were left to grow for an additional 2 days. Cells were fixed in 6% glutaraldehyde
and stained with crystal violet blue. Staining was dissolved in 0.5 ml 99% ethanol for 1 h
with mild shaking. 100 μl of dissolved crystal violet staining was transferred to a 96‐well
plate and absorbance (590–630 nm) was measured (BioTek, Winooski, VT, USA).
Statistical analysis
Statistical analyses were performed with Prism 5 (GraphPad software, La Jolla, CA, USA)
applying a 2‐tailed unpaired Student t‐test. Differences were considered significant when
P‐values, *P<0.05; **P<0.01; ***P<0.001.
BetA‐induced cell death by cardiolipin saturation
95
Conflict of interest
The authors declare no conflict of interest.
Acknowledgements
We thank Inge Dijkstra, Rob Ofman, Femke Beers‐Stet for technical assistance and Louis
Vermeulen for his valuable scientific input and helpful discussions. This work was supported
by a grant of the Stichting Nationaal Fonds tegen Kanker (SNFK), Amsterdam, The
Netherlands (LP).
Chapter 3
96
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45. Warburg O. On respiratory impairment in cancer cells. Science 1956 Aug 10;124(3215):269‐70. 46. Ward PS, Thompson CB. Metabolic reprogramming: a cancer hallmark even warburg did not anticipate. Cancer Cell 2012 Mar 20;21(3):297‐308. 47. Clarke SL, Bowron A, Gonzalez IL, Groves SJ, Newbury‐Ecob R, Clayton N, et al. Barth syndrome. Orphanet J Rare Dis 2013;8:23. 48. Alavian KN, Beutner G, Lazrove E, Sacchetti S, Park HA, Licznerski P, et al. An uncoupling channel within the c‐subunit ring of the F1FO ATP synthase is the mitochondrial permeability transition pore. Proc Natl Acad Sci U S A 2014 Jul 22;111(29):10580‐5. 49. Acehan D, Malhotra A, Xu Y, Ren M, Stokes DL, Schlame M. Cardiolipin affects the supramolecular organization of ATP synthase in mitochondria. Biophys J 2011 May 4;100(9):2184‐92. 50. Cory S, Adams JM. The Bcl2 family: regulators of the cellular life‐or‐death switch. Nat Rev Cancer 2002 Sep;2(9):647‐56. 51. Tuominen EK, Wallace CJ, Kinnunen PK. Phospholipid‐cytochrome c interaction: evidence for the extended lipid anchorage. J Biol Chem 2002 Mar 15;277(11):8822‐6. 52. Orrenius S, Zhivotovsky B, Nicotera P. Regulation of cell death: the calcium‐apoptosis link. Nat Rev Mol Cell Biol 2003 Jul;4(7):552‐65. 53. Huttemann M, Pecina P, Rainbolt et al. The multiple functions of cytochrome c and their regulation in life and death decisions of the mammalian cell: From respiration to apoptosis. Mitochondrion 2011 May;11(3):369‐81. 54. Kagan VE, Tyurin VA, Jiang J, Tyurina YY, Ritov VB, Amoscato AA, et al. Cytochrome c acts as a cardiolipin oxygenase required for
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Identification of Ras‐related nuclear protein, targeting protein for xenopus kinesin‐like protein 2, and stearoyl‐CoA desaturase 1 as promising cancer targets from an RNAi‐based screen. Cancer Res 2007 May 1;67(9):4390‐8. 64. Scaglia N, Igal RA. Inhibition of Stearoyl‐CoA Desaturase 1 expression in human lung adenocarcinoma cells impairs tumorigenesis. Int J Oncol 2008 Oct;33(4):839‐50. 65. Fritz V, Benfodda Z, Rodier G, Henriquet C, Iborra F, Avances C, et al. Abrogation of de novo lipogenesis by stearoyl‐CoA desaturase 1 inhibition interferes with oncogenic signaling and blocks prostate cancer progression in mice. Mol Cancer Ther 2010 Jun;9(6):1740‐54. 66. Roongta UV, Pabalan JG, Wang X, Ryseck RP, Fargnoli J, Henley BJ, et al. Cancer cell dependence on unsaturated fatty acids implicates stearoyl‐CoA desaturase as a target for cancer therapy. Mol Cancer Res 2011 Nov;9(11):1551‐61. 67. Potze L, Mullauer FB, Colak S, Kessler JH, Medema JP. Betulinic acid‐induced mitochondria‐dependent cell death is counterbalanced by an autophagic salvage response. Cell Death Dis 2014;5:e1169. 68. Waterhouse NJ, Trapani JA. A new quantitative assay for cytochrome c release in apoptotic cells. Cell Death Differ 2003 Jul;10(7):853‐5. 69. Valianpour F, Selhorst JJ, van Lint LE, van Gennip AH, Wanders RJ, Kemp S. Analysis of very long‐chain fatty acids using electrospray ionization mass spectrometry. Mol Genet Metab 2003 Jul;79(3):189‐96. 70. Engelen M, Ofman R, Mooijer PA, Poll‐The BT, Wanders RJ, Kemp S. Cholesteroldeprivation increases mono‐unsaturated very long‐chain fatty acids in skin fibroblasts from patients with X‐linked adrenoleukodystrophy. Biochim Biophys Acta 2008; 3: 105–111.
Chapter 3
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Supplementary figures
Supplementary Figure 1: BetA‐induced mitochondrial morphology changes in cancer cells and not in
normal cells. Indicated cell lines were treated with vehicle (DMSO) or 10 µg/ml BetA for 18 h after which
cells were stained with 100 nM mitotracker red CMXROS and analysed by confocal microscopy.
Supplementary Figure 2: Induction of CL saturation upon BetA treatment. MCF‐7 cells were subjected to
vehicle (DMSO) or 10 µg/ml BetA for 24 h after which CL content was measured. Relative C68 CL saturation
is shown, which is calculated as (C68:2 + C68:3) / (C68:4). Mean ± SD of 2 experiments are shown. * P< 0.05;
ns, not significant. (B) MCF‐7 cells were subjected to vehicle (DMSO) or 10 µg/ml BetA for 24 h after which
CL content was measured. Quantification of CL C68 cluster is shown. Mean ± SD of 2 experiments are shown.
A549 MCF-7 RKO CO18
Bet
AD
MS
O
rela
tive
CL
satu
ratio
n
0.0
0.2
0.4
0.6
0.8
BetA - +0.0
0.5
1.0
1.5 CL (68:4)
CL (68:3)
CL (68:2)
DMSO BetA
nmol
/mg
prot
ein
BA*
BetA‐induced cell death by cardiolipin saturation
101
Supplementary Figure 3: Heptadecanoic acid incorporates into CL. HeLa cells were pre‐treated with vehicle
(DMSO) or 50 µM heptadecanoic acid for 4 h after which vehicle (DMSO) (A) or 10 µg/ml BetA (B) was
applied for 18 h followed by CL analysis by HPLC mass spectrometry. Note the higher abundance of the C17
containing PG (33:0) compared to that of PG (33:1) in BetA treated cells.
Supplementary Figure 4:
Desaturase activity and levels in
cancer cells. (A) Indicated cell lines
were analysed for their relative
SCD‐1 mRNA levels by qPCR. (B)
HeLa cells with SCD‐1 shRNA were
treated with doxycycline for 72 h to
induce knockdown of SCD‐1. Levels
of SCD‐1 mRNA levels were
measured by qPCR. (C) Indicated
cell lines were treated with vehicle
(DMSO), 150 nM SCD‐1 inhibitor or
10 µg/ml BetA for 18 h after which 2H3‐C16:0 was applied for
additional 6 h. Conversion to 2H3‐
C16:1 was measured. Mean ± SD of
3 experiments are shown.
***P<0.001, **P<0.01.
670 680 690 700 710 720 730 740
20
100
0
40
60
80
rela
tive
inte
nsity
(%
)
686.5685.5 687.5
698.5694.4
693.4
699.5700.5
701.5
711.5
712.5
713.5
714.5
715.5
718.5
719.5
720.5721.5
722.5728.5
725.5
726.5
727.5
C74
C72
C70
C68
C69C71
C6620
100
0
40
60
80
rela
tive
inte
nsity
(%
)
DMSO + C17AAA
B BetA+ C17
C64
C67
C65
707.5706.5
708.5
705.5692.4
686.5685.5 687.5
698.5694.4
693.4
699.5
700.5
701.5 711.5
712.5
713.5
714.5
715.5
718.5
719.5
720.5
721.5
722.5728.5
725.5
726.5
727.5
C74
C72
C70
C68
C69 C71
C66
C64
C67
C65
707.5
706.5
708.5
705.5
692.4
PG(33:0)
PG(33:1)
PG(33:1)PG(33:0)
ratio
2 H3-
C16
:1/2 H
3- C
16:0
SCD-1 inhibBetA
+-- -
-+
0.20
0.00
0.05
0.10
0.15
0.25
+-- -
-+
+-- -
-+
+-- -
-+
A549 MCF-7 RKO CO18
******
******
*****
******
0.0
0.5
1.0
1.5
f
old
cha
nge
inS
CD
-1 m
RN
A le
vels
shSCD1H12dox
++-
+
non silencing
- +- +-
-- - - -
- -- -- -
++++
0.0
0.2
0.4
0.6
0.8
A54
9
HeL
a
MC
F-7
RK
O
CO
18
rela
tive
mR
NA
leve
ls
(SC
D-1
/GA
PD
H)
shSCD1D6
A B
C
Chapter 3
102
Supplementary Figure 5: SCD‐1 inhibitor induced mitochondrial morphology changes. HeLa cells with
MitoRFP were subjected to vehicle (DMSO), 200 nM SCD‐1 inhibitor with or without 50 µM POA or 50 µM
PA for 40 h after which cells were analysed by confocal microscopy. Representative pictures of 2
experiments are shown.
0 25µm 0 25µm 0 25µm
DMSO POA PA
SCD-1 inhib
0 μm 25 0 μm 25 0 μm 25
ZO
OM
ZO
OM
ZO
OM
SCD-1 inhib + POA SCD-1 inhib + PA
ZO
OM
ZO
OM
ZO
OM
BetA‐induced cell death by cardiolipin saturation
103
Supplementary Figure 6: CL levels of BetA and SCD‐1 inhibitor treated cells (A) HeLa cells were subjected
to vehicle (DMSO) or 10 µg/ml BetA with or without 50 µM POA or 50 µM PA for 18 h after which CL content
was measured. Quantification of CL C68 cluster is shown. Mean ± SD of 5 experiments are shown (B) A549
cells were subjected to vehicle (DMSO) or 10 µg/ml BetA with or without 50 µM POA or 50 µM PA for 18 h
after which CL content was measured. Relative C68 CL saturation of A549 cells is shown, which is calculated
as (C68:2 + C68:3) / (C68:4 + C68:5). Mean ± SD of 3 experiments are shown. * P< 0.05; ns, not significant.
(C) A549 cells were subjected to vehicle (DMSO) or 10 µg/ml BetA with or without 50 µM POA or 50 µM PA
for 18 h after which CL content was measured. Quantification of CL C68 cluster is shown. Mean ± SD of 2
experiments are shown. (D) HeLa cells were subjected to vehicle (DMSO) or 200 nM SCD‐1 inhibitor with or
without 50 µM POA or 50 µM PA for 40 h after which CL content was measured. Quantification of the CL
C68 cluster is shown. Mean ± SD of 3 experiments are shown.
CL (68:5)
CL (68:4)
CL (68:3)
CL (68:2)
0.0
0.2
0.4
0.6
0.8
1.0
nm
ol/m
g pr
ote
in
BetA
POA
PA
- + ++ +
+ + +
- - -----
- - -
A
C
D
0
20
40
60CL (68:5)
CL (68:4)
CL (68:3)
CL (68:2)
%C
Lfr
omto
talC
L
POA
PA
- + ++ +
+ + +
- - -----
- - -SCD-1 inhib
nm
ol/m
g pr
ote
in
BetA
POA
PA
- + ++ +
+ + +
- - -----
- - -
CL (68:5)
CL (68:4)
CL (68:3)
CL (68:2)
0.0
0.5
1.0
1.5
B
0.0
0.5
1.0
1.5
rela
tive
CL
satu
ratio
n
POAPA
BetA
+- - - -- -- -- - -
+
+ +++
+
*
ns
Chapter 3
104
Supplementary Figure 7: Effect of POA and PA on mitochondria (A) HeLa cells with MitoRFP were subjected
to vehicle (DMSO), 50 µM POA or 50 µM PA for 18h after which cells were analysed via confocal microscopy.
Pictures of 3 individual experiments are shown. (B) HeLa cells were treated with 50 µM POA or 50 µM PA
for 18h after which cells were analysed via TEM.
0 25µm 0 25µm 0 25µm
DMSO POA PAZ
OO
M
ZO
OM
ZO
OM
DMSO POA PA
500nm500nm500nm
A
B
BetA‐induced cell death by cardiolipin saturation
105
Supplementary Figure 8: CL modification evokes cell death and decreases clonogenic survival (A) HeLa
cells with induced knockdown of SCD‐1 D6 and H12 were left for 5 days, after which cell death was assessed
via PI exclusion. (B) HeLa cells were treated with indicated concentrations of SCD‐1 inhibitor for 96 h after
which cell death was assessed via PI exclusion. (C) HeLa cells were treated with vehicle (DMSO), 10 µg/ml
BetA, 75nM SCD‐1 inhibitor (+), 200 nM SCD‐1 inhibitor (++) or combinations of BetA and SCD‐1 inhibitor
for 96h after which cell death was assessed via PI exclusion. (D) HeLa cells were treated for 48 h with vehicle
(DMSO) or 1 µg/ml etoposide with or without 50 µM POA or 50 µM PA after which fresh medium was applied
for 72 h. Cells were stained with crystal violet blue for 6 h. Mean ± SD of 3 experiments are shown.
A
1
0
2
3
POAPA
+- - - -- -- -- - -
+
+ +++
+etoposide
abs
590
- 630
B
BetASCD-1 inhib
+- - - +- ++- +
++++
0
20
40
60
80
100
% P
Ipo
s
0
20
40
60
80
100
% P
Ipo
s
0 0.075 0.2 0.5 1μM SCD-1 inhibitor
CD
% P
Ipo
s
shSCD1H12dox
++
+
non silencing
- +-
- -- - ++
0
5
10
15
20
25
Chapter 4
Betulinic acid induces a rapid form of cell
death in colon cancer stem cells
Lisette Potze, Simone di Franco, Jan H. Kessler, Giorgio Stassi,
Jan Paul Medema
Under revision at Stem Cell International
Door: Why it’s simply impassible!
Alice: Why? Don’t you mean impossible?
Door: No, I do mean impassible (chuckles) Nothing’s impossible!
Lewis Carroll, Alice in Wonder land
Chapter 4
108
Abstract
Cancer stem cells (CSCs) are considered to be the origin of cancer and it is suggested that
they are resistant to chemotherapy. Current therapies fail to eradicate the CSCs and
therefore select a resistant cell subset that is able to induce tumor recurrence. Betulinic acid
(BetA) is a broad acting natural compound, shown to induce cell death via inhibition of the
stearoyl‐CoA‐ desaturase (SCD‐1). This enzyme converts saturated fatty acids into
unsaturated fatty acids and is over‐expressed in tumor cells. Here we show that BetA
induces rapid cell death in all colon CSCs tested and is able to affect the CSCs directly as
shown via the loss of clonogenic capacity. Similar results were observed with inhibition of
SCD‐1, suggesting that SCD‐1 activity is indeed a vulnerable link in colon CSCs and can be
considered an ideal target for therapy in colon cancer.
BetA‐induced cell death in colon cancer stem cells
109
Introduction
Colorectal cancer (CRC) is one of the major causes of death worldwide(1) and the third
leading cause of cancer death in the western world (WHO 2014, World Cancer Report 2014).
Despite different and intensive treatments, current therapies are inadequate in eradicating
the disease due to the occurrence of resistance. It has been suggested that such resistance
depends on the intra‐tumoral heterogeneity, in which the so‐called cancer stem cells (CSCs)
play a fundamental role.(2) This cell subset is characterized by self‐renewal and
differentiation capacity(3, 4) and it is regulated by a coordination of several pathways and
signals responsible for the maintenance of such phenotype, as WNT(5‐8), BMP(9‐12) and
Notch.(13‐15) CSCs presence was confirmed by several studies in different solid tumors,
including colon cancer.(16‐19)
The resistance of colon CSCs to conventional therapy(17, 20‐22) makes these cells an obvious
target to optimize current therapies. Strategies to identify and target specific cell surface
markers are currently under investigation, with a particular focus on a functional
characterization of the CSCs.(3, 23‐26) Despite more than two decades of research on the
genetics of CRC(27), it appears that we have only uncovered the tip of the iceberg.(28) The
extensive inter‐ and intra‐tumor heterogeneity both genetically and therapeutically still
forms an enormous challenge. We are only starting to understand the role and nature of
genetic and epigenetic changes, the tumor microenvironment and the effects of different
cell subsets within the tumor mass.(29‐32)
Current therapeutic approaches in colon cancer mainly utilize the proliferative capacity of
tumor cells as a means to target the cancer. As cells can escape this type of therapy through
multiple mechanisms, novel broad‐acting compounds that target a distinct, but essential
feature of the cancer cells are required. Such a therapy is able to target all the cells
belonging to the tumor bulk, including the CSCs. A promising compound is represented by
Betulinic Acid (BetA), which is a plant‐derived compound that shows selective cytotoxicity
for tumor cells sparing healthy cells.(33‐35) We have previously shown that BetA is very potent
and effective in a wide range of tumor cells.(24, 34, 36, 37) More importantly, we recently
showed that BetA induces cell death via the inhibition of stearoyl‐CoA desaturase (SCD‐1)
activity, an enzymatic activity that appears crucial to cancer but not normal cells.(38) This
enzyme converts saturated fatty acids derived from the de novo fatty acid synthesis
pathway into monounsaturated fatty acids and as such provides building blocks for new
lipid biomass. The saturation grade of fatty acids in cells is crucial to maintain optimal
fluidity of cellular membranes and it has been shown that inhibition of SCD‐1 induces cell
death in a variety of cells including lung CSCs.(39‐41) Due to its broad and potent activity we
investigated the role of BetA in colon CSCs and also evaluated the effect of SCD‐1 inhibition
on these cells. Here we show that BetA and SCD‐1 inhibition both induces cell death and
loss of clonogenicity in colon CSCs. BetA induces a more rapid cell death in these cells
Chapter 4
110
compared to SCD‐1 inhibitor, thus suggesting that BetA is a very potent compound for
cancer therapy.
Results
BetA induces a rapid cell death in colon cancer stem cells.
BetA has been shown to be very potent in killing several cancer cells after 48h with 60‐90 %
cell death in a p53 and BAX/BAK‐independent manner(36, 38) (see Table 1 for mutation
analysis of colon CSCs). To determine whether BetA was also effective against colon CSCs,
we used a panel of CSC cultures that were characterized for the most common stemness
markers CD166, CD133(16) and CD44v6(3), and CK20, a colonic differentiation marker(42) (Fig.
1A). We treated these spheroid cultures with BetA and observed a very rapid and potent
induction of cell death. Within 2 h about 60 % of cell death was detected in BetA‐treated
GTG7 cells, while this resulted in 30 % and 40 % cell death in CC09 and Co147 cells
respectively. Colon CSCs death induction is concentration‐ and time‐ dependent with cell
death increasing to 60‐80 % cell death after 8 h using the highest BetA concentration (Fig.
1B‐G). Importantly, the rapid cell death is not dependent on culture conditions, but seemed
to be selective for these spheroid cultured CSC cultures as normal colon cancer cell lines,
such as RKO cells, only showed around 20% cell death at these early time points
(Supplementary Fig. 1A‐B). According with previous findings(43), we observed BetA‐induced
cell death in both p53 mutant and p53 wild‐type cell lines (Table 1).
Colon cancer stem cells lose their clonogenic capacity upon BetA treatment
One of the hallmarks of CSCs is represented by their resistance to therapy. Most
conventional therapies induce cell death in differentiated tumor cells, but not in CSCs.(44) As
our spheroid cultures represent a mixture of CSCs and more differentiated tumor cells, we
set out to directly analyze the effect of BetA on CSCs using WNT signaling activity as a read‐
out for stemness.(5) Spheroid cells were therefore sorted for 10% low GFP, representing the
more differentiated tumor cells, 10% high GFP, representing CSCs, and the total population.
In all three cell populations BetA induced a rapid cell death suggesting that BetA targets
both the more differentiated cancer cells as well as the CSCs (Figure 2A‐D).
Table 1. Mutation status of colon CSCs
PI3KCA APC BRAF SMAD4 KRAS P53
GTG7c.1258T>C
(p.Cys420Arg)c.2413C>T
(p.Arg805Ter)wt
c.1607T>G(p.Leu536Arg)
c.38G>A(p.Gly13Asp)
wt
CC09c.344G>A
(p.Arg115Gln)c.2557G>T
(p.Glu853Ter)c.1799T>A
(p.Val600Glu)c.931C>T
(p.Gln311Ter)wt
c.818G>A(p.Arg273His)
CO147c.1090G>C
(p.Gly364Arg)c.2839T>C
(p.Cys947Arg)c.1799T>A
(p.Val600Glu)wt wt
c.733G>A(p.Gly245Ser)
BetA‐induced cell death in colon cancer stem cells
111
To confirm the cytotoxic effect on CSCs we looked into the functional impact of BetA
treatment. One of the important features of CSCs is their ability to self‐renew and to give
arise to a heterogeneous population of CSCs and more differentiated cells. In other words,
a single CSC is capable of forming a new colony with all cell types present.(16) This capacity
is present in the TOP‐GFP high cells within the spheroids and defines the true CSCs. We
therefore analyzed three distinct colon CSC cultures for their clonogenic capacity after
treatment with different concentrations of BetA. BetA pre‐treatment (2 h, single hit) clearly
showed a strong reduction on stem cell frequency (60‐80 % of reduction) in all the colon
CSC cultures, in a dose‐dependent manner (Figure 2E‐G). In contrast, these short treatments
did not affect the clonogenicity of RKO cells, confirming that BetA indeed targeted colon
CSCs very effectively. (Supplementary Fig. 2) A separate measure of stemness is to
determine the effect of therapy at later time points. We therefore analyzed the long‐term
effect of conventional chemotherapy (oxaliplatin) in comparison with BetA treatment on
survival and regrowth of colon CSCs, using a CellTiter‐Blue® cell viability assay over a longer
period. Treatment of two independent colon CSC cultures with oxaliplatin showed that
despite an initial decrease in cell number, cultures eventually overcame the negative impact
of chemotherapy and expanded over time, indicating that CSCs did not succumb to therapy
even when higher doses of oxaliplatin were used (Figure 2H‐I and Supplementary Fig. 3A‐
D). In contrast, treatment with increasing doses of BetA for only two hours revealed that
long term expansion was completely annihilated at the highest concentrations of BetA
(Figure 2H‐I). Differential sensitivity was observed between the two CSC cultures, similar to
the short‐term toxicity assays with GTG7 being the most BetA sensitive cell line tested. In
these cultures BetA concentrations of 5 µg/ml completely prevented outgrowth of cells,
whereas in CC09, which were less sensitive to BetA, only the highest concentration of BetA
(10 µg/ml) prevented outgrowth completely (Figure 2H‐ I and Supplementary Fig. 3 E‐F).
These data suggest that BetA affects colon CSCs viability and consequently long‐term
clonogenicity, while conventional therapy, such as oxaliplatin, gave rise to CSC‐based
resistance phenomena and subsequent recurrences in terms of growth.
Inhibition of stearoyl CoA desaturase leads to cell death and loss of clonogenicity
in colon CSCs
We recently showed that BetA functions through inhibition of the enzymatic activity of SCD‐
1.(38) In agreement, BetA treatment, SCD‐1 inhibition or genetic knock down of SCD‐1 in
cancer cells, affect the saturation grade of fatty acids and specifically cardiolipin, resulting
in impairment of the mitochondrial structure with consequent cell death.(38) To validate
whether BetA‐induced death of colon CSCs is due to a similar SCD‐1‐dependent mechanism,
Chapter 4
112
Figure 1. BetA‐induced cell death in colon cancer stem cells. Flow cytometry analysis (A) of CD166, CD166,
CD44v6 and CK20 in GTG7, CC09 and CO147 colon CSC lines (black histograms represent isotype control).
GTG7 (B, C), CC09 (D, E) and CO147 (F, G) colon CSCs were treated for 2 h, 4 h or 8 h with indicated
concentrations of BetA after which cell death was assessed via PI exclusion. In B, D, F representative FACS
plots of GTG7, CC09 and CO147 colon CSCs are shown which were treated for 8 hours with DMSO or 10
µg/ml BetA. Mean ± SD of 3 experiments are shown. P < 0.05 (*); P < 0.01 (**); P< 0.001 (***).
100
0
20
40
60
80
100
% P
Ipos
2 h 4 h 8 h
0 µg/ml BetA2.5 µg/ml BetA5 µg/ml BetA7.5 µg/ml BetA10 µg/ml BetA
0
20
40
60
80
100
% P
Ipos
2 h 4 h 8 h
0 µg/ml BetA2.5 µg/ml BetA5 µg/ml BetA7.5 µg/ml BetA10 µg/ml BetA
B C
D
GTG7
CC09
***
*****
**
********
0
20
40
60
80
% P
Ipos
2 h 4 h 8 h
0 µg/ml BetA2.5 µg/ml BetA5 µg/ml BetA7.5 µg/ml BetA10 µg/ml BetA
CO147
**
% P
Ipos
FCS-H
7.8% 75.2%
6.6% 54.1%
8.3% 56.3%
DMSO BetA
% P
Ipos
% P
Ipos
E
F G
DMSO BetA
DMSO BetA
*********
******
***** ***
***
CD166
2.7% 17.9%
CD133 CD44v6
13.1%
CK20
3.7%
61.2% 5.81% 33.5% 2%
91.7% 67.5% 73.4% 1.7%
AC
C0
9C
O14
7G
TG
7
BetA‐induced cell death in colon cancer stem cells
113
cells were treated with a commercially available SCD‐1 inhibitor. Interestingly, SCD‐1
inhibition led to a time‐ and concentration‐dependent cell death in both GTG7 and CC09.
The timing of cell death was different in these cells, as GTG7 reaches a maximum cell death
at 72 h, while this appears to take longer in CC09 (Figure 3A‐B). In agreement with the effect
observed with BetA treatment, SCD‐1 inhibition dramatically reduced clonogenic potential
of GTG7 and CC09 cells (Figure 3C‐D). Henceforth, we conclude that BetA is an effective
compound for the targeting of colon CSCs and this can be explained at least in part by the
effect of BetA on SCD‐1 activity in CSCs.
Discussion
CSCs are known to be more resistant to conventional treatment due to their (acquired)
resistance mechanisms, such as high levels of ATP‐binding cassette (ABC) transporters and
anti‐apoptotic molecules, active DNA‐repair, in some cases reduced proliferation and the
production of growth factors that confer refractoriness to anti‐neoplastic treatments.(44)
The escape mechanisms from standard therapies were shown both in vitro and in vivo.(17, 44)
In particular chemotherapy treatment of colon cancer results in an increase in CD133+
(oxaliplatin treatment), or ESA+/CD44+/CD166+ (irinotecan treatment) cell populations,
suggesting that these markers identify the CSC population, which are more resistant than
their differentiated counterpart.(21) CSC resistance mechanisms are frequently suggested to
provide an explanation for minimal residual disease in which an initial response is followed
by recurrences due to survival and subsequent expansion of colon CSC. Here we show that
BetA and SCD‐1 inhibition can both circumvent this CSC resistance and induced cell death
and loss of clonogenicity in colon CSCs. Our current study provides evidence for a
vulnerability in colon CSCs in the SCD‐1 pathway. Previously, we have also shown that this
BetA‐induced killing depends on the mitochondria, but occurs in a BCL‐2 family‐
independent manner.(38, 45) This may be essential for its capacity to kill CSCs as we and others
recently provided evidence that CSCs protect themselves from classical chemotherapy using
BCLXL‐dependent mechanisms. As BetA kills cells in a BCL‐2 family independent manner it
is expected to also target these CSCs. BetA has previously been shown to be tumor specific
and not targeting healthy cells. No toxicity to BetA was observed in mice treated with BetA
as well as vehicle liposomes, as both had the same amount of proliferating cells in the small
intestine(46). On top of this, we showed that non‐transformed fibroblasts are insensitive to
BetA as well as SCD‐1 inhibition. Cancer cells have reprogrammed their metabolism with
increased glycolysis and lipogenesis (de novo fatty acid synthesis) to maintain the need for
new biomaterials.(47) This reprogramming needs to already be present in the tumor initiating
cell, either pushing the cell fate toward transformation or creating an appropriate
“metabolic state” required for
Chapter 4
114
0
20
40
60
80
100
% P
Ipos
CC09
0
20
40
60
80 DMSOBetA
GTG7
% P
Ipos
low high total
6.0% 6.6% 6.0%
57.4% 51.9% 57.7%
FSC-A
low high total%
PIpo
s DM
SO
Bet
A
11.4% 7.6% 11.2%
74.4% 55.3% 76.3%
low high total
% P
Ipos D
MS
OB
etA
FSC-A
A B
C D
E F G
H I
low high total
DMSOBetA
*** ******
*** ******
****
***
***
0.0
0.5
1.0
1.5
fold
cha
nge
0 2.5 5 7.5 µg/ml BetA
100 2.5 5 7.5 µg/ml BetA
0.0
0.5
1.0
1.5
0.0
0.5
1.0
1.5
100 2.5 5 7.5 µg/ml BetA
GTG7 CC09 CO147
fold
cha
nge
fold
cha
nge
***
GTG7 CC09 OXA
0
2.5
5
7.5
10
cell
titer
blu
e (O
D)
5000
4000
3000
2000
1000
00 5 10 15 20
days0 5 10 15 20
days
10000
8000
6000
cell
titer
blu
e (O
D)
4000
2000
0
BetA‐induced cell death in colon cancer stem cells
115
Figure 2. BetA‐induced loss of clonogenicity in colon cancer stem cells. (A, B) GTG7 colon CSCs were sorted
into three fractions, high GFP (indicating the stem cells), low GFP (indicating more differentiated cells) and
total cells. Overnight adhered cells were treated with vehicle (DMSO) or 10 µg/ml BetA for 2 h, after which
cell death was measured via PI exclusion. Representative FACS plots are shown in A. Mean ± SD of 3
experiments are shown. P< 0.001 (***). (C, D) CC09 colon CSCs were sorted into three fractions, high GFP
(indicating the stem cells), low GFP (indicating more differentiated cells) and total cells. Overnight adhered
cells were treated with vehicle (DMSO) or 10 µg/ml BetA for 2 h, after which cell death was measured via PI
exclusion. Representative FACS plots are shown in C. Mean ± SD of 3 experiments are shown. P< 0.001 (***).
Limiting dilutions experiments were performed and stem cell frequency was calculated in GTG7 (E), CC09
(F) and CO147 (G) colon CSCs that were pre‐treated for 2 h with indicated concentrations BetA. Mean ± SD
of 3 experiments are shown. P < 0.05 (*); P < 0.01 (**); P< 0.001 (***). GTG7 (H) and CC09 (I) colon CSCs
were treated with indicated concentrations BetA for 2h or with 0.5 µM oxaliplatin for 24 h after which cell
numbers were measured at different time points using cell titer blue.
Figure 3. SCD‐1 inhibitor‐induced cell death and loss of clonogenicity in colon cancer stem cells. GTG7 (A)
and CC09 (B) colon CSCs were treated for 24 h, 48 h, 72 h or 96 h with indicated concentrations of SCD‐1
inhibitor after which cell death was assessed via PI exclusion. Mean ± SD of 3 experiments are shown. P <
0.05 (*); P < 0.01 (**); P< 0.001 (***). Limiting dilutions experiments were performed and stem cell
frequency was calculated in GTG7 (C) and CC09 (D) colon CSCs that were pre‐treated for 48 h (GTG7) or 72
h (CC09) with 1µM SCD‐1 inhibitor. Mean ± SD of 3 experiments are shown. P< 0.001 (***).
0
20
40
60
80
100
% P
Ipos
24 h 48 h 72 h 96 h
00.20.51
0 µM inhib0.2 µM inhib0.5 µM inhib1 µM inhib
0
20
40
60
80
100
% P
Ipos
24 h 48 h 72 h 96 h
A
B
00.20.51
0 µM inhib0.2 µM inhib0.5 µM inhib1 µM inhib
0.0
0.4
1.0
0.2
0.6
0.8
fold
cha
nge
DM
SO
SC
D-1
0.0
0.4
1.0
0.2
0.6
0.8
fold
cha
nge
DM
SO
SC
D-1
C
D
GTG7GTG7
CC09
***
***
*
****
**
***
**
****
****
***CC09
***
***
Chapter 4
116
Tumorigenesis.(48) Although there is no direct proof, a growing body of evidence suggests
that metabolic reprogramming is at the core of cancer and it may provide a vulnerability of
cancer cells.(48‐50) To maintain a pool of healthy fatty acids needed for new biomaterials,
tumor cells start to depend on de novo fatty acid synthesis, while normal cells hardly utilize
this pathway as they acquire unsaturated fatty acids from their surroundings. Newly
generated fatty acids are fully saturated and are relatively toxic to the cells necessitating
their conversion to unsaturated fatty acids by introduction of a double bond at the ω‐9
position by the enzyme SCD‐1.(40, 51‐54) This points out the need for SCD‐1 activity in cancer
cells, but could also hint to a vulnerability of cancer cells to this pathway. In several types
of cancer, including colon cancer, SCD‐1 expression and activity are increased (38, 54, 55),
moreover SCD‐1 levels were found elevated in in vivo models that were genetically
predisposed to develop certain cancers.(56) These observations suggest that SCD‐1 activity
is needed in cancer cells in order to maintain the levels of unsaturated fatty acids and by
doing so protecting tumor cells from a surplus of toxic saturated fatty acids.(40, 55, 57) Indeed
when inhibiting SCD‐1 by small molecule inhibitors or genetic knockdown induction of cell
death was observed in cancer cells(38, 57) and this is a result of a strong switch in the
saturation grade of the mitochondrial lipid cardiolipin and as a consequence the induction
of mitochondrial fragmentation and induction of cell death.
Here we show that colon CSCs are also sensitive to inhibition of the SCD‐1 enzyme. The
vulnerability to inhibition of SCD‐1 activity was also recently observed in another study
where inhibition of SCD‐1 in lung CSCs resulted in a reduced stem cell marker expression
and induced cell death.(41) These data are in agreement with what we observed in our colon
CSCs model. One striking observation is the velocity of cell death induction, which appears
to be much higher as compared to classical colon cancer cell lines. This is specific for BetA
and not observed with SCD‐1 inhibition, which appears as effective in cancer cells and colon
CSC cultures.(38) We previously have hypothesized that the rapid effect of BetA is due to a
combined effect of BetA, on one hand blocking the production of unsaturated fatty acids,
but on the other hand increasing turnover of lipids and thereby the incorporation of
saturated fatty acids.(38) This concept therefore may point to an additional effect of BetA on
colon CSC cultures that strongly enhances the impact on these cells. At this point we have
no definitive proof as to this effect, but it is interesting to note that colon CSCs can be
identified by their high level of lipid droplets when compared with differentiated tumor and
even more so when compared to cancer cell lines.(58) Lipid droplets are fat storing
organelles, that are suggested to be involved in the storage, transport and metabolism of
lipids, in signaling, and as a specialized microenviroment for metabolism.(59, 60) SCD‐1 plays
an important role in lipid droplets formation and size. In SCD‐1 WT C. elegans, large‐sized
lipid droplets were observed, while in SCD‐1 mutant C. elegans small‐sized lipid droplets are
found.(61) Small‐sized lipid droplets are also found in patients with Berardinelli‐Seip
congenital lipodystrophy, which have decreased SCD‐1 activity.(62) These lipid droplets
BetA‐induced cell death in colon cancer stem cells
117
appear to be crucial for the CSCs and we hypothesize that BetA might interfere with these
lipid droplets and therefore induces a very rapid induction of mitochondrial damage.(38)
We conclude that SCD‐1 is a crucial player in the maintenance of stemness of cancer cells
and inhibition is incompatible with long‐term survival. Targeting the activity of this enzyme
in CSCs provides an effective means to target these cells and can be achieved either with
direct chemical inhibitors or even more effectively with BetA.
Material &Methods
Chemicals/antibodies
Betulinic acid (BioSolution Halle, Germany, >99% purity) was dissolved in DMSO at 4 mg/ml
and stored at ‐80°C. Oxaliplatin was purchased from Sigma‐Aldrich (St. Louis, MO, USA).
Stearoyl‐CoA desaturase inhibitor (cat# 1716) was from Biovision (Milpitas, CA, USA).
Isolation, Culture and Characterization of Colon Cancer Cells
Colon cancer tissues were collected at the Department of Surgical and Oncological Sciences,
and CEMM Department, in accordance with the ethical standards of the University of
Palermo and AMC institutional committees. Colon spheroid cultures were derived from
colorectal cancer patients and maintained in stem cell medium (advanced DMEM/F12
(Gibco) supplemented with N2 Supplement (Gibco), 6 mg/ml glucose, 5 mM HEPES, 2 mM
L‐glutamine, 4 μg/ml heparin, 50 ng/ml epidermal growth factor and 10 ng/ml basic
fibroblast growth factor) as previously described (16). The colon CSC lines obtained were
subjected to genotypic characterization in order to validate each cell line’s individuality and
their mutational status (Table 1), and further tested for their ability to generate tumor
xenografts that replicated the parental histology. Colon CSCs were characterized by their
expression of the putative cancer stem cell markers CD166‐PE (3A6; mouse IgG1k; BD
Biosciences), CD133‐APC (293C3; mouse IgG2bk; Miltenyi) and CD44v6‐APC (2F10; mouse
IgG1; R&D systems), and CK20 (Ks20.8; mouse; IgG2ak), a colonic differentiation marker,
data were acquired by flow cytometry using a BD ACCURI C6 and analyzed using the FlowJo
software (Tree Star Inc., Ashland, OR, USA). CK20 was detected by using a goat anti‐Mouse
IgG (H+L) secondary antibody, Alexa Fluor®‐488 conjugate. RKO cells were obtained from
ATCC (Manassas, VA, USA) and maintained in IMDM supplemented with 8% FCS, 2 mM L‐
glutamine, 40 U/ml penicillin and 40 mg/ml streptomycin.GTG7 and CC09 cells bear the TCF
Optimal Promoter (TOP)‐green fluorescent protein (GFP) construct.(5) These cells, derived
from single‐cell cloned TOPGFP cultures, still show a big heterogeneity in Wnt signaling
levels, which positively correlates with cancer stemness in colon CSCs.(63)
Cell death analysis
Cell death was determined by PI exclusion. In short, 50 000 single colon CSCs were seeded
in a 24‐well plate and allowed to attach overnight. Cells were treated for indicated time‐
Chapter 4
118
points with BetA or SCD‐1 inhibitor and harvested. The cell pellet was resuspended in 200 μl
medium and stained with PI at 0.5 μg/ml just before measuring by flow cytometry
(FACSCanto, BD Biosciences). Samples were analyzed using FlowJo software (Tree Star Inc.,
Ashland, OR, USA).
Cell Proliferation Assay
For determination of cell viability, 1000 cells per well were plated in repellent surface for
low attachment 96‐well plates (CELLSTAR® Cell‐Repellent Surface, Greiner Bio‐ One) in
medium containing vehicle (DMSO), 0.5 µM oxaliplatin or increasing doses of BetA. Viable
cells were determined at indicated time‐points using Cell Titer Blue (Promega, Fitchburg,
WI, USA) by measurement of absorbance at 540 nm in a Synergy plate reader (Biotek). Cell
viability at each concentration was expressed as OD cells – OD background.
Limiting dilution assay
The self‐renewal capacity of colon CSCs was assayed by dissociation of colon cancer
spheroids. Colon CSCs were cultured in adhesion o/n and pre‐treated 2 h with indicated
concentrations BetA or pre‐treated 48 h or 72 h with SCD‐1 inhibitor after which cells were
collected and plated at serial dilution (1, 2, 4, 8, 16, 32, 64 and 128 cells/ well) in 96 well
microplates with flat bottom and repellent surface for low attachment (CELLSTAR® Cell‐
Repellent Surface, Greiner Bio‐ One), using a FACS Aria II. Results were statistically
evaluated after 3 weeks by using the Extreme Limiting Dilution Analysis (ELDA) software.(64)
Statistical analysis.
Results are shown as the mean ± SD for at least three repeated independent experiments
for each group. The mean and SD were obtained by analyzing three replicates using Prism
5 (GraphPad Software, La Jolla, CA, USA) applying a 2‐tailed unpaired Student t‐test.
Differences were considered significant when p values P < 0.05 (*); P < 0.01 (**); P< 0.001
(***).
BetA‐induced cell death in colon cancer stem cells
119
Conflict of interest
The authors declare no conflict of interest.
Acknowledgements
This work was supported by a grant of the Stichting Nationaal Fonds tegen Kanker (SNFK),
Amsterdam, The Netherlands (L.P), by Associazione Italiana per la Ricerca sul Cancro (AIRC)
to G.S. (AIRC IG 8730 and AIRC 19 5x1000) and Dutch Cancer Society Grants (UvA2012‐5425)
to J.P.M. We would like to thank Louis Vermeulen for his valuable scientific input and helpful
discussions and Kate Cameron for her assistance with fluorescence‐activated cell sorting
experiments.
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Supplementary figures
Supplementary Figure 1. BetA‐induced cell death in colon cancer cells (A, B) RKO cells were treated for 2
h, 4 h, and 8 h with indicated concentrations of BetA after which cell death was assessed via PI exclusion.
Representative FACS plots of RKO cells treated for 8 h with DMSO or 10 µg/ml BetA are shown in A. Mean
± SD of 3 experiments are shown. P < 0.05 (*); P < 0.01 (**); P< 0.001 (***).
Supplementary Figure 2. Clonogenicity in colon cancer cells RKO cells were pre‐treated for 2 h with
indicated concentrations BetA after which limiting dilution experiments were performed and stem cell
frequency was calculated.
0
20
40
60
80
100
% P
Ipos
2 h 4 h 8 h
0 µg/ml BetA2.5 µg/ml BetA5 µg/ml BetA7.5 µg/ml BetA10 µg/ml BetA
***
**
3.7%
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BetA
FCS-H
% P
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A B
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BetA‐induced cell death in colon cancer stem cells
125
Supplementary Figure 3. Long term assay on CSCs. (A) GTG7 and CC09 (B) colon CSCs were treated with 0.5
µM oxaliplatin for 24 h or indicated concentrations BetA (µg/ml) for 2 h after which cells were left to grow.
Pictures (10x magnification) were taken at day 10 after which the number of cells were determined with
cell titer blue. (C) GTG7 and CC09 (D) colon CSCs were treated with indicated concentrations oxaliplatin (μM)
for 24 h after which cells were plated and cell numbers were measured at different time points using cell
titer blue. (E) GTG7 and CC09 (F) colon CSCs were treated with indicated concentration oxaliplatin (μM) for
24 h after which cells were left to grow. Pictures (4x magnification) were taken at day 15 after which the
number of cells were determined with cell titer blue.
5
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Chapter 5
Improved identification of lipids using
physico‐chemical properties: application
to lipidomics analysis of Betulinic acid
treatment
Lisette Potze, Mia L. Pras‐ Raves, Henk van Lenthe, Martin A.T
Vervaart, Jan H. Kessler, Angela C. Luyf, Jan Paul Medema,
Antoine H. C. van Kampen, Frédéric M. Vaz
Under review at Journal of Lipid Research
“Who in the world am I? Ah, that’s the great puzzle.”
Lewis Carroll, Alice in Wonderland
Chapter 5
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Abstract
The correct identification of all metabolites in LC‐MS lipidomic experiments is a time‐
consuming step in the data analysis process. Here we describe a method which not only
uses the mass and retention time of peaks, but also incorporates the elution pattern of the
phospholipid cluster to improve the identification of phospholipid species. Thus, even at
low resolution (<10,000), a clear distinction can be made between chromatographically
separated isobaric lipids such as phosphatidylglycerol and bis(monoacylglycero)phosphate,
between phosphatidylethanolamine (PE) and plasmalogen PE, and between
phosphatidylserine and phosphatidylinositol. The method is illustrated using a lipidomics
data set acquired on a low resolution triple quadrupole MS to investigate the effect of the
anti‐cancer drug Betulinic acid in HeLa cells.
List of abbreviations:
PL phospholipid
IS internal standard
BMP bis(monoacylglycero)phosphate
CL cardiolipin
mlCL monolyso‐cardiolipin
PE phosphatidylethanolamine
pPL PL plasmalogen
aPL O‐alkyl PL
PI phosphatidylinositol
PS phosphatidylserine
PG phosphatidylglycerol
PC phosphatidylcholine
LPL lyso‐PL
ST sulfatide
m/z mass over charge ratio
RT retention time
BetA Betulinic acid
SCD‐1 Stearoyl‐CoA desaturase 1
Improved identification of lipids using physico‐chemical properties
129
Introduction
Lipidomics is the comprehensive study of the lipid composition of cells, organelles or
biofluids (1). The combination of (ultra‐)high‐performance liquid chromatography ((U)HPLC)
and mass spectrometry (MS) is instrumental in the measurements of lipids in complex
samples (2). Despite the progress and technical advances in the field in the last decade, there
are still many challenges. First, the chromatographic separation of lipids is challenging due
to the complexity of the samples, matrix effects, and the sheer number of different, but
very similar, metabolites (3, 4). Inadequate separation will produce complex mass spectra
that are more difficult to analyze due to, for example, overlapping peaks in the
chromatographic and/or mass domain. Secondly, current data pre‐processing methods
produce peak tables containing monoisotopic and isotope peaks based on their retention
time and m/z values, often still requiring intervention and correction by experts
experienced with LC‐MS spectra to reduce the number of false positive and missing peaks.
This makes the pre‐processing of raw MS data very time consuming but, surprisingly, data
pre‐processing receives relatively little attention in literature (5). Finally, the assignment of
metabolites to all peaks in the peak lists is a major bottleneck. Frequently, only a small
fraction of the observed peaks can be reliably assigned to a compound. This complicates
further data analysis and comprehensive biological interpretation. The assignment of
compounds generally requires a combination of knowledge of expected metabolites,
internal standards, fragmentation patterns and spectral databases to which MS spectra can
be compared (6). There are several repositories and search engines to assist in the
identification of phospholipids (PLs), including Lipid Maps (Lipidomics Gateway), containing
over 30,000 lipid species (3, 7) and Lipid Search (8) consisting of more than 200,000 structures.
The LipidBlast database combines computer‐generated spectra and experimental
fragmentation data, describing about 120,000 structures for lipids (9) while online databases
such as VaLID (5) aid in the identification of glycerophospholipids based on their molecular
mass and provide visualization of the molecules. Database searches, however, are generally
conducted peak by peak, thus ignoring the pattern that is formed by the whole cluster of
PLs that belong to the same class, a pattern which is caused by similarities and subtle
differences in their physico‐chemical properties. In a normal‐phase LC system, PLs with the
same head group will have roughly the same RT, but within such a cluster, the inclusion of
an extra –CH2– group or the presence of an additional double bond in one of the side chains
will influence the observed RT of the PLs. The resolution of the MS measurements is another
important factor in the ease of the identification. Higher resolutions yield more accurate
m/z values, which enables the determination of the exact elemental composition of the
underlying metabolite, even though this may not always pinpoint a unique identifier (for
example, bis(monoacylglycero)phosphate (BMP) and phosphatidylglycerol (PG) have the
same elemental composition but different chemical structures). Querying m/z values from
low‐resolution MS (resolution < 10,000) in a reference database results in a long list of
Chapter 5
130
candidate metabolites for every peak, rendering the identification process time‐consuming
and error‐prone. Many clinical diagnostics laboratories currently make extensive use of low‐
resolution single‐ or tandem mass filter (quadrupole) setups (10), for which the usefulness of
brute force database searches, without regard for the context of the peak, is limited.
With the aim of reducing the amount of work that is required for the analysis and
interpretation of the results of a data set after pre‐processing, we describe a method which
not only uses the mass and retention time of peaks, but also incorporates the elution
pattern of the phospholipid cluster to improve the identification of phospholipid species.
We have integrated our identification method with XCMS (11), which is an R package widely
used for the analysis of metabolomics data, into a pipeline which includes functionalities for
isotope correction and normalization of intensities for assigned peaks (Figure 1).
To test our lipidomics pipeline we made use of a data set of HeLa cells treated with Betulinic
acid (BetA). BetA is a plant‐derived compound that shows selective cytotoxicity for tumor
cells while healthy cells remain unaffected (12, 13). Recently, we showed that BetA induces
apoptosis by inhibition of stearoyl‐CoA desaturase 1 (SCD‐1), resulting in changes of the
side‐chain saturation of cardiolipin (CL, a phospholipid mainly located in the inner
membrane of mitochondria) and impaired mitochondrial morphology. We concluded that
CL is a crucial player in mitochondrial integrity that is strongly dependent on the level of
saturation of its side chains. However, in the above‐mentioned study we only focused on
PG, the precursor of CL, and on CL itself (13). Therefore, we revisited this data set to perform
a complete lipidomics analysis to investigate the effect of BetA on the full lipidome and
demonstrate the usefulness of our pattern recognition algorithm.
Results
Data processing:
We developed a method that facilitates the assignment of lipid compound names to peak
groups originating from the same class of PLs. We have integrated our identification method
with XCMS (11), a software package in the R programming language (http://www.R‐
project.org) which is widely used for the analysis of metabolomics data.
A typical full scan analysis yields between 1000 and 10,000 peak groups. Each of these peak
groups is characterized by the median m/z and median RT of all the peaks from the different
samples. For pre‐processing packages such as XCMS (11), this is the final output. The
assignment of compound labels to each peak group is then in the hands of the user.
Improved identification of lipids using physico‐chemical properties
131
Figure 1: Schematic representation of the lipidomics pre‐processing pipeline. Raw data files are obtained for
every sample; the pre‐processing pipeline using XCMS, followed by identification, isotope correction and
normalization yields the final annotated peak list.
Plotting the peak groups (Figure 2) immediately allows the experienced eye to observe
clusters, which are the result of groups of phospholipids with the same head group but with
different side‐chain compositions. The addition of internal standards (IS) per class of PLs to
the samples not only serves for normalization and quantification purposes: identification of
the IS peaks in the peak group list enables the determination of the location of the entire
cluster of peaks originating from compounds from the same class, and aids in the
identification of all peaks in this region. Specific head group scans, such as neutral‐loss or
precursor‐ion scans, can also be helpful in locating clusters of PLs. Rather than relying only
on the match to a theoretical mass of a compound, our method makes use of the systematic
pattern that is formed by all the compounds in the same PL class upon normal‐phase LC
separation. This pattern is the result of differences in mobility on the LC column of PL
molecules with different side‐chain compositions. On a normal‐phase column, PLs with
longer side chains have a lower RT, due to a decreased polarity of the molecules. In addition,
as the number of double bonds in the combined side chains increases, the RT decreases.
These patterns can be used to aid in the assignment of PL names to peak groups. This is
illustrated in Figure 3A and B, which shows the CL region in close‐up, and described in the
methods section in detail. Resulting data files are available as supplemental files
(supplemental files 1‐4).
Peak finding
Matching peaks across samples
Fill in missing peak data
Retention time correction
Identification Isotope correction Normalization
Visualization Statisti cal Analysis
RawRaw RawRaw RawRaw
Peaklist
Chapter 5
132
Figure 2: All peaks in lipidomics data set. Clusters observed in PL peak groups in negative (lower panel) and
positive scan mode (top panel, only precursor ion scan m/z 184 (PR184) is shown). Every peak group that
was obtained using XCMS is plotted as a black dot. Several clusters of peak groups can be identified and are
labeled in the figure, with a line showing the direction of the peak groups in each cluster. Peak groups
observed in positive PR184 scan mode are shown above the horizontal line at RT=8.5 minutes; below the
line are the peak groups in negative mode.
Improved identification of lipids using physico‐chemical properties
133
Figure 3: Pattern observed in doubly charged cardiolipin. (A) The full CL cluster, starting in the upper left‐
hand corner with the IS peak, CL(56:0). (B) Close‐up of CL(64:x) up to CL(66:y). For chromatographic
separation with a normal‐phase column, the RT of the compounds decreases with increasing (combined)
chain length and number of double bonds in the chains. Dots represent the median location of all samples
in a peak group. The size of the circle indicates the relative average intensity of those peaks on an arbitrary
scale.
Chapter 5
134
For the data set described in this paper, which was measured at relatively low resolution
(approximately 2000 at m/z 500), we were able to identify metabolites from 9 classes in
negative scan mode (BMP, CL, mlCL, PG, PA, PE, pPE, PI, PS), and as many as 40% of all peak
groups could be identified as either belonging to monoisotopic peaks (e.g. metabolites) or
to corresponding isotope peaks. In positive scan mode (precursor‐ion scan for m/z 184.1
(PR184) and neutral‐loss scan for m/z 141.1 (NL141)), 10 classes (LPC, LpPC, PC, pPC, aPC,
SM in PR184 and LPE, PE, pPE, aPE in NL141) and more than half of all peak groups could be
identified in PR184 and NL141, (Table 1, supplemental tables I‐IV). Other regions in the m/z
versus RT space contain either noise, peaks from unknown PL classes, or peaks originating
from compounds other than PLs. In neutral‐loss or precursor‐ion spectra, where only one
class of PL is studied, the success rate of the identification is higher than for full‐ion scans
(supplemental tables II and III).This method works equally well for low‐resolution lipidomics
data as for high‐resolution measurements (data not shown).
Figure 4: Total phospholipid levels in BetA or vehicle treated cells. Highly abundant PLs (PE, PS, PC and SM)
(A) and less abundant PLs (BMP, CL, LPC, PG, PA) (B) for DMSO (vehicle) and BetA treated cells are depicted.
*=P<0.05, ***=P<0.001
Analysis of the BetA data set using the pattern recognition algorithm
Differences between the cells treated with vehicle (DMSO) and BetA treated cells were
found in different phospholipid classes (Figure 4A and B). The most significant changes
occurred in the total levels of BMP and PG: BetA reduces total BMP levels while PG levels
are increased after treatment with BetA. There were effects on PC and LPC levels (elevated
in BetA) as well, although they were less pronounced. Further analysis within the PL clusters
showed that BetA induced an increase in intensity for saturated CL (number of double bonds
less than 4) and a decrease for poly‐unsaturated CL (4 double bonds and up), compared to
the control (DMSO) samples (Figure 5). This effect is not observed in PG or BMP, even
though PG is the precursor for CL (Supplemental Figure IA and IB).
Improved identification of lipids using physico‐chemical properties
135
Figure 5: Heatmap of differences in cardiolipin composition. The cardiolipins have been sorted by total
number of double bonds in the combined side chains; only CL(64:x) through CL(70:y) are shown. A clear
distinction between mostly saturated CLs (number of double bonds <4) and poly‐unsaturated CLs (number
of double bonds > 3) can be seen.
Chapter 5
136
Discussion
Being able to automatically identify metabolites greatly speeds up the data analysis process
for metabolomics experiments. Querying m/z values in different (online) databases is not
always practical: it often yields multiple assignments for a metabolite, sometimes none. In
any case, the analysis of the data sets requires considerable attention and time from
metabolomics experts which in practice results in a bottleneck since individual datasets
contain hundreds to thousands of peak groups (and considerably more for high‐resolution
data sets). The pre‐processing lipidomics pipeline described in this paper is suitable both for
low‐resolution (the data set described here has a resolution of approximately 2000 at m/z
500) and for high‐resolution data (120,000 at m/z 500 for a Thermo Scientific Q‐Exactive
plus). For low‐resolution data, the greatest benefit of our method is in the disambiguation
of peaks with almost identical mass, such as PE and pPE. For high‐resolution data, the main
advantage is that a great number of peaks can be rapidly and reliably identified.
The pipeline yields peak tables and plots per class and per section of a class for all identified
PLs, such as illustrated for CL in Figure 3. This enables the user to check whether the
identification process has given the correct result. In many cases, analyzing the lipidome of
a biological system gives considerably more insight into the underlying biochemical
processes than one would get when focusing on only one PL class. One of our goals is
therefore to identify as many PL classes as we possibly can. When identifying PLs
incorporated in the current pipeline we essentially perform a targeted analysis. Yet, we also
spot unknowns which may represent relevant differences between the investigated groups
which can be further investigated. In the current method, it is fairly easy to add new
(phospho)lipid classes based on their chemical composition and physico‐chemical
properties.
The method works well for low‐resolution data as it addresses and aids to resolve
ambiguous phospholipid assignments. PG and BMP, for example, are two classes of PLs that
have the exact same chemical formula and therefore the same m/z. Using our algorithm in
combination with appropriate chromatographic separation and internal standards achieves
the correct identification of compounds from each class. Another example is PE and pPE,
which differ in chemical structure but at low resolution cannot be distinguished based on
m/z alone. In this case, the difference in polarity causes a distinct shift in the pattern of the
peaks observed for each of these clusters, so that the ambiguity can be resolved and PE and
pPE can be distinguished. A third example is PI and PS, which often co‐elute. Since PSs have
even masses and PI have odd masses in ionized state, the first isotope of one species often
overlaps with the monoisotopic peak of the other species. Identification followed by isotope
correction can then solve this problem and annotate species of both PL classes.
For high‐resolution data, the accuracy of the observed m/z values is higher and the peaks
are much narrower on the m/z‐axis, so that there is much less overlap between different
Improved identification of lipids using physico‐chemical properties
137
peaks. This results in a much greater number of peak groups, but the percentages of
identified metabolites are still comparable to what we find for low‐resolution data (data not
shown). At high resolution, the benefit of this method is in the larger number of peaks that
can be identified in an automated fashion, without (or with minimal) human intervention.
Material and Methods
Chemicals
Betulinic acid (BioSolution Halle, Germany, >99% purity) was dissolved in DMSO at 4 mg/ml
and stored at ‐80°C.
Cell culture
HeLa cells were obtained from the ATCC. Cells were cultured in IMDM supplemented with
8% FCS, 2mM L‐glutamine, 40 U/ml penicillin and 40 µg/ml streptomycin.
Mass spectrometry
Cell pellets were resuspended in water and sonicated for 30 s (8 W) using a tip sonicator.
Protein concentration of the homogenates was determined according to the BCA
protocol(14). Phospholipids were extracted using a single‐phase extraction. A defined
amount of internal standards (0.1 nmol of CL(14:0)4 , 0.2 nmol of BMP(14:0)2 , 2.0 nmol of
PC(14:0)2 , 0.1 nmol of PG(14:0)2 , 5.0 nmol of PS(14:0)2 , 0.5 nmol of PE(14:0)2 , 1.0 nmol
of PA(14:0)2 , 2.0 nmol of SM(14:0)2 , 0.02 nmol of LPG(14:0), 0.1 nmol of LPE(14:0), 0.5
nmol of LPC(14:0), 0.1 nmol of LPA(14:0) (purchased from Avanti Polar Lipids, Alabaster, AL,
USA), dissolved in 120 µL of chloroform/methanol (1:1, v/v)) and 1.5 mL of
chloroform/methanol (1:1, v/v) were added to cell homogenates that contained 1 mg of
protein. Subsequently, the mixture was sonicated in a water bath for 5 min, followed by
centrifugation at 15.000 x g for 5 min. The organic layer was transferred to a glass vial and
evaporated to dryness under a nitrogen steam at 60ᵒC. Subsequently, the residue was
dissolved in 200 µL of chloroform/methanol/water (50:45:5,v/v/v) containing 0.01% of
NH4OH, and 20 µL of the solution was injected into the liquid chromatography‐mass
spectrometry (LC/MS) system. LC/MS analysis was performed as described in (15). In
negative mode, mass spectra of phospholipid molecular species were obtained by
continuous scanning from m/z 380 to m/z 1100 with a scan time of 1 s. In positive mode,
mass spectra of PC, LPC and SM were obtained by continuous scanning for product ions with
m/z 184 from m/z 400 to 1000. Mass spectra for PE, LPE and PE plasmalogens were obtained
by scanning on neutral losses of 141 from m/z 400 to 1000. The raw LC/MS data were
converted to mzXML format using msConvert (16) for the negative scan data and ReAdW (17)
for the positive specific scan data.
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Data pre‐processing
All LC‐MS spectra of the samples were pre‐processed with XCMS (11). In brief, in the first
step all peaks in the individual LC‐MS spectra were found using the matched filtration
method. The XCMS function ‘matchedFilter’ was used with parameters fwhm=11, max=5,
snthresh=7, steps=2, profMethod=Intlin, step=0.2, mzdiff=0.2. Some spectra from the
negative scan mode contain neighboring or partly overlapping peaks (e.g., for PG and BMP)
that have identical m/z values and similar retention times. To detect such peaks we
modified the matched filtration method by recalculating the second‐order derivative
Gaussian filter after the integration of each peak within the same m/z slice. For the
precursor ion scans, we minimized the number of false positive peaks by retaining only
peaks with at least three consecutive points above the signal‐to‐noise threshold in the peak
list.
After peak finding, peaks from different samples were matched and grouped together into
a peak group, while accounting for small variations in m/z and retention time. The XCMS
‘group’ function was used with parameters family=symmetric and smooth=linear.
Subsequently, chromatograms from the samples were aligned with the function ‘retcor’
(minfrac=0.80, bw=2). In the last step of XCMS, a table was generated comprising the peak
groups, with median mass and retention time calculated from all samples.
Assignment of compound names
For the identification of metabolites, the assignment of compound labels from a certain
class of PL was limited to a subset of peak groups, contained within a box spanning a specific
m/z and retention time range, covering the whole PL cluster. Subsequently, a line was
defined (as shown in Figure 3a) that runs through the cluster of peak groups. Compound
names were then assigned to peak groups that are in close proximity to the line. Duplicate
assignments were resolved based on the likelihood of each separate assignment to occur,
taking into account the patterns of peaks. The steps in the assignment are explained in more
detail below:
Step 1. Generation of an m/z look‐up table for lipid compounds;
Step 2. Assignment of labels within a PL cluster;
Step 3. Collecting all peak groups;
Step 4. Manual correction of incorrect assignments.
Step 1. Generation of an m/z look‐up table for PL compounds. A look‐up table, containing
the chemical composition and corresponding masses (m/z) in positive and negative scan
modes for all theoretically possible combinations of chain length and number of double
bonds for every class of PL, was generated. For a single fatty acid side chain, the chain
lengths ranged from 14 to 28, and the number of double bonds ranged from 0 to 6; multiples
of these were used for PLs with more than one variable side chain. For each chemical
Improved identification of lipids using physico‐chemical properties
139
structure, the expected isotope percentages were calculated using the R package Rdisop (18)
and added to the table.
Step 2. Assignment of labels within a PL cluster. A plot of median m/z versus median RT for
all peak groups (Figure 2) was used to determine the location of the clusters of peak groups
that originated from the same class of PL. For each PL class, an m/z and RT box was defined
based on visual inspection of the plot and a line through two peak groups in the cluster was
used to define the location and direction (slope) of the peak groups in that particular cluster
(Figure 3). Assignments of PLs within a cluster were done by matching the m/z of each peak
group to the masses in the compound look‐up table, allowing for small deviations (±0.2
atomic units for the data set described in this paper, or ±3 ppm for high‐resolution data).
The context of the peaks was also incorporated in the assignment step: checking for
systematic patterns in lines of compounds with the same chain length or degree of
saturation (Figure 3B). Whenever more than one assignment within the same class was
possible, (e.g., PC(37:0) or PC(38:7), both with m/z 804.6), the most likely assignment was
chosen. For the assignment of peaks from doubly‐charged molecular species (e.g. CL and
mlCL), only peaks with isotope peaks at m/z ± 0.5 were considered.
Step 3. Collecting all peak groups. The lists of peak groups for each PL class, assigned in Step
2, were collated. Multiple assignments for one peak (e.g., PC(38:7) or pPC(39:6), m/z 804.6),
were resolved based on the patterns of the peak groups in the different clusters.
All assigned peak groups were then mapped back onto the original peak group list, so that
the full list contains a combination of assigned and non‐assigned peaks.
Step 4. Manual correction of incorrect assignments. By investigating the assignments in the
close‐up plots that were generated for every PL cluster (Figure 3B), erroneous or suspicious
assignments were edited and corrected. Generally, about 95% of the assigned peak groups
were identified correctly by the pipeline.
Data processing
After the identification of the monoisotopic peaks for different PLs, their isotope peaks were
marked in the peak group list. Intensities for observed isotope peaks were corrected using
the method described by (19) in order to obtain deconvoluted intensities for peak groups
which overlap with isotope peaks from other compounds. For normalization purposes,
intensities of peaks belonging to a certain PL class were scaled to the response of the IS of
that class. Thus, the intensity of the IS peak was set to the corresponding concentration of
that IS that was added to each sample, and the intensities of the other peaks of the same
PL class could be estimated semi‐quantitatively, relative to that of the IS peak. Lastly, the
intensities of all peaks were normalized to the protein concentration of the homogenate.
Chapter 5
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The result of the pre‐processing pipeline as described, is a table in Excel format that contains
all measured peak groups, characterized by their median m/z and RT values and, where
possible, their identified compound name (see supplemental files 1‐4). Isotope‐corrected,
normalized intensities and per‐feature statistics based on the normalized and corrected
values are included in the table, as well as EIC plots for the peak areas and boxplots, to allow
for quick visual assessment of the various peaks.
Acknowledgement/grant support
L.P. was supported by a grant of Stichting Nationaal Fonds Tegen Kanker (SNFK) in the
Netherlands.
Improved identification of lipids using physico‐chemical properties
141
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17. Pedrioli, P. G., J. K. Eng, R. Hubley, M. Vogelzang, E. W. Deutsch, B. Raught, B. Pratt, E. Nilsson, et al 2004. A common open representation of mass spectrometry data and its application to proteomics research. Nat Biotechnol 22: 1459‐1466. 18. Bocker, S., M. C. Letzel, Z. Liptak, and A. Pervukhin. 2009. SIRIUS: decomposing isotope patterns for metabolite identification. Bioinformatics 25: 218‐224. 19. Liebisch, G., B. Lieser, J. Rathenberg, W. Drobnik, and G. Schmitz. 2004. High‐throughput quantification of phosphatidylcholine and sphingomyelin by electrospray ionization tandem mass spectrometry coupled with isotope correction algorithm. Biochim Biophys Acta 1686: 108‐117.
Improved identification of lipids using physico‐chemical properties
143
Supplementary figures/tables
Supplementary figure 1: Heatmap of differences in BMP and PG composition. (A) The BMPs have been
sorted by total number of double bonds in the combined side chains. (B) The PGs have been sorted by
total number of double bonds in the combined side chains. In both heatmaps no clear distinction between
DMSO and BetA treated samples are observed.
Supplemental table I: Number of PLs identified per major class in Negative scan mode
Monoisotopic peaksa Monoisotopic + isotope peaksa
BMP 30 50
CL2 69 147
mlCL2 32 62
PA 12 33
PE 29 53
PG 23 43
PI 51 108
pPE 16 27
PS 23 48 aIn full negative mode, 285 out of 2163 (13%) peak groups can be identified as monoisotopic and 571 out of
2163 (26.4%) can be identified as monoisotopic plus isotope peaks. Numbers in the Results section refer to
a truncated list, where the weakest peak groups have been omitted to improve the clarity of Figure 2.
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Supplemental table II: Number of PLs per major class identified Positive scan mode (PR184)
Monoisotopic peaks Monoisotopic + isotope peaks
PC 66 151
pPC 23 45
aPC 3 11
LPC 25 58
LpPC 5 9
SM 22 42
Supplemental table III: Number of PLs identified per major class in Positive scan mode (NL141)
Monoisotopic peaksa Monoisotopic + isotope peaksa
PE 39 89
pPE 13 24
aPE 17 27
LPE 10 14 aIn full PR184 scan mode, 144 out of 785 (18.3%) peak groups can be identified as monoisotopic and 316
out of 785 (40.2%) can be identified as monoisotopic plus isotope peaks. In full NL141 scan mode, 74 out of
225 (32.9%) and 154 out of 225 (68.4%) can be identified as monoisotopic plus isotope peaks. Numbers in
the Results section refer to a truncated list, where the weakest peak groups have been omitted.
Supplemental table IV: Clusters of PLs that can be identified using the algorithma
One variable side
chain
Two variable side
chains
Three variable side
chains
Four variable side
chains
LPC, LPG, LPS, LPE,
LPI, LPA, SM, ST,
STOH, LpPE, LpPC,
LaPE, LlyPG, Cer, FA,
FAOH
PC, diLPC, diLpPC,
diSM, diSMCl, diLPE,
diLpPE, PG, PS, PE, PI,
PA, BMP, pPE, aPE,
pPC, aPC, pPA, aPA,
dlCL1, dlCL2,
mlNAPS1, mlNAPS2,
lyPG, PIP, diFA, DAG
mlCL1, mlCL2, NAPS2,
NAPS1, SLBPA, TAG,
triLPE
CL1, CL2, CL2OH,
diPG, diPE, diPA,
dipPE, diPCCl, diPS,
diPC , dipPC
aLPL; lyso‐PL, pPL; plasmalogen PL, aPL; O‐alkyl PL, diPL; dimeric PL, mlPL; monolyso‐PL, FA; fatty acid, NAPS;
N‐acetyl PS, suffix 1 (as in mlCL1); singly charged, suffix 2; doubly charged, suffix OH; hydroxy, suffix Cl;
chloride adduct. SLBPA; semilysobisphosphatidic acid (a.k.a. hemi‐BMP), DAG; diacylglycerol, TAG;
triacylglycerol.
Chapter 6
General Discussion
“Curiouser and curiouser!”
Lewis Carroll, Alice in Wonderland
Discussion
149
The role of autophagy in BetA‐induced cell death
Since the discovery of BetA as an anti‐cancer compound, research has focused on finding
the mechanism of action of this natural compound. Research quickly showed that the
mitochondria were involved and apoptosis was induced, although independent of
BAK/BAX.(1) When a caspase inhibitor was used, these compounds did not prevent cell
death, indicating that alternative, caspase‐independent cell death pathways must be
activated. In chapter 2, we describe that necroptosis is not induced, however a massive and
rapid form of autophagy is induced. This induction of autophagy could be blocked by
cyclosporine A, an inhibitor of the permeability transition pore. Blocking the opening of this
pore by cyclosporine A resulted also in a block in apoptosis as previously described.(2) This
observation suggests that autophagy is a consequence of mitochondrial damage triggered
by BetA and can be prevented by inhibition of PT‐pore opening. We also observed that in
autophagy knock out cells, enhanced cell death was observed even when apoptosis was
blocked by caspase inhibitors. These data suggest that autophagy acts as a survival
mechanism rather than the cell death execution machinery and that there must be a yet
undefined other cell death mechanism involved that is induced by BetA. Alternative
pathways to death have been reported and could for instance involve lysosomal
permeabilization. Interestingly one of the compounds that is reported to induce lysosomal
destabilization, siramesine, shares some properties with BetA, as it also induces cell death
independent of caspases, BCL‐2 and P53,(3‐5) pointing to a potential mechanistic overlap.(4, 5)
Lysosomal membrane permeabilization can be measured using fluorescent labeled galectin‐
1 or galectin‐3 cells(6) and experiments to test the role of the lysosome in BetA‐induced cell
death should be conducted. It is important to note though that we have shown that
inhibition of cathepsin B, which is reported to be crucial for the lysosomal destabilization (7),
did not influence BetA‐induced cell death, arguing against lysosomal membrane
destabilization as the causal pathway to cell death. Therefore more work needs to be
performed and we decided to focus more in detail on how the mitochondrial BetA‐induced
cell death occurred.
Differential effects of BetA on cancer cells and normal cells
One characteristic of BetA is that its cytotoxic effects are observed on cancer cells and not
on healthy cells.(8, 9) For a long time it has remained enigmatic as to why this differential
effect is observed. In chapter 3, we described that interfering with the fatty acid metabolism
of a cancer cell, by inhibiting stearoyl CoA desaturase enzyme, the side chains of the
phospholipid cardiolipin become more saturated, which results in morphological changes
in the inner membrane of the mitochondria followed by cell death. We also confirmed that
the cytotoxic effect of BetA is only on cancer cells and not on healthy cells. We believe these
observations could explain the selectivity for cancer cells as a hallmark of cancer is altered
metabolism. That is, cancer cells have a different lipid metabolism as compared to healthy
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cells. Cancer cells increase their de novo fatty acid synthesis, to fulfill the need for new lipids
in order to create new biomass which is needed even under scarce conditions. It is energetic
very inefficient to generate de novo fatty acids while enough fatty acids can be taken up by
fatty acids transporters from the surrounding suggesting that cancer cells benefit from de
novo fatty acids for yet undefined reasons. The end product of de novo fatty acid synthesis
is palmitic acid. This saturated fatty acid is converted to unsaturated fatty acids by SCD‐1
and further elongated by several elongation enzymes to create longer fatty acids. In several
types of cancer, SCD‐1 is overexpressed.(10) Cancer cells have become addicted to the
constant rate of conversion of saturated fatty acids into unsaturated fatty acids and thereby
the levels of SCD‐1 they express. BetA and SCD‐1 inhibitors affect this balance and thereby
create a toxic pool of saturated fatty acids. Importantly, in healthy cells basal levels of
saturated fatty acids are lower as compared to tumor cells (11) as normal cells do not utilize
the de novo synthesis pathway. Instead, healthy cells take up unsaturated fatty acids from
the surrounding mainly provided by food intake. Thereby inhibiting the activity of SCD‐1
shows less impact and is therefore less harmful to healthy cells as they are not dependent
on this pathway (described in chapter 3).(12) Unsaturated fatty acids are important
precursors for various products in the cell, like phospholipids (cell membrane),
diacyglycerols (signaling) and triglycerides (energy storage).(13) Overexpression of SCD‐1 is a
result of the overall increase of de novo fatty acid synthesis where besides SCD‐1 also sterol
regulatory element binding proteins (SREBPs) are overexpressed.(14, 15) SREBPs control the
expression of several enzymes (ATP‐citrate lyase (ACL), ACC and FASN) required for
endogenous cholesterol, fatty acid (FA), triacylglycerol and phospholipid synthesis.
Upregulation of these enzymes demands the cell also to increase their SCD‐1 activity to
fulfill the need of an unsaturated fatty acid pool.
The de novo fatty acid synthesis pathway is a potential drug target due to the differential
usage of this pathway between normal cells and cancer cells. Several studies have shown
that inhibition of fatty acid synthesis enzymes by inhibiting FASN, ACC or ACL results in
cancer cell death in vitro and retards the growth of tumors in vivo.(16‐20)
Also shown in chapter 3 is that in cancer cells the saturation levels of the side chains of
cardiolipin are already more saturated as compared to healthy fibroblasts. BetA and SCD‐1
inhibitors treatment result in an even higher saturation grade of the side chains of
cardiolipin. Saturated fatty acid makes membranes more rigid and loss of membrane fluidity
results in loss of function and structure and we hypothesize that this results in the inner
cristae morphology change, which results in permeability pore opening and leakage of
cytochrome c into the cytosol. This initial higher saturation grade of membranes makes
cancer cells more vulnerable for inhibition of SCD‐1 activity as compared to normal cells.
Barth syndrome patients also have highly saturated fatty acid side chains of cardiolipin and
similar morphological changes in the mitochondria are observed.(21, 22) However these
modifications by itself are not sufficient for cytochrome c leakage to occur as most cells in
Discussion
151
Barth syndrome patients show no increase in cell death. This suggests that besides
saturation of cardiolipin side chains, additional changes are needed to induce cell death.
This could be reactive oxygen species (ROS), as inhibiting mitochondrial complex 1 results
in OPA1 (a GTPase in the inner mitochondrial membrane which plays a role in regulating
mitochondrial fusion and pro‐apoptotic remodeling of the mitochondria)
desoligomerization leading to ROS production.(23) This loss of oligomerization of OPA1
results in cytochrome c release and mitochondrial cristae remodeling. It is known that
cancer cells have higher levels of ROS,(24, 25) and therefore it could be that the combination
of higher saturation of cardiolipin and the high amounts of ROS induced in cancer cells
results in cell death.
It is likely that due to the increased need of lipids, cancer cells also has more lipid droplets
which they can use for their supply of fatty acids. During nutrient deprivation, triglycerides
in lipid droplets are hydrolyzed into fatty acids.(26) The breakdown of these stored lipid
droplet products has been shown to occur, besides cytosolic hydrolytic enzymes or lipases,
via a specialized form of autophagy, named lipophagy(27), which link autophagy to lipid
metabolism. Lipophagy may protect cells for apoptosis by breaking down lipids to supply
for energy and prevention of ATP depletion. Another protective role for lipophagy is by
preventing liver injury induced by increased hepatic lipid accumulation or steatosis.(28) Lipids
may also play a role in the regulation of levels of autophagy. It was shown that unsaturated
fatty acid, oleic acid, promoted the formation of triglyceride‐enriched lipid droplets and
induced autophagy, while saturated fatty acid, palmitic acid, was poorly incorporated into
lipid droplets and suppressed autophagy and rather increased apoptosis.(26) This suggest
that formation of lipid droplets and induction of lipophagy is protective for cells.
The differential effect of BetA on cancer cells and normal cells could also be due to massive
induction of autophagy as a response to the induced mitochondrial stress. The autophagy
induced by BetA could also be partially lipophagy, to increase the amount of unsaturated
fatty acids to prevent the toxic effect of accumulating saturated fatty acids by the inhibition
of SCD‐1. Due to the increase of saturated fatty acids, the protective role of lipid droplets
and autophagy are blocked resulting in increased cell death. As normal cells have higher
amounts of unsaturated fatty acids as compared to cancer cells it could be that BetA induces
more autophagy and lipophagy in cancer cells to overcome the toxic effects of saturated
fatty acids. Investigating the role of lipophagy and the blocking of lipophagy, more in detail
could result in potential new targets. Combination of blocking lipophagy and SCD‐1
inhibition might result in a faster more efficient cell death.
The role of cardiolipin in cell death
The toxic saturated fatty acids are incorporated in several phospholipids and one
phospholipid that shows dramatic changes in saturation levels is cardiolipin. Cardiolipin is a
phospholipid that is important for the structure of the inner membrane of the mitochondria
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and it is involved in apoptosis. Two main levels of apoptosis regulation by cardiolipin have
been described. The first involves the release of cytochrome c in a BAK/BAX dependent
fashion. Cytochrome c interacts with cardiolipin in the outer leaflet of the IMM through two
independent binding sites, this is needed for the function of cytochrome c as an electron
carrier in the mitochondrial respitory chain.(29‐32) Cardiolipin‐bound cytochrome c acts as a
peroxidase capable of catalyzing H2O2‐dependent peroxidation of cardiolipin. This
cardiolipin oxidation is an essential step in the release of cytochrome c during apoptosis.(33)
The second level of cardiolipin‐dependent apoptosis regulation that is suggested to occur,
involves Bid‐induced cytochrome c release. During apoptosis, Bid is cleaved by caspase 8 to
produce tBid which translocates to the mitochondria. tBid has been suggested to bind to
CL‐enriched contact sites and induces the translocation of BAK and BAX to the
mitochondrial outer membrane.(34‐36)
Cardiolipin is therefore suggested to serves as a platform to allow apoptosis via the BCL2
family to occur. Whether cardiolipin saturation levels change this platform function is not
clarified, but is a possibility. The level of saturation is however clearly of importance to the
physiological function of cardiolipin and lipids in general. In biological membranes one finds
unsaturated fatty acids of which the structural properties allow for membrane fluidity.
Cardiolipin has four acyl side chains that are highly unsaturated to maintain normal cellular
function.(34) These side chains can be remodeled via tafazzin. We hypothesized that BetA
besides SCD‐1 inhibition also increases the turnover of lipids and thereby the incorporation
of saturated fatty acids into cardiolipin. As cardiolipin regulates and is involved in
permeability pore opening (34, 37) we hypothesized that the saturation of cardiolipin results
in morphological and functional changes in the mitochondrial cristae and leads to
permeability pore opening and cytochrome c release.
The mitochondrial network is maintained by a continuous process of fusion (elongation of
mitochondria) and fission (fragmentation of mitochondria). Whether fusion/fission is
important for cytochrome c release is still debated, however during apoptosis mitochondria
are remodeled via activation of the fission machinery and synchronal neutralization of the
fusion machinery.(38, 39)
Mitochondrial fission occurs at the same time as the activation of BAX, mitochondrial outer
membrane permeabilization and the resulting cytochrome c release.(40) On top of that, it
was shown that disruption of OPA1 complexes results in cytochrome c release and
mitochondrial cristae remodeling.(23) These data indicate that mitochondrial fission/fusion
and cytochrome c release are linked to each other. Cardiolipin also plays a role in
mitochondrial fission/fusion(34) and therefore an increase in saturation grade of the
cardiolipin side chains could result in the observed mitochondrial fragmentation. How this
fragmentation is induced by cardiolipin needs further investigation. Cardiolipin side chain
Discussion
153
remodeling into more saturated is therefore a very interesting mechanism for further
investigation and possible therapeutic targets.
The role of SCD‐1 in cancer therapy
The differential effects of both BetA and SCD‐1 inhibition on healthy cells and tumor cells
makes both compounds very interesting to investigate further for therapeutic applications.
In the past pharmaceutical companies started to look for small molecule SCD‐1 inhibitors to
treat metabolic diseases like obesity, diabetes and fatty liver as these diseases are
associated with up‐regulation of SCD‐1. Since 2005 several patents have been granted and
many of these compounds have good in vitro activity and pharmacodynamics in rodent
models, unfortunately, only a few of these inhibitors have progressed to clinical trials and
no reports can be found of compounds beyond phase IIa studies for obesity, diabetes of
fatty liver disease treatment. The differences of lipid metabolism in rodents to humans is
given as the main explanation.(41) Research in the last years have shown that SCD‐1 plays a
role in the regulation of metabolism and growth signaling pathways in cancer. SCD‐1
contributes to maintain a shift in lipid metabolism and intracellular signaling (i.e. activation
of Akt signal and deactivation of AMPK pathway). This results in an accelerated rate of cell
proliferation, increased invasiveness and enhanced survival.(10) Several studies have shown
that inhibition of SCD‐1 (either genetically or pharmaceutical) leads to reduced cancer
formation in vivo and transformation in vitro.(10, 42) The mechanism by which SCD‐1 inhibition
leads to tumor reduction has been unclear. A hypothesis mentioned in literature, is that
changes in lipid composition result in ER stress and trigger unfolded protein response
(UPR).(43)
We show that inhibition of SCD‐1 by chemical inhibition (BetA and SCD‐1 inhibitor) leads to
increased saturation of CL. This saturation leads to morphological changes in the inner
membrane of the mitochondria and results in cell death. How exactly the changes in
saturation and morphology results in cell death remains unclear, however we hypothesize
that the change in the inner membrane results in opening of the PT‐pore and thereby
release of cytochrome c into the cytosol. (chapter 3) In our research we have not tested ER
stress and UPR. It could be that the ER stress inflicted by shifting the balance between
saturated fatty acids and unsaturated fatty acids precedes the mitochondrial stress we
observe.
Currently no clinical trials are ongoing for SCD‐1 inhibition (clinical trial.gov) in the
treatment of cancer. Inhibition of SCD‐1 as monotherapy could not be optimal as we
observed that inhibition of SCD‐1 results in a slower cell death as compared to BetA.
Therefore the focus should be more on combination therapy, where besides SCD‐1
inhibition another stressor is applied, resulting in synergy of both compounds. We have
tried to find this combination of SCD‐1 inhibitor and a compound that results in the same
efficacy and efficiency as BetA‐induced cell death. However several compounds that
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stressed the mitochondria did not result in cell death synergy when combined with SCD‐1
inhibition. Further research into understanding BetA mechanism and synthetic lethality
using SCD‐1 inhibitor could lead to a beneficial non‐toxic combination therapy.
Betulinic acid as cancer therapy
Besides looking into SCD‐1 inhibition for therapeutic approaches, BetA also has some
potential. Research by others and previously by our group has shown BetA has no toxic
effects in vivo.(8, 9) The development for BetA as a potential drug is not as advanced as SCD‐
1 inhibitors, however the higher efficacy of BetA makes it a better compound as compared
to SCD‐1 inhibitors. Unfortunately, BetA is a very lipophilic compound and therefore harder
to administer to patients. It is known that lipophilic drugs can be more toxic because they
bind (i.e to receptors, plasma, proteins or tissue) while unbound drugs most of the time are
responsible for the efficacy of the drug.(44, 45) For lipophilic compounds, there are usually
much higher concentrations of bound drug than unbound drug, therefore toxicity will be
more likely if it is determined by total drug concentrations as higher doses are needed to
get enough unbound drug in the blood system. However up to now, even when high doses
of BetA were used in vivo no toxic effects were observed in normal tissue although the
formulations used are not suited for the clinic.(8, 9) Accordingly there is a need for a non‐
toxic formulation which can deliver BetA, preferably specific, to the tumor.
Cancer stem cells targeted by BetA
The cancer stem cell model hypothesizes that cancers are organized into a hierarchy of
subpopulations of tumorigenic cancer stem cells and their non‐tumorigenic progeny.(46‐48)
Cancer stem cells are defined as a subset of tumor cells which possess self‐renewal and
multi‐lineage differentiation potential.(49, 50) Cancer stem cells are known to be more
resistant to conventional treatment due to their (acquired) resistance mechanisms.(51, 52) In
chapter 4 we show that BetA can induce a rapid cell death in colon cancer stem cells. We
hypothesize that this induction of cell death is SCD‐1 dependent as SCD‐1 inhibition also
kills colon cancer stem cells, although the induction takes longer than BetA. The precise
mechanism how BetA induces cell death in colon cancer stem cells is still unclear and further
research should reveal if indeed BetA results in SCD‐1 inhibition and a saturation of CL in
these cells leading to apoptosis. Due to the rapid induction of cell death in colon cancer
stem cells as compared to cancer cells a different mechanism might be involved. It could be
that colon cancer stem cells rely more on their fatty acids as they possess more lipid droplets
than regular cancer cells.(53) Interference in the unsaturation grade of these fatty acids could
be a weak spot for these stem cells. Cancer stem cells protect themselves from classical
chemotherapy by using BCL‐XL‐dependent mechanisms (54), as BetA‐induced killing is
independent of the BCL‐2 family this could be a reason why BetA targets the cancer stem
cells. How CSCs die exactly remains to be elucidated. However these data suggest that CSCs
Discussion
155
could be targeted very efficiently if the precise mechanism of action of BetA in these cells is
known.
Lipidomics as a tool for diagnostics and monitoring of patient.
Studying lipids is complex due to the diversity of many lipids. Analysis of lipids was
traditionally done by thin‐layer chromatography, gas chromatography and mass
spectrometry. Recent years more and more technical advances in mass spectrometry have
created the ability to study lipids in a metabolomics way the so‐called lipidomics. Lipidomics
aims to study the pathways and networks of lipids by the characterization and
quantification of all lipids in a sample.(55) In chapter 5 we described a new lipidomics pipeline
which we have tested for BetA treated samples. We show that using the lipidomics pipeline
we can identify and separate a lot of lipids based on their features i.e their saturation
grades. We show that we can distinguish samples that are DMSO or BetA treated based on
their CL saturation grade. This could be used in the clinic to discriminate healthy individuals
from Barth syndrome patients, but also if SCD‐1 inhibitor of BetA makes it into the clinic this
pipeline can be used to monitor treatment response. This method could be used for
monitoring treatment response of compounds that have BetA and/or SCD‐1 inhibitor mode
of action or monitor the effect of SCD‐1 inhibitors and/or BetA when it makes it into the
clinic. With further optimalization of the lipidomics (i.e improved high resolution mass
spectrometry which result in better detection of masses with a higher accuracy and thus
leading to more reliable identification of lipids) this pipeline could also be used for validation
of new compounds to see if they exert the mechanism to inhibit SCD‐1 and thereby
increasing the saturation of CL.
Besides playing a role in cancer, lipids and their metabolism are also involved in several
other diseases.(55, 56) This makes lipidomics a great new tool for diagnostics. The ultimate
goal of lipidomics would be to have one patient sample and measure the complete lipidome
in a fast and accurate fashion so the diagnosis of patient disease could be made. Besides
diagnosis, monitoring of disease progression, treatment response and biomarkers research
are possible.
Concluding remarks
There are still a lot of things we do not understand about BetA and how it induces cell death.
The observations that when apoptosis is blocked by caspase inhibitors, BetA still induces
cell death indicates that a different form of cell death or even a new pathway remains to be
elucidated. And up to now due to its lipophilic character no clinical trials are attempted. In
this thesis we provide data that contribute to the understanding of BetA‐induced apoptotic
cell death. The finding that inhibition of SCD‐1 by BetA results in saturation of cardiolipin
and cytochrome c release opens a new field for cancer research and potential new use for
SCD‐1 inhibitors in the clinic. Targeting cancer stem cells is a kind of Holy Grail in cancer
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156
research, as eradicating all tumor cells is wanted. Interestingly, applying BetA on colon
cancer stem cells resulted in a massive and fast cell death in these otherwise therapy
resistant cells. Discovering the precise mechanism of action of BetA in these cells will
provide the cancer field with potential new drug targets a possible therapy for hard to target
cancers. Monitoring drug response can be done by using the lipidomics pipeline described
in this thesis and this could result in faster diagnosis and specialized patient care. Taken
together, the new findings in this thesis can provide a basis for future studies for cancer
therapy based on cancer metabolism and especially SCD‐1 inhibition and cardiolipin
saturation and on the quest of the mechanism of action of BetA.
Discussion
157
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Annexes
Summary
“Well that was the silliest tea party I ever went to! I am never going back there again!”
Lewis Carroll, Alice in Wonderland
Summary
167
Mechanistic insight into BetA‐induced cell death
This thesis focuses on the mechanisms of BetA induced cancer cell death. In chapter 1, we
start with an introduction on cancer, cancer therapeutics, cell death mechanisms and BetA.
The mechanism by which BetA induces cell death has been investigated by many people
over the past years, however the exact mechanism remained unclear. In chapter 2 we
explore the possibility of other cell death mechanisms besides apoptosis. We observe that
BetA induces cell death in cells which are treated with a caspase inhibitor indicating that
another cell death mechanism must be causing the observed cell death. We therefore
investigated the role of necroptosis in BetA‐induced cell death. Cells treated with capasase
inhibitor and necrostatin‐1 (a necroptosis inhibitor) also showed induction of cell death. So
we proceeded to another possible cell death mechanism, autophagy. Upon BetA treatment
massive induction of autophagy, as shown by lipidated LC3II, was observed both by confocal
microscopy as well as western blot. Autophagosomes needs to be degraded by the
lysosomes in order to get full breakdown of the cargo. Autophagic flux was measured using
long lived proteins, a tandem RFP/eGFP‐tagged LC3 protein and a tandem mCherry/GFP‐
tagged p62 protein. Previously, we observed that cyclosporin A, which targets cyclophilin D
and effectively serves as an inhibitor of the mitochondrial permeability pore, prevents BetA‐
induced apoptotic features. We therefore also investigated the role of this compound in the
induction of autophagy and showed that autophagosome formation was significantly
reduced when cells were pre‐treated with cyclosporin A. These data suggest that BetA‐
induced autophagy is a consequence of mitochondrial damage triggered by BetA and can
be prevented by inhibition of PT‐pore opening. Autophagy, even though initially regarded
as a cell survival pathway, can play a role in dying cells as well and has been suggested to
serve as a balancing mechanism between cell survival and cell death. To test the role of
autophagy in BetA‐induced cell death we used autophagy‐deficient cells. Surprisingly, we
observed an increase in BetA‐induced cell death in these cells, which could not be prevented
by caspase inhibition. Both autophagy‐proficient and ‐deficient cells displayed a similar
increase in mitochondrial depolarization, suggesting that the initial mitochondrial insults
were independent of autophagy induction. Taken together these date indicate that
autophagy serves primarily as a survival mechanism in BetA treated cells and that BetA
induced cell‐death is independent of autophagy, necroptosis and caspases but requires the
mitochondria.
How the induction of apoptosis was realized was therefore further investigated in chapter
3. When analyzing the mitochondria via confocal or electron microscopy we observed
mitochondrial morphology changes upon BetA treatment. The mitochondrial tubular
network became fragmented and the mitochondria displayed a circular morphology by
electron microscopy. These circular cristae are also detected in patients with a X‐linked
syndrome called Barth syndrome, which suffer from a mutation in Taffazin gene. Taffazin
plays a role in cardiolipin remodeling and side chain saturation and cells of these patients
Summary
168
display enhanced cardiolipin saturation that causes mitochondrial ultrastructural as well as
functional abnormalities. We therefore investigated the saturation grade of cardiolipin in
cells treated with BetA and show that upon BetA treatment cardiolipin side chains get more
saturated as compared to vehicle treated cells. To investigate how this saturation occurs we
looked into the function of stearoyl CoA desaturase 1 (SCD‐1) a key enzyme that converts
saturated fatty acids into unsaturated fatty acids. We observed in several cancer cell lines
that the activity of SCD‐1 was blocked by BetA, resulting in an increase in saturated fatty
acids. The role of SCD‐1 inhibition in cardiolipin saturation was further corroborated by the
use of specific SCD‐1 inhibitors. In addition, exogenously added fatty acids (unsaturated or
saturated) strongly affected the saturation grade of cardiolipin. When we treated cells with
BetA or SCD‐1 inhibitor in combination with the saturated fatty acid, palmitate, we observed
an increase in saturation grade of cardiolipin. In contrast, when using the unsaturated fatty
acid, palmitoleic acid, cardiolipin saturation decreased. Importantly, the BetA or SCD‐1
inhibitor‐induced mitochondrial morphology, cytochrome c release, cell death and
clonogenic growth were all strongly affected by exogenously added fatty acids, confirming
that the inhibition of SCD‐1 activity is instrumental in inducing cell death.
Previously we showed that normal cells are less affected by BetA and this is consistent with
our current findings that revealed no morphology changes in mitochondria in normal
fibroblasts upon BetA treatment. As these cells have less SCD‐1 activity, but more
importantly do not appear to depend on this activity to acquire unsaturated fatty acids, the
inhibition of SCD‐1 by BetA or SCD‐1 inhibitor is not as detrimental as compared to tumor
cells. Taken together these data indicate that cancer cells carry an intrinsic mitochondrial
vulnerability that can be effectively targeted by inhibition of SCD‐1, using either specific
inhibitors or BetA, and is not observed in normal fibroblasts. This vulnerability depends on
enhancing the saturation of cardiolipin leading to altered mitochondrial structure and as a
consequence mitochondrial leakage and cell death.
Cancer stem cell sensitivity
Cancer stem cells are known to be very resistant to therapy. As BetA is acting in a broad
fashion to kill cells we investigated the effect of BetA on colon cancer stem cells. In chapter
4 we show that BetA induces a rapid cell death in three different colon cancer stem cell lines
in a time and concentration dependent fashion. Strikingly already after 2 hours an induction
of cell death is observed. As the spheroid cultures contain both cancer stem cells and more
differentiated cells, we set out to determine if BetA induces cell death in the cancer stem
cell population using FACS‐based sorting. Using this approach we revealed that BetA is
capable of inducing cell death in both differentiated tumor cells and cancer stem cells. This
was mirrored in an almost complete loss of clonogenic capacity of these cancer stem cell
cultures treated with different concentrations of BetA. Already after 2 hours of treatment
with a low concentration of BetA, clonogenic capacity is reduced in GTG7 cells, while the
Summary
169
other lines require slightly higher BetA concentrations. In the previous chapter we showed
that BetA induces cells death via inhibition of SCD‐1. We therefore also investigated the role
of SCD‐1 in inducing cell death in colon cancer stem cells. Although it takes more time to
induce cell death with SCD‐1 inhibitors in these cells as compared to BetA, the induction of
cell death and loss of clonogenic capacity is very efficient. We therefore conclude that SCD‐
1 is a crucial player in the maintenance of stemness of cancer cells and inhibition is
incompatible with long‐term survival. Targeting the activity of this enzyme in colon cancer
stem cells via BetA or chemical inhibitors could therefore be a therapeutic approach.
Lipidomics
In chapter 5, we describe the set‐up of a lipidomics pipeline to improve the characterization
and identification of phospholipids. To test this pipeline we used BetA treated samples.
Using the pipeline we found that we could identify several clusters of peaks belonging to
different phospholipids. On top of that we could identify also length and saturation grade
of these phospholipids. This resulted in the identification of total phospholipid levels of
vehicle and BetA treated samples. Differences in total phospholipid levels were mainly
observed in phosphatidylcholine, phosphatidylglycerol and bis‐(monoacylglycero)‐
phosphate. However in these phospholipids no differences in the saturation grade was
observed between samples. The only phospholipid that displayed a clear difference in
saturation grade was cardiolipin. In BetA treated samples it was clearly visible that the side
chains of cardiolipin are more saturated as compared to vehicle treated cells. This indicates
that BetA specifically alters the saturation grade of cardiolipin which eventually results in
cell death. With this pipeline we show that identification of phospholipids can be automated
and this method can be used in the clinic for diagnostic purposes.
Finally, in chapter 6, the data described in this thesis are put in perspective. We showed
that BetA‐induced cell death does not result of necroptosis or autophagy but likely via a yet‐
undefined pathway. We discuss what the role of autophagy in BetA‐induced cell death is
and what the possible cell death mechanism can be. Moreover we show in this thesis that
BetA‐induced cell death evolves due to an inhibition of SCD‐1 resulting in cardiolipin
saturation and cell death. We discuss what role BetA, SCD‐1 inhibition and cardiolipin have
on cancer and cancer stem cells and how this can play a role in cancer therapy. In this
chapter we give perspectives for further investigation to clarify the mechanism of BetA, as
well as future interventions and therapies are proposed for both BetA and SCD‐1 inhibitor.
For the investigation of lipids we set‐up a lipidomics pipeline and we give future
perspectives of a lipidomics pipeline and use of this pipeline in the clinic.
In conclusion, we believe our data provide compelling evidence that lipid metabolism,
specifically the saturation of cardiolipin, can serve as a reliable target in cancer therapy,
which is effectively exploited by BetA.
Nederlandse Samenvatting
“Well! I've often seen a cat without a grin,' thought Alice 'but a grin without a cat! It's the
most curious thing I ever saw in my life!”
Lewis Carroll, Alice in Wonderland
Nederlandse Samenvatting
173
Kanker is een veelvoorkomende ziekte met 100.000 nieuwe gevallen per jaar. De ziekte
wordt gekenmerkt door ongecontroleerde groei van weefsels vanwege een aanhoudende
celdeling. Gezonde cellen in het lichaam delen alleen wanneer dat nodig is (bijvoorbeeld
om wondjes te genezen). Tijdens celdeling krijgen de cellen een specifieke functie en
zodoende ook een specifieke vorm en grootte, dit proces heet differentiatie van de cel. Je
lichaam heeft stamcellen die ervoor zorgen dat vanuit 1 cel een nieuwe groep cellen ( die
ook gedifferentieerd zijn) kan groeien. Het delen en differentiëren van cellen gebeurd door
signalen die gegeven worden. Deze signalen kunnen van buiten de cel komen (zoals
chemische stofjes, virussen) maar ook van binnenuit (eiwitten). Zowel de uitwendige als de
inwendige signalen kunnen de cel laten delen of remmen de celdeling. Dit proces van groei
stimulatie en remming van groei staat onder strenge controle in de cel. Als cellen
ontsnappen aan deze controle en er een ontregeling plaatsvindt tussen de balans van groei
stimulatie en groei remming in het voordeel van de groei factoren dan kan er een
onbeheerste groei ontstaan. Deze onbeheerste groei kan goedaardig of kwaadaardig zijn.
Bij kwaadaardige groei spreken we van kanker, deze cellen zijn in staat om het orgaan
waarin ze zitten te vernietigen en kunnen zich ook verspreiden door het lichaam.
Goedaardige tumorcellen beschadigen alleen het orgaan waarin ze zitten en kunnen zich
niet verspreiden in het lichaam.
Tot op heden is kanker een ziekte die moeilijk te bestrijden is en zodoende wordt er veel
onderzoek gedaan naar hoe kankercellen werken en hoe deze anders zijn ten opzichte van
een gezonde cel. Momenteel zijn er vele soorten therapieën in de kliniek beschikbaar,
echter zijn deze behandelingen (bv chemotherapie en radiotherapie) niet specifiek voor de
kankercellen en werken ze ook op de gezonde cellen, waardoor de patiënt vaak last heeft
van bijwerkingen. Door te ontdekken hoe een kankercel werkt, kan men gericht medicijnen
zoeken die de kankercel dood maken, maar de gezonde cel geen schade berokkent.
Daarnaast wordt er ook onderzoek gedaan naar nieuwe stoffen die chemisch gemaakt zijn
of in de natuur zijn gevonden, deze nieuwe stoffen worden getest in een laboratorium op
verschillende soorten kankercellen om te onderzoeken wat voor effect deze stoffen hebben
op de vitaliteit van de cellen. Via zo’n soort test is Betulinezuur (BetA) ontdekt. Dit stofje
dat voorkomt in onder andere berkenbomen blijkt in staat te zijn om kankercellen dood te
maken terwijl het geen schadelijke effecten heeft op de gezonde cel. Dit proefschrift gaat
over BetA en hoe het kankercellen dood maakt, daarnaast is er ook een hoofdstuk wat een
bio‐informatisch algoritme beschrijft over het ontdekken en benoemen van lipiden (vetten)
In hoofdstuk 1 beschrijven we de literatuur van de afgelopen jaren over kanker, de
therapieën van kanker, de verschillende vormen van celdood die er zijn en het metabolisme
(stofwisseling) van de cel en hoe deze anders is in een kankercel. Daarnaast wordt BetA
geïntroduceerd, hoe het stofje ontdekt is, en wat er tot nu toe bekend is over onder andere
het werkingsmechanisme van BetA geïnduceerde celdood.
Nederlandse Samenvatting
174
Het is bekend dat BetA een vorm van gereguleerde celdood induceert die apoptose wordt
genoemd. Echter als we deze vorm van celdood remmen met specifieke remmers (caspase
remmers) is er nog een groot deel van de kankercellen welke alsnog dood gaan. Dit is alleen
mogelijk als er een ander celdood mechanisme is die dit veroorzaakt. In hoofdstuk 2 is er
gekeken naar welke vormen van celdood er naast apoptose worden geïnduceerd door BetA.
We zijn begonnen met het kijken naar necroptose, een vorm van gereguleerde celdood
welke alleen kan optreden in een cel als er geen caspases zijn. Om te zien of necroptose
deel uitmaakt van BetA geïnduceerde celdood hebben we naast apoptose ook necroptose
geremd. De combinatie van deze remmers zouden als deze vormen van celdood door BetA
geïnduceerd worden, moeten leiden tot 100% levende cellen aangezien we beiden vormen
van celdood geremd hebben. Echter zagen we in deze proef dat de kankercellen nog steeds
dood gingen na behandeling met BetA, hieruit kunnen we concluderen dat een andere vorm
van celdood betrokken moet zijn.
De aandacht is vervolgens gevestigd op autofagie, een vorm van celdood waarbij de cel
zichzelf als het ware opeet om de opgegeten delen vrij te geven aan de omgeving om als
voeding te dienen. Vaak wordt autofagie ook gezien als een overlevingsmechanisme, omdat
de cel zichzelf opeet om andere cellen van bouwstenen te voorzien. Autofagie is een proces
waarbij onderdelen van de cel in een blaasje worden gestopt, ook wel autofagosoom (een
soort vuilniszakje) genoemd. Om het “afval” op te ruimen moet het blaasje samensmelten
met een lysosoom (de vuilverbranding), waarbij de inhoud van het blaasje wordt
afgebroken en gerecycled. Dit proces van complete afbraak wordt ook wel autofagische flux
genoemd.
In hoofdstuk 2 laten we zien dat BetA een massale vorm van autofagie induceert, door het
meten van een eiwitvorm (LC3II) wat voorkomt op de blaasjes (vuilniszakken). Met behulp
van de microscoop zagen we dikke groene puntjes van het eiwit ontstaan terwijl we met
eiwitmetingen (Western Blot) zien dat de LC3II vorm zichtbaar wordt na behandeling met
BetA. Soms gebeurt het wel eens dat het afval niet verwerkt wordt in de lysosomen en dat
je daardoor zo’n hoge hoeveelheid LC3II meet. Om te zien of autofagische flux (de
samensmelting van het blaasje met lysosoom en dus complete afbraak van het afval)
plaatsvindt, is dit gemeten door gebruik te maken van een LC3 eiwit wat is gekoppeld aan
een rode en groene kleur. Als rood en groen gemengd worden, ontstaat er een gele kleur,
tijdens het proces van autofagische flux wordt de groene kleur afgebroken in het lysosoom
terwijl de rode kleur blijft. Behandeling met BetA laat een rode kleur achter in de cellen wat
tot de conclusie leidt dat er volledige afbraak is. Dit is ook aangetoond door het meten van
afbraak van radioactieve lang levende eiwitten.
Mitochondriën zijn energiefabriekjes van de cel en ze zijn betrokken bij apoptose.
Mitochondriën hebben poortjes die open en dicht kunnen, waarbij er stofjes van binnen het
mitochondrion naar buiten kunnen (bv cytochroom c, wat celdood (apoptose) induceert).
Nederlandse Samenvatting
175
Eerder onderzoek liet zien dat cyclosporine A (een stofje wat mitochondriale poortjes dicht
houdt) de kankercellen in leven houdt door remming van apoptose. We waren benieuwd
wat dit stofje doet op de autofagie inductie. We zagen dat er minder autofagie werd
geïnduceerd in combinatie van BetA met cyclosporine A dan met BetA alleen. Dit suggereert
dat geïnduceerde autofagie een gevolg is van de schade die BetA geeft aan de
mitochondriën.
Bij autofagie eet de cel zichzelf op om een andere cel van voeding te voorzien. Autofagie is
al bij lagere concentraties BetA te zien, mogelijk wijzend op dat autofagie vooral een
overlevingsmechanisme is na BetA behandeling. Het is echter ook denkbaar dat de massale
inductie van autofagie na BetA behandeling resulteert in een disbalans tussen overleving en
celdood en dat autofagie inductie een celdood mechanisme is. Om dit te onderzoeken is er
gebruik gemaakt van cellen die bepaalde eiwitten missen die belangrijk zijn voor autofagie
en zodoende kunnen deze cellen kunnen niet langer autofagie induceren. Als we deze cellen
behandelden met BetA zagen we meer celdood ontstaan en dus is autofagie een
overlevingsmechanisme in de cel. Het blijft echter onduidelijk welke vorm van celdood BetA
naast apoptose induceert.
In hoofdstuk 3 bestudeerden we de vorm van apoptose meer in diepgang. Apoptose is een
vorm van gereguleerde celdood die op 2 manieren plaats kan vinden. Via een receptor
pathway ( een sleutel en slot principe, je steekt een sleutel in een slot en het slot kan open,
waarbij de sleutel een proces in gang zet waarbij stofjes aangezet worden die leiden tot
celdood) of via een mitochondriale pathway (waarbij het energiefabriekje van de cel lek
raakt en er stofjes (oa. cytochroom c) vrij komen die celdood induceren). Omdat BetA de
mitochondriale route induceert hebben we gekeken wat er gebeurt met de mitochondriën
zelf. We zagen dat de structuur van de mitochondriën verandert na behandeling met BetA.
Het binnen membraan (cristae) van de mitochondriën wat normaal gesproken lange
strepen laat zien is na behandeling met BetA rond geworden. Dit is een zeer opmerkelijke
waarneming en deze ronde structuren van de cristae van mitochondriën zijn ook zichtbaar
in Barth syndroom patiënten. Deze patiënten hebben een defect in het Taffazin gen
waardoor zij een meer verzadigde vorm hebben van cardiolipine (CL).
CL is een lipide (vet) wat vier vetzuurketens heeft en voornamelijk voorkomt in de
mitochondriën waar het betrokken is bij de structuur van de cristae en tevens ook
cytochroom c vasthoudt in de mitochondriën. De zijketens van CL kunnen verschillen in
lengte en in verzadigingsgraad. Meer verzadigd vet (zoals roomboter) betekend dat deze
minder flexibel is als onverzadigd vet (zoals olie). Het is belangrijk voor de cel om een juiste
balans te hebben tussen verzadigd en onverzadigd vet, omdat veel verzadiging leid tot
starre vetten die niet meer flexibel zijn en aangezien vetten voorkomen in membranen kan
dit leiden tot structuur veranderingen en verandering in functionaliteit van het membraan.
Nederlandse Samenvatting
176
Omdat de veranderingen in de mitochondriale cristae na BetA behandeling zo lijken op de
cristae in Barth syndroom patiënten hebben we de levels en verzadiging van CL gemeten.
We zagen dat CL meer verzadigd raakt na behandeling met BetA. We vroegen ons toen af
wat de oorzaak is van verzadiging. In het lichaam worden vetten opgenomen uit de voeding
of kunnen worden aangemaakt. In kankercellen maakt de cel liever vetten aan dan dat het
deze opneemt uit de voeding, waarschijnlijk omdat kankercellen zo snel delen en meer
vetten nodig hebben als bouwsteen. Nieuwe vetten maken gebeurt via een ingewikkeld
proces wat resulteert in een verzadigd vetzuur. Het lichaam maakt onverzadigde vetten via
een enzym stearoyl‐CoA desaturase 1 (SCD‐1) wat het verzadigd vetzuur omzet in een
onverzadigd vetzuur. Deze vetzuren kunnen dan in alle lipiden ingebouwd worden.
We bedachten dat BetA misschien invloed heeft op dit enzym, zodoende werd de activiteit
van dit enzym gemeten. We zagen dat na BetA behandeling of behandeling met een SCD‐1
remmer de activiteit van dit enzym was geremd en er dus meer verzadigd vetzuur aanwezig
was in de cellen. De vraag was nu of remming van SCD‐1 met een specifieke SCD‐1 remmer
ook dezelfde veranderingen in de mitochondriën opleverde, en inderdaad remmen van
SCD‐1 met de SCD‐1 remmer leidt ook tot mitochondriale veranderingen en CL verzadiging.
We hebben daarna gekeken of het toevoegen van extra onverzadigde vetzuren in
combinatie met BetA de morfologie van de mitochondriën hersteld en of ook CL levels weer
normaal werden. Het toevoegen van extra onverzadigde vetzuren bij BetA behandeling
resulteerde in vermindering van veranderingen in de mitochondriën en ook in CL
verzadigingsgraad. Het tegenovergestelde werd aangetoond met de combinatie van
verzadigd vetzuur en BetA, in deze combinatie werd de structuur van de mitochondriën nog
slechter dan met BetA alleen en ook waren de CL levels meer verzadigd dan na BetA
behandeling alleen. Daarnaast lieten we zien dat BetA of SCD‐1 beiden cytochroom c vrij
laten uit de mitochondriën en celdood induceren en dat de combinatie van SCD‐1 remming
(door BetA ofwel SCD‐1 remmer) en extra verzadigd vetzuur tot meer uitscheiding van
cytochroom c leiden en tot grotere inductie van celdood. Dit terwijl toevoeging van
onverzadigd vetzuur de schadelijke effecten van BetA of SCD‐1 tegengaan en er juist minder
cytochroom c vrijgelaten wordt en er minder celdood ontstaat. In dit hoofdstuk hebben we
een nieuwe celdood route ontdekt die specifiek kankercellen raakt. Gezonde cellen zijn
minder afhankelijk van SCD‐1 activiteit dan kankercellen en daardoor zijn kankercellen veel
gevoeliger voor BetA.
Kankerstamcellen zijn een onderdeel van de tumor die zelf vernieuwende eigenschappen
hebben en in verschillende andere cellen kunnen differentiëren. Er wordt van deze cellen
gedacht dat zij zorgen voor het terugkomen van de kanker na behandeling en voor de
verspreiding (metastasering) van de tumor door het lichaam. Kankerstamcellen kunnen
namelijk van 1 losse cel een hele nieuwe groep kankercellen maken en kankerstamcellen
zijn ook nog eens erg ongevoelig voor de verschillende vormen van therapie. Een grote
uitdaging in het kankeronderzoek is dan ook het begrijpen hoe deze cellen werken en het
Nederlandse Samenvatting
177
vinden van therapieën die ook deze cellen dood maken. In hoofdstuk 4 hebben we de
werking van BetA op darmkankerstamcellen getest. Tot onze verbazing werkt BetA zeer
effectief op kankerstamcellen en zelfs sneller dan in kankercellen. Al na 2 uur zien we een
celdood inductie in de totale populatie van de cellen. Als we specifiek kijken naar het effect
op kankerstamcellen zien we dat BetA ook in 10% van de kankerstamcellen celdood
induceert en daarnaast werd ook een verlaging van zelfvernieuwing werd geobserveerd. De
huidige standaardtherapie voor darmkanker, oxaliplatin bleek in langdurige experimenten
minder effectief dan BetA in het verminderen van uitgroei van de darmkankerstamcellen.
Dit suggereert dat bij oxaliplatin resistentie tegen het middel op lijkt te treden terwijl dit bij
BetA niet gebeurd. Om te kijken of darmkankerstamcellen ook de beschreven nieuwe
celdood route uit hoofdstuk 2 volgen werden darmkankerstamcellen behandeld met SCD‐1
remmer. Ook met SCD‐1 remmer werd een celdood geïnduceerd, echter was deze niet zo
snel als bij BetA. Verder onderzoek naar het precieze mechanisme en de werking van BetA
in darmkankerstamcellen is nodig.
Omdat het remmen van SCD‐1 (via BetA of SCD‐1 remmer) leidt tot een ophoping van
verzadigde vetzuren die in elk lipide ingebouwd kunnen worden hebben we gekeken wat
de effecten van BetA op lipiden in het algemeen is (dus niet alleen CL). Het meten van
lipiden (vetten) is een langdurig en ingewikkeld proces. Zodoende hebben we in hoofdstuk
5 alle lipiden geanalyseerd met een nieuwe methode (lipide pipeline) die sneller en
nauwkeuriger lipiden kan herkennen. We beschrijven de opzet van deze pipeline en testen
we de werking van deze methode door gebruik te maken van BetA behandelde cellen. Met
deze nieuwe bio‐informatische methode kunnen we veel sneller en meer lipiden herkennen
en benoemen dan voorheen. We hebben verschillende fosfolipiden kunnen identificeren en
we hebben bekeken wat de verschillen waren tussen onbehandelde en behandelde cellen.
We zagen dat er significante verschillen waren in de totale waarden van sommige lipiden
(bv PG en BMP). In CL totaal levels is geen significant verschil gevonden terwijl we wel
verschil zien in verzadigingsgraad van de zijketens. In PG en BMP daarentegen zien we
verschillen in totale levels maar niet in de verzadiging. Waarom BetA alleen CL meer
verzadigd maakt moet verder worden onderzocht.
In hoofdstuk 6 worden de resultaten van de voorgaande hoofdstukken bediscussieerd in de
context van literatuur en wordt er besproken hoe BetA en SCD‐1 remming een rol kunnen
spelen in toekomstige therapie. Tevens bespreken we de rol van deze lipide pipeline in de
kliniek.
Samenvattend laten we zien dat vetzuurmetabolisme, in het specifiek CL verzadiging, een
zwakke schakel is in de kankercel en dat dit een mogelijk nieuw aangrijpingspunt is voor
therapie.
List of Publications
“Why, sometimes I’ve believed as many as six impossible things before breakfast.”
Lewis Carroll, Alice in Wonderland
List of publications
199
Potze L*, Pras‐ Raves ML*, van Lenthe H, Vervaart MAT, Kessler J.H, Luyf AC, Medema JP, et al. Improved identification of lipids using physico‐chemical properties: application to lipidomics analysis of Betulinic acid treatment Manuscript submitted * Equal contribution
Potze L*, di Franco S*, Kessler JH, Stassi G Medema JP. Betulinic acid induces a rapid form of cell death in colon cancer stem cells. Manuscript submitted. *Equal contribution
Potze L, Di Franco S, Grandela C, Pras‐Raves ML, Picavet DI, van Veen HA, et al. Betulinic acid induces a novel cell death pathway that depends on cardiolipin modification. Oncogene. 2015.
Tirinato L, Liberale C, Di Franco S, Candeloro P, Benfante A, La Rocca R, Potze L, et al. Lipid droplets: a new player in colorectal cancer stem cells unveiled by spectroscopic imaging. Stem cells. 2015;33(1):35‐44.
Potze L, Mullauer FB, Colak S, Kessler JH, Medema JP. Betulinic acid‐induced mitochondria‐dependent cell death is counterbalanced by an autophagic salvage response. Cell DeathDis. 2014;5:e1169.
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