metabolomics and beyond challenges and strategies for next-gen omic analyses

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Webinar Session 5 Metabolomics and Beyond: Challenges and Strategies for Next-Gen Omic Analyses Dr. Dmitry Grapov Data Scientist, CDS- Creative Data Solutions and Genome Data Analytics, Monsanto, USA [email protected] Please note that the Webinars are presently free, courtesy of the Metabolomics Society and will be uploaded to the society's website. Please feel free to contact us with any questions or suggestions via [email protected]

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Page 1: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Webinar Session 5

Metabolomics and Beyond: Challenges and Strategies for Next-Gen Omic Analyses 

Dr. Dmitry Grapov

Data Scientist,

CDS- Creative Data Solutions and

Genome Data Analytics,

Monsanto, USA

[email protected] Please note that the Webinars are presently free, courtesy of the Metabolomics Society and will be uploaded to the society's website. Please feel free to contact us with any questions or suggestions via [email protected]

Page 2: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Dmitry Grapov, PhDCDS- Creative Data Solutions

Page 3: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Background

Born: Minsk, Belarus in 1981

Minsk, BelarusUniversity of Utah (2000-2007)• B.S. Biology • B.S. Chemistry

Salt Lake City, UT

University of California, Davis (2007-2012)• Ph.D. Analytical Chemistry

with Emphasis in Biotechnology

• Post doc, Oliver Fiehn Lab

Davis, CA

Interests:• Omics, integromics, microbials and big biological data• Multivariate data analysis and visualization, machine learning and software design

WCMC

• Principal Statistician at the NIH West Coast Metabolomics Center (WCMC)

Data Scientist• CDS - Creative Data

Solutions• Genome Analytics,

Monsanto

St. Louis, MO

Page 4: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Experience: Omic’ data analysis and visualization

Grapov et. al., Circ. Cardiovasc. Genet. 2014

Network Analysis

Multivariate Modeling

Grapov et. al.,PLoS ONE (2014) doi:10.1371/journal.pone.0084260

J. Proteome Res., 2015, 14 (1), pp 557–566 DOI: 10.1021/pr500782g

Biomarker validation

• Metabolomics can offer real-time insight into treatment efficacy and drive personalized medicine decisions

Page 5: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Metabolomics: study of small molecules

Page 6: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Metabolome: a proxy for phenotype

Page 7: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

• Large and complex studies

• Integration of multiple biochemical domains

• Interpretation of experimental results within a biological context

Challenges for Next-gen Omic Analyses

Page 8: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Large longitudinal studies may be required to identify small phenotypic and environmental effects

http://teddy.epi.usf.edu/TEDDY/

TEDDY: The Environmental Determinants of Type 1 Diabetes in the Young

multi-Omic longitudinal study involving > 15,000 samples acquired over 3 yrs

Time

TimeAnalytical batch effects can hide smaller

biological effects

Page 9: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Data normalization strategies should be considered during experimental design

Analyte specific data quality overview

normalizations can be used to remove analytical variance

Raw Data Normalized Data

log mean

low precision

%RS

D

high precision

Page 10: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Data normalization may require a combination of approaches

Internal standard (ISTD) based normalization

Retention time of normalized compounds

Number of analytes optimally normalized by each ISTD

(qcISTD)

qcISTD: analytical replicate optimize QC selection

Page 11: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Data normalization may require a combination of approaches

Internal standard (ISTD) based normalization may not fully remove analytical batch effects

Analytical replicate-based normalizations can be used to estimate and remove

analytical variance

Raw Data Normalized Data

SamplesQCs

LOESS

Page 12: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Quality Control (QC) based normalizationOptimal method should use no sample knowledge

Across-batch performance

Within-batch performance

14,526 measurements of 443 variables acquired

over 2 years

Comparison of normalization methods

Raw (RSD ~75)

Normalized (25)

Page 13: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Normalizations need to be numerically and visually validated

Good

Bad: QCs don’t match samples

Bad: overtrained

Challenge: getting appropriate QCs and implementation of normalizations

Page 14: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Identification of systems of changes requires integration of multiple analytical platforms

Am J Clin Nutr. 2015 Aug;102(2):433-43. doi: 10.3945/ajcn.114.103804. Epub 2015 Jul 8.

Page 15: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Modern metabolomic analyses often require combinations of multiple measurement platforms

American Journal of Physiology - Endocrinology and Metabolism 2015 Vol. no. , DOI: 10.1152/ajpendo.00019.2015

Page 16: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

PMID:24204828

2009

~10% variance explained

Many diseases, including aging, have dominant metabolic components (e.g. metabolic syndrome)

Genotype + metabolome >40% variance explained

Type 2 DiabetesNeed for Integromics

Page 17: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Omic’ data integration strategies

Biomarker Insights 2015:Suppl. 4 1-6 DOI: 10.4137/BMI.S29511

Empirical correlation

Network based

Biochemical pathway

Page 18: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Pathway analysis

Page 19: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Metabolomic network analysis

Page 20: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

MetaMapR: Metabolomic network calculation

http://dgrapov.github.io/MetaMapR/

Page 21: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

MetaMapR: Metabolomic network calculation

• Biochemical reactions

• Structural similarity

• Mass spectral similarity

• Empirical relationships

Page 22: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

MetaMapR: Network visualization

Page 23: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Omic’ network analysis

http://kwanjeeraw.github.io/grinn/

Page 24: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

MappingsNetwork Mapped Network

Grapov D.,American Society of Mass Spectrometry Conference (2013, 2014)

Network Mapping

+ =

Page 25: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

DeviumWeb: Data analysis and visualization

https://github.com/dgrapov/DeviumWeb

Page 26: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

DeviumWeb: Interactive visualization

Page 27: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

DeviumWeb: Statistical Analysis

Page 28: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

DeviumWeb: Cluster Analysis

Page 29: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

DeviumWeb: Exploratory Analysis

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DeviumWeb: Predictive Modeling

Page 31: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

DeviumWeb: Pathway analysis

Page 32: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

Thank you:

Metabolomics SocietyDr. Biswapriya Misra

CollaboratorsDr. Johannes FahrmannDr. Kwanjeera WanichthanarakDr. Oliver FiehnDr. Suzanne MiyamotoDavid Liesenfeld

Page 33: Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses

[email protected]

More information:https://imdevsoftware.wordpress.com/

Software:https://github.com/dgrapov

Hire me:[email protected]