ispor2009: innovations in physiologic and pro data capture

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Innovations in Physiologic and PRO Data Capture

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Innovations in Physiologic and Patient-Reported Data Capture: Implications for Streamlining Data Collection and Leveraging Access to Real-time Data

Sonya Eremenco MA, United BioSource Corporation, Bethesda, MD, USA; Wilhelm Muehlhausen DVM, Cardinal Health Germany 234 GmbH, Hoechberg, Germany; Lionel Tarassenko FREng, University of Oxford, Institute of Biomedical Engineering, Oxford, United Kingdom; Jill Platko, PhD PHT Corporation, Boston, MA, USA.

ISPOR International Conference, May 18, 2009

Workshop Outline

Introductions Overview of topic and technology Case example: Asthma study Case example: Diabetes study Potential for use in adverse event safety monitoring Checklist development: interactive process

Workshop Purpose

Clinical trial endpoints involve patient collection of physiologic and patient-reported outcome (PRO) data

Technology enables remote collection and transmission Address the opportunities and challenges of parallel

biometric-PRO data collection Empirical evidence of product value through clinical studies

conducted pre and post-launch and Ways to leverage real-time data access

Historical approach to physiologic data capture Asthma and diabetes patients monitor their conditions

regularly using peak flow meters and glucometers. Until recently, these data were collected from patients

separately from PRO data during clinical trials Increasing respondent burden Increasing risk of error associated with patients or sites

transposing and manually entering data.

Issues with manual entry of patient data Discrepancies with paper diaries

J E Broderick et al. Annals of Behavioral Medicine, 2003: 26:139-148. RN Jamison et al. Pain 2001;91:277–85. TM Palermo et al. Pain 2004, 7:213–219. A Stone et al, BMJ 2002; 324:1193-4 AA Stone et al. Control Clin Trials 2003; 24:182–99.

Issues with manual entry of patient data Discrepancies with glucometer entries

R. Mazze et al, The Amer. J. of Medicine,77,1984 Langer O, Mazze RS. Am J Obstet Gynecol. 1986 Sep;155(3):635-7. Williams CD et al. Diabet Med. 1988 Jul-Aug;5(5):459-62. Ziegler O et al., Diabetes Care. 1989 Mar;12(3):184-8.

Overreporting (addition of phantom values in logbook) Underreporting (omission of SMBG measurements from logbook) Alteration of values

Improvement with electronic capture Laffel LM et al. Continued use of an integrated meter with electronic

logbook maintains improvements in glycemic control beyond a randomized, controlled trial. Diabetes Technol Ther. 2007 Jun;9(3):254-64.

Issues with manual entry of patient data Peak Flow meters:

Errors or falsification P. Verschelden et al, Eur Respir J,9,1996 A W A Kamps et al., Peak flow diaries in childhood asthma are unreliable.

Thorax 2001;56:180-182 (March)

Impact of electronic H. Reddel, et al., Analysis of adherence to peak flow monitoring when

recording of data is electronic. BMJ 2002;324:146-147 ( 19 January )

Manual entry problematic

Regardless of whether physiologic data are entered in paper logs or diaries or in electronic diaries prone to errors: Overreporting Underreporting Alteration of values

Unless the data are captured and transferred electronically (simultaneously), difficult to retrospectively link the data points for statistical analysis Times are off Different time settings No session to connect data

Convergence in technology

Development of biometric devices Use of electronic PRO administration (ePRO) via

PDA/handheld devices Development of integrated devices Evolution of data transmission technology Greater technologic sophistication of consumers

Result: ability to simultaneously capture and transmit physiologic and PRO parameters in clinical studies

Other Therapeutic Areas

Hypertension: blood pressure Oral Anticoagulation Therapy: prothrombin time meters Sleep COPD Obesity

Range of devices

Glucometers Peak Flow meters Blood pressure meters Puls Oximeters Weight scales Activity monitors, accelerometers Sleep movement monitors

Integrated vs. separate

Range of transmission methods

Wireless Bluetooth

PDA Mobile phone Modems

Infrared (radio frequency) ZigBee - Personal Area Network GSM/GPRS built-In

Wired USB Serial

Confidential

Cardinal Health Research Services „CHRS“

ISPOR Orlando Willie MuehlhausenMay, 2009 Senior Product Manager

Case studies

Persistent Asthma 8 weeks treatment 24 countries (6 continents) 1900 randomized subjects Age 12 and older Data transmission at Site (every 2 weeks)

Physiologic data Peak Expiratory Flow (PEF)

PRO data Rescue medication Asthma Symptoms Scores (AM & PM)

Case studies

Case studies

Data Access in „Realtime“

Exclusion criteria Less than 4 / 7 days with data during Screening

Early withdrawal criteria More than x number of Rescue Med use

Case studies

Chronic Asthma 12 weeks treatment US only 295 randomized subjects Adults Data transmission at Site (every 4 weeks)

Physiologic data Peak Expiratory Flow (PEF)

PRO data Rescue medication Asthma Symptoms Scores (AM & PM)

Case studies

Case studies

Screening Monitor Compliance during Screening to

withdraw non-compliant subjects

Parallel Capture 99.9% of subjects who answer the

questions will also do the PEF at thesame time

Diabetes Case Study using mPRO™ Data Collection

ISPOR May 2009Lionel Tarassenko FREng, University of Oxford, Institute of Biomedical Engineering, Oxford, United Kingdomt+Clinical

Technology for self-management?

Wilson et al. (BMJ, 2005): “The evidence backing the use of disease-specific self-management programmes like diabetes is strong. The challenge is how to move to a programme that can support the many millions of patients who might benefit.”

Focus on mobile phone:

Equality of care – 90% of UK population owns a mobile phone

Real-time feedback, with two-way information flow

Communication with remote carer based on shared data

Economic model based on reduction in unplanned hospital admissions makes mobile phone solution a financially viable proposition

The Solution

t+ Medical Nursing Team

Prioritisation of patients• Clinical management tool• Red alert responses• Compliance monitoring• Education delivery• Medicines optimisation• Admissions avoidance programmes

Mobile health tool• Regular support from t+ telehealth nurse (based on real-time data)• Interactive to promote self management• Carer Alerts• Colour coded feedback

Healthcare practitioner

Blood Glucose Measurements

Using a glucometer to test blood sugar levels, the readings can then be downloaded wirelessly over Bluetooth to the mobile phone and submitted with the diary information to the main server.

Example patient selection

All adult or transitional (juvenile to adult services) patients with an HbA1c > 7.4%, who meet one of the following criteria:

Type 1 diabetes

Type 2 diabetes on insulin

Type 2 diabetes on oral hypoglycaemic agents, testing at least twice a week

t+ diabetes phone diary

t+ diabetes phone diary

t+ diabetes phone diary

t+ diabetes phone diary

Diabetes home page

Clinician

Patients charts

Clinician

Patients charts

Clinician

Oxford Diabetes Type 1 clinical trial

9-month Randomised Controlled Trial with patients from Young Adult Clinic Inclusion criteria:

Type 1 diabetes, aged between 18 and 30Twice daily or basal bolus insulin therapyPoor glycaemic control (HbA1C between 8 and 11%)

Aim to detect a difference of 0.7% in HbA1C based on baseline mean value of 9%

Division of Public Health and Primary Care University of Oxford

Principal Investigators:- Prof. L. Tarassenko- Prof. A. Neil- Dr A. Farmer

Telehealth nurse contacts

601 phone calls initiated by telehealth nurses

An average of 13 calls per patient (1.5 calls per month)

Duration of phone calls was 7 min 9 sec

(Standard Deviation 4min 15 sec)

Interaction with patients on basis of shared data

Results – patient compliance

0 5 10 15 20 25 30 350

5

10

15

20

25

30

Num

ber o

f rea

ding

s re

ceiv

ed p

er p

atie

nt

Weeks spent in trial

InterventionControl

“A randomised controlled trial of the effect of real-time telemedicine support on glycemic control in young adults with type 1 diabetes”

DIABETES CARE, VOLUME 28, NUMBER 11, NOVEMBER 2005

Changes in HbA1c over 9 months

Hb

A1c

(%

)

Use of t+ diabetes for insulin titration

Automatic alerts for hypoglycaemia

Time plots of BG readings + insulin doses (last two weeks plus trend screen) available on patient’s web page

Direct access to patient on mobile phone

Use of t+ diabetes for insulin titration(Oxfordshire GP Practices)

Insulin titration results

Jill V. Platko PhDScientific Advisor617-973-3252jplatko@phtcorp.com

18 May 2009

Real-time data collection and data access in clinical trial safety monitoring

Discussion Topics

Safety Monitoring (Monitoring for potential Adverse Events)

Case example: Insomnia Trial-Suicidal Ideation Case example: Asthma Trial-Worsening Condition More than just Clinical Trials: Disease Management

Adverse events and paper

Safety Monitoring General (non-study specific) issues Indication or drug class specific issues Exam at study visits Specific Question(naires) at study visits Take home diary

Suicide Ideation

sonya.eremenco
on this slide it looks like you have pasted the headline twice. I tried to move it over so it doesn't hang off the end. If duplicated, please delete one.

Suicide Ideation

Memory of Moods

Paisecki et.al., Psychol Assess. 2007 Mar;19(1):25-43.

eDiary

4-Week Recall

Case Study: Insomnia Trial Study details

International trial to treat insomnia in subjects with Major Depressive Disorder

Site Visits spaced up to 4 weeks apart Quick Inventory of Depressive Symptomatology (QIDS-SR16)

completed weekly at home. Data available in real-time for review by site coordinators and

sponsors

Suicide Ideation

eMail AlertFrom: studySupport@phtcorp.com [mailto:studySupport@phtcorp.com]

Sent: Friday, January 09, 2009 5:17 AM

To: undisclosed-recipients

Subject: Urgent – study participant Suicidal Ideation Alert

DO NOT REPLY TO THIS MESSAGE!

Dear Investigator,

A Subject answered the QIDS question 12 in a manner that indicates suicidal ideation. Please contact the subject immediately and determine if the subject remains eligible for the trial.

Please contact Dr. Smith, M.D. at 973-986-3456 if you have any questions. Dr. Smith will be contacting you within 24-48 hours to discuss the subject.

Sincerely,

The QIDS Alert System

Data Summary

Asthma Trials

Peak Flow Meter

Recording PEF ValuesCompliance with and accuracy of daily self-assessment of peak expiratory flows (PEF) in asthmatic

subjects over a three month period.

Verschelden P, Cartier A, L'Archevêque J, Trudeau C, Malo JL.Eur Respir J. 1996 May;9(5):880-5

We conclude that: 1) compliance with daily peak expiratory flow assessments is generally poor (…) and 2) a substantial percentage of values (22%) is invented.

Conclusions- Peak flow diaries kept by asthmatic children are unreliable. Electronic peak flow meters should be used if peak flow monitoring is required in children with asthma.

Peak flow diaries in childhood asthma are unreliable.Kamps AW, Roorda RJ, Brand PL.

Thorax. 2001 Mar;56(3):180-2.

eSense Case Study: Global Asthma Trial Study details

International trial with > 500 subjects in 15 countries using portable electronic PEF meter

Subjects take morning and evening PEF values using an eSense PiKo meter by Ferraris Respiratory

Data is available in real-time for review by site coordinators and sponsors

PEF Values Alerts

The following specifications should generate a patient diary alert:Peak Flow measurement less than 50% of Subject’s personal best

Explanation: The LP will update and store the Subject’s personal best Peak Flow (morning or evening) on an on-going basis, then compare every new entry to this stored value. If the new Peak Flow measurement is less than to 50% of this stored value, the LP will alert.

Alert: “You have indicated a large drop in Peak Flow. Please contact your Study Coordinator.”

Example Day 5: Subject enters 300 (LP stores personal best)Day 50: Subject enters 325 (LP updates personal best)Day 149: Subject enters 155 – LP alerts

Diary Alerts

sonya.eremenco
do you want diary alerts to be in purple font? It is ok with me but it is the only place where that is done.

Case Study: Disease Management

Challenge: Reduce hospitalizations and deaths due to COPD exacerbations; improve patient lung function and quality of life.

Methods: Subjects use the LogPad daily to answer questions, which are scored in real time; if the score crosses certain thresholds, patients are instructed to contact the hospital’s pulmonary call center for instruction.

Report for Patient Monitoring

Clinician Reaction

“This technology, which could easily be used with other diseases, has a truly great impact on patients’ quality of life and the disease cost and burden on society,”Dr. Wissam Chatila Temple Lung Center

Patient Reaction

"With the (LogPad) you have a daily routine, seven days a week, so you can't miss it. You can't go wrong … This here keeps me out of the hospital as much as possible. That's what I love about it."

Edward GoldwireCOPD patient

Any QuestionsAny Questions

Discussion 1

What factors determine which studies would benefit from combining physiologic and PRO data collection?

Discussion 2

What barriers to implementing parallel data capture do you see in your company?

Discussion 3

What strategies can be used to overcome the barriers to adoption?

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