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From Retrospective to Prospective Designs: Leveraging Clinical, Administrative, and Patient Reported Data for Clinically Meaningful Research Jennifer Christian, PharmD, MPH, PhD Vice President Real World & Late-Phase Research David Thompson, PhD Senior Vice President, Advisory Services © Copyright 2015 Quintiles Your Presenters David Thompson, PhD Presenter Photo Senior Vice President, Advisory Services, Quintiles David Thompson, PhD is Senior Vice President of the Advisory Services division of Quintiles Transnational Corporation, with responsibilities for Real-World Data & Analytics and Health Economics & Outcomes Research (HEOR). Dr. Thompson is a health economist with 25+ years of experience in the health economics arena, including work in economic modeling, retrospective database analysis, trial-based economic evaluations, and patient-reported outcomes. His work has been global in nature, with extensive experience in North American & European markets as well as the emerging markets of the Asia-Pacific and Latin American regions. Prior to joining Quintiles, he held leadership positions at i3 Innovus/OptumInsight (2000-2012) and PAI (1988-2000). Quintiles Confidential 2 Your Presenters Jennifer Christian, PharmD, MPH, PhD Presenter Photo Vice President, Real World & Late-Phase Research, Quintiles Jennifer Christian is Vice President of Clinical Evidence within the Real World & Late Phase Research Scientific Affairs group at Quintiles where she provides scientific oversight to the design and conduct of real world studies, including clinical effectiveness and safety evaluations. Dr. Christian has conducted numerous studies using large claims databases, electronic medical records, prospective clinical studies, and, more recently, she has focused on pragmatic and hybrid study design approaches for enhancing safety and effectiveness evaluations. She is a graduate of the UNC- Chapel Hill School of Pharmacy and School of Public Health and from the Doctoral Epidemiology program at Brown University. Prior to joining Quintiles, Dr. Christian was a Senior Director of Clinical Effectiveness and Safety within the Chief Medical Office of GlaxoSmithKline, where she provided strategic and methodological expertise to clinical development teams to strengthen their proposed study questions and methodological approaches. 3 Agenda Introduction Retrospective hybrid designs Enriched prospective study designs that leverage EMR data including randomized, pragmatic studies Q&A 4 Today’s Webinar Audience 4.98% 5.98% 20.27% Academia Biostatistician Clinical Operations 1.66% Epidemiology 25.58% Health Economics/Health Outcomes 9.30% Market Access Medical Affairs 5.98% Risk Management Other 10.96% 15.28% 5 Polling Questions A small number of polling questions have been added to today’s webinar to make the session more interactive ? 6 From Retrospective to Prospective Designs 7 Sources of Real-World Data Six Identified by ISPOR Real-World Data Task Force • Supplements to traditional RCTs: > Commonly known as trial-based or ‘piggyback’ evaluations > Inherent tension between internal & external validity • Large simple trials: > Commonly known as pragmatic or naturalistic trials > To date not commonly performed due to high risk, high cost • Registries: > Include prospective cohort studies • Administrative data: > Also known as claims data • Health surveys: > Useful for basic epidemiologic data or macrolevel views on utilization • Electronic health records & medical chart review: > Electronic health records also called electronic medical records (EMRs) > Better to separate EHR/EMR data from medical chart review 8 Typology of Real-World Data Retrospective Designs Prospective Designs Primary Data Collection Medical Chart Review RCT Piggybacks Pragmatic Trials Registries Health Surveys Secondary Data Collection A Two-by-Two Approach Administrative Claims EMR Automated EMR Data Feeds 9 From Retrospective to Prospective Two Key Questions Primary Data Collection Medical Chart Review RCT Piggybacks Pragmatic Trials Registries Health Surveys Secondary Data Collection Prospective Designs Administrative Claims EMR Automated EMR Data Feeds Retrospective Designs Prospective Designs Primary Data Collection 2. How can we utilize secondary sources of retrospective data for prospective research? Retrospective Designs Medical Chart Review RCT Piggybacks Pragmatic Trials Registries Health Surveys Secondary Data Collection 1. For secondary sources of retrospective data, should we use EMRs? Claims? Both? Administrative Claims EMR Automated EMR Data Feeds 10 Claims vs EMRs Scorecard Content Comparisons Characteristic •Verdict Administrative Claims Electronic Medical Records Patient Detail Basic demographics (age, sex) plus enrollment Demographics plus vital signs, BMI, allergies, smoking status Clear win for EMRs Medications Detail Drug code (name, form, strength), Rx fill date, amt supplied, dose & freq for pharmacy-dispensed drugs; no OTC Mostly same detail for Rx’s written (but no Rx fill date); current meds, including OTC products, available EMRs have medication history & OTC use, but lose to claims on lack of fill data Diagnostic Detail ICD-9 codes ICD-9 codes, problem lists, severity, symptoms Clear win for EMRs Procedures Detail CPT codes CPT codes Tie Laboratory Detail CPT codes, date; limited availability of lab results CPT codes, date, & e-feed of lab results sometimes including pathology & radiology Clear win for EMRs Hospital Detail Dates of admission & discharge, diagnoses, major procedures; usually nothing on inpatient drugs Hospital EMR: detail on all aspects of inpatient care, including day:time info; ambulatory EMR: not much Ambulatory EMRs lose vs claims, hospital EMRs win Financial Detail Charges, amounts reimbursed, copays Usually not available Clear win for claims 11 Claims vs EMRs Scorecard Practical Comparisons Characteristic Administrative Claims •Verdict Electronic Medical Records Insurance Coverage Insured only (usually one type) Treatment independent of insurance, includes uninsured EMRs win on variety, claims on specificity Geographic Settings Mostly US only EMRs proliferating in US & ex-US settings Narrow (but widening) lead for EMRs Ease of Analysis Relatively easy Harder, particularly for unstructured data Claims win on ease, but EMRs reward extra effort Ease of Linkage Do-able but not easy without compromising PHI Do-able but not easy without compromising PHI Tie Data Completeness High for elements essential to reimbursement High for elements essential to patient management Depends on what’s most important Timeliness Time lag usually measured in months or quarters Time lag usually measured in days or weeks Clear win for EMRs 12 Claims & EMRs Substitutes or Complements? • Choice between claims versus EMR data requires consideration of their relative strengths & limitations: > Claims offer detail on health-care utilization & cost, but considerably less clinical detail > EMR has relative abundance of clinical detail but no cost and sometimes incomplete picture of care > Note also that, for drug studies, pharmacy dispensing a potential blind spot for EMR • Sometimes analyses require level of detail offered by both claims & EMR > EMR-claims data vendor linkages exist but overlap is typically small, limiting usefulness to less common disease areas > Some integrated delivery networks have access to claims, allowing do-it-yourself data aggregation customized to study needs 13 Claims & EMRs Linkage to Take Advantages of Complementariness Electronic Medical Records Administrative Claims. Patient Detail Patient Detail • Demographics • BMI, smoking status • Vital signs • Demographics • Health plan enrollment Clinical Detail • ICD-9-CM diagnoses & procedures • Prescriptions filled • Hospitalizations • Lab tests (but no results) Clinical Detail • ICD-9-CM diagnoses & procedures • Drugs prescribed • OTC medications taken • Free-text physician notes • Lab tests & results Other Other One Patient, Two Data Sources • Reflects all care settings • Includes financial detail • Limited to ambulatory setting • No detail on OTC meds • No detail on prescriptions filled • No physician notes 14 EMRs as a Point of Entrée into Provider Networks EMR Systems Are Implicit Provider Networks for Outreach to Patients Patients Patients Patients Providers Providers Patients Providers Providers EMR Data Providers Patients 15 ‘Retro Plus’ or ‘Hybrid Lite’ Collecting Additional Data from the Patients & Physicians in a Database Analysis Combine insights from retrospective analyses of EMR or EMR-claims data With direct surveys of the patients included in these analyses As well as the physicians who treated them To better understand the reasons for the observed results 16 Case Study: Type 2 Diabetes Screening Behavior EMR Data Extraction + Surveys of Physicians Study Overview Objective: To understand the factors that influence physician screening practices for type 2 diabetes mellitus (T2DM) Approach: Physician Survey + Retrospective Cohort Study Physician Survey • • • Pre-diabetes & T2DM screening practices Knowledge of screening guidelines Characteristics of medical practice Value added • Evaluation of concordance between physicians’ description of their own behaviour with empirical evidence from EMR data • Improved understanding of how to focus support resources for the medical profession in identifying pre-diabetes and diabetes • Reduce subsequent morbidity & mortality by providing patients with appropriate and timely care Retrospective Data Analysis • Q-EMR used to create cohort eligible patients whose physicians returned a survey • Evaluate screening activity, clinical characteristics, behavioral/lifestyle changes, prescribed medications Study Cohort: 300 physicians 17 Study Design: Hybrid Survey & Retrospective EMR Data Patients of PCPs who respond to online survey Primary Care Physicians (PCPs) from EMR Network Online Survey Patients ≥ 18 years eligible for receiving diabetes screening test (based on screening guidelines criteria) Study Sample Survey Responses Link Summarize patient records for each physician to create concordance measures Physician Level Analysis Evaluate treatments and outcomes in patients diagnosed with diabetes or prediabetes Patient Level Analysis 18 Planned Analyses Concordance between Self-reported Attitude/Behavior towards Diabetes Screening Guidelines and Evidence from EMR Physician Level Survey Measures Physician Level Composite Measures • Attitudes and Behaviors towards Screening Activity • Proportion of each Physician’s • Likelihood to Screen Patients Eligible* Patients: possessing guidelines criteria • Receiving Screening Test • Familiarity with recent guidelines • Receiving Different Treatments and preferences regarding its • Receiving Follow-up Testing use • Summarized Patient Characteristics at • Preferred Treatment Approaches Physician level • By Diabetes Severity • By Age *Eligible patients are defined based on • Frequency of Follow-up Testing screening guidelines criteria • Pre-diabetes • Diabetes Physician • Normal Results • Physician & Practice Characteristics Level Composite Measure 19 Example: Linking Survey-EMR Data Patient Level EMR Data US Preventative Services Task Force Guidelines Adults aged >18 years whose physicians participated in the online survey 3 or more years of consecutive activity with the surveyed physician between 2009 and 2014 Eligible for diabetes screening based USPSTF guidelines: Age ≥ 18 years and blood pressure level ≥ 135/80 mm Hg The USPSTF recommends screening for type 2 diabetes in asymptomatic adults with sustained blood pressure (either treated or untreated) greater than 135/80 mmHg Physician Survey Data Physician Level EMR Data Q. Please indicate how likely you would be to conduct type 2 diabetes screening in patients with blood pressure level ≥ 135/80 mm Hg? Extremely likely Not at all likely 𝑝𝑖,𝑗 = 𝑁𝑜. 𝑜𝑓 𝑝𝑎𝑡𝑖𝑒𝑛𝑡𝑠 𝑟𝑒𝑐𝑒𝑖𝑣𝑖𝑛𝑔 𝑠𝑐𝑟𝑒𝑒𝑛𝑖𝑛𝑔 𝑢𝑛𝑑𝑒𝑟 𝑐𝑟𝑖𝑡𝑒𝑟𝑖𝑎 𝑗 𝑁𝑜. 𝑜𝑓 𝑝𝑎𝑡𝑖𝑒𝑛𝑡𝑠 𝑒𝑙𝑖𝑔𝑖𝑏𝑙𝑒 𝑓𝑜𝑟 𝑠𝑐𝑟𝑒𝑒𝑛𝑖𝑛𝑔 𝑢𝑛𝑑𝑒𝑟 𝑐𝑟𝑖𝑡𝑒𝑟𝑖𝑎 𝑗 Concordance Measures Analysis Survey Response Concordant or Non-Concordant? Physician Level EMR Data 20 Enhanced prospective study designs that leverage secondary data sources 21 Patient Case “A clinician performs an experiment every time he treats a patient” – Alvan Feinstein a. Chief complaint (why patient came to the hospital) EMR, Patient, Caretaker, EMS or First Responder b. History of present illness Patient, Caretaker, Recorded in medical note c. Past medical history Variable depending on system d. Medications taking prior to admission Patient, Caretaker, Call outpatient pharmacy e. Drug allergies Patient, pharmacy database, EMR f. Family/social history Patient, Caretakers g. Physical exam and review of systems Clinicians, EMR h. Problem list (assessment and plan) Clinicians, EMR i. Hospital Course EMR, Clinicians j. Baseline labs and pertinent labs throughout hospital course Lab database k. Drug therapy throughout their hospital course Pharmacy database 22 Greater insights using enriched real-world evidence Pharmacy Hospital In-Patient EMR Ambulatory EMR Existing Data Sources Claims + Physician Reported Data Patient Reported Data Primary Data Integrated multi-source data can be used provide a comprehensive view of the patient’s condition, medical care and outcomes 23 How can we utilize secondary sources of health data for prospective research? Mosaic • Utilizing primary & secondary data collection under one common protocol without integration Enhanced Prospective Studies Recruitment • Efficiencies in targeting site identification and recruitment with EMR • • • • • • Full integration Address additional questions such as healthcare utilization and costs Enhanced analysis with adjustments for additional confounders Reduce burden of data collection on sites Baseline and historic data Reduce source data 24 verification Mosaic What is it? Why use this approach? • What? Utilizing primary and secondary data under one common protocol without necessarily integrating • Why? Secondary data can provide a more efficient solution to evaluating how patients are treated in the real world, while primary data collection can be used to supplement the gaps and in countries where secondary data is not available • How? Common protocol with different solutions for data collection › Matched or parallel cohort studies with primary or secondary data approaches › Country level approaches with primary data in some and secondary data in others • Challenges? Disease vary by how they are recorded and treated within and across countries and data sources; Common, standardized definitions are challenging; Regulatory requirements vary and may alter protocol in some countries 25 Example: Real-World Comparators / Matched or Parallel Cohort Studies Matched or Parallel Cohort Studies Phase 3b or 4 – Patients treated in clinical trial Parallel cohort to examine representativeness & effectiveness in pops of interest Trial eligible pts Broader pt pool Subgroup specific analyses block1 Pharmacy Hospital In-Patient EMR Claims Ambulatory EMR 26 Example: Common Protocol with Primary & Secondary Data Global Type 2 Diabetes Drug Registry Study Overview Value added & Lessons learned Objective: To describe the disease management patterns in type 2 diabetics initiating a second line antidiabetic treatment Value Added • Efficiency in leveraging secondary data sources, where available • Expect earlier findings in countries with secondary sources while primary data collection can be more detailed, fit for purpose but take longer • Global approach allows for comparison in disease management by country Approach: Mosaic design. Multicountry, multicenter, observational, longitudinal, prospective cohort study Patients: Type 2 diabetics initiating their second line anti-diabetic therapy Target sample size: >10,000 subjects with more than 20 countries Challenges: • Feasibility is crucial • Regulatory differences by country • Recruitment estimates • Terminology aligned 27 Example: Common study design with different data collection methods by country Initiation of second-line therapy Diabetes diagnosis and initial treatment Enrolment, Day 0, On 6 month site-visit, collection data of baseline variables collection point 12 month data collection point 24 month data collection point 36 month data collection point, End of study Follow-up, collection of follow-up variables 28 Available Options and Recommended Approach Full prospective France United Kingdom Germany Italy Spain Denmark Norway Sweden Australia United States Canada Japan China (Mainland) Secondary Data Collection Integrated approach = available option = recommended approach 29 How can we utilize secondary sources of health data for prospective research? Mosaic • Utilizing primary & secondary data collection under one common protocol without integration Site & Patient Recruitment • • Efficiencies in targeting site identification and patient recruitment with EMR Establish baseline and historic data Enhanced Prospective Studies • • • • • Full integration Address additional questions such as healthcare utilization and costs Enhanced analysis with adjustments for additional confounders Reduce burden of data collection on sites Reduce source data verification 30 How can secondary sources of data assist with recruitment for prospective studies? • Many studies can be challenging to recruit > [Examples: rare diseases, strict inclusion/exclusion criteria, large number of patients needed] • EMR and/or healthcare claims (receipt) data can provide additional ways to recruit patients and identify patients who may be eligible for the study • Studies have reported a high yield of patients at a lower cost by using an EMR database to develop a weekly list of potential patients for recruitment that meet inclusion/exclusion criteria and contacting directly 31 Case study: Determinants of Receiving Shingles Vaccine Targeting site recruitment with EMR data for improved representativeness & efficiencies Situation • Understand determinants of receiving the shingles vaccine in adults eligible for the NHS shingles vaccination program • Proposal: To conduct a non-interventional, multicenter, primary healthcare-based, case-control study of patients who were eligible to receive the Zoster vaccine through the NHS program • Need to identify 500 patients who were around 80 years of age Solution • NHS data was identified as an efficient solution to identify and recruit GP sites’ and patients’ recruitment • Data partner provided counts for GPs across the UK and patients counts aged 80-81 years old per practice Result Customer Goal • Targeted recruitment strategy plan • Sites are being identified & contracted • Recruit 60 sites (GP practices) and 500 patients aged 80-81 years old across the UK 32 How can we utilize secondary sources of health data for prospective research? Mosaic • Utilizing primary & secondary data collection under one common protocol without integration Enhanced Prospective Studies Recruitment • • Efficiencies in targeting site identification and recruitment with EMR Establish baseline and historic data • • • • • Full integration Address additional questions such as healthcare utilization and costs Enhanced analysis with adjustments for additional confounders Reduce burden of data collection on sites Reduce source data verification 33 Enhanced Prospective Study Designs Product of Interest Study Start-up Identify sites and patients Feasibility of data elements Visit 1 Consent Visit 2 n months of normal care Randomize? Clinical Assessments Baseline Visit Switching permitted Comparator(s) Collect health care interventions & monitor safety through existing records Pharmacy Hospital In-Patient EMR Ambulatory EMR Claims 34 COMPASS: COMparative effectiveness and PAtient Safety & Surveillance ~8 million active patients with linked out-patient and in-patient data Current Pts: 681K Hospitals: 4 Current Pts: 425K Hospitals: 1 Medical & Pharmacy Claims: 0 Medical Claims: 425K Pharmacy Claims: 0 Total Pts: 1.5M Hospitals: 1 Current Pts: 200K Hospitals: 0 Medical & Pharmacy Claims: 0 Medical & Pharmacy Claims: 100K Total Pts: 360K Hospitals: 9 Medical & Pharmacy Claims: 0 Total Pts: 1M Hospitals: 3 Medical & Pharmacy Claims: 100K Total Pts: 3.5 M Hospitals: yes Current Pts: 282K Hospitals: 1 Medical & Pharmacy Claims: 282K Medical & Pharmacy Claims: 0 Current Pts: 2M Hospitals: 32 Medical & Pharmacy Claims: 50K Pts: 166K Hospitals: 0 Medical & Pharmacy Claims: No Partnership with nationwide network of specialty asthma and allergy clinics with robust EMR data 35 COMPASS: COMparative effectiveness and PAtient Safety & Surveillance Integrated Healthcare Delivery Networks (IDNs) • An integrated delivery network (IDN) is a network of health care providers and organizations which provides a coordinated continuum of services to a defined population. An IDN may own or could be closely aligned with an insurance product. • IDNs can be leveraged to: › Access patient data across the continuum of care (ambulatory and in-hospital) › Link lab, pharmacy and, in some cases, imaging data EMR › Follow patients longitudinally for specific outcomes › Collect Quality of Life and other PRO data › Assess healthcare resource utilization › Evaluate treatment patterns Patient Survey Labs Hospital Procedures Physician Survey Data Warehouse Claims Pharmacy Pathology Imaging 36 Main Messages • There are numerous innovative designs that combine primary and secondary data collection, each with strengths and limitations • Through experience, we have found that each study requires a robust feasibility to assess the specific study criteria prior to initiating the protocol • For enriched studies, early engagement with local expertise is critical for feasibility and successful implementation 37 Quintiles-IMS Health Real-World Evidence Collaboration Quintiles and IMS Health Announce Global Collaboration to Advance the Use of Next-Generation Real-World Evidence in Late-Stage Clinical Research Network of complementary data sources, innovative technologies, scientific expertise to generate insights faster and demonstrate value to healthcare stakeholders 38 IMS Health & Quintiles Announce Real World Evidence Collaboration Largest global data and technology company exclusively committed to healthcare industry Vast data networks and information assets Leading retrospective analytics across clinical and commercial applications and services Largest global Clinical Research Organization Leading scientific partner supporting clinical trial and prospective observational study execution Standard-setting voice in observational study design and prospective study execution • Best in class solutions for comprehensive real world and late phase evidence development focused on increasing strength of evidence, providing a faster path to insight, and enhanced brand value • Complementary strength of leading scientific research and enabling information and analytics • Global scale with market relevant capabilities 39 Thank you 40 Previous & Upcoming Events Quintiles experts run regular webinars on Real-World & Late Phase services. Visit Quintiles to learn more at one of the following upcoming meetings: Topics include: OBSERVATIONAL RESEARCH & • ISPOR – EUROPEAN CONGRESS REGISTRIES • WORLD VACCINES CONGRESS • SAFETY & RISK MANAGEMENT • WORLD ORPHAN DRUG CONGRESS • HTA & MARKET ACCESS • MAXIMIZING VALUE AND QUALITY IN • DIA JAPAN PHASE IV • PARTNERSHIPS WITH CLINICAL TRIALS • • RARE DISEASE REGISTRIES • COMPARATIVE EFFECTIVENESS EUROPE EUROPE • CMSS 2015 ANNUAL MEETING RESEARCH • CLINICAL OUTCOME ASSESSMENTS To register or view previous webinars please go to http://www.quintiles.com/landing-pages/real-world-and-latephase-research-webinars 41 41