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How Bayesian approaches for CER? . Why Bayesian approaches for CER? . Donald A. Berry dberry@mdanderson.org. Outline. Bayesian Metaanalysis & CER (ICD) Adaptive Clinical Trials (I-SPY2) Modeling in CER using Multifarious Data Sources (CISNET) Comparing Outcomes—Trials and Tribulations.
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How Bayesian approaches for CER? Why Bayesian approaches for CER? Donald A. Berry dberry@mdanderson.org
Outline • Bayesian Metaanalysis & CER (ICD) • Adaptive Clinical Trials (I-SPY2) • Modeling in CER using Multifarious Data Sources (CISNET) • Comparing Outcomes—Trials and Tribulations • Bayesian Metaanalysis & CER (ICDs) • Adaptive Clinical Trials (I-SPY2) • Modeling in CER using Multifarious Data Sources (CISNET) • Comparing Outcomes—Trials and Tribulations
Bayesian Meta-Analysis for Comparative Effectiveness and Informing Coverage Decisions: Application to Implantable Cardioverter Defibrillators* *Berry SM, Ishak J, Luce B, Berry DA. Medical Care (2010). Disclosure: Berry Consultants contract with Boston Scientific via UBC
What Bayes Adds • Model sources of variation • Mortality rates over time: changing hazards • Address possible time-dependent effect of ICD • Cumulative meta-analysis, illustrate effect of each new study: When was evidence conclusive? • Predictive probabilities for future trials
Bayesian hierarchical modeling of time to death • Model 1: Proportional hazards • Model 2: Time-dependent hazard ratios (modeled separately by year) • Model 3: Hierarchical treatment effects; allow for different treatment effects in different trials
Hazard Rates & Survival: Models 1 & 2 Hazard rates Survival probabilities Control ICD Control ICD Model 1 Model 2
Predictive Probabilities over Time Predicted #3 Predicted #1 Observed RR
Some Conclusions • ICD Effective: 23% hazard reduction • Effect persistent, consistent • Effect clear early on • Possible to account for changing patient populations
Outline • Bayesian Metaanalysis & CER (ICD) • Adaptive Clinical Trials (I-SPY2) • Modeling in CER using Multifarious Data Sources (CISNET) • Comparing Outcomes—Trials and Tribulations
Current use of Bayesian adaptive designs • MDACC (> 300 trials) • Device companies (> 25 PMAs)* • Drug companies (Most of top 40)** • CER? Not yet. *http://www.fda.gov/MedicalDevicesDeviceRegulationandGuidance/GuidanceDocuments/ucm071072.htm **http://www.fda.gov/downloads/DrugsGuidanceCompliance RegulatoryInformation/Guidances/UCM201790.pdf
A Bayesian statistical design was used with a range in sample size from 600 to 1800 patients.
Bayesian adaptive trials • Stopping early (or late) • Efficacy • Futility • Dose finding (& dose dropping) • Seamless phases • Population finding • Treatment finding • Ramping up accrual
Why? • Smaller trials (usually!) • More accurate conclusions and hence better treatment for patients, at lower cost (?)
I-SPY 2 Slides from press conference … (Change “Phase 2” to CER; “experimental” to “approved”)
Outcome: Tumor shrinkage? Population of patients Standard Phase 2 Cancer Drug Trials Experimental arm RANDOMIZE Population of patients Experimental arm Outcome: Longer time disease free Standard therapy
Outcome: Tumor shrinkage? Population of patients Standard Phase 2 Cancer Drug Trials Experimental drug Consequence: 60-70% Failure of Phase 3 Trials RANDOMIZE Population of patients Experimental drug Outcome: Longer time disease free Standard + drug
ADAPTIVELY RANDOMIZE I-SPY2 TRIAL Experimental arm 1 Experimental arm 2 Outcome: Complete response at surgery Population of patients Experimental arm 3 Experimental arm 4 Experimental arm 5 Standard therapy
ADAPTIVELY RANDOMIZE I-SPY2 TRIAL Experimental arm 1 Experimental arm 2 Outcome: Complete response at surgery Population of patients Experimental arm 3 Experimental arm 4 Experimental arm 5 Standard therapy Arm 2 graduates to small focused Phase 3 trial
ADAPTIVELY RANDOMIZE I-SPY2 TRIAL Experimental arm 1 Outcome: Complete response at surgery Population of patients Experimental arm 3 Experimental arm 4 Experimental arm 5 Standard therapy Arm 3 drops for futility
ADAPTIVELY RANDOMIZE I-SPY2 TRIAL Experimental arm 1 Outcome: Complete response at surgery Population of patients Experimental arm 4 Experimental arm 5 Standard therapy Arm 5 graduates to small focused Phase 3 trial
ADAPTIVELY RANDOMIZE I-SPY2 TRIAL Experimental arm 1 Experimental arm 6 Outcome: Complete response at surgery Population of patients Experimental arm 4 Standard therapy Arm 6 is added to the mix
Outline • Bayesian Metaanalysis & CER (ICD) • Adaptive Clinical Trials (I-SPY2) • Modeling in CER using Multifarious Data Sources (CISNET) • Comparing Outcomes—Trials and Tribulations
Fig. 1, Berry JNCI 1998 Updates K G S C O E H M U
CISNET from NEJM Women 40-79 Node-positive BC
Percent reductions in BC mortality due to adjuvant Rx and screening
Accepted simulations E W M R S G D
Model M: Prior to Posterior (2 of several parameters) “the posterior mean effect of tamoxifen is 0.37, corresponding to a 37% decrease in the hazard of breast cancer mortality due to the use of 5 years of tamoxifen for ER-positive tumors in actual clinical practice.” Prior Posterior Posterior Prior
Future BC mortality HP 2010 Target Year
Keeping track of costs (and their uncertainties) is straightforward with Bayesian simulations
Outline • Bayesian Metaanalysis & CER (ICD) • Adaptive Clinical Trials (I-SPY2) • Modeling in CER using Multifarious Data Sources (CISNET) • Comparing Outcomes—Trials and Tribulations
Newsweek: “What You Don’t Know Might Kill You” “The right doctors can make all the difference when it comes to treating cancer. So why don't we know who they are?”
Survival Outcomes, by Disease Stage Us: Them:
33% longer “Will Rogers Effect” Artifact Comparing Outcomes Median survival (years) Truth is no difference 60% longer Median survival (years) Central Community 100% longer Central Comm Central Comm Local Regional Advanced Overall Stage
Using Central Staging Median survival (years) Community Central Comm Central Comm Central Local Regional Advanced Overall Stage
25 20 Using Community Staging 15 Median survival (years) Central 10 Community Community Central 5 Central Comm Central Comm Comm Central 0 Local Regional Advanced Overall Stage
Back to Newsweek “A spokesperson for M.D. Anderson Cancer Center in Houston said, ‘We do not have outcomes data at this time,’ while a physician there explained that doctors don't want to release data ‘that's difficult for people to interpret.’”
What would Bayes do? Model disease stage, build experiments to bolster weak parts of the model.
Outline • Bayesian Metaanalysis & CER (ICD) • Adaptive Clinical Trials (I-SPY2) • Modeling in CER using Multifarious Data Sources (CISNET) • Comparing Outcomes—Trials and Tribulations