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Activity Number: 440 - Let’s Make Everyone and Everything Count! Benefit-Risk Assessment Challenges, Lessons and Impacts in the Age of Big Data from Clinical Trials to Real-World Evidence
Type: Topic Contributed
Date/Time: Thursday, August 6, 2020 : 10:00 AM to 11:50 AM
Sponsor: Biopharmaceutical Section
Abstract #312669
Title: Bayesian Bivariate Subgroup Analysis for Risk–benefit Evaluation
Author(s): Nicholas C. Henderson*
Companies: University of Michigan-Ann Arbor
Keywords: Heterogeneity of treatment effect; Patient-centered outcomes research; Personalized medicine ; Benefits and harms trade-off; joint modeling
Abstract:

Subgroup analysis is a frequently used tool for evaluating heterogeneity of treatment effect and heterogeneity in treatment harm across observed baseline patient characteristics. While treatment efficacy and adverse event measures are often reported separately for each subgroup, analyzing their within-subgroup joint distribution is critical for better informed patient decision-making. In this paper, we describe Bayesian models for performing a subgroup analysis to compare the joint occurrence of a primary endpoint and an adverse event between two treatment arms. Our approach emphasizes estimation of heterogeneity in this joint distribution across subgroups, and our approach directly accommodates subgroups with small numbers of observed primary and adverse event combinations. In addition, we describe several ways in which our models may be used to generate interpretable summary measures of benefit-risk tradeoffs for each subgroup. The methods described here are illustrated throughout using a large cardiovascular trial investigating the efficacy of an intervention for reducing systolic blood pressure to a lower-than-usual target.


Authors who are presenting talks have a * after their name.

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