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Activity Number: 318 - Adaptive (and Other) Clinical Trial Designs
Type: Contributed
Date/Time: Wednesday, August 11, 2021 : 3:30 PM to 5:20 PM
Sponsor: Biopharmaceutical Section
Abstract #318508
Title: Adaptive Semiparametric Bayesian Borrowing Model in Basket Trials for Robust Inference and Decision-Making
Author(s): Rachael Liu* and Veronica Bunn and Jianchang Lin and Junjing Lin
Companies: Takeda Pharmaceuticals and Takeda Pharmaceuticals and Takeda Pharmaceuticals and Takeda Pharmaceuticals
Keywords: Basket trials; Bayesian hierarchical models; Nonparametric priors; Subgroup analysis; power; familywise type I error rate
Abstract:

In I-O and cell therapy, it is often seen to have basket trials in phase II targeting on multiple types of cancers. It is critical to have robust estimation to identify the promising cancer types to plan registration enabling trials. There are many challenges and methodological complications when large biases can be introduced due to small sample size or random variability. We review several recent methods for subgroup analysis in the Bayesian framework to correct for bias in basket trials setting. We proposed a flexible semi-parametric Bayesian borrowing model to improve the estimation. We present simulation results comparing our proposed model to various Bayesian hierarchical models for subgroup analysis in a phase II basket trial. For different scenarios considered, we compare the average total sample size, and frequentist-like operating characteristics of power and familywise type I error rate. We also compare the precision of the model estimates of the treatment effect by assessing average relative bias and the width of the 95% credible interval for the bias. Our proposed model offers improved performance across most of the scenarios and requires least assumptions.


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

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