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随机篮子试验中信息借用的贝叶斯建模策略

Bayesian Modelling Strategies for Borrowing of Information in Randomised Basket Trials

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2022
被引 21 · 同刊同年前 4%
ABS 3

中文导读

本文扩展了篮子试验中信息借用的贝叶斯模型,提出两种策略:借用治疗效果和借用组别响应,模拟显示小样本时后者更优,大样本或异质性强时前者更优。

Abstract

Basket trials are an innovative precision medicine clinical trial design evaluating a single targeted therapy across multiple diseases that share a common characteristic. To date, most basket trials have been conducted in early-phase oncology settings, for which several Bayesian methods permitting information sharing across subtrials have been proposed. With the increasing interest of implementing randomised basket trials, information borrowing could be exploited in two ways; considering the commensurability of either the treatment effects or the outcomes specific to each of the treatment groups between the subtrials. In this article, we extend a previous analysis model based on distributional discrepancy for borrowing over the subtrial treatment effects ('treatment effect borrowing', TEB) to borrowing over the subtrial groupwise responses ('treatment response borrowing', TRB). Simulation results demonstrate that both modelling strategies provide substantial gains over an approach with no borrowing. TRB outperforms TEB especially when subtrial sample sizes are small on all operational characteristics, while the latter has considerable gains in performance over TRB when subtrial sample sizes are large, or the treatment effects and groupwise mean responses are noticeably heterogeneous across subtrials. Further, we notice that TRB, and TEB can potentially lead to different conclusions in the analysis of real data.

贝叶斯统计临床试验设计精准医学计量经济学