篮子试验中的贝叶斯中期分析

Cheng Huang, Chenghao Chu, Yimeng Lu, Bingming Yi, Ming-Hui Chen
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引用次数: 0

摘要

近年来,随着卫生技术的进步,在基因组水平上对患者进行分类成为可能,篮子试验在肿瘤学研究中引起了很大的关注。贝叶斯方法在篮子试验中特别普遍,因为层次结构适应篮子试验以允许信息借鉴。在本文中,我们将贝叶斯方法扩展到具有连续终点的治疗和控制臂的篮子试验中,这通常是罕见病临床试验中的情况。为了解释协变量的不平衡,这些协变量是潜在的强预测因子,但在随机试验中没有分层,我们的模型对这些协变量进行了调整,并允许不同篮子的系数不同。此外,对四种贝叶斯方法的两阶段设计和一阶段设计进行了比较。进行了广泛的模拟研究,以检查所考虑的所有模型的经验性能。通过实际数据分析,进一步证明了贝叶斯方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Interim Analysis in Basket Trials
Basket trials have captured much attention in oncology research in recent years, as advances in health technology have opened up the possibility of classification of patients at the genomic level. Bayesian methods are particularly prevalent in basket trials as the hierarchical structure is adapted to basket trials to allow for information borrowing. In this article, we extend the Bayesian methods to basket trials with treatment and control arms for continuous endpoints, which are often the cases in clinical trials for rare diseases. To account for the imbalance in the covariates which are potentially strong predictors but not stratified in a randomized trial, our models make adjustments for these covariates, and allow different coefficients across baskets. In addition, comparisons are drawn between two-stage design and one-stage design for the four Bayesian methods. Extensive simulation studies are conducted to examine the empirical performance of all models under consideration. A real data analysis is carried out to further demonstrate the usefulness of the Bayesian methods.
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