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当治疗效果取决于生物标志物时的最优贝叶斯适应性试验。

Optimal Bayesian adaptive trials when treatment efficacy depends on biomarkers.

作者信息

Zhang Yifan, Trippa Lorenzo, Parmigiani Giovanni

机构信息

Department of Biostatistics, Harvard School of Public Health, Boston, Massachusetts, U.S.A.

Department of Biostatistics and Computational Biology, Dana-Farber Cancer Institute, Boston, Massachusetts, U.S.A.

出版信息

Biometrics. 2016 Jun;72(2):414-21. doi: 10.1111/biom.12437. Epub 2015 Nov 17.

Abstract

Clinical biomarkers play an important role in precision medicine and are now extensively used in clinical trials, particularly in cancer. A response adaptive trial design enables researchers to use treatment results about earlier patients to aid in treatment decisions of later patients. Optimal adaptive trial designs have been developed without consideration of biomarkers. In this article, we describe the mathematical steps for computing optimal biomarker-integrated adaptive trial designs. These designs maximize the expected trial utility given any pre-specified utility function, though we focus here on maximizing patient responses within a given patient horizon. We describe the performance of the optimal design in different scenarios. We compare it to Bayesian Adaptive Randomization (BAR), which is emerging as a practical approach to develop adaptive trials. The difference in expected utility between BAR and optimal designs is smallest when the biomarker subgroups are highly imbalanced. We also compare BAR, a frequentist play-the-winner rule with integrated biomarkers and a marker-stratified balanced randomization design (BR). We show that, in contrasting two treatments, BR achieves a nearly optimal expected utility when the patient horizon is relatively large. Our work provides novel theoretical solution, as well as an absolute benchmark for the evaluation of trial designs in personalized medicine.

摘要

临床生物标志物在精准医学中发挥着重要作用,目前广泛应用于临床试验,尤其是癌症临床试验。响应自适应试验设计使研究人员能够利用早期患者的治疗结果来辅助后期患者的治疗决策。最优自适应试验设计在未考虑生物标志物的情况下已得到发展。在本文中,我们描述了计算最优生物标志物整合自适应试验设计的数学步骤。这些设计在给定任何预先指定的效用函数的情况下,能使预期试验效用最大化,不过我们在此重点关注在给定患者期限内最大化患者反应。我们描述了最优设计在不同场景下的性能。我们将其与贝叶斯自适应随机化(BAR)进行比较,BAR正逐渐成为开发自适应试验的一种实用方法。当生物标志物亚组高度不均衡时,BAR与最优设计之间的预期效用差异最小。我们还比较了BAR、一种带有整合生物标志物的频率学派胜者优先规则以及一种标志物分层平衡随机化设计(BR)。我们表明,在比较两种治疗方法时,当患者期限相对较长时,BR能实现近乎最优的预期效用。我们的工作提供了新颖的理论解决方案以及个性化医学中试验设计评估的绝对基准。

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