An important goal of precision medicine is to personalize medical treatment by identifying individuals who are most likely to benefit from a specific treatment. The Likely Responder (LR) framework, which identifies a subpopulation where treatment response is expected to exceed a certain clinical threshold, plays a role in this effort. However, the LR framework, and more generally, data-driven subgroup analyses, often fail to account for uncertainty in the estimation of model-based data-driven subgrouping. We propose a simple two-stage approach that integrates subgroup identification with subsequent subgroup-specific inference on treatment effects. We incorporate model estimation uncertainty from the first stage into subgroup-specific treatment effect estimation in the second stage, by utilizing Bayesian posterior distributions from the first stage. We evaluate our method through simulations, demonstrating that the proposed Bayesian two-stage model produces better calibrated confidence intervals than naïve approaches. We apply our method to an international COVID-19 treatment trial, which shows substantial variation in treatment effects across data-driven subgroups.
翻译:精准医学的一个重要目标是通过识别最有可能从特定治疗中获益的个体来实现医疗个性化。可能应答者框架旨在确定一个治疗反应预期超过特定临床阈值的亚群,在这一努力中发挥着作用。然而,LR框架,以及更广泛的数据驱动亚组分析,通常未能考虑基于模型的数据驱动亚组划分在估计中的不确定性。我们提出了一种简单的两阶段方法,将亚组识别与后续的亚组特异性治疗效果推断相结合。我们通过利用第一阶段的贝叶斯后验分布,将第一阶段模型估计的不确定性纳入第二阶段亚组特异性治疗效果的估计中。我们通过模拟评估了我们的方法,结果表明所提出的贝叶斯两阶段模型比朴素方法能产生校准更好的置信区间。我们将我们的方法应用于一项国际COVID-19治疗试验,该试验显示数据驱动亚组间的治疗效果存在显著差异。