Sivaganesan Siva, Müller Peter, Huang Bin
University of Cincinnati, Cincinnati, OH, U.S.A.
University of Texas at Austin, Austin, TX, U.S.A.
Stat Med. 2017 Jul 10;36(15):2391-2403. doi: 10.1002/sim.7276. Epub 2017 Mar 9.
We provide a Bayesian decision theoretic approach to finding subgroups that have elevated treatment effects. Our approach separates the modeling of the response variable from the task of subgroup finding and allows a flexible modeling of the response variable irrespective of potential subgroups of interest. We use Bayesian additive regression trees to model the response variable and use a utility function defined in terms of a candidate subgroup and the predicted response for that subgroup. Subgroups are identified by maximizing the expected utility where the expectation is taken with respect to the posterior predictive distribution of the response, and the maximization is carried out over an a priori specified set of candidate subgroups. Our approach allows subgroups based on both quantitative and categorical covariates. We illustrate the approach using simulated data set study and a real data set. Copyright © 2017 John Wiley & Sons, Ltd.
我们提供了一种贝叶斯决策理论方法来寻找具有更高治疗效果的亚组。我们的方法将响应变量的建模与亚组寻找任务分开,并允许对响应变量进行灵活建模,而不考虑潜在的感兴趣亚组。我们使用贝叶斯加性回归树对响应变量进行建模,并使用根据候选亚组及其预测响应定义的效用函数。通过最大化期望效用(其中期望是相对于响应的后验预测分布)来识别亚组,并且在一组先验指定的候选亚组上进行最大化。我们的方法允许基于定量和分类协变量的亚组。我们使用模拟数据集研究和真实数据集来说明该方法。版权所有© 2017约翰威立父子有限公司。