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Bayesian analysis of heterogeneous treatment effects for patient-centered outcomes research

机译:贝叶斯患者以患者为中心成果研究的异质治疗效果分析

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Evaluation of heterogeneity of treatment effect (HTE) is an essential aspect of personalized medicine and patient-centered outcomes research. Our goal in this article is to promote the use of Bayesian methods for subgroup analysis and to lower the barriers to their implementation by describing the ways in which the companion software beanz can facilitate these types of analyses. To advance this goal, we describe several key Bayesian models for investigating HTE and outline the ways in which they are well-suited to address many of the commonly cited challenges in the study of HTE. Topics highlighted include shrinkage estimation, model choice, sensitivity analysis, and posterior predictive checking. A case study is presented in which we demonstrate the use of the methods discussed.
机译:评价治疗效果的异质性(HTE)是个性化医疗和以患者为中心的结果研究的一个重要方面。我们在本文中的目标是促进使用贝叶斯方法进行子组分析,并通过描述配套软件beanz促进这些类型分析的方式,降低实现这些方法的障碍。为了推进这一目标,我们描述了几个用于研究HTE的关键贝叶斯模型,并概述了它们非常适合解决HTE研究中许多常见挑战的方法。重点介绍的主题包括收缩率估计、模型选择、敏感性分析和后验预测检查。通过一个案例研究,我们展示了所讨论方法的使用。

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