Xinyuan Chen, Michael O Harhay, Guangyu Tong, Fan Li
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引用次数: 0
Abstract
Assessing heterogeneity in the effects of treatments has become increasingly popular in the field of causal inference and carries important implications for clinical decision-making. While extensive literature exists for studying treatment effect heterogeneity when outcomes are fully observed, there has been limited development in tools for estimating heterogeneous causal effects when patient-centered outcomes are truncated by a terminal event, such as death. Due to mortality occurring during study follow-up, the outcomes of interest are unobservable, undefined, or not fully observed for many participants in which case principal stratification is an appealing framework to draw valid causal conclusions. Motivated by the Acute Respiratory Distress Syndrome Network (ARDSNetwork) ARDS respiratory management (ARMA) trial, we developed a flexible Bayesian machine learning approach to estimate the average causal effect and heterogeneous causal effects among the always-survivors stratum when clinical outcomes are subject to truncation. We adopted Bayesian additive regression trees (BART) to flexibly specify separate mean models for the potential outcomes and latent stratum membership. In the analysis of the ARMA trial, we found that the low tidal volume treatment had an overall benefit for participants sustaining acute lung injuries on the outcome of time to returning home but substantial heterogeneity in treatment effects among the always-survivors, driven most strongly by biologic sex and the alveolar-arterial oxygen gradient at baseline (a physiologic measure of lung function and degree of hypoxemia). These findings illustrate how the proposed methodology could guide the prognostic enrichment of future trials in the field.
评估治疗效果的异质性在因果推理领域越来越流行,对临床决策具有重要意义。虽然已有大量文献用于研究完全观察结果时治疗效果的异质性,但当以患者为中心的结果被死亡等终末事件截断时,用于估计异质性因果效应的工具的发展还很有限。由于死亡发生在研究随访期间,许多参与者的相关结果是不可观察、未定义或未完全观察到的,在这种情况下,主分层是得出有效因果结论的一个有吸引力的框架。受急性呼吸窘迫综合征网络(ARDSNetwork)ARDS 呼吸管理(ARMA)试验的启发,我们开发了一种灵活的贝叶斯机器学习方法,用于估算当临床结果受到截断影响时,始终存活者层中的平均因果效应和异质性因果效应。我们采用贝叶斯加性回归树(BART),灵活地为潜在结果和潜在分层成员指定单独的均值模型。在对 ARMA 试验的分析中,我们发现低潮气量治疗对急性肺损伤参与者的总体获益在于重返家园的时间,但在始终存活者中,治疗效果存在很大的异质性,这主要受生物性别和基线肺泡-动脉血氧梯度(肺功能和低氧血症程度的生理学测量指标)的影响。这些发现说明了所提出的方法可如何指导该领域未来试验的预后丰富化。
期刊介绍:
Statistical research spans an enormous range from direct subject-matter collaborations to pure mathematical theory. The Annals of Applied Statistics, the newest journal from the IMS, is aimed at papers in the applied half of this range. Published quarterly in both print and electronic form, our goal is to provide a timely and unified forum for all areas of applied statistics.