Ciocănea-Teodorescu Iuliana, Gabriel Erin E, Sjölander Arvid
Victor Babeş National Institute of Pathology, Splaiul Independenţei 99-101, Bucharest 050096, Romania.
Carol Davila University of Medicine and Pharmacy, Bulevardul Eroii Sanitari 8, Bucharest 050474, Romania.
Biostatistics. 2024 Dec 31;26(1). doi: 10.1093/biostatistics/kxaf011.
For a comprehensive understanding of the effect of a given treatment on an outcome of interest, quantification of individual treatment heterogeneity is essential, alongside estimation of the average causal effect. However, even in randomized controlled trials, quantities such as the probability of benefit or the probability of harm are not identifiable, since multiple potential outcomes cannot be observed simultaneously for the same individual. We propose a sensitivity analysis for the probability of benefit in randomized controlled trial settings with a binary treatment and a binary outcome, by quantifying the deviation from conditional independence of the two potential outcomes, given a set of measured prognostic baseline covariates. We do this using a marginal sensitivity analysis parameter that does not depend on the number or complexity of the measured covariates. We provide a guide to estimation and interpretation, and illustrate our method in simulations, as well as using a real data example from a randomized controlled trial studying the effect of umbilical vein oxytocin administration on the need for manual removal of the placenta during birth.
为全面理解给定治疗对感兴趣结局的影响,除了估计平均因果效应外,量化个体治疗异质性至关重要。然而,即使在随机对照试验中,诸如获益概率或伤害概率等数量也是无法确定的,因为对于同一个体无法同时观察到多个潜在结局。我们针对具有二元治疗和二元结局的随机对照试验设置中的获益概率提出了一种敏感性分析方法,通过量化在给定一组测量的预后基线协变量的情况下,两个潜在结局偏离条件独立性的程度来实现。我们使用一个不依赖于测量协变量的数量或复杂性的边际敏感性分析参数来做到这一点。我们提供了估计和解释指南,并在模拟中以及使用一项研究脐静脉注射催产素对分娩时手动剥离胎盘需求影响的随机对照试验的真实数据示例来说明我们的方法。