论文标题

估计连续时间可分离的直接和间接效应

Estimation of separable direct and indirect effects in continuous time

论文作者

Martinussen, Torben, Stensrud, Mats Julius

论文摘要

许多研究问题涉及事件时间的结果,由于竞争性事件,可以防止发生这种情况。在这些环境中,我们必须谨慎对待经典统计估计的因果解释。特别是,从根本上很难通过因果解释危险量表的估计,例如特定原因或分布危害的比率。风险量表的估计值(例如累积发生率功能的对比度)确实具有因果解释,但它们仅捕获治疗对感兴趣的总体影响;也就是说,通过竞争活动的效果和外部。为了解散因果关系对感兴趣和竞争事件的事件的影响,最近引入了可分离的直接和间接效应。在这里,我们为估计连续时间的直接和间接分离效应的估计提供了新的结果。特别是,我们在连续的时间中得出了非参数影响函数,并使用它来构建具有一定鲁棒性能的估计器。我们还提出了一个基于两种特定危险函数的半参数模型的简单估计器。我们描述了这些估计值的渐近性质,并提出了模拟研究的结果,表明估计量在有限样本中表现令人满意。最后,我们重新分析了Stensrud等人(2020)的前列腺癌试验。

Many research questions involve time-to-event outcomes that can be prevented from occurring due to competing events. In these settings, we must be careful about the causal interpretation of classical statistical estimands. In particular, estimands on the hazard scale, such as ratios of cause specific or subdistribution hazards, are fundamentally hard to be interpret causally. Estimands on the risk scale, such as contrasts of cumulative incidence functions, do have a causal interpretation, but they only capture the total effect of the treatment on the event of interest; that is, effects both through and outside of the competing event. To disentangle causal treatment effects on the event of interest and competing events, the separable direct and indirect effects were recently introduced. Here we provide new results on the estimation of direct and indirect separable effects in continuous time. In particular, we derive the nonparametric influence function in continuous time and use it to construct an estimator that has certain robustness properties. We also propose a simple estimator based on semiparametric models for the two cause specific hazard functions. We describe the asymptotic properties of these estimators, and present results from simulation studies, suggesting that the estimators behave satisfactorily in finite samples. Finally, we re-analyze the prostate cancer trial from Stensrud et al (2020).

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