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Causal mediation analysis on failure time outcome without sequential ignorability

机译:没有顺序可忽略性的故障时间结果因果分析

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Mediation analysis is an important topic as it helps researchers to understand why an intervention works. Most previous mediation analyses define effects in the mean scale and require a binary or continuous outcome. Recently, possible ways to define direct and indirect effects for causal mediation analysis with survival outcome were proposed. However, these methods mainly rely on the assumption of sequential ignorability, which implies no unmeasured confounding. To handle the potential confounding between the mediator and the outcome, in this article, we proposed a structural additive hazard model for mediation analysis with failure time outcome and derived estimators for controlled direct effects and controlled mediator effects. Our methods allow time-varying effects. Simulations showed that our proposed estimator is consistent in the presence of unmeasured confounding while the traditional additive hazard regression ignoring unmeasured confounding produces biased results. We applied our method to the Women's Health Initiative data to study whether the dietary intervention affects breast cancer risk through changing body weight.
机译:调解分析是一个重要的主题,因为它可以帮助研究人员了解干预为何有效。以前的大多数中介分析都以平均范围定义效果,并且需要二元或连续结果。最近,提出了定义因果关系分析和生存结果的直接和间接影响的可能方法。但是,这些方法主要依赖于顺序可忽略性的假设,这意味着没有不可估量的混淆。为了处理调解人与结果之间的潜在混淆,在本文中,我们提出了一种结构性加害模型,用于具有失败时间结果的调解分析,以及针对直接影响和受控调解人效果的派生估计量。我们的方法允许随时间变化的效果。仿真表明,我们提出的估计量在存在不可测混杂因素的情况下是一致的,而传统的加性危害回归忽略不可测混杂因素则会产生有偏差的结果。我们将方法应用于“妇女健康倡议”数据中,以研究饮食干预是否会通过改变体重而影响乳腺癌风险。

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