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具有竞争事件的失效时间设置中经典统计估计量的因果框架。

A causal framework for classical statistical estimands in failure-time settings with competing events.

机构信息

Department of Population Medicine, Harvard Medical School & Harvard Pilgrim Health Care Institute, Boston, Massachusetts.

Department of Epidemiology, Harvard T.H. Chan School of Public Health, Boston, Massachusetts.

出版信息

Stat Med. 2020 Apr 15;39(8):1199-1236. doi: 10.1002/sim.8471. Epub 2020 Jan 27.

Abstract

In failure-time settings, a competing event is any event that makes it impossible for the event of interest to occur. For example, cardiovascular disease death is a competing event for prostate cancer death because an individual cannot die of prostate cancer once he has died of cardiovascular disease. Various statistical estimands have been defined as possible targets of inference in the classical competing risks literature. Many reviews have described these statistical estimands and their estimating procedures with recommendations about their use. However, this previous work has not used a formal framework for characterizing causal effects and their identifying conditions, which makes it difficult to interpret effect estimates and assess recommendations regarding analytic choices. Here we use a counterfactual framework to explicitly define each of these classical estimands. We clarify that, depending on whether competing events are defined as censoring events, contrasts of risks can define a total effect of the treatment on the event of interest or a direct effect of the treatment on the event of interest not mediated by the competing event. In contrast, regardless of whether competing events are defined as censoring events, counterfactual hazard contrasts cannot generally be interpreted as causal effects. We illustrate how identifying assumptions for all of these counterfactual estimands can be represented in causal diagrams, in which competing events are depicted as time-varying covariates. We present an application of these ideas to data from a randomized trial designed to estimate the effect of estrogen therapy on prostate cancer mortality.

摘要

在失效时间设置中,竞争事件是指任何使感兴趣事件不可能发生的事件。例如,心血管疾病死亡是前列腺癌死亡的竞争事件,因为一旦个体死于心血管疾病,他就不可能死于前列腺癌。在经典竞争风险文献中,已经定义了各种统计估计量作为推断的可能目标。许多综述已经描述了这些统计估计量及其估计程序,并提出了关于其使用的建议。然而,以前的工作并没有使用正式的框架来描述因果效应及其识别条件,这使得很难解释效应估计值并评估关于分析选择的建议。在这里,我们使用反事实框架来明确定义这些经典的估计量。我们澄清了,取决于竞争事件是否被定义为删失事件,风险对比可以定义治疗对感兴趣事件的总效应,或者治疗对感兴趣事件的直接效应,不受竞争事件的影响。相比之下,无论竞争事件是否被定义为删失事件,反事实风险对比通常不能解释为因果效应。我们说明了如何在因果图中表示所有这些反事实估计量的识别假设,其中竞争事件被表示为时变协变量。我们将这些想法应用于一项旨在估计雌激素治疗对前列腺癌死亡率影响的随机试验的数据。

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