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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Instrumental variables estimation of exposure effects on a time-to-event endpoint using structural cumulative survival models
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Instrumental variables estimation of exposure effects on a time-to-event endpoint using structural cumulative survival models

机译:使用结构累积生存模型的仪器变量估计对时间到事件终点的曝光效应

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摘要

The use of instrumental variables for estimating the effect of an exposure on an outcome is popular in econometrics, and increasingly so in epidemiology. This increasing popularity may be attributed to the natural occurrence of instrumental variables in observational studies that incorporate elements of randomization, either by design or by nature (e.g., random inheritance of genes). Instrumental variables estimation of exposure effects is well established for continuous outcomes and to some extent for binary outcomes. It is, however, largely lacking for time-to-event outcomes because of complications due to censoring and survivorship bias. In this article, we make a novel proposal under a class of structural cumulative survival models which parameterize time-varying effects of a point exposure directly on the scale of the survival function; these models are essentially equivalent with a semi-parametric variant of the instrumental variables additive hazards model. We propose a class of recursive instrumental variable estimators for these exposure effects, and derive their large sample properties along with inferential tools. We examine the performance of the proposed method in simulation studies and illustrate it in a Mendelian randomization study to evaluate the effect of diabetes on mortality using data from the Health and Retirement Study. We further use the proposed method to investigate potential benefit from breast cancer screening on subsequent breast cancer mortality based on the HIP-study.
机译:使用仪器变量来估算暴露对结果的效果在经济学中受到普遍的流行,流行病学越来越多。这种越来越普及可能归因于观察研究中的仪器变量的自然发生,其通过设计或自然来包含随机化元素(例如,基因的随机遗传)。仪器变量估算曝光效果的估算对于连续结果以及一定程度的二元成果。然而,由于审查和生存偏差,由于并发症,这是在很大程度上缺乏活动的结果。在本文中,我们在一类结构性累积生存模型下进行了一项新的提议,该模型将点曝光的时变效应直接参数,直接曝光在生存函数的规模上;这些模型基本上等同于仪器变量添加危险模型的半参数变量。我们提出了一类用于这些曝光效果的递归仪器变量估算,并导出其大的样本性质以及推理工具。我们研究了模拟研究中提出的方法的性能,并在孟德尔随机化研究中说明了它,以评估糖尿病对来自健康和退休研究数据的死亡的影响。我们进一步利用该方法根据肝癌研究探讨乳腺癌筛查对随后的乳腺癌死亡率的潜在益处。

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