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迭代条件期望 g-计算的经验三明治方差估计器。

Empirical Sandwich Variance Estimator for Iterated Conditional Expectation g-Computation.

机构信息

Institute of Global Health and Infectious Diseases, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, USA.

Department of Epidemiology, Gillings School of Global Public Health, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, USA.

出版信息

Stat Med. 2024 Dec 20;43(29):5562-5572. doi: 10.1002/sim.10255. Epub 2024 Nov 3.

Abstract

Iterated conditional expectation (ICE) g-computation is an estimation approach for addressing time-varying confounding for both longitudinal and time-to-event data. Unlike other g-computation implementations, ICE avoids the need to specify models for each time-varying covariate. For variance estimation, previous work has suggested the bootstrap. However, bootstrapping can be computationally intense. Here, we present ICE g-computation as a set of stacked estimating equations. Therefore, the variance for the ICE g-computation estimator can be consistently estimated using the empirical sandwich variance estimator. Performance of the variance estimator was evaluated empirically with a simulation study. The proposed approach is also demonstrated with an illustrative example on the effect of cigarette smoking on the prevalence of hypertension. In the simulation study, the empirical sandwich variance estimator appropriately estimated the variance. When comparing runtimes between the sandwich variance estimator and the bootstrap for the applied example, the sandwich estimator was substantially faster, even when bootstraps were run in parallel. The empirical sandwich variance estimator is a viable option for variance estimation with ICE g-computation.

摘要

迭代条件期望 (ICE) g 计算是一种针对纵向和事件时间数据中时变混杂的估计方法。与其他 g 计算实现不同,ICE 避免了为每个时变协变量指定模型的需要。对于方差估计,先前的工作建议使用自举法。然而,自举法可能计算量很大。在这里,我们将 ICE g 计算表示为一组堆叠的估计方程。因此,可以使用经验 sandwich 方差估计器一致地估计 ICE g 计算估计器的方差。通过模拟研究对方差估计器的性能进行了实证评估。还通过一个关于吸烟对高血压患病率影响的实例来说明该方法。在模拟研究中,经验 sandwich 方差估计器适当地估计了方差。当在应用示例中比较 sandwich 方差估计器和自举法的运行时间时,sandwich 估计器的速度要快得多,即使自举法并行运行。经验 sandwich 方差估计器是 ICE g 计算的方差估计的一个可行选择。

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