Department of Medical Statistics, London School of Hygiene and Tropical Medicine, London, United Kingdom.
Division of Population Medicine, Cardiff University, Cardiff, United Kingdom.
Am J Epidemiol. 2018 May 1;187(5):1085-1092. doi: 10.1093/aje/kwx311.
Estimation of causal effects of time-varying exposures using longitudinal data is a common problem in epidemiology. When there are time-varying confounders, which may include past outcomes, affected by prior exposure, standard regression methods can lead to bias. Methods such as inverse probability weighted estimation of marginal structural models have been developed to address this problem. However, in this paper we show how standard regression methods can be used, even in the presence of time-dependent confounding, to estimate the total effect of an exposure on a subsequent outcome by controlling appropriately for prior exposures, outcomes, and time-varying covariates. We refer to the resulting estimation approach as sequential conditional mean models (SCMMs), which can be fitted using generalized estimating equations. We outline this approach and describe how including propensity score adjustment is advantageous. We compare the causal effects being estimated using SCMMs and marginal structural models, and we compare the two approaches using simulations. SCMMs enable more precise inferences, with greater robustness against model misspecification via propensity score adjustment, and easily accommodate continuous exposures and interactions. A new test for direct effects of past exposures on a subsequent outcome is described.
使用纵向数据估计随时间变化的暴露的因果效应是流行病学中的一个常见问题。当存在随时间变化的混杂因素时,这些混杂因素可能包括过去的结果,受到先前暴露的影响,标准回归方法可能会导致偏差。已经开发了一些方法,如逆概率加权估计边际结构模型,以解决这个问题。然而,在本文中,我们展示了即使在存在时间依赖性混杂的情况下,如何使用标准回归方法,通过适当控制先前的暴露、结果和随时间变化的协变量,来估计暴露对随后结果的总效应。我们将这种估计方法称为序贯条件均值模型 (SCMM),可以使用广义估计方程进行拟合。我们概述了这种方法,并描述了包括倾向评分调整的优势。我们比较了使用 SCMM 和边际结构模型估计的因果效应,并通过模拟比较了这两种方法。SCMM 通过倾向评分调整,对模型误设具有更强的稳健性,能够进行更精确的推断,并且可以轻松处理连续暴露和交互作用。还描述了一种用于检验过去暴露对随后结果的直接效应的新方法。