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G-Computation Demonstration in Causal Mediation Analysis

机译:因果中介分析中的G计算演示

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摘要

Recent work has considerably advanced the definition, identification and estimation of controlled direct, and natural direct and indirect effects in causal mediation analysis. Despite the various estimation methods and statistical routines being developed, a unified approach for effect estimation under different effect decomposition scenarios is still needed for epidemiologic research. G-computation offers such unification and has been used for total effect and joint controlled direct effect estimation settings, involving different types of exposure and outcome variables. In this study, we demonstrate the utility of parametric g-computation in estimating various components of the total effect, including (i) natural direct and indirect effects, (ii) standard and stochastic controlled direct effects, and (iii) reference and mediated interaction effects, using Monte Carlo simulations in standard statistical software. For each study subject, we estimated their nested potential outcomes corresponding to the (mediated) effects of an intervention on the exposure wherein the mediator was allowed to attain the value it would have under a possible counterfactual exposure intervention, under a pre-specified distribution of the mediator independent of any causes, or under a fixed controlled value. A final regression of the potential outcome on the exposure intervention variable was used to compute point estimates and bootstrap was used to obtain confidence intervals. Through contrasting different potential outcomes, this analytical framework provides an intuitive way of estimating effects under the recently introduced 3- and 4- way effect decomposition. This framework can be extended to complex multivariable and longitudinal mediation settings.
机译:最近的工作大大促进了因果中介分析中受控直接,自然直接和间接影响的定义,识别和估计。尽管正在开发各种估计方法和统计程序,但流行病学研究仍需要采用统一的方法来评估不同影响分解场景下的影响。 G计算提供了这种统一性,并已用于总效果和联合控制的直接效果估计设置,涉及不同类型的暴露和结果变量。在这项研究中,我们证明了参数g运算在估算总效应的各个组成部分中的效用,包括(i)自然直接和间接效应,(ii)标准和随机控制的直接效应,以及(iii)参考和介导的相互作用使用标准统计软件中的蒙特卡洛模拟效果。对于每个研究对象,我们估计了它们对应于干预对暴露的(介导)影响的嵌套潜在结果,其中在预先指定的分布范围内,允许调解员获得可能的反事实暴露干预下的价值。调解员与任何原因无关,或处于固定的受控值之下。对暴露干预变量的潜在结果进行最终回归以计算点估计,并使用自举获得置信区间。通过对比不同的潜在结果,此分析框架提供了一种在最近引入的三向和四向效果分解下估算效果的直观方法。该框架可以扩展到复杂的多变量和纵向中介设置。

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