调解
因果推理
结果(博弈论)
逻辑回归
计量经济学
Probit模型
罗伊特
推论
统计
计算机科学
数学
人工智能
政治学
数理经济学
法学
作者
Sheila M. Gaynor,Joel Schwartz,Xihong Lin
摘要
Mediation analysis provides an attractive causal inference framework to decompose the total effect of an exposure on an outcome into natural direct effects and natural indirect effects acting through a mediator. For binary outcomes, mediation analysis methods have been developed using logistic regression when the binary outcome is rare. These methods will not hold in practice when a disease is common. In this paper, we develop mediation analysis methods that relax the rare disease assumption when using logistic regression. We calculate the natural direct and indirect effects for common diseases by exploiting the relationship between logit and probit models. Specifically, we derive closed‐form expressions for the natural direct and indirect effects on the odds ratio scale. Mediation models for both continuous and binary mediators are considered. We demonstrate through simulation that the proposed method performs well for common binary outcomes. We apply the proposed methods to analyze the Normative Aging Study to identify DNA methylation sites that are mediators of smoking behavior on the outcome of obstructed airway function.
科研通智能强力驱动
Strongly Powered by AbleSci AI