German Diabetes Center (DDZ), Leibniz Center for Diabetes Research at the Heinrich-Heine University Düsseldorf, Institute for Biometrics and Epidemiology; German Center for Diabetes Research, Partner Düsseldorf, München-Neuherberg, Germany; Centre for Health and Society, Medical Faculty and University Hospital of Düsseldorf, Heinrich-Heine University Düsseldorf, Düsseldorf.
Dtsch Arztebl Int. 2023 Oct 13;120(41):681-687. doi: 10.3238/arztebl.m2023.0175.
Mediation analysis addresses the question of the mechanisms by which an exposure causes an outcome. This article is intended to convey basic knowledge of statistical mediation analysis.
Selected articles and examples are used to explain the principle of mediation analysis.
The goal of mediation analysis is to express an overall exposure effect as a combination of an indirect and a direct effect. For example, it might be of interest whether the increased risk of diabetes (outcome) due to obesity (exposure) is mediated by insulin resistance (indirect effect), and, if so, how much of a direct effect remains. In this example, insulin resistance is a potential mediator of the effect of obesity on the risk of diabetes. In general, for a mediation analysis to be valid, more confounders must be taken into account than in the estimation of the overall effect size. A regression-based approach can be used to ensure the consideration of all relevant confounders in a mediation analysis.
By decomposing the overall exposure effect into indirect and direct components, a mediation analysis can reveal not just whether an exposure causes an outcome, but also how. For a mediation analysis to be valid, however, multiple assumptions must be satisfied that cannot easily be checked, potentially compromising such analyses as compared to the estimation of an overall effect.
中介分析旨在探讨暴露导致结局的机制。本文旨在介绍统计中介分析的基本原理。
本文选用了部分文章和示例来解释中介分析的原理。
中介分析的目标是将总体暴露效应表达为直接效应和间接效应的组合。例如,人们可能会关注肥胖(暴露)导致糖尿病(结局)的风险增加是通过胰岛素抵抗(间接效应)介导的,以及如果是这样,直接效应还剩下多少。在这个例子中,胰岛素抵抗是肥胖对糖尿病风险影响的一个潜在中介因素。一般来说,为了使中介分析有效,需要考虑比估计总体效应大小更多的混杂因素。基于回归的方法可用于确保在中介分析中考虑所有相关的混杂因素。
通过将总体暴露效应分解为间接和直接成分,中介分析不仅可以揭示暴露是否导致结局,还可以揭示其作用机制。然而,为了使中介分析有效,必须满足多个难以轻易检查的假设,这可能会使此类分析不如估计总体效应可靠。