MRC Integrative Epidemiology Unit at the University of Bristol, Bristol, UK.
Population Health Sciences, Bristol Medical School, University of Bristol, Bristol, UK.
Int J Epidemiol. 2022 Dec 13;51(6):1899-1909. doi: 10.1093/ije/dyac136.
Mendelian randomization (MR) is a powerful tool through which the causal effects of modifiable exposures on outcomes can be estimated from observational data. Most exposures vary throughout the life course, but MR is commonly applied to one measurement of an exposure (e.g. weight measured once between ages 40 and 60 years). It has been argued that MR provides biased causal effect estimates when applied to one measure of an exposure that varies over time.
We propose an approach that emphasizes the liability that causes the entire exposure trajectory. We demonstrate this approach using simulations and an applied example.
We show that rather than estimating the direct or total causal effect of changing the exposure value at a given time, MR estimates the causal effect of changing the underlying liability for the exposure, scaled to the effect of the liability on the exposure at that time. As such, results from MR conducted at different time points are expected to differ (unless the effect of the liability on exposure is constant over time), as we illustrate by estimating the effect of body mass index measured at different ages on systolic blood pressure.
Univariable MR results should not be interpreted as time-point-specific direct or total causal effects, but as the effect of changing the liability for the exposure. Estimates of how the effects of a genetic variant on an exposure vary over time, together with biological knowledge that provides evidence regarding likely effective exposure periods, are required to interpret time-point-specific causal effects.
孟德尔随机化(MR)是一种强大的工具,可以从观察性数据中估计可改变的暴露因素对结果的因果效应。大多数暴露因素在整个生命过程中都在变化,但 MR 通常应用于暴露因素的一次测量(例如,40 岁至 60 岁之间测量的一次体重)。有人认为,当应用于随时间变化的暴露因素的一次测量时,MR 会提供有偏差的因果效应估计。
我们提出了一种强调导致整个暴露轨迹的倾向的方法。我们使用模拟和应用示例演示了这种方法。
我们表明,MR 不是估计在给定时间改变暴露值的直接或总因果效应,而是估计改变暴露潜在倾向的因果效应,根据该倾向在该时间对暴露的影响进行缩放。因此,如我们通过估计不同年龄测量的体重指数对收缩压的影响来说明的那样,在不同时间点进行的 MR 结果预计会有所不同(除非倾向对暴露的影响随时间保持不变)。
单变量 MR 结果不应被解释为特定时间点的直接或总因果效应,而应被解释为改变暴露倾向的效应。需要估计遗传变异对暴露的影响随时间的变化,以及提供有关可能有效暴露期的生物学知识,以解释特定时间点的因果效应。