Flanders W Dana, Klein Mitchel, Mirabelli Maria C
Department of Epidemiology, Rollins School of Public Health, Emory University, Atlanta, GA; Department of Biostatistics and Bioinformatics, Rollins School of Public Health, Emory University, Atlanta, GA.
Department of Epidemiology, Rollins School of Public Health, Emory University, Atlanta, GA; Department of Environmental and Occupational Health, Rollins School of Public Health, Emory University, Atlanta, GA.
Ann Epidemiol. 2016 Jun;26(6):389-394.e2. doi: 10.1016/j.annepidem.2016.04.010. Epub 2016 May 3.
Causal effects in epidemiology are almost invariably studied by considering disease incidence even when prevalence data are used to estimate the causal effect. For example, if certain conditions are met, a prevalence odds ratio can provide a valid estimate of an incidence rate ratio. Our purpose and main result are conditions that assure causal effects on prevalence can be estimated in cross-sectional studies, even when the prevalence odds ratio does not estimate incidence.
Using a general causal effect definition in a multivariate counterfactual framework, we define causal contrasts that compare prevalences among survivors from a target population had all been exposed at baseline with that prevalence had all been unexposed. Although prevalence is a measure reflecting a moment in time, we consider the time sequence to study causal effects.
Effects defined using a contrast of counterfactual prevalences can be estimated in an experiment and, with conditions provided, in cross-sectional studies. Proper interpretation of the effect includes recognition that the target is the baseline population, defined at the age or time of exposure.
Prevalences are widely reported, readily available measures for assessing disabilities and disease burden. Effects on prevalence are estimable in cross-sectional studies but only if appropriate conditions hold.
在流行病学中,即使使用患病率数据来估计因果效应,因果效应几乎总是通过考虑疾病发病率来进行研究。例如,如果满足某些条件,患病率比值比可以提供发病率比值比的有效估计。我们的目的和主要结果是确定在横断面研究中能够估计对患病率的因果效应的条件,即使患病率比值比不能估计发病率。
在多变量反事实框架中使用一般因果效应定义,我们定义了因果对比,比较目标人群中所有在基线时都暴露的幸存者的患病率与所有未暴露的幸存者的患病率。尽管患病率是反映某一时刻的指标,但我们考虑时间序列来研究因果效应。
使用反事实患病率对比定义的效应可以在实验中估计,并且在满足条件时,也可以在横断面研究中估计。对效应的正确解释包括认识到目标是在暴露年龄或时间定义的基线人群。
患病率是广泛报道且易于获得的用于评估残疾和疾病负担的指标。在横断面研究中可以估计对患病率的效应,但前提是要满足适当的条件。