Department of Epidemiology, Harvard School of Public Health, Boston, MA 02115, USA.
Am J Epidemiol. 2010 Feb 15;171(4):506-14. doi: 10.1093/aje/kwp396. Epub 2010 Jan 11.
Sufficient cause interactions concern cases in which there is a particular causal mechanism for some outcome that requires the presence of 2 or more specific causes to operate. Empirical conditions have been derived to test for sufficient cause interactions. However, when regression outcome models are used to control for confounding variables in tests for sufficient cause interactions, the outcome models impose restrictions on the relation between the confounding variables and certain unidentified background causes within the sufficient cause framework; often, these assumptions are implausible. By using marginal structural models, rather than outcome regression models, to test for sufficient cause interactions, modeling assumptions are instead made on the relation between the causes of interest and the confounding variables; these assumptions will often be more plausible. The use of marginal structural models also allows for testing for sufficient cause interactions in the presence of time-dependent confounding. Such time-dependent confounding may arise in cases in which one factor of interest affects both the second factor of interest and the outcome. It is furthermore shown that marginal structural models can be used not only to test for sufficient cause interactions but also to give lower bounds on the prevalence of such sufficient cause interactions.
充分原因相互作用涉及某些结果的特定因果机制,需要存在 2 个或更多特定原因才能起作用的情况。已经得出了经验条件来检验充分原因的相互作用。然而,当回归结果模型用于检验充分原因相互作用中的混杂变量时,结果模型对混杂变量与充分原因框架内某些未识别的背景原因之间的关系施加了限制;通常,这些假设是不可信的。通过使用边缘结构模型而不是结果回归模型来检验充分原因的相互作用,而是对感兴趣的原因与混杂变量之间的关系做出建模假设;这些假设通常更合理。使用边缘结构模型还允许在存在时变混杂的情况下检验充分原因的相互作用。这种时变混杂可能出现在一个感兴趣的因素同时影响第二个感兴趣的因素和结果的情况下。此外,还表明边缘结构模型不仅可用于检验充分原因的相互作用,而且还可以给出这种充分原因相互作用的流行率的下限。