Am J Epidemiol. 2023 Nov 3;192(11):1797-1800. doi: 10.1093/aje/kwab274.
In their seminal 2002 paper, "Causal Knowledge as a Prerequisite for Confounding Evaluation: An Application to Birth Defects Epidemiology," Hernán et al. (Am J Epidemiol. 2002;155(2):176-184) emphasized the importance of using theory rather than data to guide confounding control, focusing on colliders as variables that share characteristics with confounders but whose control may actually introduce bias into analyses. In this commentary, we propose that the importance of this paper stems from the connection the authors made between nonexchangeability as the ultimate source of bias and structural representations of bias using directed acyclic graphs. This provided both a unified approach to conceptualizing bias and a means of distinguishing between different sources of bias, particularly confounding and selection bias. Drawing on examples from the paper, we also highlight unresolved questions about the relationship between collider bias, selection bias, and generalizability and argue that causal knowledge is a prerequisite not only for identifying confounders but also for developing any hypothesis about potential sources of bias.
在他们 2002 年的开创性论文《因果知识是混杂评估的前提条件:应用于出生缺陷流行病学》中,Hernán 等人(Am J Epidemiol. 2002;155(2):176-184)强调了使用理论而不是数据来指导混杂控制的重要性,重点关注作为与混杂因素具有共同特征但控制这些因素实际上可能会给分析带来偏差的变量的共变器。在这篇评论中,我们提出,这篇论文的重要性源于作者在最终导致偏差的不可交换性和使用有向无环图表示偏差之间建立的联系。这为概念化偏差提供了一种统一的方法,也为区分不同来源的偏差提供了一种手段,特别是混杂和选择偏差。我们还借鉴了该论文中的例子,强调了共变器偏差、选择偏差和可推广性之间关系的一些悬而未决的问题,并认为因果知识不仅是识别混杂因素的前提条件,也是发展关于潜在偏差来源的任何假设的前提条件。