Stensrud Mats Julius, Valberg Morten, Røysland Kjetil, Aalen Odd O
From the aDepartment of Biostatistics, Institute of Basic Medical Sciences, University of Oslo, Oslo, Norway; and bDiakonhjemmet Hospital, Oslo, Norway.
Epidemiology. 2017 May;28(3):379-386. doi: 10.1097/EDE.0000000000000621.
Counter-intuitive associations appear frequently in epidemiology, and these results are often debated. In particular, several scenarios are characterized by a general risk factor that appears protective in particular subpopulations, for example, individuals suffering from a specific disease. However, the associations are not necessarily representing causal effects. Selection bias due to conditioning on a collider may often be involved, and causal graphs are widely used to highlight such biases. These graphs, however, are qualitative, and they do not provide information on the real life relevance of a spurious association. Quantitative estimates of such associations can be obtained from simple statistical models. In this study, we present several paradoxical associations that occur in epidemiology, and we explore these associations in a causal, frailty framework. By using frailty models, we are able to put numbers on spurious effects that often are neglected in epidemiology. We discuss several counter-intuitive findings that have been reported in real life analyses, and we present calculations that may expand the understanding of these associations. In particular, we derive novel expressions to explain the magnitude of bias in index-event studies.
反直觉的关联在流行病学中经常出现,这些结果常常引发争议。特别是,有几种情况的特征是,某个一般风险因素在特定亚人群(例如患有特定疾病的个体)中似乎具有保护作用。然而,这些关联不一定代表因果效应。由于对碰撞变量进行条件设定而导致的选择偏倚可能经常存在,因果图被广泛用于凸显此类偏倚。然而,这些图是定性的,它们并未提供关于虚假关联在现实生活中的相关性的信息。此类关联的定量估计可以从简单的统计模型中获得。在本研究中,我们展示了流行病学中出现的几种矛盾关联,并在因果脆弱性框架中探讨这些关联。通过使用脆弱性模型,我们能够为流行病学中常常被忽视的虚假效应赋予数值。我们讨论了在实际分析中报告的几个反直觉发现,并给出了可能扩展对这些关联理解的计算结果。特别是,我们推导出新的表达式来解释索引事件研究中的偏倚程度。