Kezios Katrina, Hayes-Larson Eleanor
Department of Epidemiology, Mailman School of Public Health, Columbia University, New York, NY, United States.
Department of Epidemiology, Fielding School of Public Health, University of California, Los Angeles, CA, United States.
Front Epidemiol. 2023;3. doi: 10.3389/fepid.2023.1282809. Epub 2023 Nov 10.
Simulation studies are a powerful and important tool in epidemiologic teaching, especially for understanding causal inference. Simulations using the sufficient component cause framework can provide students key insights about causal mechanisms and sources of bias, but are not commonly used. To make them more accessible, we aim to provide an introduction and tutorial on developing and using these simulations, including an overview of translation from directed acyclic graphs and potential outcomes to sufficient component causal models, and a summary of the simulation approach. Using the applied question of the impact of educational attainment on dementia, we offer simple simulation examples and accompanying code to illustrate sufficient component cause-based simulations for four common causal structures (causation, confounding, selection bias, and effect modification) often introduced early in epidemiologic training. We show how sufficient component cause-based simulations illuminate both the causal processes and the mechanisms through which bias occurs, which can help enhance student understanding of these causal structures and the distinctions between them. We conclude with a discussion of considerations for using sufficient component cause-based simulations as a teaching tool.
模拟研究是流行病学教学中一种强大且重要的工具,尤其有助于理解因果推断。使用充分病因组件框架进行的模拟可为学生提供有关因果机制和偏差来源的关键见解,但目前并不常用。为了使这些模拟更易于理解,我们旨在提供关于开发和使用这些模拟的介绍与教程,包括从有向无环图和潜在结果到充分病因组件因果模型的转换概述,以及模拟方法总结。通过教育程度对痴呆症影响这一应用问题,我们提供简单的模拟示例及配套代码,以说明在流行病学培训早期常介绍的四种常见因果结构(因果关系、混杂、选择偏倚和效应修正)的基于充分病因组件的模拟。我们展示了基于充分病因组件的模拟如何阐明因果过程以及偏差产生的机制,这有助于增强学生对这些因果结构及其差异的理解。最后,我们讨论了将基于充分病因组件的模拟用作教学工具时的注意事项。