Directed acyclic graphs for clinical research: a tutorial.

Sangmin Byeon, Woojoo Lee
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Abstract

Directed acyclic graphs (DAGs) are useful tools for visualizing the hypothesized causal structures in an intuitive way and selecting relevant confounders in causal inference. However, in spite of their increasing use in clinical and surgical research, the causal graphs might also be misused by a lack of understanding of the central principles. In this article, we aim to introduce the basic terminology and fundamental rules of DAGs, and DAGitty, a user-friendly program that easily displays DAGs. Specifically, we describe how to determine variables that should or should not be adjusted based on the backdoor criterion with examples. In addition, the occurrence of the various types of biases is discussed with caveats, including the problem caused by the traditional approach using p-values for confounder selection. Moreover, a detailed guide to DAGitty is provided with practical examples regarding minimally invasive surgery. Essentially, the primary benefit of DAGs is to aid researchers in clarifying the research questions and the corresponding designs based on the domain knowledge. With these strengths, we propose that the use of DAGs may contribute to rigorous research designs, and lead to transparency and reproducibility in research on minimally invasive surgery.

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临床研究的有向无环图:教程。
有向无环图(dag)是直观显示假设因果结构和在因果推理中选择相关混杂因素的有用工具。然而,尽管它们在临床和外科研究中的应用越来越多,但由于缺乏对中心原则的理解,因果图也可能被滥用。在本文中,我们旨在介绍dag的基本术语和基本规则,以及DAGitty,这是一个易于显示dag的用户友好程序。具体来说,我们用实例描述了如何根据后门准则确定应该或不应该调整的变量。此外,还讨论了各种类型偏差的发生,并提出了一些警告,包括使用p值进行混杂选择的传统方法所引起的问题。此外,还提供了关于微创手术的实际例子的详细指南。从本质上讲,dag的主要好处是帮助研究人员澄清研究问题,并根据领域知识进行相应的设计。鉴于这些优势,我们建议使用dag可能有助于严格的研究设计,并导致微创手术研究的透明度和可重复性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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