医学研究中的关联可能会误导:临床医生的因果推理指南

IF 1.8 3区 医学 Q2 SURGERY
Georgios Karamitros MD, MS, Michael P. Grant MD, PhD, Gregory A. Lamaris MD, PhD
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引用次数: 0

摘要

了解相关性和因果关系之间的区别在医学研究中是必不可少的,然而这种区别仍然是临床医生和研究人员之间混淆的常见来源。虽然相关性表明两个变量是相关的,但这并不一定意味着一个变量的变化会直接导致另一个变量的变化——这种误解会导致被误导的临床决策和有缺陷的公共卫生政策。因果推理为估计真正的因果关系提供了一个强大的统计框架,即使在缺乏随机对照试验的情况下,也经常受到伦理、财务和后勤限制的限制。本文作为因果推理方法的入门指南,为临床医生和医学研究人员区分相关性和因果关系提供了清晰实用的路线图。它探讨了两个关键框架:潜在结果模型,它依赖于反事实推理,以及结构因果模型,它使用有向无环图来可视化和分析因果关系。因果估计的实用方法,包括回归分析,工具变量,倾向得分匹配,和逆概率加权,详细讨论,重点放在他们的假设,优势和局限性。本文还解决了诸如无法测量的混淆、反向因果关系和模型错误说明等常见挑战,并提供了减轻偏差和提高因果估计有效性的策略。为选择适当的因果推理方法提供了一个结构化的框架,以指导研究人员在临床和外科研究中有效地应用这些技术。通过为临床医生提供循证决策的工具,本文旨在加强医学研究的科学基础,改善患者的预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Associations in Medical Research Can Be Misleading: A Clinician's Guide to Causal Inference
Understanding the difference between correlation and causation is essential in medical research, yet this distinction remains a common source of confusion among clinicians and researchers. While correlation indicates that two variables are related, it does not necessarily mean that changes in one variable directly cause changes in the other—a misunderstanding that can lead to misguided clinical decisions and flawed public health policies. Causal inference provides a powerful statistical framework for estimating true causal relationships, even in the absence of randomized controlled trials, which are often constrained by ethical, financial, and logistical limitations. This paper serves as an introductory guide to the methodologies of causal inference, offering clinicians and medical researchers a clear and practical roadmap for distinguishing correlation from causation. It explores two key frameworks: the potential outcomes model, which relies on counterfactual reasoning, and the structural causal model, which uses directed acyclic graphs to visualize and analyze causal relationships. Practical methods for causal estimation—including regression analysis, instrumental variables, propensity score matching, and inverse probability weighting—are discussed in detail, with a focus on their assumptions, strengths, and limitations. The paper also addresses common challenges such as unmeasured confounding, reverse causality, and model misspecification, offering strategies to mitigate bias and enhance the validity of causal estimates. A structured framework for selecting appropriate causal inference methods is provided to guide researchers in applying these techniques effectively in clinical and surgical research. By equipping clinicians with the tools to make evidence-based decisions, this paper aims to strengthen the scientific foundation of medical research and improve patient outcomes.
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来源期刊
CiteScore
3.90
自引率
4.50%
发文量
627
审稿时长
138 days
期刊介绍: The Journal of Surgical Research: Clinical and Laboratory Investigation publishes original articles concerned with clinical and laboratory investigations relevant to surgical practice and teaching. The journal emphasizes reports of clinical investigations or fundamental research bearing directly on surgical management that will be of general interest to a broad range of surgeons and surgical researchers. The articles presented need not have been the products of surgeons or of surgical laboratories. The Journal of Surgical Research also features review articles and special articles relating to educational, research, or social issues of interest to the academic surgical community.
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