健康研究中的证据三角测量

IF 7.7 1区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Sirena Gutierrez, M. Maria Glymour, George Davey Smith
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引用次数: 0

摘要

对于影响临床和公共卫生结果的许多重要问题,没有一项研究能够提供决定性的答案。完美的研究——一个大规模的、多样化的、管理良好的试验,随机选择一种治疗的所有相关版本,并全面跟踪所有相关的健康结果——从来都是不可行的。相反,我们必须从多个不完善的研究中拼凑证据,得出结论。一个将不同的、互补的证据来源结合起来的系统框架正在出现。我们介绍了这个框架,称为证据三角测量;总结基于描述由于混杂、测量和选择而可能产生的偏差的关键方法;并对一些证据合成方法进行了综述。我们用估计酒精使用对痴呆的影响的例子来说明这些问题。证据三角法的核心原则是确定任何给定研究方法(以及应用该方法的每个特定研究)的最重要的弱点,并在必要时确定需要哪些不具有这些弱点的新证据来源。几乎可以肯定的是,新的研究将有弱点,但当基于不同假设的研究结果一致时,偏见应该是无关的,结论是有坚实得多的基础的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evidence triangulation in health research

For many important questions about influences on clinical and public health outcomes, no single study can provide a decisive answer. The perfect study—a large, diverse, well-conducted trial randomizing all relevant versions of a treatment and comprehensively tracking all relevant health outcomes—is never feasible. Instead, we must draw conclusions by piecing together evidence from multiple imperfect studies. A systematic framework for combining disparate, complementary sources of evidence is emerging. We introduce this framework, called evidence triangulation; summarize key approaches based on delineating likely biases due to confounding, measurement, and selection; and review some methods for combining evidence. We illustrate the issues using the example of estimating the effects of alcohol use on dementia. The central tenet of evidence triangulation is to identify the most important weaknesses for any given study approach (and for each specific study applying that approach) and, if necessary, to identify which new sources of evidence that do not share these weaknesses are required. Almost certainly, the new studies will have weaknesses, but when results are consistent across studies that rest on different assumptions, and for which biases should be unrelated, the conclusions are on much sturdier ground.

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来源期刊
European Journal of Epidemiology
European Journal of Epidemiology 医学-公共卫生、环境卫生与职业卫生
CiteScore
21.40
自引率
1.50%
发文量
109
审稿时长
6-12 weeks
期刊介绍: The European Journal of Epidemiology, established in 1985, is a peer-reviewed publication that provides a platform for discussions on epidemiology in its broadest sense. It covers various aspects of epidemiologic research and statistical methods. The journal facilitates communication between researchers, educators, and practitioners in epidemiology, including those in clinical and community medicine. Contributions from diverse fields such as public health, preventive medicine, clinical medicine, health economics, and computational biology and data science, in relation to health and disease, are encouraged. While accepting submissions from all over the world, the journal particularly emphasizes European topics relevant to epidemiology. The published articles consist of empirical research findings, developments in methodology, and opinion pieces.
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