解决元分析中混淆和其他偏倚的方法:综述和建议。

IF 21.4 1区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Maya B Mathur, Tyler J VanderWeele
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引用次数: 0

摘要

荟萃分析对累积科学的贡献至关重要,但如果其组成的主要研究存在偏差,例如在非随机研究中存在未测量的混淆,则可能产生误导性结论。我们为meta分析人员如何解决影响研究内部有效性的混杂和其他偏差提供了实用指导,主要关注有助于量化meta分析估计偏差程度的敏感性分析。我们回顾了一些敏感性分析方法来做到这一点,特别是最近的发展,直接实施和解释,使用一些不那么严格的统计假设比以前的方法。我们就如何在实践中应用这些新方法提出建议,并使用先前发表的荟萃分析进行说明。敏感性分析可以提供证据强度的信息性定量总结,我们建议在潜在偏倚研究的荟萃分析中常规报告敏感性分析。本建议绝不降低定义研究资格标准以减少偏倚和定性描述研究偏倚风险的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methods to Address Confounding and Other Biases in Meta-Analyses: Review and Recommendations.

Meta-analyses contribute critically to cumulative science, but they can produce misleading conclusions if their constituent primary studies are biased, for example by unmeasured confounding in nonrandomized studies. We provide practical guidance on how meta-analysts can address confounding and other biases that affect studies' internal validity, focusing primarily on sensitivity analyses that help quantify how biased the meta-analysis estimates might be. We review a number of sensitivity analysis methods to do so, especially recent developments that are straightforward to implement and interpret and that use somewhat less stringent statistical assumptions than do earlier methods. We give recommendations for how these newer methods could be applied in practice and illustrate using a previously published meta-analysis. Sensitivity analyses can provide informative quantitative summaries of evidence strength, and we suggest reporting them routinely in meta-analyses of potentially biased studies. This recommendation in no way diminishes the importance of defining study eligibility criteria that reduce bias and of characterizing studies' risks of bias qualitatively.

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来源期刊
Annual Review of Public Health
Annual Review of Public Health 医学-公共卫生、环境卫生与职业卫生
CiteScore
26.60
自引率
1.40%
发文量
36
审稿时长
>12 weeks
期刊介绍: The Annual Review of Public Health has been a trusted publication in the field since its inception in 1980. It provides comprehensive coverage of important advancements in various areas of public health, such as epidemiology, biostatistics, environmental health, occupational health, social environment and behavior, health services, as well as public health practice and policy. In an effort to make the valuable research and information more accessible, the current volume has undergone a transformation. Previously, access to the articles was restricted, but now they are available to everyone through the Annual Reviews' Subscribe to Open program. This open access approach ensures that the knowledge and insights shared in these articles can reach a wider audience. Additionally, all the published articles are licensed under a CC BY license, allowing users to freely use, distribute, and build upon the content, while giving appropriate credit to the original authors.
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