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阴性对照:概念与注意事项。

Negative controls: Concepts and caveats.

机构信息

Julius Center for Health Sciences and Primary Care, Utrecht University Medical Center, Utrecht, The Netherlands.

Department of Clinical Epidemiology, Leiden University Medical Center, Leiden, The Netherlands.

出版信息

Stat Methods Med Res. 2023 Aug;32(8):1576-1587. doi: 10.1177/09622802231181230. Epub 2023 Jun 20.

Abstract

Unmeasured confounding is a well-known obstacle in causal inference. In recent years, negative controls have received increasing attention as a important tool to address concerns about the problem. The literature on the topic has expanded rapidly and several authors have advocated the more routine use of negative controls in epidemiological practice. In this article, we review concepts and methodologies based on negative controls for detection and correction of unmeasured confounding bias. We argue that negative controls may lack both specificity and sensitivity to detect unmeasured confounding and that proving the null hypothesis of a null negative control association is impossible. We focus our discussion on the control outcome calibration approach, the difference-in-difference approach, and the double-negative control approach as methods for confounding correction. For each of these methods, we highlight their assumptions and illustrate the potential impact of violations thereof. Given the potentially large impact of assumption violations, it may sometimes be desirable to replace strong conditions for exact identification with weaker, easily verifiable conditions, even when these imply at most partial identification of unmeasured confounding. Future research in this area may broaden the applicability of negative controls and in turn make them better suited for routine use in epidemiological practice. At present, however, the applicability of negative controls should be carefully judged on a case-by-case basis.

摘要

未测量混杂是因果推断中众所周知的障碍。近年来,负对照作为解决该问题的重要工具受到了越来越多的关注。关于该主题的文献迅速增加,几位作者主张在流行病学实践中更常规地使用负对照。在本文中,我们回顾了基于负对照的概念和方法,用于检测和纠正未测量混杂偏差。我们认为,负对照可能缺乏检测未测量混杂的特异性和敏感性,并且证明负对照关联的零假设是不可能的。我们将讨论重点放在对照结果校准方法、差异法和双负对照方法作为混杂校正方法上。对于每种方法,我们都强调了它们的假设,并说明了违反这些假设的潜在影响。鉴于违反假设的潜在影响很大,有时可能需要用较弱的、易于验证的条件来代替对准确识别的严格条件,即使这些条件最多只能部分识别未测量的混杂。该领域的未来研究可能会扩大负对照的适用性,从而使它们更适合在流行病学实践中常规使用。然而,目前负对照的适用性应该根据具体情况进行仔细判断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7a10/10515451/b7bf5174282d/10.1177_09622802231181230-fig1.jpg

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