在存在测量误差的情况下,调整代表潜在混杂因素、介质或竞争预测因子的协变量:通过营养流行病学实例消除对最佳研究设计的潜在误解和见解。

Q2 Pharmacology, Toxicology and Pharmaceutics
F1000Research Pub Date : 2025-05-19 eCollection Date: 2024-01-01 DOI:10.12688/f1000research.152466.2
Roger S Zoh, Diana M Thomas, Carmen D Tekwe, Xiaoxin Yu, Colby J Vorland, Nikhil V Dhurandhar, David M Klurfeld, David B Allison
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引用次数: 0

摘要

背景:膳食摄入量等变量的测量存在误差,但在观察性流行病学中经常使用。虽然有时会注意到这种限制,但这些变量仍然经常被建模为协变量,没有正式的校正或对测量不可靠性的真诚对话,这可能会削弱统计结论的有效性。此外,更大的样本量增加了检测虚假相关性的能力(偏差)。与直觉相反,最近的研究表明,在测试暴露-结果关联时,混杂因素不可靠性与控制混杂因素减少(或诱导)偏差的程度之间存在非单调关系。如果这是真的,这种非单调性将特别关注诸如营养等应用,其中测量可靠性变化很大,并且大样本量很常见。方法:我们提供了结果与暴露之间的平方偏相关的详细推导,控制了混杂因素。在我们的推导中,暴露量和混杂量的测量可靠性并没有被任意约束为相等。此外,我们的理论结果进行了模拟研究。结果:令人放心的是,这些推导和模拟表明,在测试暴露-结果关联时,混杂因素不可靠性与控制混杂因素减少(或诱导)偏差的程度之间的反直觉非单调关系是任意约束的产物,它迫使暴露和混杂因素的测量可靠性相等,这并不总是有效。结论:测量误差对实际情况下的估计和统计结论效度的影响是深刻而多方面的,这表明,仅仅将测量误差作为一种限制,然后将其消除是不够的。在考虑暴露、协变量和结果的可靠性时,我们还探讨了受资源限制的最佳研究设计问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adjusting for covariates representing potential confounders, mediators, or competing predictors in the presence of measurement error: Dispelling a potential misapprehension and insights for optimal study design with nutritional epidemiology examples.

Background: Variables such as dietary intake are measured with error yet frequently used in observational epidemiology. Although this limitation is sometimes noted, these variables are still often modeled as covariates without formal correction or sincere dialogue about measurement unreliability potentially weakening the validity of statistical conclusions. Further, larger sample sizes increase power (bias) to detect spurious correlations. Counterintuitively, recent work suggested a non-monotonic relationship between confounder unreliability and how much controlling for the confounder reduces (or induces) bias when testing for an exposure-outcome association. If true, such non-monotonicity would be especially concerning for applications such as nutrition, where measurement reliability varies substantially, and large sample sizes are common.

Methods: We offer a detailed derivations of the square partial correlation between the outcome and exposure, controlling for the confounder. In our derivation, the measurement reliabilities of exposures and confounders are not arbitrarily constrained to be equal. Further, our theoretical results are investigated using simulations.

Results: Reassuringly, these derivations and simulations show that the counterintuitive non-monotonicity relationship between confounder unreliability and how much controlling for the confounder reduces (or induces) bias when testing for an exposure-outcome association is an artifact of the arbitrary constraint which forces the measurement reliabilities of exposures and confounders to be equal, which that does not always hold.

Conclusions: The profound and manifold effects of measurement error on estimation and statistical conclusion validity in realistic scenarios indicate that merely mentioning measurement error as a limitation and then dispensing with it is not an adequate response. We also explore questions for optimal study design subject to resource constraints when considering reliability of exposures, covariates, and outcomes.

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来源期刊
F1000Research
F1000Research Pharmacology, Toxicology and Pharmaceutics-Pharmacology, Toxicology and Pharmaceutics (all)
CiteScore
5.00
自引率
0.00%
发文量
1646
审稿时长
1 weeks
期刊介绍: F1000Research publishes articles and other research outputs reporting basic scientific, scholarly, translational and clinical research across the physical and life sciences, engineering, medicine, social sciences and humanities. F1000Research is a scholarly publication platform set up for the scientific, scholarly and medical research community; each article has at least one author who is a qualified researcher, scholar or clinician actively working in their speciality and who has made a key contribution to the article. Articles must be original (not duplications). All research is suitable irrespective of the perceived level of interest or novelty; we welcome confirmatory and negative results, as well as null studies. F1000Research publishes different type of research, including clinical trials, systematic reviews, software tools, method articles, and many others. Reviews and Opinion articles providing a balanced and comprehensive overview of the latest discoveries in a particular field, or presenting a personal perspective on recent developments, are also welcome. See the full list of article types we accept for more information.
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