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公共卫生中的统计推断与实质推断:多层模型应用中的问题

Statistical and substantive inferences in public health: issues in the application of multilevel models.

作者信息

Bingenheimer Jeffrey B, Raudenbush Stephen W

机构信息

School of Public Health, University of Michigan, Ann Arbor, Michigan 48109, USA.

出版信息

Annu Rev Public Health. 2004;25:53-77. doi: 10.1146/annurev.publhealth.25.050503.153925.

Abstract

Multilevel statistical models have become increasingly popular among public health researchers over the past decade. Yet the enthusiasm with which these models are being adopted may obscure rather than solve some problems of statistical and substantive inference. We discuss the three most common applications of multilevel models in public health: (a) cluster-randomized trials, (b) observational studies of the multilevel etiology of health and disease, and (c) assessments of health care provider performance. In each area of investigation, we describe how multilevel models are being applied, comment on the validity of the statistical and substantive inferences being drawn, and suggest ways in which the strengths of multilevel models might be more fully exploited. We conclude with a call for more careful thinking about multilevel causal inference.

摘要

在过去十年中,多层统计模型在公共卫生研究人员中越来越受欢迎。然而,采用这些模型的热情可能会掩盖而非解决一些统计推断和实质推断的问题。我们讨论多层模型在公共卫生中的三种最常见应用:(a)整群随机试验,(b)健康与疾病多层病因学的观察性研究,以及(c)医疗服务提供者绩效评估。在每个研究领域,我们描述了多层模型的应用方式,对所做的统计推断和实质推断的有效性进行了评论,并提出了更充分利用多层模型优势的方法。我们最后呼吁对多层因果推断进行更深入的思考。

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