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多层次回归分析中的一般和特定情境效应及其矛盾关系:概念教程

General and specific contextual effects in multilevel regression analyses and their paradoxical relationship: A conceptual tutorial.

作者信息

Merlo Juan, Wagner Philippe, Austin Peter C, Subramanian S V, Leckie George

机构信息

Unit for Social Epidemiology, Department of Clinical Sciences, Faculty of Medicine, Lund University, CRC, Jan Waldenströms Street 35, SE- 214 21 Malmö, Sweden.

Center for Primary Health Care Research, Region Skåne, Malmö, Sweden.

出版信息

SSM Popul Health. 2018 May 19;5:33-37. doi: 10.1016/j.ssmph.2018.05.006. eCollection 2018 Aug.

Abstract

To be relevant for public health, a context (e.g., neighborhood, school, hospital) should influence or affect the health status of the individuals included in it. The greater the influence of the shared context, the higher the correlation of subject outcomes within that context is likely to be. This intra-context or intra-class correlation is of substantive interest and has been used to quantify the magnitude of the (GCE). Furthermore, ignoring the intra-class correlation in a regression analysis results in spuriously narrow 95% confidence intervals around the estimated regression coefficients of the specific contextual variables entered as covariates and, thereby, overestimates the precision of the estimated (SCEs). Multilevel regression analysis is an appropriate methodology for investigating both GCEs and SCEs. However, frequently researchers only report SCEs and disregard the study of the GCE, unaware that small GCEs lead to more precise estimates of SCEs so, paradoxically, the less relevant the context is, the easier it is to detect (and publish) small but "statistically significant" SCEs. We describe this paradoxical situation and encourage researchers performing multilevel regression analysis to consider simultaneously both the GCE and SCEs when interpreting contextual influences on individual health.

摘要

为了与公共卫生相关,一个环境(如社区、学校、医院)应该影响其中所包含个体的健康状况。共享环境的影响越大,该环境中个体结果的相关性可能就越高。这种环境内或类内相关性具有实质意义,并已被用于量化(群体背景效应)的大小。此外,在回归分析中忽略类内相关性会导致围绕作为协变量输入的特定环境变量的估计回归系数的95%置信区间异常狭窄,从而高估了估计(个体背景效应)的精度。多水平回归分析是研究群体背景效应和个体背景效应的合适方法。然而,研究人员经常只报告个体背景效应而忽视对群体背景效应的研究,没有意识到小的群体背景效应会导致对个体背景效应的更精确估计,所以矛盾的是,环境的相关性越低,就越容易检测到(并发表)小的但“具有统计学意义”的个体背景效应。我们描述了这种矛盾的情况,并鼓励进行多水平回归分析的研究人员在解释环境对个体健康的影响时同时考虑群体背景效应和个体背景效应。

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