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

机译:多级回归分析中的一般和特定上下文效应及其矛盾关系:概念教程

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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 general contextual effect (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 specific contextual effects (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. Highlights ? The intra-context correlation is a measure of the general contextual effect (GCE). ? Contextual measures of association inform on specific contextual effects (SCEs). ? Many multilevel regression analyses only report SCEs. ? Paradoxically, the lower the GCE the easier it is to detect “statistically significant” SCEs. ? Multilevel regression analysis need to consider both GCEs and SCEs.
机译:为了与公共卫生相关,上下文(例如,邻里,学校,医院)应影响或影响其中包括的个人的健康状况。共享上下文的影响越大,在该上下文中主题结果的相关性就越高。此上下文内或类内相关具有实质意义,已用于量化一般上下文效应(GCE)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上下文变量的估计回归系数的伪窄95%置信区间,从而高估了估计特定上下文效应(SCE)的精度。多级回归分析是研究GCE和SCE的合适方法。但是,经常有研究人员只报告SCE,而忽略了GCE的研究,而没有意识到小的GCE会导致对SCE的更精确的估计,因此,自相矛盾的是,上下文的相关性越低,检测(并发布)小的但是“具有统计意义的” SCE。我们描述这种自相矛盾的情况,并鼓励研究人员进行多层次回归分析,以便在解释环境对个体健康的影响时同时考虑GCE和SCE。强调 ?上下文内相关性是对一般上下文效果(GCE)的一种度量。 ?关联的上下文度量可告知特定的上下文效应(SCE)。 ?许多多级回归分析仅报告SCE。 ?矛盾的是,GCE越低,检测“具有统计意义的” SCE越容易。 ?多级回归分析需要同时考虑GCE和SCE。

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