Construction of multilevel statistical models in health research: Foundations and generalities

Andry Yasmid Mera-Mamián, José Moreno-Montoya, Laura Andrea Rodríguez-Villamizar, Diana Isabel Muñoz, Ángela María Segura, Héctor Iván García
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Abstract

This topic review aims to present a global vision of multilevel analysis models’ applicability to health research, explaining its theoretical, methodological, and statistical foundations. We describe the basic steps to build these models and examples of their application according to the data hierarchical structure. It ir worth noticing that before using these models, researchers must have a rationale for needing them, and a statistical evaluation accounting for the variance percentage explained by the observations grouping effect. The requirements to conduct this type of analysis depends on special conditions such as the type of variables, the number of units per level, or the type of hierarchical structure. We conclude that multilevel analysis models are a useful tool to integrate information, considering the complexity of the relationships and interactions involved in most health conditions, including the loss of independence between observation units.

在健康研究中构建多层次统计模型:基础和一般性
本专题综述旨在介绍多层次分析模型在健康研究中的应用前景,解释其理论、方法和统计基础。值得注意的是,在使用这些模型之前,研究人员必须有需要这些模型的理由,并对观察分组效应所解释的方差百分比进行统计评估。我们的结论是,考虑到大多数健康状况所涉及的关系和相互作用的复杂性,包括观察单元之间独立性的丧失,多层次分析模型是整合信息的有用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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