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Model-based and design-based inference goals frame how to account for neighborhood clustering in studies of health in overlapping context types

机译:基于模型和基于设计的推理目标框架说明了如何在重叠上下文类型的健康研究中考虑邻域聚类

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摘要

Accounting for non-independence in health research often warrants attention. Particularly, the availability of geographic information systems data has increased the ease with which studies can add measures of the local “neighborhood” even if participant recruitment was through other contexts, such as schools or clinics. We highlight a tension between two perspectives that is often present, but particularly salient when more than one type of potentially health-relevant context is indexed (e.g., both neighborhood and school). On the one hand, a model-based perspective emphasizes the processes producing outcome variation, and observed data are used to make inference about that process. On the other hand, a design-based perspective emphasizes inference to a well-defined finite population, and is commonly invoked by those using complex survey samples or those with responsibility for the health of local residents. These two perspectives have divergent implications when deciding whether clustering must be accounted for analytically and how to select among candidate cluster definitions, though the perspectives are by no means monolithic. There are tensions within each perspective as well as between perspectives. We aim to provide insight into these perspectives and their implications for population health researchers. We focus on the crucial step of deciding which cluster definition or definitions to use at the analysis stage, as this has consequences for all subsequent analytic and interpretational challenges with potentially clustered data.
机译:在健康研究中考虑非独立性常常值得关注。特别是,地理信息系统数据的可用性增加了研究可以增加本地“邻里”度量的难易程度,即使参与者是通过其他情况(例如学校或诊所)招募的也是如此。我们强调了经常存在的两种观点之间的紧张关系,但是当索引了一种以上类型的潜在与健康相关的上下文(例如,邻里和学校)时,这种矛盾尤为突出。一方面,基于模型的观点强调产生结果差异的过程,而观察到的数据用于推断该过程。另一方面,基于设计的观点强调对定义明确的有限人口的推断,通常由使用复杂调查样本的人或负责当地居民健康的人调用。在确定是否必须对聚类进行分析以及如何在候选聚类定义中进行选择时,这两种观点具有不同的含义,尽管这些观点绝不是单块的。每个视角内以及视角之间都有张力。我们旨在提供对这些观点及其对人口健康研究人员的影响的见解。我们将重点放在决定在分析阶段使用哪个或多个聚类定义的关键步骤,因为这将对所有后续可能具有聚类数据的分析和解释挑战产生影响。

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