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Adjusted Chi-Square Statistics: Application to Clustered Binary Data in Primary Care

机译:调整后的卡方统计量:应用于初级保健中的聚类二元数据

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摘要

The frequency of randomized cluster trials is increasing in primary care research. These trials are differentiated by the randomization method, in which a group of individuals is randomly assigned to an intervention as a cluster rather than as individuals. Characteristically, individuals within a cluster tend to be more alike than individuals selected at random. For instance, evaluating the effect of an intervention across medical care providers at an institutional level or at a physician group practice level fits the randomized cluster model. Three examples in this article show how failure to account for the dependence introduced by unit of randomization can affect the analysis of binary data and the conclusions of randomized cluster trials. Greater consideration of the nested nature of patient, physician, and practice data would increase the quality of primary care research.
机译:在初级保健研究中,随机分组试验的频率正在增加。这些试验通过随机化方法进行区分,在随机化方法中,将一组个体作为群集而不是个体随机分配给干预。在特征上,集群中的个体比随机选择的个体更相似。例如,在机构级别或在医师团体执业级别评估跨医疗服务提供者的干预措施的效果符合随机聚类模型。本文中的三个示例显示了无法解释随机单位引入的依赖性如何影响二进制数据的分析和随机聚类试验的结论。更多地考虑患者,医生和实践数据的嵌套性质将提高初级保健研究的质量。

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