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Handling Intra-Cluster Correlation when Analyzing the Effects of Decision Support on Health Care Process Measures

机译:分析决策支持对卫生保健流程措施的影响时处理集群内相关性

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The clinical worksite constitutes a naturally clustered environment, posing challenges in the statistical analysis of quality improvement interventions such as computerized decision support. Ignoring clustering in the analysis may lead to biased effect estimates, underestimating the variance and hence type Ⅰ errors. This paper presents a secondary analysis on data from a previously published, cluster randomized trial in cardiac rehabilitation. We compared six different statistical analysis methods (weighted and unweighted t-test; adjusted χ~2 test; normal and multilevel logistic regression analysis; and generalized estimation equations). There were considerable differences in both point estimates and p-values derived by the methods, and differences were larger with increasing intra-cluster correlation.
机译:临床现场构成了一个自然聚集的环境,给诸如计算机决策支持之类的质量改进干预措施的统计分析带来了挑战。在分析中忽略聚类可能会导致效果估计有偏差,低估了方差,从而低估了Ⅰ型误差。本文对先前发表的关于心脏康复的整群随机试验数据进行了二次分析。我们比较了六种不同的统计分析方法(加权和非加权t检验;调整后的χ〜2检验;正态和多级logistic回归分析;广义估计方程)。通过该方法得出的点估计值和p值均存在相当大的差异,并且随着集群内相关性的增加,差异也更大。

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