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Eliminating bias in randomized cluster trials with correlated binomial outcomes.

机译:消除具有相关二项式结果的随机聚类试验中的偏倚。

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摘要

Clustered or correlated samples with binary data are frequently encountered in biomedical studies. The clustering may be due to repeated measurements of individuals over time or may be due to subsampling of the primary sampling units. Individuals in the same cluster tend to behave more alike than individuals who belong to different clusters. This exhibition of intracluster correlation decreases the amount of information about the effect of the intervention. In the analysis of randomized cluster trials one must adjust the variance of estimator of the mean for the effect of the positive intraclass correlation p;. We review selected alternative methods to the typical Pearson's chi2 analysis, illustrate these alternatives, and out line an alternative analysis algorithm. We have written and tested a FORTRAN program that produces the statistics outlined in this paper. The program is available in an executable format and is available from the author on request.
机译:在生物医学研究中经常会遇到具有二进制数据的聚类或相关样本。聚类可能是由于随时间推移对个体进行的重复测量,也可能是由于主要采样单位的子采样。与属于不同集群的个体相比,同一集群中的个体的行为往往更相似。集群内相关性的展示减少了有关干预效果的信息量。在随机聚类试验的分析中,必须调整均值估计量的方差,以利于类内相关性为正。我们回顾了典型的Pearson's chi2分析的替代方法,举例说明了这些替代方法,并概述了替代分析算法。我们已经编写并测试了FORTRAN程序,该程序可以生成本文概述的统计信息。该程序以可执行格式提供,可应要求由作者提供。

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