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Analysis of binary outcomes from randomised trials including multiple births: when should clustering be taken into account?

机译:随机试验(包括多胎)的二元结果分析:何时应考虑聚类?

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Randomised trials involving infants from both single and multiple births present unique statistical challenges. A range of methods have been used to analyse such data, including standard methods which treat all infants as independent, and more complex methods which account for the dependence between outcomes of infants from the same pregnancy. Conflicting recommendations have been made regarding if and when this dependence, or clustering, should be taken into account in the analysis. We studied the performance of ordinary logistic regression, which ignores the clustering, compared with logistic generalised estimating equations (GEEs) and mixed effects models (MEMs), which account for the clustering, using real and simulated datasets. Ordinary logistic regression produced appropriate type I error and coverage rates, provided the dependence between outcomes of infants from the same pregnancy was small and the multiple birth rate was low, but performed poorly otherwise. The type I error rate increased and the coverage rate decreased as either the strength of the dependence or the multiple birth rate increased. In contrast, logistic GEEs maintained appropriate type I error and coverage rates across a wide range of settings. The performance of logistic MEMs varied depending on the setting and the estimation procedure used but was often similar to or better than ordinary logistic regression. We recommend using a method which takes the clustering into account when analysing datasets including infants from multiple births.
机译:涉及单胎和多胎婴儿的随机试验提出了独特的统计学挑战。已经使用了多种方法来分析此类数据,包括将所有婴儿视为独立婴儿的标准方法,以及考虑到同一妊娠婴儿的预后之间存在依赖性的更复杂的方法。对于在分析中是否以及何时应考虑这种依赖性或聚类提出了相互矛盾的建议。我们使用逻辑数据集和模拟数据集研究了忽略聚类的普通逻辑回归的性能,并与考虑聚类的逻辑广义估计方程(GEE)和混合效应模型(MEMs)进行了比较。普通的逻辑回归分析得出了适当的I型误差和覆盖率,但前提是同一妊娠婴儿的结局之间的依存关系较小,而多胎出生率较低,但否则表现较差。随着依赖程度的提高或多重出生率的提高,I型错误率增加而覆盖率降低。相反,后勤GEE在广泛的设置范围内保持适当的I类错误和覆盖率。后勤MEM的性能取决于设置和使用的估计程序,但通常与普通后勤回归相似或更好。我们建议使用一种在分析包括多胎婴儿的数据集时考虑聚类的方法。

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