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The Effects of Including Observed Means or Latent Means as Covariates in Multilevel Models for Cluster Randomized Trials

机译:在群集随机试验的多级模型中将观察到的均值或潜在均值包括为协变量的影响

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We investigated methods of including covariates in two-level models for cluster randomized trials to increase power to detect the treatment effect. We compared multilevel models that included either an observed cluster mean or a latent cluster mean as a covariate, as well as the effect of including Level 1 deviation scores in the model. A Monte Carlo simulation study was performed manipulating effect sizes, cluster sizes, number of clusters, intraclass correlation of the outcome, patterns of missing data, and the squared correlations between Level 1 and Level 2 covariates and the outcome. We found no substantial difference between models with observed means or latent means with respect to convergence, Type I error rates, coverage, and bias. However, coverage could fall outside of acceptable limits if a latent mean is included as a covariate when cluster sizes are small. In terms of statistical power, models with observed means performed similarly to models with latent means, but better when cluster sizes were small. A demonstration is provided using data from a study of the Tools for Getting Along intervention.
机译:我们研究了在两级模型中包括协变量的方法,以进行集群随机试验,以提高检测治疗效果的能力。我们比较了包括观察到的聚类平均值或潜在聚类平均值作为协变量的多层次模型,以及在模型中包含1级偏差评分的影响。进行了蒙特卡洛模拟研究,以操纵效应量,簇大小,簇数,结果的类内相关性,缺失数据的模式以及1级和2级协变量与结果之间的平方相关性。我们发现,在收敛性,I类错误率,覆盖率和偏差方面,具有观察到的均值或潜在均值的模型之间没有实质性差异。但是,如果在群集大小较小的情况下将潜在均值作为协变量包括在内,则覆盖范围可能会超出可接受的范围。在统计功效方面,具有观测均值的模型的表现与具有潜在均值的模型相似,但在簇大小较小时表现更好。使用来自“相处工具”干预研究的数据提供了一个演示。

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