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Quantifying Power and Bias in Cluster Randomized Trials Using Mixed Models vs. Cluster-Level Analysis in the Presence of Missing Data: A Simulation Study

机译:在缺少数据的情况下使用混合模型与聚类分析对聚类随机试验的功效和偏倚进行量化的模拟研究

摘要

In cluster randomized trials (CRTs), groups are randomized to treatment arms rather than individuals while the outcome is assessed on the individuals within each cluster. Individuals within clusters tend to be more similar than in a randomly selected sample, which poses issues with dependence, which may lead to underestimated standard errors if ignored. To adjust for the correlation between individuals within clusters, two main approaches are used to analyze CRTs: cluster-level and individual-level analysis. In a cluster-level analysis summary measures are obtained for each cluster and then the two sets of cluster-specific measures are compared, such as with a t-test of the cluster means. A mixed model which takes into account cluster membership is an example of an individual-level analysis. We used a simulation study to quantify and compare power and bias of these two methods. We further take into account the effect of missing data. Complete datasets were generated and then data were deleted to simulate missing completely at random (MCAR) and missing at random (MAR) data. A balanced design, with two treatment groups and two time points was assumed. Cluster size, variance components (including within-subject, within-cluster and between-cluster variance) and proportion of missingness were varied to simulate common scenarios seen in practice. For each combination of parameters, 1,000 datasets were generated and analyzed. Results of our simulation study indicate that cluster-level analysis resulted in substantial loss of power when data were MAR. Individual-level analysis had higher power and remained unbiased, even with a small number of clusters.
机译:在整群随机试验(CRT)中,将组随机分配给治疗组而不是个体,同时对每个群内的个体评估结果。与随机选择的样本相比,聚类中的个体往往更相似,这带来了相关性问题,如果忽略,可能导致被低估的标准误。为了适应群集内个体之间的相关性,使用了两种主要方法来分析CRT:群集级和个体级分析。在聚类水平分析中,为每个聚类获取汇总度量,然后将两组特定于聚类的度量进行比较,例如使用聚类平均值的t检验。考虑集群成员资格的混合模型是个人级别分析的示例。我们使用仿真研究来量化和比较这两种方法的功率和偏差。我们进一步考虑了丢失数据的影响。生成完整的数据集,然后删除数据以模拟完全随机丢失(MCAR)和随机丢失(MAR)数据。假设采用两个治疗组和两个时间点的平衡设计。集群大小,方差成分(包括主题内部,集群内和集群间方差)和缺失比例均发生了变化,以模拟实践中常见的场景。对于每个参数组合,生成并分析了1,000个数据集。我们的模拟研究结果表明,当数据为MAR时,聚类分析会导致大量功率损失。个体级别的分析具有较高的功效,并且即使有少量的聚类也没有偏见。

著录项

  • 作者

    Vincent Brenda;

  • 作者单位
  • 年度 2016
  • 总页数
  • 原文格式 PDF
  • 正文语种 en_US
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