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Inference for marginal linear models for clustered longitudinal data with potentially informative cluster sizes

机译:具有潜在信息量的聚类大小的聚类纵向数据的边际线性模型的推断

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Clustered longitudinal data are often collected as repeated measures on subjects arising in clusters. Examples include periodontal disease study, where the measurements related to the disease status of each tooth are collected over time for each patient, which can be considered as a cluster. For such applications, the number of teeth for each patient may be related to the overall oral health of the individual and hence may influence the distribution of the outcome measure of interest leading to an informative cluster size. Under such situations, generalised estimating equations (GEE) may lead to invalid inferences. In this article, we investigate the performance of three competing proposals of fitting marginal linear models to clustered longitudinal data, namely, GEE, within-cluster resampling (WCR) and cluster-weighted generalised estimating equations (CWGEE). We show by simulations and theoretical calculations that, when the cluster size is informative, GEE provides biased estimators, while both WCR and CWGEE achieve unbiasedness under a variety of 'working' correlation structures for temporal measurements within each subject. Statistical properties of confidence intervals have been investigated using the probability-probability plots. Overall, CWGEE appears to be the recommended choice for marginal parametric inference with clustered longitudinal data that achieves similar parameter estimates and test statistics as WCR while avoiding Monte Carlo computation. The corresponding Wald tests have desirable power properties as well. We illustrate our analysis using a temporal data set on periodontal disease, which clearly demonstrates the need for CWGEE over GEE.
机译:经常收集聚类纵向数据,作为对聚类中出现的主题的重复测量。例子包括牙周疾病研究,其中随着时间的推移为每个患者收集与每个牙齿的疾病状态相关的测量值,这可以视为一个集群。对于此类应用,每个患者的牙齿数量可能与个体的整体口腔健康有关,因此可能会影响目标结果量度的分布,从而导致信息量大。在这种情况下,广义估计方程(GEE)可能导致无效的推论。在本文中,我们研究了将边际线性模型拟合到聚类纵向数据的三个竞争性建议的性能,即GEE,聚类内重采样(WCR)和聚类加权广义估计方程(CWGEE)。我们通过仿真和理论计算表明,当簇的大小可提供信息时,GEE提供有偏差的估计量,而WCR和CWGEE都在各种“工作”相关结构下实现了对每个主题内时间测量的无偏差。置信区间的统计属性已使用概率概率图进行了研究。总体而言,对于聚集的纵向数据进行边际参数推理,CWGEE似乎是推荐的选择,该数据可实现与WCR相似的参数估计和测试统计,同时避免了蒙特卡洛计算。相应的Wald测试也具有理想的功率特性。我们使用关于牙周疾病的时间数据集说明了我们的分析,该数据集清楚地表明了CWGEE优于GEE的需求。

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