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Rank‐based inference for covariate and group effects in clustered data in presence of informative intra‐cluster group size

机译:基于秩的COMPORT-CLASE集团大小存在的聚类数据中的协变量和组效应的推断

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There have been numerous attempts to extend the Wilcoxon rank‐sum test to clustered data. Recently, one such rank‐sum test (Dutta & Datta, 2016, Biometrics 72 , 432‐440) was developed to compare the group‐specific marginal distributions of outcomes in clustered data where the conditional distributions of outcomes depend on the number of observations from that group in a given cluster, a phenomenon referred to as informative intra‐cluster group (ICG) size. However, comparison of group‐specific marginal distributions may not be sufficient in presence of some potentially useful covariables that are observed in the study. In addition, not accounting for the effect of these covariates can lead to biased and misleading inference for the group comparisons. Thus, the purpose of this article is twofold. First, we develop a method to estimate the covariate effects using rank‐based weighted estimating equations that are appropriate when the ICG size is informative. Second, we construct an aligned rank‐sum test based on the covariate adjusted outcomes. Asymptotic distributions of the R‐estimators and the test statistic are provided. Through simulation studies, we show the importance of selecting proper weights in constructing the estimating equations when informativeness is present through the cluster or ICG sizes. We also demonstrate the superiority and the robustness of our method in comparison to regular parametric linear mixed models in clustered data. We apply our method to analyze different real‐life data sets including a data on birthweights of rat pups in different litters and a dental data on tooth attachment loss.
机译:有许多尝试将Wilcoxon秩和测试扩展到群集数据。最近,制定了一个这样的排名(DUTTA& DATTA,2016,Biometrics 72,432-440),以比较集群数据中的特定于群体的边际分布,其中延期的条件分布取决于观察人数从给定集群中的那个组,将其提到的现象称为信息内集团(ICG)规模。然而,在研究中观察到的一些潜在的有用的可调节器存在的情况下,基团特异性边际分布的比较可能是不够的。此外,没有考虑这些协变量的效果可以导致群体比较的偏见和误导性推断。因此,本文的目的是双重的。首先,我们开发一种方法来估算使用基于秩的加权估计方程来估计协变量效应,这是适当的ICG大小是信息的。其次,我们基于协变量调整结果构建一个对齐的秩和测试。提供了R估计和测试统计的渐近分布。通过仿真研究,当通过集群或ICG尺寸存在信息性时,我们展示了选择适当权重的重要性。我们还展示了与聚类数据中的常规参数线性混合模型相比的方法的优越性和鲁棒性。我们应用我们的方法来分析不同的现实生活数据集,包括不同窝水中的大鼠幼仔的分娩数据和牙齿附着损失的牙科数据。

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