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Joint analysis of multi-level repeated measures data and survival: an application to the end stage renal disease (ESRD) data.

机译:多级重复测量数据和生存率的联合分析:在终末期肾脏疾病(ESRD)数据中的应用。

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Shared random effects models have been increasingly common in the joint analyses of repeated measures (e.g. CD4 counts, hemoglobin levels) and a correlated failure time such as death. In this paper we study several shared random effects models in the multi-level repeated measures data setting with dependent failure times. Distinct random effects are used to characterize heterogeneity in repeated measures at different levels. The hazard of death may be dependent on random effects from various levels. To simplify the estimation procedure, we adopt the Gaussian quadrature technique with a piecewise log-linear baseline hazard for the death process, which can be conveniently implemented in the freely available software aML. As an example, we analyze repeated measures of hematocrit level and survival for end stage renal disease patients clustered within a randomly selected 126 dialysis centers in the U.S. renal data system data set. Our model is very comprehensive yet easy to implement, making it appealing to general statistical practitioners. Copyright (c) 2008 John Wiley & Sons, Ltd.
机译:在重复测量(例如CD4计数,血红蛋白水平)和相关的失效时间(例如死亡)的联合分析中,共享的随机效应模型已经越来越普遍。在本文中,我们研究了具有相关故障时间的多级重复测量数据设置中的几个共享随机效应模型。不同的随机效应用于表征不同级别重复测量中的异质性。死亡的危险可能取决于各个级别的随机效应。为了简化估算过程,我们采用了具有分段对数线性基线危险的高斯正交技术来处理死亡过程,可以在免费软件aML中方便地实现该过程。例如,我们分析了在美国肾脏数据系统数据集中随机选择的126个透析中心内聚集的终末期肾病患者的血细胞比容水平和存活率的重复测量。我们的模型非常全面,但易于实施,因此吸引了一般统计从业人员。版权所有(c)2008 John Wiley&Sons,Ltd.

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