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A Bayesian mixture of semiparametric mixed-effects joint models for skewed-longitudinal and time-to-event data

机译:纵向和时间事件数据的半参数混合效应联合模型的贝叶斯混合

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摘要

In longitudinal studies, it is of interest to investigate how repeatedly measured markers in time are associated with a time to an event of interest, and in the mean time, the repeated measurements are often observed with the features of a heterogeneous population, non-normality, and covariate measured with error because of longitudinal nature. Statistical analysis may complicate dramatically when one analyzes longitudinal-survival data with these features together. Recently, a mixture of skewed distributions has received increasing attention in the treatment of heterogeneous data involving asymmetric behaviors across subclasses, but there are relatively few studies accommodating heterogeneity, non-normality, and measurement error in covariate simultaneously arose in longitudinal-survival data setting. Under the umbrella of Bayesian inference, this article explores a finite mixture of semiparametric mixed-effects joint models with skewed distributions for longitudinal measures with an attempt to mediate homogeneous characteristics, adjust departures from normality, and tailor accuracy from measurement error in covariate as well as overcome shortages of confidence in specifying a time-to-event model. The Bayesian mixture of joint modeling offers an appropriate avenue to estimate not only all parameters of mixture joint models but also probabilities of class membership. Simulation studies are conducted to assess the performance of the proposed method, and a real example is analyzed to demonstrate the methodology. The results are reported by comparing potential models with various scenarios. Copyright (c) 2015John Wiley & Sons, Ltd.
机译:在纵向研究中,研究时间上重复测量的标记与事件相关时间的关系是有意义的,同时,经常观察到重复测量具有异质性,非正态性的特征。 ,并且由于纵向性质而使用误差进行协变量测量。当人们一起分析具有这些特征的纵向生存数据时,统计分析可能会急剧复杂化。近来,偏态分布的混合在涉及跨子类不对称行为的异类数据的处理中受到越来越多的关注,但是在纵向生存数据设置中同时出现异变,非正态和协变量的测量误差的研究相对较少。在贝叶斯推理的保护下,本文探索了具有偏分布的半参数混合效应联合模型的有限混合,以进行纵向测量,以试图调和同质特征,调整偏离正态性以及根据协变量以及测量误差定制精度。克服了在指定事件发生时间模型方面缺乏信心的问题。联合建模的贝叶斯混合提供了一种合适的途径,不仅可以估计混合联合模型的所有参数,而且可以估算类成员的概率。进行了仿真研究,以评估所提出方法的性能,并分析了一个实际例子来说明该方法。通过将潜在模型与各种方案进行比较来报告结果。版权所有(c)2015 John Wiley&Sons,Ltd.

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