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Multivariate skew-normal linear mixed models for multi-outcome longitudinal data

机译:多结果纵向数据的多元偏正态线性混合模型

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More than one series of longitudinal data frequently encountered in biomedical, psychological and clinical research are routinely analyzed under a multivariate linear mixed model framework with underlying multivariate normality assumptions for the random effects and within-subject errors. However, such normality assumption might not offer robust inference if the data, even after being transformed, particularly exhibit skewness. In this paper, we propose a multivariate skew-normal linear mixed model constructed by assuming a multivariate skew-normal distribution for the random effects and a multivariate normal distribution for the random errors. A damped exponential correlation structure is adopted to address the within-subject autocorrelation possibly existing among irregularly observed measures. We present an efficient alternating expectation-conditional maximization (AECM) algorithm for maximum likelihood estimation of parameters. The techniques for estimation of random effects and prediction of future outcomes are discussed. Our proposed model is motivated by, and used for, the analysis of AIDS clinical trials in which we investigate the 'association-of-the-evolutions' and the 'evolution-of-the-association' of HIV-1 RNA copies and CD4~+ T cell counts during antiviral therapies.
机译:在多变量线性混合模型框架下,定期分析在生物医学,心理学和临床研究中经常遇到的多个纵向数据,并针对随机效应和受试者内部误差采用潜在的多变量正态性假设。但是,如果数据(即使在转换后)尤其表现出偏斜性,则这种正态性假设可能无法提供可靠的推断。在本文中,我们提出了一个多元偏态正态线性混合模型,该模型通过假设随机偏态的多元偏态正态分布和随机误差的多元正态分布来构建。采用阻尼指数相关结构来解决在不规则观察到的测度中可能存在的对象内部自相关。我们提出了一种有效的交替期望条件最大化(AECM)算法,用于参数的最大似然估计。讨论了估计随机效应和预测未来结果的技术。我们提出的模型是由AIDS临床试验的分析所激发的,并用于分析艾滋病的临床试验,在该试验中,我们研究了HIV-1 RNA拷贝和CD4的“进化关系”和“进化关系”抗病毒治疗期间〜+ T细胞计数。

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