Huang Yangxin, Dagne Getachew A
Department of Epidemiology and Biostatistics, College of Public Health, University of South Florida, Tampa, FL.
Bayesian Anal. 2012 Jan 1;7(1):189-210. doi: 10.1214/12-BA706. Epub 2011 Mar 11.
Longitudinal data arise frequently in medical studies and it is a common practice to analyze such complex data with nonlinear mixed-effects (NLME) models which enable us to account for between-subject and within-subject variations. To partially explain the variations, covariates are usually introduced to these models. Some covariates, however, may be often measured with substantial errors. It is often the case that model random error is assumed to be distributed normally, but the normality assumption may not always give robust and reliable results, particularly if the data exhibit skewness. Although there has been considerable interest in accommodating either skewness or covariate measurement error in the literature, there is relatively little work that considers both features simultaneously. In this article, our objectives are to address simultaneous impact of skewness and covariate measurement error by jointly modeling the response and covariate processes under a general framework of Bayesian semiparametric nonlinear mixed-effects models. The method is illustrated in an AIDS data example to compare potential models which have different distributional specifications. The findings from this study suggest that the models with a skew-normal distribution may provide more reasonable results if the data exhibit skewness and/or have measurement errors in covariates.
纵向数据在医学研究中经常出现,使用非线性混合效应(NLME)模型分析此类复杂数据是一种常见做法,该模型使我们能够考虑个体间和个体内的变异。为了部分解释变异,通常会将协变量引入这些模型。然而,一些协变量可能经常存在大量测量误差。通常假设模型随机误差呈正态分布,但正态性假设可能并不总是能给出稳健可靠的结果,特别是如果数据呈现偏态。尽管文献中对处理偏态或协变量测量误差已有相当多的关注,但同时考虑这两个特征的工作相对较少。在本文中,我们的目标是在贝叶斯半参数非线性混合效应模型的一般框架下,通过联合对响应和协变量过程进行建模,来解决偏态和协变量测量误差的同时影响。该方法在一个艾滋病数据示例中进行了说明,以比较具有不同分布规范的潜在模型。本研究的结果表明,如果数据呈现偏态和/或协变量存在测量误差,具有偏态正态分布的模型可能会提供更合理的结果。