Li Erning, Zhang Daowen, Davidian Marie
Department of Statistics, North Carolina State University, Raleigh, North Carolina 27695-8203, USA.
Biometrics. 2004 Mar;60(1):1-7. doi: 10.1111/j.0006-341X.2004.00170.x.
The relationship between a primary endpoint and features of longitudinal profiles of a continuous response is often of interest, and a relevant framework is that of a generalized linear model with covariates that are subject-specific random effects in a linear mixed model for the longitudinal measurements. Naive implementation by imputing subject-specific effects from individual regression fits yields biased inference, and several methods for reducing this bias have been proposed. These require a parametric (normality) assumption on the random effects, which may be unrealistic. Adapting a strategy of Stefanski and Carroll (1987, Biometrika74, 703-716), we propose estimators for the generalized linear model parameters that require no assumptions on the random effects and yield consistent inference regardless of the true distribution. The methods are illustrated via simulation and by application to a study of bone mineral density in women transitioning to menopause.
主要终点与连续反应纵向轮廓特征之间的关系常常备受关注,一个相关的框架是广义线性模型,其协变量是纵向测量线性混合模型中特定于个体的随机效应。通过从个体回归拟合中估算特定于个体的效应进行的简单实施会产生有偏差的推断,并且已经提出了几种减少这种偏差的方法。这些方法需要对随机效应做出参数(正态性)假设,这可能不切实际。借鉴斯特凡斯基和卡罗尔(1987年,《生物统计学》74卷,703 - 716页)的策略,我们提出了广义线性模型参数的估计量,这些估计量无需对随机效应做假设,并且无论真实分布如何都能产生一致的推断。通过模拟以及应用于一项关于绝经过渡期女性骨矿物质密度的研究对这些方法进行了说明。