May Ryan C, Ibrahim Joseph G, Chu Haitao
Department of Biostatistics, University of North Carolina at Chapel Hill, Chapel Hill, NC, 27599, USA.
Stat Med. 2011 Sep 10;30(20):2551-61. doi: 10.1002/sim.4280. Epub 2011 Jun 28.
The analysis of data subject to detection limits is becoming increasingly necessary in many environmental and laboratory studies. Covariates subject to detection limits are often left censored because of a measurement device having a minimal lower limit of detection. In this paper, we propose a Monte Carlo version of the expectation-maximization algorithm to handle large number of covariates subject to detection limits in generalized linear models. We model the covariate distribution via a sequence of one-dimensional conditional distributions, and sample the covariate values using an adaptive rejection metropolis algorithm. Parameter estimation is obtained by maximization via the Monte Carlo M-step. This procedure is applied to a real dataset from the National Health and Nutrition Examination Survey, in which values of urinary heavy metals are subject to a limit of detection. Through simulation studies, we show that the proposed approach can lead to a significant reduction in variance for parameter estimates in these models, improving the power of such studies.
在许多环境和实验室研究中,对受检测限影响的数据进行分析变得越来越必要。由于测量设备具有最小检测下限,受检测限影响的协变量往往被左删失。在本文中,我们提出了一种蒙特卡罗期望最大化算法,以处理广义线性模型中大量受检测限影响的协变量。我们通过一系列一维条件分布对协变量分布进行建模,并使用自适应拒绝 metropolis 算法对协变量值进行抽样。通过蒙特卡罗 M 步最大化获得参数估计。该方法应用于来自国家健康与营养检查调查的真实数据集,其中尿重金属值受检测限的限制。通过模拟研究,我们表明所提出的方法可以显著降低这些模型中参数估计的方差,提高此类研究的功效。