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Modeling continuous auxiliary covariate data in generalized linear mixed models using the kernel smoother

机译:使用核平滑器在广义线性混合模型中建模连续辅助协变量数据

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摘要

Auxiliary covariate data are often collected in biomedical studies when the primary exposure variable is only assessed on a subset of the study subjects. In this study, we investigate a semiparametric-estimated likelihood estimation for the generalized linear mixed models (GLMM) in the presence of a continuous auxiliary variable. We use a kernel smoother to handle continuous auxiliary data. The method can be used to deal with missing or mismeasured covariate data problems in a variety of applications when an auxiliary variable is available and cluster sizes are not too small. Simulation study results show that the proposed method performs better than that which ignores the random effects in GLMM and that which only uses data in the validation data set. We illustrate the proposed method with a real data set from a recent environmental epidemiology study on the maternal serum 1,1-dichloro-2,2-bis(p-chlorophenyl) ethylene level in relationship to preterm births.
机译:当仅在一部分研究对象上评估主要暴露变量时,通常在生物医学研究中收集辅助协变量数据。在这项研究中,我们研究了在存在连续辅助变量的情况下,广义线性混合模型(GLMM)的半参数估计似然估计。我们使用内核平滑器来处理连续的辅助数据。当辅助变量可用并且簇大小不太小时,该方法可用于处理各种应用中丢失或度量错误的协变量数据问题。仿真研究结果表明,与忽略GLMM中的随机效应和仅使用验证数据集中的数据的方法相比,该方法的性能更好。我们用来自最近的环境流行病学研究的真实数据集说明了提议的方法,该研究是关于孕妇血清1,1-二氯-2,2-双(对氯苯基)乙烯水平与早产的关系。

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