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A combined overdispersed and marginalized multilevel model

机译:组合的超分散和边缘化多层次模型

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摘要

Overdispersion and correlation are two features often encountered when modeling non-Gaussian dependent data, usually as a function of known covariates. Methods that ignore the presence of these phenomena are often in jeopardy of leading to biased assessment of covariate effects. The beta-binomial and negative binomial models are well known in dealing with overdispersed data for binary and count data, respectively. Similarly, generalized estimating equations (GEE) and the generalized linear mixed models (GLMM) are popular choices when analyzing correlated data. A so-called combined model simultaneously acknowledges the presence of dependency and overdispersion by way of two separate sets of random effects. A marginally specified logistic-normal model for longitudinal binary data which combines the strength of the marginal and hierarchical models has been previously proposed. These two are brought together to produce a marginalized longitudinal model which brings together the comfort of marginally meaningful parameters and the ease of allowing for overdispersion and correlation. Apart from model formulation, estimation methods are discussed. The proposed model is applied to two clinical studies and compared to the existing approach. It turns out that by explicitly allowing for overdispersion random effect, the model significantly improves.
机译:在对非高斯相关数据进行建模时,过度分散和相关性是经常遇到的两个特征,通常是已知协变量的函数。忽略这些现象的存在的方法通常会危害对协变量效应的评估。 β二项式和负二项式模型分别处理二进制和计数数据的过度分散数据是众所周知的。同样,在分析相关数据时,广义估计方程(GEE)和广义线性混合模型(GLMM)是常见的选择。所谓的组合模型通过两组独立的随机效应同时确认依赖和过度分散的存在。先前已经提出了针对边缘二进制数据的边缘指定的逻辑正态模型,该模型结合了边缘模型和分层模型的强度。将这两者结合在一起以产生边缘化的纵向模型,该模型将边缘有意义的参数的舒适性和允许过度分散和相关性的简便性结合在一起。除了模型制定之外,还讨论了估计方法。所提出的模型被应用于两项临床研究,并与现有方法进行了比较。事实证明,通过明确允许过度分散随机效应,该模型得到了显着改善。

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