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A model for overdispersed hierarchical ordinal data

机译:过度分散的层次序数据模型

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Non-Gaussian outcomes are frequently modelled using members of the exponential family. In particular, the Bernoulli model for binary data and the Poisson model for count data are well-known. Two reasons for extending this family are (1) the occurrence of overdispersion, implying that the variability in the data is not adequately described by the models, and (2) the incorporation of hierarchical structure in the data. These issues are routinely addressed separately, the first one through overdispersion models, the second one, for example, by means of random effects within the generalized linear mixed models framework. Molenberghs et al. (2007, 2010) introduced a so-called combined model' that simultaneously addresses both. In these and subsequent papers, a lot of attention was given to binary outcomes, counts, and time-to-event responses. While common in practice, ordinal data have not been studied from this angle. In this article, a model for ordinal repeated measures, subject to overdispersion, is formulated. It can be fitted without difficulty using standard statistical software. The model is exemplified using data from an epidemiological study in diabetic patients and using data from a clinical trial in psychiatric patients.
机译:非高斯结局通常使用指数族的成员进行建模。特别地,用于二进制数据的伯努利模型和用于计数数据的泊松模型是众所周知的。扩展该族的两个原因是(1)过度分散的发生,这意味着模型中数据不能充分描述数据的可变性;(2)数据中包含层次结构。这些问题通常单独解决,第一个问题通过过度分散模型解决,第二个问题例如通过广义线性混合模型框架内的随机效应解决。 Molenberghs等。 (2007年,2010年)引入了一种同时解决这两个问题的所谓组合模型。在这些及后续论文中,大量关注点都集中在二进制结果,计数和事件响应时间上。虽然在实践中很常见,但尚未从这个角度研究序数数据。在本文中,制定了一种顺序重复测量模型,该模型可能会过度分散。使用标准统计软件可以轻松安装它。该模型以糖尿病患者的流行病学研究数据和精神病患者的临床试验数据为例。

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