Lunn D J, Wakefield J, Racine-Poon A
Department of Epidemiology and Public Health, Imperial College School of Medicine, Norfolk Place, London W2 1PG, U.K.
Stat Med. 2001 Aug 15;20(15):2261-85. doi: 10.1002/sim.922.
Ordered categorical data arise in numerous settings, a common example being pain scores in analgesic trials. The modelling of such data is intrinsically more difficult than the modelling of continuous data due to the constraints on the underlying probabilities and the reduced amount of information that discrete outcomes contain. In this paper we discuss the class of cumulative logit models, which provide a natural framework for ordinal data analysis. We show how viewing the categorical outcome as the discretization of an underlying continuous response allows a natural interpretation of model parameters. We also show how covariates are incorporated into the model and how various types of correlation among repeated measures on the same individual may be accounted for. The models are illustrated using longitudinal allergy data consisting of sneezing scores measured on a four-point scale. Our approach throughout is Bayesian and we present a range of simple diagnostics to aid model building.
有序分类数据出现在众多场景中,一个常见的例子是镇痛试验中的疼痛评分。由于潜在概率的限制以及离散结果所包含的信息量减少,对此类数据进行建模本质上比连续数据建模更困难。在本文中,我们讨论累积对数模型类别,它为有序数据分析提供了一个自然的框架。我们展示了如何将分类结果视为潜在连续响应的离散化,从而对模型参数进行自然解释。我们还展示了协变量如何纳入模型,以及如何考虑同一个体重复测量之间的各种类型的相关性。使用由四点量表测量的打喷嚏评分组成的纵向过敏数据对模型进行了说明。我们自始至终采用贝叶斯方法,并提出了一系列简单的诊断方法来辅助模型构建。