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A mixed ordinal location scale model for analysis of Ecological Momentary Assessment (EMA) data

机译:用于分析生态矩评估(EMA)数据的混合顺序位置尺度模型

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摘要

Mixed-effects logistic regression models are described for analysis of longitudinal ordinal outcomes, where observations are observed clustered within subjects. Random effects are included in the model to account for the correlation of the clustered observations. Typically, the error variance and the variance of the random effects are considered to be homogeneous. These variance terms characterize the within-subjects (i.e., error variance) and between-subjects (i.e., random-effects variance) variation in the data. In this article, we describe how covariates can influence these variances, and also extend the standard logistic mixed model by adding a subject-level random effect to the within-subject variance specification. This permits subjects to have influence on the mean, or location, and variability, or (square of the) scale, of their responses. Additionally, we allow the random effects to be correlated. We illustrate application of these models for ordinal data using Ecological Momentary Assessment (EMA) data, or intensive longitudinal data, from an adolescent smoking study. These mixed-effects ordinal location scale models have useful applications in mental health research where outcomes are often ordinal and there is interest in subject heterogeneity, both between- and within-subjects.
机译:描述了混合效应逻辑回归模型,用于分析纵向顺序结果,其中观察到的观察结果聚集在受试者体内。模型中包含随机效应,以说明聚类观测值的相关性。通常,误差方差和随机效应的方差被认为是同质的。这些方差项表征数据中的对象内部(即,误差方差)和对象间(即,随机效应方差)变化。在本文中,我们描述了协变量如何影响这些方差,并通过在主题内方差规范中添加主题级随机效应来扩展标准逻辑混合模型。这允许受试者对其反应的均值,位置,变异性或(平方的)比例产生影响。另外,我们允许随机效应相互关联。我们利用青少年吸烟研究中的生态矩评估(EMA)数据或密集纵向数据说明了这些模型在序数数据中的应用。这些混合效果的顺序位置量表模型在心理健康研究中很有用,其结果通常是顺序的,并且对受试者之间和受试者内部的受试者异质性感兴趣。

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