Division of Epidemiology and Biostatistics, School of Public Health, University of Illinois at Chicago, Chicago, IL, USA.
Stat Med. 2012 Nov 30;31(27):3328-36. doi: 10.1002/sim.5338. Epub 2012 Mar 15.
Ecological momentary assessment and/or experience sampling methods are increasingly used in health studies to study subjective experiences within changing environmental contexts. In these studies, up to 30 or 40 observations are often obtained for each subject. Because there are so many measurements per subject, one can characterize a subject's mean and variance and can specify models for both. In this article, we focus on an adolescent smoking study using ecological momentary assessment where interest is on characterizing changes in mood variation. We describe how covariates can influence the mood variances and also extend the statistical 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 mood responses. These mixed-effects location scale models have useful applications in many research areas where interest centers on the joint modeling of the mean and variance structure.
生态瞬时评估和/或体验抽样方法在健康研究中越来越多地被用于研究在不断变化的环境背景下的主观体验。在这些研究中,每个被试通常会获得多达 30 或 40 次观察。由于每个被试的测量次数如此之多,因此可以描述被试的均值和方差,并为两者指定模型。在本文中,我们专注于使用生态瞬时评估的青少年吸烟研究,其中的兴趣在于描述情绪变化的特征。我们描述了协变量如何影响情绪方差,并通过在个体内方差规范中添加个体水平的随机效应来扩展统计模型。这允许被试对其情绪反应的均值(或位置)和变异性(或尺度的平方)产生影响。这些混合效应位置尺度模型在许多研究领域都有有用的应用,这些领域的兴趣集中在均值和方差结构的联合建模上。