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Exploring dynamics in mood regulation-mixture latent markov modeling of ambulatory assessment data

机译:探索情绪调节混合动态马尔可夫模型的动态评估数据中的动力学

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摘要

Objective: To illustrate how fluctuation patterns in ambulatory assessment data with features such as few categorical items, measurement error, and heterogeneity in the change pattern can adequately be analyzed with mixture latent Markov models. The identification of fluctuation patterns can be of great value to psychosomatic research concerned with dysfunctional behavior or cognitions, such as addictive behavior or noncompliance. In our application, unobserved subgroups of individuals who differ with regard to their mood regulation processes, such as mood maintenance and mood repair, are identified. Methods: In an ambulatory assessment study, mood ratings were collected 56 times during 1 week from 164 students. The pleasant-unpleasant mood dimension was assessed by the two ordered categorical items unwell-well and bad-good. Mixture latent Markov models with different number of states, classes, and degrees of invariance were tested, and the best model according to information criteria was interpreted. Results: Two latent classes that differed in their mood regulation pattern during the day were identified. Mean classification probabilities were high (>0.88) for this model. The larger class showed a tendency to stay in and return to a moderately pleasant mood state, whereas the smaller class was more likely to move to a very pleasant mood state and to stay there with a higher probability. Conclusions: Mixture latent Markov models are suitable to obtain information about interindividual differences in stability and change in ambulatory assessment data. Identified mood regulation patterns can serve as reference for typical mood fluctuation in healthy young adults.
机译:目的:说明如何用混合隐马尔可夫模型充分分析具有非分类项少,测量误差和变化模式异质性等特征的动态评估数据中的波动模式。波动模式的识别对于涉及机能障碍行为或认知(例如成瘾行为或不遵从行为)的心身研究可能具有重要价值。在我们的应用中,确定了在情绪调节过程(例如情绪维持和情绪修复)方面不同的未观察到的亚组。方法:在一项动态评估研究中,在1周内从164名学生中收集了56次情绪评估。愉悦-不愉快的情绪维度是通过两个排序的类别项目来评估的:不适,良好和不良。测试了状态,类别和不变程度不同的混合隐马尔可夫模型,并根据信息标准解释了最佳模型。结果:确定了两个潜在类别,它们白天的情绪调节模式不同。该模型的平均分类概率很高(> 0.88)。较大的一类人倾向于留在并恢复中度愉快的情绪状态,而较小的一类人则更有可能转变为非常愉快的情绪状态并以较高的概率呆在那里。结论:混合隐马尔可夫模型适合获得关于稳定性和动态评估数据变化的个体差异的信息。确定的情绪调节模式可作为健康年轻人中典型情绪波动的参考。

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