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Recognition of Depression in Bipolar Disorder: Leveraging Cohort and Person-Specific Knowledge

机译:对双相情感障碍抑郁症的识别:利用队列和人格的知识

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Individuals with bipolar disorder typically exhibit changes in the acoustics of their speech. Mobile health systems seek to model these changes to automatically detect and correctly identify current states in an individual and to ultimately predict impending mood episodes. We have developed a program, PRIORI (Predicting Individual Outcomes for Rapid Intervention), that analyzes acoustics of speech as predictors of mood states from mobile smartphone data. Mood prediction systems generally assume that the symptomatology of an individual can be modeled using patterns common in a cohort population due to limitations in the size of available datasets. However, individuals are unique. This paper explores person-level systems that can be developed from the current PRIORI database of an extensive and longitudinal collection composed of two subsets: a smaller labeled portion and a larger unlabeled portion. The person-level system employs the unlabeled portion to extract i-vectors, which characterize single individuals. The labeled portion is then used to train person-level and population-level supervised classifiers, operating on the i-vectors and on speech rhythm statistics, respectively. The unification of these two approaches results in a significant improvement over the baseline system, demonstrating the importance of a multi-level approach to capturing depression symptomatology.
机译:具有双相障碍的个体通常在演讲中展示声学的变化。移动卫生系统寻求模拟这些变化以自动检测并正确识别个人中的当前状态,并最终预测即将发生的情绪发作。我们已经制定了一个程序,先验(预测快速干预的个人结果),分析了来自移动智能手机数据的情绪状态的预测因素的声学。情绪预测系统通常假设可以使用群组群体中常见的模式建模的个体的症状学,由于可用数据集的大小的限制。但是,个人是独一无二的。本文探讨了人级系统,这些系统可以从由两个子集组成的广泛和纵向收集的当前先验数据库开发:较小的标记部分和更大的未标记部分。人级系统采用未标记的部分来提取I-vectors,其特征是单个个体。然后将标记部分用于培训人级和人口级监督分类器,分别在I-Vovers和语音节律统计上运行。这两种方法的统一导致基线系统的显着改善,展示了多级方法对捕获抑郁症症状的重要性。

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