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Feature Extraction in Motor Activity Signal: Towards a Depression Episodes Detection in Unipolar and Bipolar Patients

机译:运动活动信号中的特征提取:对单相和双相患者抑郁发作的检测

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摘要

Depression is a mental disorder characterized by recurrent sadness and loss of interest in the enjoyment of the positive aspects of life, in addition to fatigue, causing inability to perform daily activities, which leads to a loss of quality of life. To monitor depression (unipolar and bipolar patients), traditional methods rely on reports from patients; nevertheless, bias is commonly present in them. To overcome this problem, Ecological Momentary Assessment (EMA) reports have been widely used, which include data of the behavior, feelings and other types of activities recorded almost in real time through the use of portable devices and smartphones containing motion sensors. In this work a methodology was proposed to detect depressive subjects from control subjects based in the data of their motor activity, recorded by a wearable device, obtained from the “Depresjon” database. From the motor activity signals, the extraction of statistical features was carried out to subsequently feed a random forest classifier. Results show a sensitivity value of 0.867, referring that those subjects with presence of depression have a degree of 86.7% of being correctly classified, while the specificity shows a value of 0.919, referring that those subjects with absence of depression have a degree of 91.9% of being classified with a correct response, using the motor activity signal provided from the wearable device. Based on these results, it is concluded that the motor activity allows distinguishing between the two classes, providing a preliminary and automated tool to specialists for the diagnosis of depression.
机译:抑郁症是一种精神疾病,其特征在于,除了疲劳以外,还会反复出现悲伤和对生活的积极方面失去兴趣,从而导致无法进行日常活动,从而导致生活质量下降。为了监测抑郁症(单相和双相患者),传统方法依赖于患者的报告。但是,他们中普遍存在偏见。为了克服这个问题,已经广泛使用了生态瞬时评估(EMA)报告,其中包括通过使用包含运动传感器的便携式设备和智能手机几乎实时记录的行为,感觉和其他类型的活动的数据。在这项工作中,提出了一种方法,该方法根据可穿戴设备记录的从“ Depresjon”数据库获得的运动活动数据,从控制对象中检测出抑郁对象。从运动活动信号中提取统计特征以随后向随机森林分类器提供数据。结果显示敏感度值为0.867,表明存在抑郁症的受试者的正确分类的程度为86.7%,而特异性显示为0.919,表明没有抑郁症的受试者的正确分类的程度为91.9%使用可穿戴设备提供的运动信号来对您的信息进行正确分类。根据这些结果,可以得出结论,运动活动可以区分这两个类别,从而为专家提供了初步的自动工具来诊断抑郁症。

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