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Predicting Depression and Anxiety Mood by Wrist-Worn Sleep Sensor

机译:腕戴式睡眠传感器预测抑郁和焦虑情绪

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In recent years, researches on recognizing daily behavior and psychological/physiological states have been actively conducted to change the behavior of workers working in companies. In this paper, we analyzed Occupational Health questionnaire named DAMS for waking-up time and daily sleep data that are acquired from wearable devices in 2–3 weeks experiment of 60 office workers working in five general companies. By using a machine learning method, our binary Balanced Random Forest model predicts depression, positive, and anxiety moods in two levels, high and low. As a result of Leave One Person Out cross validation, it was confirmed that our model estimated with the F1 values of depression mood: 0.776, positive mood: 0.610, anxiety mood: 0.756. Moreover, we evaluated the variance of the three estimations among subjects by referencing the box chart. As a result, it was confirmed that there is variance in estimation accuracy for each subject.
机译:近年来,已经积极开展了对识别日常行为和心理/生理国家的研究,以改变公司工作的工人的行为。在本文中,我们分析了职业健康问卷调查问卷,用于唤醒时间和每日睡眠数据,这些睡眠数据是在五个一般公司工作的60个办公室工作人员中获取的可穿戴设备。通过使用机器学习方法,我们的二进制平衡随机森林模型预测了两个层次,高低的抑郁症,阳性和焦虑情绪。由于留下一个人的交叉验证,我们确认我们的模型估计了抑郁情绪的F1值:0.776,阳性情绪:0.610,焦虑情绪:0.756。此外,我们通过参考盒子图表评估了对象之间的三个估计的方差。结果,证实存在每个受试者的估计精度方差。

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