Predicting Depression and Anxiety Mood by Wrist-Worn Sleep Sensor
2020 IEEE International Conference on Pervasive Computing and Communications Workshops (PerCom Workshops '20, WristSense), Texas, USA, March 23-27, 2020.
Shuichi Fukuda, Yuri Tani, Yuki Matsuda, Yutaka Arakawa and Keiichi Yasumoto
Abstract: 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.
WorkerSense: Mobile Sensing Platform for Collecting Physiological, Mental, and Environmental State of Office Workers
2020 IEEE International Conference on Pervasive Computing and Communications Workshops (PerCom Workshops '20, PerHealth), Texas, USA, March 23-27, 2020.
Yuri Tani, Shuichi Fukuda, Yuki Matsuda, Sozo Inoue and Yutaka Arakawa
Abstract: In data collection of the human physiological and psychological conditions for mental healthcare (e.g., work engagement), measurement methods using environment-installed sensors and questionnaire surveys have been often used. However, these approaches are not practical in continuous data collection, due to the large burden for people. Recently, in association with advancing sensing technology with IoTs, sensing by small sensors and wearable devices has become possible easily. In this paper, we aim to establish a simple and general sensing method based on a mobile application for measuring physiological and psychological state of office workers and environmental state. Through the experiment for 2--3 weeks involving 60 office workers of four Japanese companies by using our application, we succeeded to create a dataset of physiological, environment, and mental state. This paper explains the developed mobile application, experimental procedure, and a summary of the data collected in the experiment.