Department of Computer Science and Information Engineering, National Cheng Kung University, Taiwan.
Department of Computer Science and Information Engineering, National Cheng Kung University, Taiwan.
Psychiatry Res. 2024 Apr;334:115790. doi: 10.1016/j.psychres.2024.115790. Epub 2024 Feb 13.
Daily life tracking has proven to be of great help in the assessment of patients with bipolar disorder. Although there are many smartphone apps for tracking bipolar disorder, most of them lack academic verification, privacy policy and long-term maintenance.
Our developed app, MoodSensing, aims to collect users' digital phenotyping for assessment of bipolar disorder. The data collection was approved by the Institutional Review Board. This study collaborated with professional clinicians to ensure that the app meets both clinical needs and user experience requirements. Based on the collected digital phenotyping, deep learning techniques were applied to forecast participants' weekly HAM-D and YMRS scale scores.
In experiments, the data collected by our app can effectively predict the scale scores, reaching the mean absolute error of 0.84 and 0.22 on the scales. The statistical data also demonstrate the increase in user engagement.
Our analysis reveals that the developed MoodSensing app can not only provide a good user experience, but also the recorded data have certain discriminability for clinical assessment. Our app also provides relevant policies to protect user privacy, and has been launched in the Apple Store and Google Play Store.
日常生活追踪已被证明对双相情感障碍患者的评估有很大帮助。虽然有许多用于追踪双相情感障碍的智能手机应用程序,但其中大多数缺乏学术验证、隐私政策和长期维护。
我们开发的应用程序 MoodSensing,旨在收集用户的数字表型,以评估双相情感障碍。数据收集得到了机构审查委员会的批准。本研究与专业临床医生合作,以确保应用程序既满足临床需求,又满足用户体验要求。基于收集的数字表型,应用深度学习技术预测参与者每周的 HAM-D 和 YMRS 量表评分。
在实验中,我们的应用程序收集的数据可以有效地预测量表评分,在量表上的平均绝对误差达到 0.84 和 0.22。统计数据还表明用户参与度的增加。
我们的分析表明,开发的 MoodSensing 应用程序不仅可以提供良好的用户体验,而且记录的数据对临床评估具有一定的可区分性。我们的应用程序还提供了相关政策来保护用户隐私,并已在苹果应用商店和谷歌应用商店上线。