School of ECE, National Technical University of Athens, 157 73 Athens, Greece.
Department of Digital Systems, University of Piraeus, 185 34 Pireas, Greece.
Sensors (Basel). 2022 Oct 5;22(19):7544. doi: 10.3390/s22197544.
Wearable technologies and digital phenotyping foster unique opportunities for designing novel intelligent electronic services that can address various well-being issues in patients with mental disorders (i.e., schizophrenia and bipolar disorder), thus having the potential to revolutionize psychiatry and its clinical practice. In this paper, we present e-Prevention, an innovative integrated system for medical support that facilitates effective monitoring and relapse prevention in patients with mental disorders. The technologies offered through e-Prevention include: (i) long-term continuous recording of biometric and behavioral indices through a smartwatch; (ii) video recordings of patients while being interviewed by a clinician, using a tablet; (iii) automatic and systematic storage of these data in a dedicated Cloud server and; (iv) the ability of relapse detection and prediction. This paper focuses on the description of the e-Prevention system and the methodologies developed for the identification of feature representations that correlate with and can predict psychopathology and relapses in patients with mental disorders. Specifically, we tackle the problem of relapse detection and prediction using Machine and Deep Learning techniques on all collected data. The results are promising, indicating that such predictions could be made and leading eventually to the prediction of psychopathology and the prevention of relapses.
可穿戴技术和数字表型为设计新型智能电子服务提供了独特的机会,这些服务可以解决精神障碍患者(如精神分裂症和双相情感障碍)的各种健康问题,从而有可能彻底改变精神病学及其临床实践。在本文中,我们提出了 e-Prevention,这是一种用于医疗支持的创新集成系统,可促进精神障碍患者的有效监测和复发预防。e-Prevention 提供的技术包括:(i)通过智能手表对生物识别和行为指标进行长期连续记录;(ii)使用平板电脑记录患者在接受临床医生访谈时的视频;(iii)自动系统地将这些数据存储在专用的 Cloud 服务器中;(iv)以及具有复发检测和预测的能力。本文重点介绍了 e-Prevention 系统的描述以及为识别与精神障碍患者的精神病理学和复发相关并可预测这些问题的特征表示而开发的方法。具体来说,我们使用机器学习和深度学习技术来处理所有收集数据的复发检测和预测问题。结果很有希望,表明可以进行此类预测,并最终实现对精神病理学的预测和对复发的预防。