CrossCheck: toward passive sensing and detection of mental health changes in people with schizophrenia

Rui Wang, M. Aung, Saeed Abdullah, R. Brian, A. Campbell, Tanzeem Choudhury, M. Hauser, J. Kane, Michael Merrill, E. Scherer, V. W. Tseng, Dror Ben-Zeev
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引用次数: 221

Abstract

Early detection of mental health changes in individuals with serious mental illness is critical for effective intervention. CrossCheck is the first step towards the passive monitoring of mental health indicators in patients with schizophrenia and paves the way towards relapse prediction and early intervention. In this paper, we present initial results from an ongoing randomized control trial, where passive smartphone sensor data is collected from 21 outpatients with schizophrenia recently discharged from hospital over a period ranging from 2-8.5 months. Our results indicate that there are statistically significant associations between automatically tracked behavioral features related to sleep, mobility, conversations, smart-phone usage and self-reported indicators of mental health in schizophrenia. Using these features we build inference models capable of accurately predicting aggregated scores of mental health indicators in schizophrenia with a mean error of 7.6% of the score range. Finally, we discuss results on the level of personalization that is needed to account for the known variations within people. We show that by leveraging knowledge from a population with schizophrenia, it is possible to train accurate personalized models that require fewer individual-specific data to quickly adapt to new users.
交叉检查:对精神分裂症患者心理健康变化的被动感知和检测
早期发现严重精神疾病患者的心理健康变化对有效干预至关重要。CrossCheck是被动监测精神分裂症患者心理健康指标的第一步,为预测复发和早期干预铺平了道路。在本文中,我们介绍了一项正在进行的随机对照试验的初步结果,该试验收集了21名最近出院的精神分裂症门诊患者在2-8.5个月期间的被动智能手机传感器数据。我们的研究结果表明,在精神分裂症患者的睡眠、活动、谈话、智能手机使用等自动跟踪行为特征与自我报告的心理健康指标之间存在统计学上显著的关联。利用这些特征,我们建立了能够准确预测精神分裂症心理健康指标综合得分的推理模型,平均误差为得分范围的7.6%。最后,我们讨论了个性化水平的结果,这是考虑到人体内已知的变化所需要的。我们表明,通过利用来自精神分裂症患者群体的知识,有可能训练出准确的个性化模型,这些模型需要更少的个人特定数据来快速适应新用户。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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