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3
Behavioral Indicators on a Mobile Sensing Platform Predict Clinically Validated Psychiatric Symptoms of Mood and Anxiety Disorders.移动传感平台上的行为指标可预测经临床验证的情绪和焦虑症的精神症状。
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J Med Internet Res. 2017 Mar 3;19(3):e62. doi: 10.2196/jmir.6820.
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J Am Med Inform Assoc. 2016 May;23(3):538-43. doi: 10.1093/jamia/ocv200. Epub 2016 Mar 14.
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The NIMH Research Domain Criteria Initiative: Background, Issues, and Pragmatics.美国国立精神卫生研究所研究领域标准计划:背景、问题与务实做法
Psychophysiology. 2016 Mar;53(3):286-97. doi: 10.1111/psyp.12518.
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Mobile Behavioral Sensing for Outpatients and Inpatients With Schizophrenia.针对精神分裂症门诊患者和住院患者的移动行为感知
Psychiatr Serv. 2016 May 1;67(5):558-61. doi: 10.1176/appi.ps.201500130. Epub 2015 Dec 15.
9
Mobile Phone Sensor Correlates of Depressive Symptom Severity in Daily-Life Behavior: An Exploratory Study.日常生活行为中手机传感器与抑郁症状严重程度的相关性:一项探索性研究。
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J Behav Addict. 2015 Jun;4(2):85-92. doi: 10.1556/2006.4.2015.010.

利用手机和可穿戴传感技术追踪大学生的抑郁动态

Tracking Depression Dynamics in College Students Using Mobile Phone and Wearable Sensing.

作者信息

Wang Rui, Wang Weichen, Dasilva Alex, Huckins Jeremy F, Kelley William M, Heatherton Todd F, Campbell Andrew T

机构信息

Dartmouth College, Computer Science, Hanover, NH, 03755, USA.

Dartmouth College, Department of Psychological and Brain Sciences, Hanover, NH, 03755, USA.

出版信息

Proc ACM Interact Mob Wearable Ubiquitous Technol. 2018 Mar;2(1). doi: 10.1145/3191775. Epub 2018 Mar 26.

DOI:10.1145/3191775
PMID:39449996
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11501090/
Abstract

There are rising rates of depression on college campuses. Mental health services on our campuses are working at full stretch. In response researchers have proposed using mobile sensing for continuous mental health assessment. Existing work on understanding the relationship between mobile sensing and depression, however, focuses on generic behavioral features that do not map to major depressive disorder symptoms defined in the standard mental disorders diagnostic manual (DSM-5). We propose a new approach to predicting depression using passive sensing data from students' smartphones and wearables. We propose a set of that proxy the DSM-5 defined depression symptoms specifically designed for college students. We present results from a study of 83 undergraduate students at Dartmouth College across two 9-week terms during the winter and spring terms in 2016. We identify a number of important new associations between symptom features and student self reported PHQ-8 and PHQ-4 depression scores. The study captures depression dynamics of the students at the beginning and end of term using a pre-post PHQ-8 and week by week changes using a weekly administered PHQ-4. Importantly, we show that symptom features derived from phone and wearable sensors can predict whether or not a student is depressed on a week by week basis with 81.5% recall and 69.1% precision.

摘要

大学校园里抑郁症的发病率在上升。我们校园的心理健康服务正全力运转。作为回应,研究人员提议使用移动传感技术进行持续的心理健康评估。然而,现有的关于理解移动传感与抑郁症之间关系的工作,侧重于一般行为特征,这些特征与标准精神障碍诊断手册(DSM - 5)中定义的重度抑郁症症状不对应。我们提出一种新方法,利用学生智能手机和可穿戴设备的被动传感数据来预测抑郁症。我们提出了一组专门为大学生设计的、可替代DSM - 5定义的抑郁症症状的指标。我们展示了对达特茅斯学院83名本科生在2016年冬春两季两个为期9周的学期的研究结果。我们确定了症状特征与学生自我报告的PHQ - 8和PHQ - 4抑郁评分之间的一些重要新关联。该研究使用PHQ - 8前后测来捕捉学期初和学期末学生的抑郁动态,并使用每周 administered PHQ - 4来捕捉每周的变化。重要的是,我们表明从手机和可穿戴传感器得出的症状特征能够以81.5%的召回率和69.1%的精确率逐周预测学生是否抑郁。