Harnessing Context Sensing to Develop a Mobile Intervention for Depression

被引:391
作者
Burns, Michelle Nicole [1 ]
Begale, Mark [1 ]
Duffecy, Jennifer [1 ]
Gergle, Darren [2 ]
Karr, Chris J. [3 ]
Giangrande, Emily [1 ]
Mohr, David C. [1 ]
机构
[1] Northwestern Univ, Feinberg Sch Med, Dept Prevent Med, Chicago, IL 60611 USA
[2] Northwestern Univ, Dept Commun Studies, Evanston, IL USA
[3] Audacious Software, Chicago, IL USA
关键词
Depression; behavior therapy; telemedicine; mobile health; mobile phone; cellular phone; sensors; data mining; artificial intelligence; context-aware systems; PSYCHOLOGICAL TREATMENTS; ACTIVITY RECOGNITION; ANXIETY DISORDERS; PRIMARY-CARE; HEALTH; MOOD; COMORBIDITY; PREVALENCE; ADHERENCE; SEVERITY;
D O I
10.2196/jmir.1838
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Mobile phone sensors can be used to develop context-aware systems that automatically detect when patients require assistance. Mobile phones can also provide ecological momentary interventions that deliver tailored assistance during problematic situations. However, such approaches have not yet been used to treat major depressive disorder. Objective: The purpose of this study was to investigate the technical feasibility, functional reliability, and patient satisfaction with Mobilyze!, a mobile phone-and Internet-based intervention including ecological momentary intervention and context sensing. Methods: We developed a mobile phone application and supporting architecture, in which machine learning models (ie, learners) predicted patients' mood, emotions, cognitive/motivational states, activities, environmental context, and social context based on at least 38 concurrent phone sensor values (eg, global positioning system, ambient light, recent calls). The website included feedback graphs illustrating correlations between patients' self-reported states, as well as didactics and tools teaching patients behavioral activation concepts. Brief telephone calls and emails with a clinician were used to promote adherence. We enrolled 8 adults with major depressive disorder in a single-arm pilot study to receive Mobilyze! and complete clinical assessments for 8 weeks. Results: Promising accuracy rates (60% to 91%) were achieved by learners predicting categorical contextual states (eg, location). For states rated on scales (eg, mood), predictive capability was poor. Participants were satisfied with the phone application and improved significantly on self-reported depressive symptoms (beta(week) = -.82, P<.001, per-protocol Cohen d = 3.43) and interview measures of depressive symptoms (beta(week) = -.81, P < .001, per-protocol Cohen d = 3.55). Participants also became less likely to meet criteria for major depressive disorder diagnosis (b(week) = -.65, P = .03, per-protocol remission rate = 85.71%). Comorbid anxiety symptoms also decreased (beta(week) = -.71, P < .001, per-protocol Cohen d = 2.58). Conclusions: Mobilyze! is a scalable, feasible intervention with preliminary evidence of efficacy. To our knowledge, it is the first ecological momentary intervention for unipolar depression, as well as one of the first attempts to use context sensing to identify mental health-related states. Several lessons learned regarding technical functionality, data mining, and software development process are discussed.
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页数:17
相关论文
共 60 条
[1]  
Addis M., 2004, Overcoming Depression One Step at a Time
[2]  
Andersson Gerhard, 2009, Cognitive Behaviour Therapy, V38, P196, DOI 10.1080/16506070903318960
[3]  
[Anonymous], 2014, C4. 5: programs for machine learning
[4]  
[Anonymous], 1984, OLSHEN STONE CLASSIF, DOI 10.2307/2530946
[5]  
[Anonymous], 1997, MACHINE LEARNING, MCGRAW-HILL SCIENCE/ENGINEERING/MATH
[6]   Activity recognition from user-annotated acceleration data [J].
Bao, L ;
Intille, SS .
PERVASIVE COMPUTING, PROCEEDINGS, 2004, 3001 :1-17
[7]  
BATEMAN C, 2005, DESIGNING REWARDS GA
[8]  
Brandt, 1988, NEUROPSY NEUROPSY BE, V1, P111, DOI DOI 10.1001/ARCHNEUR.1993.00540060039014
[9]  
Breiman L, 1996, MACH LEARN, V24, P123, DOI 10.1023/A:1018054314350
[10]  
Brown H., 1999, Applied mixed models in medicine