Mobile Sensing and Support for People With Depression: A Pilot Trial in the Wild.
Fabian WahleTobias KowatschElgar FleischMichael RuferSteffi WeidtPublished in: JMIR mHealth and uHealth (2016)
Proxies for social and physical behavior derived from smartphone sensor data was successfully deployed to deliver context-sensitive and personalized interventions to people with depressive symptoms. Subjects who used the app for an extended period of time showed significant reduction in self-reported symptom severity. Nonlinear classification models trained on features extracted from smartphone sensor data including Wifi, accelerometer, GPS, and phone use, demonstrated a proof of concept for the detection of depression superior to random classification. While findings of effectiveness must be reproduced in a RCT to proof causation, they pave the way for a new generation of digital health interventions leveraging smartphone sensors to provide context sensitive information for in-situ support and unobtrusive monitoring of critical mental health states.
Keyphrases
- mental health
- depressive symptoms
- physical activity
- machine learning
- sleep quality
- deep learning
- electronic health record
- big data
- social support
- healthcare
- mental illness
- public health
- randomized controlled trial
- health information
- systematic review
- data analysis
- artificial intelligence
- loop mediated isothermal amplification
- social media
- label free
- health promotion