Detecting Depression and Predicting its Onset Using Longitudinal Symptoms Captured by Passive Sensing: A Machine Learning Approach With Robust Feature Selection
We present a machine learning approach that uses data from smartphones and fitness trackers of 138 college students to identify students that experienced depressive symptoms at the end of the semester and students whose depressive symptoms worsened over the semester. Our novel approach is a feature extraction technique that allows us to select meaningful features indicative of depressive symptoms from longitudinal data. It allows us to detect the presence of post-semester depressive symptoms with an accuracy of 85.7% and change in symptom severity with an accuracy of 85.4%. It also predicts these outcomes with an accuracy of >80%, 11鈥15 weeks before the end of the semester, allowing ample time for pre-emptive interventions. Our work has significant implications for the detection of health outcomes using longitudinal behavioral data and limited ground truth. By detecting change and predicting symptoms several weeks before their onset, our work also has implications for preventing depression.
Anind K. Dey
Projects in Health & Well-Being
- Using Everyday Routines for Understanding Health Behaviors
- Who Are You Asking?: Qualitative Methods for Involving AAC Users as Primary Research Participants
- Where Are My Parents?: Information Needs of Hospitalized Children
- Parenting with Alexa: Exploring the Introduction of Smart Speakers on Family Dynamics
- 鈥淓avesdropping鈥: An Information Source for Inpatients
- Detecting Depression and Predicting its Onset Using Longitudinal Symptoms Captured by Passive Sensing: A Machine Learning Approach With Robust Feature Selection
- Mobile Assessment of Acute Effects of Marijuana on Cognitive Functioning in Young Adults: Observational Study