Human-AI Technology Lab at UVA
Mood Ring
Mood Ring Detecting Changes in Adolescent Depression

Adolescent depression and suicide are increasingly prominent health issues that require thorough diagnosis, assessment and treatment initiatives by pediatric health care. Minimal reassessment and follow up care of adolescents’ depression can lead to worsening symptoms, increased costs to the child’s health, and increased healthcare utilization. The aim of this study is to use passive sensing and machine learning to monitor adolescent’s daily behavior patterns and provide constant indicators for changes in depressive symptoms. This study will develop a machine learning pipeline from adolescents’ smartphone sensor and activity tracker data and determine the reliability of using passive sensing to predict self-reported depressive symptoms. A mobile application, MoodRing, will be developed from the machine learning pipeline to display health feedback to adolescents and parents, provide just-in-time self-management interventions, and update healthcare professionals for more efficient clinical decision-making and patient care.

Contact

If you feel like your skills and interests are aligned with this project, please reach out to Matt Clark to get involved!

Publications

2024

2022

Predicting Depression in Adolescents Using Mobile and Wearable Sensors: Multimodal Machine Learning–Based Exploratory Study
Predicting Depression in Adolescents Using Mobile and Wearable Sensors: Multimodal Machine Learning–Based Exploratory Study
Tahsin Mullick, Ana Radovic, Sam Shaaban, Afsaneh Doryab
JMIR Formative Research  ·  24 Jun 2022  ·  doi:10.2196/35807

2021

An Automated Machine Learning Pipeline for Monitoring and Forecasting Mobile Health Data
An Automated Machine Learning Pipeline for Monitoring and Forecasting Mobile Health Data
Anna Bonaquist, Meredith Grehan, Owen Haines, Joseph Keogh, Tahsin Mullick, Neil Singh, Sam Shaaban, Ana Radovic, Afsaneh Doryab
2021 Systems and Information Engineering Design Symposium (SIEDS)  ·  30 Apr 2021  ·  doi:10.1109/SIEDS52267.2021.9483755

News

Project Team

Past Contributors