Student Mental Health Screening via Fitbit Data Collected During the COVID-19 Pandemic

Agentic AI
Published: arXiv: 2601.16324v1
Authors

Rebecca Lopez Avantika Shrestha ML Tlachac Kevin Hickey Xingtong Guo Shichao Liu Elke Rundensteiner

Abstract

College students experience many stressors, resulting in high levels of anxiety and depression. Wearable technology provides unobtrusive sensor data that can be used for the early detection of mental illness. However, current research is limited concerning the variety of psychological instruments administered, physiological modalities, and time series parameters. In this research, we collect the Student Mental and Environmental Health (StudentMEH) Fitbit dataset from students at our institution during the pandemic. We provide a comprehensive assessment of the ability of predictive machine learning models to screen for depression, anxiety, and stress using different Fitbit modalities. Our findings indicate potential in physiological modalities such as heart rate and sleep to screen for mental illness with the F1 scores as high as 0.79 for anxiety, the former modality reaching 0.77 for stress screening, and the latter modality achieving 0.78 for depression. This research highlights the potential of wearable devices to support continuous mental health monitoring, the importance of identifying best data aggregation levels and appropriate modalities for screening for different mental ailments.

Paper Summary

Problem
College students are experiencing high levels of anxiety and depression due to various stressors, including the COVID-19 pandemic. Early detection and intervention are crucial to prevent the worsening of mental health issues. However, traditional methods of mental health screening can be invasive, time-consuming, and expensive. This research aims to explore the potential of wearable technology, specifically Fitbit data, to screen for mental illness in college students.
Key Innovation
This study is unique in its comprehensive assessment of the ability of predictive machine learning models to screen for depression, anxiety, and stress using different Fitbit modalities (e.g., heart rate, sleep, and physical activity). The researchers collected a large dataset from 160 college students and applied various machine learning algorithms to identify the most effective models for detecting mental health issues.
Practical Impact
The findings of this research have significant practical implications for mental health monitoring and early intervention. By using wearable devices to collect physiological data, mental health professionals can identify students at risk of developing depression, anxiety, or stress. This can enable timely interventions, such as counseling or therapy, to prevent the worsening of mental health issues. The study's results also highlight the importance of sleep data in detecting depressive symptoms and physical activity patterns in detecting anxiety symptoms.
Analogy / Intuitive Explanation
Think of the Fitbit data as a "biological fingerprint" that can reveal underlying mental health issues. Just as a fingerprint can identify an individual, the patterns of physiological data collected by the Fitbit can indicate the presence of mental health conditions. By analyzing this data, machine learning models can "learn" to recognize these patterns and predict the likelihood of mental health issues. This can enable early detection and intervention, much like how medical screenings can detect diseases in their early stages.
Paper Information
Categories:
cs.LG
Published Date:

arXiv ID:

2601.16324v1

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