» Articles » PMID: 26180009

Mobile Phone Sensor Correlates of Depressive Symptom Severity in Daily-Life Behavior: An Exploratory Study

Overview
Publisher JMIR Publications
Date 2015 Jul 17
PMID 26180009
Citations 252
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Depression is a common, burdensome, often recurring mental health disorder that frequently goes undetected and untreated. Mobile phones are ubiquitous and have an increasingly large complement of sensors that can potentially be useful in monitoring behavioral patterns that might be indicative of depressive symptoms.

Objective: The objective of this study was to explore the detection of daily-life behavioral markers using mobile phone global positioning systems (GPS) and usage sensors, and their use in identifying depressive symptom severity.

Methods: A total of 40 adult participants were recruited from the general community to carry a mobile phone with a sensor data acquisition app (Purple Robot) for 2 weeks. Of these participants, 28 had sufficient sensor data received to conduct analysis. At the beginning of the 2-week period, participants completed a self-reported depression survey (PHQ-9). Behavioral features were developed and extracted from GPS location and phone usage data.

Results: A number of features from GPS data were related to depressive symptom severity, including circadian movement (regularity in 24-hour rhythm; r=-.63, P=.005), normalized entropy (mobility between favorite locations; r=-.58, P=.012), and location variance (GPS mobility independent of location; r=-.58, P=.012). Phone usage features, usage duration, and usage frequency were also correlated (r=.54, P=.011, and r=.52, P=.015, respectively). Using the normalized entropy feature and a classifier that distinguished participants with depressive symptoms (PHQ-9 score ≥5) from those without (PHQ-9 score <5), we achieved an accuracy of 86.5%. Furthermore, a regression model that used the same feature to estimate the participants' PHQ-9 scores obtained an average error of 23.5%.

Conclusions: Features extracted from mobile phone sensor data, including GPS and phone usage, provided behavioral markers that were strongly related to depressive symptom severity. While these findings must be replicated in a larger study among participants with confirmed clinical symptoms, they suggest that phone sensors offer numerous clinical opportunities, including continuous monitoring of at-risk populations with little patient burden and interventions that can provide just-in-time outreach.

Citing Articles

Multimodal Digital Phenotyping Study in Patients With Major Depressive Episodes and Healthy Controls (Mobile Monitoring of Mood): Observational Longitudinal Study.

Aledavood T, Luong N, Baryshnikov I, Darst R, Heikkila R, Holmen J JMIR Ment Health. 2025; 12:e63622.

PMID: 39984168 PMC: 11890149. DOI: 10.2196/63622.


Exploring the Relationship Between Smartphone GPS Patterns and Quality of Life in Patients With Advanced Cancer and Their Family Caregivers: Longitudinal Study.

Lee K, Azuero A, Engler S, Kumar S, Puga F, Wright A JMIR Form Res. 2025; 9:e59161.

PMID: 39924302 PMC: 11830490. DOI: 10.2196/59161.


App-Based Ecological Momentary Assessment of Problematic Smartphone Use During Examination Weeks in University Students: 6-Week Observational Study.

Ahn J, Jeong I, Park S, Lee J, Jeon M, Lee S J Med Internet Res. 2025; 27:e69320.

PMID: 39908075 PMC: 11840384. DOI: 10.2196/69320.


Identifying Digital Markers of Attention-Deficit/Hyperactivity Disorder (ADHD) in a Remote Monitoring Setting: Prospective Observational Study.

Sankesara H, Denyer H, Sun S, Deng Q, Ranjan Y, Conde P JMIR Form Res. 2025; 9:e54531.

PMID: 39885373 PMC: 11798566. DOI: 10.2196/54531.


Investigating Smartphone-Based Sensing Features for Depression Severity Prediction: Observation Study.

Terhorst Y, Messner E, Opoku Asare K, Montag C, Kannen C, Baumeister H J Med Internet Res. 2025; 27:e55308.

PMID: 39883512 PMC: 11826944. DOI: 10.2196/55308.


References
1.
Kroenke K, Spitzer R, Williams J . The PHQ-9: validity of a brief depression severity measure. J Gen Intern Med. 2001; 16(9):606-13. PMC: 1495268. DOI: 10.1046/j.1525-1497.2001.016009606.x. View

2.
Wang P, Simon G, Kessler R . The economic burden of depression and the cost-effectiveness of treatment. Int J Methods Psychiatr Res. 2003; 12(1):22-33. PMC: 6878402. DOI: 10.1002/mpr.139. View

3.
Kessler R, Berglund P, Demler O, Jin R, Merikangas K, Walters E . Lifetime prevalence and age-of-onset distributions of DSM-IV disorders in the National Comorbidity Survey Replication. Arch Gen Psychiatry. 2005; 62(6):593-602. DOI: 10.1001/archpsyc.62.6.593. View

4.
Kessler R, Berglund P, Demler O, Jin R, Koretz D, Merikangas K . The epidemiology of major depressive disorder: results from the National Comorbidity Survey Replication (NCS-R). JAMA. 2003; 289(23):3095-105. DOI: 10.1001/jama.289.23.3095. View

5.
Thomee S, Harenstam A, Hagberg M . Mobile phone use and stress, sleep disturbances, and symptoms of depression among young adults--a prospective cohort study. BMC Public Health. 2011; 11:66. PMC: 3042390. DOI: 10.1186/1471-2458-11-66. View