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Accepted for/Published in: JMIR mHealth and uHealth

Date Submitted: Feb 22, 2022
Date Accepted: Sep 21, 2022

The final, peer-reviewed published version of this preprint can be found here:

Smartphone-Tracked Digital Markers of Momentary Subjective Stress in College Students: Idiographic Machine Learning Analysis

Aalbers G, Hendrickson AT, Vanden Abeele MM, Keijsers L

Smartphone-Tracked Digital Markers of Momentary Subjective Stress in College Students: Idiographic Machine Learning Analysis

JMIR Mhealth Uhealth 2023;11:e37469

DOI: 10.2196/37469

PMID: 36951924

PMCID: 10132040

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Smartphone-tracked digital biomarkers of stress: An idiographic machine learning perspective

  • George Aalbers; 
  • Andrew T. Hendrickson; 
  • Mariek M.P. Vanden Abeele; 
  • Loes Keijsers

ABSTRACT

Background:

Stress is an important causal factor in common mental disorders such as burnout and depression. To aid in the early detection of chronic stress, machine learning models are increasingly trained to learn mathematical mappings from digital footprints to self-reported stress. Earlier work has studied general principles in population-wide studies, but the extent to which findings apply to individuals is understudied.

Objective:

We investigated 1) if features of smartphone usage log data (e.g., Messenger application use frequency) are digital biomarkers that can be used to predict momentary subjective stress, 2) if these biomarkers are positively or negatively related to momentary subjective stress (at the group and individual levels), and 3) how accurate these potential digital biomarkers are at recognizing momentary subjective stress on a person-by-person basis in out-of-sample data.

Methods:

Using a large-scale, intensive longitudinal dataset (N = 224, 44,381 observations), we trained machine learning models to predict momentary subjective stress, utilizing explainable artificial intelligence to identify potential digital biomarkers.

Results:

We identified prolonged use of Messenger and Social Network site applications and sleep proxies as valid digital biomarkers. The relationships of these markers with momentary subjective stress as well as predictive accuracy of models differed from person to person. In the majority of individuals, model predictions correlated positively and significantly with self-reported stress.

Conclusions:

Our findings indicate smartphone log data can be utilized as digital biomarkers of momentary subjective stress, but the relationship differs from person to person.


 Citation

Please cite as:

Aalbers G, Hendrickson AT, Vanden Abeele MM, Keijsers L

Smartphone-Tracked Digital Markers of Momentary Subjective Stress in College Students: Idiographic Machine Learning Analysis

JMIR Mhealth Uhealth 2023;11:e37469

DOI: 10.2196/37469

PMID: 36951924

PMCID: 10132040

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