Digital Phenotyping for Stress, Anxiety, and Mild Depression: Systematic Literature Review

May 23, 2024JMIR mHealth and uHealth

Using Digital Data to Track Stress, Anxiety, and Mild Depression: A Review of Studies

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Abstract

Of the 40 studies reviewed, 78% utilized machine learning models to predict behavioral patterns associated with stress, anxiety, and mild depression.

  • Digital phenotyping with smartphones can identify behavioral patterns linked to mental health issues.
  • Participants experiencing stress, anxiety, or mild depression showed fewer location visits, increased phone use, and irregular sleep patterns.
  • Different smartphone sensors, such as GPS and accelerometers, were employed to monitor behaviors like mobility and social interactions.
  • Less mobility in workplace settings was associated with higher performance among employees compared to students and unaffiliated adults.

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