Comprehensive Symptom Prediction in Inpatients With Acute Psychiatric Disorders Using Wearable-Based Deep Learning Models: Development and Validation Study

Nov 13, 2024Journal of medical Internet research

Using wearable devices and deep learning to predict symptoms in hospitalized patients with acute psychiatric disorders

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Abstract

Among 244 enrolled participants, 191 (78.3%) were included in the final analysis of wearable-based deep learning models for predicting psychiatric symptoms.

  • Deep learning models using wearable sensor data effectively classified symptom deterioration and predicted symptom severity.
  • The Single-Deterioration and Multi-Deterioration models achieved overall accuracy values of 0.75 in cross-validation and 0.73 in external validation.
  • The Single-Score and Multi-Score models attained R² values of 0.78 and 0.83 in cross-validation, and 0.66 and 0.74 in external validation, respectively.
  • The Multi-Score model demonstrated superior performance compared to Single models.
  • Considerable variations in sensor data were observed across different wards and hospitals, highlighting challenges in developing clinical decision support systems.

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