Digital phenotyping data and anomaly detection methods to assess changes in mood and anxiety symptoms across a transdiagnostic clinical sample

May 29, 2024Acta psychiatrica Scandinavica

Using digital data and detection methods to track mood and anxiety changes across different mental health conditions

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Abstract

The anomaly detection model predicted symptom changes of 4 points or greater for depression and anxiety across two patient cohorts.

  • The model achieved an area under the ROC curve of 0.65 for depression and 0.80 for anxiety.
  • Predictions of significant symptom changes were accurate at least 7 days in advance for both conditions.
  • Active data alone accounted for approximately 52% of symptom variability in depression/anxiety and 75% in schizophrenia.
  • Anomaly detection methods demonstrated preliminary reliability and validity in predicting mood and anxiety changes using smartphone data.
  • Results were consistent across different patient groups and geographical locations (India and the US).

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Full Text

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