Abstract
Background: Although depression has a high rate of recurrence, no prior studies have established a method that could identify the warning signs of its recurrence. Methods: We collected digital data consisting of individual activity records such as location or mobility information (lifelog data) from 89 patients who were on maintenance therapy for depression for a year, using a smartphone application and a wearable device. We assessed depression and its recurrence using both the Kessler Psychological Distress Scale (K6) and the Patient Health Questionnaire-9. Results: A panel vector autoregressive analysis indicated that long sleep time was a important risk factor for the recurrence of depression. Long sleep predicted the recurrence of depression after 3 weeks. Conclusions: The panel vector autoregressive approach can identify the warning signs of depression recurrence; however, the convenient sampling of the present cohort may limit the scope towards drawing a generalised conclusion.
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Kumagai, N., Tajika, A., Hasegawa, A., Kawanishi, N., Horikoshi, M., Shimodera, S., … Furukawa, T. A. (2019). Predicting recurrence of depression using lifelog data: An explanatory feasibility study with a panel VAR approach. BMC Psychiatry, 19(1). https://doi.org/10.1186/s12888-019-2382-2
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