Publication | Open Access
Personalised depression forecasting using mobile sensor data and ecological momentary assessment
37
Citations
52
References
2022
Year
Our results suggest that personalisation using subject-dependent standardisation and transfer learning can improve predictions and forecasts, respectively, of depressive symptoms in participants of a digital depression intervention. We discuss technical and clinical limitations of this approach, avenues for future investigations, and how personalised machine learning architectures may be implemented to improve existing digital interventions for depression.
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