Psychosis Prognosis Predictor: A continuous and uncertainty-aware prediction of treatment outcome in first-episode psychosis.
Daniël P J van OpstalSeyed Mostafa KiaLea JakobMetten SomersIris E C SommerInge Winter-van RossumRené S KahnWiepke CahnHugo G SchnackPublished in: Acta psychiatrica Scandinavica (2024)
We constructed prediction models utilizing a recurrent neural network architecture tailored to clinical scenarios derived from a time series dataset. One crucial aspect we incorporated was the consideration of uncertainty in individual predictions, which enhances the reliability of decision-making based on the model's output. We provided evidence showcasing the significance of leveraging time series data for achieving more accurate treatment outcome prediction in the field of psychiatry.