Communications Medicine (Oct 2024)

Methodological choices and clinical usefulness for machine learning predictions of outcome in Internet-based cognitive behavioural therapy

  • Nils Hentati Isacsson,
  • Fehmi Ben Abdesslem,
  • Erik Forsell,
  • Magnus Boman,
  • Viktor Kaldo

DOI
https://doi.org/10.1038/s43856-024-00626-4
Journal volume & issue
Vol. 4, no. 1
pp. 1 – 11

Abstract

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Abstract Background While psychological treatments are effective, a substantial portion of patients do not benefit enough. Early identification of those may allow for adaptive treatment strategies and improved outcomes. We aimed to evaluate the clinical usefulness of machine-learning (ML) models predicting outcomes in Internet-based Cognitive Behavioural Therapy, to compare ML-related methodological choices, and guide future use of these. Methods Eighty main models were compared. Baseline variables, weekly symptoms, and treatment activity were used to predict treatment outcomes in a dataset of 6695 patients from regular care. Results We show that the best models use handpicked predictors and impute missing data. No ML algorithm shows clear superiority. They have a mean balanced accuracy of 78.1% at treatment week four, closely matched by regression (77.8%). Conclusions ML surpasses the benchmark for clinical usefulness (67%). Advanced and simple models perform equally, indicating a need for more data or smarter methodological designs to confirm advantages of ML.