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Deep learning for the prediction of clinical outcomes in internet-delivered CBT for depression and anxiety

Author

Listed:
  • Niranjani Prasad
  • Isabel Chien
  • Tim Regan
  • Angel Enrique
  • Jorge Palacios
  • Dessie Keegan
  • Usman Munir
  • Ryutaro Tanno
  • Hannah Richardson
  • Aditya Nori
  • Derek Richards
  • Gavin Doherty
  • Danielle Belgrave
  • Anja Thieme

Abstract

In treating depression and anxiety, just over half of all clients respond. Monitoring and obtaining early client feedback can allow for rapidly adapted treatment delivery and improve outcomes. This study seeks to develop a state-of-the-art deep-learning framework for predicting clinical outcomes in internet-delivered Cognitive Behavioural Therapy (iCBT) by leveraging large-scale, high-dimensional time-series data of client-reported mental health symptoms and platform interaction data. We use de-identified data from 45,876 clients on SilverCloud Health, a digital platform for the psychological treatment of depression and anxiety. We train deep recurrent neural network (RNN) models to predict whether a client will show reliable improvement by the end of treatment using clinical measures, interaction data with the iCBT program, or both. Outcomes are based on total improvement in symptoms of depression (Patient Health Questionnaire-9, PHQ-9) and anxiety (Generalized Anxiety Disorder-7, GAD-7), as reported within the iCBT program. Using internal and external datasets, we compare the proposed models against several benchmarks and rigorously evaluate them according to their predictive accuracy, sensitivity, specificity and AUROC over treatment. Our proposed RNN models consistently predict reliable improvement in PHQ-9 and GAD-7, using past clinical measures alone, with above 87% accuracy and 0.89 AUROC after three or more review periods, outperforming all benchmark models. Additional evaluations demonstrate the robustness of the achieved models across (i) different health services; (ii) geographic locations; (iii) iCBT programs, and (iv) client severity subgroups. Results demonstrate the robust performance of dynamic prediction models that can yield clinically helpful prognostic information ready for implementation within iCBT systems to support timely decision-making and treatment adjustments by iCBT clinical supporters towards improved client outcomes.

Suggested Citation

  • Niranjani Prasad & Isabel Chien & Tim Regan & Angel Enrique & Jorge Palacios & Dessie Keegan & Usman Munir & Ryutaro Tanno & Hannah Richardson & Aditya Nori & Derek Richards & Gavin Doherty & Danielle, 2023. "Deep learning for the prediction of clinical outcomes in internet-delivered CBT for depression and anxiety," PLOS ONE, Public Library of Science, vol. 18(11), pages 1-20, November.
  • Handle: RePEc:plo:pone00:0272685
    DOI: 10.1371/journal.pone.0272685
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