Artificial Intelligence in Depression – Medication Enhancement (AID-ME): A Cluster Randomized Trial of a Deep Learning Enabled Clinical Decision Support System for Personalized Depression Treatment Selection and Management

Author:

Benrimoh David1,Whitmore Kate2,Richard Maud2,Golden Grace3,Perlman Kelly1ORCID,Jalali Sara4,Friesen Timothy4,Barkat Youcef4,Mehltretter Joseph2,Fratila Robert2,Armstrong Caitrin2,Israel Sonia2,Popescu Christina2ORCID,Karp Jordan5,Parikh Sagar6,Golchi Shirin7,Moody Erica8,Shen Junwei7,Gifuni Anthony9,Ferrari Manuela9,Sapra Mamta10,Kloiber Stefan11,Pinard Georges12,Dunlop Boadie13ORCID,Looper Karl14,Ranganathan Mohini15ORCID,Enault Martin16,Beaulieu Serge9ORCID,Rej Soham14,Hersson-Edery Fanny17,Steiner Warren18,Anacleto Alexandra2,Qassim Sabrina19,McGuire-Snieckus Rebecca20,Margolese Howard18ORCID

Affiliation:

1. McGill University

2. Aifred Health

3. University of Western Ontario

4. Douglas Mental Health University Institute

5. Department of Psychiatry, University of Arizona

6. Department of Psychiatry, University of Michigan

7. Department of Epidemiology, Biostatistics, and Occupational Health, McGill University

8. McGill

9. Douglas Mental Health University Institute, McGill University

10. Department of Psychiatry, Salem Veteran Affairs Medical Center

11. Campbell Family Mental Health Research Institute, Centre for Addiction and Mental Health

12. Department of Psychiatry, Institut Universitaire en Santé Mentale de Montréal

13. Emory University School of Medicine

14. Department of Psychiatry, Jewish General Hospital

15. Yale University

16. Relief - The Path of Mental Health

17. Department of Family Medicine, McGill University

18. Department of Psychiatry, McGill University

19. University of Waterloo

20. Barts and the London School of Medicine, United Kingdom

Abstract

Abstract

Major Depressive Disorder (MDD) is a leading cause of disability and there is a paucity of tools to personalize and manage treatments. A cluster-randomized, patient-and-rater-blinded, clinician-partially-blinded study was conducted to assess the effectiveness and safety of the Aifred Clinical Decision Support System (CDSS) facilitating algorithm-guided care and predicting medication remission probabilities using clinical data. Clinicians were randomized to the Active (CDSS access) or Active-Control group (questionnaires and guidelines access). Primary outcome was remission (<11 points on the Montgomery Asberg Depression Rating Scale (MADRS) at study exit). Of 74 eligible patients, 61 (42 Active, 19 Active-Control) completed at least two MADRS (analysis set). Remission was higher in the Active group (n = 12/42 (28.6%)) compared to Active-Control (0/19 (0%)) (p = 0.01, Fisher’s exact test). No adverse events were linked to the CDSS. This is the first effective and safe longitudinal use of an artificial intelligence-powered CDSS to improve MDD outcomes.

Publisher

Springer Science and Business Media LLC

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