Abstract
Machine learning methods hold promise for personalized care in psychiatry, demonstrating the potential to tailor treatment decisions and stratify patients into clinically meaningful taxonomies. Subsequently, publication counts applying machine learning methods have risen, with different data modalities, mathematically distinct models, and samples of varying size being used to train and test models with the promise of clinical translation. Consequently, and in part due to the preliminary nature of such works, many studies have reported largely varying degrees of accuracy, raising concerns over systematic overestimation and methodological inconsistencies. Furthermore, a lack of procedural evaluation guidelines for non-expert medical professionals and funding bodies leaves many in the field with no means to systematically evaluate the claims, maturity, and clinical readiness of a project. Given the potential of machine learning methods to transform patient care, albeit, contingent on the rigor of employed methods and their dissemination, we deem it necessary to provide a review of current methods, recommendations, and future directions for applied machine learning in psychiatry. In this review we will cover issues of best practice for model training and evaluation, sources of systematic error and overestimation, model explainability vs. trust, the clinical implementation of AI systems, and finally, future directions for our field.
Highlights
Open AccessRecommendations and future directions for supervised machine learning in psychiatry Micah Cearns 1, Tim Hahn[2] and Bernhard T
1234567890():,; 1234567890():,; 1234567890():,; 1234567890():,; Introduction Accurate prediction of intervention response and illness trajectories remains an elusive problem for modern psychiatry, with contemporary practitioners still relying on a ‘wait and see’ approach for the treatment of psychiatric disorders[1]
Psychiatry has commonly focused on statistical inference over prediction[3,11]
Summary
Recommendations and future directions for supervised machine learning in psychiatry Micah Cearns 1, Tim Hahn[2] and Bernhard T. Baune[3,4,5]
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