Review of machine learning solutions for eating disorders

Sreejita Ghosh, Pia Burger, Mladena Simeunovic-Ostojic, Joyce Maas, Milan Petkovic

Research output: Contribution to journalReview articlepeer-review

Abstract

Background: Eating Disorders (EDs) are one of the most complex psychiatric disorders, with significant impairment of psychological and physical health, and psychosocial functioning, and are associated with low rates of early detection, low recovery and high relapse rates. This underscores the need for better diagnostic and treatment methods. Objective: This narrative review explores current Machine Learning (ML) and Artificial Intelligence (AI) applications in the domain of EDs, with a specific emphasis on clinical management in treatment settings. The primary objective are to (i) decrease the knowledge gap between ED researchers and AI -practitioners, by presenting the current state-of-the-art AI applications (including models for causality) in different ED use -cases; (ii) identify limitations of these existing AI interventions and how to address them. Results: AI/ML methods have been applied in different ED use -cases, including ED risk factor identification and incidence prediction (including the analysis of social media content in the general population), diagnosis, monitoring patients and treatment response and prognosis in clinical populations. A comparative analysis of AItechniques deployed in these use -cases have been performed, considering factors such as complexity, flexibility, functionality, explainability and adaptability to healthcare constraints. Conclusion: Multiple restrictions have been identified in the existing methods in ML and Causality in terms of achieving actionable healthcare for ED, like lack of good quality and quantity of data for models to train on, while requiring models to be flexible, high -performing, yet being explainable and producing counterfactual explanations, for ensuring the fairness and trustworthiness of its decisions. We conclude that to overcome these limitations and for future AI research and application in clinical management of ED, (i) careful considerations are required with regards to AI -model selection, and (ii) joint efforts from ED researcher and patient community are essential in building better quality and quantity of dedicated ED datasets and secure AI -solution framework.
Original languageEnglish
Article number105526
Number of pages18
JournalInternational Journal of Medical Informatics
Volume189
Early online dateJun 2024
DOIs
Publication statusPublished - Sept 2024

Keywords

  • Actionable healthcare
  • Causality
  • Eating disorders
  • Machine learning

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