Artificial intelligence in the management and treatment of burns: a systematic review

Author:

E Moura Francisco Serra123,Amin Kavit23,Ekwobi Chidi3

Affiliation:

1. Department of Plastic Surgery, Norfolk and Norwich University Hospital, Colney Lane, Norwich, NR4 7UY, UK

2. Department of Plastic Surgery, Manchester University NHS Foundation Trust, UK

3. Department of Plastic Surgery, Lancashire Teaching Hospitals NHS Foundation Trust, Royal Preston Hospital, Preston, UK

Abstract

Abstract Background Artificial intelligence (AI) is an innovative field with potential for improving burn care. This article provides an updated review on machine learning in burn care and discusses future challenges and the role of healthcare professionals in the successful implementation of AI technologies. Methods A systematic search was carried out on MEDLINE, Embase and PubMed databases for English-language articles studying machine learning in burns. Articles were reviewed quantitatively and qualitatively for clinical applications, key features, algorithms, outcomes and validation methods. Results A total of 46 observational studies were included for review. Assessment of burn depth (n = 26), support vector machines (n = 19) and 10-fold cross-validation (n = 11) were the most common application, algorithm and validation tool used, respectively. Conclusion AI should be incorporated into clinical practice as an adjunct to the experienced burns provider once direct comparative analysis to current gold standards outlining its benefits and risks have been studied. Future considerations must include the development of a burn-specific common framework. Authors should use common validation tools to allow for effective comparisons. Level I/II evidence is required to produce robust proof about clinical and economic impacts.

Publisher

Oxford University Press (OUP)

Subject

Critical Care and Intensive Care Medicine,Dermatology,Biomedical Engineering,Emergency Medicine,Immunology and Allergy,Surgery

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