A systematic review of machine learning and automation in burn wound evaluation: A promising but developing frontier

Burns. 2021 Dec;47(8):1691-1704. doi: 10.1016/j.burns.2021.07.007. Epub 2021 Jul 15.

Abstract

Background: Visual evaluation is the most common method of evaluating burn wounds. Its subjective nature can lead to inaccurate diagnoses and inappropriate burn center referrals. Machine learning may provide an objective solution. The objective of this study is to summarize the literature on ML in burn wound evaluation.

Methods: A systematic review of articles published between January 2000 and January 2021 was performed using PubMed and MEDLINE (OVID). Articles reporting on ML or automation to evaluate burn wounds were included. Keywords included burns, machine/deep learning, artificial intelligence, burn classification technology, and mobile applications. Data were extracted on study design, method of data acquisition, machine learning techniques, and machine learning accuracy.

Results: Thirty articles were included. Nine studies used machine learning and automation to estimate percent total body surface area (%TBSA) burned, 4 calculated fluid estimations, 19 estimated burn depth, 5 estimated need for surgery, and 2 evaluated scarring. Models calculating %TBSA burned demonstrated accuracies comparable to or better than paper methods. Burn depth classification models achieved accuracies of >83%.

Conclusion: Machine learning provides an objective adjunct that may improve diagnostic accuracy in evaluating burn wound severity. Existing models remain in the early stages with future studies needed to assess their clinical feasibility.

Keywords: Burn; Deep learning; Machine learning; Surgery.

Publication types

  • Review
  • Systematic Review

MeSH terms

  • Artificial Intelligence*
  • Automation
  • Body Surface Area
  • Burns*
  • Humans
  • Machine Learning