Keck School of Medicine, University of Southern California, Los Angeles, CA, United States; Los Angeles County Regional Burn Center, Los Angeles County + University of Southern California Medical Center, Los Angeles, CA, United States.
Los Angeles County Regional Burn Center, Los Angeles County + University of Southern California Medical Center, Los Angeles, CA, United States.
Burns. 2021 Dec;47(8):1691-1704. doi: 10.1016/j.burns.2021.07.007. Epub 2021 Jul 15.
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.
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.
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%.
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.
视觉评估是评估烧伤创面最常用的方法。其主观性可能导致诊断不准确和烧伤中心转诊不当。机器学习可能提供一种客观的解决方案。本研究的目的是总结关于烧伤创面评估中机器学习的文献。
使用 PubMed 和 MEDLINE(OVID)对 2000 年 1 月至 2021 年 1 月期间发表的文章进行系统回顾。纳入报告机器学习或自动化评估烧伤创面的文章。关键词包括烧伤、机器/深度学习、人工智能、烧伤分类技术和移动应用程序。提取研究设计、数据采集方法、机器学习技术和机器学习准确性的数据。
共纳入 30 篇文章。9 项研究使用机器学习和自动化来估计总体表烧伤面积(%TBSA),4 项研究计算液体估计值,19 项研究估计烧伤深度,5 项研究估计手术需求,2 项研究评估瘢痕形成。计算%TBSA 烧伤的模型显示出与纸张方法相当或更好的准确性。烧伤深度分类模型的准确率>83%。
机器学习提供了一种客观的辅助手段,可能有助于提高评估烧伤严重程度的诊断准确性。现有的模型仍处于早期阶段,需要进一步研究以评估其临床可行性。