Mantelakis Angelos, Assael Yannis, Sorooshian Parviz, Khajuria Ankur
Department of Surgery and Cancer, Imperial College London, UK.
University of Oxford, UK.
Plast Reconstr Surg Glob Open. 2021 Jun 24;9(6):e3638. doi: 10.1097/GOX.0000000000003638. eCollection 2021 Jun.
Machine learning (ML) is a set of models and methods that can detect patterns in vast amounts of data and use this information to perform various kinds of decision-making under uncertain conditions. This review explores the current role of this technology in plastic surgery by outlining the applications in clinical practice, diagnostic and prognostic accuracies, and proposed future direction for clinical applications and research.
EMBASE, MEDLINE, CENTRAL and ClinicalTrials.gov were searched from 1990 to 2020. Any clinical studies (including case reports) which present the diagnostic and prognostic accuracies of machine learning models in the clinical setting of plastic surgery were included. Data collected were clinical indication, model utilised, reported accuracies, and comparison with clinical evaluation.
The database identified 1181 articles, of which 51 articles were included in this review. The clinical utility of these algorithms was to assist clinicians in diagnosis prediction (n=22), outcome prediction (n=21) and pre-operative planning (n=8). The mean accuracy is 88.80%, 86.11% and 80.28% respectively. The most commonly used models were neural networks (n=31), support vector machines (n=13), decision trees/random forests (n=10) and logistic regression (n=9).
ML has demonstrated high accuracies in diagnosis and prognostication of burn patients, congenital or acquired facial deformities, and in cosmetic surgery. There are no studies comparing ML to clinician's performance. Future research can be enhanced using larger datasets or utilising data augmentation, employing novel deep learning models, and applying these to other subspecialties of plastic surgery.
机器学习(ML)是一组模型和方法,可在大量数据中检测模式,并利用这些信息在不确定条件下进行各种决策。本综述通过概述其在临床实践中的应用、诊断和预后准确性以及临床应用和研究的未来方向,探讨了该技术在整形手术中的当前作用。
检索了1990年至2020年的EMBASE、MEDLINE、CENTRAL和ClinicalTrials.gov。纳入任何展示机器学习模型在整形手术临床环境中的诊断和预后准确性的临床研究(包括病例报告)。收集的数据包括临床适应症、使用的模型、报告的准确性以及与临床评估的比较。
数据库共识别出1181篇文章,其中51篇纳入本综述。这些算法的临床效用在于协助临床医生进行诊断预测(n = 22)、结果预测(n = 21)和术前规划(n = 8)。平均准确率分别为88.80%、86.11%和80.28%。最常用的模型是神经网络(n = 31)、支持向量机(n = 13)、决策树/随机森林(n = 10)和逻辑回归(n = 9)。
机器学习在烧伤患者、先天性或后天性面部畸形以及美容手术的诊断和预后方面已显示出较高的准确性。尚无将机器学习与临床医生表现进行比较的研究。未来的研究可以使用更大的数据集或利用数据增强、采用新型深度学习模型并将其应用于整形手术的其他亚专业来加以改进。