Predicting the Reparability of Rotator Cuff Tears: Machine Learning and Comparison With Previous Scoring Systems.

IF 4.2 1区 医学 Q1 ORTHOPEDICS American Journal of Sports Medicine Pub Date : 2024-11-03 DOI:10.1177/03635465241287527
Woo-Sung Do, Seung-Hwan Shin, Joon-Ryul Lim, Tae-Hwan Yoon, Yong-Min Chun
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Abstract

Background: Repair of rotator cuff tear is not always feasible, depending on the severity. Although several studies have investigated factors related to reparability and various methods to predict it, inconsistent scoring methods and a lack of validation have hindered the utility of these methods.

Purpose: To develop machine learning models to predict the reparability of rotator cuff tears, compare them with previous scoring systems, and provide an accessible online model.

Study design: Cohort study; Level of evidence, 3.

Methods: Arthroscopic rotator cuff repairs for tears with both anteroposterior and mediolateral diameters >1 cm on preoperative magnetic resonance imaging were included and divided into a training set (70%) and an internal validation set (30%). For external validation, rotator cuff repairs performed by 2 different surgeons were included in a test set. Machine learning models and a newly adjusted scoring system were developed using the training set. The performance of the models including the adjusted scoring system and 2 previous scoring systems were compared using the test set. The performance was assessed using metrics such as the area under the receiver operating characteristic curve (AUROC) and compared using the net reclassification improvement based on the adjusted scoring system.

Results: A total of 429 patients were included for the training and internal validation set, and 112 patients were included for the test set. An elastic-net logistic regression demonstrated the best performance, with an AUROC of 0.847 and net reclassification improvement of 0.071, compared with the adjusted scoring system in the test set. The AUROC of the adjusted scoring system was 0.786, and the AUROCs of the previous scoring systems were 0.757 and 0.687. The elastic-net logistic regression was transformed into an accessible online model.

Conclusion: The performance of the machine learning model, which provides a probability estimation for rotator cuff reparability, is comparable with that of the adjusted scoring system. Nevertheless, when deploying prediction models beyond the original cohort, regardless of whether they rely on machine learning or scoring systems, clinicians should exercise caution and not rely solely on the output of the model.

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预测肩袖撕裂的可修复性:机器学习及与以往评分系统的比较。
背景:肩袖撕裂的修复并不总是可行的,这取决于撕裂的严重程度。目的:开发预测肩袖撕裂可修复性的机器学习模型,将其与之前的评分系统进行比较,并提供一个可访问的在线模型:研究设计:队列研究;证据等级,3.方法:对接受关节镜手术的肩袖撕裂患者进行研究:方法:纳入术前磁共振成像显示前后径和内外侧径均大于1厘米的肩袖撕裂的关节镜修复患者,并将其分为训练集(70%)和内部验证集(30%)。在外部验证中,测试集包括由两名不同外科医生进行的肩袖修复术。使用训练集开发了机器学习模型和新调整的评分系统。使用测试集比较了包括调整后评分系统和之前两个评分系统在内的模型的性能。使用接收者操作特征曲线下面积(AUROC)等指标对性能进行评估,并使用基于调整后评分系统的净重新分类改进进行比较:共有 429 名患者被纳入训练集和内部验证集,112 名患者被纳入测试集。在测试集中,弹性网逻辑回归表现最佳,与调整后的评分系统相比,AUROC 为 0.847,净重分类改进率为 0.071。调整后评分系统的 AUROC 为 0.786,而之前评分系统的 AUROC 分别为 0.757 和 0.687。弹性网逻辑回归被转化为可访问的在线模型:结论:机器学习模型提供了肩袖可修复性的概率估计,其性能与调整后的评分系统相当。不过,在部署原始队列之外的预测模型时,无论这些模型是依赖于机器学习还是评分系统,临床医生都应谨慎行事,不能完全依赖于模型的输出结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
9.30
自引率
12.50%
发文量
425
审稿时长
3 months
期刊介绍: An invaluable resource for the orthopaedic sports medicine community, _The American Journal of Sports Medicine_ is a peer-reviewed scientific journal, first published in 1972. It is the official publication of the [American Orthopaedic Society for Sports Medicine (AOSSM)](http://www.sportsmed.org/)! The journal acts as an important forum for independent orthopaedic sports medicine research and education, allowing clinical practitioners the ability to make decisions based on sound scientific information. This journal is a must-read for: * Orthopaedic Surgeons and Specialists * Sports Medicine Physicians * Physiatrists * Athletic Trainers * Team Physicians * And Physical Therapists
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