Alaiti Rafael Krasic, Vallio Caio Sain, da Silva Andre Giardino Moreira, Gobbi Riccardo Gomes, Pécora José Ricardo, Helito Camilo Partezani
Research, Technology, and Data Science Office, Grupo Superador, São Paulo, Brazil.
Universidade de São Paulo, São Paulo, Brazil.
Orthop J Sports Med. 2025 Mar 25;13(3):23259671251324519. doi: 10.1177/23259671251324519. eCollection 2025 Mar.
Anterior cruciate ligament reconstruction (ACLR) is the predominant and widely accepted treatment modality for ACL injury. However, recurrence of ACL rupture or failure of the reconstruction remains a significant challenge. Despite several studies in the literature that have developed prediction models to address this issue by identifying prognostic factors for treatment outcomes using classical statistical methods, the predictive efficacy of these models is frequently suboptimal.
To (1) evaluate the predictive performance of different machine learning algorithms for the occurrence of failure in ACLR and (2) identify the most relevant predictors associated with this outcome.
Cohort study; Level of evidence, 3.
A total of 680 patients who underwent ACLR between January 2012 and July 2021 were evaluated. The study outcome was ACLR failure-defined as a complete tear confirmed by magnetic resonance imaging, arthroscopy, or clinical ACL insufficiency-evaluated at a minimum 2-year follow-up. Routinely collected data were used to train 9 machine learning algorithms-including k-nearest neighbors classifier, decision tree classifier, random forest classifier, extra trees classifier, gradient boosting classifier, eXtreme Gradient Boosting, CatBoost classifier, and logistic regression. A random sample of 70% of patients was used to train the algorithms, and 30% were left for performance assessment, simulating new data. The performance of the models was evaluated with the area under the receiver operating characteristic curve (AUC).
The predictive performance of most models was good, with AUCs ranging from 0.71 to 0.85. The models with the best AUC metric were the CatBoost classifier (0.85 [95% CI, 0.81-0.89]) and the random forest classifier (0.84 [95% CI, 0.77-0.90). Knee hyperextension consistently emerged as the primary predictor for ACLR failure across all models subjected to our analysis.
Machine learning algorithms demonstrated good performance in predicting ACLR failure. Moreover, knee hyperextension consistently emerged as the primary predictor for failure across all models subjected to our analysis.
The findings of this study highlight the potential of machine learning as a valuable clinical tool for decision-making on surgical intervention. By offering nuanced insights, these algorithms may contribute to the evolving landscape of orthopaedic practice. Also, this study confirms knee hyperextension as an important risk factor for ACLR failure.
前交叉韧带重建术(ACLR)是治疗前交叉韧带损伤的主要且被广泛接受的治疗方式。然而,前交叉韧带重建术后的复发或重建失败仍是一项重大挑战。尽管文献中有多项研究通过经典统计方法识别治疗结果的预后因素来开发预测模型以解决这一问题,但这些模型的预测效果往往不尽人意。
(1)评估不同机器学习算法对ACLR失败发生情况的预测性能;(2)识别与该结果最相关的预测因素。
队列研究;证据等级:3级。
对2012年1月至2021年7月期间接受ACLR的680例患者进行评估。研究结果为ACLR失败,定义为经磁共振成像、关节镜检查确诊的完全撕裂或临床上前交叉韧带功能不全,且至少随访2年进行评估。使用常规收集的数据训练9种机器学习算法,包括k近邻分类器、决策树分类器、随机森林分类器、极端随机树分类器、梯度提升分类器、XGBoost、CatBoost分类器和逻辑回归。70%的患者随机样本用于训练算法,30%留作性能评估,模拟新数据。模型性能通过受试者工作特征曲线下面积(AUC)进行评估。
大多数模型的预测性能良好,AUC范围为0.71至0.85。AUC指标最佳的模型是CatBoost分类器(0.85 [95%CI,0.81 - 0.89])和随机森林分类器(0.84 [95%CI,0.77 - 0.90])。在我们分析的所有模型中,膝关节过度伸展始终是ACLR失败的主要预测因素。
机器学习算法在预测ACLR失败方面表现良好。此外,在我们分析的所有模型中,膝关节过度伸展始终是失败的主要预测因素。
本研究结果凸显了机器学习作为手术干预决策中有价值的临床工具的潜力。通过提供细致入微的见解,这些算法可能有助于骨科实践的不断发展。此外,本研究证实膝关节过度伸展是ACLR失败的重要风险因素。