Faculty of Engineering, Universidad Andres Bello, Santiago 7550196, Chile.
Ph.D. Program in Health Sciences and Engineering, Universidad de Valparaiso, Valparaiso 2362735, Chile.
Sensors (Basel). 2023 Dec 25;24(1):119. doi: 10.3390/s24010119.
There is a significant risk of injury in sports and intense competition due to the demanding physical and psychological requirements. Hamstring strain injuries (HSIs) are the most prevalent type of injury among professional soccer players and are the leading cause of missed days in the sport. These injuries stem from a combination of factors, making it challenging to pinpoint the most crucial risk factors and their interactions, let alone find effective prevention strategies. Recently, there has been growing recognition of the potential of tools provided by artificial intelligence (AI). However, current studies primarily concentrate on enhancing the performance of complex machine learning models, often overlooking their explanatory capabilities. Consequently, medical teams have difficulty interpreting these models and are hesitant to trust them fully. In light of this, there is an increasing need for advanced injury detection and prediction models that can aid doctors in diagnosing or detecting injuries earlier and with greater accuracy. Accordingly, this study aims to identify the biomarkers of muscle injuries in professional soccer players through biomechanical analysis, employing several ML algorithms such as decision tree (DT) methods, discriminant methods, logistic regression, naive Bayes, support vector machine (SVM), K-nearest neighbor (KNN), ensemble methods, boosted and bagged trees, artificial neural networks (ANNs), and XGBoost. In particular, XGBoost is also used to obtain the most important features. The findings highlight that the variables that most effectively differentiate the groups and could serve as reliable predictors for injury prevention are the maximum muscle strength of the hamstrings and the stiffness of the same muscle. With regard to the 35 techniques employed, a precision of up to 78% was achieved with XGBoost, indicating that by considering scientific evidence, suggestions based on various data sources, and expert opinions, it is possible to attain good precision, thus enhancing the reliability of the results for doctors and trainers. Furthermore, the obtained results strongly align with the existing literature, although further specific studies about this sport are necessary to draw a definitive conclusion.
在体育运动和激烈竞争中,由于对身体和心理的高要求,存在着很大的受伤风险。腘绳肌拉伤(HSI)是职业足球运动员中最常见的损伤类型,也是导致运动中缺训的主要原因。这些损伤源于多种因素的综合作用,使得确定最关键的风险因素及其相互作用变得极具挑战性,更不用说找到有效的预防策略了。最近,人们越来越认识到人工智能(AI)工具的潜力。然而,目前的研究主要集中在提高复杂机器学习模型的性能上,往往忽略了它们的解释能力。因此,医疗团队难以解释这些模型,也不愿意完全信任它们。鉴于此,人们越来越需要先进的损伤检测和预测模型,以帮助医生更早、更准确地诊断或检测到损伤。因此,本研究旨在通过生物力学分析,利用决策树(DT)方法、判别方法、逻辑回归、朴素贝叶斯、支持向量机(SVM)、K 近邻(KNN)、集成方法、提升和袋装树、人工神经网络(ANNs)和 XGBoost 等多种 ML 算法,确定职业足球运动员肌肉损伤的生物标志物。特别是,还使用 XGBoost 来获取最重要的特征。研究结果表明,区分各组最有效的变量,并且可以作为预防损伤的可靠预测指标的是腘绳肌的最大肌肉力量和相同肌肉的硬度。对于所使用的 35 种技术,XGBoost 的准确率高达 78%,这表明通过考虑科学证据、基于各种数据源的建议以及专家意见,有可能达到较高的准确率,从而提高结果的可靠性,让医生和教练受益。此外,所获得的结果与现有文献高度一致,尽管需要进一步针对这项运动进行具体研究才能得出明确的结论。