通过机器学习和训练负荷分析加强足球运动损伤风险评估。

IF 2.4 2区 医学 Q2 SPORT SCIENCES
Theodoros Tsilimigkras, Ioannis Kakkos, George K Matsopoulos, Gregory C Bogdanis
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引用次数: 0

摘要

运动损伤给运动员福利和团队活力带来了巨大挑战,尤其是在足球等高强度运动中。本研究利用机器学习算法,从生理和机械负荷变量评估职业男子足球运动员的非接触式受伤风险。本研究共纳入了 25 名首次非接触性肌肉损伤的职业男子足球运动员。在为期 4 年的所有训练课和正式比赛中记录了外部负荷(速度、距离和加速度/减速度数据)和内部负荷(心率)。机器学习模型的训练和评估特征分别针对受伤前 28 天内的九种不同指标和同等长度的基线时间进行计算。每个工作量指标值的急性激增是通过最大值与平均值的偏差来量化的,同时还计算了受伤前最后四周内累积工作量的变化。该模型选择了七个特征作为受伤发生率的主要估算指标。其中三个特征与急性负荷偏差有关(冲刺次数、训练负荷得分--综合心率和肌肉负荷--以及心率处于最大值 90-100% 的时间)。四个累积负荷特征为(总距离、高速和冲刺跑距离以及训练负荷得分)。肌肉损伤风险评估模型的准确度为 0.78,灵敏度为 0.73,特异度为 0.85。我们的模型使用有限的训练负荷变量就能实现较高的损伤风险检测性能。首次将心率相关变量纳入损伤风险评估模型,凸显了生理超负荷作为足球运动中肌肉损伤诱因的重要性。通过识别重要参数,教练员可以在训练和比赛期间控制训练负荷的激增,从而预防肌肉损伤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Sports Injury Risk Assessment in Soccer Through Machine Learning and Training Load Analysis.

Sports injuries pose significant challenges in athlete welfare and team dynamics, particularly in high-intensity sports like soccer. This study used machine learning algorithms to assess non-contact injury risk in professional male soccer players from physiological and mechanical load variables. Twenty-five professional male soccer players with a first-time, non-contact muscle injury were included in this study. Recordings of external load (speed, distance, and acceleration/deceleration data) and internal load (heart rate) were obtained during all training sessions and official matches over a 4-year period. Machine learning model training and evaluation features were calculated for each of nine different metrics for a 28-day period prior to the injury and an equal-length baseline epoch. The acute surge in the values of each workload metric was quantified by the deviation of maximum values from the average, while the variations of cumulative workload over the last four weeks preceding injury were also calculated. Seven features were selected by the model as prominent estimators of injury incidence. Three of the features concerned acute load deviations (number of sprints, training load score-incorporating heart rate and muscle load- and time of heart rate at the 90-100% of maximum). The four cumulative load features were (total distance, high speed and sprint running distance and training load score). The accuracy of the muscle injury risk assessment model was 0.78, with a sensitivity of 0.73 and specificity of 0.85. Our model achieved high performance in injury risk detection using a limited number of training load variables. The inclusion, for the first time, of heart rate related variables in an injury risk assessment model highlights the importance of physiological overload as a contributor to muscle injuries in soccer. By identifying the important parameters, coaches may prevent muscle injuries by controlling surges of training load during training and competition.

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来源期刊
CiteScore
5.60
自引率
6.20%
发文量
56
审稿时长
4-8 weeks
期刊介绍: The Journal of Sports Science and Medicine (JSSM) is a non-profit making scientific electronic journal, publishing research and review articles, together with case studies, in the fields of sports medicine and the exercise sciences. JSSM is published quarterly in March, June, September and December. JSSM also publishes editorials, a "letter to the editor" section, abstracts from international and national congresses, panel meetings, conferences and symposia, and can function as an open discussion forum on significant issues of current interest.
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