Suppr超能文献

机器学习方法评估精英青年足球运动员的受伤风险。

A Machine Learning Approach to Assess Injury Risk in Elite Youth Football Players.

机构信息

imec, ELIS-IDLab, Ghent University, Ghent, BELGIUM.

Department of Movement and Sports Sciences, Ghent University, Ghent, BELGIUM.

出版信息

Med Sci Sports Exerc. 2020 Aug;52(8):1745-1751. doi: 10.1249/MSS.0000000000002305.

Abstract

PURPOSE

To assess injury risk in elite-level youth football (soccer) players based on anthropometric, motor coordination and physical performance measures with a machine learning model.

METHODS

A total of 734 players in the U10 to U15 age categories (mean age, 11.7 ± 1.7 yr) from seven Belgian youth academies were prospectively followed during one season. Football exposure and occurring injuries were monitored continuously by the academies' coaching and medical staff, respectively. Preseason anthropometric measurements (height, weight, and sitting height) were taken and test batteries to assess motor coordination and physical fitness (strength, flexibility, speed, agility, and endurance) were performed. Extreme gradient boosting algorithms (XGBoost) were used to predict injury based on the preseason test results. Subsequently, the same approach was used to classify injuries as either overuse or acute.

RESULTS

During the season, half of the players (n = 368) sustained at least one injury. Of the first occurring injuries, 173 were identified as overuse and 195 as acute injuries. The machine learning algorithm was able to identify the injured players in the hold-out test sample with 85% precision, 85% recall (sensitivity) and 85% accuracy (f1 score). Furthermore, injuries could be classified as overuse or acute with 78% precision, 78% recall, and 78% accuracy.

CONCLUSIONS

Our machine learning algorithm was able to predict injury and to distinguish overuse from acute injuries with reasonably high accuracy based on preseason measures. Hence, it is a promising approach to assess injury risk among elite-level youth football players. This new knowledge could be applied in the development and improvement of injury risk management strategies to identify youth players with the highest injury risk.

摘要

目的

利用机器学习模型,根据人体测量学、运动协调和身体表现测量数据,评估精英青年足球(足球)运动员的受伤风险。

方法

从 7 家比利时青年学院的 U10 至 U15 年龄组中共有 734 名球员(平均年龄为 11.7±1.7 岁),在一个赛季中进行了前瞻性随访。足球暴露情况和发生的伤害分别由学院的教练和医务人员进行持续监测。在赛季前进行了人体测量学测量(身高、体重和坐高),并进行了运动协调和身体素质测试(力量、柔韧性、速度、敏捷性和耐力)。使用极端梯度提升算法(XGBoost)基于赛季前的测试结果预测受伤。随后,使用相同的方法将受伤分类为过度使用或急性。

结果

在赛季中,一半的球员(n=368)至少发生了一次受伤。首次发生的伤害中,173 例为过度使用,195 例为急性损伤。机器学习算法能够在保留测试样本中以 85%的准确率、85%的召回率(敏感性)和 85%的准确性(f1 评分)识别受伤球员。此外,能够以 78%的准确率、78%的召回率和 78%的准确性将伤害分类为过度使用或急性。

结论

我们的机器学习算法能够基于赛季前的测量数据,以相当高的准确率预测受伤,并区分过度使用和急性损伤。因此,这是一种评估精英青年足球运动员受伤风险的有前途的方法。这种新知识可以应用于开发和改进伤害风险管理策略,以识别受伤风险最高的青年球员。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验