Performance and Analytics Department, Parma Calcio 1913, Parma, Italy.
Department of Movement, Human and Health Sciences, University of Rome "Foro Italico," Rome, Italy.
Int J Sports Physiol Perform. 2024 Feb 24;19(5):443-453. doi: 10.1123/ijspp.2023-0444. Print 2024 May 1.
The study had 3 purposes: (1) to develop an index using machine-learning techniques to predict the fitness status of soccer players, (2) to explore the index's validity and its relationship with a submaximal run test (SMFT), and (3) to analyze the impact of weekly training load on the index and SMFT outcomes.
The study involved 50 players from an Italian professional soccer club. External and internal loads were collected during training sessions. Various machine-learning algorithms were assessed for their ability to predict heart-rate responses during the training drills based on external load data. The fitness index, calculated as the difference between actual and predicted heart rates, was correlated with SMFT outcomes.
Random forest regression (mean absolute error = 3.8 [0.05]) outperformed the other machine-learning algorithms (extreme gradient boosting and linear regression). Average speed, minutes from the start of the training session, and the work:rest ratio were identified as the most important features. The fitness index displayed a very large correlation (r = .70) with SMFT outcomes, with the highest result observed during possession games and physical conditioning exercises. The study revealed that heart-rate responses from SMFT and the fitness index could diverge throughout the season, suggesting different aspects of fitness.
This study introduces an "invisible monitoring" approach to assess soccer player fitness in the training environment. The developed fitness index, in conjunction with traditional fitness tests, provides a comprehensive understanding of player readiness. This research paves the way for practical applications in soccer, enabling personalized training adjustments and injury prevention.
本研究有三个目的:(1)使用机器学习技术开发一个预测足球运动员体能状态的指数;(2)探索该指数的有效性及其与次最大跑测试(SMFT)的关系;(3)分析每周训练负荷对指数和 SMFT 结果的影响。
本研究涉及来自一家意大利职业足球俱乐部的 50 名球员。在训练期间收集了外部和内部负荷。评估了各种机器学习算法,以根据外部负荷数据预测训练练习中的心率反应的能力。根据实际和预测的心率之间的差异计算出的体能指数与 SMFT 结果相关。
随机森林回归(平均绝对误差=3.8[0.05])优于其他机器学习算法(极端梯度提升和线性回归)。平均速度、训练开始后的分钟数和工作:休息比被确定为最重要的特征。体能指数与 SMFT 结果呈很强的相关性(r=0.70),在控球比赛和体能训练中观察到最高的结果。研究表明,SMFT 和体能指数的心率反应可能在整个赛季中存在差异,这表明了体能的不同方面。
本研究提出了一种“无形监测”方法,用于评估足球运动员在训练环境中的体能。开发的体能指数与传统的体能测试相结合,提供了对运动员准备情况的全面了解。这项研究为足球领域的实际应用铺平了道路,使个性化的训练调整和预防受伤成为可能。