Teixeira José E, Encarnação Samuel, Branquinho Luís, Ferraz Ricardo, Portella Daniel L, Monteiro Diogo, Morgans Ryland, Barbosa Tiago M, Monteiro António M, Forte Pedro
Department of Sports Sciences, Polytechnic of Guarda, Guarda, Portugal.
Department of Sports Sciences, Polytechnic of Cávado and Ave, Guimarães, Portugal.
Front Psychol. 2024 Oct 29;15:1447968. doi: 10.3389/fpsyg.2024.1447968. eCollection 2024.
A promising approach to optimizing recovery in youth football has been the use of machine learning (ML) models to predict recovery states and prevent mental fatigue. This research investigates the application of ML models in classifying male young football players aged under (U)15, U17, and U19 according to their recovery state. Weekly training load data were systematically monitored across three age groups throughout the initial month of the 2019-2020 competitive season, covering 18 training sessions and 120 observation instances. Outfield players were tracked using portable 18-Hz global positioning system (GPS) devices, while heart rate (HR) was measured using 1 Hz telemetry HR bands. The rating of perceived exertion (RPE 6-20) and total quality recovery (TQR 6-20) scores were employed to evaluate perceived exertion, internal training load, and recovery state, respectively. Data preprocessing involved handling missing values, normalization, and feature selection using correlation coefficients and a random forest (RF) classifier. Five ML algorithms [K-nearest neighbors (KNN), extreme gradient boosting (XGBoost), support vector machine (SVM), RF, and decision tree (DT)] were assessed for classification performance. The K-fold method was employed to cross-validate the ML outputs.
A high accuracy for this ML classification model (73-100%) was verified. The feature selection highlighted critical variables, and we implemented the ML algorithms considering a panel of 9 variables (U15, U19, body mass, accelerations, decelerations, training weeks, sprint distance, and RPE). These features were included according to their percentage of importance (3-18%). The results were cross-validated with good accuracy across 5-fold (79%).
The five ML models, in combination with weekly data, demonstrated the efficacy of wearable device-collected features as an efficient combination in predicting football players' recovery states.
一种优化青少年足球运动员恢复情况的有前景的方法是使用机器学习(ML)模型来预测恢复状态并预防精神疲劳。本研究调查了ML模型在根据15岁以下(U15)、17岁(U17)和19岁(U19)男性青少年足球运动员的恢复状态进行分类方面的应用。在2019 - 2020赛季首个月期间,对三个年龄组的每周训练负荷数据进行了系统监测,涵盖18次训练课程和120个观察实例。使用便携式18赫兹全球定位系统(GPS)设备跟踪外场球员,同时使用1赫兹遥测心率带测量心率。分别采用主观用力程度分级(RPE 6 - 20)和总体质量恢复(TQR 6 - 20)评分来评估主观用力程度、内部训练负荷和恢复状态。数据预处理包括处理缺失值、归一化以及使用相关系数和随机森林(RF)分类器进行特征选择。评估了五种ML算法[K近邻(KNN)、极端梯度提升(XGBoost)、支持向量机(SVM)、RF和决策树(DT)]的分类性能。采用K折法对ML输出进行交叉验证。
验证了该ML分类模型具有较高的准确率(73 - 100%)。特征选择突出了关键变量,并且我们在考虑由9个变量(U15、U19、体重、加速度、减速度、训练周数、冲刺距离和RPE)组成的一组变量的情况下实施了ML算法。这些特征是根据其重要性百分比(3 - 18%)纳入的。结果在5折交叉验证中具有良好的准确率(79%)。
这五个ML模型与每周数据相结合,证明了可穿戴设备收集的特征作为预测足球运动员恢复状态的有效组合的有效性。