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专业足球运动员训练和比赛时主观体力感觉等级的预测模型。

Predictive modeling of the ratings of perceived exertion during training and competition in professional soccer players.

机构信息

EuroMov Digital Health in Motion, Univ Montpellier, IMT Mines Ales, France.

EuroMov Digital Health in Motion, Univ Montpellier, IMT Mines Ales, France.

出版信息

J Sci Med Sport. 2023 Jun;26(6):322-327. doi: 10.1016/j.jsams.2023.05.001. Epub 2023 May 8.

Abstract

OBJECTIVES

Evaluate the ability of predicting the ratings of perceived exertion from the external load variables in professional soccer players through a chronological perspective (i.e., past features values are considered additional features) through machine learning models by considering the playing position.

DESIGN

Prospective cohort study.

METHODS

Thirty-eight elite soccer players aged 19-27 years were observed during 151 training sessions, 44 matches across a full season. External load variables (58 derived from Global Positioning System and 30 from accelerometers) and the internal load derived from ratings of perceived exertion were collected for each player and each session and match. Machine learning models (linear regression, K-NN, decision trees, random forest, elastic net regression, XGBoost) were compared and interpreted in order to deepen the relationship between external load variables and ratings of perceived exertion according to the player position in a predictive perspective.

RESULTS

Application of the machine learning models on the dataset provided enough predictive power to reduce the Root Mean Squared Error of 60 % from dummy predictions. The most accurate models (Root Mean Squared Error ≈ 1.1 for random forest and = 1 for XGBoost) highlighted a memory effect in subsequent ratings of perceived exertion values. Past ratings of perceived exertion values over one month were the strongest predicting factors of ratings of perceived exertion as compared to various external load indicators.

CONCLUSIONS

The tree-based machine learning models showed statistically significant predictive ability, indicating valuable information for understanding the training load responses based on ratings of perceived exertion changes.

摘要

目的

通过机器学习模型,从时间序列的角度(即过去的特征值被视为附加特征)评估预测职业足球运动员感知用力评分的外部负荷变量的能力,并考虑到比赛位置。

设计

前瞻性队列研究。

方法

在一个完整的赛季中,观察了 38 名年龄在 19-27 岁的精英足球运动员的 151 次训练和 44 场比赛。为每个球员和每个训练和比赛收集了外部负荷变量(来自全球定位系统的 58 个变量和来自加速度计的 30 个变量)和感知用力评分的内部负荷。比较并解释了机器学习模型(线性回归、K-近邻、决策树、随机森林、弹性网络回归、XGBoost),以便根据球员位置从预测角度深入研究外部负荷变量与感知用力评分之间的关系。

结果

机器学习模型在数据集上的应用提供了足够的预测能力,将虚假预测的均方根误差降低了 60%。最准确的模型(随机森林的均方根误差≈1.1,XGBoost 的均方根误差=1)突出了随后感知用力评分值的记忆效应。与各种外部负荷指标相比,过去一个月的感知用力评分值是感知用力评分的最强预测因素。

结论

基于树的机器学习模型显示出具有统计学意义的预测能力,表明基于感知用力变化的训练负荷反应有有价值的信息。

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