通过新的训练负荷和表现评分法评估精英足球运动员每周的工作量。

Guglielmo Pillitteri, Alessio Rossi, Tindaro Bongiovanni, Giuseppe Puleo, Marco Petrucci, F Marcello Iaia, Hugo Sarmento, Filipe Manuel Clemente, Giuseppe Battaglia
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引用次数: 0

摘要

目的:监测球员的训练负荷可使从业人员在提高身体表现的同时降低受伤风险。本研究旨在确定职业 U19 足球运动员的主要外部负荷指标。研究方法对 24 名意大利职业青年足球运动员(U19)进行了监测,监测方法是在竞技赛季中使用感知用力评分(CR-10 RPE 量表)和可穿戴惯性传感器。通过主成分分析(PCA)检测出三个主要成分:i) 运动量代谢相关成分;ii) 强度机械刺激成分;iii) 强度代谢/机械成分。因此,我们计算了两个分数(即成绩 [PERF] 和总工作量 [WORK]),以研究每周的微循环。结果显示相关性分析表明,得分(即 PERF 和 WORK)的相关性较低(r = -0.20),表明它们是独立的。自相关分析表明,在所有分数中都能发现每周的微周期。双向方差分析显示,在比赛日(MD)和比赛位置之间,PCA 的三个组成部分和 PERF 分数存在统计差异。结论:我们提出了一种创新方法,利用机器学习方法客观地减少大量数据集,从而评估球员的体能表现和训练负荷。这种方法可帮助从业人员根据这两项得分制定微循环训练计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Elite Soccer Players' Weekly Workload Assessment Through a New Training Load and Performance Score.

Purpose: Monitoring players' training load allows practitioners to enhance physical performance while reducing injury risk. The aim of this study was to identify the key external load indicators in professional U19 soccer. Methods: Twenty-four-professional Italian young (U19) soccer players were monitored by using the rating of perceived exertion (CR-10 RPE scale) and a wearable inertial sensor during the competitive season. Three main components were detected by a Principal Component Analysis (PCA): i) volume metabolic related component, ii) intensity mechanical stimuli component, and iii) intensity metabolic/mechanical component. We hence computed two scores (i.e. Performance [PERF] and total workload [WORK]) permitting to investigate the weekly microcycle. Results: Correlation analysis showed that scores (i.e. PERF and WORK) are low correlated (r = -0.20) suggesting that they were independent. Autocorrelation analysis showed that a weekly microcycle is detectable in all the scores. Two-way ANOVA RM showed a statistical difference between match day (MD) and playing position for the three PCA components and PERF score. Conclusion: We proposed an innovative approach to assess both the players' physical performance and training load by using a machine learning approach allowing reducing a large dataset in an objective way. This approach may help practitioners to prescribe the training in the microcycle based on the two scores.

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