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通过精英足球运动员的外部和内部负荷进行健康预测:一种机器学习方法。

Wellness Forecasting by External and Internal Workloads in Elite Soccer Players: A Machine Learning Approach.

作者信息

Rossi Alessio, Perri Enrico, Pappalardo Luca, Cintia Paolo, Alberti Giampietro, Norman Darcy, Iaia F Marcello

机构信息

Department of Computer Science, University of Pisa, Pisa, Italy.

Department of Biomedical Science for Health, Università degli Studi di Milano, Milano, Italy.

出版信息

Front Physiol. 2022 Jun 15;13:896928. doi: 10.3389/fphys.2022.896928. eCollection 2022.

Abstract

Training for success has increasingly become a balance between maintaining high performance standards and avoiding the negative consequences of accumulated fatigue. The aim of this study is to develop a big data analytics framework to predict players' wellness according to the external and internal workloads performed in previous days. Such a framework is useful for coaches and staff to simulate the players' response to scheduled training in order to adapt the training stimulus to the players' fatigue response. 17 players competing in the Italian championship (Serie A) were recruited for this study. Players' Global Position System (GPS) data was recorded during each training and match. Moreover, every morning each player has filled in a questionnaire about their perceived wellness (WI) that consists of a 7-point Likert scale for 4 items (fatigue, sleep, stress, and muscle soreness). Finally, the rate of perceived exertion (RPE) was used to assess the effort performed by the players after each training or match. The main findings of this study are that it is possible to accurately estimate players' WI considering their workload history as input. The machine learning framework proposed in this study is useful for sports scientists, athletic trainers, and coaches to maximise the periodization of the training based on the physiological requests of a specific period of the season.

摘要

为取得成功而进行的训练日益成为在维持高标准表现与避免累积疲劳带来的负面后果之间寻求平衡。本研究的目的是开发一个大数据分析框架,根据前几日的外部和内部工作量来预测运动员的健康状况。这样一个框架对于教练和工作人员模拟运动员对预定训练的反应很有用,以便使训练刺激适应运动员的疲劳反应。本研究招募了17名参加意大利足球甲级联赛的球员。在每次训练和比赛期间记录球员的全球定位系统(GPS)数据。此外,每天早上每名球员都填写一份关于其自我感知健康状况(WI)的问卷,该问卷由针对4个项目(疲劳、睡眠、压力和肌肉酸痛)的7级李克特量表组成。最后,用自感用力度(RPE)来评估球员在每次训练或比赛后的努力程度。本研究的主要发现是,将运动员的工作量历史作为输入,可以准确估计其健康状况。本研究提出的机器学习框架对体育科学家、运动训练师和教练根据赛季特定时期的生理需求最大化训练周期化很有用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d261/9240643/6ba50ff7927a/fphys-13-896928-g001.jpg

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