基于现场的团队运动中的工作量监测工具,用于性能和损伤预测的新兴技术和分析:系统回顾

Q2 Computer Science
Georgia Keys, Lisa Ryan, Maria Faulkner, Michael McCann
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引用次数: 0

摘要

训练负荷(TL)在团队运动中经常被记录,新兴技术(ET)的发展在运动员表现和损伤风险识别方面显示出令人鼓舞的结果。本系统综述的目的是确定在野外运动中使用的ETs来监测TL的损伤/表现预测,并通过确定新的数据生成提供体育专项建议,教练在跟踪运动员时可以考虑这些数据,以提高野外运动训练处方和评估的准确性。数据从CINAHL、SPORTDiscus、Web of Science和IEEE XPLORE数据库系统检索后的60篇文章中提取。全球定位系统(GPS)和加速度计是常用的外部运动训练工具,而RPE是常用的内部运动训练工具。在调查损伤/表现预测时,确定了一系列分析工具。机器学习在许多研究中显示出有希望的结果,确定了最强的预测变量和伤害风险识别。总的来说,研究人员使用了各种TL监测工具和预测分析,并成功地预测了损伤/表现,但研究人员没有确定常用的方法。这篇综述强调了ETs的积极作用,但需要进一步的研究,以建立一个“黄金标准”的预测分析工具,用于野外团队运动中的损伤/表现预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Workload Monitoring Tools in Field-Based Team Sports, the Emerging Technology and Analytics used for Performance and Injury Prediction: A Systematic Review
Abstract Training load (TL) is frequently documented among team sports and the development of emerging technology (ET) is displaying promising results towards player performance and injury risk identification. The aim of this systematic review was to identify ETs used in field-based sport to monitor TL for injury/performance prediction and provide sport specific recommendations by identifying new data generation in which coaches may consider when tracking players for an increased accuracy in training prescription and evaluation among field-based sports. Data was extracted from 60 articles following a systematic search of CINAHL, SPORTDiscus, Web of Science and IEEE XPLORE databases. Global positioning system (GPS) and accelerometers were common external TL tools and Rated Perceived Exertion (RPE) for internal TL. A collection of analytics tools were identified when investigating injury/performance prediction. Machine Learning showed promising results in many studies, identifying the strongest predictive variables and injury risk identification. Overall, a variety of TL monitoring tools and predictive analytics were utilized by researchers and were successful in predicting injury/performance, but no common method taken by researchers could be identified. This review highlights the positive effect of ETs, but further investigation is desired towards a ‘gold standard” predictive analytics tool for injury/performance prediction in field-based team sports.
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来源期刊
International Journal of Computer Science in Sport
International Journal of Computer Science in Sport Computer Science-Computer Science (all)
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
12 weeks
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