Majumdar Aritra, Bakirov Rashid, Hodges Dan, Scott Suzanne, Rees Tim
Department of Rehabilitation and Sport Science, Faculty of Health and Social Sciences, Bournemouth University, Dorset House, Talbot Campus, Fern Barrow, Poole, BH12 5BB, UK.
Department of Computing and Informatics, Faculty of Science and Technology, Bournemouth University, Dorset House, Talbot Campus, Fern Barrow, Poole, BH12 5BB, UK.
Sports Med Open. 2022 Jun 7;8(1):73. doi: 10.1186/s40798-022-00465-4.
Attempts to better understand the relationship between training and competition load and injury in football are essential for helping to understand adaptation to training programmes, assessing fatigue and recovery, and minimising the risk of injury and illness. To this end, technological advancements have enabled the collection of multiple points of data for use in analysis and injury prediction. The full breadth of available data has, however, only recently begun to be explored using suitable statistical methods. Advances in automatic and interactive data analysis with the help of machine learning are now being used to better establish the intricacies of the player load and injury relationship. In this article, we examine this recent research, describing the analyses and algorithms used, reporting the key findings, and comparing model fit. To date, the vast array of variables used in analysis as proxy indicators of player load, alongside differences in approach to key aspects of data treatment-such as response to data imbalance, model fitting, and a lack of multi-season data-limit a systematic evaluation of findings and the drawing of a unified conclusion. If, however, the limitations of current studies can be addressed, machine learning has much to offer the field and could in future provide solutions to the training load and injury paradox through enhanced and systematic analysis of athlete data.
深入了解足球运动中训练与比赛负荷及伤病之间的关系,对于理解运动员对训练计划的适应性、评估疲劳与恢复情况以及将伤病和疾病风险降至最低至关重要。为此,技术进步使得收集多个数据点用于分析和伤病预测成为可能。然而,直到最近才开始运用合适的统计方法来探索所有可用数据的全貌。借助机器学习的自动和交互式数据分析进展,如今正被用于更好地梳理运动员负荷与伤病关系的复杂性。在本文中,我们审视这项最新研究,描述所使用的分析方法和算法,报告关键发现,并比较模型拟合情况。迄今为止,分析中用作运动员负荷代理指标的变量种类繁多,再加上数据处理关键方面(如对数据不平衡的应对、模型拟合以及缺乏多赛季数据)的方法存在差异,限制了对研究结果进行系统评估以及得出统一结论。然而,如果当前研究的局限性能够得到解决,机器学习可为该领域提供诸多助力,并且未来通过对运动员数据进行强化和系统分析,有望解决训练负荷与伤病这一矛盾问题。