Leppich Robert, Kunz Philipp, Bauer André, Kounev Samuel, Sperlich Billy, Düking Peter
Software Engineering Group, Department of Computer Science, University of Würzburg, Würzburg, Germany.
Integrative and Experimental Exercise Science and Training, Institute of Sport Science, University of Würzburg, Würzburg, Germany.
J Sports Sci Med. 2024 Dec 1;23(4):744-753. doi: 10.52082/jssm.2024.744. eCollection 2024 Dec.
This study aimed to identify relationships between external and internal load parameters with subjective ratings of perceived exertion (RPE). Consecutively, these relationships shall be used to evaluate different machine learning models and design a deep learning architecture to predict RPE in highly trained/national level soccer players. From a dataset comprising 5402 training sessions and 732 match observations, we gathered data on 174 distinct parameters, encompassing heart rate, GPS, accelerometer data and RPE (Borg's 0-10 scale) of 26 professional male professional soccer players. Nine machine learning algorithms and one deep learning architecture was employed. Rigorous preprocessing protocols were employed to ensure dataset equilibrium and minimize bias. The efficacy and generalizability of these models were evaluated through a systematic 5-fold cross-validation approach. The deep learning model exhibited highest predictive power for RPE (Mean Absolute Error: 1.08 ± 0.07). Tree-based machine learning models demonstrated high-quality predictions (Mean Absolute Error: 1.15 ± 0.03) and a higher robustness against outliers. The strongest contribution to reducing the uncertainty of RPE with the tree-based machine learning models was maximal heart rate (determining 1.81% of RPE), followed by maximal acceleration (determining 1.48%) and total distance covered in speed zone 10-13 km/h (determining 1.44%). A multitude of external and internal parameters rather than a single variable are relevant for RPE prediction in highly trained/national level soccer players, with maximum heart rate having the strongest influence on RPE. The ExtraTree Machine Learning model exhibits the lowest error rates for RPE predictions, demonstrates applicability to players not specifically considered in this investigation, and can be run on nearly any modern computer platform.
本研究旨在确定外部和内部负荷参数与主观用力感知评分(RPE)之间的关系。接下来,这些关系将用于评估不同的机器学习模型,并设计一种深度学习架构,以预测高水平/国家级足球运动员的RPE。从一个包含5402次训练课程和732场比赛观察数据的数据集,我们收集了26名职业男性足球运动员的174个不同参数的数据,包括心率、GPS、加速度计数据和RPE(Borg 0 - 10级评分)。采用了九种机器学习算法和一种深度学习架构。采用了严格的预处理协议,以确保数据集的均衡性并最小化偏差。通过系统的五折交叉验证方法评估了这些模型的有效性和通用性。深度学习模型对RPE表现出最高的预测能力(平均绝对误差:1.08±0.07)。基于树的机器学习模型展示了高质量的预测(平均绝对误差:1.15±0.03),并且对异常值具有更高的鲁棒性。基于树的机器学习模型对降低RPE不确定性的最大贡献是最大心率(决定RPE的1.81%),其次是最大加速度(决定1.48%)和在10 - 13公里/小时速度区域内覆盖的总距离(决定1.44%)。对于高水平/国家级足球运动员的RPE预测,众多外部和内部参数而非单一变量是相关的,其中最大心率对RPE的影响最强。ExtraTree机器学习模型在RPE预测中表现出最低的错误率,证明适用于本调查未特别考虑的运动员,并且几乎可以在任何现代计算机平台上运行。