IF 2.2 Q2 SPORT SCIENCES Sports Pub Date : 2025-01-22 DOI:10.3390/sports13020030
Tony Estrella, Lluis Capdevila
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引用次数: 0

摘要

心率变异性(HRV)是一种无创健康和体能指标,而机器学习(ML)已成为分析大型 HRV 数据集的有力工具。本研究旨在利用心率变异测试和 ML 算法识别运动员特征。研究开发了两个模型:模型 1(M1)使用高性能运动员的 856 个观测数据和非运动员的 494 个观测数据对运动员和非运动员进行分类。模型 2(M2)根据对球员的 105 次观察和对其他队员的 514 次观察,识别出球队中的足球运动员。应用了三种 ML 算法--随机森林算法(RF)、极梯度提升算法(XGBoost)和支持向量机算法(SVM),并使用 SHAP 值解释结果。在 M1 中,SVM 算法的性能最高(准确率 = 0.84,ROC AUC = 0.91),而在 M2 中,随机森林的性能最好(准确率 = 0.92,ROC AUC = 0.94)。基于这些结果,我们提出了从心率变异数据中得出的运动能力指数和足球识别指数。研究结果表明,SVM 和 RF 等 ML 算法能有效生成基于心率变异的指数,用于识别具有运动特征的个体或区分具有特定运动特征的运动员。这些见解强调了将心率变异评估系统地纳入训练方案以加强运动评估的重要性。
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Identification of Athleticism and Sports Profiles Throughout Machine Learning Applied to Heart Rate Variability.

Heart rate variability (HRV) is a non-invasive health and fitness indicator, and machine learning (ML) has emerged as a powerful tool for analysing large HRV datasets. This study aims to identify athletic characteristics using the HRV test and ML algorithms. Two models were developed: Model 1 (M1) classified athletes and non-athletes using 856 observations from high-performance athletes and 494 from non-athletes. Model 2 (M2) identified an individual soccer player within a team based on 105 observations from the player and 514 from other team members. Three ML algorithms were applied -Random Forest (RF), Extreme Gradient Boosting (XGBoost), and Support Vector Machine (SVM)- and SHAP values were used to interpret the results. In M1, the SVM algorithm achieved the highest performance (accuracy = 0.84, ROC AUC = 0.91), while in M2 Random Forest performed best (accuracy = 0.92, ROC AUC = 0.94). Based on these results, we propose an athleticism index and a soccer identification index derived from HRV data. The findings suggest that ML algorithms, such as SVM and RF, can effectively generate indices based on HRV for identifying individuals with athletic characteristics or distinguishing athletes with specific sports profiles. These insights underscore the importance of integrating HRV assessments systematically into training regimens for enhanced athletic evaluation.

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来源期刊
Sports
Sports SPORT SCIENCES-
CiteScore
4.10
自引率
7.40%
发文量
167
审稿时长
11 weeks
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