Identification of Athleticism and Sports Profiles Throughout Machine Learning Applied to Heart Rate Variability

被引:0
作者
Estrella, Tony [1 ,2 ]
Capdevila, Lluis [1 ,2 ]
机构
[1] Univ Autonoma Barcelona, Sport Res Inst, Bellaterra 08193, Spain
[2] Univ Autonoma Barcelona, Lab Sport Psychol, Dept Basic Psychol, Bellaterra 08193, Spain
关键词
heart rate variability; machine learning; athletes; sport profiles; team sports; random forest; support vector machine; SHAP values; training load; TRAINING LOAD; RECOVERY; PREVENTION; RISK;
D O I
10.3390/sports13020030
中图分类号
G8 [体育];
学科分类号
04 ; 0403 ;
摘要
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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页数:16
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共 66 条
[1]  
Kellmann M., Bertollo M., Bosquet L., Brink M., Coutts A.J., Duffield R., Erlacher D., Halson S.L., Hecksteden A., Heidari J., Et al., Recovery and Performance in Sport: Consensus Statement, Int. J. Sports Physiol. Perform, 13, pp. 240-245, (2018)
[2]  
Halson S.L., Monitoring Training Load to Understand Fatigue in Athletes, Sports Med, 44, pp. 139-147, (2014)
[3]  
Heidari J., Beckmann J., Bertollo M., Brink M., Kallus K.W., Robazza C., Kellmann M., Multidimensional Monitoring of Recovery Status and Implications for Performance, Int. J. Sports Physiol. Perform, 14, pp. 2-8, (2019)
[4]  
Gabbett T.J., Debunking the Myths about Training Load, Injury and Performance: Empirical Evidence, Hot Topics and Recommendations for Practitioners, Br. J. Sports Med, 54, pp. 58-66, (2020)
[5]  
Foster C., Rodriguez-Marroyo J.A., De Koning J.J., Monitoring Training Loads: The Past, the Present, and the Future, Int. J. Sports Physiol. Perform, 12, (2017)
[6]  
Caparros T., Casals M., Solana A., Pena J., Low External Workloads Are Related to Higher Injury Risk in Professional Male Basketball Games, J. Sports Sci. Med, 17, pp. 289-297, (2018)
[7]  
Malik M., Heart Rate Variability: Standards of Measurement, Physiological Interpretation, and Clinical Use, Circulation, 93, pp. 1043-1065, (1996)
[8]  
Soligard T., Schwellnus M., Alonso J.-M., Bahr R., Clarsen B., Dijkstra H.P., Gabbett T., Gleeson M., Hagglund M., Hutchinson M.R., Et al., How Much Is Too Much? (Part 1) International Olympic Committee Consensus Statement on Load in Sport and Risk of Injury, Br. J. Sports Med, 50, pp. 1030-1041, (2016)
[9]  
Kaikkonen P., Hynynen E., Mann T., Rusko H., Nummela A., Can HRV Be Used to Evaluate Training Load in Constant Load Exercises?, Eur. J. Appl. Physiol, 108, pp. 435-442, (2010)
[10]  
Lundstrom C.J., Foreman N.A., Biltz G., Practices and Applications of Heart Rate Variability Monitoring in Endurance Athletes, Int. J. Sports Med, 44, pp. 9-19, (2023)