A multidimensional prediction model for overtraining risk in youth soccer players: Integrating physiological and psychological markers.

IF 2.5 2区 医学 Q2 SPORT SCIENCES
Journal of Sports Sciences Pub Date : 2025-09-01 Epub Date: 2025-06-22 DOI:10.1080/02640414.2025.2521211
Haonan Qian, Seongno Lee
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引用次数: 0

Abstract

Overtraining syndrome (OTS) poses a critical challenge in youth soccer, particularly during periods of rapid physiological maturation combined with high training demands. This study aimed to develop and validate a multidimensional prediction model for overtraining risk in youth soccer players by integrating physiological, psychological, and performance parameters through advanced machine learning. A longitudinal study tracked 120 male youth players (aged 12-18) from six elite South Korean academies over one competitive season (August 2023-May 2024). Data included bi-weekly blood sampling (testosterone, cortisol, creatine kinase, IL-6, TNF-α), weekly psychological assessments (RESTQ-Sport, POMS), continuous GPS-based training load monitoring, and monthly performance tests. A random forest model with SMOTE to address class imbalance achieved an AUC-ROC of 0.94 (internal validation), with sensitivity and specificity of 0.87 and 0.92, respectively. Key predictors included testosterone-to-cortisol ratio (0.89), RESTQ-Sport balance (0.83), and acute:chronic workload ratio (0.78). A simplified, non-invasive model excluding blood markers achieved an AUC-ROC of 0.89. A three-tier risk stratification system identified 85% of high-risk cases a week before performance declined. These findings underscore the model's superior predictive power and practical utility, offering a foundation for evidence-based, proactive overtraining risk management in elite youth soccer development.

青少年足球运动员过度训练风险的多维预测模型:整合生理和心理指标。
过度训练综合症(OTS)是青少年足球运动的一个重要挑战,特别是在快速生理成熟和高训练要求的时期。本研究旨在通过先进的机器学习,整合生理、心理和表现参数,开发并验证青少年足球运动员过度训练风险的多维预测模型。一项纵向研究在一个比赛赛季(2023年8月至2024年5月)期间追踪了来自韩国六所精英学院的120名男性青年球员(12-18岁)。数据包括双周血样(睾酮、皮质醇、肌酸激酶、IL-6、TNF-α)、每周心理评估(RESTQ-Sport、POMS)、基于gps的连续训练负荷监测和月度表现测试。采用SMOTE解决类别失衡的随机森林模型的AUC-ROC为0.94(内部验证),敏感性和特异性分别为0.87和0.92。关键预测因子包括睾酮对皮质醇比(0.89)、RESTQ-Sport平衡(0.83)和急慢性工作量比(0.78)。排除血液标记物的简化无创模型的AUC-ROC为0.89。一个三层风险分层系统在业绩下降前一周识别出85%的高危病例。这些发现强调了该模型优越的预测能力和实用性,为精英青少年足球发展中基于证据的前瞻性过度训练风险管理提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Sports Sciences
Journal of Sports Sciences 社会科学-运动科学
CiteScore
6.30
自引率
2.90%
发文量
147
审稿时长
12 months
期刊介绍: The Journal of Sports Sciences has an international reputation for publishing articles of a high standard and is both Medline and Clarivate Analytics-listed. It publishes research on various aspects of the sports and exercise sciences, including anatomy, biochemistry, biomechanics, performance analysis, physiology, psychology, sports medicine and health, as well as coaching and talent identification, kinanthropometry and other interdisciplinary perspectives. The emphasis of the Journal is on the human sciences, broadly defined and applied to sport and exercise. Besides experimental work in human responses to exercise, the subjects covered will include human responses to technologies such as the design of sports equipment and playing facilities, research in training, selection, performance prediction or modification, and stress reduction or manifestation. Manuscripts considered for publication include those dealing with original investigations of exercise, validation of technological innovations in sport or comprehensive reviews of topics relevant to the scientific study of sport.
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