男性辅助训练和损伤模式:女子水球损伤的超谱增强分析。

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES Frontiers in digital health Pub Date : 2025-01-06 eCollection Date: 2024-01-01 DOI:10.3389/fdgth.2024.1503831
Xuehui Feng, Zhibin Wang, Zheng Wang, Chen He, Hongxing Xun, Yuanfa Chen, Jie Ding, Gen Chen, Zhe Liu
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引用次数: 0

摘要

前言:本研究的目的是比较女性水球运动员在实施男性辅助女性训练(MAFT)计划前后的损伤模式。本研究旨在找出影响这些变化的关键因素,并提出相应的伤害预防措施。方法:采用模式分析和分类技术对损伤数据进行分析。采用超图神经网络(Hypergraph Neural Network, HGNN)进行模式提取,将每个运动员表示为超图中的一个节点,节点维度捕获高阶关系嵌入信息。我们应用图拉普拉斯算子对邻域特征进行聚合,并基于不同的影响因素对超图的结构和特征差异进行可视化。此外,我们引入了图结构正则化来提高分类精度,防止在相对较小的数据集中过拟合,增强我们识别影响损伤类型的关键因素的能力。结果:分析显示MAFT方案前后损伤模式存在显著差异,并通过模式识别和分类技术确定了具体的影响因素。在图结构正则化的支持下,分类模型在区分导致损伤类型变化的关键特征方面取得了更高的准确性。讨论:这些发现提供了影响女子水球运动员损伤模式的关键因素的见解,并强调了MAFT计划在减轻某些损伤风险方面的有效性。根据识别的特征,我们提出有针对性的预防措施,以减少伤害的发生,特别是与MAFT训练模式带来的变化有关。需要进一步的研究来完善这些措施并探索其长期有效性。
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Male-assisted training and injury patterns: hypergraph-enhanced analysis of injuries in women's water polo.

Introduction: The aim of this study is to compare the injury patterns of female water polo players before and after the implementation of the Male-Assisted Female Training (MAFT) program. The study seeks to identify key factors influencing these changes and propose corresponding injury prevention measures.

Methods: We utilized pattern analysis and classification techniques to explore the injury data. A Hypergraph Neural Network (HGNN) was employed for pattern extraction, where each athlete was represented as a node in a hypergraph, with node dimensions capturing high-order relational embedding information. We applied the graph Laplacian operator to aggregate neighborhood features and visualize structural and feature differences in hypergraphs based on different influencing factors. Additionally, we introduced graph structure regularization to improve classification accuracy and prevent overfitting in the relatively small dataset, enhancing our ability to identify critical factors affecting injury types.

Results: The analysis revealed significant differences in injury patterns before and after the MAFT program, with specific influencing factors being identified through both pattern recognition and classification techniques. The classification models, supported by graph structure regularization, achieved improved accuracy in distinguishing key features that contributed to changes in injury types.

Discussion: These findings provide insights into the critical factors influencing injury patterns in female water polo players and highlight the effectiveness of the MAFT program in mitigating certain injury risks. Based on the identified features, we propose targeted preventive measures to reduce injury incidence, particularly in relation to changes brought about by the MAFT training mode. Further research is needed to refine these measures and explore their long-term effectiveness.

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来源期刊
CiteScore
4.20
自引率
0.00%
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0
审稿时长
13 weeks
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