Dane Kathryn, Rushe Ellen, Connors Will, West Stephen W, Hendricks Sharief, Laurent Thomas, Simms Ciaran, Wilson Fiona, Ventresque Anthony
Research Ireland Lero & School of Computer Science and Statistics, Trinity College Dublin, Dublin, Ireland.
Discipline of Physiotherapy, School of Medicine, Trinity College Dublin, Dublin, Ireland.
Eur J Sport Sci. 2025 Aug;25(8):e70018. doi: 10.1002/ejsc.70018.
Concerns about the cumulative effects of head acceleration events in rugby are growing, but how tackle events lead to direct head contact in women's rugby remains underexplored. This cross-sectional study aimed to develop and evaluate a machine learning model to identify characteristics associated with direct head contact and incorrect tackler head placement in elite women's rugby. Match situational and precontact technical characteristics (n = 31) from 1500 randomly selected tackle events were coded visually and retrospectively analyzed from the 2022-23 Women's Six Nations Championship. A machine learning model was developed and evaluated using a grid search with 5-fold cross-validations and F scores (i.e., a measure of predictive performance). The top modifiable characteristics associated with the target outcomes across 100 test sets were identified by mutual importance and decision tree modeling. The top modifiable characteristics linked to direct head contact to the tackler were incorrect head placement, coming to balance, and foot placement. Tackle direction, point of contact on the tackler, and multiplayer tackles were key characteristics for incorrect tackler head placement. Tackler drop height, front/oblique tackle direction, and multiplayer tackles were strongly associated with direct head contact to the ball-carrier. Incorrect tackler head placement, the direction of tackle, tackler drop height, and multiplayer tackles are key characteristics in direct head contact events in elite women's rugby. Addressing these characteristics should be prioritized in contact training practices, education resources, and law enforcement to enhance player safety and direct head contact events in the women's game.
对橄榄球运动中头部加速事件累积影响的担忧日益增加,但在女子橄榄球运动中,擒抱动作如何导致直接头部接触仍未得到充分研究。这项横断面研究旨在开发和评估一种机器学习模型,以识别与精英女子橄榄球中直接头部接触和擒抱者头部放置不正确相关的特征。从2022 - 23年女子六国锦标赛中随机选取1500次擒抱事件的比赛情境和接触前技术特征(n = 31)进行视觉编码,并进行回顾性分析。使用具有5折交叉验证和F分数(即预测性能的一种度量)的网格搜索来开发和评估机器学习模型。通过相互重要性和决策树建模确定了100个测试集中与目标结果相关的最重要的可修改特征。与擒抱者直接头部接触相关的最重要的可修改特征是头部放置不正确、达到平衡和脚部放置。擒抱方向、擒抱者的接触点以及多人擒抱是擒抱者头部放置不正确的关键特征。擒抱者下落高度、正面/斜向擒抱方向以及多人擒抱与与持球者的直接头部接触密切相关。擒抱者头部放置不正确、擒抱方向、擒抱者下落高度和多人擒抱是精英女子橄榄球直接头部接触事件中的关键特征。在接触训练实践、教育资源和执法中应优先解决这些特征问题,以提高女子比赛中球员的安全性并减少直接头部接触事件。