Rivadulla Adrian R, Chen Xi, Cazzola Dario, Trewartha Grant, Preatoni Ezio
Department for Health, University of Bath, Bath, UK.
Department of Computer Science, University of Bath, Bath, UK.
Sports Biomech. 2024 Jul 11:1-24. doi: 10.1080/14763141.2024.2372608.
Establishing the links between running technique and economy remains elusive due to high inter-individual variability. Clustering runners by technique may enable tailored training recommendations, yet it is unclear if different techniques are equally economical and whether clusters are speed-dependent. This study aimed to identify clusters of runners based on technique and to compare cluster kinematics and running economy. Additionally, we examined the agreement of clustering partitions of the same runners at different speeds. Trunk and lower-body kinematics were captured from 84 trained runners at different speeds on a treadmill. We used Principal Component Analysis for dimensionality reduction and agglomerative hierarchical clustering to identify groups of runners with a similar technique, and we evaluated cluster agreement across speeds. Clustering runners at different speeds independently produced different partitions, suggesting single speed clustering can fail to capture the full speed profile of a runner. The two clusters identified using data from the whole range of speeds showed differences in pelvis tilt and duty factor. In agreement with self-optimisation theories, there were no differences in running economy, and no differences in participants' characteristics between clusters. Considering inter-individual technique variability may enhance the efficacy of training designs as opposed to 'one size fits all' approaches.
由于个体间的高度变异性,确定跑步技术与经济性之间的联系仍然很困难。按技术对跑步者进行聚类可能会给出针对性的训练建议,但不同技术是否同样经济以及聚类是否依赖速度尚不清楚。本研究旨在根据技术识别跑步者的聚类,并比较聚类的运动学和跑步经济性。此外,我们还研究了同一跑步者在不同速度下聚类划分的一致性。在跑步机上以不同速度对84名训练有素的跑步者的躯干和下肢运动学进行了捕捉。我们使用主成分分析进行降维和凝聚层次聚类来识别技术相似的跑步者群体,并评估不同速度下聚类的一致性。以不同速度独立对跑步者进行聚类会产生不同的划分,这表明单速度聚类可能无法捕捉跑步者的完整速度特征。使用整个速度范围内的数据识别出的两个聚类在骨盆倾斜和步幅系数上存在差异。与自我优化理论一致,跑步经济性和聚类之间参与者特征方面没有差异。考虑个体间的技术变异性可能会提高训练设计的效果,而不是采用“一刀切”的方法。