Can Principal Component Analysis Be Used to Explore the Relationship of Rowing Kinematics and Force Production in Elite Rowers during a Step Test? A Pilot Study

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-02-17 DOI:10.3390/make5010015
M. Jensen, T. Stellingwerff, C. Pollock, J. Wakeling, M. Klimstra
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引用次数: 1

Abstract

Investigating the relationship between the movement patterns of multiple limb segments during the rowing stroke on the resulting force production in elite rowers can provide foundational insight into optimal technique. It can also highlight potential mechanisms of injury and performance improvement. The purpose of this study was to conduct a kinematic analysis of the rowing stroke together with force production during a step test in elite national-team heavyweight men to evaluate the fundamental patterns that contribute to expert performance. Twelve elite heavyweight male rowers performed a step test on a row-perfect sliding ergometer [5 × 1 min with 1 min rest at set stroke rates (20, 24, 28, 32, 36)]. Joint angle displacement and velocity of the hip, knee and elbow were measured with electrogoniometers, and force was measured with a tension/compression force transducer in line with the handle. To explore interactions between kinematic patterns and stroke performance variables, joint angular velocities of the hip, knee and elbow were entered into principal component analysis (PCA) and separate ANCOVAs were run for each performance variable (peak force, impulse, split time) with dependent variables, and the kinematic loading scores (Kpc,ls) as covariates with athlete/stroke rate as fixed factors. The results suggested that rowers’ kinematic patterns respond differently across varying stroke rates. The first seven PCs accounted for 79.5% (PC1 [26.4%], PC2 [14.6%], PC3 [11.3%], PC4 [8.4%], PC5 [7.5%], PC6 [6.5%], PC7 [4.8%]) of the variances in the signal. The PCs contributing significantly (p ≤ 0.05) to performance metrics based on PC loading scores from an ANCOVA were (PC1, PC2, PC6) for split time, (PC3, PC4, PC5, PC6) for impulse, and (PC1, PC6, PC7) for peak force. The significant PCs for each performance measure were used to reconstruct the kinematic patterns for split time, impulse and peak force separately. Overall, PCA was able to differentiate between rowers and stroke rates, and revealed features of the rowing-stroke technique correlated with measures of performance that may highlight meaningful technique-optimization strategies. PCA could be used to provide insight into differences in kinematic strategies that could result in suboptimal performance, potential asymmetries or to determine how well a desired technique change has been accomplished by group and/or individual athletes.
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主成分分析可以用来探讨赛艇运动和力量生产的关系,在一个步骤测试中的优秀赛艇运动员?一项初步研究
研究桨桨运动员在划桨过程中多个肢体运动模式与产生的力量之间的关系,可以为最佳技术提供基础见解。它还可以突出潜在的损伤机制和性能改善。本研究的目的是在一个国家级重量级男子精英队的阶段测试中,对划桨动作和力量产生进行运动学分析,以评估有助于专家表现的基本模式。12名优秀的重量级男子赛艇运动员在划桨完美滑动测力仪上进行了一步测试[5 × 1分钟,休息1分钟,设定划桨率[20,24,28,32,36]]。用测角仪测量髋关节、膝关节和肘关节的角位移和速度,用与手柄对齐的拉力/压缩力传感器测量力。为了探索运动模式与动作表现变量之间的相互作用,将髋关节、膝关节和肘关节角速度纳入主成分分析(PCA),并对每个动作变量(峰值力、冲量、分裂时间)进行独立的ANCOVAs分析,并将运动负荷评分(Kpc、ls)作为协变量,以运动员/动作率为固定因素。结果表明,赛艇运动员的运动模式在不同的冲程速率下反应不同。前7个pc占信号方差的79.5% (PC1[26.4%]、PC2[14.6%]、PC3[11.3%]、PC4[8.4%]、PC5[7.5%]、PC6[6.5%]、PC7[4.8%])。基于ANCOVA的PC加载分数,对性能指标贡献显著(p≤0.05)的PC为分裂时间(PC1, PC2, PC6),冲量(PC3, PC4, PC5, PC6)和峰值力(PC1, PC6, PC7)。每个性能指标的显著pc分别用于重建分裂时间、冲量和峰值力的运动学模式。总体而言,PCA能够区分桨手和划桨率,并揭示了划桨技术与性能指标相关的特征,这些指标可能会突出有意义的技术优化策略。PCA可以用来洞察运动策略的差异,这些差异可能导致次优表现,潜在的不对称,或者确定团队和/或个人运动员完成所需技术变化的程度。
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CiteScore
6.30
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0.00%
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审稿时长
7 weeks
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