Colyer Steffi L, Stokes Keith A, Bilzon James L J, Cardinale Marco, Salo Aki I T
Int J Sports Physiol Perform. 2017 Jan;12(1):81-89. doi: 10.1123/ijspp.2015-0631. Epub 2016 Aug 24.
An extensive battery of physical tests is typically employed to evaluate athletic status and/or development, often resulting in a multitude of output variables. The authors aimed to identify independent physical predictors of elite skeleton start performance to overcome the general problem of practitioners employing multiple tests with little knowledge of their predictive utility.
Multiple 2-d testing sessions were undertaken by 13 high-level skeleton athletes across a 24-wk training season and consisted of flexibility, dry-land push-track, sprint, countermovement-jump, and leg-press tests. To reduce the large number of output variables to independent factors, principal-component analysis (PCA) was conducted. The variable most strongly correlated to each component was entered into a stepwise multiple-regression analysis, and K-fold validation assessed model stability.
PCA revealed 3 components underlying the physical variables: sprint ability, lower-limb power, and strength-power characteristics. Three variables that represented these components (unresisted 15-m sprint time, 0-kg jump height, and leg-press force at peak power, respectively) significantly contributed (P < .01) to the prediction (R = .86, 1.52% standard error of estimate) of start performance (15-m sled velocity). Finally, the K-fold validation revealed the model to be stable (predicted vs actual R = .77; 1.97% standard error of estimate).
Only 3 physical-test scores were needed to obtain a valid and stable prediction of skeleton start ability. This method of isolating independent physical variables underlying performance could improve the validity and efficiency of athlete monitoring, potentially benefitting sport scientists, coaches, and athletes alike.
通常采用一系列广泛的体能测试来评估运动状态和/或发育情况,这往往会产生大量的输出变量。作者旨在确定精英雪橇滑雪起始性能的独立体能预测指标,以解决从业者在使用多项测试时对其预测效用了解甚少这一普遍问题。
13名高水平雪橇滑雪运动员在为期24周的训练赛季中进行了多次二维测试,包括灵活性、旱地推雪橇、短跑、纵跳和腿举测试。为了将大量的输出变量简化为独立因素,进行了主成分分析(PCA)。与每个成分相关性最强的变量被纳入逐步多元回归分析,并采用K折验证评估模型稳定性。
主成分分析揭示了体能变量背后的3个成分:短跑能力、下肢力量和力量-功率特征。分别代表这些成分的3个变量(无阻力15米短跑时间、0千克跳高高和最大功率时的腿举力量)对起始性能(15米雪橇速度)的预测有显著贡献(P <.01)(R =.86,估计标准误差为1.52%)。最后,K折验证表明该模型是稳定的(预测值与实际值的R =.77;估计标准误差为1.97%)。
仅需3个体能测试分数就能对雪橇滑雪起始能力进行有效且稳定的预测。这种分离表现背后独立体能变量的方法可以提高运动员监测的有效性和效率,可能使运动科学家、教练和运动员都受益。