Robert Nilsson, Apostolos Theos, Ann-Sofie Lindberg, Richard A Ferguson, Christer Malm
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引用次数: 1
摘要
高山滑雪是一项复杂的运动,需要很高的身体和技术能力。测试运动员的身体状况对于提高他们达到精英运动特定表现的能力可能很重要。本研究旨在探讨瑞典奥委会国家测试系统(Fysprofilen)和人体测量变量在预测优秀高山滑雪运动员竞技表现方面的预测能力,以fsamdsamationinternationale de Ski分数表示。采用双变量和多变量统计方法对14名瑞典优秀高山滑雪女运动员的数据进行分析。生理测试结果和人体测量数据不能产生显著的双变量或多变量模型来预测竞争表现。fcv国际滑雪大回转和大回转排名的多元回归(R2)和预测(Q2)模型R2=0.27 ~ 0.43, Q2=+- 0.8 ~ 0.17,模型无效。对这些和之前的研究结果的总体解释是,未来的测试电池必须在实施之前进行验证,并且在预测未来的竞争结果时,应该谨慎对待测试结果。应用未经竞技表现验证的测试可能会误导旨在提高运动员个人运动特定表现的教练和训练顾问。
Lack of Predictive Power in Commonly Used Tests for Performance in Alpine Skiing.
Competitive alpine skiing is a complex sport that requires high physical and technical competence. Testing the physical status of athletes may be important to increase their ability to achieve elite sport-specific performance. This study aimed to investigate the predictive power of the national test battery of the Swedish Olympic Committee (Fysprofilen) and anthropometric variables in the prediction of competitive performance of elite alpine skiers, indicated by Fédération Internationale de Ski points. Data from fourteen Swedish elite female alpine skiers were analyzed using bivariate and multivariate statistical methods. Physiological test results and anthropometric data could not generate significant bivariate or multivariate models for prediction of competitive performance. Multivariate regression (R2) and prediction (Q2) models for Fédération Internationale de Ski Slalom and Giant Slalom rank reached R2=0.27 to 0.43, Q2=+- 0.8 to-0.17, indicating no valid models. The overall interpretation of these and previous findings are that future test batteries must be validated before implemented, and that test results should be treated with caution when it comes to prediction of future competitive results. Applying tests that are not validated against competitive performance risk misleading coaches and training advisors who aim to increase the sports-specific performance of the individual athlete.