Multivariate analyses of individual variation in soccer skill as a tool for talent identification and development: utilising evolutionary theory in sports science

德雷福斯技能获得模型 鉴定(生物学) 运动技能 任务(项目管理) 多元统计 应用心理学 适应(眼睛) 心理学 变化(天文学) 公制(单位) 体育科学 多元分析 计算机科学 发展心理学 机器学习 工程类 运营管理 物理 生物 经济 神经科学 植物 经济增长 系统工程 天体物理学 生理学
作者
Robbie S. Wilson,Rob S. James,Gwendolyn K. David,Ecki Hermann,Oliver J. Morgan,Amanda C. Niehaus,Andrew H. Hunter,Doug Thake,Michelle Smith
出处
期刊:Journal of Sports Sciences [Taylor & Francis]
卷期号:34 (21): 2074-2086 被引量:46
标识
DOI:10.1080/02640414.2016.1151544
摘要

The development of a comprehensive protocol for quantifying soccer-specific skill could markedly improve both talent identification and development. Surprisingly, most protocols for talent identification in soccer still focus on the more generic athletic attributes of team sports, such as speed, strength, agility and endurance, rather than on a player’s technical skills. We used a multivariate methodology borrowed from evolutionary analyses of adaptation to develop our quantitative assessment of individual soccer-specific skill. We tested the performance of 40 individual academy-level players in eight different soccer-specific tasks across an age range of 13–18 years old. We first quantified the repeatability of each skill performance then explored the effects of age on soccer-specific skill, correlations between each of the pairs of skill tasks independent of age, and finally developed an individual metric of overall skill performance that could be easily used by coaches. All of our measured traits were highly repeatable when assessed over a short period and we found that an individual’s overall skill – as well as their performance in their best task – was strongly positively correlated with age. Most importantly, our study established a simple but comprehensive methodology for assessing skill performance in soccer players, thus allowing coaches to rapidly assess the relative abilities of their players, identify promising youths and work on eliminating skill deficits in players.

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