Department of Physical Activity and Sport Sciences, Faculty of Sports Sciences, International Excellence Campus "Mare Nostrum", University of Murcia, 30720 San Javier, Spain.
BIOVETMED & SPORTSCI Research Group, University of Murcia, 30100 Murcia, Spain.
Int J Environ Res Public Health. 2021 Mar 5;18(5):2642. doi: 10.3390/ijerph18052642.
Since the accelerating development of technology applied to team sports and its subsequent high amount of information available, the need for data mining leads to the use of data reduction techniques such as Principal Component Analysis (PCA). This systematic review aims to identify determinant variables in soccer, basketball and rugby using exploratory factor analysis for, training design, performance analysis and talent identification. Three electronic databases (PubMed, Web of Science, SPORTDiscus) were systematically searched and 34 studies were finally included in the qualitative synthesis. Through PCA, data sets were reduced by 75.07%, and 3.9 ± 2.53 factors were retained that explained 80 ± 0.14% of the total variance. All team sports should be analyzed or trained based on the high level of aerobic capacity combined with adequate levels of power and strength to perform repeated high-intensity actions in a very short time, which differ between team sports. Accelerations and decelerations are mainly significant in soccer, jumps and landings are crucial in basketball, and impacts are primarily identified in rugby. Besides, from these team sports, primary information about different technical/tactical variables was extracted such as (a) soccer: occupied space, ball controls, passes, and shots; (b) basketball: throws, rebounds, and turnovers; or (c) rugby: possession game pace and team formation. Regarding talent identification, both anthropometrics and some physical capacity measures are relevant in soccer and basketball. Although overall, since these variables have been identified in different investigations, further studies should perform PCA on data sets that involve variables from different dimensions (technical, tactical, conditional).
随着应用于团队运动的技术的快速发展及其随之而来的大量信息,数据挖掘的需求导致了数据降维技术的使用,如主成分分析(PCA)。本系统评价旨在使用探索性因素分析确定足球、篮球和橄榄球中的决定变量,用于训练设计、表现分析和人才识别。我们系统性地检索了三个电子数据库(PubMed、Web of Science、SPORTDiscus),最终纳入了 34 项研究进行定性综合分析。通过 PCA,数据集减少了 75.07%,保留了 3.9 ± 2.53 个因子,这些因子解释了总方差的 80 ± 0.14%。所有团队运动都应该根据高水平的有氧能力进行分析或训练,同时结合足够的力量和强度,以便在非常短的时间内重复进行高强度动作,这在不同的团队运动中是不同的。在足球中,加速和减速是主要的;在篮球中,跳跃和着陆是至关重要的;而在橄榄球中,主要是撞击。此外,从这些团队运动中,我们提取了不同技术/战术变量的主要信息,例如:(a)足球:占据空间、控球、传球和射门;(b)篮球:投篮、篮板和失误;或(c)橄榄球:控球比赛节奏和团队组建。在人才识别方面,足球和篮球都涉及到人体测量学和一些体能指标。尽管总体而言,由于这些变量在不同的研究中已经被确定,但是进一步的研究应该对涉及不同维度(技术、战术、条件)变量的数据集进行 PCA。