青少年足球运动员聚类生活方式:训练外生活方式与训练成绩关系的研究。

Nuno Mateus, Diogo Coutinho, Sara Santos, Bruno Gonçalves, Catarina Abrantes, Jaime Sampaio
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引用次数: 0

摘要

本研究基于训练外身体活动(PA)和久坐行为(SB)对年轻男性足球运动员进行聚类,以研究其对小方比赛(SSG)中身体和技战术表现的影响。在第一阶段,34名青少年男性足球运动员(平均年龄14.2±0.8岁)使用三轴加速度计监测一周,量化PA和SB水平。参与者被分为两组:运动组(较高的中高强度PA和较低的SB)和久坐组(较高的SB和较低的PA)。第二阶段,16名选手分成4支队伍参加了SSG。两支队伍分别由活跃组(ACT)和久坐组(SED)组成。他们在三个条件下进行比赛:IACTvsACT;IIACTvsSED;和IIISEDvsSED。Cumming估计图显示,在IACTvsACT中,ACT球员的总距离(d = -1.43)、慢跑(d = -0.69)、跑步(d = -1.33)和冲刺(d = -1.26)更大,球员负荷(d = -1.28)和减速(d = -0.58)更高,但步行距离(d = 0.79)、射门成功率(d = 0.87)、传球(d = 1.17)和运球(d = 0.89)较低。在IIISEDvsSED中,SED球员表现出更高的奔跑距离(d = 0.76)和更多的减速(d = 0.7),但更少的传球。贝叶斯方差分析证实,IACTvsACT比IIISEDvsSED距离更远,冲刺次数更多,贝叶斯因子分别为6.50和9.48。根据训练外PA和SB数据对年轻球员进行聚类会影响SSG的表现,PA较低和SB较高的球队表现出身体和技战术结果的受损。教练可以利用这些信息来调整训练,改善学习环境,优化球员的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustered Lifestyle Profiles of Adolescent Football Players: Examining the Relationship Between Off-Training Lifestyle and Training Performance.

This study clustered young male football players based on off-training physical activity (PA) and sedentary behavior (SB) to examine their impact on physical and technical-tactical performance in small-sided-games (SSG). In Stage 1, thirty-four adolescent male football players (mean age 14.2   ±   0.8 years) were monitored for one week using tri-axial accelerometers to quantify PA and SB levels. Participants were classified into two groups: Active (higher moderate-to-vigorous PA and lower SB) and Sedentary (higher SB and lower PA). In Stage 2, sixteen players, divided into four teams, participated in SSG. Two teams comprised players from the Active group (ACT) and two from the Sedentary group (SED). They competed under three conditions: IACTvsACT; IIACTvsSED; and IIISEDvsSED. Cumming estimation plots illustrated that ACT players in IACTvsACT covered greater total distance (d = -1.43), distances in jogging (d = -0.69), running (d = -1.33), and sprinting (d = -1.26), with higher player load (d = -1.28) and decelerations (d = -0.58), but lower walking distances (d = 0.79), successful shots (d = 0.87), passes (d = 1.17), and dribbles (d = 0.89) compared to other conditions.. SED players in IIISEDvsSED showed higher running distances (d = 0.76) and more decelerations (d = 0.7) but fewer passes. Bayesian ANOVA confirmed longer distances and more sprints in IACTvsACT versus IIISEDvsSED, with Bayes factors of 6.50 and 9.48, respectively. Clustering young players based on off-training PA and SB profiles affects SSG performance, with teams having lower PA and higher SB showing compromised physical and technical-tactical outcomes. Coaches can use this information to tailor training, enhance learning environments, and optimize player development.

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