Cepková Alena, Cepka Richard, Šooš Ľubomír, Honz Oto, Uvaček Marián, Žiška Ján, Zemková Erika
Institute of Languages, Physical Education and Social Sciences, Faculty of Mechanical Engineering, Slovak University of Technology in Bratislava, Bratislava, Slovakia.
Institute of Manufacturing Engineering and Quality Production, Faculty of Mechanical Engineering, Slovak University of Technology in Bratislava, Bratislava, Slovakia.
Front Physiol. 2025 Aug 29;16:1634125. doi: 10.3389/fphys.2025.1634125. eCollection 2025.
This study analyzes university students' physical fitness and, based on the results, applies cluster analysis to identify homogeneous groups with aim to optimize physical education programs at the university.
A group of 88 first-year students underwent standardized UNIFITTES 6-60 focusing on strength (long jump from a place, sit-ups in 30 s, bent-arm hang test), endurance (20 m shuttle run test), speed (4 × 10 m shuttle run), flexibility (sit and reach test), and anthropometric measurements to determine BMI and WHR. Cluster analysis was used to identify homogeneous groups based on students' physical fitness and anthropometric profiles.
The average BMI reached the value of 23.95, with 12% of students falling into obesity. An increased risk of cardiovascular diseases were identified in 19% (WHR). The distance in standing long jump was 212.3 ± 29.2 cm, the number of sit-ups in 30 s was 228.2 ± 4.3 repetitions, the time in bent-arm hang test was 44.9 ± 30.6 s, the reaching distance in the sit and reach test was 4.2 ± 8.8 cm, the time of the 4 × 10 m shuttle run test was 10.4 ± 0.7 s, the distance covered in the 20 m shuttle run test was 45.4 ± 18.6 runs, and the right and left hand grip strength was 50.8 ± 9.6 kg and 49.1 ± 8.7 kg, respectively. Using cluster analysis and ANOVA, three significantly different performance groups were identified: cluster 0 ≼ cluster 1 ≼ cluster 2.
These findings indicate that cluster analysis is an effective tool for distinguishing physical fitness levels in students. Identification of their performance profiles allows for the optimization of physical education programs.
本研究分析大学生的身体素质,并根据结果应用聚类分析来识别同质群体,旨在优化大学体育课程。
一组88名一年级学生接受了标准化的UNIFITTES 6 - 60测试,重点测试力量(立定跳远、30秒仰卧起坐、悬垂屈臂测试)、耐力(20米穿梭跑测试)、速度(4×10米穿梭跑)、柔韧性(坐位体前屈测试)以及人体测量以确定BMI和腰臀比。聚类分析用于根据学生的身体素质和人体测量特征识别同质群体。
平均BMI达到23.95,12%的学生属于肥胖。19%(腰臀比)的学生被确定有心血管疾病风险增加。立定跳远距离为212.3±29.2厘米,30秒仰卧起坐次数为228.2±4.3次,悬垂屈臂测试时间为44.9±30.6秒,坐位体前屈测试的伸展距离为4.2±8.8厘米,4×10米穿梭跑测试时间为10.4±0.7秒,20米穿梭跑测试的跑程为45.4±18.6次,右手和左手握力分别为50.8±9.6千克和49.1±8.7千克。通过聚类分析和方差分析,确定了三个显著不同的表现组:聚类0≼聚类1≼聚类2。
这些发现表明聚类分析是区分学生身体素质水平 的有效工具。识别他们的表现特征有助于优化体育课程。