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你的身体活动就在你的手中——在欧洲最肥胖的国家之一匈牙利的大学生中进行的客观活动追踪。

Your Physical Activity Is in Your Hand-Objective Activity Tracking Among University Students in Hungary, One of the Most Obese Countries in Europe.

机构信息

Institute of Applied Informatics and Logistics, University of Debrecen, Debrecen, Hungary.

Institute of Sport Management, University of Debrecen, Debrecen, Hungary.

出版信息

Front Public Health. 2021 Sep 16;9:661471. doi: 10.3389/fpubh.2021.661471. eCollection 2021.

Abstract

Inadequate physical activity is currently one of the leading risk factors for mortality worldwide. University students are a high-risk group in terms of rates of obesity and lack of physical activity. In recent years, activity trackers have become increasingly popular for measuring physical activity. The aim of the present study is to examine whether university students in Hungary meet the health recommendations (10,000 steps/day) for physical activity and investigate the impact of different variables (semester-exam period, days-weekdays, days, months, sex) on the level of physical activity in free-living conditions for 3 months period. In free-living conditions, 57 healthy university students (male: 25 female: 32 mean age: 19.50 SD = 1.58) wore MiBand 1S activity tracker for 3 months. Independent sample -tests were used to explore differences between sexes. A One-way analysis of variance (ANOVA) was used to explore differences in measures among different grouping variables and step count. A Two-way ANOVA was conducted to test for differences in the number of steps by days of the week, months, seasons and for sex differences. Tukey HSD tests were used to examine significant differences. Students in the study achieved 10,000 steps per day on 17% of days (minimum: 0%; maximum: 76.5%; median: 11.1%). Unfortunately, 70% of the participants did not comply the 10,000 steps at least 80% of the days studied. No statistical difference were found between sexes. However, significant differences were found between BMI categories (underweight <18.50 kg/m; normal range 18.50-24.99 kg/m; overweight: 25.00-29.99 kg/m obese > 30 kg/m, the number of steps in the overweight category was significantly lower ( = 72.073, < 0.001). The average daily steps were significantly higher in autumn ( = 11.457, < 0.001) than in winter. During exam period average steps/day were significantly lower than during fall semester ( = 13.696, < 0.001). On weekdays, steps were significantly higher than on weekends ( = 14.017, < 0.001), and even within this, the greatest physical activity can be done by the middle of the week. Our data suggest that university students may be priority groups for future physical activity interventions. Commercial activity trackers provide huge amount of data for relatively low cost therefore it has the potential to objectively analyze physical activity and plan interventions.

摘要

身体活动不足是目前全球导致死亡的主要危险因素之一。大学生中肥胖和缺乏身体活动的比例较高。近年来,活动追踪器在测量身体活动方面越来越受欢迎。本研究旨在检验匈牙利大学生是否达到了(每天 10,000 步)的身体活动健康建议,并调查不同变量(考试学期、工作日天数、天数、月份、性别)对 3 个月自由生活条件下身体活动水平的影响。在自由生活条件下,57 名健康大学生(男性 25 名,女性 32 名,平均年龄 19.50,标准差 1.58)佩戴了 MiBand 1S 活动追踪器 3 个月。独立样本 t 检验用于探索性别差异。单因素方差分析(ANOVA)用于探索不同分组变量和步数测量之间的差异。进行双向方差分析以测试工作日、月份、季节和性别差异对步数的影响。Tukey HSD 检验用于检查显著差异。研究中的学生在 17%的天数(最小值:0%;最大值:76.5%;中位数:11.1%)达到每天 10,000 步。不幸的是,70%的参与者没有在研究的至少 80%的天数内达到 10,000 步。性别之间没有发现统计学差异。然而,在 BMI 类别(体重不足<18.50 kg/m;正常范围 18.50-24.99 kg/m;超重:25.00-29.99 kg/m;肥胖>30 kg/m 之间发现了显著差异,超重类别的步数明显较低(= 72.073,<0.001)。秋季的平均每日步数(= 11.457,<0.001)明显高于冬季。考试期间的平均每日步数明显低于秋季学期(= 13.696,<0.001)。在工作日,步数明显高于周末(= 14.017,<0.001),即使在这其中,一周中的中间几天身体活动量最大。我们的数据表明,大学生可能是未来身体活动干预的优先群体。商业活动追踪器以相对较低的成本提供大量数据,因此具有客观分析身体活动和计划干预的潜力。

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