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利用全球定位系统研究青少年的身体活动:巴西 ESPAÇOS 青少年项目。

Use of global positioning system for physical activity research in youth: ESPAÇOS Adolescentes, Brazil.

机构信息

Graduate Program in Physical Education, Federal University of Parana, Rua Coracao de Maria, 92 Curitiba, Parana, Brazil; Research Group in Physical Activity and Quality of Life (GPAQ), Pontifical Catholic University of Parana, Rua Imaculada Conceicao, 1155 Curitiba, Brazil; Center for Geospatial Analytics, College of Natural Resources, North Carolina State University, 2820 Faucette Drive, 27695 Raleigh, NC, United States; Department of Parks, Recreation and Tourism Management, North Carolina State University, 2820 Faucette Drive, 27695 Raleigh, NC, United States.

Department of Sports Science and Clinical Biomechanics, University of Southern Denmark, Campusvej 55, 5230 Odense, Denmark.

出版信息

Prev Med. 2017 Oct;103S:S59-S65. doi: 10.1016/j.ypmed.2016.12.026. Epub 2016 Dec 23.

Abstract

The built environment is an important factor associated with physical activity and sedentary behavior (SB) during adolescence. This study presents the methods for objective assessment of context-specific moderate to vigorous physical activity (MVPA) and SB, as well as describes results from the first project using such methodology in adolescents from a developing country. An initial sample of 381 adolescents was recruited from 32 census tracts in Curitiba, Brazil (2013); 80 had their homes geocoded and wore accelerometer and GPS devices for seven days. Four domains were defined as important contexts: home, school, transport and leisure. The majority of participants (n=80) were boys (46; 57.5%), with a normal BMI (52; 65.0%) and a mean age (SD) of 14.5 (5.5) years. Adolescents spent most of their time at home, engaging in SB. Overall, the largest proportion of MVPA was while in transport (17.1% of time spent in this context) and SB while in leisure (188.6min per day). Participants engaged in MVPA for a median of 28.7 (IQR 18.2-43.2) and 17.9 (IQR 9.2-32.1) minutes during week and weekend days, respectively. Participants spent most of their day in the leisure and home domains. The use of Geographic Information System (GIS), Global Positioning System (GPS) and accelerometer data allowed objective identification of the amount of time spent in MVPA and SB in four different domains. Though the combination of objective measures is still an emerging methodology, this is a promising and feasible approach to understanding interactions between people and their environments in developing countries.

摘要

建筑环境是与青少年时期身体活动和久坐行为(SB)相关的一个重要因素。本研究介绍了客观评估特定于情境的中等到剧烈身体活动(MVPA)和 SB 的方法,并描述了在发展中国家青少年中首次使用这种方法的项目结果。最初从巴西库里蒂巴的 32 个普查区招募了 381 名青少年作为初始样本(2013 年);其中 80 人的家庭进行了地理编码,并佩戴加速度计和 GPS 设备进行了七天的监测。定义了四个重要的环境领域:家庭、学校、交通和休闲。大多数参与者(n=80)为男孩(46;57.5%),BMI 正常(52;65.0%),平均年龄(SD)为 14.5(5.5)岁。青少年大部分时间都在家中,从事 SB。总的来说,MVPA 大部分发生在交通(17.1%的时间花在这种环境中)和休闲时的 SB(每天 188.6 分钟)。参与者在一周和周末的 MVPA 中位数分别为 28.7(IQR 18.2-43.2)和 17.9(IQR 9.2-32.1)分钟。参与者大部分时间都在休闲和家庭领域度过。GIS、GPS 和加速度计数据的使用允许客观地识别出在四个不同领域中花费的 MVPA 和 SB 的时间量。尽管客观测量的结合仍然是一种新兴的方法,但这是一种很有前途且可行的方法,可以帮助我们理解发展中国家的人和他们的环境之间的相互作用。

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