Liu Wei, Chambers Timothy, Clevenger Kimberly A, Pfeiffer Karin A, Rzotkiewicz Zachary, Park Hyunseo, Pearson Amber L
China Institute of Water Resources and Hydropower Research, Beijing, China.
Department of Geography, Environment & Spatial Sciences, Michigan State University, East Lansing, MI, United States of America.
PLoS One. 2024 May 3;19(5):e0299943. doi: 10.1371/journal.pone.0299943. eCollection 2024.
Spending time outdoors is associated with increased time spent in physical activity, lower chronic disease risk, and wellbeing. Many studies rely on self-reported measures, which are prone to recall bias. Other methods rely on features and functions only available in some GPS devices. Thus, a reliable and versatile method to objectively quantify time spent outdoors is needed. This study sought to develop a versatile method to classify indoor and outdoor (I/O) GPS data that can be widely applied using most types of GPS and accelerometer devices. To develop and test the method, five university students wore an accelerometer (ActiGraph wGT3X-BT) and a GPS device (Canmore GT-730FL-S) on an elastic belt at the right hip for two hours in June 2022 and logged their activity mode, setting, and start time via activity diaries. GPS trackers were set to collect data every 5 seconds. A rule-based point cluster-based method was developed to identify indoor, outdoor, and in-vehicle time. Point clusters were detected using an application called GPSAS_Destinations and classification were done in R using accelerometer lux, building footprint, and park location data. Classification results were compared with the submitted activity diaries for validation. A total of 7,006 points for all participants were used for I/O classification analyses. The overall I/O GPS classification accuracy rate was 89.58% (Kappa = 0.78), indicating good classification accuracy. This method provides reliable I/O clarification results and can be widely applied using most types of GPS and accelerometer devices.
户外活动时间与体育活动时间增加、慢性病风险降低以及幸福感相关。许多研究依赖自我报告的测量方法,这种方法容易出现回忆偏差。其他方法则依赖于某些GPS设备才具备的功能特性。因此,需要一种可靠且通用的方法来客观量化户外活动时间。本研究旨在开发一种通用方法,用于对室内和室外(I/O)GPS数据进行分类,该方法可使用大多数类型的GPS和加速度计设备广泛应用。为了开发和测试该方法,2022年6月,五名大学生在右臀部的弹性腰带上佩戴了一个加速度计(ActiGraph wGT3X - BT)和一个GPS设备(Canmore GT - 730FL - S),持续两小时,并通过活动日记记录他们的活动模式、环境和开始时间。GPS追踪器设置为每5秒收集一次数据。开发了一种基于规则的点聚类方法来识别室内、室外和车内时间。使用名为GPSAS_Destinations的应用程序检测点聚类,并在R中使用加速度计光照度、建筑物占地面积和公园位置数据进行分类。将分类结果与提交的活动日记进行比较以进行验证。所有参与者总共7006个点用于I/O分类分析。I/O GPS总体分类准确率为89.58%(Kappa = 0.78),表明分类准确性良好。该方法提供了可靠的I/O分类结果,并且可以使用大多数类型的GPS和加速度计设备广泛应用。