National Exposure Research Laboratory, US EPA, Research Triangle Park, NC, USA.
National Center for Environmental Assessment, US EPA, Research Triangle Park, NC, USA.
J Expo Sci Environ Epidemiol. 2014 Jul;24(4):412-20. doi: 10.1038/jes.2014.13. Epub 2014 Mar 12.
A critical aspect of air pollution exposure assessment is the estimation of the time spent by individuals in various microenvironments (ME). Accounting for the time spent in different ME with different pollutant concentrations can reduce exposure misclassifications, while failure to do so can add uncertainty and bias to risk estimates. In this study, a classification model, called MicroTrac, was developed to estimate time of day and duration spent in eight ME (indoors and outdoors at home, work, school; inside vehicles; other locations) from global positioning system (GPS) data and geocoded building boundaries. Based on a panel study, MicroTrac estimates were compared with 24-h diary data from nine participants, with corresponding GPS data and building boundaries of home, school, and work. MicroTrac correctly classified the ME for 99.5% of the daily time spent by the participants. The capability of MicroTrac could help to reduce the time-location uncertainty in air pollution exposure models and exposure metrics for individuals in health studies.
空气污染暴露评估的一个关键方面是估计个体在各种微环境(ME)中所花费的时间。考虑到在不同污染物浓度的不同 ME 中所花费的时间,可以减少暴露分类错误,而未能做到这一点可能会给风险估计增加不确定性和偏差。在这项研究中,开发了一种分类模型,称为 MicroTrac,用于从全球定位系统(GPS)数据和地理编码的建筑物边界估算 8 个 ME(家中、工作场所、学校的室内和室外;车内;其他地点)的时间和持续时间。基于一项面板研究,将 MicroTrac 的估算值与 9 名参与者的 24 小时日记数据进行了比较,这些参与者的 GPS 数据和家庭、学校和工作场所的建筑物边界相匹配。MicroTrac 正确分类了参与者每天 99.5%的 ME 时间。MicroTrac 的功能可以帮助减少健康研究中个体的空气污染暴露模型和暴露指标中的时间-位置不确定性。