Nethery Elizabeth, Mallach Gary, Rainham Daniel, Goldberg Mark S, Wheeler Amanda J
Water and Air Quality Bureau, HECSB, Health Canada, 269 Laurier Avenue West, AL 4903C, Ottawa, Ontario K1A 0 K9, Canada.
Environ Health. 2014 May 8;13(1):33. doi: 10.1186/1476-069X-13-33.
Personal exposure studies of air pollution generally use self-reported diaries to capture individuals' time-activity data. Enhancements in the accuracy, size, memory and battery life of personal Global Positioning Systems (GPS) units have allowed for higher resolution tracking of study participants' locations. Improved time-activity classifications combined with personal continuous air pollution sampling can improve assessments of location-related air pollution exposures for health studies.
Data was collected using a GPS and personal temperature from 54 children with asthma living in Montreal, Canada, who participated in a 10-day personal air pollution exposure study. A method was developed that incorporated personal temperature data and then matched a participant's position against available spatial data (i.e., road networks) to generate time-activity categories. The diary-based and GPS-generated time-activity categories were compared and combined with continuous personal PM2.5 data to assess the impact of exposure misclassification when using diary-based methods.
There was good agreement between the automated method and the diary method; however, the automated method (means: outdoors = 5.1%, indoors other =9.8%) estimated less time spent in some locations compared to the diary method (outdoors = 6.7%, indoors other = 14.4%). Agreement statistics (AC1 = 0.778) suggest 'good' agreement between methods over all location categories. However, location categories (Outdoors and Transit) where less time is spent show greater disagreement: e.g., mean time "Indoors Other" using the time-activity diary was 14.4% compared to 9.8% using the automated method. While mean daily time "In Transit" was relatively consistent between the methods, the mean daily exposure to PM2.5 while "In Transit" was 15.9 μg/m3 using the automated method compared to 6.8 μg/m3 using the daily diary.
Mean times spent in different locations as categorized by a GPS-based method were comparable to those from a time-activity diary, but there were differences in estimates of exposure to PM2.5 from the two methods. An automated GPS-based time-activity method will reduce participant burden, potentially providing more accurate and unbiased assessments of location. Combined with continuous air measurements, the higher resolution GPS data could present a different and more accurate picture of personal exposures to air pollution.
空气污染的个人暴露研究通常使用自我报告的日记来获取个人的时间活动数据。个人全球定位系统(GPS)设备在精度、尺寸、内存和电池寿命方面的提升,使得能够对研究参与者的位置进行更高分辨率的跟踪。改进的时间活动分类与个人连续空气污染采样相结合,可以改善健康研究中与位置相关的空气污染暴露评估。
从加拿大蒙特利尔市54名患有哮喘的儿童中收集了使用GPS和个人温度的数据,这些儿童参与了一项为期10天的个人空气污染暴露研究。开发了一种方法,该方法纳入个人温度数据,然后将参与者的位置与可用的空间数据(即道路网络)进行匹配,以生成时间活动类别。比较了基于日记和基于GPS生成的时间活动类别,并将其与连续的个人PM2.5数据相结合,以评估使用基于日记的方法时暴露错误分类的影响。
自动方法与日记方法之间有良好的一致性;然而,与日记方法相比,自动方法(平均值:户外 = 5.1%,其他室内 = 9.8%)估计在某些位置花费的时间更少(户外 = 6.7%,其他室内 = 14.4%)。一致性统计(AC1 = 0.778)表明,在所有位置类别上,方法之间有“良好”的一致性。然而,花费时间较少的位置类别(户外和交通)显示出更大的差异:例如,使用时间活动日记的“其他室内”平均时间为14.4%,而使用自动方法为9.8%。虽然两种方法之间“在交通中”的平均每日时间相对一致,但使用自动方法时“在交通中”的平均每日PM2.5暴露量为15.9μg/m3,而使用每日日记时为6.8μg/m3。
基于GPS的方法分类的不同位置花费的平均时间与时间活动日记的结果相当,但两种方法对PM2.5暴露的估计存在差异。基于GPS的自动时间活动方法将减轻参与者的负担,有可能提供更准确和无偏差的位置评估。结合连续的空气测量,更高分辨率的GPS数据可能会呈现出不同且更准确的个人空气污染暴露情况。