Centre for Research in Environmental Epidemiology (CREAL) , 08003 Barcelona, Catalonia, Spain.
Environ Sci Technol. 2015 Mar 3;49(5):2977-82. doi: 10.1021/es505362x. Epub 2015 Feb 9.
Novel technologies, such as smartphones and small personal continuous air pollution sensors, can now facilitate better personal estimates of air pollution in relation to location. Such information can provide us with a better understanding about whether and how personal exposures relate to residential air pollution estimates, which are normally used in epidemiological studies. The aims of this study were to examine (1) the variability in personal air pollution levels during the day and (2) the relationship between modeled home and school estimates and continuously measured personal air pollution exposure levels in different microenvironments (e.g., home, school, and commute). We focused on black carbon as an indicator of traffic-related air pollution. We recruited 54 school children (aged 7-11) from 29 different schools around Barcelona as part of the BREATHE study, an epidemiological study of the relation between air pollution and brain development. For 2 typical week days during 2012-2013, the children were given a smartphone with CalFit software to obtain information on their location and physical activity level and a small sensor, the micro-aethalometer model AE51, to measure their black carbon levels simultaneously and continuously. We estimated their home and school exposure to PM2.5 filter absorbance, which is well-correlated with black carbon, using a temporally adjusted PM2.5 absorbance land use regression (LUR) model. We found considerable variation in the black carbon levels during the day, with the highest levels measured during commuting periods (geometric mean = 2.8 μg/m(3)) and the lowest levels at home (geometric mean = 1.3 μg/m(3)). Hourly temporally adjusted LUR model estimates for the home and school showed moderate to good correlation with measured personal black carbon levels at home and school (r = 0.59 and 0.68, respectively) and lower correlation with commuting trips (r = 0.32 and 0.21, respectively). The correlation between modeled home estimates and overall personal black carbon levels was 0.62. Personal black carbon levels vary substantially during the day. The correlation between modeled and measured black carbon levels was generally good, with the exception of commuting times. In conclusion, novel technologies, such as smartphones and sensors, provide insights in personal exposure to air pollution.
新技术,如智能手机和小型个人连续空气污染传感器,现在可以更方便地对与位置有关的空气污染进行更好的个人估计。此类信息可以帮助我们更好地了解个人暴露与通常用于流行病学研究的住宅空气污染估计值之间的关系,以及这种关系是否存在。本研究的目的是检验:(1) 白天个人空气污染水平的变化;(2) 不同微环境(如家庭、学校和通勤)中家庭和学校估算值与连续测量的个人空气污染暴露水平之间的关系。我们专注于黑碳作为交通相关空气污染的指标。我们招募了来自巴塞罗那周围 29 所不同学校的 54 名 7-11 岁的学生作为 BREATHE 研究的一部分,这是一项关于空气污染与大脑发育之间关系的流行病学研究。在 2012-2013 年的两个典型工作日期间,给孩子们配备了一部带有 CalFit 软件的智能手机,以获取有关其位置和身体活动水平的信息,以及一个小型传感器,微型黑碳仪模型 AE51,同时连续测量他们的黑碳水平。我们使用时间调整后的 PM2.5 吸收土地使用回归(LUR)模型,估算了他们家中和学校中 PM2.5 过滤器吸收值,PM2.5 过滤器吸收值与黑碳相关性良好。我们发现,黑碳水平在白天有很大的变化,在通勤期间测量的水平最高(几何平均值=2.8μg/m3),在家里的水平最低(几何平均值=1.3μg/m3)。家庭和学校的每小时时间调整后的 LUR 模型估算值与家庭和学校的个人黑碳测量值有中等至良好的相关性(分别为 r=0.59 和 0.68),而与通勤旅行的相关性较低(分别为 r=0.32 和 0.21)。模型化的家庭估算值与个人黑碳水平的总体相关性为 0.62。个人黑碳水平在一天中变化很大。模型化和测量的黑碳水平之间的相关性通常很好,除了通勤时间。总之,新技术,如智能手机和传感器,提供了对空气污染个人暴露的深入了解。