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Transport most likely to cause air pollution peak exposures in everyday life: Evidence from over 2000 days of personal monitoring

机译:在日常生活中最有可能导致空气污染高峰暴露的运输:2000天内的个人监控证据

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Background: Air quality standards are typically based on long term averages - whereas a person may encounter exposure peaks throughout the day. Exposure peaks may contribute meaningfully to health impacts beyond their contribution to long term averages, and therefore should be considered alongside longer-term exposures. We aim to define and explain peak exposure to black carbon air pollution and look at the relationship between short peak exposures and longer term personal exposure.Methods: A peak detection algorithm was applied to pooled data from two independent studies. High-resolution personal black carbon monitoring was performed in 175 healthy adult volunteers for a minimum of two 24-h periods per person. At the same time, we retrieved information on the time-activity pattern. Data covered Belgium, Spain, and the United Kingdom. In total, 2053 monitoring days were included.Results: Exposure profiles revealed 2.8 +/- 1.6 (avg +/- SD) peaks per person per day. The average black carbon concentration during a peak was 4206 ng/m(3). On 5.5% of the time participants were exposed to peak concentrations, but this contributed to 21.0% of their total exposure. The short time in transport (8%), was responsible for 32.7% of the peaks. 24.1% of the measurements in transport were categorized as peak exposure; while sleeping this was only 0.9%. When considering transport modes, participants were most likely to encounter peaks while cycling (34.0%). Most peaks were encountered at rush hour, from Monday through Friday, and in the cold season. Gender and age had no impact on the presence of peaks. Daily average black carbon exposure showed only a moderate correlation with peak frequency (r = 0.44). This correlation coefficient increased when considering longer term exposure to r > 0.60 from 10 days onward.Conclusions: The occurrence of peaks varied substantially over time, across microenvironments and transport modes. Daily average exposure was moderately correlated with peak frequency. Real-time air pollution alerting systems may use the peak detection algorithm to support citizens in self-management of air pollution health effects.
机译:背景:空气质量标准通常基于长期平均值-而一个人可能在一整天中都会遇到暴露高峰。暴露高峰除了对长期平均值的贡献外,可能对健康的影响也有意义,因此应与长期暴露一并考虑。我们旨在定义和解释暴露于黑碳空气污染的峰值暴露,并探讨短期峰值暴露与长期个人暴露之间的关系。方法:将峰值检测算法应用于来自两项独立研究的汇总数据。在175位健康的成年人志愿者中进行了高分辨率的个人黑碳监测,每人最少两个24小时。同时,我们检索了有关时间活动模式的信息。数据涵盖比利时,西班牙和英国。总共包括2053个监控日。结果:暴露资料显示每人每天2.8 +/- 1.6(平均+/- SD)峰值。峰值期间的平均黑碳浓度为4206 ng / m(3)。在5.5%的时间中,参与者暴露于峰值浓度,但这占他们总暴露量的21.0%。运输时间短(8%),占高峰期的32.7%。运输中24.1%的测量被归类为峰值暴露;睡觉时只有0.9%。在考虑交通方式时,参与者最有可能在骑自行车时遇到高峰(34.0%)。在高峰时段,从周一到周五,以及在寒冷季节,遇到了大多数高峰。性别和年龄对高峰的存在没有影响。日平均黑碳暴露量仅与峰值频率呈中等相关性(r = 0.44)。当从10天开始考虑长期暴露于r> 0.60时,该相关系数会增加。结论:在微环境和运输模式下,峰的出现随时间变化很大。每日平均暴露与峰值频率呈中等程度的相关。实时空气污染警报系统可以使用峰值检测算法来支持市民自我管理空气污染健康影响。

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