建立交通污染的多污染物暴露指标:宿舍吸入对车辆排放(DRIVE)的研究。

J A Sarnat, A Russell, D Liang, J L Moutinho, R Golan, R J Weber, D Gao, S E Sarnat, H H Chang, R Greenwald, T Yu
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The overarching goal of the study was to evaluate the suitability of these indicators for use as primary traffic exposure metrics in panel-based and small-cohort epidemiological studies.</p><p><strong>Methods: </strong>Intensive field sampling was conducted on the campus of the Georgia Institute of Technology (GIT) between September 2014 and January 2015 at 8 monitoring sites (2 indoors and 6 outdoors) ranging from 5 m to 2.3 km from the busiest and most congested highway artery in Atlanta. In addition, 54 GIT students living in one of two dormitories either near (20 m) or far (1.4 km) from the highway were recruited to conduct personal exposure sampling and weekly biomonitoring. 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Our FPMOP indicator was based on an acellular assay involving the depletion of dithiothreitol (DTT), considering both water-soluble and insoluble components (referred to as FPMOP<sup>total-DTT</sup>). In addition, a limited assessment of 18 low-cost sensors was added to the study to supplement the four original aims.</p><p><strong>Results: </strong>Pollutant levels measured during the study showed a low impact by this highway hotspot source on its surrounding vicinity. These findings are broadly consistent with results from other studies throughout North America showing decreased relative contributions to urban air pollution from primary traffic emissions. We view these reductions as an indication of a changing near-road environment, facilitated by the effectiveness of mobile source emission controls. Many of the primary pollutant species, including NO, CO, and BC, decreased to near background levels by 20 to 30 m from the highway source. Patterns of correlation among the sites also varied by pollutant and time of day. NO<sub>2</sub> exhibited spatial trends that differed from those of the other single-pollutant primary traffic indicators. We believe this was caused by kinetic limitations in the photochemical chemistry, associated with primary emission reductions, required to convert the NO-dominant primary NO<sub>x</sub>, emitted from automobiles, to NO<sub>2</sub>. This finding provides some indication of limitations in the use of NO<sub>2</sub> as a primary traffic exposure indicator in panel-based health effect studies. Roadside monitoring of NO, CO, and BC tended to be more strongly correlated with sites, both near and far from the road, during morning rush hour periods and often weakly to moderately correlated during other time periods of the day. This pattern was likely associated with diurnal changes in mixing and chemistry and their impact on spatial heterogeneity across the campus. Among our candidate multipollutant primary traffic indicators, we report several key findings related to the use of oxidative potential (OP)-based indicators. Although earlier studies have reported elevated levels of FPMOP in direct exhaust emissions, we found that atmospheric processing further enhanced FPMOP<sup>total-DTT</sup>, likely associated with the oxidation of primary polycyclic aromatic hydrocarbons (PAHs) to quinones and hydroxyquinones and with the oxidization and water solubility of metals. This has important implications in terms both of the utility of FPMOP<sup>total-DTT</sup> as a marker for exhaust emissions and of the importance of atmospheric processing of particulate matter (PM) being tied to potential health outcomes. The results from the personal exposure monitoring also point to the complexity and diversity of the spatiotemporal variability patterns among the study monitoring sites and the importance of accounting for location and spatial mobility when estimating exposures in panel-based and small-cohort studies. This was most clearly demonstrated with the personal BC measurements, where ambient roadside monitoring was shown to be a poor surrogate for exposures to BC. Alternative surrogates, including ambient and indoor BC at the participants' respective dorms, were more strongly associated with personal BC, and knowledge of the participants' mean proximity to the highway was also shown to explain a substantial level of the variability in corresponding personal exposures to both BC and NO<sub>2</sub>. In addition, untargeted metabolomic indicators measured in plasma and saliva, which represent emerging methods for measuring exposure, were used to extract approximately 20,000 and 30,000 features from plasma and saliva, respectively. Using hydrophilic interaction liquid chromatography (HILIC) in the positive ion mode, we identified 221 plasma features that differed significantly between the two dorm cohorts. The bimodal distribution of these features in the HILIC column was highly idiosyncratic; one peak consisted of features with elevated intensities for participants living in the near dorm; the other consisted of features with elevated intensities for participants in the far dorm. Both peaks were characterized by relatively short retention times, indicative of the hydrophobicity of the identified features. 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The results from the personal exposure monitoring also point to the complexity and diversity of the spatiotemporal variability patterns among the study monitoring sites and the importance of accounting for location and spatial mobility when estimating exposures in panel-based and small-cohort studies. This was most clearly demonstrated with the personal BC measurements, where ambient roadside monitoring was shown to be a poor surrogate for exposures to BC. Alternative surrogates, including ambient and indoor BC at the participants' respective dorms, were more strongly associated with personal BC, and knowledge of the participants' mean proximity to the highway was also shown to explain a substantial level of the variability in corresponding personal exposures to both BC and NO<sub>2</sub>. In addition, untargeted metabolomic indicators measured in plasma and saliva, which represent emerging methods for measuring exposure, were used to extract approximately 20,000 and 30,000 features from plasma and saliva, respectively. Using hydrophilic interaction liquid chromatography (HILIC) in the positive ion mode, we identified 221 plasma features that differed significantly between the two dorm cohorts. The bimodal distribution of these features in the HILIC column was highly idiosyncratic; one peak consisted of features with elevated intensities for participants living in the near dorm; the other consisted of features with elevated intensities for participants in the far dorm. Both peaks were characterized by relatively short retention times, indicative of the hydrophobicity of the identified features. 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引用次数: 0

摘要

摘要:开展了宿舍吸入对车辆排放(DRIVE2)研究,沿着完整的排放-暴露路径测量传统的单一污染物和新型的多污染物交通指标。本研究的总体目标是评估这些指标在基于小组和小队列的流行病学研究中作为主要交通暴露指标的适用性。方法:于2014年9月至2015年1月在乔治亚理工学院校园内设置8个监测点(2个室内,6个室外),在距离亚特兰大最繁忙、最拥堵的高速公路主干道5 ~ 2.3 km范围内进行密集现场采样。此外,还招募了54名住在离高速公路近(20米)或远(1.4公里)的两个宿舍之一的GIT学生,进行个人暴露采样和每周生物监测。选择测量的污染物,以提供有关一次交通排放的非均匀颗粒和气体组成的信息,包括传统的交通相关物质(如一氧化碳[CO]、二氧化氮[NO2]、一氧化氮[NO]、细颗粒物[PM2.5]和黑碳[BC]),以及来自交通和其他来源的二次物质(如臭氧[O3]和硫酸盐以及有机碳[OC],这是一次和二次)。除了这些污染物,我们还测量了两个多污染物流量指标:综合移动源指标(IMSIs)和细颗粒物氧化电位(FPMOP)。imsi是根据单质碳(EC)、一氧化碳和氮氧化物(NOx)的浓度,以及汽油和柴油车辆排放的这些物质的组分得出的,用于构建汽油和柴油车辆影响的综合估计。我们的FPMOP指标是基于一项涉及二硫代苏糖醇(DTT)消耗的脱细胞测定,同时考虑了水溶性和不溶性成分(称为FPMOPtotal-DTT)。此外,对18个低成本传感器的有限评估被添加到研究中,以补充四个原始目标。结果:研究期间测量的污染物水平表明,该公路热点污染源对周边环境的影响较小。这些发现与北美其他研究的结果大致一致,表明主要交通排放对城市空气污染的相对贡献减少。我们认为,这些减少表明,由于移动源排放控制的有效性,道路附近的环境正在发生变化。许多主要污染物种类,包括NO、CO和BC,在距离公路源20至30米的地方下降到接近本底水平。这些地点之间的相关性模式也因污染物和一天中的时间而异。NO2表现出不同于其他单一污染物主要交通指标的空间趋势。我们认为,这是由于光化学的动力学限制造成的,与初级减排有关,需要将汽车排放的no主导的初级氮氧化物转化为NO2。这一发现在一定程度上表明,在基于面板的健康影响研究中,使用二氧化氮作为主要交通暴露指标存在局限性。在早高峰时段,路边监测的NO、CO和BC与离道路近或远的地点的相关性更强,而在一天中的其他时段,相关性往往较弱或中等。这种模式可能与混合和化学的日变化及其对校园空间异质性的影响有关。在我们的候选多污染物主要交通指标中,我们报告了与使用基于氧化电位(OP)的指标相关的几个关键发现。虽然早期的研究报道了直接废气排放中FPMOP水平的升高,但我们发现大气处理进一步增强了FPMOPtotal-DTT,这可能与初级多环芳烃(PAHs)氧化为醌和羟基醌以及金属的氧化和水溶性有关。这对于FPMOPtotal-DTT作为废气排放标志的效用以及大气中颗粒物(PM)处理与潜在健康结果相关的重要性具有重要意义。个人暴露监测的结果还指出了研究监测点之间时空变异模式的复杂性和多样性,以及在基于小组和小队列的研究中估计暴露时考虑位置和空间流动性的重要性。个人BC测量最清楚地证明了这一点,其中环境路边监测被证明是BC暴露的糟糕替代品。 其他替代指标,包括参与者各自宿舍的环境和室内BC,与个人BC的相关性更强,并且参与者平均接近高速公路的知识也被证明可以解释相应个人暴露于BC和NO2的变异性的实质性水平。此外,在血浆和唾液中测量的非靶向代谢组学指标代表了测量暴露的新兴方法,分别用于从血浆和唾液中提取约20,000和30,000个特征。在正离子模式下使用亲水性相互作用液相色谱(HILIC),我们确定了221个血浆特征在两个宿舍队列之间存在显著差异。这些特征在HILIC柱中的双峰分布是高度特异的;一个峰值包括住在附近宿舍的参与者的特征强度升高;另一组由远宿舍参与者的高强度特征组成。两个峰的特征都是相对较短的保留时间,表明所鉴定的特征具有疏水性。代谢组学分析的结果为继续研究交通相关污染的假定生物标志物的特定化学验证提供了强有力的基础。最后,本研究的补充目的是考察18种低成本CO、NO、NO2、O3和PM2.5污染物传感器的性能。这些监测仪与其他研究监测仪放在一起,并评估它们捕捉参考监测仪器观察到的时间趋势的能力。一般来说,经过广泛的校准,我们发现低成本气相传感器的性能是有希望的;然而,仅凭未经校准的测量,可能无法得出可靠的结果。我们评估的低成本PM传感器精度较差,尽管PM传感器技术正在迅速发展,值得未来关注。结论:不断变化的道路附近环境的直接含义是,未来旨在表征与移动源相关的热点及其对健康的影响的研究将需要考虑多种方法来表征空间梯度和暴露。具体和最直接的是,移动源对交通暴露的单一污染物指标的环境浓度的贡献不像过去那样可区分。总的来说,这项研究表明,由于交通相关排放的减少,已经很困难的交通相关污染物暴露的特征将变得更加困难。除了传统的测量方法外,还应考虑其他多层方法,包括使用基于DTT分析、代谢组学、低成本传感器和空气质量建模的替代OP测量方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Developing Multipollutant Exposure Indicators of Traffic Pollution: The Dorm Room Inhalation to Vehicle Emissions (DRIVE) Study.

Developing Multipollutant Exposure Indicators of Traffic Pollution: The Dorm Room Inhalation to Vehicle Emissions (DRIVE) Study.

Developing Multipollutant Exposure Indicators of Traffic Pollution: The Dorm Room Inhalation to Vehicle Emissions (DRIVE) Study.

Developing Multipollutant Exposure Indicators of Traffic Pollution: The Dorm Room Inhalation to Vehicle Emissions (DRIVE) Study.

Introduction: The Dorm Room Inhalation to Vehicle Emissions (DRIVE2) study was conducted to measure traditional single-pollutant and novel multipollutant traffic indicators along a complete emission-to-exposure pathway. The overarching goal of the study was to evaluate the suitability of these indicators for use as primary traffic exposure metrics in panel-based and small-cohort epidemiological studies.

Methods: Intensive field sampling was conducted on the campus of the Georgia Institute of Technology (GIT) between September 2014 and January 2015 at 8 monitoring sites (2 indoors and 6 outdoors) ranging from 5 m to 2.3 km from the busiest and most congested highway artery in Atlanta. In addition, 54 GIT students living in one of two dormitories either near (20 m) or far (1.4 km) from the highway were recruited to conduct personal exposure sampling and weekly biomonitoring. The pollutants measured were selected to provide information about the heterogeneous particulate and gaseous composition of primary traffic emissions, including the traditional traffic-related species (e.g., carbon monoxide [CO], nitrogen dioxide [NO2], nitric oxide [NO], fine particulate matter [PM2.5], and black carbon [BC]), and of secondary species (e.g., ozone [O3] and sulfate as well as organic carbon [OC], which is both primary and secondary) from traffic and other sources. Along with these pollutants, we also measured two multipollutant traffic indicators: integrated mobile source indicators (IMSIs) and fine particulate matter oxidative potential (FPMOP). IMSIs are derived from elemental carbon (EC), CO, and nitrogen oxide (NOx) concentrations, along with the fractions of these species emitted by gasoline and diesel vehicles, to construct integrated estimates of gasoline and diesel vehicle impacts. Our FPMOP indicator was based on an acellular assay involving the depletion of dithiothreitol (DTT), considering both water-soluble and insoluble components (referred to as FPMOPtotal-DTT). In addition, a limited assessment of 18 low-cost sensors was added to the study to supplement the four original aims.

Results: Pollutant levels measured during the study showed a low impact by this highway hotspot source on its surrounding vicinity. These findings are broadly consistent with results from other studies throughout North America showing decreased relative contributions to urban air pollution from primary traffic emissions. We view these reductions as an indication of a changing near-road environment, facilitated by the effectiveness of mobile source emission controls. Many of the primary pollutant species, including NO, CO, and BC, decreased to near background levels by 20 to 30 m from the highway source. Patterns of correlation among the sites also varied by pollutant and time of day. NO2 exhibited spatial trends that differed from those of the other single-pollutant primary traffic indicators. We believe this was caused by kinetic limitations in the photochemical chemistry, associated with primary emission reductions, required to convert the NO-dominant primary NOx, emitted from automobiles, to NO2. This finding provides some indication of limitations in the use of NO2 as a primary traffic exposure indicator in panel-based health effect studies. Roadside monitoring of NO, CO, and BC tended to be more strongly correlated with sites, both near and far from the road, during morning rush hour periods and often weakly to moderately correlated during other time periods of the day. This pattern was likely associated with diurnal changes in mixing and chemistry and their impact on spatial heterogeneity across the campus. Among our candidate multipollutant primary traffic indicators, we report several key findings related to the use of oxidative potential (OP)-based indicators. Although earlier studies have reported elevated levels of FPMOP in direct exhaust emissions, we found that atmospheric processing further enhanced FPMOPtotal-DTT, likely associated with the oxidation of primary polycyclic aromatic hydrocarbons (PAHs) to quinones and hydroxyquinones and with the oxidization and water solubility of metals. This has important implications in terms both of the utility of FPMOPtotal-DTT as a marker for exhaust emissions and of the importance of atmospheric processing of particulate matter (PM) being tied to potential health outcomes. The results from the personal exposure monitoring also point to the complexity and diversity of the spatiotemporal variability patterns among the study monitoring sites and the importance of accounting for location and spatial mobility when estimating exposures in panel-based and small-cohort studies. This was most clearly demonstrated with the personal BC measurements, where ambient roadside monitoring was shown to be a poor surrogate for exposures to BC. Alternative surrogates, including ambient and indoor BC at the participants' respective dorms, were more strongly associated with personal BC, and knowledge of the participants' mean proximity to the highway was also shown to explain a substantial level of the variability in corresponding personal exposures to both BC and NO2. In addition, untargeted metabolomic indicators measured in plasma and saliva, which represent emerging methods for measuring exposure, were used to extract approximately 20,000 and 30,000 features from plasma and saliva, respectively. Using hydrophilic interaction liquid chromatography (HILIC) in the positive ion mode, we identified 221 plasma features that differed significantly between the two dorm cohorts. The bimodal distribution of these features in the HILIC column was highly idiosyncratic; one peak consisted of features with elevated intensities for participants living in the near dorm; the other consisted of features with elevated intensities for participants in the far dorm. Both peaks were characterized by relatively short retention times, indicative of the hydrophobicity of the identified features. The results from the metabolomics analyses provide a strong basis for continuing this work toward specific chemical validation of putative biomarkers of traffic-related pollution. Finally, the study had a supplemental aim of examining the performance of 18 low-cost CO, NO, NO2, O3, and PM2.5 pollutant sensors. These were colocated alongside the other study monitors and assessed for their ability to capture temporal trends observed by the reference monitoring instrumentation. Generally, we found the performance of the low-cost gas-phase sensors to be promising after extensive calibration; the uncalibrated measurements alone, however, would likely not have led to reliable results. The low-cost PM sensors we evaluated had poor accuracy, although PM sensor technology is evolving quickly and warrants future attention.

Conclusions: An immediate implication of the changing near-road environment is that future studies aimed at characterizing hotspots related to mobile sources and their impacts on health will need to consider multiple approaches for characterizing spatial gradients and exposures. Specifically and most directly, the mobile source contributions to ambient concentrations of single-pollutant indicators of traffic exposure are not as distinguishable to the degree that they have been in the past. Collectively, the study suggests that characterizing exposures to traffic-related pollutants, which is already difficult, will become more difficult because of the reduction in traffic-related emissions. Additional multi-tiered approaches should be considered along with traditional measurements, including the use of alternative OP measures beyond those based on DTT assays, metabolomics, low-cost sensors, and air quality modeling.

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