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首页> 外文期刊>Environmental Health: A Global Access Science Source >Modeling personal particle-bound polycyclic aromatic hydrocarbon (pb-pah) exposure in human subjects in Southern California
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Modeling personal particle-bound polycyclic aromatic hydrocarbon (pb-pah) exposure in human subjects in Southern California

机译:在南加州的人类受试者中模拟与个人颗粒结合的多环芳烃(pb-pah)暴露

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Background Exposure to polycyclic aromatic hydrocarbon (PAH) has been linked to various adverse health outcomes. Personal PAH exposures are usually measured by personal monitoring or biomarkers, which are costly and impractical for a large population. Modeling is a cost-effective alternative to characterize personal PAH exposure although challenges exist because the PAH exposure can be highly variable between locations and individuals in non-occupational settings. In this study we developed models to estimate personal inhalation exposures to particle-bound PAH (PB-PAH) using data from global positioning system (GPS) time-activity tracking data, traffic activity, and questionnaire information. Methods We conducted real-time (1-min interval) personal PB-PAH exposure sampling coupled with GPS tracking in 28 non-smoking women for one to three sessions and one to nine days each session from August 2009 to November 2010 in Los Angeles and Orange Counties, California. Each subject filled out a baseline questionnaire and environmental and behavior questionnaires on their typical activities in the previous three months. A validated model was used to classify major time-activity patterns (indoor, in-vehicle, and other) based on the raw GPS data. Multiple-linear regression and mixed effect models were developed to estimate averaged daily and subject-level PB-PAH exposures. The covariates we examined included day of week and time of day, GPS-based time-activity and GPS speed, traffic- and roadway-related parameters, meteorological variables (i.e. temperature, wind speed, relative humidity), and socio-demographic variables and occupational exposures from the questionnaire. Results We measured personal PB-PAH exposures for 180?days with more than 6 h of valid data on each day. The adjusted R2 of the model was 0.58 for personal daily exposures, 0.61 for subject-level personal exposures, and 0.75 for subject-level micro-environmental exposures. The amount of time in vehicle (averaging 4.5% of total sampling time) explained 48% of the variance in daily personal PB-PAH exposure and 39% of the variance in subject-level exposure. The other major predictors of PB-PAH exposures included length-weighted traffic count, work-related exposures, and percent of weekday time. Conclusion We successfully developed regression models to estimate PB-PAH exposures based on GPS-tracking data, traffic data, and simple questionnaire information. Time in vehicle was the most important determinant of personal PB-PAH exposure in this population. We demonstrated the importance of coupling real-time exposure measures with GPS time-activity tracking in personal air pollution exposure assessment.
机译:背景技术暴露于多环芳烃(PAH)与各种不良健康后果有关。个人PAH暴露通常通过个人监测或生物标记物来衡量,这对于大量人群而言既昂贵又不切实际。尽管存在挑战,因为在非职业环境中,地点和个人之间的PAH暴露差异很大,因此建模是表征个人PAH暴露的一种经济有效的替代方法。在本研究中,我们使用来自全球定位系统(GPS)的时间活动跟踪数据,交通活动和问卷信息的数据,开发了模型来估计个人吸入颗粒结合的PAH(PB-PAH)的暴露量。方法从2009年8月至2010年11月,我们在28位非吸烟女性中进行了实时(间隔为1分钟)个人PB-PAH暴露采样,并进行GPS跟踪,分别从2009年8月至2010年11月进行一到三节,每节一到九天。加利福尼亚州奥兰治县。每位受试者就其前三个月的典型活动填写基线调查表以及环境和行为调查表。基于原始GPS数据,使用经过验证的模型对主要的时间活动模式(室内,车内和其他)进行分类。开发了多元线性回归和混合效应模型,以估计平均每日和受试者水平的PB-PAH暴露量。我们检查的协变量包括星期几和一天中的时间,基于GPS的时间活动性和GPS速度,与交通和道路相关的参数,气象变量(即温度,风速,相对湿度)以及社会人口统计变量和调查表中的职业暴露。结果我们测量了180天的个人PB-PAH暴露量,每天有6小时以上的有效数据。该模型的调整后R2对于个人日常暴露为0.58,对于受试者水平的个人暴露为0.61,对于受试者水平的微环境暴露为0.75。车辆中的时间量(平均占总采样时间的4.5%)解释了每日个人PB-PAH暴露量的48%和受试者水平暴露量的39%。 PB-PAH暴露的其他主要预测因素包括长度加权的流量计数,与工作相关的暴露以及工作日时间百分比。结论我们成功开发了基于GPS跟踪数据,交通数据和简单调查表信息估算PB-PAH暴露的回归模型。在该人群中,乘车时间是个人PB-PAH暴露的最重要决定因素。我们证明了在个人空气污染暴露评估中将实时暴露测量与GPS时间活动跟踪相结合的重要性。

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