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Modeling Particle Exposure in U.S.Trucking Terminals

机译:在美国卡车码头中模拟颗粒暴露

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摘要

Multi-tiered sampling approaches are common in environmental and occupational exposure assessment,where exposures for a given individual are often modeled based on simultaneous measurements taken at multiple indoor and outdoor sites.The monitoring data from such studies is hierarchical by design,imposing a complex covariance structure that must be accounted for in order to obtain unbiased estimates of exposure.Statistical methods such as structural equation modeling (SEM) represent a useful alternative to simple linear regression in these cases,providing simultaneous and unbiased predictions of each level of exposure based on a set of covariates specific to the exposure setting.We test the SEM approach using data from a large exposure assessment of diesel and combustion particles in the U.S.trucking industry.The exposure assessment includes data from 36 different trucking terminals across the United States sampled between 2001 and 2005,measuring PM2.5 and its elemental carbon (EC),organic carbon (OC) components,by personal monitoring,and sampling at two indoor work locations and an outdoor "background" location.Using the SEM method,we predict the following: (1) personal exposures as a function of work-related exposure and smoking status; (2) work-related exposure as a function of terminal characteristics,indoor ventilation,job location,and background exposure conditions; and (3) background exposure conditions as a function of weather,nearby source pollution,and other regional differences across terminal sites.The primary advantage of SEMs in this setting is the ability to simultaneously predict exposures at each of the sampling locations,while accounting for the complex covariance structure among the measurements and descriptive variables.The statistically significant results and high R~2 values observed from the trucking industry application supports the broader use of this approach in exposure assessment modeling.
机译:多层抽样方法在环境和职业暴露评估中很常见,其中给定个体的暴露通常基于在多个室内和室外场所同时进行的测量来建模。此类研究的监测数据是按设计分层的,具有复杂的协方差为了获得公正的暴露估计,必须考虑的结构。在这些情况下,诸如结构方程模型(SEM)之类的统计方法是简单线性回归的一种有用替代方法,它基于风险的同时提供各个暴露水平的无偏预测。一组特定于暴露环境的协变量。我们使用美国卡车行业对柴油和燃烧颗粒的大量暴露评估数据对SEM方法进行了测试。暴露评估包括2001年至2006年间在美国36个不同的货运码头采样的数据2005年,测量PM2.5及其元素碳(EC),乔治亚州碳(OC)成分,通过个人监控,并在两个室内工作场所和一个室外“背景”场所进行采样。使用SEM方法,我们可以预测以下内容:(1)个人暴露与工作相关的暴露和吸烟状况; (2)与工作有关的暴露随终端特性,室内通风,工作位置和背景暴露条件的变化; (3)背景暴露条件随天气,邻近源污染以及终端站点之间其他区域差异的变化而变化。在这种情况下,SEM的主要优势是能够同时预测每个采样位置的暴露量,同时考虑到从卡车运输行业的应用中观察到的统计显着结果和较高的R〜2值支持该方法在暴露评估模型中的广泛应用。

著录项

  • 来源
    《Environmental Science & Technology》 |2006年第13期|p.4226-4232|共7页
  • 作者单位

    Department of Environmental Health,Harvard School of Public Health,401 Park Drive,Boston,Massachusetts 02215,Environmental Earth and Ocean Sciences Department,University of Massachusetts Boston,100 Morrissey Boulevard,Boston,Massachusetts 02125,Chann;

    Department of Environmental Health,Harvard School of Public Health,401 Park Drive,Boston,Massachusetts 02215,Environmental Earth and Ocean Sciences Department,University of Massachusetts Boston,100 Morrissey Boulevard,Boston,Massachusetts 02125,Chann;

    Department of Environmental Health,Harvard School of Public Health,401 Park Drive,Boston,Massachusetts 02215,Environmental Earth and Ocean Sciences Department,University of Massachusetts Boston,100 Morrissey Boulevard,Boston,Massachusetts 02125,Chann;

    Department of Environmental Health,Harvard School of Public Health,401 Park Drive,Boston,Massachusetts 02215,Environmental Earth and Ocean Sciences Department,University of Massachusetts Boston,100 Morrissey Boulevard,Boston,Massachusetts 02125,Chann;

    Department of Environmental Health,Harvard School of Public Health,401 Park Drive,Boston,Massachusetts 02215,Environmental Earth and Ocean Sciences Department,University of Massachusetts Boston,100 Morrissey Boulevard,Boston,Massachusetts 02125,Chann;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 环境化学;
  • 关键词

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