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RIOPA研究中与室内、室外及个人空气中PM2.5元素组成相关的个人及家庭特征分析

Analysis of Personal and Home Characteristics Associated with the Elemental Composition of PM2.5 in Indoor, Outdoor, and Personal Air in the RIOPA Study.

作者信息

Ryan Patrick H, Brokamp Cole, Fan Zhi-Hua, Rao M B

出版信息

Res Rep Health Eff Inst. 2015 Dec(185):3-40.

Abstract

The complex mixture of chemicals and elements that constitute particulate matter (PM*) varies by season and geographic location because source contributors differ over time and place. The composition of PM having an aerodynamic diameter < 2.5 μm (PM2.5) is hypothesized to be responsible, in part, for its toxicity. Epidemiologic studies have identified specific components and sources of PM2.5 that are associated with adverse health outcomes. The majority of these studies use measures of outdoor concentrations obtained from one or a few central monitoring sites as a surrogate for measures of personal exposure. Personal PM2.5 (and its elemental composition), however, may be different from the PM2.5 measured at stationary outdoor sites. The objectives of this study were (1) to describe the relationships between the concentrations of various elements in indoor, outdoor, and personal PM2.5 samples, (2) to identify groups of individuals with similar exposures to mixtures of elements in personal PM2.5 and to examine personal and home characteristics of these groups, and (3) to evaluate whether concentrations of elements from outdoor PM2.5 samples are appropriate surrogates for personal exposure to PM2.5 and its elements and whether indoor PM2.5 concentrations and information about home characteristics improve the prediction of personal exposure. The objectives of the study were addressed using data collected as part of the Relationships of Indoor, Outdoor, and Personal Air (RIOPA) study. The RIOPA study has previously measured the mass concentrations of PM2.5 and its elemental constituents during 48-hour concurrent indoor, outdoor (directly outside the home), and personal samplings in three urban areas (Los Angeles, California; Houston, Texas; and Elizabeth, New Jersey). The resulting data and information about personal and home characteristics (including air-conditioning use, nearby emission sources, time spent indoors, census-tract geography, air-exchange rates, and other information) for each RIOPA participant were downloaded from the RIOPA study database. We performed three sets of analyses to address the study aims. First, we conducted descriptive analyses to describe the relationships between elemental concentrations in the concurrently gathered indoor, outdoor, and personal air samples. We assessed the correlation between personal exposure and indoor concentrations as well as personal exposure and outdoor concentrations of each element and calculated ratios between them. In addition, we performed principal component analysis (PCA) and calculated principal component scores (PCSs) to examine the heterogeneity of the elemental composition and then tested whether the mixture of elements in indoor, outdoor, and personal PM2.5 was significantly different within each study site and across study sites. Secondly, we performed model-based clustering analysis to group RIOPA participants with similar exposures to mixtures of elements in personal PM2.5. We examined the association between cluster membership and the concentrations of elements in indoor and outdoor PM2.5 samples and personal and home characteristics. Finally, we developed a series of linear regression models and random forest models to examine the association between personal exposure to elements in PM2.5 and (1) outdoor measurements, (2) outdoor and indoor measurements, and (3) outdoor and indoor measurements and home characteristics. As we developed each model, the improvement in prediction of personal exposure when including additional information was assessed. Personal exposures to PM2.5 and to most elements were significantly correlated with both indoor and outdoor concentrations, although concentrations in personal samples frequently exceeded those of indoor and outdoor samples. In general, for most PM2.5 elements indoor concentrations were more highly correlated with personal exposure than were outdoor concentrations. PCA showed that the mixture of elements in indoor, outdoor, and personal PM2.5 varied significantly across sample types within each study site and also across study sites within each sample type. Using model-based clustering, we identified seven clusters of RIOPA participants whose personal PM2.5 samples had similar patterns of elemental composition. Using this approach, subsets of RIOPA participants were identified whose personal exposures to PM2.5 (and its elements) were significantly higher than their indoor and outdoor concentrations (and vice versa). The results of linear and random forest regression models were consistent with our correlation analyses and demonstrated that (1) indoor concentrations were more significantly associated with personal exposure than were outdoor concentrations and (2) participant reports of time spent at their home significantly modified many of the associations between indoor and personal concentrations. In linear regression models, the inclusion of indoor concentrations significantly improved the prediction of personal exposures to Ba, Ca, Cl, Cu, K, Sn, Sr, V, and Zn compared with the use of outdoor elemental concentrations alone. Including additional information on personal and home characteristics improved the prediction for only one element, Pb. Our results support the use of outdoor monitoring sites as surrogates of personal exposure for a limited number of individual elements associated with long-range transport and with a few local or indoor sources. Based on our PCA and clustering analyses, we concluded that the overall elemental composition of PM2.5 obtained at outdoor monitoring sites may not accurately represent the elemental composition of personal PM2.5. Although the data used in these analyses compared outdoor PM2.5 composition collected at the home with indoor and personal samples, our results imply that studies examining the complete elemental composition of PM2.5 should be cautious about using data from central outdoor monitoring sites because of the potential for exposure misclassification. The inclusion of personal and home characteristics only marginally improved the prediction of personal exposure for a small number of elements in PM2.5. We concluded that the additional cost and burden of indoor and personal sampling may be justified for studies examining elements because neither outdoor monitoring nor questionnaire data on home and personal characteristics were able to represent adequately the overall elemental composition of personal PM2.5.

摘要

构成颗粒物(PM*)的化学物质和元素的复杂混合物会因季节和地理位置而有所不同,这是因为源贡献者会随时间和地点发生变化。空气动力学直径小于2.5μm(PM2.5)的颗粒物组成被认为部分与其毒性有关。流行病学研究已确定了与不良健康结果相关的PM2.5的特定成分和来源。这些研究大多使用从一个或几个中央监测点获取的室外浓度测量值作为个人暴露测量值的替代指标。然而,个人PM2.5(及其元素组成)可能与在固定室外地点测量的PM2.5不同。本研究的目的是:(1)描述室内、室外和个人PM2.5样本中各种元素浓度之间的关系;(2)识别个人PM2.5中元素混合物暴露相似的个体群体,并检查这些群体的个人和家庭特征;(3)评估室外PM2.5样本中元素浓度是否适合作为个人暴露于PM2.5及其元素的替代指标,以及室内PM2.5浓度和家庭特征信息是否能改善对个人暴露的预测。本研究的目标通过作为室内、室外和个人空气关系(RIOPA)研究一部分收集的数据来实现。RIOPA研究先前在三个城市地区(加利福尼亚州洛杉矶市;得克萨斯州休斯顿市;新泽西州伊丽莎白市)进行了48小时同步室内、室外(家正门外)和个人采样期间,测量了PM2.5及其元素成分的质量浓度。从RIOPA研究数据库下载了每个RIOPA参与者的所得数据以及有关个人和家庭特征(包括空调使用情况、附近排放源、在室内的时间、普查区地理信息、空气交换率和其他信息)的信息。我们进行了三组分析以实现研究目标。首先,我们进行描述性分析以描述同时收集的室内、室外和个人空气样本中元素浓度之间的关系。我们评估了个人暴露与每种元素的室内浓度以及个人暴露与室外浓度之间的相关性,并计算了它们之间的比率。此外,我们进行了主成分分析(PCA)并计算了主成分得分(PCSs),以检查元素组成的异质性,然后测试室内、室外和个人PM2.5中的元素混合物在每个研究地点内以及跨研究地点是否存在显著差异。其次,我们进行基于模型的聚类分析,将个人PM2.5中元素混合物暴露相似的RIOPA参与者分组。我们检查了聚类成员与室内和室外PM2.5样本中元素浓度以及个人和家庭特征之间的关联。最后,我们开发了一系列线性回归模型和随机森林模型,以检查个人对PM2.5中元素的暴露与(1)室外测量值、(2)室外和室内测量值以及(3)室外和室内测量值及家庭特征之间的关联。在开发每个模型时,评估了纳入其他信息时个人暴露预测的改善情况。个人对PM2.5和大多数元素的暴露与室内和室外浓度均显著相关,尽管个人样本中的浓度经常超过室内和室外样本中的浓度。一般来说,对于大多数PM2.5元素,室内浓度与个人暴露的相关性高于室外浓度。PCA表明,室内、室外和个人PM2.5中的元素混合物在每个研究地点内的样本类型之间以及每个样本类型内的研究地点之间均存在显著差异。使用基于模型的聚类方法,我们识别出了七个RIOPA参与者聚类,其个人PM2.5样本具有相似的元素组成模式。通过这种方法,识别出了RIOPA参与者的子集,其个人对PM2.5(及其元素)的暴露显著高于其室内和室外浓度(反之亦然)。线性和随机森林回归模型的结果与我们的相关性分析一致,并表明:(1)室内浓度与个人暴露的关联比室外浓度更显著;(2)参与者报告的在家时间显著改变了许多室内和个人浓度之间的关联。在线性回归模型中,与仅使用室外元素浓度相比,纳入室内浓度显著改善了对个人暴露于Ba、Ca、Cl、Cu、K Sn Sr、V和Zn的预测。纳入有关个人和家庭特征的其他信息仅改善了对一种元素Pb的预测。我们的结果支持将室外监测点用作与长距离传输以及一些本地或室内源相关的有限数量的单个元素的个人暴露替代指标。基于我们的PCA和聚类分析,我们得出结论,在室外监测点获得的PM2.5的总体元素组成可能无法准确代表个人PM2.5的元素组成。尽管这些分析中使用的数据将在家中收集到的室外PM2.5组成与室内和个人样本进行了比较,但我们的结果表明,由于存在暴露错误分类的可能性,研究PM2.5完整元素组成的研究在使用中央室外监测点的数据时应谨慎。纳入个人和家庭特征仅略微改善了对PM2.5中少数元素的个人暴露预测。我们得出结论,对于研究元素的研究而言,室内和个人采样的额外成本和负担可能是合理的,因为室外监测以及关于家庭和个人特征的问卷数据均无法充分代表个人PM2.5的总体元素组成。

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