Abst'/> Estimation of residential fine particulate matter infiltration in Shanghai, China
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Estimation of residential fine particulate matter infiltration in Shanghai, China

机译:中国上海居民细颗粒物渗透的估算

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AbstractAmbient concentrations of fine particulate matter (PM2.5) concentration is often used as an exposure surrogate to estimate PM2.5health effects in epidemiological studies. Ignoring the potential variations in the amount of outdoor PM2.5infiltrating into indoor environments will cause exposure misclassification, especially when people spend most of their time indoors. As it is not feasible to measure the PM2.5infiltration factor (Finf) for each individual residence, we aimed to build models for residential PM2.5Finfprediction and to evaluate seasonalFinfvariations among residences. We repeated collected paired indoor and outdoor PM2.5filter samples for 7 continuous days in each of the three seasons (hot, cold and transitional seasons) from 48 typical homes of Shanghai, China. PM2.5-bound sulfur on the filters was measured by X-ray fluorescence for PM2.5Finfcalculation. We then used stepwise-multiple linear regression to construct season-specific models with climatic variables and questionnaire-based predictors. All models were evaluated by the coefficient of determination (R2) and root mean square error (RMSE) from a leave-one-out-cross-validation (LOOCV). The 7-day mean (±SD) of PM2.5Finfacross all observations was 0.83 (±0.18).Finfwas found higher and more varied in transitional season (12–25 °C) than hot (>25 °C) and cold (<12 °C) seasons. Air conditioning use and meteorological factors were the most important predictors during hot and cold seasons; Floor of residence and building age were the best transitional season predictors. The models predicted 60.0%–68.4% of the variance in 7-day averages ofFinf, The LOOCV analysis showed an R2of 0.52 and an RMSE of 0.11. Our finding of large variation in residential PM2.5Finfbetween seasons and across residences within season indicated the important source of outdoor-generated PM2.5exposure heterogeneity in epidemiologic studies. Our models based on readily available data may potentially improve the accuracy of estimates of the health effects of PM2.5exposure.Graphical abstractDisplay OmittedHighlightsFew prior studies in Asia model residential PM2.5infiltration factor (Finf).We explored the variability of PM2.5Finfin a sample of residences in Shanghai.We found wide variation in Finfbetween seasons & across residences within season.Our models explained major portion of Finfvariation using readily available data.Our results may contribute to the improvement of PM2.5exposure assessment.Our models predicted a substantial portion of infiltration variation based on readily available data.
机译: 摘要 细颗粒物(PM 2.5 )的环境浓度为在流行病学研究中通常被用作估算PM 2.5 对健康的影响的替代指标。忽略渗入室内环境的室外PM 2.5 量的潜在变化将导致暴露分类错误,尤其是当人们将大部分时间花在室内时。由于无法测量PM 2.5 渗透因子( F inf ),我们的目标是为住宅PM 2.5 建立模型 F inf 预测并评估季节性 F inf 住所之间的差异。我们在48个典型房屋的三个季节(炎热,寒冷和过渡季节)的每个季节(炎热,寒冷和过渡季节)中,连续7天连续收集了成对的室内和室外PM 2.5 过滤器样本。上海,中国。通过X射线荧光测量PM 2.5 结合在过滤器上的PM 2.5 F inf 计算。然后,我们使用逐步多元线性回归来构建具有气候变量和基于问卷的预测变量的特定季节模型。所有模型均通过确定系数(R 2 )和留一法交叉验证(LOOCV)进行均方根误差(RMSE)进行评估)。 PM 2.5 F 的7天平均值(±SD) inf 在所有观察结果中均为0.83(±0.18)。 F 发现 inf 在过渡季节(12–25°C)中的变化比高温(> 25°C)和寒冷(<12°C)更高且更多季节。在炎热和寒冷的季节中,空调的使用和气象因素是最重要的预测指标。居住楼层和建筑年龄是最佳的过渡季节预测指标。模型预测了 F inf ,LOOCV分析显示R 2 为0.52,RMSE为0.11。我们发现住宅PM 2.5 F inf 表明室外产生的PM 2.5 暴露异质性的重要来源在流行病学研究中。我们基于可得数据的模型可能会提高PM 2.5 暴露对健康的影响的估计准确性。 图形摘要 省略显示 突出显示 < ce:para id =“ p0010” view =“ all”>之前很少有研究亚洲模型住宅PM 2.5 渗透因子(F inf )。 我们探索了在上海的一个样本中,PM 2.5 F inf 的变异性 我们发现F inf 在季节之间和季节内的住所之间存在很大差异。 我们的模型解释了F 的主要部分inf 使用容易获得的数据进行变异。 我们的结果可能有助于改善PM 2.5 暴露评估。 我们的模型基于现成的数据预测了渗透变化的很大一部分。

著录项

  • 来源
    《Environmental pollution》 |2018年第2期|494-500|共7页
  • 作者单位

    School of Public Health, Key Laboratory of Public Health Safety of the Ministry of Education, Key Laboratory of Health Technology Assessment of the Ministry of Health, Fudan University,Environmental Health Department, Shanghai Municipal Center for Disease Control and Prevention;

    School of Public Health, Key Laboratory of Public Health Safety of the Ministry of Education, Key Laboratory of Health Technology Assessment of the Ministry of Health, Fudan University,Shanghai Key Laboratory of Meteorology and Health;

    Shanghai First Maternity and Infant Hospital, Tongji University School of Medicine;

    School of Public Health, Key Laboratory of Public Health Safety of the Ministry of Education, Key Laboratory of Health Technology Assessment of the Ministry of Health, Fudan University;

    School of Public Health, Key Laboratory of Public Health Safety of the Ministry of Education, Key Laboratory of Health Technology Assessment of the Ministry of Health, Fudan University;

    School of Public Health, Key Laboratory of Public Health Safety of the Ministry of Education, Key Laboratory of Health Technology Assessment of the Ministry of Health, Fudan University,Environmental & Occupational Health Evaluation Department, Shanghai Municipal Center for Disease Control & Prevention;

    School of Public Health, Key Laboratory of Public Health Safety of the Ministry of Education, Key Laboratory of Health Technology Assessment of the Ministry of Health, Fudan University;

    School of Public Health, Key Laboratory of Public Health Safety of the Ministry of Education, Key Laboratory of Health Technology Assessment of the Ministry of Health, Fudan University;

    Institute of Earth Environment, Chinese Academy of Sciences;

    Institute of Earth Environment, Chinese Academy of Sciences;

    School of Public Health, Key Laboratory of Public Health Safety of the Ministry of Education, Key Laboratory of Health Technology Assessment of the Ministry of Health, Fudan University;

    Environmental Health Department, Shanghai Municipal Center for Disease Control and Prevention;

  • 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
  • 关键词

    PM2.5exposure; Infiltration factor; Model prediction; Seasonal variation;

    机译:PM2.5暴露;入渗因子;模型预测;季节变化;
  • 入库时间 2022-08-17 13:25:46

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