Hang Yun, Pu Qiang, Zhu Qiao, Meng Xia, Jin Zhihao, Liang Fengchao, Tian Hezhong, Li Tiantian, Wang Tijian, Cao Junji, Fu Qingyan, Dey Sagnik, Li Shenshen, Huang Kan, Kan Haidong, Shi Xiaoming, Liu Yang
Gangarosa Department of Environmental Health, Rollins School of Public Health, Emory University, Atlanta, GA 30322, United States; Department of Environmental and Occupational Health Sciences, School of Public Health, University of Texas Health Science Center at Houston, Houston, TX, 77030, United States.
Gangarosa Department of Environmental Health, Rollins School of Public Health, Emory University, Atlanta, GA 30322, United States; Department of Behavioral Science and Health Equity, College for Public Health and Social Justice, Saint Louis University, St. Louis, MO, 63104, United States.
Sci Total Environ. 2025 Jan 1;958:177883. doi: 10.1016/j.scitotenv.2024.177883. Epub 2024 Dec 7.
Ambient PM pollution poses a major risk to public health in China, contributing to significant mortality and morbidity. While overall PM concentrations have declined in recent years, the changes in PM chemical constituents remain inadequately understood due to limited ground monitoring networks. We developed a Super Learner model that integrates MISR satellite data, chemistry transport model simulations, and land use information to predict daily OC concentrations across China from 2003 to 2019 at a 10-km spatial resolution. The model achieved high predictive accuracy with a cross-validation R of 0.84 and an RMSE of 4.9 μg/m. Our findings show elevated OC levels in Northern China, driven by industrial activities with concentrations exceeding 30 μg/m during the heating season. In contrast, forest fires were the primary contributors in Yunnan, raising OC concentrations to 20-30 μg/m during fire seasons. Over the 17-year period, the national OC trend declined by 1.3 % annually. Regionally, the Beijing-Tianjin-Hebei region and the Fenwei Plain experienced faster reductions at annual rates of 1.5 % and 2.0 %, respectively, while Yunnan exhibited no significant trends. To better understand pollution source contributions, we analyzed the OC/EC ratio, which indicated higher ratios in less populated rural areas, suggesting agricultural and biogenic emissions, while lower ratios in urban clusters pointed to primary sources such as traffic and industrial activities. Notably, since 2013, significant decreases in the OC/EC ratio have been observed in the North China Plain, likely reflecting the impact of stringent air pollution control policies on biomass burning. This study provides valuable exposure estimates for epidemiological research on the long-term health effects of OC in China, offering insights for evaluating air quality policies and guiding future management strategies.
环境细颗粒物污染对中国公众健康构成重大风险,导致大量死亡和发病。尽管近年来细颗粒物总体浓度有所下降,但由于地面监测网络有限,细颗粒物化学成分的变化仍未得到充分了解。我们开发了一种超级学习模型,该模型整合了多角度成像光谱辐射计(MISR)卫星数据、化学传输模型模拟和土地利用信息,以10公里的空间分辨率预测2003年至2019年中国各地的每日有机碳(OC)浓度。该模型具有较高的预测准确性,交叉验证R值为0.84,均方根误差(RMSE)为4.9微克/立方米。我们的研究结果表明,受工业活动影响,中国北方的有机碳水平升高,供暖季节浓度超过30微克/立方米。相比之下,森林火灾是云南有机碳的主要来源,火灾季节有机碳浓度升至20 - 30微克/立方米。在这17年期间,全国有机碳趋势每年下降1.3%。在区域上,京津冀地区和汾渭平原下降速度更快,年下降率分别为1.5%和2.0%,而云南没有显著趋势。为了更好地了解污染源贡献,我们分析了有机碳与元素碳(OC/EC)的比率,该比率表明人口较少的农村地区比率较高,表明存在农业和生物源排放,而城市群地区比率较低则表明存在交通和工业活动等主要来源。值得注意的是,自2013年以来,华北平原的OC/EC比率显著下降,这可能反映了严格的空气污染控制政策对生物质燃烧的影响。本研究为中国有机碳长期健康影响的流行病学研究提供了有价值的暴露估计,为评估空气质量政策和指导未来管理策略提供了见解。