School of Public Health, Fudan University, Shanghai 200032, China.
Gangarosa Department of Environmental Health, Rollins School of Public Health, Emory University, Atlanta, GA 30322, USA.
Environ Int. 2023 Jan;171:107740. doi: 10.1016/j.envint.2023.107740. Epub 2023 Jan 6.
Ambient fine particulate matter (PM) pollution is a major environmental and public health challenge in China. In the recent decade, the PM level has decreased mainly driven by reductions in particulate sulfate as a result of large-scale desulfurization efforts in coal-fired power plants and industrial facilities. Emerging evidence also points to the differential toxicity of particulate sulfate affecting human health. However, estimating the long-term spatiotemporal trend of sulfate is difficult because a ground monitoring network of PM constituents has not been established in China. Spaceborne sensors such as the Multi-angle Imaging SpectroRadiometer (MISR) instrument can provide complementary information on aerosol size and type. With the help of state-of-the-art machine learning techniques, we developed a sulfate prediction model under support from available ground measurements, MISR-retrieved aerosol microphysical properties, and atmospheric reanalysis data at a spatial resolution of 0.1°. Our sulfate model performed well with an out-of-bag cross-validationR of 0.68 at the daily level and 0.93 at the monthly level. We found that the national mean population-weighted sulfate concentration was relatively stable before the Air Pollution Prevention and Control Action Plan was enforced in 2013, ranging from 10.4 to 11.5 µg m. But the sulfate level dramatically decreased to 7.7 µg m in 2018, with a change rate of -28.7 % from 2013 to 2018. Correspondingly, the annual mean total non-accidental and cardiopulmonary deaths attributed to sulfate decreased by 40.7 % and 42.3 %, respectively. The long-term, full-coverage sulfate level estimates will support future studies on evaluating air quality policies and understanding the adverse health effect of particulate sulfate.
环境细颗粒物 (PM) 污染是中国面临的主要环境和公共卫生挑战之一。在最近十年,由于燃煤电厂和工业设施大规模脱硫,颗粒物中的硫酸盐显著减少,PM 水平有所下降。新兴证据也表明,硫酸盐颗粒物的不同毒性会对人体健康造成影响。然而,由于中国尚未建立 PM 成分的地面监测网络,因此很难估计硫酸盐的长期时空趋势。星载传感器,如多角度成像光谱辐射计 (MISR) 仪器,可以提供气溶胶大小和类型的补充信息。在现有地面测量数据、MISR 反演的气溶胶微观物理特性和大气再分析数据的支持下,我们借助先进的机器学习技术,开发了一个硫酸盐预测模型,空间分辨率为 0.1°。我们的硫酸盐模型在每日和每月水平的袋外交叉验证 R 值分别为 0.68 和 0.93,表现良好。我们发现,在 2013 年实施《大气污染防治行动计划》之前,全国人口加权硫酸盐浓度相对稳定,范围在 10.4 到 11.5μg/m3之间。但在 2018 年,硫酸盐水平急剧下降至 7.7μg/m3,2013 年至 2018 年的变化率为-28.7%。相应地,归因于硫酸盐的非意外和心肺总死亡人数的年平均值分别下降了 40.7%和 42.3%。长期、全覆盖的硫酸盐水平估计将支持未来评估空气质量政策和了解颗粒物硫酸盐对健康不良影响的研究。