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Forecasting PM2.5-induced lung cancer mortality and morbidity at county level in China using satellite-derived PM2.5 data from 1998 to 2016: a modeling study

机译:使用1998年至2016年的卫星衍生的PM2.5数据预测PM2.5诱导县级肺癌死亡率和发病率:2016年的数据:一个建模研究

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The serious ambient fine particulate matter (PM2.5) is one of the key risk factors for lung cancer. However, existing studies on the health effects of PM2.5 in China were less considered the regional transport of PM2.5 concentration. In this study, we aim to explore the association between lung cancer and PM2.5 and then forecast the PM2.5-induced lung cancer morbidity and mortality in China. Ridge regression (RR), partial least squares regression (PLSR), model tree-based (MT) regression, regression tree (RT) approach, and the combined forecasting model (CFM) were alternative forecasting models. The result of the Pearson correlation analysis showed that both local and regional scale PM2.5 concentration had a significant association with lung cancer mortality and morbidity and compared with the local lag and regional lag exposure to ambient PM2.5; the regional lag effect (0.1720.235 for mortality; 0.1460.249 for morbidity) was not stronger than the local lag PM2.5 exposure (0.2490.294 for mortality; 0.2150.301 for morbidity). The overall forecasting lung cancer morbidity and mortality were 47.63, 47.86, 39.38, and 39.76 per 100,000 population. The spatial distributions of lung cancer morbidity and mortality share a similar spatial pattern in 2015 and 2016, with high lung cancer morbidity and mortality areas mainly located in the central to east coast areas in China. The stakeholders would like to implement a cross-regional PM2.5 control strategy for the areas characterized as a high risk of lung cancer.
机译:严重的环境细颗粒物质(PM2.5)是肺癌的关键危险因素之一。但是,对中国PM2.5的健康影响的现有研究较少被认为是PM2.5集中的区域运输。在这项研究中,我们的目标是探讨肺癌和PM2.5之间的关联,然后预测中国的PM2.5诱导的肺癌发病率和死亡率。 RIDGE回归(RR),偏最小二乘回归(PLSR),基于树木(MT)回归,回归树(RT)方法以及组合的预测模型(CFM)是替代的预测模型。 Pearson相关分析结果表明,局部和区域尺度PM2.5浓度与肺癌死亡率和发病率有重大关联,与本地滞后和区域滞后与环境PM2.5相比;区域滞后效应(用于死亡率为0.1720.235;发病率0.1460.249)不得比当地滞后PM2.5暴露(20.2490.294的死亡率;发病率为0.2150.301)。整体预测肺癌发病率和死亡率为47.63,47.86,39.38,每10万人口39.76次。肺癌发病率和死亡率的空间分布在2015年和2016年分享了类似的空间模式,肺癌发病率高,死亡率地区主要位于中国东海岸地区的中心。利益攸关方愿意实施跨区域PM2.5控制策略,为肺癌的高风险。

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