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The lag-effect pattern in the relationship of particulate air pollution to daily mortality in Seoul, Korea

机译:韩国首尔颗粒空气污染与每日死亡率之间的滞后效应模式

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To assess differences in the lag-effect pattern in the relationship between particulate matter less than 10 mum in aerodynamic diameter (PM10) and cause-specific mortality in Seoul, Korea, from January 1995 to December 1999, we performed a time-series analysis. We used a generalized additive Poisson regression model to control for time trends, temperature, humidity, air pressure, and the day of the week. The PM10 effect was estimated on the basis of the time-series models using the 24-h means and the quadratic distributed-lag models using a cumulative 6-day effect. One interquartile range increase in the 6-day cumulative mean of PM10 (43.12 mug/m(3)) was associated with an increase in non-accidental deaths [3.7%, 95% confidence interval (CI): 2.1, 5.4], respiratory disease (13.9%, 95% CI: 6.8, 21.5), cardiovascular disease (4.4%, 95% CI: -1.0, 9.0), and cerebrovascular disease (6.3%, 95% CI: 2.3, 10.5). We found the following patterns in the disease-specific lag-effect window: respiratory mortality was more affected by air pollution level on the day of death, whereas cardiovascular deaths were more affected by the previous day's air pollution level. Cerebrovascular deaths were simultaneously associated with the air pollution levels of the same day and the previous day. The patterns in the lag effect from the distributed-lag models were similar to those of a series of time-series models with 24-h means. These results contribute to our understanding of how exposure to air pollution causes adverse health effects.
机译:为了评估滞后效应模式在空气动力学直径(PM10)小于10微米的颗粒物与韩国首尔特定原因死亡率之间的关系中的差异,我们进行了时间序列分析。该时间序列分析是从1995年1月至1999年12月。我们使用广义加性Poisson回归模型来控制时间趋势,温度,湿度,气压和星期几。根据使用24小时均值的时间序列模型和使用累积6天效应的二次分布滞后模型,估计了PM10效应。 PM10的6天累积平均值增加了四分位数范围(43.12 mug / m(3))与非意外死亡的增加有关[3.7%,95%置信区间(CI):2.1,5.4]疾病(13.9%,95%CI:6.8,21.5),心血管疾病(4.4%,95%CI:-1.0,9.0)和脑血管疾病(6.3%,95%CI:2.3,10.5)。我们在特定疾病的滞后效应窗口中发现了以下模式:死亡时,呼吸道死亡率受空气污染水平的影响更大,而前一天的空气污染水平对心血管死亡的影响更大。脑血管死亡与同一天和前一天的空气污染水平同时相关。分布滞后模型的滞后效应模式与采用24小时均值的一系列时间序列模型的模式相似。这些结果有助于我们了解暴露于空气污染如何对健康产生不利影响。

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