Abstract
赵梦娇,耿兴义,崔亮亮,周敬文,张济.济南市2013-2015年某综合医院呼吸系统疾病就诊人次与大气颗粒物PM10、PM2.5关系的时间序列研究[J].Chinese journal of Epidemiology,2017,38(3):374-377
济南市2013-2015年某综合医院呼吸系统疾病就诊人次与大气颗粒物PM10、PM2.5关系的时间序列研究
Association between ambient PMl0/PM2.5 concentration and outpatient department visits due to respiratory disease in a hospital in Jinan, 2013-2015: a time series analysis
Received:August 26, 2016  
DOI:10.3760/cma.j.issn.0254-6450.2017.03.020
KeyWord: 可吸入颗粒物  呼吸系统疾病  广义相加模型  时间序列分析  日就诊人次
English Key Word: Inhalable particulates  Respiratory disease  Generalized addictive model  Time series analysis  Daily hospital visit
FundProject:
Author NameAffiliationE-mail
Zhao Mengjiao Jinan Municipal Center for Disease Control and Prevention, Jinan 250021, China  
Geng Xingyi Jinan Municipal Center for Disease Control and Prevention, Jinan 250021, China  
Cui Liangliang Jinan Municipal Center for Disease Control and Prevention, Jinan 250021, China  
Zhou Jingwen Jinan Municipal Center for Disease Control and Prevention, Jinan 250021, China  
Zhang Ji Jinan Municipal Center for Disease Control and Prevention, Jinan 250021, China zhangji1967@hotmail.com 
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Abstract:
      目的 分析济南市大气颗粒物PM10、PM2.5日均浓度与当地居民呼吸系统疾病日就诊人次的相关性。方法 收集2013-2015年济南市空气污染数据、气象数据和某综合医院每日呼吸系统就诊数,采用基于Poisson分布的广义相加模型的时间序列分析,控制长期趋势、星期几效应、气象因素等混杂因素的影响后,分析济南市大气颗粒物PM10、PM2.5日均浓度与居民呼吸系统疾病日就诊人次间的关系,并考虑滞后效应和其他空气污染物的影响。结果 大气颗粒物PM10、PM2.5与呼吸系统就诊人次数存在关联,差异有统计学意义。当PM10、PM2.5浓度上升10 μg/m3时,当天呼吸系统疾病就诊人次数分别增加0.36%(95% CI:0.30%~0.43%)和0.50%(95% CI:0.30%~0.70%);滞后6 d的PM10、PM2.5浓度的健康效应最强,超额危险度为0.65%(95% CI:0.58%~0.71%)和0.54%(95% CI:0.42%~0.67%);当纳入NO2拟合多污染物模型时,大气颗粒物PM10浓度上升10 μg/m3时,当天呼吸系统疾病就诊人次数增加0.83%(95% CI:0.76%~0.91%)。结论 济南城区大气颗粒物PM10、PM2.5污染与居民呼吸系统疾病就诊人次间存在正相关,NO2污染浓度可增加其效应。
English Abstract:
      Objective To estimate the influence of the ambient PMl0 and PM2.5 pollution on the hospital outpatient department visit due to respiratory diseases in local residents in Jinan quantitatively. Methods Time serial analysis using generalized addictive model (GAM) was conducted. After controlling the confounding factors, such as long term trend, weekly pattern and meteorological factors, considering lag effect and the influence of other air pollutants, the excess relative risks of daily hospital visits associated with increased ambient PM10 and PM2.5 levels were estimated by fitting a Poisson regression model. Results A 10 μg/m3 increase of PM10 and PM2.5 levels was associated with an increase of 0.36%(95%CI:0.30%-0.43%) and 0.50%(95%CI:0.30%-0.70%) respectively for hospital visits due to respiratory diseases. Lag effect of 6 days was strongest, the excess relative risks were 0.65%(95%CI:0.58%-0.71%) and 0.54%(95%CI:0.42%-0.67%) respectively. When NO2 concentration was introduced, the daily hospital visits due to respiratory disease increased by 0.83% as a 10 μg/m3 increase of PM10 concentration (95%CI:0.76%-0.91%). Conclusion The ambient PMl0 and PM2.5 pollution was positively associated with daily hospital visits due to respiratory disease in Jinan, and ambient NO2 concentration would have the synergistic effect.
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