Effects and interaction of air pollution and meteorological factors on pertussis incidence in P.R.China

Yizhe Luo , Longyao Zhang , Simin Zhang , Lele Ai , Heng Lv , Changqiang Zhu , Jiahong Wu , Weilong Tan
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引用次数: 0

Abstract

Background

Previous studies on the risk of pertussis exposure to atmospheric pollutants are still inconclusive.

Methods

Air pollutant, meteorological data and epidemiological distribution of pertussis cases in China during 2004–2018 were concluded in this study. A distributed lag nonlinear model (DLNM) for a maximum lag of 15 months was developed to evaluate the lag effects of monthly air pollutants and meteorological factors on pertussis incidence. Then a generalized additive model (GAM) was constructed to explore the interaction effect among air pollutants, meteorological factors and pertussis incidence and the stratified effect of selected variables.

Results

A total of 74,249 cases of pertussis were included during 2004–2018 in China. Long-term exposure to NO2 was positively associated with the risk of pertussis at 32–94 µg/m3. Interaction and stratified analyses showed that there were certain correlations between 4 air pollutants (PM2.5, SO2, NO2, and O3) and 3 meteorological factors (temperature, sunlight and wind speed). In the high PM2.5 environment, a unit increment in NO2 contributed to a 2.52% (95% CI: 2.13%-2.92%) increase in pertussis incidence risk, while in a low PM2.5 environment, a unit increment of NO2 contributed to a 2.16% (95% CI: 1.64%-2.69%) increase in pertussis incidence risk.

Conclusions

Our study indicated that air pollutants and meteorological factors have delayed effects on the occurrence of pertussis in China, and the effect of NO2 can be modified by PM2.5, SO2, and O3. In the prevention and control of pertussis, the additive effect of different factors on pertussis and the variability of weather should be considered.

Abstract Image

大气污染与气象因素对中国百日咳发病的影响及相互作用
背景先前关于百日咳暴露于大气污染物风险的研究仍然没有定论。方法分析2004-2018年中国百日咳病例的大气污染物、气象资料和流行病学分布。建立了最大滞后15个月的分布滞后非线性模型(DLNM),以评价每月空气污染物和气象因素对百日咳发病率的滞后效应。然后构建广义加性模型(GAM),探讨大气污染物、气象因素与百日咳发病率之间的交互作用以及所选变量的分层效应。结果2004-2018年全国共纳入百日咳病例74,249例。长期暴露于二氧化氮与32-94µg/m3的百日咳风险呈正相关。相互作用和分层分析表明,PM2.5、SO2、NO2和O3 4种大气污染物与3个气象因子(温度、日照和风速)之间存在一定的相关性。在高PM2.5环境中,单位NO2增加可使百日咳发病风险增加2.52% (95% CI: 2.13% ~ 2.92%),而在低PM2.5环境中,单位NO2增加可使百日咳发病风险增加2.16% (95% CI: 1.64% ~ 2.69%)。结论大气污染物和气象因素对中国百日咳的发生具有延迟效应,且NO2的影响可以通过PM2.5、SO2和O3来调节。在预防和控制百日咳时,应考虑不同因素对百日咳的叠加作用和天气的多变性。
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来源期刊
Hygiene and environmental health advances
Hygiene and environmental health advances Environmental Science (General)
CiteScore
1.10
自引率
0.00%
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审稿时长
38 days
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