How do El Niño Southern Oscillation (ENSO) and local meteorological factors affect the incidence of seasonal influenza in New York state

Jianpeng Xiao , Michael Gao , Miaoling Huang , Wangjian Zhang , Zhicheng Du , Tao Liu , Xiaojing Meng , Wenjun Ma , Shao Lin
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引用次数: 0

Abstract

Background

Research is lacking in examining how multiple climate factors affect the incidence of seasonal influenza. We investigated the associations between El Niño Southern Oscillation (ENSO), meteorological factors, and influenza incidence in New York State, United States.

Method

We collected emergency department visit data for influenza from the New York State Department of Health. ENSO index was obtained from the National Oceanic and Atmospheric Administration. Meteorological factors, Google Flu Search Index (GFI), and Influenza-like illness (ILI) data in New York State were also collected. Wavelet analysis was used to quantitatively estimate the coherence and phase difference of ENSO, temperature, precipitation, relative humidity, and absolute humidity with emergency department visits of influenza in New York State. Generalized additive models (GAM) were employed to examine the exposure-response relationships between ENSO, weather, and influenza. GFI and ILI data were used to simulate synchronous influenza visits.

Results

The influenza epidemic in New York State had multiple periodic and was primarily on the 1-year scale. The incidence of influenza closely followed the low ENSO index by an average of two months, and the lag period of ENSO on influenza was shorter during 2015–2018. Low temperature in the previous 2 weeks and low absolute humidity in the prior week were positively associated with influenza incidence in New York State. We found an l-shaped association between ENSO index and influenza, a parabolic relationship between temperature in the previous two weeks and influenza, and a linear negative association between absolute humidity in the previous week and influenza. The simulation models including GFI and ILI had higher accuracy for influenza visit estimation.

Conclusions

Low ENSO index, low temperature, and low absolute humidity may drive the influenza epidemics in New York State. The findings can help us deepen the understanding of the climate-influenza association, and help to develop an influenza forecasting model.

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厄尔尼诺Niño南方涛动(ENSO)和当地气象因素如何影响纽约州季节性流感的发病率
关于多种气候因素如何影响季节性流感发病率的研究缺乏。我们调查了厄尔尼诺Niño南方涛动(ENSO)、气象因素和美国纽约州流感发病率之间的关系。方法收集纽约州卫生部流感急诊科就诊数据。ENSO指数来自美国国家海洋和大气管理局。还收集了纽约州的气象因素、谷歌流感搜索指数(GFI)和流感样疾病(ILI)数据。采用小波分析定量估计ENSO、温度、降水、相对湿度和绝对湿度与纽约州流感急诊就诊的相干性和相位差。采用广义加性模型(GAM)来检验ENSO、天气和流感之间的暴露-反应关系。GFI和ILI数据用于模拟同步流感就诊。结果纽约州流感流行具有多周期特征,以1年为主。2015-2018年流感发病率与低ENSO指数密切相关,平均滞后2个月,ENSO对流感的滞后时间较短。纽约州前两周的低温和前一周的低绝对湿度与流感发病率呈正相关。我们发现ENSO指数与流感呈l型相关,前两周的温度与流感呈抛物线关系,前一周的绝对湿度与流感呈线性负相关。包括GFI和ILI在内的仿真模型对流感就诊估计具有较高的准确性。结论低ENSO指数、低温和低绝对湿度可能是纽约州流感流行的驱动因素。这些发现可以帮助我们加深对气候-流感关联的理解,并有助于开发流感预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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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0
审稿时长
38 days
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