Chongqing Municipal Center for Disease Control and Prevention, Chongqing, China.
State Key Laboratory of Infectious Disease Prevention and Control, Collaborative Innovation Center for Diagnosis and Treatment of Infectious Diseases, National Institute for Communicable Disease Control and Prevention, Chinese Center for Disease Control and Prevention, Beijing, China.
PLoS One. 2021 Feb 3;16(2):e0246023. doi: 10.1371/journal.pone.0246023. eCollection 2021.
The effects of multiple meteorological factors on influenza activity remain unclear in Chongqing, the largest municipality in China. We aimed to fix this gap in this study.
Weekly meteorological data and influenza surveillance data in Chongqing were collected from 2012 to 2019. Distributed lag nonlinear models (DLNMs) were conducted to estimate the effects of multiple meteorological factors on influenza activity.
Inverted J-shaped nonlinear associations between mean temperature, absolute humidity, wind speed, sunshine and influenza activity were found. The relative risks (RRs) of influenza activity increased as weekly average mean temperature fell below 18.18°C, average absolute humidity fell below 12.66 g/m3, average wind speed fell below 1.55 m/s and average sunshine fell below 2.36 hours. Taking the median values as the references, lower temperature, lower absolute humidity and windless could significantly increase the risks of influenza activity and last for 4 weeks. A J-shaped nonlinear association was observed between relative humidity and influenza activity; the risk of influenza activity increased with rising relative humidity with 78.26% as the break point. Taking the median value as the reference, high relative humidity could increase the risk of influenza activity and last for 3 weeks. In addition, we found the relationship between aggregate rainfall and influenza activity could be described with a U-shaped curve. Rainfall effect has significantly higher RR than rainless effect.
Our study shows that multiple meteorological factors have strong associations with influenza activity in Chongqing, providing evidence for developing a meteorology-based early warning system for influenza to facilitate timely response to upsurge of influenza activity.
在中国最大的直辖市重庆,多种气象因素对流感活动的影响仍不清楚。本研究旨在弥补这一空白。
收集了 2012 年至 2019 年重庆每周的气象数据和流感监测数据。采用分布式滞后非线性模型(DLNM)来估计多种气象因素对流感活动的影响。
发现平均温度、绝对湿度、风速、日照与流感活动之间呈倒“J”型非线性关系。当周平均温度低于 18.18°C、平均绝对湿度低于 12.66g/m3、平均风速低于 1.55m/s 和平均日照低于 2.36 小时时,流感活动的相对风险(RR)增加。以中位数为参考,低温、低绝对湿度和无风可显著增加流感活动的风险,并持续 4 周。相对湿度与流感活动之间呈“J”型非线性关系;当相对湿度达到 78.26%时,流感活动的风险增加。以中位数为参考,高相对湿度可增加流感活动的风险,并持续 3 周。此外,我们发现总降雨量与流感活动之间的关系可用 U 型曲线来描述。降雨的影响比无雨的影响具有更高的 RR。
本研究表明,多种气象因素与重庆流感活动密切相关,为开发基于气象的流感预警系统提供了证据,以便及时应对流感活动的激增。