Lin Shengnan, Rui Jia, Xie Fang, Zhan Meirong, Chen Qiuping, Zhao Bin, Zhu Yuanzhao, Li Zhuoyang, Deng Bin, Yu Shanshan, Li An, Ke Yanshu, Zeng Wenwen, Su Yanhua, Chiang Yi-Chen, Chen Tianmu
School of Public Health, Xiamen University, Xiamen, China.
Cirad, UMR 17, Intertryp, Université de Montpellier, Montpellier, France.
Front Public Health. 2022 Jul 1;10:920312. doi: 10.3389/fpubh.2022.920312. eCollection 2022.
Meteorological factors have been proven to affect pathogens; both the transmission routes and other intermediate. Many studies have worked on assessing how those meteorological factors would influence the transmissibility of COVID-19. In this study, we used generalized estimating equations to evaluate the impact of meteorological factors on Coronavirus disease 2019 (COVID-19) by using three outcome variables, which are transmissibility, incidence rate, and the number of reported cases.
In this study, the data on the daily number of new cases and deaths of COVID-19 in 30 provinces and cities nationwide were obtained from the provincial and municipal health committees, while the data from 682 conventional weather stations in the selected provinces and cities were obtained from the website of the China Meteorological Administration. We built a Susceptible-Exposed-Symptomatic-Asymptomatic-Recovered/Removed (SEIAR) model to fit the data, then we calculated the transmissibility of COVID-19 using an indicator of the effective reproduction number ( ). To quantify the different impacts of meteorological factors on several outcome variables including transmissibility, incidence rate, and the number of reported cases of COVID-19, we collected panel data and used generalized estimating equations. We also explored whether there is a lag effect and the different times of meteorological factors on the three outcome variables.
Precipitation and wind speed had a negative effect on transmissibility, incidence rate, and the number of reported cases, while humidity had a positive effect on them. The higher the temperature, the lower the transmissibility. The temperature had a lag effect on the incidence rate, while the remaining five meteorological factors had immediate and lag effects on the incidence rate and the number of reported cases.
Meteorological factors had similar effects on incidence rate and number of reported cases, but different effects on transmissibility. Temperature, relative humidity, precipitation, sunshine hours, and wind speed had immediate and lag effects on transmissibility, but with different lag times. An increase in temperature may first cause a decrease in virus transmissibility and then lead to a decrease in incidence rate. Also, the mechanism of the role of meteorological factors in the process of transmissibility to incidence rate needs to be further explored.
气象因素已被证明会影响病原体,包括传播途径及其他中间环节。许多研究致力于评估这些气象因素如何影响2019冠状病毒病(COVID-19)的传播性。在本研究中,我们使用广义估计方程,通过三个结果变量(传播性、发病率和报告病例数)来评估气象因素对2019冠状病毒病(COVID-19)的影响。
在本研究中,全国30个省、市的COVID-19每日新增病例数和死亡数据来自省级和市级卫生委员会,而所选省、市682个常规气象站的数据来自中国气象局网站。我们构建了一个易感-暴露-有症状-无症状-康复/清除(SEIAR)模型来拟合数据,然后使用有效再生数( )指标计算COVID-19的传播性。为了量化气象因素对包括COVID-19传播性、发病率和报告病例数在内的多个结果变量的不同影响,我们收集了面板数据并使用广义估计方程。我们还探讨了气象因素对这三个结果变量是否存在滞后效应以及不同的滞后时间。
降水量和风速对传播性、发病率和报告病例数有负面影响,而湿度对它们有正面影响。温度越高,传播性越低。温度对发病率有滞后效应,而其余五个气象因素对发病率和报告病例数有即时和滞后效应。
气象因素对发病率和报告病例数有相似影响,但对传播性有不同影响。温度、相对湿度、降水量、日照时数和风速对传播性有即时和滞后效应,但滞后时间不同。温度升高可能首先导致病毒传播性下降,进而导致发病率下降。此外,气象因素在传播性到发病率过程中的作用机制还需要进一步探索。