Department of Epidemiology and Health Statistics, Fudan University, China.; Department of Biostatistics, Erasmus University Medical Center, the Netherlands.
Department of Epidemiology and Health Statistics, Fudan University, China.
Sci Total Environ. 2020 Aug 1;728:138778. doi: 10.1016/j.scitotenv.2020.138778. Epub 2020 Apr 19.
COVID-19 has become a pandemic. The influence of meteorological factors on the transmission and spread of COVID-19 is of interest. This study sought to examine the associations of daily average temperature (AT) and relative humidity (ARH) with the daily counts of COVID-19 cases in 30 Chinese provinces (in Hubei from December 1, 2019 to February 11, 2020 and in other provinces from January 20, 2020 to Februarys 11, 2020). A Generalized Additive Model (GAM) was fitted to quantify the province-specific associations between meteorological variables and the daily cases of COVID-19 during the study periods. In the model, the 14-day exponential moving averages (EMAs) of AT and ARH, and their interaction were included with time trend and health-seeking behavior adjusted. Their spatial distributions were visualized. AT and ARH showed significantly negative associations with COVID-19 with a significant interaction between them (0.04, 95% confidence interval: 0.004-0.07) in Hubei. Every 1 °C increase in the AT led to a decrease in the daily confirmed cases by 36% to 57% when ARH was in the range from 67% to 85.5%. Every 1% increase in ARH led to a decrease in the daily confirmed cases by 11% to 22% when AT was in the range from 5.04 °C to 8.2 °C. However, these associations were not consistent throughout Mainland China.
新冠疫情已成为全球性大流行。气象因素对新冠疫情传播和扩散的影响受到关注。本研究旨在探究日平均气温(AT)和相对湿度(ARH)与中国 30 个省份每日新冠病例数之间的关系。在研究期间,采用广义相加模型(GAM)来量化气象变量与新冠每日病例之间的特定省份关联。在模型中,调整了时间趋势和求医行为,纳入了 AT 和 ARH 的 14 天指数移动平均值(EMA)及其交互项。可视化了它们的空间分布。在湖北,AT 和 ARH 与新冠呈显著负相关,且两者之间存在显著的交互作用(0.04,95%置信区间:0.004-0.07)。当 ARH 在 67%-85.5%范围内时,AT 每升高 1°C,每日确诊病例数减少 36%-57%。当 AT 在 5.04°C-8.2°C范围内时,ARH 每增加 1%,每日确诊病例数减少 11%-22%。然而,这些关联在中国大陆并不一致。