2020

Author(s): Lin C, Lau AKH, Fung JCH, Guo C, Chan JWM, Yeung DW, Zhang Y, Bo Y, Hossain MS, Zeng Y, Lao XQ

The novel coronavirus disease 2019 (COVID-19), which first emerged in Hubei province, China, has become a pandemic. However, data regarding the effects of meteorological factors on its transmission are limited and inconsistent. A mechanism-based parameterisation scheme was developed to investigate the association between the scaled transmission rate (STR) of COVID-19 and the meteorological parameters in 20 provinces/municipalities located on the plains in China. We obtained information on the scale of population migrated from Wuhan, the world epicentre of the COVID-19 outbreak, into the study provinces/municipalities using mobile-phone positioning system and big data techniques. The highest STRs were found in densely populated metropolitan areas and in cold provinces located in north-eastern China. Population density had a non-linear relationship with disease spread (linearity index, 0.9). Among various meteorological factors, only temperature was significantly associated with the STR after controlling for the effect of population density. A negative and exponential relationship was identified between the transmission rate and the temperature (correlation coefficient, -0.56; 99% confidence level). The STR increased substantially as the temperature in north-eastern China decreased below 0Ê¡C (the STR ranged from 3.5 to 12.3 when the temperature was between -9.41Ê¡C and -13.87Ê¡C), whilst the STR showed less temperature dependence in the study areas with temperate weather conditions (the STR was 1.21ʱÊ0.57 when the temperature was above 0Ê¡C). Therefore, a higher population density was linearly whereas a lower temperature (<0Ê¡C) was exponentially associated with an increased transmission rate of COVID-19. These findings suggest that the mitigation of COVID-19 spread in densely populated and/or cold regions will be a great challenge.

Journal: Science of the Total Environment