Effects of demographic and weather parameters on COVID-19 basic reproduction number
Igor Salom, Andjela Rodic, Ognjen Milicevic, Dusan Zigic, Magdalena, Djordjevic, Marko Djordjevic

TL;DR
This study investigates how demographic and weather factors influence COVID-19 transmissibility by analyzing the basic reproductive number R0 across 118 countries using nonlinear dynamics and bioinformatics, revealing novel correlations and settling disputes.
Contribution
It introduces a novel approach to estimate R0 from exponential growth regimes and systematically correlates a wide range of demographic and weather parameters with COVID-19 transmissibility.
Findings
No dependence on wind speed and air pressure.
Negative correlation with precipitation.
Positive correlation with human development index and alcohol consumption.
Abstract
Timely prediction of the COVID-19 progression is not possible without a comprehensive understanding of environmental factors that may affect the infection transmissibility. Studies addressing parameters that may influence COVID-19 progression relied on either the total numbers of detected cases and similar proxies and/or a small number of analyzed factors, including analysis of regions that display a narrow range of these parameters. We here apply a novel approach, exploiting widespread growth regimes in COVID-19 detected case counts. By applying nonlinear dynamics methods to the exponential regime, we extract basic reproductive number R0 (i.e., the measure of COVID-19 inherent biological transmissibility), applying to the completely naive population in the absence of social distancing, for 118 different countries. We then use bioinformatics methods to systematically collect data on a…
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