| Literature DB >> 33090891 |
Malay Pramanik1,2, Koushik Chowdhury3, Md Juel Rana4,5, Praffulit Bisht2, Raghunath Pal4, Sylvia Szabo6, Indrajit Pal7, Bhagirath Behera3, Qiuhua Liang8, Sabu S Padmadas9, Parmeshwar Udmale1.
Abstract
We investigate the climatic influence on COVID-19 transmission risks in 228 cities globally across three climatic zones. The results, based on the application of a Boosted Regression Tree algorithm method, show that average temperature and average relative humidity explain significant variations in COVID-19 transmission across temperate and subtropical regions, whereas in the tropical region, the average diurnal temperature range and temperature seasonality significantly predict the infection outbreak. The number of positive cases showed a decrease sharply above an average temperature of 10°C in the cities of France, Turkey, the US, the UK, and Germany. Among the tropical countries, COVID-19 in Indian cities is most affected by mean diurnal temperature, and those in Brazil by temperature seasonality. The findings have implications on public health interventions, and contribute to the ongoing scientific and policy discourse on the complex interplay of climatic factors determining the risks of COVID-19 transmission.Entities:
Keywords: Boosted Regression Tree; COVID-19 transmission; SARS-CoV-2; climatic association; stochastic model
Mesh:
Year: 2020 PMID: 33090891 DOI: 10.1080/09603123.2020.1831446
Source DB: PubMed Journal: Int J Environ Health Res ISSN: 0960-3123 Impact factor: 3.411