Pramanik Malay, Chowdhury Koushik, Rana Md Juel, Bisht Praffulit, Pal Raghunath, Szabo Sylvia, Pal Indrajit, Behera Bhagirath, Liang Qiuhua, Padmadas Sabu S, Udmale Parmeshwar
Department of Development and Sustainability, School of Environment, Resources and Development, Asian Institute of Technology (AIT), PO. Box 4, Klong Luang, Pathumthani 12120, Thailand.
entre of International Politics, Organization, and Disarmament, School of International Studies, Jawaharlal Nehru University, New Delhi, 110067, India.
Int J Environ Health Res. 2022 May;32(5):1095-1110. doi: 10.1080/09603123.2020.1831446. Epub 2020 Oct 22.
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.
我们研究了全球三个气候带中228个城市的气候对新冠病毒传播风险的影响。基于梯度提升回归树算法方法的应用结果表明,平均温度和平均相对湿度解释了温带和亚热带地区新冠病毒传播的显著差异,而在热带地区,平均日温差和温度季节性显著预测了感染爆发。在法国、土耳其、美国、英国和德国的城市中,平均温度高于10°C时,确诊病例数急剧下降。在热带国家中,印度城市的新冠病毒感染受平均日温度影响最大,而巴西城市则受温度季节性影响最大。这些发现对公共卫生干预具有启示意义,并有助于正在进行的关于气候因素复杂相互作用决定新冠病毒传播风险的科学和政策讨论。