| Literature DB >> 33713261 |
Li Ma1,2,3, Zhuo Yu4, Yan Jiao2, Lin Lin1,2,3, Wei Zhong1,3, Sara W Day5, Arnold Postlethwaite6,7, Hong Chen1,3, Qiang Li8, Heliang Yin9,10,11, Gang Wang12.
Abstract
The widespread epidemic of the COVID-19 in developed countries such as Europe and the USA has sparked many speculations. What factors caused the rapid early pandemic of the COVID-19 in developed countries is the main goal of this study. We collected the main disease indicators and various environmental and economic factors in 61 countries around the world. Our results show that the number of cases is positively correlated with the country's GDP. We further analyzed the factors related to the spread of the disease. They indicate a strong positive correlation between the total patient numbers and the number of airline passengers, with an r value of 0.80. There is also a positive correlation between the number of car ownership and the total patient, with an r value of 0.35. Both the flight passengers and car ownership contribute 66% to the number of total patients. The total death numbers and the number of airline passengers are positively correlated, with an r value of 0.71. A positive correlation between the number of car ownership and the total deaths is with an r value of 0.42. The total contribution of both the flight passengers and car ownership to the number of total deaths is 57%. Our conclusion is that the main cause of the coronavirus pandemic in developed countries is related to the transportation. In other words, the number of travelers determined the early coronavirus pandemic. Therefore, it is necessary to strengthen restrictions and screening of passengers at airports, especially international airports.Entities:
Keywords: Coronavirus; Developed countries; GDP; Infection rate; Transportation
Mesh:
Year: 2021 PMID: 33713261 PMCID: PMC7955214 DOI: 10.1007/s11356-021-12765-5
Source DB: PubMed Journal: Environ Sci Pollut Res Int ISSN: 0944-1344 Impact factor: 5.190
Fig. 1Patient numbers of COVID-19 are positively associated to GDP and forest area of the countries. a Positive correlation between patient numbers and forest areas. Vertical axis: forest area (sq. km) (2016). Horizontal axis: total confirmed cases. b Positive correlation between patient numbers and GDP. Vertical axis: GDP (current US$) (2018). Horizontal axis: total confirmed cases
Fig. 2Total confirmed rate % of COVID-19 patients is positively associated to factors of the developed countries. a Positive correlation between confirmed rate % of COVID-19 patients and CO2 emissions. Vertical axis: CO2 emissions (metric tons per capita) (2014). Horizontal axis: confirmed rate % of COVID-19 patients. b Positive correlation between confirmed rate % of COVID-19 patients and incomes. Vertical axis: income economies (1, low-income economies; 2, lower middle-income economies; 3, upper middle-income economies; 4, high-income economies). Horizontal axis: confirmed rate % of COVID-19 patients. c Positive correlation between confirmed rate % of COVID-19 patients and population age at 15–64. Vertical axis: population aged 15–64, percent, 2019. Horizontal axis: confirmed rate % of COVID-19 patients. d Negative correlation between confirmed rate % of COVID-19 patients and poverty level. Vertical axis: poverty headcount ratio at $1.90 a day (2011 PPP) (2016). Horizontal axis: confirmed rate % of COVID-19 patients
Fig. 3Death numbers and rate of COVID-19 patients are positively associated to economic factors of the developed countries. a Positive correlation between confirmed death numbers of COVID-19 patients and GDP. Vertical axis: GDP (current US$) (2018). Horizontal axis: total death numbers of COVID-19 patients. b Positive correlation between confirmed death rate % of COVID-19 patients and school enrollment. Vertical axis: school enrollment, secondary (% gross) (2017). Horizontal axis: confirmed death rate % of COVID-19 patients. c Positive correlation between confirmed death rate % of COVID-19 patients and aged 65 and older. Vertical axis: population aged 65 and older, percent, 2019. Horizontal axis: confirmed death rate % of COVID-19 patients. d Positive correlation between confirmed death rate % of COVID-19 patients and life expectancy. Vertical axis: life expectancy at birth (years), 2019. Horizontal axis: confirmed death rate % of COVID-19 patients
Fig. 4Pandemic of COVID-19 patients is positively associated to transportation factors of the developed countries. a Line plot of positive correlation between confirmed numbers of COVID-19 patients and air passengers. Vertical axis: number of air passengers carried in 2019. Horizontal axis: total numbers of COVID-19 patients. b Line plot of positive correlation between confirmed number of COVID-19 patients and car ownerships. Vertical axis: ownership of passenger cars (units per thousand persons). Horizontal axis: confirmed numbers of COVID-19 patients. c Multiple regression correlation ship between confirmed numbers of COVID-19 patients and air passengers and car ownership. Vertical axis: numbers of air passengers or car ownership. Horizontal axis: confirmed number of COVID-19 patients. d Line plot of positive correlation between confirmed death numbers of COVID-19 patients and air passengers. Vertical axis: number of air passengers carried in 2019. Horizontal axis: total death numbers of COVID-19 patients. e Line plot of positive correlation between confirmed death numbers of COVID-19 patients and car ownerships. Vertical axis: ownership of passenger cars (units per thousand persons). Horizontal axis: confirmed death numbers of COVID-19 patients. f Multiple regression correlation ship between confirmed death numbers of COVID-19 patients and air passengers and car ownership. Vertical axis: numbers of air passengers or car ownership. Horizontal axis: confirmed death number of COVID-19 patients
Fig. 5Transportation factors are positively associated to economic factors of the developed countries. a Positive correlation between air passengers and GDP. Vertical axis: number of air passengers carried 2019. Horizontal axis: GDP (current US$) (2018). b Positive correlation between air passengers and incomes. Vertical axis: levels of income economies. Horizontal axis: number of air passengers carried 2019. c Positive correlation between car ownership and incomes. Vertical axis: levels of income economies. Horizontal axis: car ownership. d Positive correlation between car ownership and GDP. Vertical axis: car ownership. Horizontal axis: GDP level