| Literature DB >> 32921865 |
Aritra Ghosh1,2, Srijita Nundy3, Sumedha Ghosh4, Tapas K Mallick1,2.
Abstract
COVID-19 transmission in London city was discussed in this work from an urban context. The association between COVID-19 cases and climate indicators in London, UK were analysed statistically employing published data from national health services, UK and Time and Date AS based weather data. The climatic indicators included in the study were the daily averages of maximum and minimum temperatures, humidity, and wind speed. Pearson, Kendall, and Spearman rank correlation tests were selected for data analysis. The data was considered up to two different dates to study the climatic effect (10th May in the first study and then updated up to 16th of July in the next study when the rest of the data was available). The results were contradictory in the two studies and it can be concluded that climatic parameters cannot solely determine the changes in the number of cases in the pandemic. Distance from London to four other cities (Birmingham, Leeds, Manchester, and Sheffield) showed that as the distance from the epicentre of the UK (London) increases, the number of COVID-19 cases decrease. What should be the necessary measure to be taken to control the transmission in cities have been discussed.Entities:
Keywords: COVID-19; City; Coronavirus; Humidity; Lock down; London; Temperature; Transmission; Transport; Urban context
Year: 2020 PMID: 32921865 PMCID: PMC7480337 DOI: 10.1016/j.cities.2020.102928
Source DB: PubMed Journal: Cities ISSN: 0264-2751
Fig. 1Cumulative total COVID-19 casses globally as of 16th of July 2020.
Fig. 2World-wide distribution of COVID-19 with symptoms and precautions to be taken against coronavirus infection and temperature, humidity, and wind speed correlation with COVID-19 epidemic in the UK.
Fig. 3Observed cases of COVID-19 in London, UK (dated: 9th Feb – 16th July 2020).
Fig. 4Variation of maximum temperature, minimum temperature, humidity, and wind speed for 11th of March 2020 to 16th July 2020.
Empirical results using Pearson correlation coefficient.
| New case (10th May) | New case (16th July) | New deaths (10th May) | New deaths | |
|---|---|---|---|---|
| Maximum temp | 0.052845 | −0.5182 | 0.108409 | −0.3238 |
| Minimum temp | −0.11075 | −0.674 | −0.09906 | −0.4738 |
| Humidity | −0.25156 | −0.1664 | −0.35567 | −0.1765 |
| Wind speed | −0.13921 | −0.1211 | −0.16509 | −0.078 |
Empirical results using Kendall correlation coefficient.
| New case (10th May) | New case (16th July) | New Deaths (10th May) | New deaths (16th July) | |
|---|---|---|---|---|
| Maximum temp | 0.03913 | −0.3931 | 0.071174 | −0.3238 |
| Minimum temp | −0.08045 | −0.5203 | −0.08165 | −0.4738 |
| Humidity | −0.14541 | −0.136 | −0.22247 | −0.1765 |
| Wind speed | −0.09116 | −0.067 | −0.15008 | −0.078 |
Empirical results using Spearman correlation coefficient.
| New case | New case | New deaths | New deaths | |
|---|---|---|---|---|
| Maximum temp | 0.054483 | −0.58 | 0.104025 | −0.4919 |
| Minimum temp | −0.11742 | −0.7428 | −0.11137 | −0.6893 |
| Humidity | −0.24857 | −0.234 | −0.34941 | −0.2921 |
| Wind speed | −0.13921 | −0.1011 | −0.20848 | −0.1143 |
Fig. 5Daily cases for London, Birmingham, Leeds, Manchester, Sheffield from 15th March to 30th June 2020.
Fixed effect results for distance dependency from London to other four cities.
| Fixed effects: | Estimate | Std. error | t Value |
|---|---|---|---|
| (Intercept) | 32.93176 | 9.59686 | 3.432 |
| Time | 0.74978 | 2.33046 | 0.322 |
| Time^2 | −0.01015 | 0.01657 | −0.613 |
| Distance | −25.08761 | 5.01678 | −5.001 |
| Population | 4.89825 | 3.93665 | 1.244 |
| Distance:population | −9.84526 | 5.32608 | −1.848 |
Random effect results for distance dependency from London to other four cities.
| Random effects | Name | Variance | Std. dev. |
|---|---|---|---|
| Groups | (Intercept) | 3.442e+02 | 18.55223 |
| City | Time | 2.168e+01 | 4.65615 |
| I(time^2) | 1.095e-03 | 0.03309 |