| Literature DB >> 34723082 |
Vrinda Anand1,2, Nikhil Korhale1,2, Suvarna Tikle1, Mahender Singh Rawat3, Gufran Beig1.
Abstract
It was speculated that fewer COVID-19 infections may emerge in tropical countries due to their hot climate, but India emerged as one of the leading hotspot. There is no concrete answer on the influence of meteorological parameters on COVID-19 even after more than a year of outbreak. The present study examines the impacts of Meteorological parameters during the summer and monsoon season of 2020, in different Indian mega cities having distinct climate and geography. The results indicate the sign of association, but it varies from one climatic zone to another. The principal component analysis revealed that humidity is strongly correlated with COVID-19 infections in hillocky city Pune (R = 0.70), dry Delhi (R = 0.50) and coastal Mumbai (R = 0.46), but comparatively weak correlation is found in arid climatic city of Ahmedabad. As against the expectations, no discernible correlation is found with temperature in any of the cities. As the virus in 2020 in India largely travelled with droplets, the association with absolute humidity in the dry regions has serious implications. Clarity in understanding the impact of seasonality will greatly help epidemiological research and in making strategies to control the pandemic in India and other tropical countries around the world. © King Abdulaziz University and Springer Nature Switzerland AG 2021.Entities:
Keywords: COVID-19; India; PCA; Relative humidity; Temperature
Year: 2021 PMID: 34723082 PMCID: PMC8414948 DOI: 10.1007/s41748-021-00253-2
Source DB: PubMed Journal: Earth Syst Environ ISSN: 2509-9434
Fig. 1The number of COVID-19 cases in different Indian states and the study locations pertaining to this study
Fig. 2Daily variation in temperature, RH, AH and daily new COVID—19 cases in Delhi (a), Mumbai (b), Pune (c) and Ahmedabad (d) from 1st April to 31st Aug 2020
The descriptive statistics of the data considered for this study
| Cities | Statistic | Max temp, °C | Min temp, °C | Avg temp, °C | RH, % | AH, g/m3 | Daily COVID-19 cases |
|---|---|---|---|---|---|---|---|
| Delhi | Minimum | 25.220 | 11.990 | 18.997 | 30.448 | 7.805 | 17.000 |
| Maximum | 45.860 | 30.470 | 38.110 | 87.704 | 25.932 | 4473.000 | |
| Median | 33.560 | 23.590 | 27.684 | 64.620 | 18.065 | 1266.500 | |
| Mean | 34.067 | 23.283 | 28.015 | 62.296 | 17.122 | 1536.390 | |
| Standard deviation | 3.956 | 4.016 | 3.783 | 12.620 | 4.247 | 1248.224 | |
| Skewness (Pearson) | 0.273 | − 0.716 | − 0.074 | − 0.494 | − 0.352 | 0.737 | |
| Kurtosis (Pearson) | − 0.271 | 0.155 | − 0.361 | − 0.403 | − 0.510 | − 0.505 | |
| Mumbai | Minimum | 23.374 | 21.025 | 24.273 | 54.163 | 17.566 | 12.000 |
| Maximum | 36.213 | 28.903 | 32.011 | 99.621 | 25.341 | 2654.000 | |
| Median | 30.628 | 25.293 | 27.662 | 85.568 | 22.377 | 1150.000 | |
| Mean | 30.345 | 25.441 | 27.702 | 83.571 | 22.259 | 1143.831 | |
| Standard deviation | 2.285 | 1.399 | 1.600 | 9.499 | 1.438 | 589.391 | |
| Skewness (Pearson) | − 0.450 | 0.102 | − 0.005 | − 0.290 | − 0.833 | 0.126 | |
| Kurtosis (Pearson) | − 0.236 | − 0.296 | − 0.788 | − 0.936 | 1.187 | − 0.229 | |
| Pune | Minimum | 21.734 | 19.723 | 23.314 | 35.610 | 10.951 | 6.000 |
| Maximum | 38.543 | 26.852 | 31.937 | 93.568 | 21.691 | 2093.000 | |
| Median | 30.690 | 23.838 | 26.590 | 77.811 | 18.965 | 771.000 | |
| Mean | 31.570 | 23.870 | 27.245 | 71.364 | 18.250 | 821.034 | |
| Standard deviation | 4.228 | 1.326 | 2.461 | 15.830 | 2.369 | 678.093 | |
| Skewness (Pearson) | 0.126 | − 0.225 | 0.359 | − 0.699 | − 1.188 | 0.299 | |
| Kurtosis (Pearson) | − 1.041 | 0.126 | − 1.230 | − 0.871 | 0.741 | − 1.439 | |
| Ahemdabad | Minimum | 25.660 | 19.140 | 24.347 | 21.519 | 7.692 | 0.000 |
| Maximum | 43.520 | 30.418 | 35.914 | 98.037 | 25.315 | 336.000 | |
| Median | 35.600 | 26.085 | 30.109 | 73.168 | 22.189 | 174.000 | |
| Mean | 35.857 | 26.199 | 30.536 | 64.426 | 19.403 | 183.661 | |
| Standard deviation | 3.905 | 1.925 | 2.794 | 22.368 | 4.880 | 80.832 | |
| Skewness (Pearson) | − 0.046 | 0.039 | 0.202 | − 0.428 | − 0.922 | − 0.411 | |
| Kurtosis (Pearson) | − 0.673 | 0.002 | − 0.858 | − 1.244 | − 0.559 | − 0.140 |
Fig. 3Linear regression between daily COVID-19 cases and the different meteorological parameters
Principal components (PC) and total variance of four cities considering meteorological variables and Daily COVID-19 cases
| Principal components | Eigenvalue | Variability (%) | Cumulative % |
|---|---|---|---|
| Delhi | |||
| PC1 | 3.32 | 51.42 | 51.42 |
| PC2 | 1.90 | 35.57 | 87.00 |
| Mumbai | |||
| PC1 | 3.51 | 52.26 | 52.26 |
| PC2 | 1.50 | 31.11 | 83.38 |
| Pune | |||
| PC1 | 4.43 | 47.61 | 47.61 |
| PC2 | 1.01 | 42.94 | 90.55 |
| Ahmedabad | |||
| PC1 | 4.00 | 59.28 | 59.28 |
| PC2 | 1.31 | 29.31 | 88.60 |
Factor loadings after varimax rotation
| Delhi | Mumbai | Pune | Ahmedabad | |||||
|---|---|---|---|---|---|---|---|---|
| PC1 | PC2 | PC1 | PC2 | PC1 | PC2 | PC1 | PC2 | |
| 0.951 | − 0.166 | 0.888 | − 0.208 | − 0.641 | 0.710 | 0.850 | 0.373 | |
| 0.906 | 0.306 | 0.916 | 0.164 | − 0.028 | 0.969 | 0.525 | 0.696 | |
| 0.994 | 0.058 | 0.966 | − 0.162 | − 0.634 | 0.751 | 0.838 | 0.518 | |
| RH | − 0.222 | 0.933 | − 0.730 | 0.640 | 0.883 | − 0.457 | − 0.986 | − 0.091 |
| AH | 0.539 | 0.794 | 0.019 | 0.926 | 0.982 | − 0.015 | − 0.939 | 0.160 |
| Daily cases | 0.179 | 0.712 | − 0.199 | 0.709 | 0.546 | − 0.600 | − 0.060 | 0.913 |
Fig. 4Projection of all meteorological variables and COVID-19 on the first two principal components