| Literature DB >> 33547610 |
Gagan Deep Sharma1, Sanchita Bansal2, Anshita Yadav2, Mansi Jain2, Isha Garg2.
Abstract
This paper examines the nexus between the Covid-19 confirmed cases, deaths, meteorological factors, including an air pollutant among the world's top 10 infected countries, from 1 February 2020 through 30 June 2020, using advanced econometric techniques to address heterogeneity across the nations. The findings of the study suggest that there exists a strong cross-sectional dependence between Covid-19 cases, deaths, and all the meteorological factors for the countries under study. The findings also reveal that a long-term relationship exists between all the meteorological factors. There exists a bi-directional causality running between the Covid-19 cases and all the meteorological factors. With Covid-19 death cases as the dependent variable, there exists bi-directional causality running between the Covid-19 death cases and Covid-19 confirmed cases, air pressure, humidity, and temperature. Temperature and air pressure exhibit a statistically significant and negative impact on the Covid-19 confirmed cases. Air pollutant PM2.5 also exhibits a significant but positive impact on the Covid-19 confirmed cases. Temperature indicates a statistically significant and negative impact on the Covid-19 death cases. At the same time, Covid-19 confirmed cases and air pollutant PM2.5 exhibit a statistically significant and positive impact on the Covid-19 death cases across the ten countries under study. Hence, it is possible to postulate that cool and dry weather conditions with lower temperatures may promote indoor activities and human gatherings (assembling), leading to virus transmission. This study contributes both practically and theoretically to the concerned field of pandemic management. Our results assist in taking appropriate measures in implementing intersectoral policies and actions as necessary in a timely and efficient manner. Causal relations of Meteorological factors and Covid-19 (2 models used in the study).Entities:
Keywords: Air pressure; COVID-19; Humidity; Meteorological factors; PM2.5; Temperature; Wind speed
Year: 2021 PMID: 33547610 PMCID: PMC7864620 DOI: 10.1007/s11356-021-12668-5
Source DB: PubMed Journal: Environ Sci Pollut Res Int ISSN: 0944-1344 Impact factor: 4.223
Number of total cases and total deaths in the ten countries under study, as on 16 November 2020
| S No. | Affected country | Total cases | Total deaths |
|---|---|---|---|
| 1 | USA | 11,475,609 | 252,337 |
| 2 | India | 8,873,994 | 130,552 |
| 3 | Brazil | 5,864,943 | 165,858 |
| 4 | Russia | 1,948,603 | 33,489 |
| 5 | Spain | 1,521,899 | 41,253 |
| 6 | UK | 1,390,681 | 52,147 |
| 7 | Italy | 1,205,881 | 45,733 |
| 8 | Peru | 937,011 | 35,231 |
| 9 | Iran | 775,121 | 41,979 |
| 10 | Chile | 532,604 | 14,863 |
Source: Worldometer, (2020)
comparison of studies analyzing the Covid-19 and meteorological relationship
| Study | Country(s) | Methodology | Time period | Findings |
|---|---|---|---|---|
| Adhikari and Yin ( | New York, USA | Negative binomial regression model | March 1 to April 20, 2020 | Significant and positive association between temperature, O3 concentration, relative humidity, cloud percentages, and Covid-19 cases; however, none of these are related to death |
| Al-Rousan and Al-Najjar ( | 30 Chinese provinces | Pearson’s correlation | January 22 to March 1, 2020 | Temperature, shortwave radiation and pressure are positively correlated with Covid-19 cases. Other variables are provincially distinct, and snowfall has no correlation |
| Auler et al. ( | Brazil | Exploratory data analysis, Shapiro-Wilk test, Clausius-Clapeyron equation | March 13 to April 13, 2020 | High mean temperatures and intermediate relative humidity influence the Covid-19 transmission rate |
| Berman and Ebisu ( | USA | Summary statistics and comparisons between pollution concentrations during historical versus current periods done using two-sided | January 8 to April 21 from 2017 to 2020 | Statistically significant declines in NO2 and PM2.5 were observed during the Covid-19 period |
| Bontempi ( | Italy | Reported data analysis | February 10 to March 27, 2020 | It is not necessary that PM10 as a carrier causes Covid-19 transmission |
| Briz-Redón and Serrano-Aroca ( | Spain | Spatio-temporal analysis | February 25 to March 28, 2020 | Warmer mean, minimum and maximum temperatures does not lead to any reduction in the Covid-19 cases |
| Chien and Chen ( | USA | Generalized additive model (GAM) | March 22, 2020, to April 22, 2020 | Average temperature, minimum relative humidity, and precipitation minimize the Covid-19 risk after some peak value |
| Gupta et al. ( | USA, India | Distribution modeling- mean, standard deviation | January 1 to April 9, 2020 | Covid-19 spread in the USA is significant for states with 4 < AH < 6 g/m3, and temperature in a wider range of 4–11 °C with number of new cases |
| Iqbal et al. ( | China | Continuous wavelet transform (CWT), wavelet transform coherence (WTC), partial wavelet coherence (PWC), and multiple wavelet coherence (MWC) | January 21 to March 31, 2020 | No significant role of temperature in containing Covid-19 cases |
| Jain and Sharma ( | India | Trend analysis, paired | March to April 2019 and 2020 March 10 to 20, 2020 March 25 to April 6, 2020 | Significant decline in all the pollutants except for O3 during the lock-down phase. Low relative humidity and very high wind speed and temperature lead to dispersion of air pollutants |
| Kumar ( | India | Pearson correlation | March to April, 2020 | Positive association between temperature and Covid-19 cases. Negative association between humidity and Covid-19 cases |
| Zhu et al. | 8 South American cities | Multiple regression analysis: Spearman’s correlation coefficient | February 23 to May 12, 2020 | The association between absolute humidity and incubative cases is negative. There were large differences between the effects of the coefficient of correlation in individual cases and Rt. Average wind speed and visibility were not closely related to daily incubation |
| Lin et al. ( | 20 Chinese provinces | Mechanism-based parameterisation scheme | January 22 to February 29, 2020 | Higher population density was linearly whereas a lower temperature was exponentially associated with an increased transmission rate of Covid-19 |
| Liu et al. fliu (2020) | China | Generalized linear models, meta-analysis | January 20 to March 2, 2020 | The low temperature climate, moderate diurnal temperatures and low humidity probably contribute to Covid-19 transmission |
| Ma et al. ( | China | Generalized additive model (GAM) | January 20 to February 29, 2020 | A positive association is found between daily deaths and DTR and SO2. Relative humidity and PM2.5 is negatively associated with daily deaths |
| Mandal and Panwar ( | China | Univariate analysis and statistical modeling | March 25 to April 18, 2020 | Strong negative correlations with statistical significance exist between MAET and several Covid-19 cases |
| Méndez-Arriaga ( | Mexico | Spearman’s non-parametric test | February 29 to March 31, 2020 | Negative association between temperature, atmospheric evaporation and Covid-19 cases while there is a positive association between precipitation and Covid-19 cases |
| Pani et al. ( | Singapore | Spearman and Kendall’s rank correlation tests | January 23 to May 31, 2020 | Temperature, dew point, relative humidity, absolute humidity, and water vapor show positive significant correlation with Covid-19 cases |
| Prata et al. ( | Brazil | Generalized Additive Model (GAM) | February 27 to April 1, 2020 | Negative linear relationship between temperature and Covid-19 cases |
| Rosario et al. ( | Brazil | Spearman’s rank correlation | March 6 to April 30, 2020 | Significant correlation between temperature maximum and average, radiation, wind speed and Covid-19 cases |
| Sarkodie and Owusu ( | Top 20 countries | CIPS and CADF panel unit root, Granger causality test, split-panel jack-knife method, kernel density estimation | January 22 to April 27, 2020 | Temperature and humidity have negative impact on COVID-19 whereas wind speed, dew/frost point, precipitation, and surface pressure have a positive impact |
| Sethwala et al. ( | USA, China, Canada, and Australia | Wilcoxon’s test | January 23 to April 11, 2020 | Definitive association between Covid-19 cases, death from Covid-19 cases, and ambient temperature exists |
| Sharma et al. ( | India | Weather research forecasting (WRF) Air quality dispersion modeling system (AERMOD) | March 16 to April 14 from 2017 to 2020 | Levels of PM2.5, PM10, CO, and NO2 decreased significantly while O3 level increased and SO2 showed negligible changes. Wind speed varies with direction whereas temperature has negligible variations in different regions. |
| Shi et al. ( | 31 Chinese provinces | Modified susceptible-exposed-infectious-recovered (M-SEIR) model | January 20 to February 29, 2020 | Negative association between temperature and Covid-19 cases. No significant association between Covid-19 cases and absolute humidity |
| Tosepu et al. ( | Indonesia | Spearman-rank correlation test | January 1 to March 29, 2020 | Average temperature is significantly correlated with Covid-19 pandemic |
| Wang et al. ( | Globally 166 countries except China | Restricted cubic spline function and generalized linear mixture model | January 20 to February 4, 2020 | Temperature could significantly change Covid-19 cases to a certain extent |
| Wu et al. ( | Globally 166 countries except China | Log-linear generalized additive model, sensitivity analysis | As of March 27, 2020 | Both temperature and relative humidity were negatively associated with reported daily cases and deaths |
| Xie and Zhu ( | 122 Chinese cities | Generalized additive model (GAM) and piecewise linear regression | January 23 to February 29, 2020 | Results indicate that mean temperature has a positive linear relationship with the number of Covid-19 cases |
| Xu et al. ( | China | Observational analysis | 2017–2019 | Air quality near central China improved significantly |
| Zangari et al. ( | USA | Linear time lag models show | First 17 weeks from 2015 to 2020 | No difference in air quality between 2020 and 2015–2019 is found |
| Zhu et al. ( | 122 Chinese cities | Generalized additive model (GAM) | January 23 to February 29, 2020 | Results indicate a significant relationship between air pollution and Covid-19 infection |
| Zoran et al. ( | Italy | Spatial analysis | January 1–April 30, 2020 | Strong influence of daily averaged ground levels of concentrations, positively associated with average surface air temperature and inversely related to relative humidity and wind speed on Covid-19 cases |
Source: authors’ contribution
Descriptive statistics
| Variables | Daily cases | Daily deaths | Humidity | PM2.5 | Pressure | Temperature | Wind speed |
|---|---|---|---|---|---|---|---|
| Mean | 4232.096 | 225.381 | 62.744 | 59.167 | 1003.370 | 16.609 | 4.412 |
| Median | 1176.500 | 53.000 | 64.650 | 50.250 | 1011.550 | 17.158 | 3.650 |
| Maximum | 54771.000 | 4928.000 | 116.400 | 406.500 | 1032.000 | 38.500 | 77.150 |
| Minimum | 0.000 | 0.000 | 7.500 | 2.583 | 2.800 | -9.850 | 0.700 |
| Std. Dev. | 7468.903 | 425.095 | 16.212 | 40.673 | 34.001 | 7.760 | 3.911 |
| Skewness | 2.683 | 3.619 | -0.751 | 1.898 | -17.926 | -0.081 | 10.025 |
| Kurtosis | 10.490 | 23.201 | 3.668 | 10.161 | 515.228 | 2.809 | 162.292 |
Source: authors’ computation
Cross-sectional dependence test
| Variables | Breusch-Pagan LM | Pesaran scaled LM | Pesaran CD | |
|---|---|---|---|---|
| Covid-19 cases | Raw values | 1728.8690*** | 176.4413*** | 25.6565*** |
| Logged values | 165.7510*** | 11.6741*** | 4.9356*** | |
| Covid-19 deaths | Raw values | 1448.2000*** | 146.8562*** | 21.3314*** |
| Logged values | 176.4184*** | 12.7986*** | 7.1736*** | |
| Air pressure | Raw values | 407.4721*** | 37.1538*** | 5.2383*** |
| Logged values | 186.0810*** | 13.8171*** | 4.6957*** | |
| Humidity | Raw values | 356.5339*** | 31.7844*** | 2.3924** |
| Logged values | 82.12862*** | 2.8596*** | 0.2379 | |
| PM2.5 | Raw values | 203.8496*** | 15.6901*** | -0.3173 |
| Logged values | 57.9755* | 0.3136 | 0.4543 | |
| Temperature | Raw values | 3477.7480*** | 360.7893*** | 4.1820*** |
| Logged values | 54.0055 | -0.1048 | −0.1804 | |
| Wind speed | Raw values | 103.0492*** | 5.0648*** | 2.9774*** |
| Logged values | 58.3650* | 0.3547*** | 1.2354 | |
Source: authors’ computation
*, **, and *** denote statistical significance at 10%, 5%, and 1% levels, respectively
Panel unit root test
| Variables | IPS | ADF-Fisher | CIPS | CADF |
|---|---|---|---|---|
| Covid-19 cases | −9.318*** | 135.168*** | −1.825 (-2.812)*** | −5.279*** (−1.501)* |
| Covid-19 deaths | −14.406*** | 230.317*** | −1.645** (−3.641)*** | −1.501* (−6.504)*** |
| Air pressure | −22.334*** | 446.182*** | −4.263*** (−4.379)*** | −4.347*** (−4.519)*** |
| Humidity | −23.429*** | 474.630*** | −5.456*** (−5.106)*** | −5.462*** (−5.167)*** |
| PM2.5 | −24.011*** | 489.745*** | −5.886*** (−5.289)*** | −6.054*** (−6.045)*** |
| Temperature | −22.269*** | 429.840*** | −4.433*** (−4.606)*** | −4.365*** (−4.595)*** |
| Wind speed | −22.981*** | 461.491*** | −5.126*** (−5.434)*** | −5.122*** (−4.951)*** |
Source: authors’ computation
*, **, and *** denote statistical significance at 10%, 5%, and 1% levels, respectively
Parentheses denote ∆CIPS or ∆CADF, i.e., at first-level difference
Westerlund cointegration test
| Statistic | Covid-19 cases | Covid-19 deaths |
|---|---|---|
| −4.667*** | −12.138*** | |
| −5.849*** | −14.555*** | |
| −3.739*** | −11.576*** | |
| −3.855*** | −14.831*** |
Source: authors’ computation
*, **, and*** denote statistical significance at 10%, 5%, and 1% levels, respectively
Dumitrescu and Hurlin’s (2012) Granger non-causality test
| COVID-19 confirmed cases as the dependent variable | |||
| Null hypothesis | |||
| AP≠>CC | 3.4586 | 5.4976 | 0.0000 |
| CC≠>AP | 5.6580 | 10.4156 | 0.0000 |
| H≠>CC | 2.6860 | 3.7700 | 0.0000 |
| CC≠>H | 2.6555 | 3.7018 | 0.0002 |
| PM2.5≠>CC | 2.0112 | 2.2612 | 0.0237 |
| CC≠>PM2.5 | 3.5575 | 5.7187 | 0.0000 |
| T≠>CC | 8.9583 | 17.7952 | 0.0000 |
| CC≠>T | 3.2382 | 5.0047 | 0.0000 |
| WS≠>CC | 2.3788 | 3.0830 | 0.0020 |
| CC≠>WS | 3.5769 | 5.7620 | 0.0000 |
| COVID-19 death cases as the dependent variable | |||
| Null hypothesis | |||
| CC≠>CD | 21.9771 | 46.9062 | 0.0000 |
| CD≠>CC | 12.7131 | 26.1914 | 0.0000 |
| AP≠>CD | 2.7003 | 3.8019 | 0.0001 |
| CD≠>AP | 4.9130 | 8.7498 | 0.0000 |
| H≠>CD | 2.2025 | 2.6888 | 0.0072 |
| CD≠>H | 1.9797 | 2.1908 | 0.0285 |
| PM2.5≠>CD | 1.2451 | 0.5480 | 0.5837 |
| CD≠>PM2.5 | 3.5997 | 5.8130 | 0.0000 |
| T≠>CD | 9.4679 | 18.9347 | 0.0000 |
| CD≠>T | 4.0616 | 6.8459 | 0.0000 |
| WS≠>CD | 0.4930 | −1.1337 | 0.2569 |
| CD≠>WS | 1.6253 | 1.3981 | 0.1621 |
Source: authors’ computation
The symbol ≠> represents “does not homogeneously cause”
FMOLS, DOLS, and CCR tests
| COVID-19 confirmed cases as the dependent variable | ||||||
| Variables | FMOLS | DOLS | CCR | |||
| Coeff | Std. Error | Coeff | Std. Error | Coeff | Std. Error | |
| Constant | −3813.93 | 35650.03 | 333.60 | 55014.96 | −10014.53 | 43916.55 |
| Air pressure | 13.5608 | 34.6428 | 10.3953 | 53.7895 | 20.1349 | 43.1194 |
| Humidity | −43.0721 | 77.6577 | −41.6560 | 95.2688 | −46.4783 | 82.9315 |
| Temperature | 84.5604 | 159.0306 | 78.8716 | 178.9635 | 88.9198 | 161.7144 |
| PM2.5 | −57.8187* | 29.9354 | −57.2588 | 35.9549 | −60.7429* | 32.2158 |
| Wind speed | −205.7897 | 304.2316 | −419.8414 | 464.8477 | −224.1494 | 367.4614 |
| COVID-19 death cases as the dependent variable | ||||||
| Variables | FMOLS | DOLS | CCR | |||
| Coeff | Std. Error | Coeff | Std. Error | Coeff | Std. Error | |
| Constant | −284.7038 | 826.7618 | −659.8415 | 1270.1610 | −398.1481 | 1019.7310 |
| Covid-19 cases | 0.0428*** | 0.0036 | 0.0461*** | 0.0040 | 0.0426*** | 0.0037 |
| Air pressure | 0.4902 | 0.8033 | 0.8682 | 1.2426 | 0.6029 | 1.0007 |
| Humidity | −0.5612 | 1.8013 | −0.7017 | 2.2055 | −0.5387 | 1.9319 |
| Temperature | −2.2156 | 3.7034 | −3.7094 | 4.1433 | −1.9952 | 3.8094 |
| PM2.5 | −1.5480** | 0.7145 | −1.2565 | 0.8602 | −1.6409** | 0.7721 |
| Wind speed | 0.4301 | 7.0864 | −0.0466 | 10.8573 | 0.7236 | 8.5659 |
Source: authors’ computation
*, **, and *** denote statistical significance at 10%, 5%, and 1% levels, respectively
Augmented mean group (COVID-19 confirmed cases as the dependent variable)
| Countries/variables | Constant | Air pressure | Humidity | PM2.5 | Temperature | Wind speed |
|---|---|---|---|---|---|---|
| Overall | 34620.77 | −35.6179 | 12.2519 | −6.8876 | −97.2345 | −28.9052 |
| Brazil | −630951.40** | 625.0123** | 156.0854*** | 377.2397*** | 652.9533*** | 2855.2790*** |
| Chile | −27124.40 | 25.1506 | −8.0566 | 7.0845 | −303.7789*** | 1777.0260*** |
| India | 95356.34*** | −110.5546*** | 128.8052*** | 17.4921*** | 238.5444*** | −387.8335*** |
| Iran | 6003.82 | −5.7759 | 11.9933** | −4.71432*** | 37.9936** | −14.17705 |
| Italy | 127826.00*** | −121.9681*** | −12.1677 | 36.2624*** | −246.0241*** | −134.9306*** |
| Peru | −253809.80*** | 265.7233*** | −52.0348** | 0.3423 | −440.5213*** | −11.9321 |
| Russia | 63184.86*** | −60.9156*** | −8.0054 | −42.1488*** | 212.4598*** | 41.2581 |
| Spain | 49911.29*** | −45.4864*** | 18.0563 | −23.6618*** | −181.8085*** | −78.1316 |
| UK | −7364.99 | 12.8288 | −62.5167*** | −0.6704 | −123.8335*** | 349.5079*** |
| USA | 7501.69 | −3.0417 | 61.6737 | −66.2375 | −641.5810*** | 22.7662 |
Source: authors’ computation
*, **, and *** denote statistical significance at 10%, 5%, and 1% levels, respectively
Augmented mean group (COVID-19 death cases as the dependent variable)
| Countries/variables | Constant | Air pressure | Humidity | PM2.5 | Temperature | Wind speed | Covid-19 cases |
|---|---|---|---|---|---|---|---|
| Overall | 529.25 | −0.4343 | −0.1614 | 0.0657 | −4.5765* | −0.4067 | 0.0364*** |
| Brazil | −15320.32** | 16.5607** | 1.2267 | 0.4780 | −13.6685*** | −41.8146 | 0.0318*** |
| Chile | 84.57 | 0.0469 | 0.4234 | 0.1155 | −3.7739* | −18.4571*** | 0.0078*** |
| India | 2784.17 | −2.4807 | −0.7962 | −0.1660 | −10.4452* | −3.7573 | 0.0382*** |
| Iran | 931.21* | −0.9071* | 0.4154 | 0.0796 | −1.2489** | −0.9300 | 0.0407*** |
| Italy | 1743.83 | −1.5856 | −1.5063** | 0.0215 | −3.3447** | −0.3098 | 0.1123*** |
| Peru | −2035.72 | 2.6181 | −2.0947*** | 0.0830 | −18.3167*** | −1.0065 | 0.0108*** |
| Russia | −728.15** | 0.6663** | 0.6031** | 0.2640 | 2.4595*** | 0.5017 | 0.0105*** |
| Spain | −379.56 | 0.3680 | 0.4440 | −0.0644 | −5.2776** | 2.9427 | 0.0773*** |
| UK | 2200.93*** | −2.2574*** | −0.0176 | −0.1435 | 3.8124 | −0.7229 | 0.0516*** |
| USA | 124.51 | −0.0409 | −3.9137 | 3.9048 | −0.3409 | 0.0482 | 0.0103*** |
Source: authors’ computation
*, **, and *** denote statistical significance at 10%, 5%, and 1% levels, respectively
Dynamic common correlated effect (DCCE) estimation
| COVID-19 confirmed cases as the dependent variable | ||
| Explanatory variables | Coeff | Std. error |
| Constant | −247.83 | 198.6260 |
| Air pressure | −3.9536*** | 1.2981 |
| Humidity | 0.3085 | 0.2818 |
| PM2.5 | 0.0251*** | 0.0021 |
| Temperature | −0.3675** | 0.1721 |
| Wind speed | 0.2056 | 0.1720 |
| COVID-19 death cases as the dependent variable | ||
| Explanatory variables | Coeff | Std. error |
| Constant | −933.80*** | 250.0650 |
| Covid-19 cases | 0.0323** | 0.0141 |
| Air pressure | 1.9540 | 2.6348 |
| Humidity | 0.0343 | 0.5112 |
| PM2.5 | 0.7548** | 0.3782 |
| Temperature | −5.7023** | 2.4512 |
| Wind speed | −2.8108 | 3.6213 |
Source: authors’ computation
** and *** denote statistical significance at 5% and 1% levels, respectively