key: cord-0798760-itvdgzk9 authors: Coccia, Mario title: Effects of the spread of COVID-19 on public health of polluted cities: results of the first wave for explaining the dejà vu in the second wave of COVID-19 pandemic and epidemics of future vital agents date: 2021-01-04 journal: Environ Sci Pollut Res Int DOI: 10.1007/s11356-020-11662-7 sha: cc2a8526980e73db4bcdce4245c776c6cbfee051 doc_id: 798760 cord_uid: itvdgzk9 The pandemic of coronavirus disease 2019 (COVID-19), caused by the novel coronavirus SARS-CoV-2, is generating a high number of deaths worldwide. One of the current questions in the field of environmental science is to explain how air pollution can affect the impact of COVID-19 pandemic on public health. The research here focuses on a case study of Italy. Results suggest that the diffusion of COVID-19 in cities with high levels of air pollution is generating higher numbers of COVID-19 related infected individuals and deaths. In particular, results reveal that the number of infected people was higher in cities with more than 100 days per year exceeding limits set for PM(10) or ozone, cities located in hinterland zones (i.e. away from the coast), cities having a low average speed of wind and cities with a lower average temperature. In hinterland cities having a high level of air pollution, coupled with low wind speed, the average number of infected people in April 2020—during the first wave of the COVID-19 pandemic—is more than tripled compared to cities with low levels of air pollution. In addition, results show that more than 75% of infected individuals and about 81% of deaths of the first wave of COVID-19 pandemic in Italy are in industrialized regions with high levels of air pollution. Although these vital results of the first wave of the COVID-19 from February to August 2020, policymakers have had a low organizational capacity to plan effective policy responses for crisis management to cope with COVID-19 pandemic that is generating recurring waves with again negative effects, déjà vu, on public health and of course economic systems. The viral infection of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) generates the coronavirus disease 2019 that is causing the death of many individuals worldwide (Gattinoni et al. 2020; Sterpetti 2020; . COVID-19 is threatening global public health security and also creating socio-economic issues, such as the contraction of real GDP growth and increase of public debts in countries (EIU 2020; Wang and Su 2020; cf., Coccia 2016 cf., Coccia , 2017 . The main goal of this study is to explain the relationships between infected people of the COVID-19 and environmental, demographic and geographical factors that influenced its spread in Italy, one of the first countries to experience a rapid increase in confirmed cases and deaths. This study extends previous scientific researches and shows that cities with little wind and frequently high levels of air pollution-exceeding safe levels of ozone or particulate matter-had higher numbers of COVID-19 related infected individuals and deaths. Results suggest that countries have to take into account socio-economic and environmental factors to reduce air pollution in cities (one of the likely factors determining transmission dynamics of infectious di seases) and as a consequence negative impact on public health and economic system of future waves of COVID-19 and similar epidemics. The study here focuses on a case study of Italy, one of the countries in the world to experience a rapid increase in confirmed cases of COVID-19 and related deaths. Sources of data are the Ministero della Salute (2020) for numbers of infected people and deaths, Regional Agencies for Environmental Protection for levels of air pollution (Legambiente 2019), meteorological stations of Italian province capitals for climatological information (il Meteo 2020) and Italian National Institute of Statistics for the density of population of cities under study (ISTAT 2020). Firstly, data are analysed comparing arithmetic mean and std. deviation between groups of cities as follows (cf., Coccia and Benati 2018) : & Level of air pollution Cities with high levels of air pollution (> 100 days per year exceeding the limits set for PM 10 or for ozone) Cities with low levels of air pollution (≤ 100 days per year exceeding the limits set for PM 10 or for ozone) & Density of population Cities with high density of population, > 1000 inhabitant/km 2 Cities with low density of population, ≤ 1000 inhabitant/km 2 Secondly, bivariate and partial correlation verifies associations between variables understudy. Thirdly, simple and multiple regression analyses investigate relationships of dependence between variables using log-log models: y number of infected individuals in cities, as dependent variable x total days exceeding the limits set for PM 10 or ozone in cities, i.e., air pollution as explanatory variable u error term Equation (1) is also specified considering the explanatory variable of the density of population, dividing cities according to level of air pollution. The study design also extends this analysis with a multiple regression model, given by: y number of infected individuals in cities (dependent variable) Explanatory variables are: x 1 = air pollution, x 2 = population density of cities; u = error term. Ordinary least squares (OLS) method is applied for estimating the unknown parameters of models [1] [2] . In addition, the impact of COVID-19 on public health of regions with high or low levels of air pollution is analysed considering numbers of infected and deaths that are weighted with the population of regions to provide a comparable measure of the overall effect of novel coronavirus on public health. Statistical analyses are performed with the Statistics Software SPSS® version 26. Table 1 shows that among Italian provincial capitals, the number of infected people is higher in cities with > 100 days per year exceeding limits set for PM 10 or ozone, i.e. cities located in zones of polluting industrialization, cities having a low average speed of wind and cities with a lower average temperature (cf., Coccia 2014) . Results also suggest that Italian provincial capitals with high average density of people per km 2 (mostly those bordering large urban conurbations, such as cities of Brescia, Bergamo, Cremona and Monza close to Milan, the secondmost populous city in Italy after Rome) had higher numbers of COVID-19 related infected individuals (Table 2 ). These cities located in hinterland zones of Italy have also a high level of air pollution, low average speed of wind and low average temperature (cf., Coccia 2020e, f). Table 3 shows a very high positive correlation between variables of air pollution and infected individuals. The reduction of intensity of the association from March to April 2020 is likely due to quarantine and lockdown effect and also approaching of summer season in Italy (Coccia 2020g) . In fact, Wang and Su (2020) argue that quarantine and lockdown can protect the public health from COVID-19 also because of their positive effects on environment for the decline of air pollution, whereas Rosario Denes et al. (2020, p. 4) argue that hot weather can reduce the viral infectivity of the COVID-19 because "high temperatures damage the virus lipid layer decreasing its stability and infection potential and may even cause virus inactivation, therefore lowering the transmission rate". Table 4 confirms a high partial coefficient of correlation between air pollution and infected individuals, controlling climatological factors of cities. Instead, partial correlation in Table 5 suggests that, controlling density of population, the association between number of infected people and air pollution has a very high coefficient of correlation. In general, controlling population density, these results reveal that cities with frequently high number of days of air pollution had higher numbers of COVID-19 related infected individuals and deaths (cf., Coccia 2020a, c, d) . Table 6 reveals that in the period before COVID-19 lockdown and quarantine in Italy (model 1), air pollution was a more important predictor for COVID-19 transmission than human-to-human transmission (measured with density of population). When air pollution decreased because of COVID-19 lockdown but demographic structure of population density stayed the same (model 3), the determining factor of air pollution associated with diffusion of COVID-19 reduced its intensity. In short, although COVID-19 transmits from human to human, high levels of air pollution can create a habitat for viral agents supporting a rapid diffusion of COVID-19 mainly in cities with little wind and low average temperature (Coccia 2020e, f) . This effect can be due to the fact that the novel coronavirus SARS-CoV-2, in the presence of high levels of air pollution, commingle with particulate matter and may be stagnant in the air and remain viable in aerosols for hours (cf., Frontera et al. 2020; Morawska and Cao 2020; van Doremalen et al. 2020) . These results are confirmed in Table 7 that considers cities with low and high levels of air pollution: findings suggest that density of population explains the number of infected individuals, but the driving role of interpersonal contacts is stronger In particular, on 7 April 2020, during the growing phase of the first wave of COVID-19 outbreak in Italy (Table 7) : & In cities with low levels of air pollution, an increase of 1% of the density of population, it increases the expected number of infected individuals by about 0.25% (P = .042). & In cities with high levels of air pollution, an increase of 1% of the density of population, it increases the expected number of infected individuals by about 0.85% (P < .001). Figure 1 shows regression lines confirming that diffusion of COVID-19 has a faster growth in cities with a high level of air pollution (i.e., more than days per year exceeding limits set for PM 10 or ozone). The main result of the study here, based on a case study of the first wave of COVID-19 outbreak in Italy, is that the diffusion of the novel coronavirus has a high association with polluted cities generating main public health issues. In general, new findings are that geo-environmental factors may have accelerated the spread of COVID-19 in northern Italian cities, leading to higher number of infected individuals and deaths. This study finds out that cities with little wind, low average temperature and frequently high levels of air pollution had higher numbers of COVID-19 related infected individuals and deaths. The effects of the COVID-19 on public health, in the presence of different levels of air pollution in Italian regions, are summarized in Table 8 . Table 8 shows that about 74.50% of infected individuals and roughly 81% of total deaths in Italy because of COVID-19 are in regions with high levels of air pollution (cf. also , Coccia 2020b, c; Conticini et al. 2020) . As a matter of fact, studies that show how high levels of air pollution have detrimental effects on public health and damage environment are now rarely contested (Coccia 2020a, b, c) . In particular, studies argue that concentration of air pollution can create a habitat in which viral agents might be attached to particulate matter, so in environments with heavy air pollution and little wind, highly toxic pollutants can commingle with viral agents and be stable in the atmosphere, supporting diffusion of viral infectivity and increasing damages on public health (cf., Coccia 2020d, e, f; Contini and Costabile 2020; Fattorini and Regoli 2020; Frontera et al. 2020) . Zhu et al. (2020) point out that governments should pay attention to cities and regions with high concentrations of pollutants in the air because these urban areas may have wide negative effects on public health in the presence of COVID-19 and similar infectious diseases. In particular, to prevent epidemics similar to COVID-19, nations have to apply environmental policies directed to reduce levels of air pollution that improve air quality and can mitigate negative effects of airborne viral diseases on public health (Coccia 2020d, f) . To Table 4 Partial correlation between air pollution and infected individuals, controlling climatological factors .408** .308* **Correlation is significant at the 0.01 level (1-tailed) *Correlation is significant at the 0.05 level (1-tailed) N = 55 cities put it differently, the reduction of air pollutants by sustainable policies and new technologies can be a useful intervention to improve air quality and at the same time to reduce the negative effects of infectious diseases in society (Coccia 2005 (Coccia , 2017a (Coccia , b, 2018 (Coccia , 2020a . In fact, Cui et al. (2020) , based on a study in China, show that reductions in ambient air pollution have avoided premature deaths and related morbidity cases, with subsequent socio-economic benefits in society. Overall then, these findings provide valuable insight into geo-environmental factors that may accelerate the diffusion of COVID-19 in society. The results here suggest that in Italy and similar industrialized countries, the number of infected people was higher in cities with high levels of air pollution, cities located in hinterland zones and cities having high density of population with environments based on a low average speed of wind and a lower average temperature. In short, polluted cities should not exceed PM 10 and ozone limits in the presence of atmospheric stability (with low speed of wind), so that the accelerated transmission dynamics of viral infectivity is not triggered (cf., Coccia 2020e, f). Of course, these conclusions are tentative. There is need for much more detailed research into the relations between environmental factors and diffusion of infectious diseases. To conclude, although these vital results of the first wave of the COVID-19 pandemic detected from March to May 2020, policymakers have had an unrealistic optimist behaviour that a new wave of COVID-19 could not hit their countries and, especially, a low organizational capacity to plan effective policy responses of crisis management to cope with recurring COVID-19 pandemic (cf., Coccia 2020g, h). As a result, inappropriate and delayed policy responses, associated with inefficient crisis management to constrain negative effects of new wave of COVID-19, are again generating negative effects, déjà vu, on public health and of course economic systems of nations. Regions with high/low levels of air pollution are based on arithmetic mean of days exceeding limits set for PM 10 or ozone of cities 1 This percentage is calculated considering infected individuals and total deaths weighted with population of regions A taxonomy of public research bodies: a systemic approach Steel market and global trends of leading geo-economic players The relation between price setting in markets and asymmetries of systems of measurement of goods Asymmetric paths of public debts and of general government deficits across countries within and outside the European monetary unification and economic policy of debt dissolution The Fishbone diagram to identify, systematize and analyze the sources of general purpose technologies Coccia M (2017b) Sources of disruptive technologies for industrial change. L'industria -rivista di economia e politica industriale Theorem of not independence of any technological innovation Factors determining the diffusion of COVID-19 and suggested strategy to prevent future accelerated viral infectivity similar to COVID Effects of air pollution on COVID-19 and public health Two mechanisms for accelerated diffusion of COVID-19 outbreaks in regions with high intensity of population and polluting industrialization: the air pollution-to-human and human-tohuman transmission dynamics. medRxiv, version 1 An index to quantify environmental risk of exposure to future epidemics of the COVID-19 and similar viral agents: theory and practice The effects of atmospheric stability with low wind speed and of air pollution on the accelerated transmission dynamics of COVID-19 How do low wind speeds and high levels of air pollution support the spread of COVID-19? The impact of lockdown on public health during the first wave of covid-19 pandemic: lessons learned for designing effective containment measures to cope with second wave. CocciaLab Working Paper 2020 -No. 56b/2020 -National Research Council of Italy Comparative critical decisions in management Comparative studies. In: Farazmand A (ed) Global encyclopedia of public administration Can atmospheric pollution be considered a co-factor in extremely high level of SARS-CoV-2 lethality in Northern Italy? Does air pollution influence COVID-19 outbreaks? Analyses of air pollution control measures and co-benefits in the heavily air-polluted Jinan city of China EIU (2020) Q2 Global Forecast 2020. The Economist Intelligence Unit Role of the chronic air pollution levels in the Covid-19 outbreak risk in Italy Regional air pollution persistence links to COVID-19 infection zoning Covid-19 does not lead to a 'typical' acute respiratory distress syndrome Medie e totali mensili The Italian National Institute of Statistics-Popolazione residente al 1 gennaio Mal' aria 2019, il rapporto annuale sull'inquinamento atmosferico nelle città italiane Covid-19 -Situazione in Italia Airborne transmission of SARS-CoV-2: the world should face the reality Relationship between COVID-19 and weather: case study in a tropical country Lessons learned during the COVID-19 virus pandemic Aerosol and surface stability of SARS-CoV-2 as compared with SARS-CoV-1 A preliminary assessment of the impact of COVID-19 on environment -a case study of China Clinical characteristics of 138 hospitalized patients with 2019 novel coronavirus-infected pneumonia in Association between short-term exposure to air pollution and COVID-19 infection: evidence from China Publisher's note Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations Acknowledgements The author would like to acknowledge Mr. Diego