1. Introduction
Air quality is essential for all beings’ health and, ultimately, life. Several activities such as industry, energy production, heating, agriculture, and transport generate pollution. The European Union (EU) has a comprehensive clean air policy that is built on three pillars: ambient air standards, air pollutant emission reductions, and standards for emissions from key sources of pollution. In May 2021, the European Commission (EC) adopted the EU Action Plan: “Towards a Zero Pollution for Air, Water, and Soil” to create a secure, clean environment for European citizens [
1].
Air pollution is defined as the presence of harmful chemicals or compounds in the air that are not normally found there and that can reduce the quality of life and have adverse effects on human health. There are many substances that are considered pollutants, such as carbon monoxide, particulate matter (PM), ground-level ozone, nitrogen oxides, sulfur oxides, and various other compounds [
2].
A significant role in air pollution is attributed to PM, defined as solid or liquid particles suspended in air. PM arises as a secondary product of fossil fuel combustion. Inhalable particles are classified by size: PM2.5 (particles 2.5 microns or smaller) and PM10 (particles 10 microns or smaller) [
3]. When inhaled, they can be stored in the bronchia and alveoli, impairing gas exchange through their cytotoxic and pro-inflammatory effects. Furthermore, they impede normal endothelial vascular function and increase the risk of various vascular diseases [
4]. Understanding the relationship between PM2.5 and PM10 with the main chronic pathologies is the starting point for measures for better air quality. This fact is also confirmed by Manea et al. (2020) who believe that a healthier environment can prevent diseases caused by polluted air and that updating environmental policies makes it possible to improve the quality of the environment by reducing air pollution and, implicitly, the health of the population [
5].
Several studies have already shown a significant association between chronic exposure to air pollutants and the prevalence of asthma and chronic obstructive pulmonary disease (COPD) [
6,
7]. Furthermore, several systematic reviews confirmed that short-term exposure increased exacerbations of asthma and COPD [
8,
9]. A recent review concluded that both long-term and short-term air pollution increased COVID-19 mortality rates and infectivity in several countries worldwide [
10]. Clinical observations in major healthcare units in highly populated settings revealed an increase in cardio-respiratory events in the general population during the previous years, with significant seasonal variability.
Air pollution is a serious concern in Romania. The EC decided to refer Romania to the Court of Justice of the EU on 2 December 2021 on two grounds for non-compliance with EU rules: combating industrial pollution and lack of an air pollution control program [
11].
The World Health Organization (WHO) guidelines released in September 2021 state that the annual limit values (ALVs) of PM2.5 should not exceed 5 µg/m
3, while daily limit values (DLVs) should not exceed 15 µg/m
3 more than 3–4 days per year. The thresholds for PM10 are 15 µg/m
3 and 45 µg/m
3, respectively [
12,
13].
In the 2021 World Air Quality Report by IQAir [
14], Romania was ranked 66th out of 117 countries worldwide in terms of PM2.5 concentration, with an average of 15.3 µg/m
3. Furthermore, Romania was ranked 13th out of 42 European countries with the highest levels of air pollution. In the report, Bucharest was ranked 58th out of 107 regional capital cities worldwide with an annual average PM2.5 concentration of 14.9 µg/m
3.
According to the European Environment Agency’s Air Quality in Europe 2022 report [
15], air quality has improved in the past decade, with decreasing emissions of air pollutants. However, PM2.5 remains a significant contributor to premature deaths. Although some EU countries, such as Bulgaria and Poland, still have high levels of PM2.5 concentrations, the region has seen improvements in air quality. Several research studies have been conducted in central and western Europe on assessing air pollution characteristics [
16,
17,
18].
In contrast, limited information is available on air pollution in eastern Europe based on ground measurements [
19]. In Bucharest [
20,
21], Iasi [
22], and Ploiesti [
23], studies mostly assessed the air pollution levels related to weather conditions and local climate.
In this regard, changes are only possible through studies that demonstrate the impact of air pollution on human health. In Romania, research analyzing the direct impact of air pollution on the number of hospitalizations for chronic diseases is still in its early stages. Therefore, the present study aims to be a starting point in determining the influence of pollution levels in cities on the quality of life by analyzing the number of hospitalizations for respiratory and cardiovascular diseases.
Globally, studies have shown that exposure to PM is a major problem for human health and quality of life, resulting in the hospitalization of individuals with respiratory or cardiovascular diseases [
24,
25,
26,
27,
28,
29]. Similarly, national studies in Romania have shown a direct association between increasing levels of air pollutants and the number of hospitalizations for respiratory and cardiovascular diseases in cities/regions [
30,
31,
32,
33].
The choice to conduct this analysis for the Bucharest–Ilfov region is not accidental, as the economic development of the area in recent years and population migration from other regions of the country to the capital have led to urban congestion, negatively affecting air quality. This is confirmed in other cities and urban areas, where PM is primarily produced by households and commerce, followed by mineral products and processing industries [
33,
34]. This fact confirms the seasonal characteristic of the level of suspended particle concentrations during the analyzed period, even if the sources of air pollution can be different [
30,
31,
32]. On the other hand, the atypical period during which the study was conducted showed a decrease in air pollution levels (reduction in commercial activities, public and private transportation, etc.), a fact determined as a result of certain restrictions imposed during the COVID-19 pandemic [
19,
35,
36].
The present study contributes to filling the limited information about the effects of air pollution on health in Romania, but further research on this topic is necessary to analyze the long-term effects of pollutants on health and quality of life. Because atmospheric pollutants do not exist in isolation but are part of a complicated network of elements that includes other environmental contaminants and exposures [
26], the authors propose to include in future studies other factors that influence air quality and have a negative effect on human health in the analysis.
In addition to all these points, the concern for the development of ecological and sustainable food systems [
37] and support for ecological entrepreneurship [
38] offer the possibility of living in a less polluted environment, which facilitates the path towards a sustainable society in which the focus is on improving quality of life. In this sense, the current research aims to be an instrument for raising awareness among the population and government organizations regarding the negative influence of pollutants on the quality of life, which can lead to the creation of new environmental strategies and policies.
2. Materials and Methods
2.1. Study Design and Objectives
This observational, retrospective, and descriptive public health study aimed to reflect the impact of air pollutants on the condition of patients with chronic pathologies in Bucharest and its metropolitan area.
The objectives were as follows:
To compare the values of local pollution levels with limits recommended by the EU and WHO;
To analyze the correlation between air pollution and the condition of disease in patients with chronic respiratory, cardiovascular, cerebrovascular, or metabolic pathology in the same region.
2.2. Research Setting
Bucharest, the capital of Romania, is a densely populated city where the conversion of former forests to intensive industrial activity has led to substantial air pollution. Illegal activities, such as the burning of pastures during summers and the incineration of waste to extract metals, further degrade air quality. As of 1 January 2022, there were an estimated 3 million people living in the city’s metropolitan area. The study’s setting is a densely populated, highly industrialized region with multiple sources of air pollution, in addition to an already overburdened public healthcare system.
2.3. Data Sources
2.3.1. Air Quality Data
Data regarding air quality data were collected from Airly, a private company that maintains a comprehensive network of PM2.5 and PM10 sensors in major urban areas throughout the country. In Bucharest, analysis of the data revealed a significant increase in the number of sensors during the study period, rising from 16 in 2018 to 106 in 2022.
2.3.2. Hospitalization Data
The National Institute for Public Health (NIPH) provided hospitalization data on chronic pathology based on the following specific criteria:
Diagnostic code (according to the International Classification of Diseases, Tenth Revision, ICD-10) at hospital admission: respiratory (COPD, asthma, lung cancer), cardiovascular, cerebrovascular (stroke), or diabetes;
Age of 20 years old or above;
Residence in the study’s setting.
The period studied was 20 August 2018–1 June 2022.
2.4. Statistical Analysis
The quantitative analysis based on data provided by Airly and NIPH was performed using the XLSTAT software [
39].
To verify the research hypotheses that the health status of patients with chronic diseases in Bucharest and its metropolitan area is influenced by the level of atmospheric pollutants, the following steps were taken:
Stage 1: In order to ensure the accuracy of the analysis, it was necessary to identify the sensors in Bucharest that recorded the daily level of PM concentrations in suspension. Only the sensors that had more than 1000 records for the analyzed period (20 August 2018–1 June 2022) were selected.
Stage 2: Identification of the number of days with exceedances above the daily limit value.
Stage 3: Identification of the seasonal characteristics of PM10 and PM2.5 concentrations for an accurate characterization of the pollution level during the analyzed period.
Stage 4: Identification of the effects of pollution on human health using correlation analysis.
Stage 5: Application of regression models based on the results obtained in Stage 4.
Stage 6: Analysis of the future evolution of the effects of pollution on hospitalizations in patients with respiratory, cardiovascular, and cerebrovascular diseases by outlining scenarios determined based on the results obtained in Stage 5.
The unifactorial regression model is based on a mathematical relationship that assumes that a phenomenon (Y—the effect phenomenon) results from two categories of factors: the first category being a single main, causal factor (X), while the second category includes factors specified by the residual variable ε, considered non-essential, with an accidental influence on Y. The specification of the unifactorial model involved defining the endogenous variable (Y) and the exogenous variable (X):
The identification of the model required choosing a mathematical function that describes the values of the endogenous variable solely based on the variation in the exogenous variable X [
40,
41].
The probabilistic model at the level of general community [
41],, is as follows:
where:
() represent the numerical values of the variables cause and effect registered at the level of the statistical unit ;
and represent the parameters of regression equation: —intercept, the point of intersection of the line of regression with the Oy axis; —the slope of the regression right or the regression coefficient. This shows with how many units of measure change Y if X increases with a unit of measurement;
—residual component (error term) for the statistical unit .
The real value of the Y feature in the probabilistic pattern includes:
The theoretical, deterministic component (
), that is, the part of the real value
that can be determined on the basis of the model for a certain value
:
The random (residual) component, also called the random error, (
), representing that part of the real value of
that cannot be quantified.
If the available data come from a sample, we have in pairs of real observations: (), (), …, (), based on which the parameters of the equation are estimated, i.e., and .
The regression model in the sample is as follows:
with the deterministic component:
where:
—the estimator of the parameter of the statistical population;
—the estimator of the parameter of the statistical population;
—the residual value for the unit in the sample ().
Analysis of variance (ANOVA) is one of the most commonly used statistical methods in medical research [
42]. In this study, ANOVA was used to identify significant differences between the months analyzed, both from the perspective of pollution and the number of hospitalizations. ANOVA is employed to investigate the effect of an independent variable on a dependent variable by analyzing the distinct populations associated with each level of the causal factor and any differences that appear between populations. Depressional analysis (ANOVA) can be performed according to a uni-, bi-, or multifactorial model. In this study, the unifactorial model was used, with the populations classified using a single criterion, r, called a factor [
41].
4. Discussion
4.1. General Data on Pollutants
Air pollution can reach various levels depending on the economic activities carried out in a setting, which determines the need to identify diverse, adaptable strategies for control. Similarly, the phenomenon could spread regionally and globally, affecting the economies of large urban agglomerations.
Bessagnet et al. define PM as a group of solid and liquid species that come in a variety of particle sizes and chemical makeups. They state that organic aerosols can be released or created in the atmosphere through the reaction of volatile compounds, but, depending on the surrounding environment, some of these substances can divide into both gas and aerosol phases [
45].
The term “particulate matter” refers to coarse particles with a diameter from 2.5 µm to 10µm that are produced by industry, construction, and agriculture. Fine particles (2.5 µm) produced by burning fossil fuels have a tendency to hang around in the atmosphere for a long time and are known to aggravate respiratory and cardiovascular diseases [
46].
PM2.5 in particular is produced from a variety of substances, such as sea salt, metal oxides, organic carbon, black carbon, sulfate particles, and many others. PM2.5 exposure is caused by a variety of factors, including local pollution, automobiles, sea salt, crust/road dust, oil burning, and wood burning [
47]. Kundu and Stone emphasize that the composition of PM2.5 varies regionally. For instance, rural areas, which are directly impacted by agricultural activities and unpaved roads, have higher levels of crustal materials, while urban areas have higher levels of secondary aerosols and combustion; industrialized areas have elevated amounts of trace metals [
48]. Black carbon, polycyclic aromatic hydrocarbons, and n-alkanes make up PM2.5 particles. In line with growing evidence that black carbon is a dangerous component of PM2.5, Yang et al. discovered a link between prolonged exposure to black carbon and an elevated risk of mortality [
49].
4.2. Data on the Differences in Reference Values and the Annual Variability
Based on information from the Health Effects Institute in 2020, during 1990–2019, the annual average values of PM2.5 (weighted according to population) in Romania were below the global average but higher than the average for EU countries. A slightly downward trend was observed, similar to that of the average value in the EU, from 22.1 µg/m
3 in 1990 to 15.2 µg/m
3 in 2016; following this trend, for the next 3 years, the average value would be 15.7 µg/m
3 [
50].
The national reference values used in Romania were similar to those specified in EU legislation. According to data from the National Agency for Environmental Protection in Romania, air pollution quality was evaluated using the active automatic stations of the National Air Quality Monitoring Network between 2016 and 2021. During this period, the number of automatic active stations increased from 138 to 156 across the country. However, despite these efforts, the analysis of results compared to annual limit values revealed frequent exceedances in several cities, mainly in Iași and Brașov. Notably, Bucharest, Iaşi, and Brașov reported the most frequent exceedances of daily limit values. It is worth noting that the increased number of monitoring stations may have improved the accuracy of the measurements, but more data is needed to confirm this [
51].
Our study revealed an increase of more than 30% between the WHO-recommended DLV and that established by EU law. We therefore emphasize the need for the EU Action Plan’s “Towards a Zero Pollution for Air, Water, and Soil” objectives to be implemented and followed at the national level [
1].
The WHO’s recommended DLV and ALV for PM10 and PM2.5 were used as a benchmark in our study. During the analyzed period, the proportion of days with PM10 exceedances ranged from 14% to 19%, and for PM2.5, it reached from 55% to 62%. For both types of particles, the analysis revealed that the DLV was exceeded every month, particularly during the cold season (October to March), with January 2019 being the most polluted month in the past four years (PM10 had 77–90% exceedances, while PM2.5 reached 100%). Since the implementation of COVID-19 pandemic restrictions in March 2020, there was a decline in the number of DLV exceedances. By analyzing the daily values, we were able to calculate the AAV for PM2.5 and PM10. We discovered PM2.5 exceedances that were up to four times higher than the WHO-recommended values and PM10 exceedances that were up to twice as high, with a slight decrease in 2020 due to the COVID-19 lockdown.
According to several studies, seasonal fluctuations in PM concentration have a direct and negative impact on human health. A study published in 2021 found that fine PM had a greater impact on cerebrovascular disease mortality during extreme weather conditions, with winter being the season that showed the strongest correlation between weather and mortality [
4]. Another study conducted by Gasparrini et al. examined the mortality risk associated with high and low ambient temperatures across multiple countries and found that cold temperatures were responsible for 7.29% of the 74 million deaths studied, while heat was responsible for only 0.42% [
52]. A study from 2008 used data from 15 European cities collected between 1990 and 2000 and found that a 1 °C drop in temperature was linked to a 1.35% increase in daily total natural deaths and a 1.72%, 3.30%, and 1.25% increase in cardiovascular, respiratory, and cerebrovascular deaths, respectively [
53].
4.3. Correlation of Pollution with Hospital Admissions
Our study found a statistically significant correlation between hospitalizations for respiratory, cardiovascular, and cerebrovascular pathologies and the MAV of PM2.5 and PM10. In the period April–May 2020, hospitalizations for respiratory and cardiovascular diseases showed a decrease of up to 85% compared to the previous year, which was likely due to the COVID-19 pandemic restrictions. The decrease in socioeconomic activity and reduced exposure to polluted environments led to this decrease in admissions, which has been documented worldwide [
54,
55,
56].
Studies have consistently shown a relationship between pollution levels and respiratory [
57,
58,
59,
60] and cardiovascular [
61] diseases. Seasonal air pollutants can have different effects on different conditions, as previously shown in articles published in the literature. For example, SO
2, CO, and O
3 have been linked to emergency room visits for community-acquired pneumonia, while PM10 and PM2.5 have been linked to COPD exacerbations. O
3 has been linked to heart-failure-related ER visits, NO
2 has been linked to myocardial infarction, and SO
2 has been linked to cerebrovascular accidents [
62].
4.4. Respiratory Diseases—Correlations
Our study highlighted a direct correlation between PM2.5 and PM10 levels and hospitalizations for chronic respiratory diseases. A 10 µg/m3 increase in the MAV of PM2.5 and PM10 led to a proportional increase in hospitalizations, with values ranging from 90 to 938 and from 69 to 604, respectively.
Similar studies have shown that hospital admissions and mortality rates for pulmonary diseases are linked to exposure to PM. A meta-analysis in Korea found that a 10 µg/m
3 increase in PM10 concentrations led to a 2.7% increase in COPD admissions and a 1.1% increase in COPD mortality. Short-term exposure to PM2.5 has been linked to an increased risk of asthma exacerbation. In Beijing, Tian et al. found that a 10 µg/m
3 increase in PM2.5 was associated with a 0.67% increase in total hospital visits, a 0.65% increase in outpatient visits, and a 0.49% increase in emergency room visits [
63]. Li et al. observed a strong correlation between COPD exacerbation and short-term exposure to major air pollutants, in particular O
3 and NO
2 [
9]. In addition, an increase in black carbon concentrations had a direct effect on COPD, showing a 6% increase in hospitalization rates and a 7% increase in mortality rates according to another research article from 2013 [
57].
4.5. Cardiovascular Diseases—Correlations
In a similar manner, our study also found a correlation between PM and hospitalizations for cardiovascular diseases. A 10 µg/m3 increase in the MAV of PM2.5 and PM10 resulted in an increase in hospitalizations of [26, 1392] and [25, 888], respectively.
Similar information about the relationship between exposure to PM and cardiovascular diseases is also cited. A meta-analysis [
61] found that increases in PM concentrations were linked to hospitalization or death by heart failure, with the strongest association observed on the day of exposure and more persistent effects from PM2.5. It was estimated that a 3.9 µg/m
3 decrease in PM2.5 concentrations could prevent 7978 hospitalizations for heart failure in the US. In another meta-analysis, a 10 µg/m
3 increase in long-term PM2.5 exposure was linked to increased risks of mortality from ischemic heart disease (23%), cerebrovascular disease (24%), stroke (13%), and myocardial infarction (8%) [
64].
In their analysis, the American Cancer Society’s Cancer Prevention Study-II cohort, Thurston et al. found a correlation between an increase in the mortality rate from ischemic heart disease and long-term PM2.5 exposure from burning fossil fuels, particularly coal but also from diesel traffic [
65]. Recent research indicates that different PM2.5 components have different effects on cardiovascular health; for example, some metals found in PM2.5 have been linked to higher levels of inflammatory blood markers and an increased risk of coronary events [
66]. In light of this emerging research, which suggests that variations in PM2.5 components may also contribute to differences in findings between studies, a better understanding of the role of PM2.5 components on cardiovascular health is required.
Furthermore, our statistical analysis highlighted a correlation between an increased risk of cardiovascular pathology and patients who developed asthma and COPD, a relationship that requires additional studies to clarify the pathophysiological mechanisms that interconnect these pathologies. The question arises whether, in patients who have both cardiovascular diseases and chronic lung diseases, living in a polluted environment can bring an increased risk compared to patients who only suffer from one of the two pathologies.
4.6. Cerebrovascular Diseases (Stroke)—Correlations
In addition, according to our research, there was a positive association between the MAV of PM2.5 or PM10 and the number of hospitalizations for stroke. We found that an increase of 10 µg/m3 in the MAV of PM2.5 led to an increase in hospitalizations, with the number ranging from [0, 10].
Similar research has found a link between short-term exposure to air pollutants and stroke-related hospitalizations. A study conducted in Ireland revealed that short-term exposure to air pollutants, specifically PM2.5, during the winter season, may lead to an increased number of admissions for stroke, with a reported risk ratio of 1.024 [
67]. Furthermore, according to a recent study conducted in South Korea [
68], long-term exposure to several air pollutants, including PM10, appears to increase the risk of developing stroke [
68]. A study conducted in Sweden revealed a strong association between exposure to black carbon and stroke incidence, with a 4.1% increase in the number of stroke cases per 0.31 mg/m
3 [
69]. On the other hand, unlike our study, the data reported by the Swedish authors failed to reveal any association between exposure to PM2.5 or PM10 and stroke incidence.
4.7. Metabolic Diseases (Diabetes)—Correlations
According to clinical studies [
70,
71] diabetes patients are more likely to develop cardiovascular diseases, with a risk of dying from cardiovascular causes up to four times higher than matched people without diabetes. Furthermore, scientific publications support the assumption that pollution, mainly exposure to PM2.5 may have a direct correlation with diabetes-related mortality. Some of the pathophysiological mechanisms involved in increased mortality caused by pollution in diabetic patients are: resistance to insulin, liver, central nervous system and adipose tissue inflammation, and reduced thermogenesis [
72]. Even though our study found no direct link between PM2.5 or PM10 exposure and the number of diabetes hospitalizations, we cannot rule out the possibility of an indirect link via a cardiovascular disease.
The direct impact of pollution on diabetes and the incidence of metabolic imbalances may be exerted only after a longer exposure, thus making it more difficult to be evaluated during a short-term analysis. Considering this aspect, it is important to extend the analysis over a longer period of time to investigate if this relationship does exist, considering the chronic evolution of diabetes, and also whether other air pollutants are more strongly involved in this association.
4.8. Lung Cancer—Correlations
Our statistical analysis did not reveal a causal relationship between pollution and lung cancer, which can be explained by the short period of study. Data from the literature reveal that the average time of exposure to pollutants for the development of lung cancer is 10–30 years [
73]. Furthermore, multiple factors, most notably smoking, have been linked to the development of lung cancer; thus, determining the extent to which the disease can be linked to pollution is difficult [
74]. Some authors point towards the lack of sufficient proper data in medical publications, since a study on the risk of lung cancer development and its association with air pollution may be difficult to conduct, especially as there are some other major factors involved in the etiology, such as smoking [
73]. This is an individual habit, and thus it is prone to population-based studies rather than epidemiologic studies, which are usually conducted when assessing the influence of air pollutants.
A French study published by Lequi et al. documented the incidence of cancer and specifically lung cancer in a French community over a period of 26 years, reporting a statistically significant risk ratio of 1.17 for all types of cancer and 1.31 for lung cancer, with a lag period of 10 years for every interquartile black carbon increase, thus suggesting that air pollutants may be partially involved in the etiology of lung cancer, especially in highly polluted areas [
75]. Therefore, despite not managing to report any statistically significant association between the two factors in our study, we do not completely exclude the possibility that exposure to high levels of PM2.5 and PM10 may, in fact, play a much more prominent role in the development of lung cancer than previously expected. In order to clarify such a delicate and crucial matter, a larger study that spans a longer period of follow-up should be conducted.
4.9. Data Concerning Scenarios for the Evolution of Hospitalization Rates
Another noteworthy aspect that we found in our study was the pessimistic and optimistic scenarios regarding the link between PM exposure and the number of admissions. For both PM2.5 and PM10, for the DAV and MAV, there was an increase of 40–60% in the number of admissions for respiratory and cardiovascular diseases when comparing the optimistic and pessimistic scenarios. This translates to an increase of more than 2000 admissions for each type of disease for the whole period, thus leading to a higher burden on the healthcare system. This emphasizes the importance of accelerating efforts to reduce air pollution in accordance with WHO guidelines.
4.10. Limitations of the Study
The results of the regression analysis showed that the level of pollution had a significant impact on hospitalizations for respiratory and cardiovascular diseases. This would be more conclusive if the data used in the regression models covered a longer period. One of the limitations of the current study is its short period, which did not allow for finding statistical correlations between air pollution and chronic diseases, which require long-term exposure to risk factors. In addition, an increase in the number of hospitalizations does not provide a complete picture of how pollution affects patients with chronic diseases because some disease exacerbations are treated by family doctors or in outpatient services, and these data were not included in our study.
5. Conclusions
Although it has previously been observed that air pollution significantly triggers the exacerbation of chronic diseases, we presented data to demonstrate that peaks in the levels of PM in the air have a strong impact on public health in Bucharest and its metropolitan area.
The results of the analysis indicated that the exposure of the population to fine particles in suspension caused an increase in the number of hospital admissions, which was significantly higher in the cases of pollution with PM2.5, regardless of whether it referred to diseases of the respiratory system, cardiovascular system, stroke, or diabetes. Thus, the degree of air pollution has a direct and proportional impact on human health. A reduction in pollution as a consequence of measures taken during the COVID-19 pandemic was also confirmed in Bucharest, one of the most polluted capitals in the EU.
A direct correlation between the monthly average values of PM2.5 and PM10 and the number of admissions for cardiovascular and respiratory diseases was observed, thus indicating the need for setting up a framework for in-depth observational studies and strong intervention by stakeholders involved in the decision-making process impacting public health and the environment.
The findings of the current study highlight the necessity of carrying out additional research, both by expanding the targeted pathologies and the period of study and by assessing the impact of air pollution on health services and the economy.