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Environmental Health

, 17:86 | Cite as

Associations of greenness, greyness and air pollution exposure with children’s health: a cross-sectional study in Southern Italy

  • Giovanna Cilluffo
  • Giuliana Ferrante
  • Salvatore Fasola
  • Laura Montalbano
  • Velia Malizia
  • Alessandro Piscini
  • Vito Romaniello
  • Malvina Silvestri
  • Salvatore Stramondo
  • Massimo Stafoggia
  • Andrea Ranzi
  • Giovanni Viegi
  • Stefania La Grutta
Open Access
Research
Part of the following topical collections:
  1. Children’s Environmental Health

Abstract

Background

Due to the complex interplay among different urban-related exposures, a comprehensive approach is advisable to estimate the health effects. We simultaneously assessed the effect of “green”, “grey” and air pollution exposure on respiratory/allergic conditions and general symptoms in schoolchildren.

Methods

This study involved 219 schoolchildren (8–10 years) of the Municipality of Palermo, Italy. Data were collected through questionnaires self-administered by parents and children. Exposures to greenness and greyness at the home addresses were measured using the normalized difference vegetation index (NDVI), residential surrounding greyness (RSG) and the CORINE land-cover classes (CLC). RSG was defined as the percentage of buffer covered by either industrial, commercial and transport units, or dump and construction sites, or urban fabric related features. Two specific categories of CLC, namely “discontinuous urban fabric - DUF” - and “continuous urban fabric - CUF” - areas were found. Exposure to traffic-related nitrogen dioxide (NO2) was assessed using a Land-Use Regression model. A symptom score ranging from 0 to 22 was built by summing affirmative answers to twenty-two questions on symptoms. To avoid multicollinearity, multiple Logistic and Poisson ridge regression models were applied to assess the relationships between environmental factors and self-reported symptoms.

Results

A very low exposure to NDVI ≤0.15 (1st quartile) had a higher odds of nasal symptoms (OR = 1.47, 95% CI [1.07–2.03]). Children living in CUF areas had higher odds of ocular symptoms (OR = 1.49, 95% CI [1.10–2.03]) and general symptoms (OR = 1.18, 95% CI [1.00–1.48]) than children living in DUF areas. Children living in proximity (≤200 m) to High Traffic Roads (HTRs) had increased odds of ocular (OR = 1.68, 95% CI [1.31–2.17]) and nasal symptoms (OR = 1.49, 95% CI [1.12–1.98]). A very high exposure to NO2 ≥ 60 μg/m3 (4th quartile) was associated with a higher odds of general symptoms (OR = 1.28, 95% CI [1.10–1.48]). No associations were found with RGS. A Poisson ridge regression model on the symptom score showed that children living in proximity to HTRs (≤200 m) had a higher symptoms score (RR = 1.09, 95% CI [1.02–1.17]) than children living > 200 m from HTRs. Children living in CUF areas had a higher symptoms score (RR = 1.11, 95% CI [1.03–1.19]) than children living in DUF areas.

Conclusions

Multiple exposures related to greenness, greyness (measured by CORINE) and air pollution within the urban environment are associated with respiratory/allergic and general symptoms in schoolchildren. No associations were found when considering the individual exposure to greyness measured using the RSG indicator.

Keywords

Greenness Greyness Asthma Allergic Air pollution 

Abbreviation

CPSE

Current Passive Smoke Exposure

CUF

Continuous urban fabric areas

DUF

Discontinuous Urban Fabric

FSES

Family’s Socio-Economic Status

HTRs

High traffic roads

NDVI

Normalized Difference Vegetation Index

NO2

Nitrogen dioxide

RSG

Residential Surrounding Greyness

Introduction

In an increasingly urbanized world, more children are living in cities. Indeed, demographic trends indicate that the world’s urban population will double by 2050 [1]. In spite of a number of socioeconomic benefits, urbanization has been associated with adverse health effects mainly due to increasing exposure to air pollution [2]. Children are particularly vulnerable to the impacts of environmental exposures because childhood is a period of rapid growth and development and because children breathe more per body kilogram and are more physically active than adults [3].

Environmental factors play an important role in the worldwide increasing prevalence of respiratory and allergic diseases observed during the last decades [4]. In particular, asthma and rhino-conjunctivitis largely contribute to the global burden of disease, with a global prevalence in schoolchildren ranging from < 5 to > 20% and from 0.8 to 39.7%, respectively [5, 6].

Because of increasing urbanization, there is growing interest in factors affecting environmental exposures within urban settings, such as traffic intensity, household density and natural and green space. All these factors were taken into account. The role of both residential surrounding greenery and proximity to green spaces (i.e. ‘greenery’) on respiratory and allergic symptoms in schoolchildren has so far yielded inconsistent results, likely due to differences in exposure timing or in greenery type among different studies [7, 8, 9, 10, 11, 12].

The built environment in urban areas (i.e. ‘grey’ surfaces, which comprise industrial, transport and urban features) appears to have side effects on children’s health, mainly due to increasing exposure to air pollution, noise and high temperatures, lower access to natural environments, and accentuated sedentary life [13, 14, 15, 16]. Apart from air pollution, there have been few investigations on the association between “urbanicity” and respiratory and allergic symptoms in childhood [2, 17]. Recently, Tischer et al. in a longitudinal study including 2472 children living in two biogeographic regions (Euro-Siberian and Mediterranean) in Spain reported that a higher amount of residential surrounding greyness increases the risk for bronchitis in the Mediterranean region. In 2018, Tischer et al. did not find statistically significant associations for grey-related exposure in relation to wheezing, asthma and rhinitis in pooled data of four European birth cohorts [18, 19].

Land Use Regression (LUR) models have been used for estimating outdoor air pollution concentrations at the home addresses in order to analyze their association with respiratory health [20]. Significant associations between NO2 LUR and non-atopy related asthma and wheezing were found in aged 6–7 years girls and 13–14 years female adolescents from randomly selected schools in Hamilton, Canada [21]. Notably, the association between NO2 exposure and health outcomes has been shown not to depend on the type of model used to estimate exposure [22].

A comprehensive estimation of children’s health effects due to the complex interplay among different urban-related exposures is highly advisable. In this connection, only two recent studies have developed a similar approach combining “green” and “grey” indices of exposure [18, 19]. Such studies have never been performed in Italy. Moreover, to date, no cross-sectional studies simultaneously using the three aforementioned characteristics (green, grey and air pollution) have been carried out.

The aim of the present study was to simultaneously evaluate the association between indicators of urban-related environmental exposures, including those for “green”, “grey” and NO2 exposure, with respiratory/allergic and general symptoms in schoolchildren from the city of Palermo, Italy.

Materials and methods

Study population and design

This study is a part of the “Giardini per Allergici” (Italian for “Gardens for allergic subjects”) project carried out by a scientific consortium of three partners: CNR - IBIM Palermo, Municipality of Palermo, and Vivisano Onlus no-profit organization. Palermo is a city of 678,492 inhabitants according to the 2013 registry office, located in the northwest of the island of Sicily, on the Gulf of Palermo in the Tyrrhenian Sea (38°06′56″N 13°21′41″E). It has a Mediterranean climate characterized by hot and dry summers with mild temperatures for the rest of the year. The study site, where the two schools are located, was chosen since it represents one of the two “background” monitoring stations of the city, i.e. considered as the “zero-out” approach for estimating background pollutant concentrations [23].

The study was conducted in a flat suburban area of Palermo (10,89 km2) located on the extreme western outskirts of the city (38°07′48″N 13°17′54″E). The suburb lies near the Conca d’Oro basin and it is about 6 km from the sea. This area is characterized by intensive and still ongoing edification, mainly resulting in commercial settlements and public housing, and it is about 2 km from the city dump.

The study involved all schoolchildren (8–10 years of age), attending the 3rd to 5th years of two primary schools in Palermo (“Paolo Borsellino” and “Filippo Raciti”) on April 16th 2013.

The study was approved by the local ethics committee (n°5/2011, A.O.U.P. “Paolo Giaccone”, Palermo, Italy), and written informed consent was provided by parents of all participants. Overall, 244 children were eligible; questionnaires were obtained for 219 parents and their children (90% response rate). Of the 219 children taking part in the survey, all had lived since birth at their address.

Parent and child questionnaires

The SIDRIA (Studi Italiani sui Disturbi Respiratori nell’Infanzia e l’Ambiente, the Italian arm of the International Study of Asthma and Allergies in Childhood - ISAAC), self-administered parent questionnaire, regarding sociodemographic characteristics, environmental exposures and personal information about their children was completed by parents at home [24] on April 2013.

A child’s history of “ever wheezing” was defined as a positive answer to the question “Has your child ever had wheezing or whistling in the chest at any time in the past?” A child’s history of “doctor diagnosed asthma” was defined if there was an affirmative response to the question “Has asthma been diagnosed by a doctor?”

Rhino-conjunctivitis was defined as a positive answer to both the questions “Has your child ever had a problem with sneezing, or runny, or blocked nose apart from common colds or flu in the last 12 months?” and “In the past 12 months, has this nose problem been accompanied by itching and/or watering eyes?”

Eczema was defined as positive answers to both the following questions: “In the last 12 months, has your child had an itchy rash which was coming and going for at least 6 months?” and “Has this itchy rash at any time affected any of the following places: folds of elbows, behind the knees, in front of the ankles, under the buttocks, or around the neck, ears, or eyes?”

Current passive smoking exposure was assessed through an affirmative response to the question “Are there smokers at home?” Parental history of allergy was defined as at least one parent with a doctor’s diagnosis of respiratory allergy.

All children completed a modified version of the SIDRIA questionnaire for adolescents by themselves at school, properly supported when necessary. The questionnaire used was mainly focused on assessing the occurrence in the last 4 weeks of twenty-two equally weighted respiratory and/or allergic symptoms - such as ocular (burning, itching, dry, red eyes, swollen eyes, sandy feeling in the eyes), nasal (running, itching, sneezing, blocked nose), pulmonary (dyspnea, breathlessness, wheezing) and general symptoms (dry throat, sore throat, cold feeling, headache, malaise, physical discomfort, excessive fatigue, flu or fever, chills, physical discomfort and fatigue) [25, 26].

Normalized difference vegetation index (NDVI)

The normalized difference vegetation index (NDVI) is a practical and economical tool to study vegetation cover in order to quantify the amount of vegetation within urban centres [10, 12, 19].

NDVI [27] is based on land surface reflectance, ranging from 0 to 1, where 0 means no vegetation and values close to 1 (0.8–0.9) indicate the highest possible density of green leaves. In particular, the index was derived from visible RED (0.63–0.69 μm) and Near-InfraRed (NIR, 0.76–0.86 μm) bands included in ASTER (Advanced Spaceborne Thermal Emission and Reflection Radiometer) multispectral images at 15 m × 15 m spatial resolution.

The NDVI maps were generated using the images acquired on April 16th 2013, starting from the ASTER VNIR surface reflectance level 2 product [28]. ASTER VNIR was atmospherically and topographically corrected according to available climatological data and global digital elevation datasets, respectively [29]. For each house location involved in the survey, the NDVI values are considered. Since the satellite pixel size represents an area of more than 200 square metrs, the greenness indicator associated to a single house is achieved from the pixel containing the child’s home.

CORINE land-cover classes and residential surrounding greyness

The CORINE (Coordination of information on the environment) framework is a Europe-wide satellite-based inventory of land-cover developed by the European Environmental Agency, in order to create a Geographical Information System (GIS) for providing information on the environment. The CORINE programme categorized land-cover into 44 classes at a scale of 1:100000, updated in 2006. CORINE land-cover classes (CLC) are organized into three hierarchical levels (Level 1: 5 categories; Level 2: 15 categories; Level 3: 44 categories) based on the unit area definition. For each home address, a class was assigned from the 44 categories of Level 3. In our study, three classes were identified. Continuous urban fabric (CUF) is the class in which most of the land is covered by buildings, roads and artificially surfaced areas. Non-linear areas of vegetation and bare soil are exceptional. Discontinuous urban fabric (DUF) is the class in which most of the land is covered by structures like buildings, roads and artificially surfaced areas associated with vegetated areas and bare soil, which occupy discontinuous but significant surfaces. The third class identified is “Coniferous forests with continuous canopy” in which vegetation formation is composed mainly of trees, including shrub and bush understoreys, where coniferous species predominate [30].

To determine residential surrounding greyness, the land-cover nomenclature based on Level 2 within a 300-m buffer around the home address was used. Residential surrounding greyness was classed as the percentage of buffer covered by either industrial, commercial and transport units, or dump and construction sites, or urban fabric related features [19].

Nitrogen dioxide (NO2) concentrations from the LUR model

For each child, exposure to NO2 concentration was estimated from a LUR model on the basis of the residential address, by using GIS. The LUR methodology seeks to predict pollution concentration at a given location based on surrounding land characteristics (e.g., land use, traffic intensity, proximity to emission sources, meteorology, etc.). Exposure to traffic related air pollution was assessed for each residential address using an implemented LUR model for NO2 and GIS variables of meters of High Traffic Roads (HTRs) (roads with > 10,000 vehicles/day) within 200 m. The European Project ESCAPE (European Study of Cohorts for Air Pollution Effects, www.escapeproject.eu) developed a standardized procedure for LUR implementation that identifies common criteria for selection of sampling sites, definition of GIS predictors, development of multiple regression models [31]. In particular, linear regression models were developed using a supervised stepwise selection procedure, starting from univariate regressions of the corrected annual average concentrations with all available potential predictors following the procedures used previously [32]. The predictor giving the highest adjusted explained variance (adjusted R2) was selected for inclusion in the model if the effect direction was consistent with the a priori definition. We then evaluated which remaining predictor variable further improved the adjusted R2 in order to select the one achieving the highest gain in adjusted R2 and the right effect direction. Subsequent variables were not selected if they changed the effect direction of any previously included variable. This process continued until no more variable with the right effect direction added at least 0.01 (1%) to the adjusted R2 of the model. As final step, any variable with a p-value above 0.10 was removed from the LUR model. If the Variance Inflation Factor (VIF) was over 3 − indicating collinearity-, the variable with the highest VIF was removed and the model re-evaluated. Cook’s D statistics were used to detect influential observations.

Cook’s D statistics values above 1 were further examined assessing the changes in model coefficients on excluding the responsible site. If removal of this site caused large changes in a specific variable’s coefficient, the modeling procedure was repeated using all sites, without including this variable. Overall, model performance was evaluated by leave-one-out cross validation (LOOCV): each site was sequentially left out from the model while the included variables were left unchanged.

Following ESCAPE study protocol, three 1-week monitoring campaigns were performed in 2010 (winter, summer, intermediate), using 30 passive samplers for NO2 measurements. Each passive sampler consists of three Palmes-type tubes where NO2 is absorbed with a triethanolamine solution laid on stainless steel meshes [33]. Predictors included in the final model were: traffic-related variables (meters of High Traffic Roads in a 300 m buffer and meters of all streets within 100 m) from local road network data; population density (high density and low density within 5000 and 500 m, respectively); presence of industries in 1 km buffer and of green areas (seminatural) within 300 m, derived from CLC data.

Final LUR model (R2 of the model = 0.73; R2 of the cross-validation = 0.82) allowed to predict NO2 concentrations at the residential address for each children.

Following the ESCAPE study protocol, a monitoring campaign was performed in 2010, using 30 passive samplers for NO2 measurements. Each passive sampler consists of three Palmes-type tubes where NO2 is absorbed with a triethanolamine solution laid on stainless steel meshes [33].

Potential confounders or effect modifiers

Gender, age (years), maternal and paternal education, parental history of allergy, breastfeeding, preterm birth, maternal smoking during pregnancy, passive smoke exposure at home, atopy, doctor diagnosed asthma and parental history of allergy were obtained through the questionnaires filled out by parents.

The Family’s Socio-Economic Status (FSES) was computed using both the mother’s and father’s educational levels and occupational status. In detail, FSES was based on a combination of education score [rated on a 7-point rating scale ranging from 1 (less than five years of schooling) to 7 (graduation)] and occupation score [rated on a 9-point scale, ranging from 1 (service workers) to 9 (high-level executives and professionals)]. The sums of the education score multiplied by 5 and of the occupation score multiplied by 3 were calculated. The total score was computed as the average of the scores obtained from both parents and was categorized using the 1st quartile as the threshold [34].

Statistical analysis

Statistical analyses were performed on data collected from the self-administered parent and child questionnaires. Mean values of quantitative variables were compared between groups using one-way analysis of variance (ANOVA). Differences of categorical variables between the groups were analyzed using Chi-squared tests. Due to multicollinearity problems, logistic ridge multi-exposure regression models [35] were used to assess the relationship between environmental factors and self-reported symptoms.

All models were controlled for gender, age, FSES (categorized as > 49.5, 1st quartile), atopy, doctor diagnosed asthma, parental history of allergy and preterm birth. Confounders were selected starting from the model with environmental factors and adding each confounder term one at a time.

In general, the ridge regression method is the most widely applied solution for addressing problems of multicollinearity [36], also showing better performance than other approaches when the sample size is small [37]. It implies adding a small positive constant (λ), i.e. the ridge parameter, to the main diagonal elements of the information matrix. The ridge parameter was selected using likelihood cross-validation [38].

The sum of affirmative answers to twenty-two equally weighted questions on symptoms was used to build a symptom score ranging from 0 to 22, as already shown in other studies [39, 40]. The final score was used as the response variable in a Poisson multi-exposure model with ridge penalization. Associations were expressed in terms of estimated rate ratios (RR) and 95% Confidence Intervals (CIs). The highest exposure to NDVI (> 0.15401, 1st quartile) and the lowest exposure to NO2 (< 60.21, 4th quartile) were used as the reference category. The variable RSG was dichotomized as follows: “yes”, if the individual buffer was covered 100% by grey, “no” otherwise.

Given the number of subjects (n = 219), the study had 84% power to detect a small standardized effect size of 0.2. This calculation was based on a two-sided proportion test with a type I error level of 5%.

Analyses were performed using R 3.1.0 software. A p-value< 0.05 was considered statistically significant.

Results

Parents’ questionnaires on children’s characteristics (no. = 219) were used to obtain the data presented in Table 1. Parental history of allergy was found in 35.56%; wheezing sometimes was found in 25.11%; childhood history of doctor-diagnosed asthma was only found in 5.48%; rhino-conjunctivitis was reported in 26.94% and eczema in 8.68%. The median (IQR) exposures were 0.233 (0.20) and 49.98 (28.21) for NDVI and NO2, respectively. 54.33% of children lived ≤200 m from HTRs.
Table 1

Characteristics of study population from parent questionnaires, according to host and environmental factors

 

All

n

219

Personal factors

Female, n (%)

135 (61.6%)

Age, mean (SD), years

8.98 (0.9)

Weight, mean (SD), kilograms

34.51 (7.61)

Height, mean (SD), centimeters

134.92 (7.77)

Parental history of allergy, n (%)

78 (35.56%)

Maternal smoke in pregnancy, n (%)

26 (11.87%)

Preterm born, n (%)

69 (31.50%)

Wheezing ever, n (%)

55 (25.11%)

Doctor diagnosed asthma, n (%)

12 (5.48%)

Rhino-conjunctivitis, n (%)

59 (26.94%)

Eczema, n (%)

19 (8.68%)

Atopy, n (%)

12 (5.48%)

Environmental factors

NDVI (15-m buffer)

Median (IQR)

0.233 (0.20)

CLC levels, n (%)

 dicontinuous urban fabric (DUF)

184 (84.02%)

 continuous urban fabric (CUF)

34 (15.53%)

 coniferous forests

1 (0.05%)

Residential surrounding greyness (300-m buffer), n (%)

134 (61.19%)

HTRs ≤200 m, n (%)

119 (54.33%)

NO2

Median (IQR), μg/m3

49.98 (28.21)

Current passive smoke exposure, n (%)

175 (79.91%)

FSES

Median (IQR)

52 (5)

Data are expressed as n (%) or mean (SD), NDVI normalized difference vegetation index, CLC CORINE land-cover, HTRs High Traffic Roads, NO2 Nitrogen Dioxide, FSES Family’s Socio-Economic Status

Information collected from children questionnaires (n = 219) was used to obtain data on self-reported symptoms in the last 4 weeks (Table 2).
Table 2

Self-reported symptoms in the last 4 weeks

 

All

n

219

Ocular symptoms, n (%)

130 (59.36%)

 burned eyes

82 (37.44%)

 itching eyes

71 (32.42%)

 dry eyes

22 (10.05%)

 sensation of sandy feeling in the eyes

74 (33.79%)

 red eyes

64 (29.22%)

 swollen eyes

31 (14.16%)

Nasal symptoms, n (%)

167 (76.26%)

 running nose

89 (40.64%)

 itching nose

82 (37.44%)

 sneezing

141 (64.38%)

 blocked nose

106 (48.4%)

Pulmonary symptoms, n (%)

48 (21.92%)

 dyspnea

38 (17.35%)

 breathlessness

16 (7.31%)

 wheezing

19 (8.68%)

General symptoms, n (%)

200 (91.32%)

 dry throat

89 (40.64%)

 sore throat

112 (51.14%)

 cold feeling

84 (38.36%)

 headache

159 (72.60%)

 malaise

68 (31.05%)

 physical discomfort

116 (52.97%)

 excessive fatigue

132 (60.27%)

 flu or fever

93 (42.47%)

 chills of cold

128 (58.44%)

Symptom score

 0 (no symptoms)

7 (3.20%)

 1–3 symptoms

30 (13.70%)

 4–6 symptoms

51 (23.30%)

 ≥ 7 symptoms

131 (59.80%)

Figure 1 illustrates the NDVI distribution of geo-coded children living at their home addresses. Each dot on the map represents a subject’s house. The map indicates the NDVI values generated using the images acquired on April 16th 2013. Children lived very close to each other and had similar exposure levels. Indeed, most children had an NDVI< 0.3 (n = 155) whereas few children had an NDVI> 0.50 (n = 26). Figure 2 depicts the land cover map of the area derived by the CORINE database. The map was drawn using the Esri ArcMap 9.3 software. Children’s houses fell into two specific categories, namely “discontinuous urban fabric, DUF” and “continuous urban fabric, CUF” areas; only one house was excluded from the analysis since it fell into a coniferous forest with continuous canopy not on mire. Black points indicate the residence of each child, while colored polygons identify the CORINE land cover categories, as shown in the legend of the Fig.
Fig. 1

NDVI index of geo-coded children for April 16, 2013, obtained from ASTER optical images. Values greater than 0.5 indicate healthy vegetation. Blue points indicate the residence of each child; colors from red (low exposure) to green (high exposure) indicate the intensity of NDVI

Fig. 2

CLC category map of geo-coded children. Black points indicate the residence of each child, and colored polygons identify the CORINE land cover categories

A significant positive correlation was found between NO2 and greyness (ρ = 0.54, p < 0.001) and a negative one at a borderline level between NO2 and NDVI (ρ = − 0.13, p = 0.05). A higher level of NO2 was found in CUF (55.91 vs. 44.01 p = 0.001) compared to DUF, whereas a higher level of NDVI was recorded in DUF (0.28 vs. 0.21, p = 0.02) than in CUF. No associations were found between greyness and CLC and NDVI.

Estimated odds ratios from multivariable Logistic ridge regression models for the odds of ocular, pulmonary, nasal and general symptoms are reported in Table 3. Children with a very low exposure to NDVI ≤0.15 (1st quartile) had a higher odds of nasal symptoms (OR = 1.47, 95%CI [1.07–2.03]). Children living in CUF areas had higher odds of ocular symptoms (OR = 1.49, 95% CI [1.10–2.03]) and general symptoms (OR = 1.18, 95% CI [1.00–1.48]) than children living in DUF areas. Children living in proximity (≤200 m) to HTRs had increased odds of ocular (OR = 1.68, 95% CI [1.31–2.17]) and nasal (OR = 1.49, 95% CI [1.12–1.98]) symptoms. Very high exposure to NO2 ≥ 60 μg/m3 (4th quartile) was associated with higher odds of general symptoms (OR = 1.28, 95% CI [1.10–1.48]). No significant associations were found between the exposures and the odds of pulmonary symptoms. No associations were found between all considered symptoms and RGS.
Table 3

Risk factors for self-reported ocular, nasal, pulmonary and general symptoms from children questionnaires: estimated odds ratios (OR) and 95% confidence intervals (95% CI) from multivariable logistic ridge regression models

 

Ocular symptoms

Nasal symptoms

Pulmonary symptoms

General symptoms

 

Adjusted* OR [95% CI]

Adjusted* OR [95% CI]

Adjusted* OR [95% CI]

Adjusted* OR [95% CI]

NDVI > 0.15 (reference)

1.00

1.00

1.00

1.00

NDVI ≤0.15 (1st quartile)

1.17 [0.88–1.54]

1.47 [1.07–2.03]

0.98 [0.79–1.21]

0.99 [0.80–1.23]

DUF (reference)

1.00

1.00

1.00

1.00

CUF

1.49 [1.10–2.03]

1.11 [0.73–1.70]

0.97 [0.75–1.25]

1.18 [1.00–1.48]

No RSG (reference)

1.00

1.00

1.00

1.00

RSG (300-m buffer)

0.98 [0.76–1.26]

1.16 [0.86–1.55]

0.98 [0.79–1.21]

1.03 [0.84–1.28]

HTRs > 200 m (reference)

1.00

1.00

1.00

1.00

HTRs≤200 m

1.68 [1.31–2.17]

1.49 [1.12–1.98]

0.91 [0.75–1.10]

1.12 [0.92–1.36]

NO2 < 60 μg/m3 (reference)

1.00

1.00

1.00

1.00

NO2 ≥ 60 μg/m3 (4th quartile)

1.13 [0.85–1.51]

1.12 [0.81–1.55]

1.04 [0.84–1.29]

1.28 [1.10–1.48]

Definition of abbreviations: NDVI Normalized Difference Vegetation Index, DUF Discontinuous Urban Fabric, CUF Continuous Urban Fabric, RSG Residential Surrounding Greyness, HTRs High traffic roads, NO2 Nitrogen dioxide, FSES Family’s Socio-Economic Status. Significant effects are in bold. Values represent odds ratios, with 95% confidence intervals shown in parentheses. *Accounting for gender, age, FSES, atopy, doctor diagnosed asthma, parental history of allergy and preterm born. Reference group: Female, NDVI > 0.15; Discontinuous Urban Fabric, No RSG, HTR > 200 m, NO2 < 60 μg, FSES > 49, no sensitization, no asthma, no parental history of allergy and term born

Unadjusted analyses are reported in the Additional file 1: Table S1.

Logistic ridge regression models performed using the full quartile for NDVI and NO2 are shown in Additional file 1: Table S2.

Estimated rate ratios and 95% CIs from the Poisson ridge regression model for the symptom score are reported in Fig. 3. Children living in proximity to HTRs (≤200 m) had a higher symptom score (RR = 1.09, 95% CI [1.02–1.17]) than children living > 200 m from HTRs. Children living in CUF areas had a higher symptoms score (RR = 1.11, 95% CI [1.03–1.19]) than children living in DUF areas.
Fig. 3

Estimated rate ratios (RR) and 95% confidence intervals from Poisson ridge regression model on symptom score

The Poisson ridge regression model performed using the full quartile for NDVI and NO2 is shown in Additional file 1: Table S3.

Discussion

Our study is one of the few assessing the association between indicators of urban-related environmental exposures, namely “green”, “grey” and outdoor pollution, with respiratory/allergic and general symptoms in schoolchildren. A very low exposure to greenness measured by NDVI was associated with a higher risk of nasal symptoms. Children living in continuous urban fabric areas had more ocular and general symptoms than those living in discontinuous urban fabric areas. Living in proximity to HTRs was associated with an increased risk of ocular and nasal symptoms. Extreme exposure to NO2 ≥ 60 μg/m3 (4th quartile) was associated with a higher risk of general symptoms.

The association between urban green spaces and health effects in children has been recently addressed, but inconsistent findings have been found, particularly in relation to respiratory and allergic conditions. Lovasi et al., in a cross-sectional and ecological study involving 4-year-old and 5-year-old children from 42 areas throughout New York City, showed that one standard deviation increase in tree density was associated with a lower asthma prevalence [7]. In a more recent cross-sectional study using different measures for evaluating exposure to greenness, Davdand et al. found no association between current asthma and residential surrounding greenness when measured through NDVI and proximity to a forest, whereas a 60% higher prevalence of current asthma was found to be associated with living close to a park. In the same study, current allergic rhino-conjunctivitis was not associated with NDVI, but was positively associated with residential proximity to a park or to a forest, although none of the associations was statistically significant [12].

Differently from other studies, we found that very low (1st quartile) exposure to greenness measured by NDVI, an objective measure capturing even small-scale green spaces, was associated with a higher risk of self-reported nasal symptoms. We hypothesized that this finding might be ascribed to the lack of mitigation effect of greenness on pollutants from vehicular sources, such as diesel exhaust particles (DEP) recently shown to be involved in the oxidative stress-mediated pathway leading to the dysfunction of epithelial barriers of nasal mucosa [41]. However, we do underline that these results have to be considered with caution and cannot be generalized since NDVI is not able to identify which, if any, particular vegetation types, pathways of exposure or duration of exposures are present [9].

Living in urban areas seems a driving factor for the increase of non-communicable diseases, with the highest burden on children. Only few studies have assessed the effect of greyness on respiratory problems in children, showing that a higher exposure to residential surrounding greyness was associated with an increased risk of bronchitis in the Mediterranean area [19]. Similarly, Ebisu et al. found that increased urban land use near a family’s residence was associated with severity of respiratory symptoms like wheezing among infants [42]. On the contrary, no statistically significant associations between greyness and bronchitis, wheezing, asthma and allergic rhinitis was found in the pooled data of two European birth cohorts of children up to 4 years of age from the Euro-Siberian and Mediterranean regions in Spain [18].

In the present study, we chose the term “greyness” in order to globally include variables such as industrial areas, dumps and construction sites, which define the built environment at a general (CORINE) as well as at an individual (RSG) level [30]. The application of CLC, which is suitable for analyzing land use dynamics at the national or regional level, allowed us to establish an association between greyness and self-reported ocular and general symptoms in children even at small-scale. This result suggests that CLC might be used as an environmental health determinant in research settings.

Traffic–related air pollution has been consistently associated with the occurrence and/or exacerbation of respiratory symptoms in children. We found an increased risk of self-reported ocular and nasal symptoms in children living in proximity to HTRs, in accordance with data from a cross-sectional study by Porebski et al., reporting increased frequency of current nasal and ocular symptoms in adolescents residing within 200 m of a major roadway [43].

Although our results might be affected by the self-reported answers from the questionnaire, it is to be pointed out that an increased time-trend prevalence in metropolitan areas has already been described in the SIDRIA studies conducted in Italy, at least for rhino-conjunctivitis [24]. As expected, based on the chosen study site (within the background monitoring station area), we did not find significant associations between self-reported pulmonary symptoms and living in proximity to HTRs. This finding is in line with the results of a cross-sectional study published by Rosenlund et al. where, in Italian children aged 9–14 years, none of the self-reported respiratory symptoms (asthma, wheezing, cough, phlegm and rhinitis) was positively associated with distance from busy roads [26].

Similarly to Rosenlund’s study in Central Italy, we did not find any association between NO2 levels and pulmonary symptoms in our children residing in Southern Italy, emphasizing that outdoor NO2 effects on pulmonary symptoms remain controversial in population-based children studies [26, 44, 45]. However, some authors suggest that the observed effects are possibly due to co-pollutants, other than NO2 alone, such as sulfur dioxide and ozone [46].

Associations between some of the studied environmental risk factors persisted even when considering the symptom score. In particular, the latter significantly increased in children living in proximity to HTRs and in those living in CUF. These results are in agreement with numerous studies demonstrating that elevated concentrations of traffic-related air pollutants in the near-road environment are associated with numerous adverse human health effects [47, 48, 49].

The main strength of our study is the simultaneous use of multiple indices for the estimation of greenness, greyness and outdoor pollution exposure. Another strength is that information on symptoms was provided through well-validated questionnaire-based definitions. Furthermore, the use of the LUR model can be considered as a strength since it has been extensively used in previous studies, showing reliable estimates [45, 50]. Lastly, we adjusted for known and potential confounders/effect modifiers, including gender, age, FSES, atopy, doctor diagnosed asthma, parental history of allergy and preterm birth to account for residual confounding.

Our study also has some limitations. Firstly, we did not perform any objective evaluation of lung conditions, such as respiratory function and measures of oxidative stress-induced inflammation, which has been suggested as a relevant mechanism underlying the respiratory health effects of air. Secondly, we did not evaluate some risk factors specifically associated with urbanization, such as noise and stress, which may negatively affect children’s health. Another limitation might be related to the small sample size and to the fact that all the children lived within the same city area; nonetheless, some relevant associations with environmental risk factors were found. Lastly, the cross-sectional design of the current study could be considered a limitation; a longitudinal study may make it possible to confirm the present findings.

Conclusions

In the current study, a comprehensive assessment of urban-related environmental exposures on respiratory/allergic and general symptoms in schoolchildren was performed using multiple indices for the estimation of greenness, greyness and outdoor pollution. Multiple exposures related to greenness, greyness (measured by CORINE) and air pollution within the urban environment are associated with respiratory/allergic and general symptoms in schoolchildren. Conversely, no association was found when considering the individual exposure to greyness measured using the RSG indicator,

Indeed, the observed association between greyness (measured by CORINE) and children’s health emphasizes the need of recommending certain exposures to be refined as well as of sensitizing stakeholders to elaborate sustainable and child-friendly urban planning.

Even though the role of greenness in reducing air pollution is controversial, theaforementioned association supports promotion and implementation of nature-based solutions (e.g. green roofs, to increase urban green by transforming flat roofs of existing buildings into green areas; near-road vegetation barriers) as a potential mitigation strategy for air pollution [51, 52] .

Further research is warranted in order to disentangle the complex relationships between different coexisting factors within the urban environment which may affect children’s health. An improved awareness of urban-related risks on health might help in implementing policies within the novel context of “urban health”, aimed at supporting sustainable development for most children who will live in the cities of the future.

Notes

Acknowledgements

We are grateful to all the school staff, children, and parents who made the study possible. We also thank Fabio Cibella, Gaspare Drago, Silvia Ruggieri, Daniele Giliberti and the administrative support staff of Municipality of Palermo for their technical assistance.

Funding

No financial support was provided.

Availability of data and materials

The datasets generated and/or analyzed during the current study are not publicly available due to the sensitive nature of the raw data but are available from the corresponding author on reasonable request.

Authors’ contributions

GC, GF, and SLG designed the study. GF and SLG wrote the initial draft and had final responsibility for the decision to submit for publication. GC and SF conducted the statistical analyses. AP, VR, MS, and SS contributed to the greenness exposure assignment. MS contributed to the CLC exposure assignment. AR provided GIS information for exposure assessment. GC, GF, SLG, VM, LM contributed to the collection and/or provided the health and co-variate data. GV performed a critical revision of the manuscript and offered precious technical advice on how the study might be improved. All authors provided substantial contributions to the conception or design of the work, or the acquisition, analysis, or interpretation of data for the work, revised the manuscript for important intellectual content, approved the final version, and agreed to be accountable for all aspects of the work.

Ethics approval and consent to participate

The study was approved by the local ethics committee (n°5/2011, A.O.U.P. “Paolo Giaccone”, Palermo, Italy).

Consent for publication

Written informed consent was provided by parents of all participants.

Competing interests

All authors declare that they have no competing interests.

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Supplementary material

12940_2018_430_MOESM1_ESM.docx (26 kb)
Additional file 1: Table S1. Risk factors for self-reported ocular, nasal, pulmonary and general symptoms from children questionnaires: estimated odds ratios (OR) and 95% confidence intervals (95% CI) from univariable logistic regression models. Table S2. Risk factors for self-reported ocular, nasal, pulmonary and general symptoms from children questionnaires: estimated odds ratios (OR) and 95% confidence intervals (95% CI) from multivariable logistic ridge regression models using the full quartile for NDVI and NO2. Table S3 Multivariable Poisson ridge regression models, using the full quartile for NDVI and NO2, for symptoms score: estimated rate ratios (RR) and 95% confidence intervals (95% CI). (DOCX 25 kb)

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Copyright information

© The Author(s). 2018

Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.

Authors and Affiliations

  • Giovanna Cilluffo
    • 1
    • 2
  • Giuliana Ferrante
    • 3
  • Salvatore Fasola
    • 1
    • 2
  • Laura Montalbano
    • 1
    • 4
  • Velia Malizia
    • 1
  • Alessandro Piscini
    • 5
  • Vito Romaniello
    • 5
  • Malvina Silvestri
    • 5
  • Salvatore Stramondo
    • 5
  • Massimo Stafoggia
    • 6
  • Andrea Ranzi
    • 7
  • Giovanni Viegi
    • 1
    • 8
  • Stefania La Grutta
    • 1
    • 3
  1. 1.National Research CouncilInstitute of Biomedicine and Molecular ImmunologyPalermoItaly
  2. 2.Department of Economics, Business and Statistical ScienceUniversity of PalermoPalermoItaly
  3. 3.Department of Science for Health Promotion and Mother and Child CareUniversity of PalermoPalermoItaly
  4. 4.Department of Psychological, Pedagogical and Educational SciencesUniversity of PalermoPalermoItaly
  5. 5.National Institute of Geophysics and VolcanologyRomeItaly
  6. 6.Department of EpidemiologyLatium Region Health ServiceRomeItaly
  7. 7.Environmental Health Reference CentreRegional Agency for Environmental Prevention of Emilia-RomagnaModenaItaly
  8. 8.National Research CouncilInstitute of Clinical PhysiologyPisaItaly

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