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Environmental Science & Technology | 2012

Development of Land Use Regression Models for PM2.5, PM2.5 Absorbance, PM10 and PMcoarse in 20 European Study Areas; Results of the ESCAPE Project

Marloes Eeftens; Rob Beelen; Kees de Hoogh; Tom Bellander; Giulia Cesaroni; Marta Cirach; Christophe Declercq; Audrius Dedele; Evi Dons; Audrey de Nazelle; Konstantina Dimakopoulou; Kirsten Thorup Eriksen; Grégoire Falq; Paul Fischer; Claudia Galassi; Regina Grazuleviciene; Joachim Heinrich; Barbara Hoffmann; Michael Jerrett; Dirk Keidel; Michal Korek; Timo Lanki; Sarah Lindley; Christian Madsen; Anna Moelter; Gizella Nádor; Mark J. Nieuwenhuijsen; Michael Nonnemacher; Xanthi Pedeli; Ole Raaschou-Nielsen

Land Use Regression (LUR) models have been used increasingly for modeling small-scale spatial variation in air pollution concentrations and estimating individual exposure for participants of cohort studies. Within the ESCAPE project, concentrations of PM(2.5), PM(2.5) absorbance, PM(10), and PM(coarse) were measured in 20 European study areas at 20 sites per area. GIS-derived predictor variables (e.g., traffic intensity, population, and land-use) were evaluated to model spatial variation of annual average concentrations for each study area. The median model explained variance (R(2)) was 71% for PM(2.5) (range across study areas 35-94%). Model R(2) was higher for PM(2.5) absorbance (median 89%, range 56-97%) and lower for PM(coarse) (median 68%, range 32- 81%). Models included between two and five predictor variables, with various traffic indicators as the most common predictors. Lower R(2) was related to small concentration variability or limited availability of predictor variables, especially traffic intensity. Cross validation R(2) results were on average 8-11% lower than model R(2). Careful selection of monitoring sites, examination of influential observations and skewed variable distributions were essential for developing stable LUR models. The final LUR models are used to estimate air pollution concentrations at the home addresses of participants in the health studies involved in ESCAPE.


Epidemiology | 2014

Long-term exposure to air pollution and cardiovascular mortality : An analysis of 22 European cohorts

Rob Beelen; Massimo Stafoggia; Ole Raaschou-Nielsen; Zorana Jovanovic Andersen; Wei W. Xun; Klea Katsouyanni; Konstantina Dimakopoulou; Bert Brunekreef; Gudrun Weinmayr; Barbara Hoffmann; Kathrin Wolf; Evangelia Samoli; Danny Houthuijs; Mark J. Nieuwenhuijsen; Anna Oudin; Bertil Forsberg; David Olsson; Veikko Salomaa; Timo Lanki; Tarja Yli-Tuomi; Bente Oftedal; Geir Aamodt; Per Nafstad; Ulf de Faire; Nancy L. Pedersen; Claes-Göran Östenson; Laura Fratiglioni; Johanna Penell; Michal Korek; Andrei Pyko

Background: Air pollution has been associated with cardiovascular mortality, but it remains unclear as to whether specific pollutants are related to specific cardiovascular causes of death. Within the multicenter European Study of Cohorts for Air Pollution Effects (ESCAPE), we investigated the associations of long-term exposure to several air pollutants with all cardiovascular disease (CVD) mortality, as well as with specific cardiovascular causes of death. Methods: Data from 22 European cohort studies were used. Using a standardized protocol, study area–specific air pollution exposure at the residential address was characterized as annual average concentrations of the following: nitrogen oxides (NO2 and NOx); particles with diameters of less than 2.5 &mgr;m (PM2.5), less than 10 &mgr;m (PM10), and 10 &mgr;m to 2.5 &mgr;m (PMcoarse); PM2.5 absorbance estimated by land-use regression models; and traffic indicators. We applied cohort-specific Cox proportional hazards models using a standardized protocol. Random-effects meta-analysis was used to obtain pooled effect estimates. Results: The total study population consisted of 367,383 participants, with 9994 deaths from CVD (including 4,992 from ischemic heart disease, 2264 from myocardial infarction, and 2484 from cerebrovascular disease). All hazard ratios were approximately 1.0, except for particle mass and cerebrovascular disease mortality; for PM2.5, the hazard ratio was 1.21 (95% confidence interval = 0.87–1.69) per 5 &mgr;g/m3 and for PM10, 1.22 (0.91–1.63) per 10 &mgr;g/m3. Conclusion: In a joint analysis of data from 22 European cohorts, most hazard ratios for the association of air pollutants with mortality from overall CVD and with specific CVDs were approximately 1.0, with the exception of particulate mass and cerebrovascular disease mortality for which there was suggestive evidence for an association.


WOS | 2014

Long-term Exposure to Air Pollution and Cardiovascular Mortality An Analysis of 22 European Cohorts

Rob Beelen; Massimo Stafoggia; Ole Raaschou-Nielsen; Zorana Jovanovic Andersen; Wei W. Xun; Klea Katsouyanni; Konstantina Dimakopoulou; Bert Brunekreef; Gudrun Weinmayr; Barbara Hoffmann; Kathrin Wolf; Evangelia Samoli; Danny Houthuijs; Mark J. Nieuwenhuijsen; Anna Oudin; Bertil Forsberg; David Olsson; Veikko Salomaa; Timo Lanki; Tarja Yli-Tuomi; Bente Oftedal; Geir Aamodt; Per Nafstad; Ulf de Faire; Nancy L. Pedersen; Claes-Göran Östenson; Laura Fratiglioni; Johanna Penell; Michal Korek; Andrei Pyko

Background: Air pollution has been associated with cardiovascular mortality, but it remains unclear as to whether specific pollutants are related to specific cardiovascular causes of death. Within the multicenter European Study of Cohorts for Air Pollution Effects (ESCAPE), we investigated the associations of long-term exposure to several air pollutants with all cardiovascular disease (CVD) mortality, as well as with specific cardiovascular causes of death. Methods: Data from 22 European cohort studies were used. Using a standardized protocol, study area–specific air pollution exposure at the residential address was characterized as annual average concentrations of the following: nitrogen oxides (NO2 and NOx); particles with diameters of less than 2.5 &mgr;m (PM2.5), less than 10 &mgr;m (PM10), and 10 &mgr;m to 2.5 &mgr;m (PMcoarse); PM2.5 absorbance estimated by land-use regression models; and traffic indicators. We applied cohort-specific Cox proportional hazards models using a standardized protocol. Random-effects meta-analysis was used to obtain pooled effect estimates. Results: The total study population consisted of 367,383 participants, with 9994 deaths from CVD (including 4,992 from ischemic heart disease, 2264 from myocardial infarction, and 2484 from cerebrovascular disease). All hazard ratios were approximately 1.0, except for particle mass and cerebrovascular disease mortality; for PM2.5, the hazard ratio was 1.21 (95% confidence interval = 0.87–1.69) per 5 &mgr;g/m3 and for PM10, 1.22 (0.91–1.63) per 10 &mgr;g/m3. Conclusion: In a joint analysis of data from 22 European cohorts, most hazard ratios for the association of air pollutants with mortality from overall CVD and with specific CVDs were approximately 1.0, with the exception of particulate mass and cerebrovascular disease mortality for which there was suggestive evidence for an association.


Environmental Health Perspectives | 2015

Ambient air pollution and adult asthma incidence in six European cohorts (ESCAPE)

Bénédicte Jacquemin; Valérie Siroux; Margaux Sanchez; Anne Elie Carsin; Tamara Schikowski; Martin Adam; Valeria Bellisario; Anna Buschka; Roberto Bono; Bert Brunekreef; Yutong Cai; Marta Cirach; Françoise Clavel-Chapelon; Christophe Declercq; Roberto de Marco; Audrey de Nazelle; Regina E. Ducret-Stich; Virginia Valeria Ferretti; Margaret W. Gerbase; Rebecca Hardy; Joachim Heinrich; Christer Janson; Deborah Jarvis; Zaina Al Kanaani; Dirk Keidel; Diana Kuh; Nicole Le Moual; Mark J. Nieuwenhuijsen; Alessandro Marcon; Lars Modig

BACKGROUND Short-term exposure to air pollution has adverse effects among patients with asthma, but whether long-term exposure to air pollution is a cause of adult-onset asthma is unclear. OBJECTIVE We aimed to investigate the association between air pollution and adult onset asthma. METHODS Asthma incidence was prospectively assessed in six European cohorts. Exposures studied were annual average concentrations at home addresses for nitrogen oxides assessed for 23,704 participants (including 1,257 incident cases) and particulate matter (PM) assessed for 17,909 participants through ESCAPE land-use regression models and traffic exposure indicators. Meta-analyses of cohort-specific logistic regression on asthma incidence were performed. Models were adjusted for age, sex, overweight, education, and smoking and included city/area within each cohort as a random effect. RESULTS In this longitudinal analysis, asthma incidence was positively, but not significantly, associated with all exposure metrics, except for PMcoarse. Positive associations of borderline significance were observed for nitrogen dioxide [adjusted odds ratio (OR) = 1.10; 95% CI: 0.99, 1.21 per 10 μg/m3; p = 0.10] and nitrogen oxides (adjusted OR = 1.04; 95% CI: 0.99, 1.08 per 20 μg/m3; p = 0.08). Nonsignificant positive associations were estimated for PM10 (adjusted OR = 1.04; 95% CI: 0.88, 1.23 per 10 μg/m3), PM2.5 (adjusted OR = 1.04; 95% CI: 0.88, 1.23 per 5 μg/m3), PM2.5absorbance (adjusted OR = 1.06; 95% CI: 0.95, 1.19 per 10-5/m), traffic load (adjusted OR = 1.10; 95% CI: 0.93, 1.30 per 4 million vehicles × meters/day on major roads in a 100-m buffer), and traffic intensity (adjusted OR = 1.10; 95% CI: 0.93, 1.30 per 5,000 vehicles/day on the nearest road). A nonsignificant negative association was estimated for PMcoarse (adjusted OR = 0.98; 95% CI: 0.87, 1.14 per 5 μg/m3). CONCLUSIONS Results suggest a deleterious effect of ambient air pollution on asthma incidence in adults. Further research with improved personal-level exposure assessment (vs. residential exposure assessment only) and phenotypic characterization is needed.


Environmental Health Perspectives | 2014

Performance of Multi-City Land Use Regression Models for Nitrogen Dioxide and Fine Particles

Meng Wang; Rob Beelen; Tom Bellander; Matthias Birk; Giulia Cesaroni; Marta Cirach; Josef Cyrys; Kees de Hoogh; Christophe Declercq; Konstantina Dimakopoulou; Marloes Eeftens; Kirsten Thorup Eriksen; Francesco Forastiere; Claudia Galassi; Georgios Grivas; Joachim Heinrich; Barbara Hoffmann; Alex Ineichen; Michal Korek; Timo Lanki; Sarah Lindley; Lars Modig; Anna Mölter; Per Nafstad; Mark J. Nieuwenhuijsen; Wenche Nystad; David Olsson; Ole Raaschou-Nielsen; Martina S. Ragettli; Andrea Ranzi

Background: Land use regression (LUR) models have been developed mostly to explain intraurban variations in air pollution based on often small local monitoring campaigns. Transferability of LUR models from city to city has been investigated, but little is known about the performance of models based on large numbers of monitoring sites covering a large area. Objectives: We aimed to develop European and regional LUR models and to examine their transferability to areas not used for model development. Methods: We evaluated LUR models for nitrogen dioxide (NO2) and particulate matter (PM; PM2.5, PM2.5 absorbance) by combining standardized measurement data from 17 (PM) and 23 (NO2) ESCAPE (European Study of Cohorts for Air Pollution Effects) study areas across 14 European countries for PM and NO2. Models were evaluated with cross-validation (CV) and hold-out validation (HV). We investigated the transferability of the models by successively excluding each study area from model building. Results: The European model explained 56% of the concentration variability across all sites for NO2, 86% for PM2.5, and 70% for PM2.5 absorbance. The HV R2s were only slightly lower than the model R2 (NO2, 54%; PM2.5, 80%; PM2.5 absorbance, 70%). The European NO2, PM2.5, and PM2.5 absorbance models explained a median of 59%, 48%, and 70% of within-area variability in individual areas. The transferred models predicted a modest-to-large fraction of variability in areas that were excluded from model building (median R2: NO2, 59%; PM2.5, 42%; PM2.5 absorbance, 67%). Conclusions: Using a large data set from 23 European study areas, we were able to develop LUR models for NO2 and PM metrics that predicted measurements made at independent sites and areas reasonably well. This finding is useful for assessing exposure in health studies conducted in areas where no measurements were conducted. Citation: Wang M, Beelen R, Bellander T, Birk M, Cesaroni G, Cirach M, Cyrys J, de Hoogh K, Declercq C, Dimakopoulou K, Eeftens M, Eriksen KT, Forastiere F, Galassi C, Grivas G, Heinrich J, Hoffmann B, Ineichen A, Korek M, Lanki T, Lindley S, Modig L, Mölter A, Nafstad P, Nieuwenhuijsen MJ, Nystad W, Olsson D, Raaschou-Nielsen O, Ragettli M, Ranzi A, Stempfelet M, Sugiri D, Tsai MY, Udvardy O, Varró MJ, Vienneau D, Weinmayr G, Wolf K, Yli-Tuomi T, Hoek G, Brunekreef B. 2014. Performance of multi-city land use regression models for nitrogen dioxide and fine particles. Environ Health Perspect 122:843–849; http://dx.doi.org/10.1289/ehp.1307271


American Journal of Respiratory and Critical Care Medicine | 2014

Air pollution and nonmalignant respiratory mortality in 16 cohorts within the ESCAPE project.

Konstantina Dimakopoulou; Evangelia Samoli; Rob Beelen; Massimo Stafoggia; Zorana Jovanovic Andersen; Barbara Hoffmann; Paul Fischer; Mark J. Nieuwenhuijsen; Paolo Vineis; Wei W. Xun; Gerard Hoek; Ole Raaschou-Nielsen; Anna Oudin; Bertil Forsberg; Lars Modig; Pekka Jousilahti; Timo Lanki; Anu W. Turunen; Bente Oftedal; Per Nafstad; Per E. Schwarze; Johanna Penell; Laura Fratiglioni; Niklas Andersson; Nancy L. Pedersen; Michal Korek; Ulf de Faire; Kirsten Thorup Eriksen; Anne Tjønneland; Thomas Becker

RATIONALE Prospective cohort studies have shown that chronic exposure to particulate matter and traffic-related air pollution is associated with reduced survival. However, the effects on nonmalignant respiratory mortality are less studied, and the data reported are less consistent. OBJECTIVES We have investigated the relationship of long-term exposure to air pollution and nonmalignant respiratory mortality in 16 cohorts with individual level data within the multicenter European Study of Cohorts for Air Pollution Effects (ESCAPE). METHODS Data from 16 ongoing cohort studies from Europe were used. The total number of subjects was 307,553. There were 1,559 respiratory deaths during follow-up. MEASUREMENTS AND MAIN RESULTS Air pollution exposure was estimated by land use regression models at the baseline residential addresses of study participants and traffic-proximity variables were derived from geographical databases following a standardized procedure within the ESCAPE study. Cohort-specific hazard ratios obtained by Cox proportional hazard models from standardized individual cohort analyses were combined using metaanalyses. We found no significant associations between air pollution exposure and nonmalignant respiratory mortality. Most hazard ratios were slightly below unity, with the exception of the traffic-proximity indicators. CONCLUSIONS In this study of 16 cohorts, there was no association between air pollution exposure and nonmalignant respiratory mortality.


Environmental Research | 2016

Development of West-European PM2.5 and NO2 land use regression models incorporating satellite-derived and chemical transport modelling data

Kees de Hoogh; John Gulliver; Aaron van Donkelaar; Randall V. Martin; Julian D. Marshall; Matthew J. Bechle; Giulia Cesaroni; Marta Cirach Pradas; Audrius Dedele; Marloes Eeftens; Bertil Forsberg; Claudia Galassi; Joachim Heinrich; Barbara Hoffmann; Bénédicte Jacquemin; Klea Katsouyanni; Michal Korek; Nino Künzli; Sarah Lindley; Johanna Lepeule; Frédérik Meleux; Audrey de Nazelle; Mark J. Nieuwenhuijsen; Wenche Nystad; Ole Raaschou-Nielsen; Annette Peters; V.-H. Peuch; Laurence Rouil; Orsolya Udvardy; Rémy Slama

Satellite-derived (SAT) and chemical transport model (CTM) estimates of PM2.5 and NO2 are increasingly used in combination with Land Use Regression (LUR) models. We aimed to compare the contribution of SAT and CTM data to the performance of LUR PM2.5 and NO2 models for Europe. Four sets of models, all including local traffic and land use variables, were compared (LUR without SAT or CTM, with SAT only, with CTM only, and with both SAT and CTM). LUR models were developed using two monitoring data sets: PM2.5 and NO2 ground level measurements from the European Study of Cohorts for Air Pollution Effects (ESCAPE) and from the European AIRBASE network. LUR PM2.5 models including SAT and SAT+CTM explained ~60% of spatial variation in measured PM2.5 concentrations, substantially more than the LUR model without SAT and CTM (adjR2: 0.33-0.38). For NO2 CTM improved prediction modestly (adjR2: 0.58) compared to models without SAT and CTM (adjR2: 0.47-0.51). Both monitoring networks are capable of producing models explaining the spatial variance over a large study area. SAT and CTM estimates of PM2.5 and NO2 significantly improved the performance of high spatial resolution LUR models at the European scale for use in large epidemiological studies.


Environment International | 2015

Spatial variation of PM elemental composition between and within 20 European study areas - Results of the ESCAPE project

Ming-Yi Tsai; Gerard Hoek; Marloes Eeftens; Kees de Hoogh; Rob Beelen; Timea Beregszászi; Giulia Cesaroni; Marta Cirach; Josef Cyrys; Audrey de Nazelle; Frank de Vocht; Regina E. Ducret-Stich; Kirsten Thorup Eriksen; Claudia Galassi; Regina Gražulevičiene; Tomas Gražulevicius; Georgios Grivas; Alexandros Gryparis; Joachim Heinrich; Barbara Hoffmann; Minas Iakovides; Menno Keuken; Ursula Krämer; Nino Künzli; Timo Lanki; Christian Madsen; Kees Meliefste; Anne Sophie Merritt; Anna Mölter; Gioia Mosler

An increasing number of epidemiological studies suggest that adverse health effects of air pollution may be related to particulate matter (PM) composition, particularly trace metals. However, we lack comprehensive data on the spatial distribution of these elements. We measured PM2.5 and PM10 in twenty study areas across Europe in three seasonal two-week periods over a year using Harvard impactors and standardized protocols. In each area, we selected street (ST), urban (UB) and regional background (RB) sites (totaling 20) to characterize local spatial variability. Elemental composition was determined by energy-dispersive X-ray fluorescence analysis of all PM2.5 and PM10 filters. We selected a priori eight (Cu, Fe, K, Ni, S, Si, V, Zn) well-detected elements of health interest, which also roughly represented different sources including traffic, industry, ports, and wood burning. PM elemental composition varied greatly across Europe, indicating different regional influences. Average street to urban background ratios ranged from 0.90 (V) to 1.60 (Cu) for PM2.5 and from 0.93 (V) to 2.28 (Cu) for PM10. Our selected PM elements were variably correlated with the main pollutants (PM2.5, PM10, PM2.5 absorbance, NO2 and NOx) across Europe: in general, Cu and Fe in all size fractions were highly correlated (Pearson correlations above 0.75); Si and Zn in the coarse fractions were modestly correlated (between 0.5 and 0.75); and the remaining elements in the various size fractions had lower correlations (around 0.5 or below). This variability in correlation demonstrated the distinctly different spatial distributions of most of the elements. Variability of PM10_Cu and Fe was mostly due to within-study area differences (67% and 64% of overall variance, respectively) versus between-study area and exceeded that of most other traffic-related pollutants, including NO2 and soot, signaling the importance of non-tailpipe (e.g., brake wear) emissions in PM.


Environment International | 2015

Association between long-term exposure to air pollution and mortality in France: A 25-year follow-up study

Malek Bentayeb; Vérène Wagner; Morgane Stempfelet; Marie Zins; Marcel Goldberg; Mathilde Pascal; Sophie Larrieu; Pascal Beaudeau; Sylvie Cassadou; Daniel Eilstein; Laurent Filleul; Alain Le Tertre; Sylvia Medina; Laurence Pascal; Hélène Prouvost; Philippe Quénel; Abdelkrim Zeghnoun; Agnès Lefranc

INTRODUCTION Long-term exposure to air pollution (AP) has been shown to have an impact on mortality in numerous countries, but since 2005 no data exists for France. OBJECTIVES We analyzed the association between long-term exposure to air pollution and mortality at the individual level in a large French cohort followed from 1989 to 2013. METHODS The study sample consisted of 20,327 adults working at the French national electricity and gas company EDF-GDF. Annual exposure to PM10, PM10–2.5, PM2.5, NO2, O3, SO2, and benzene was assessed for the place of residence of participants using a chemistry-transport model and taking residential history into account. Hazard ratios were estimated using a Cox proportional-hazards regression model, adjusted for selected individual and contextual risk factors. Hazard ratios were computed for an interquartile range (IQR) increase in air pollutant concentrations. RESULTS The cohort recorded 1967 non-accidental deaths. Long-term exposures to b aseline PM2.5, PM10-25, NO2 and benzene were associated with an increase in non-accidental mortality (Hazard Ratio, HR = 1.09; 95% CI: 0.99, 1.20 per 5.9 μg/m3, PM10-25; HR=1.09; 95% CI: 1.04, 1.15 per 2.2 μg/m3, NO2: HR=1.14; 95% CI: 0.99, 1.31 per 19.3 μg/m3 and benzene: HR=1.10; 95% CI: 1.00, 1.22 per 1.7 μg/m3).The strongest association was found for PM10: HR = 1.14; 95% CI: 1.05, 1.25 per 7.8 μg/m3. PM10, PM10-25 and SO2 were associated with non-accidental mortality when using time varying exposure. No significant associations were observed between air pollution and cardiovascular and respiratory mortality. CONCLUSION Long-term exposure to fine particles, nitrogen dioxide, sulfur dioxide and benzene is associated with an increased risk of non-accidental mortality in France. Our results strengthen existing evidence that outdoor air pollution is a significant environmental risk factor for mortality. Due to the limited sample size and the nature of our study (occupational), further investigations are needed in France with a larger representative population sample.


Journal of Environmental and Public Health | 2013

A review of the epidemiological methods used to investigate the health impacts of air pollution around major industrial areas.

Mathilde Pascal; Laurence Pascal; Marie-Laure Bidondo; Amandine Cochet; Hélène Sarter; Morgane Stempfelet; Vérène Wagner

We performed a literature review to investigate how epidemiological studies have been used to assess the health consequences of living in the vicinity of industries. 77 papers on the chronic effects of air pollution around major industrial areas were reviewed. Major health themes were cancers (27 studies), morbidity (25 studies), mortality (7 studies), and birth outcome (7 studies). Only 3 studies investigated mental health. While studies were available from many different countries, a majority of papers came from the United Kingdom, Italy, and Spain. Several studies were motivated by concerns from the population or by previous observations of an overincidence of cases. Geographical ecological designs were largely used for studying cancer and mortality, including statistical designs to quantify a relationship between health indicators and exposure. Morbidity was frequently investigated through cross-sectional surveys on the respiratory health of children. Few multicenter studies were performed. In a majority of papers, exposed areas were defined based on the distance to the industry and were located from <2 km to >20 km from the plants. Improving the exposure assessment would be an asset to future studies. Criteria to include industries in multicenter studies should be defined.

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Christophe Declercq

Institut de veille sanitaire

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Konstantina Dimakopoulou

National and Kapodistrian University of Athens

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Timo Lanki

National Institute for Health and Welfare

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Kees de Hoogh

Swiss Tropical and Public Health Institute

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