长期暴露于低浓度PM2.5、BC、NO2和O3对死亡率和发病率的影响:ELAPSE项目中欧洲队列的分析

Brunekreef Bert, Strak Maciej, Chen Jie, J Andersen Zorana, Atkinson Richard, Bauwelinck Mariska, Bellander Tom, Boutron Marie-Christine, Brandt Jørgen, Carey Iain, Cesaroni Giulia, Forastiere Francesco, Fecht Daniela, Gulliver John, Hertel Ole, Hoffmann Barbara, de Hoogh Kees, Houthuijs Danny, Hvidtfeldt Ulla, Janssen Nicole, Jørgensen Jeanette, Katsouyanni Klea, Ketzel Matthias, Klompmaker Jochem, Hjertager Krog Norun, Liu Shuo, Ljungman Petter, Mehta Amar, Nagel Gabriele, Oftedal Bente, Pershagen Göran, Peters Annette, Raaschou-Nielsen Ole, Renzi Matteo, Rodopoulou Sophia, Samoli Evi, Schwarze Per, Sigsgaard Torben, Stafoggia Massimo, Vienneau Danielle, Weinmayr Gudrun, Wolf Kathrin, Hoek Gerard
{"title":"长期暴露于低浓度PM2.5、BC、NO2和O3对死亡率和发病率的影响:ELAPSE项目中欧洲队列的分析","authors":"Brunekreef Bert,&nbsp;Strak Maciej,&nbsp;Chen Jie,&nbsp;J Andersen Zorana,&nbsp;Atkinson Richard,&nbsp;Bauwelinck Mariska,&nbsp;Bellander Tom,&nbsp;Boutron Marie-Christine,&nbsp;Brandt Jørgen,&nbsp;Carey Iain,&nbsp;Cesaroni Giulia,&nbsp;Forastiere Francesco,&nbsp;Fecht Daniela,&nbsp;Gulliver John,&nbsp;Hertel Ole,&nbsp;Hoffmann Barbara,&nbsp;de Hoogh Kees,&nbsp;Houthuijs Danny,&nbsp;Hvidtfeldt Ulla,&nbsp;Janssen Nicole,&nbsp;Jørgensen Jeanette,&nbsp;Katsouyanni Klea,&nbsp;Ketzel Matthias,&nbsp;Klompmaker Jochem,&nbsp;Hjertager Krog Norun,&nbsp;Liu Shuo,&nbsp;Ljungman Petter,&nbsp;Mehta Amar,&nbsp;Nagel Gabriele,&nbsp;Oftedal Bente,&nbsp;Pershagen Göran,&nbsp;Peters Annette,&nbsp;Raaschou-Nielsen Ole,&nbsp;Renzi Matteo,&nbsp;Rodopoulou Sophia,&nbsp;Samoli Evi,&nbsp;Schwarze Per,&nbsp;Sigsgaard Torben,&nbsp;Stafoggia Massimo,&nbsp;Vienneau Danielle,&nbsp;Weinmayr Gudrun,&nbsp;Wolf Kathrin,&nbsp;Hoek Gerard","doi":"","DOIUrl":null,"url":null,"abstract":"<p><strong>Introduction: </strong>Epidemiological cohort studies have consistently found associations between long-term exposure to outdoor air pollution and a range of morbidity and mortality endpoints. Recent evaluations by the World Health Organization and the Global Burden of Disease study have suggested that these associations may be nonlinear and may persist at very low concentrations. Studies conducted in North America in particular have suggested that associations with mortality persisted at concentrations of particulate matter with an aerodynamic diameter of less than 2.5 μm (PM<sub>2.5</sub>) well below current air quality standards and guidelines. The uncertainty about the shape of the concentration-response function at the low end of the concentration distribution, related to the scarcity of observations in the lowest range, was the basis of the current project. Previous studies have focused on PM<sub>2.5</sub>, but increasingly associations with nitrogen dioxide (NO<sub>2</sub>) are being reported, particularly in studies that accounted for the fine spatial scale variation of NO<sub>2</sub>. Very few studies have evaluated the effects of long-term exposure to low concentrations of ozone (O<sub>3</sub>). Health effects of black carbon (BC), representing primary combustion particles, have not been studied in most large cohort studies of PM<sub>2.5</sub>. Cohort studies assessing health effects of particle composition, including elements from nontailpipe traffic emissions (iron, copper, and zinc) and secondary aerosol (sulfur) have been few in number and reported inconsistent results. The overall objective of our study was to investigate the shape of the relationship between long-term exposure to four pollutants (PM<sub>2.5</sub>, NO<sub>2</sub>, BC, and O<sub>3</sub>) and four broad health effect categories using a number of different methods to characterize the concentration-response function (i.e., linear, nonlinear, or threshold). The four health effect categories were (1) natural- and cause-specific mortality including cardiovascular and nonmalignant as well as malignant respiratory and diabetes mortality; and morbidity measured as (2) coronary and cerebrovascular events; (3) lung cancer incidence; and (4) asthma and chronic obstructive pulmonary disease (COPD) incidence. We additionally assessed health effects of PM<sub>2.5</sub> composition, specifically the copper, iron, zinc, and sulfur content of PM<sub>2,5</sub>.</p><p><strong>Methods: </strong>We focused on analyses of health effects of air pollutants at low concentrations, defined as less than current European Union (EU) Limit Values, U.S. Environmental Protection Agency (U.S. EPA), National Ambient Air Quality Standards (NAAQS), and/or World Health Organization (WHO) Air Quality Guideline values for PM<sub>2.5</sub>, NO<sub>2</sub>, and O<sub>3</sub>. We address the health effects at low air pollution levels by performing new analyses within selected cohorts of the ESCAPE study (European Study of Cohorts for Air Pollution Effects; Beelen et al. 2014a) and within seven very large European administrative cohorts. By combining well-characterized ESCAPE cohorts and large administrative cohorts in one study the strengths and weaknesses of each approach can be addressed. The large administrative cohorts are more representative of national or citywide populations, have higher statistical power, and can efficiently control for area-level confounders, but have fewer possibilities to control for individual-level confounders. The ESCAPE cohorts have detailed information on individual confounders, as well as country-specific information on area-level confounding. The data from the seven included ESCAPE cohorts and one additional non-ESCAPE cohort have been pooled and analyzed centrally. More than 300,000 adults were included in the pooled cohort from existing cohorts in Sweden, Denmark, Germany, the Netherlands, Austria, France, and Italy. Data from the administrative cohorts have been analyzed locally, without transfer to a central database. Privacy regulations prevented transfer of data from administrative cohorts to a central database. More than 28 million adults were included from national administrative cohorts in Belgium, Denmark, England, the Netherlands, Norway, and Switzerland as well as an administrative cohort in Rome, Italy. We developed central exposure assessment using Europewide hybrid land use regression (LUR) models, which incorporated European routine monitoring data for PM<sub>2.5</sub>, NO<sub>2</sub>, and O<sub>3</sub>, and ESCAPE monitoring data for BC and PM<sub>2.5</sub> composition, land use, and traffic data supplemented with satellite observations and chemical transport model estimates. For all pollutants, we assessed exposure at a fine spatial scale, 100 × 100 m grids. These models have been applied to individual addresses of all cohorts including the administrative cohorts. In sensitivity analyses, we applied the PM<sub>2.5</sub> models developed within the companion HEI-funded Canadian MAPLE study (Brauer et al. 2019) and O<sub>3</sub> exposures on a larger spatial scale for comparison with previous studies. Identification of outcomes included linkage with mortality, cancer incidence, hospital discharge registries, and physician-based adjudication of cases. We analyzed natural-cause, cardiovascular, ischemic heart disease, stroke, diabetes, cardiometabolic, respiratory, and COPD mortality. We also analyzed lung cancer incidence, incidence of coronary and cerebrovascular events, and incidence of asthma and COPD (pooled cohort only). We applied the Cox proportional hazard model with increasing control for individual- and area-level covariates to analyze the associations between air pollution and mortality and/or morbidity for both the pooled cohort and the individual administrative cohorts. Age was used as the timescale because of evidence that this results in better adjustment for potential confounding by age. Censoring occurred at the time of the event of interest, death from other causes, emigration, loss to follow-up for other reasons, or at the end of follow-up, whichever came first. A priori we specified three confounder models, following the modeling methods of the ESCAPE study. Model 1 included only age (time axis), sex (as strata), and calendar year of enrollment. Model 2 added individual-level variables that were consistently available in the cohorts contributing to the pooled cohort or all variables available in the administrative cohorts, respectively. Model 3 further added area-level socioeconomic status (SES) variables. A priori model 3 was selected as the main model. All analyses in the pooled cohort were stratified by subcohort. All analyses in the administrative cohorts accounted for clustering of the data in neighborhoods by adjusting the variance of the effect estimates. The main exposure variable we analyzed was derived from the Europewide hybrid models based on 2010 monitoring data. Sensitivity analyses were conducted using earlier time periods, time-varying exposure analyses, local exposure models, and the PM<sub>2.5</sub> models from the Canadian MAPLE project. We first specified linear single-pollutant models. Two-pollutant models were specified for all combinations of the four main pollutants. Two-pollutant models for particle composition were analyzed with PM<sub>2.5</sub> and NO<sub>2</sub> as the second pollutant. We then investigated the shape of the concentration-response function using natural splines with two, three, and four degrees of freedom; penalized splines with the degrees of freedom determined by the algorithm and shape-constrained health impact functions (SCHIF) using confounder model 3. Additionally, we specified linear models in subsets of the concentration range, defined by removing concentrations above a certain value from the analysis, such as for PM<sub>2.5</sub> 25 μg/m<sup>3</sup> (EU limit value), 20, 15, 12 μg/m<sup>3</sup> (U.S. EPA National Ambient Air Quality Standard), and 10 μg/m<sup>3</sup> (WHO Air Quality Guideline value). Finally, threshold models were evaluated to investigate whether the associations persisted below specific concentration values. For PM<sub>2.5</sub>, we evaluated 10, 7.5, and 5 μg/m<sup>3</sup> as potential thresholds. Performance of threshold models versus the corresponding no-threshold linear model were evaluated using the Akaike information criterion (AIC).</p><p><strong>Results: </strong>In the pooled cohort, virtually all subjects in 2010 had PM<sub>2.5</sub> and NO<sub>2</sub> annual average exposures below the EU limit values (25 μg/m<sup>3</sup> and 40 μg/m<sup>3</sup>, respectively). More than 50,000 had a residential PM<sub>2.5</sub> exposure below the U.S. EPA NAAQS (12 μg/m<sup>3</sup>). More than 25,000 subjects had a residential PM<sub>2.5</sub> exposure below the WHO guideline (10 μg/m<sup>3</sup>). We found significant positive associations between PM<sub>2.5</sub>, NO<sub>2</sub>, and BC and natural-cause, respiratory, cardiovascular, and diabetes mortality. In our main model, the hazard ratios (HRs) (95% [confidence interval] CI) were 1.13 (CI = 1.11, 1.16) for an increase of 5 μg/m<sup>3</sup> PM<sub>2.5</sub>, 1.09 (CI = 1.07, 1.10) for an increase of 10 μg/m<sup>3</sup> NO<sub>2</sub>, and 1.08 (CI = 1.06, 1.10) for an increase of 0.5 × 10<sup>-5</sup>/m BC for natural-cause mortality. The highest HRs were found for diabetes mortality. Associations with O<sub>3</sub> were negative, both in the fine spatial scale of the main ELAPSE model and in large spatial scale exposure models. For PM<sub>2.5</sub>, NO<sub>2</sub>, and BC, we generally observed a supralinear association with steeper slopes at low exposures and no evidence of a concentration below which no association was found. Subset analyses further confirmed that these associations remained at low levels: below 10 μg/m<sup>3</sup> for PM<sub>2.5</sub> and 20 μg/m<sup>3</sup> for NO<sub>2</sub>. HRs were similar to the full cohort HRs for subjects with exposures below the EU limit values for PM<sub>2.5</sub> and NO<sub>2</sub>, the U.S. NAAQS values for PM<sub>2.5</sub>, and the WHO guidelines for PM<sub>2.5</sub> and NO<sub>2</sub>. The mortality associations were robust to alternative specifications of exposure, including different time periods, PM<sub>2.5</sub> from the MAPLE project, and estimates from the local ESCAPE model. Time-varying exposure natural spline analyses confirmed associations at low pollution levels. HRs in two-pollutant models were attenuated but remained elevated and statistically significant for PM<sub>2.5</sub> and NO<sub>2</sub>. In two-pollutant models of PM<sub>2.5</sub> and NO<sub>2</sub> HRs for natural-cause mortality were 1.08 (CI = 1.05, 1.11) for PM<sub>2.5</sub> and 1.05 (CI = 1.03, 1.07) for NO<sub>2</sub>. Associations with O<sub>3</sub> were attenuated but remained negative in two-pollutant models with NO<sub>2</sub>, BC, and PM<sub>2.5</sub>. We found significant positive associations between PM<sub>2.5</sub>, NO<sub>2</sub>, and BC and incidence of stroke and asthma and COPD hospital admissions. Furthermore, NO<sub>2</sub> was significantly related to acute coronary heart disease and PM<sub>2.5</sub> was significantly related to lung cancer incidence. We generally observed linear to supralinear associations with no evidence of a threshold, with the exception of the association between NO<sub>2</sub> and acute coronary heart disease, which was sublinear. Subset analyses documented that associations remained even with PM<sub>2.5</sub> below 20 μg/m<sup>3</sup> and possibly 12 μg/m<sup>3</sup>. Associations remained even when NO<sub>2</sub> was below 30 μg/m<sup>3</sup> and in some cases 20 μg/m<sup>3</sup>. In two-pollutant models, NO<sub>2</sub> was most consistently associated with acute coronary heart disease, stroke, asthma, and COPD hospital admissions. PM<sub>2.5</sub> was not associated with these outcomes in two-pollutant models with NO<sub>2</sub>. PM<sub>2.5</sub> was the only pollutant that was associated with lung cancer incidence in two-pollutant models. Associations with O<sub>3</sub> were negative though generally not statistically significant. In the administrative cohorts, virtually all subjects in 2010 had PM<sub>2.5</sub> and NO<sub>2</sub> annual average exposures below the EU limit values. More than 3.9 million subjects had a residential PM<sub>2.5</sub> exposure below the U.S. EPA NAAQS (12 μg/m<sup>3</sup>) and more than 1.9 million had residential PM<sub>2.5</sub> exposures below the WHO guideline (10 μg/m<sup>3</sup>). We found significant positive associations between PM<sub>2.5</sub>, NO<sub>2</sub>, and BC and natural-cause, respiratory, cardiovascular, and lung cancer mortality, with moderate to high heterogeneity between cohorts. We found positive but statistically nonsignificant associations with diabetes mortality. In our main model meta-analysis, the HRs (95% CI) for natural-cause mortality were 1.05 (CI = 1.02, 1.09) for an increase of 5 μg/m<sup>3</sup> PM<sub>2.5</sub>, 1.04 (CI = 1.02, 1.07) for an increase of 10 μg/m<sup>3</sup> NO<sub>2</sub>, and 1.04 (CI = 1.02, 1.06) for an increase of 0.5 × 10<sup>-5</sup>/m BC, and 0.95 (CI = 0.93, 0.98) for an increase of 10 μg/m<sup>3</sup> O<sub>3</sub>. The shape of the concentration-response functions differed between cohorts, though the associations were generally linear to supralinear, with no indication of a level below which no associations were found. Subset analyses documented that these associations remained at low levels: below 10 μg/m<sup>3</sup> for PM<sub>2.5</sub> and 20 μg/m<sup>3</sup> for NO<sub>2</sub>. BC and NO<sub>2</sub> remained significantly associated with mortality in two-pollutant models with PM<sub>2.5</sub> and O<sub>3</sub>. The PM<sub>2.5</sub> HR attenuated to unity in a two-pollutant model with NO<sub>2</sub>. The negative O<sub>3</sub> association was attenuated to unity and became nonsignificant. The mortality associations were robust to alternative specifications of exposure, including time-varying exposure analyses. Time-varying exposure natural spline analyses confirmed associations at low pollution levels. Effect estimates in the youngest participants (<65 years at baseline) were much larger than in the elderly (>65 years at baseline). Effect estimates obtained with the ELAPSE PM<sub>2.5</sub> model did not differ from the MAPLE PM<sub>2.5</sub> model on average, but in individual cohorts, substantial differences were found.</p><p><strong>Conclusions: </strong>Long-term exposure to PM<sub>2.5</sub>, NO<sub>2</sub>, and BC was positively associated with natural-cause and cause-specific mortality in the pooled cohort and the administrative cohorts. Associations were found well below current limit values and guidelines for PM<sub>2.5</sub> and NO<sub>2</sub>. Associations tended to be supralinear, with steeper slopes at low exposures with no indication of a threshold. Two-pollutant models documented the importance of characterizing the ambient mixture with both NO<sub>2</sub> and PM<sub>2.5</sub>. We mostly found negative associations with O<sub>3</sub>. In two-pollutant models with NO<sub>2</sub>, the negative associations with O<sub>3</sub> were attenuated to essentially unity in the mortality analysis of the administrative cohorts and the incidence analyses in the pooled cohort. In the mortality analysis of the pooled cohort, significant negative associations with O<sub>3</sub> remained in two-pollutant models. Long-term exposure to PM<sub>2.5</sub>, NO<sub>2</sub>, and BC was also positively associated with morbidity outcomes in the pooled cohort. For stroke, asthma, and COPD, positive associations were found for PM<sub>2.5</sub>, NO<sub>2</sub>, and BC. For acute coronary heart disease, an increased HR was observed for NO<sub>2</sub>. For lung cancer, an increased HR was found only for PM<sub>2.5</sub>. Associations mostly showed steeper slopes at low exposures with no indication of a threshold.</p>","PeriodicalId":74687,"journal":{"name":"Research report (Health Effects Institute)","volume":" 208","pages":"1-127"},"PeriodicalIF":0.0000,"publicationDate":"2021-09-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9476567/pdf/hei-2021-208.pdf","citationCount":"0","resultStr":"{\"title\":\"Mortality and Morbidity Effects of Long-Term Exposure to Low-Level PM<sub>2.5</sub>, BC, NO<sub>2</sub>, and O<sub>3</sub>: An Analysis of European Cohorts in the ELAPSE Project.\",\"authors\":\"Brunekreef Bert,&nbsp;Strak Maciej,&nbsp;Chen Jie,&nbsp;J Andersen Zorana,&nbsp;Atkinson Richard,&nbsp;Bauwelinck Mariska,&nbsp;Bellander Tom,&nbsp;Boutron Marie-Christine,&nbsp;Brandt Jørgen,&nbsp;Carey Iain,&nbsp;Cesaroni Giulia,&nbsp;Forastiere Francesco,&nbsp;Fecht Daniela,&nbsp;Gulliver John,&nbsp;Hertel Ole,&nbsp;Hoffmann Barbara,&nbsp;de Hoogh Kees,&nbsp;Houthuijs Danny,&nbsp;Hvidtfeldt Ulla,&nbsp;Janssen Nicole,&nbsp;Jørgensen Jeanette,&nbsp;Katsouyanni Klea,&nbsp;Ketzel Matthias,&nbsp;Klompmaker Jochem,&nbsp;Hjertager Krog Norun,&nbsp;Liu Shuo,&nbsp;Ljungman Petter,&nbsp;Mehta Amar,&nbsp;Nagel Gabriele,&nbsp;Oftedal Bente,&nbsp;Pershagen Göran,&nbsp;Peters Annette,&nbsp;Raaschou-Nielsen Ole,&nbsp;Renzi Matteo,&nbsp;Rodopoulou Sophia,&nbsp;Samoli Evi,&nbsp;Schwarze Per,&nbsp;Sigsgaard Torben,&nbsp;Stafoggia Massimo,&nbsp;Vienneau Danielle,&nbsp;Weinmayr Gudrun,&nbsp;Wolf Kathrin,&nbsp;Hoek Gerard\",\"doi\":\"\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Introduction: </strong>Epidemiological cohort studies have consistently found associations between long-term exposure to outdoor air pollution and a range of morbidity and mortality endpoints. Recent evaluations by the World Health Organization and the Global Burden of Disease study have suggested that these associations may be nonlinear and may persist at very low concentrations. Studies conducted in North America in particular have suggested that associations with mortality persisted at concentrations of particulate matter with an aerodynamic diameter of less than 2.5 μm (PM<sub>2.5</sub>) well below current air quality standards and guidelines. The uncertainty about the shape of the concentration-response function at the low end of the concentration distribution, related to the scarcity of observations in the lowest range, was the basis of the current project. Previous studies have focused on PM<sub>2.5</sub>, but increasingly associations with nitrogen dioxide (NO<sub>2</sub>) are being reported, particularly in studies that accounted for the fine spatial scale variation of NO<sub>2</sub>. Very few studies have evaluated the effects of long-term exposure to low concentrations of ozone (O<sub>3</sub>). Health effects of black carbon (BC), representing primary combustion particles, have not been studied in most large cohort studies of PM<sub>2.5</sub>. Cohort studies assessing health effects of particle composition, including elements from nontailpipe traffic emissions (iron, copper, and zinc) and secondary aerosol (sulfur) have been few in number and reported inconsistent results. The overall objective of our study was to investigate the shape of the relationship between long-term exposure to four pollutants (PM<sub>2.5</sub>, NO<sub>2</sub>, BC, and O<sub>3</sub>) and four broad health effect categories using a number of different methods to characterize the concentration-response function (i.e., linear, nonlinear, or threshold). The four health effect categories were (1) natural- and cause-specific mortality including cardiovascular and nonmalignant as well as malignant respiratory and diabetes mortality; and morbidity measured as (2) coronary and cerebrovascular events; (3) lung cancer incidence; and (4) asthma and chronic obstructive pulmonary disease (COPD) incidence. We additionally assessed health effects of PM<sub>2.5</sub> composition, specifically the copper, iron, zinc, and sulfur content of PM<sub>2,5</sub>.</p><p><strong>Methods: </strong>We focused on analyses of health effects of air pollutants at low concentrations, defined as less than current European Union (EU) Limit Values, U.S. Environmental Protection Agency (U.S. EPA), National Ambient Air Quality Standards (NAAQS), and/or World Health Organization (WHO) Air Quality Guideline values for PM<sub>2.5</sub>, NO<sub>2</sub>, and O<sub>3</sub>. We address the health effects at low air pollution levels by performing new analyses within selected cohorts of the ESCAPE study (European Study of Cohorts for Air Pollution Effects; Beelen et al. 2014a) and within seven very large European administrative cohorts. By combining well-characterized ESCAPE cohorts and large administrative cohorts in one study the strengths and weaknesses of each approach can be addressed. The large administrative cohorts are more representative of national or citywide populations, have higher statistical power, and can efficiently control for area-level confounders, but have fewer possibilities to control for individual-level confounders. The ESCAPE cohorts have detailed information on individual confounders, as well as country-specific information on area-level confounding. The data from the seven included ESCAPE cohorts and one additional non-ESCAPE cohort have been pooled and analyzed centrally. More than 300,000 adults were included in the pooled cohort from existing cohorts in Sweden, Denmark, Germany, the Netherlands, Austria, France, and Italy. Data from the administrative cohorts have been analyzed locally, without transfer to a central database. Privacy regulations prevented transfer of data from administrative cohorts to a central database. More than 28 million adults were included from national administrative cohorts in Belgium, Denmark, England, the Netherlands, Norway, and Switzerland as well as an administrative cohort in Rome, Italy. We developed central exposure assessment using Europewide hybrid land use regression (LUR) models, which incorporated European routine monitoring data for PM<sub>2.5</sub>, NO<sub>2</sub>, and O<sub>3</sub>, and ESCAPE monitoring data for BC and PM<sub>2.5</sub> composition, land use, and traffic data supplemented with satellite observations and chemical transport model estimates. For all pollutants, we assessed exposure at a fine spatial scale, 100 × 100 m grids. These models have been applied to individual addresses of all cohorts including the administrative cohorts. In sensitivity analyses, we applied the PM<sub>2.5</sub> models developed within the companion HEI-funded Canadian MAPLE study (Brauer et al. 2019) and O<sub>3</sub> exposures on a larger spatial scale for comparison with previous studies. Identification of outcomes included linkage with mortality, cancer incidence, hospital discharge registries, and physician-based adjudication of cases. We analyzed natural-cause, cardiovascular, ischemic heart disease, stroke, diabetes, cardiometabolic, respiratory, and COPD mortality. We also analyzed lung cancer incidence, incidence of coronary and cerebrovascular events, and incidence of asthma and COPD (pooled cohort only). We applied the Cox proportional hazard model with increasing control for individual- and area-level covariates to analyze the associations between air pollution and mortality and/or morbidity for both the pooled cohort and the individual administrative cohorts. Age was used as the timescale because of evidence that this results in better adjustment for potential confounding by age. Censoring occurred at the time of the event of interest, death from other causes, emigration, loss to follow-up for other reasons, or at the end of follow-up, whichever came first. A priori we specified three confounder models, following the modeling methods of the ESCAPE study. Model 1 included only age (time axis), sex (as strata), and calendar year of enrollment. Model 2 added individual-level variables that were consistently available in the cohorts contributing to the pooled cohort or all variables available in the administrative cohorts, respectively. Model 3 further added area-level socioeconomic status (SES) variables. A priori model 3 was selected as the main model. All analyses in the pooled cohort were stratified by subcohort. All analyses in the administrative cohorts accounted for clustering of the data in neighborhoods by adjusting the variance of the effect estimates. The main exposure variable we analyzed was derived from the Europewide hybrid models based on 2010 monitoring data. Sensitivity analyses were conducted using earlier time periods, time-varying exposure analyses, local exposure models, and the PM<sub>2.5</sub> models from the Canadian MAPLE project. We first specified linear single-pollutant models. Two-pollutant models were specified for all combinations of the four main pollutants. Two-pollutant models for particle composition were analyzed with PM<sub>2.5</sub> and NO<sub>2</sub> as the second pollutant. We then investigated the shape of the concentration-response function using natural splines with two, three, and four degrees of freedom; penalized splines with the degrees of freedom determined by the algorithm and shape-constrained health impact functions (SCHIF) using confounder model 3. Additionally, we specified linear models in subsets of the concentration range, defined by removing concentrations above a certain value from the analysis, such as for PM<sub>2.5</sub> 25 μg/m<sup>3</sup> (EU limit value), 20, 15, 12 μg/m<sup>3</sup> (U.S. EPA National Ambient Air Quality Standard), and 10 μg/m<sup>3</sup> (WHO Air Quality Guideline value). Finally, threshold models were evaluated to investigate whether the associations persisted below specific concentration values. For PM<sub>2.5</sub>, we evaluated 10, 7.5, and 5 μg/m<sup>3</sup> as potential thresholds. Performance of threshold models versus the corresponding no-threshold linear model were evaluated using the Akaike information criterion (AIC).</p><p><strong>Results: </strong>In the pooled cohort, virtually all subjects in 2010 had PM<sub>2.5</sub> and NO<sub>2</sub> annual average exposures below the EU limit values (25 μg/m<sup>3</sup> and 40 μg/m<sup>3</sup>, respectively). More than 50,000 had a residential PM<sub>2.5</sub> exposure below the U.S. EPA NAAQS (12 μg/m<sup>3</sup>). More than 25,000 subjects had a residential PM<sub>2.5</sub> exposure below the WHO guideline (10 μg/m<sup>3</sup>). We found significant positive associations between PM<sub>2.5</sub>, NO<sub>2</sub>, and BC and natural-cause, respiratory, cardiovascular, and diabetes mortality. In our main model, the hazard ratios (HRs) (95% [confidence interval] CI) were 1.13 (CI = 1.11, 1.16) for an increase of 5 μg/m<sup>3</sup> PM<sub>2.5</sub>, 1.09 (CI = 1.07, 1.10) for an increase of 10 μg/m<sup>3</sup> NO<sub>2</sub>, and 1.08 (CI = 1.06, 1.10) for an increase of 0.5 × 10<sup>-5</sup>/m BC for natural-cause mortality. The highest HRs were found for diabetes mortality. Associations with O<sub>3</sub> were negative, both in the fine spatial scale of the main ELAPSE model and in large spatial scale exposure models. For PM<sub>2.5</sub>, NO<sub>2</sub>, and BC, we generally observed a supralinear association with steeper slopes at low exposures and no evidence of a concentration below which no association was found. Subset analyses further confirmed that these associations remained at low levels: below 10 μg/m<sup>3</sup> for PM<sub>2.5</sub> and 20 μg/m<sup>3</sup> for NO<sub>2</sub>. HRs were similar to the full cohort HRs for subjects with exposures below the EU limit values for PM<sub>2.5</sub> and NO<sub>2</sub>, the U.S. NAAQS values for PM<sub>2.5</sub>, and the WHO guidelines for PM<sub>2.5</sub> and NO<sub>2</sub>. The mortality associations were robust to alternative specifications of exposure, including different time periods, PM<sub>2.5</sub> from the MAPLE project, and estimates from the local ESCAPE model. Time-varying exposure natural spline analyses confirmed associations at low pollution levels. HRs in two-pollutant models were attenuated but remained elevated and statistically significant for PM<sub>2.5</sub> and NO<sub>2</sub>. In two-pollutant models of PM<sub>2.5</sub> and NO<sub>2</sub> HRs for natural-cause mortality were 1.08 (CI = 1.05, 1.11) for PM<sub>2.5</sub> and 1.05 (CI = 1.03, 1.07) for NO<sub>2</sub>. Associations with O<sub>3</sub> were attenuated but remained negative in two-pollutant models with NO<sub>2</sub>, BC, and PM<sub>2.5</sub>. We found significant positive associations between PM<sub>2.5</sub>, NO<sub>2</sub>, and BC and incidence of stroke and asthma and COPD hospital admissions. Furthermore, NO<sub>2</sub> was significantly related to acute coronary heart disease and PM<sub>2.5</sub> was significantly related to lung cancer incidence. We generally observed linear to supralinear associations with no evidence of a threshold, with the exception of the association between NO<sub>2</sub> and acute coronary heart disease, which was sublinear. Subset analyses documented that associations remained even with PM<sub>2.5</sub> below 20 μg/m<sup>3</sup> and possibly 12 μg/m<sup>3</sup>. Associations remained even when NO<sub>2</sub> was below 30 μg/m<sup>3</sup> and in some cases 20 μg/m<sup>3</sup>. In two-pollutant models, NO<sub>2</sub> was most consistently associated with acute coronary heart disease, stroke, asthma, and COPD hospital admissions. PM<sub>2.5</sub> was not associated with these outcomes in two-pollutant models with NO<sub>2</sub>. PM<sub>2.5</sub> was the only pollutant that was associated with lung cancer incidence in two-pollutant models. Associations with O<sub>3</sub> were negative though generally not statistically significant. In the administrative cohorts, virtually all subjects in 2010 had PM<sub>2.5</sub> and NO<sub>2</sub> annual average exposures below the EU limit values. More than 3.9 million subjects had a residential PM<sub>2.5</sub> exposure below the U.S. EPA NAAQS (12 μg/m<sup>3</sup>) and more than 1.9 million had residential PM<sub>2.5</sub> exposures below the WHO guideline (10 μg/m<sup>3</sup>). We found significant positive associations between PM<sub>2.5</sub>, NO<sub>2</sub>, and BC and natural-cause, respiratory, cardiovascular, and lung cancer mortality, with moderate to high heterogeneity between cohorts. We found positive but statistically nonsignificant associations with diabetes mortality. In our main model meta-analysis, the HRs (95% CI) for natural-cause mortality were 1.05 (CI = 1.02, 1.09) for an increase of 5 μg/m<sup>3</sup> PM<sub>2.5</sub>, 1.04 (CI = 1.02, 1.07) for an increase of 10 μg/m<sup>3</sup> NO<sub>2</sub>, and 1.04 (CI = 1.02, 1.06) for an increase of 0.5 × 10<sup>-5</sup>/m BC, and 0.95 (CI = 0.93, 0.98) for an increase of 10 μg/m<sup>3</sup> O<sub>3</sub>. The shape of the concentration-response functions differed between cohorts, though the associations were generally linear to supralinear, with no indication of a level below which no associations were found. Subset analyses documented that these associations remained at low levels: below 10 μg/m<sup>3</sup> for PM<sub>2.5</sub> and 20 μg/m<sup>3</sup> for NO<sub>2</sub>. BC and NO<sub>2</sub> remained significantly associated with mortality in two-pollutant models with PM<sub>2.5</sub> and O<sub>3</sub>. The PM<sub>2.5</sub> HR attenuated to unity in a two-pollutant model with NO<sub>2</sub>. The negative O<sub>3</sub> association was attenuated to unity and became nonsignificant. The mortality associations were robust to alternative specifications of exposure, including time-varying exposure analyses. Time-varying exposure natural spline analyses confirmed associations at low pollution levels. Effect estimates in the youngest participants (<65 years at baseline) were much larger than in the elderly (>65 years at baseline). Effect estimates obtained with the ELAPSE PM<sub>2.5</sub> model did not differ from the MAPLE PM<sub>2.5</sub> model on average, but in individual cohorts, substantial differences were found.</p><p><strong>Conclusions: </strong>Long-term exposure to PM<sub>2.5</sub>, NO<sub>2</sub>, and BC was positively associated with natural-cause and cause-specific mortality in the pooled cohort and the administrative cohorts. Associations were found well below current limit values and guidelines for PM<sub>2.5</sub> and NO<sub>2</sub>. Associations tended to be supralinear, with steeper slopes at low exposures with no indication of a threshold. Two-pollutant models documented the importance of characterizing the ambient mixture with both NO<sub>2</sub> and PM<sub>2.5</sub>. We mostly found negative associations with O<sub>3</sub>. In two-pollutant models with NO<sub>2</sub>, the negative associations with O<sub>3</sub> were attenuated to essentially unity in the mortality analysis of the administrative cohorts and the incidence analyses in the pooled cohort. In the mortality analysis of the pooled cohort, significant negative associations with O<sub>3</sub> remained in two-pollutant models. Long-term exposure to PM<sub>2.5</sub>, NO<sub>2</sub>, and BC was also positively associated with morbidity outcomes in the pooled cohort. For stroke, asthma, and COPD, positive associations were found for PM<sub>2.5</sub>, NO<sub>2</sub>, and BC. For acute coronary heart disease, an increased HR was observed for NO<sub>2</sub>. For lung cancer, an increased HR was found only for PM<sub>2.5</sub>. 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引用次数: 0

摘要

流行病学队列研究一致发现,长期暴露于室外空气污染与一系列发病率和死亡率终点之间存在关联。世界卫生组织和全球疾病负担研究最近的评估表明,这些关联可能是非线性的,并且可能在非常低的浓度下持续存在。特别是在北美进行的研究表明,空气动力学直径小于2.5 μm (PM2.5)的颗粒物浓度远低于目前的空气质量标准和准则时,与死亡率的关联仍然存在。浓度分布低端的浓度-响应函数形状的不确定性与最低范围内观测值的稀缺性有关,这是当前项目的基础。以前的研究主要集中在PM2.5上,但越来越多的研究报告将其与二氧化氮(NO2)联系起来,特别是在研究二氧化氮细微空间尺度变化的研究中。很少有研究评估长期暴露于低浓度臭氧(O3)的影响。在大多数关于PM2.5的大型队列研究中,尚未研究代表初级燃烧颗粒的黑碳(BC)对健康的影响。评估颗粒组成对健康影响的队列研究,包括来自非机动车尾气排放的元素(铁、铜和锌)和二次气溶胶(硫)的数量很少,报告的结果也不一致。本研究的总体目标是研究长期暴露于四种污染物(PM2.5、NO2、BC和O3)与四种广泛的健康影响类别之间的关系,使用许多不同的方法来表征浓度-响应函数(即线性、非线性或阈值)。四种健康影响类别是:(1)自然和原因特异性死亡率,包括心血管和非恶性以及恶性呼吸道和糖尿病死亡率;(2)冠状动脉和脑血管事件;(3)肺癌发病率;(4)哮喘和慢性阻塞性肺疾病(COPD)发病率。我们还评估了PM2.5成分对健康的影响,特别是PM2中铜、铁、锌和硫的含量。方法:我们重点分析了低浓度空气污染物对健康的影响,低浓度空气污染物的定义是低于当前欧盟(EU)限值、美国环境保护署(U.S. EPA)、国家环境空气质量标准(NAAQS)和/或世界卫生组织(WHO)空气质量指南中PM2.5、NO2和O3的值。我们通过对ESCAPE研究(欧洲空气污染影响队列研究;Beelen et al. 2014a)和七个非常大的欧洲行政队列。通过在一项研究中结合特征明确的ESCAPE队列和大型行政队列,可以解决每种方法的优缺点。大的行政队列更能代表全国或全市的人口,具有更高的统计能力,可以有效地控制区域水平的混杂因素,但控制个人水平混杂因素的可能性较小。ESCAPE队列有关于单个混杂因素的详细信息,也有关于地区级混杂因素的具体国家信息。来自7个包括ESCAPE队列和1个额外的非ESCAPE队列的数据已汇总并集中分析。来自瑞典、丹麦、德国、荷兰、奥地利、法国和意大利现有队列的30多万成年人被纳入合并队列。来自行政群组的数据在当地进行了分析,没有转移到中央数据库。隐私法规禁止将数据从管理队列转移到中央数据库。来自比利时、丹麦、英国、荷兰、挪威和瑞士的国家行政队列以及意大利罗马的行政队列的2800多万成年人被纳入研究。我们利用欧洲范围内的混合土地利用回归(LUR)模型开发了中心暴露评估,该模型结合了欧洲PM2.5、NO2和O3的常规监测数据,以及ESCAPE对BC和PM2.5成分、土地利用和交通数据的监测数据,并补充了卫星观测和化学运输模型估计。对于所有污染物,我们在100 × 100米网格的精细空间尺度上评估了暴露情况。这些模型已应用于所有群组的个人地址,包括行政群组。在敏感性分析中,我们应用了hei资助的加拿大MAPLE研究(Brauer et al. 2019)中开发的PM2.5模型和更大空间尺度上的O3暴露,与之前的研究进行比较。 结果的确定包括与死亡率、癌症发病率、出院登记和基于医生的病例裁决的联系。我们分析了自然原因、心血管、缺血性心脏病、中风、糖尿病、心脏代谢、呼吸和慢性阻塞性肺病的死亡率。我们还分析了肺癌的发病率、冠状动脉和脑血管事件的发病率以及哮喘和COPD的发病率(仅限合并队列)。我们应用Cox比例风险模型,增加了对个体和区域水平协变量的控制,分析了合并队列和单个行政队列中空气污染与死亡率和/或发病率之间的关系。使用年龄作为时间尺度,因为有证据表明,这可以更好地调整年龄的潜在混淆。审查发生在有关事件发生时、因其他原因死亡时、移民时、因其他原因失去随访时或随访结束时(以先到者为准)。我们先验地指定了三个混杂模型,遵循ESCAPE研究的建模方法。模型1仅包括年龄(时间轴)、性别(分层)和入组日历年。模型2分别添加了在合并队列中一致可用的个体水平变量或在行政队列中可用的所有变量。模型3进一步增加了区域层面的社会经济地位(SES)变量。选取先验模型3作为主要模型。合并队列的所有分析均按亚队列进行分层。在行政队列中的所有分析都通过调整效应估计的方差来解释社区数据的聚类。我们分析的主要暴露变量来自基于2010年监测数据的全欧洲混合模型。敏感性分析采用早期时间段、时变暴露分析、局部暴露模型和加拿大MAPLE项目的PM2.5模型进行。我们首先指定了线性单一污染物模型。对于四种主要污染物的所有组合,指定了双污染物模型。以PM2.5和NO2为第二污染物,分析了颗粒物组成的双污染物模型。然后,我们使用具有二、三、四自由度的自然样条曲线研究了浓度-响应函数的形状;惩罚样条的自由度由算法确定,形状约束健康影响函数(SCHIF)使用混杂模型3。此外,我们在浓度范围的子集中指定了线性模型,通过从分析中删除超过某一值的浓度来定义,例如PM2.5 25 μg/m3(欧盟限值),20,15,12 μg/m3(美国环保署国家环境空气质量标准)和10 μg/m3(世界卫生组织空气质量指南值)。最后,评估阈值模型,以调查关联是否在特定浓度值下持续存在。对于PM2.5,我们评估了10、7.5和5 μg/m3作为潜在阈值。采用赤池信息准则(Akaike information criterion, AIC)评价阈值模型与相应的无阈值线性模型的性能。结果:在合并队列中,2010年几乎所有受试者的PM2.5和NO2年平均暴露量均低于欧盟限值(分别为25 μg/m3和40 μg/m3)。超过5万人的住宅PM2.5暴露量低于美国环保署NAAQS (12 μg/m3)。超过25,000名受试者的住宅PM2.5暴露量低于世卫组织指南(10 μg/m3)。我们发现PM2.5、二氧化氮和BC与自然原因、呼吸系统、心血管和糖尿病死亡率之间存在显著的正相关。在我们的主要模型中,PM2.5增加5 μg/m3的风险比(hr)(95%[置信区间]CI)为1.13 (CI = 1.11, 1.16), NO2增加10 μg/m3的风险比(hr)为1.09 (CI = 1.07, 1.10),自然原因死亡率增加0.5 × 10-5/m BC的风险比(hr)为1.08 (CI = 1.06, 1.10)。糖尿病死亡率的hr最高。在主要ELAPSE模型的精细空间尺度和大空间尺度暴露模型中,与O3均呈负相关。对于PM2.5、NO2和BC,我们通常观察到在低暴露时与陡坡呈超线性关系,并且没有证据表明低于该浓度时没有发现关联。子集分析进一步证实,这些关联仍然处于较低水平:PM2.5低于10 μg/m3, NO2低于20 μg/m3。暴露于低于欧盟PM2.5和二氧化氮限值、美国NAAQS PM2.5值和世界卫生组织PM2.5和二氧化氮指南的受试者的hr与全队列hr相似。死亡率与其他暴露规格(包括不同时间段、MAPLE项目的PM2.5和当地ESCAPE模型的估计值)之间的关联是可靠的。时变暴露自然样条分析证实了低污染水平下的关联。 双污染物模型的HRs有所减弱,但PM2.5和NO2的HRs仍然升高,且具有统计学意义。在PM2.5和NO2双污染物模型中,PM2.5的自然原因死亡率为1.08 (CI = 1.05, 1.11), NO2的自然原因死亡率为1.05 (CI = 1.03, 1.07)。在含NO2、BC和PM2.5的双污染物模型中,与O3的相关性减弱,但仍为负相关。我们发现PM2.5、NO2和BC与卒中、哮喘和COPD住院率之间存在显著正相关。NO2与急性冠心病发病率显著相关,PM2.5与肺癌发病率显著相关。我们通常观察到线性到超线性的关联,没有证据表明阈值,除了二氧化氮和急性冠心病之间的关联是亚线性的。子集分析表明,即使PM2.5低于20 μg/m3,甚至可能低于12 μg/m3,这种关联仍然存在。即使NO2低于30 μg/m3,某些情况下低于20 μg/m3,这种关联仍然存在。在双污染物模型中,二氧化氮与急性冠心病、中风、哮喘和慢性阻塞性肺病住院率最一致。在含NO2的双污染物模型中,PM2.5与这些结果无关。在双污染物模型中,PM2.5是唯一与肺癌发病率相关的污染物。与O3呈负相关,但总体上无统计学意义。在行政队列中,2010年几乎所有受试者的PM2.5和二氧化氮年平均暴露量都低于欧盟限值。超过390万人的住宅PM2.5暴露量低于美国EPA NAAQS (12 μg/m3),超过190万人的住宅PM2.5暴露量低于世界卫生组织指南(10 μg/m3)。我们发现PM2.5、NO2和BC与自然原因、呼吸、心血管和肺癌死亡率之间存在显著的正相关,队列之间存在中等至高度的异质性。我们发现与糖尿病死亡率呈正相关,但统计上不显著。在我们的主要模型荟萃分析中,自然原因死亡率的hr (95% CI)为PM2.5增加5 μg/m3时为1.05 (CI = 1.02, 1.09), NO2增加10 μg/m3时为1.04 (CI = 1.02, 1.07), BC增加0.5 × 10-5/m时为1.04 (CI = 1.02, 1.06), O3增加10 μg/m3时为0.95 (CI = 0.93, 0.98)。浓度-反应函数的形状在不同的队列之间有所不同,尽管这些关联通常是线性到超线性的,没有迹象表明低于某个水平就没有关联。子集分析表明,这些关联保持在较低水平:PM2.5低于10 μg/m3,二氧化氮低于20 μg/m3。在PM2.5和O3双污染物模型中,BC和NO2与死亡率仍显著相关。在含NO2的双污染物模式下,PM2.5的HR趋于一致。负的O3关联减弱到统一,变得不显著。包括时变暴露分析在内的其他暴露规格与死亡率之间的关联是稳健的。时变暴露自然样条分析证实了低污染水平下的关联。对最年轻参与者(65岁基线)的影响估计。使用ELAPSE PM2.5模型获得的效果估计与MAPLE PM2.5模型平均没有差异,但在个体队列中发现了实质性差异。结论:在合并队列和行政队列中,长期暴露于PM2.5、NO2和BC与自然原因和原因特异性死亡率呈正相关。这些关联远远低于目前PM2.5和二氧化氮的限值和指导方针。相关性往往是超线性的,低暴露时斜率更陡,没有阈值的迹象。双污染物模型证明了用二氧化氮和PM2.5来表征环境混合物的重要性。我们发现大多数与O3呈负相关。在含NO2的两种污染物模型中,在行政队列的死亡率分析和合并队列的发病率分析中,与O3的负相关减弱到基本一致。在合并队列的死亡率分析中,在双污染物模型中,O3仍与死亡率呈显著负相关。在合并队列中,长期暴露于PM2.5、NO2和BC也与发病率结果呈正相关。对于中风、哮喘和COPD, PM2.5、NO2和BC呈正相关。对于急性冠心病,NO2的HR升高。对于肺癌,只有PM2.5的HR增加。在低暴露情况下,相关性大多表现为更陡的斜率,没有阈值的迹象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Mortality and Morbidity Effects of Long-Term Exposure to Low-Level PM<sub>2.5</sub>, BC, NO<sub>2</sub>, and O<sub>3</sub>: An Analysis of European Cohorts in the ELAPSE Project.

Mortality and Morbidity Effects of Long-Term Exposure to Low-Level PM2.5, BC, NO2, and O3: An Analysis of European Cohorts in the ELAPSE Project.

Introduction: Epidemiological cohort studies have consistently found associations between long-term exposure to outdoor air pollution and a range of morbidity and mortality endpoints. Recent evaluations by the World Health Organization and the Global Burden of Disease study have suggested that these associations may be nonlinear and may persist at very low concentrations. Studies conducted in North America in particular have suggested that associations with mortality persisted at concentrations of particulate matter with an aerodynamic diameter of less than 2.5 μm (PM2.5) well below current air quality standards and guidelines. The uncertainty about the shape of the concentration-response function at the low end of the concentration distribution, related to the scarcity of observations in the lowest range, was the basis of the current project. Previous studies have focused on PM2.5, but increasingly associations with nitrogen dioxide (NO2) are being reported, particularly in studies that accounted for the fine spatial scale variation of NO2. Very few studies have evaluated the effects of long-term exposure to low concentrations of ozone (O3). Health effects of black carbon (BC), representing primary combustion particles, have not been studied in most large cohort studies of PM2.5. Cohort studies assessing health effects of particle composition, including elements from nontailpipe traffic emissions (iron, copper, and zinc) and secondary aerosol (sulfur) have been few in number and reported inconsistent results. The overall objective of our study was to investigate the shape of the relationship between long-term exposure to four pollutants (PM2.5, NO2, BC, and O3) and four broad health effect categories using a number of different methods to characterize the concentration-response function (i.e., linear, nonlinear, or threshold). The four health effect categories were (1) natural- and cause-specific mortality including cardiovascular and nonmalignant as well as malignant respiratory and diabetes mortality; and morbidity measured as (2) coronary and cerebrovascular events; (3) lung cancer incidence; and (4) asthma and chronic obstructive pulmonary disease (COPD) incidence. We additionally assessed health effects of PM2.5 composition, specifically the copper, iron, zinc, and sulfur content of PM2,5.

Methods: We focused on analyses of health effects of air pollutants at low concentrations, defined as less than current European Union (EU) Limit Values, U.S. Environmental Protection Agency (U.S. EPA), National Ambient Air Quality Standards (NAAQS), and/or World Health Organization (WHO) Air Quality Guideline values for PM2.5, NO2, and O3. We address the health effects at low air pollution levels by performing new analyses within selected cohorts of the ESCAPE study (European Study of Cohorts for Air Pollution Effects; Beelen et al. 2014a) and within seven very large European administrative cohorts. By combining well-characterized ESCAPE cohorts and large administrative cohorts in one study the strengths and weaknesses of each approach can be addressed. The large administrative cohorts are more representative of national or citywide populations, have higher statistical power, and can efficiently control for area-level confounders, but have fewer possibilities to control for individual-level confounders. The ESCAPE cohorts have detailed information on individual confounders, as well as country-specific information on area-level confounding. The data from the seven included ESCAPE cohorts and one additional non-ESCAPE cohort have been pooled and analyzed centrally. More than 300,000 adults were included in the pooled cohort from existing cohorts in Sweden, Denmark, Germany, the Netherlands, Austria, France, and Italy. Data from the administrative cohorts have been analyzed locally, without transfer to a central database. Privacy regulations prevented transfer of data from administrative cohorts to a central database. More than 28 million adults were included from national administrative cohorts in Belgium, Denmark, England, the Netherlands, Norway, and Switzerland as well as an administrative cohort in Rome, Italy. We developed central exposure assessment using Europewide hybrid land use regression (LUR) models, which incorporated European routine monitoring data for PM2.5, NO2, and O3, and ESCAPE monitoring data for BC and PM2.5 composition, land use, and traffic data supplemented with satellite observations and chemical transport model estimates. For all pollutants, we assessed exposure at a fine spatial scale, 100 × 100 m grids. These models have been applied to individual addresses of all cohorts including the administrative cohorts. In sensitivity analyses, we applied the PM2.5 models developed within the companion HEI-funded Canadian MAPLE study (Brauer et al. 2019) and O3 exposures on a larger spatial scale for comparison with previous studies. Identification of outcomes included linkage with mortality, cancer incidence, hospital discharge registries, and physician-based adjudication of cases. We analyzed natural-cause, cardiovascular, ischemic heart disease, stroke, diabetes, cardiometabolic, respiratory, and COPD mortality. We also analyzed lung cancer incidence, incidence of coronary and cerebrovascular events, and incidence of asthma and COPD (pooled cohort only). We applied the Cox proportional hazard model with increasing control for individual- and area-level covariates to analyze the associations between air pollution and mortality and/or morbidity for both the pooled cohort and the individual administrative cohorts. Age was used as the timescale because of evidence that this results in better adjustment for potential confounding by age. Censoring occurred at the time of the event of interest, death from other causes, emigration, loss to follow-up for other reasons, or at the end of follow-up, whichever came first. A priori we specified three confounder models, following the modeling methods of the ESCAPE study. Model 1 included only age (time axis), sex (as strata), and calendar year of enrollment. Model 2 added individual-level variables that were consistently available in the cohorts contributing to the pooled cohort or all variables available in the administrative cohorts, respectively. Model 3 further added area-level socioeconomic status (SES) variables. A priori model 3 was selected as the main model. All analyses in the pooled cohort were stratified by subcohort. All analyses in the administrative cohorts accounted for clustering of the data in neighborhoods by adjusting the variance of the effect estimates. The main exposure variable we analyzed was derived from the Europewide hybrid models based on 2010 monitoring data. Sensitivity analyses were conducted using earlier time periods, time-varying exposure analyses, local exposure models, and the PM2.5 models from the Canadian MAPLE project. We first specified linear single-pollutant models. Two-pollutant models were specified for all combinations of the four main pollutants. Two-pollutant models for particle composition were analyzed with PM2.5 and NO2 as the second pollutant. We then investigated the shape of the concentration-response function using natural splines with two, three, and four degrees of freedom; penalized splines with the degrees of freedom determined by the algorithm and shape-constrained health impact functions (SCHIF) using confounder model 3. Additionally, we specified linear models in subsets of the concentration range, defined by removing concentrations above a certain value from the analysis, such as for PM2.5 25 μg/m3 (EU limit value), 20, 15, 12 μg/m3 (U.S. EPA National Ambient Air Quality Standard), and 10 μg/m3 (WHO Air Quality Guideline value). Finally, threshold models were evaluated to investigate whether the associations persisted below specific concentration values. For PM2.5, we evaluated 10, 7.5, and 5 μg/m3 as potential thresholds. Performance of threshold models versus the corresponding no-threshold linear model were evaluated using the Akaike information criterion (AIC).

Results: In the pooled cohort, virtually all subjects in 2010 had PM2.5 and NO2 annual average exposures below the EU limit values (25 μg/m3 and 40 μg/m3, respectively). More than 50,000 had a residential PM2.5 exposure below the U.S. EPA NAAQS (12 μg/m3). More than 25,000 subjects had a residential PM2.5 exposure below the WHO guideline (10 μg/m3). We found significant positive associations between PM2.5, NO2, and BC and natural-cause, respiratory, cardiovascular, and diabetes mortality. In our main model, the hazard ratios (HRs) (95% [confidence interval] CI) were 1.13 (CI = 1.11, 1.16) for an increase of 5 μg/m3 PM2.5, 1.09 (CI = 1.07, 1.10) for an increase of 10 μg/m3 NO2, and 1.08 (CI = 1.06, 1.10) for an increase of 0.5 × 10-5/m BC for natural-cause mortality. The highest HRs were found for diabetes mortality. Associations with O3 were negative, both in the fine spatial scale of the main ELAPSE model and in large spatial scale exposure models. For PM2.5, NO2, and BC, we generally observed a supralinear association with steeper slopes at low exposures and no evidence of a concentration below which no association was found. Subset analyses further confirmed that these associations remained at low levels: below 10 μg/m3 for PM2.5 and 20 μg/m3 for NO2. HRs were similar to the full cohort HRs for subjects with exposures below the EU limit values for PM2.5 and NO2, the U.S. NAAQS values for PM2.5, and the WHO guidelines for PM2.5 and NO2. The mortality associations were robust to alternative specifications of exposure, including different time periods, PM2.5 from the MAPLE project, and estimates from the local ESCAPE model. Time-varying exposure natural spline analyses confirmed associations at low pollution levels. HRs in two-pollutant models were attenuated but remained elevated and statistically significant for PM2.5 and NO2. In two-pollutant models of PM2.5 and NO2 HRs for natural-cause mortality were 1.08 (CI = 1.05, 1.11) for PM2.5 and 1.05 (CI = 1.03, 1.07) for NO2. Associations with O3 were attenuated but remained negative in two-pollutant models with NO2, BC, and PM2.5. We found significant positive associations between PM2.5, NO2, and BC and incidence of stroke and asthma and COPD hospital admissions. Furthermore, NO2 was significantly related to acute coronary heart disease and PM2.5 was significantly related to lung cancer incidence. We generally observed linear to supralinear associations with no evidence of a threshold, with the exception of the association between NO2 and acute coronary heart disease, which was sublinear. Subset analyses documented that associations remained even with PM2.5 below 20 μg/m3 and possibly 12 μg/m3. Associations remained even when NO2 was below 30 μg/m3 and in some cases 20 μg/m3. In two-pollutant models, NO2 was most consistently associated with acute coronary heart disease, stroke, asthma, and COPD hospital admissions. PM2.5 was not associated with these outcomes in two-pollutant models with NO2. PM2.5 was the only pollutant that was associated with lung cancer incidence in two-pollutant models. Associations with O3 were negative though generally not statistically significant. In the administrative cohorts, virtually all subjects in 2010 had PM2.5 and NO2 annual average exposures below the EU limit values. More than 3.9 million subjects had a residential PM2.5 exposure below the U.S. EPA NAAQS (12 μg/m3) and more than 1.9 million had residential PM2.5 exposures below the WHO guideline (10 μg/m3). We found significant positive associations between PM2.5, NO2, and BC and natural-cause, respiratory, cardiovascular, and lung cancer mortality, with moderate to high heterogeneity between cohorts. We found positive but statistically nonsignificant associations with diabetes mortality. In our main model meta-analysis, the HRs (95% CI) for natural-cause mortality were 1.05 (CI = 1.02, 1.09) for an increase of 5 μg/m3 PM2.5, 1.04 (CI = 1.02, 1.07) for an increase of 10 μg/m3 NO2, and 1.04 (CI = 1.02, 1.06) for an increase of 0.5 × 10-5/m BC, and 0.95 (CI = 0.93, 0.98) for an increase of 10 μg/m3 O3. The shape of the concentration-response functions differed between cohorts, though the associations were generally linear to supralinear, with no indication of a level below which no associations were found. Subset analyses documented that these associations remained at low levels: below 10 μg/m3 for PM2.5 and 20 μg/m3 for NO2. BC and NO2 remained significantly associated with mortality in two-pollutant models with PM2.5 and O3. The PM2.5 HR attenuated to unity in a two-pollutant model with NO2. The negative O3 association was attenuated to unity and became nonsignificant. The mortality associations were robust to alternative specifications of exposure, including time-varying exposure analyses. Time-varying exposure natural spline analyses confirmed associations at low pollution levels. Effect estimates in the youngest participants (<65 years at baseline) were much larger than in the elderly (>65 years at baseline). Effect estimates obtained with the ELAPSE PM2.5 model did not differ from the MAPLE PM2.5 model on average, but in individual cohorts, substantial differences were found.

Conclusions: Long-term exposure to PM2.5, NO2, and BC was positively associated with natural-cause and cause-specific mortality in the pooled cohort and the administrative cohorts. Associations were found well below current limit values and guidelines for PM2.5 and NO2. Associations tended to be supralinear, with steeper slopes at low exposures with no indication of a threshold. Two-pollutant models documented the importance of characterizing the ambient mixture with both NO2 and PM2.5. We mostly found negative associations with O3. In two-pollutant models with NO2, the negative associations with O3 were attenuated to essentially unity in the mortality analysis of the administrative cohorts and the incidence analyses in the pooled cohort. In the mortality analysis of the pooled cohort, significant negative associations with O3 remained in two-pollutant models. Long-term exposure to PM2.5, NO2, and BC was also positively associated with morbidity outcomes in the pooled cohort. For stroke, asthma, and COPD, positive associations were found for PM2.5, NO2, and BC. For acute coronary heart disease, an increased HR was observed for NO2. For lung cancer, an increased HR was found only for PM2.5. Associations mostly showed steeper slopes at low exposures with no indication of a threshold.

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