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ORIGINAL ARTICLE Long-Term Exposure to Outdoor Air Pollution and Incidence of Cardiovascular Diseases Richard W. Atkinson,a Iain M. Carey,a Andrew J. Kent,b Tjeerd P. van Staa,c H. Ross Anderson,d and Derek G. Cooka Background: Evidence based largely on US cohorts suggests that long-term exposure to fine particulate matter is associated with cardiovascular mortality. There is less evidence for other pollutants and for cardiovascular morbidity. By using a cohort of 836,557 patients age 40 to 89 years registered with 205 English general practices in 2003, we investigated relationships between ambient outdoor air pollution and incident myocardial infarction, stroke, arrhythmia, and heart failure over a 5-year period. Methods: Events were identified from primary care records, hospital admissions, and death certificates. Annual average concentrations in 2002 for particulate matter with a median aerodynamic diameter <10 (PM10) and <2.5 microns, nitrogen dioxide (NO2), ozone, and sulfur dioxide at a 1 × 1 km resolution were derived from emission-based models and linked to residential postcode. Analyses were performed using Cox proportional hazards models adjusting for relevant confounders, including social and economic deprivation and smoking. Results: While evidence was weak for relationships with myocardial infarction, stroke, or arrhythmia, we found consistent associations between pollutant concentrations and incident cases of heart failure. An interquartile range change in PM10 and in NO2 (3.0 and 10.7 µg/ m3, respectively) both produced a hazard ratio of 1.06 (95% confidence interval = 1.01–1.11) after adjustment for confounders. There was some evidence that these effects were greater in more affluent areas. Conclusions: This study of an English national cohort found evidence linking long-term exposure to particulate matter and NO2 with Submitted 25 October 2011; accepted 27 July 2012. From the aDivision of Population Health Sciences and Education and MRCHPA Centre for Environment and Health, St George’s, University of London, London, United Kingdom; bAEA Technology plc, Harwell IBC, Didcot, Oxfordshire, United Kingdom; cClinical Practice Research Datalink, Medicines and Healthcare Products Regulatory Agency, London, United Kingdom; and dMRC-HPA Centre for Environment and Health, King’s College London, London, United Kingdom. Supported by funding from Policy Research Programme in the Department of Health. The authors report no conflict of interests. Supplemental digital content is available through direct URL citations in the HTML and PDF versions of this article (www.epidem.com). This content is not peer-reviewed or copy-edited; it is the sole responsibility of the author. Correspondence: Richard W. Atkinson, Division of Population Health Sciences and Education and MRC-HPA Centre for Environment and Health, St George’s, University of London, Cranmer Terrace, London SW17 0RE, United Kingdom. E-mail: [email protected]. Copyright © 2012 by Lippincott William and Wilkins ISSN: 1044-3983/13/2401-0044 DOI: 10.1097/EDE.0b013e318276ccb8 44 | www.epidem.com the development of heart failure. We did not, however, replicate associations for other cardiovascular outcomes that have been reported elsewhere. (Epidemiology 2013;24: 44–53) E xposure to outdoor particulate air pollution is believed to be associated with cardiovascular disease (CVD) mortality and morbidity.1,2 Mechanistic studies have suggested a number of potential pathways from exposure to disease, including release of proinflammatory mediators, changes to the systemic autonomic nervous system balance, and translocation of particles or particle constituents into the circulation.2 Epidemiologic evidence for adverse health effects comes from studies of exposure over short (hours to days) and long (eg, a few years) periods. Evidence for the latter is provided by cohort studies, most of which have focused on all-cause and cardiopulmonary mortality. Exposure estimates for cohort members have been derived from average concentrations of fine particles derived from fixed-site community monitors3–10 or have used spatial modeling techniques to estimate exposure on a finer spatial scale.11–17 Studies of CVD mortality report positive associations with fine particles.10,18–21 Only a few studies have included nonfatal outcomes (such as hospitalization) in their identification of incident events.13–16,20 Furthermore, only a small number of studies have considered other regulated pollutants such as nitrogen dioxide (NO2), ozone, and sulfur dioxide (SO2) in relation to CVD with less consistent results.22,23 We investigated the associations between long-term exposure to a number of ambient outdoor air pollutants and the incidence of a range of CVD events using a national cohort of English adults registered with their general practitioner. Linkage of primary care records to national registers of hospital admissions and mortality records, together with small-area measures of social and economic deprivation, maximized case identification and control for important confounders. Annual concentrations of a range of pollutants at a 1 × 1 km grid spatial resolution were derived from national models that incorporate distant, point, and local sources.24 Epidemiology • Volume 24, Number 1, January 2013 Epidemiology • Volume 24, Number 1, January 2013 METHODS Data Sources Clinical Practice Research Datalink The Clinical Practice Research Datalink (formerly the General Practice Research Database) is a large validated primary care database that has been collecting anonymized patient data from participating UK general (family) practices since 1987.25 As of 2010, it represents approximately 8% of the UK population of which 98% is believed to be registered with a general practitioner. It includes a full longitudinal medical record for each patient, with information on diagnoses, prescriptions, and tests performed within the practice and information from outside sources such as outpatient consultations and admissions to hospital. Hospital Episode Statistics and Death Registration Data Details on every hospital admission in the United Kingdom were provided by the Hospital Episode Statistics database. This system records clinical, patient, administrative, and geographical information on all National Health Service (NHS) funded inpatient episodes. Death registration data are processed by the Office for National Statistics in the United Kingdom. Details recorded include age, sex, address, and both the immediate and underlying causes of death coded according to the International Classification of Diseases (ICD). Subject to the practice’s approval, the Clinical Practice Research Datalink patients are linked to both Hospital Episode Statistics and Office for National Statistics data by a “trusted third party” using their NHS number, sex, date of birth, and postcode. As of 2010, this linkage has been performed for 224 Clinical Practice Research Datalink practices (approximately 40% of all practices). Study Group Eligibility We selected 205 English practices that, by 1 January 2003, (1) were recording data that were deemed to be “Upto-Standard” (an internal Clinical Practice Research Datalink quality control metric indicating the date from which a practice was continually recording high-quality data), and (2) had linked hospital admission and mortality data available from this date. From these practices, we identified a cohort of patients who were between the age of 40 and 89 years in 2003, were fully registered on 1 January 2003, and had been continually so for 12 months. This resulted in 836,557 patients eligible for our study. Outcomes An incident event was defined as the first event occurring between 2003 and 2007 recorded on any of our three data sources: Clinical Practice Research Datalink (Read codes), Hospital Episode Statistics (ICD codes), and Office for National Statistics mortality (ICD codes). The main conditions © 2012 Lippincott Williams & Wilkins Air Pollution and Incidence of Cardiovascular Disease and their ICD-10 codes were coronary heart disease (CHD), I20-25; myocardial infarction (MI), I21-23; cerebrovascular disease, I60-69; stroke, I61, I63-64; arrhythmias, including cardiac arrest, I46-49, R00.1; and heart failure, I50. These were manually mapped to corresponding Read codes (list available from authors). Patients with disease recorded before 1 January 2003 (or with no date attached to the code) were excluded from the analysis for that outcome. Thus, a patient with angina first recorded in 2000 would still be eligible for analyses of MI and other outcomes. Air Pollution Annual mean concentrations of particles with a median aerodynamic diameter of <10 μm (particulate matter, PM10) and <2.5 μm (PM2.5), SO2, NO2, and ozone (O3) for 1 × 1 km grids covering England were estimated using air dispersion models. Details of the modeling methodology are given in the eAppendix (http://links.lww.com/EDE/A628). In brief, we constructed the models for PM10, PM2.5, NO2, and SO2 by identifying all known emission sources by emission sector (eg, power generation, domestic combustion, road traffic, industry, waste) and estimating quantities of emissions. Pollution concentrations were calculated by summing the estimated concentrations for pollutant-specific components from distant sources (characterized by rural background concentrations, interpolated from rural measurements), point sources (calculated using an air dispersion model), and local area sources (calculated using a kernel-based air dispersion model) including the effect of weather conditions. O3 maps were constructed by interpolating data from rural monitoring stations and adjusting for effects of altitude and NOx emissions in urban areas by using the concentrations calculated with the air dispersion models. Model validation was assessed using data from the national air quality monitoring networks (also used in the global calibration of the model) and from a separate network of monitors also yielding high-quality data (verification sites). Further details are given in the eAppendix (http://links.lww. com/EDE/A628). In brief, model validation was good for NO2 (eg, in 2002, the R2 statistics were 0.80 for the national network sites and 0.57 for the verification sites). For PM10, there was moderate agreement (R2 = 0.29 for national network sites and R2 = 0.46 for verification sites in 2002). Model performance statistics for PM2.5 were not available for 2002 (because of the paucity of monitoring data available at that time), but in later years, the performance was good (eg, in 2008, R2 statistic of 0.5 at six verification sites). Concentrations of PM10 and PM2.5 were highly correlated (r > 0.9). Therefore, to simplify the presentation of our findings, we report results for PM10 in the article and present results for PM2.5 in the eTables (http:// links.lww.com/EDE/A628). For SO2, however, the validation was moderate to poor and varied substantially from year to year (from 2002 to 2006, the R2 statistics varied from 0.23 to 0.45 at national network sites and 0 to 0.6 at the verification www.epidem.com | 45 Atkinson et al sites). Modeled ozone concentrations were verified using the number of days exceeding 120 μg/m3. R2 statistics at national network sites and verification sites for the period 2002 to 2004 were 0.71 and 0.48, demonstrating good to reasonable model performance. Data Linkage Annual pollution concentrations for each 1 × 1 km grid were linked to the patients’ residential postcodes in the Clinical Practice Research Datalink by a “trusted third party” to ensure anonymity. In England, the 1.4 million active postcodes vary geographically in size but identify on average about 15 residential addresses. The centroid of each postcode was mapped to the nearest centroid of each 1 × 1 km grid. Across the 205 practices, the number of 1 × 1 km grids with a registered patient ranged from 27 to 252. Covariates We extracted the following patient information from the Clinical Practice Research Datalink to be used as covariates in our models: age, sex, smoking, body mass index (BMI), diabetes, and hypertension. All covariates had to be recorded by the start of follow-up (1 January 2003). Practice location was designated as being in the North or South or in Greater London. Socioeconomic status was assessed by using the Index of Multiple Deprivation 2007, a composite small-area (approximately 1500 people) measure of deprivation used in England for allocation of resources.26 The published index was constructed by a weighted score of seven domains: income, employment, health deprivation and disability, education skills and training, barriers to housing and services, crime, and living environment. Because the living environment domain contains a subdomain relating to air quality, we recalculated the overall index excluding this domain. We then reranked areas nationally and summarized them as deciles. Statistical Analyses We used Cox proportional hazards models (PROC PHREG in SAS version 9.1.3; SAS Institute, Cary, NC) to investigate the association between outcome and air pollution. Time to event was modeled in months, and patients were censored if they deregistered from the practice (or died) without experiencing an event before 31 December 2007. We considered two approaches to modeling pollution: a fixed level (2002) and a varying time-dependent covariate (based on previous years’ exposure). In the models, we adjusted cumulatively for the following: (1) age and sex; (2) smoking, BMI, diabetes, and hypertension; and (3) Index of Multiple Deprivation. To allow comparison across pollutants, hazard ratios (HRs) were calculated for an interquartile range (IQR) change in each pollutant (given in Table 1). Air pollutants were modeled individually and in pairs in two-pollutant models. To investigate the clustering impact of air pollution levels within practice, we calculated intraclass correlation 46 | www.epidem.com Epidemiology • Volume 24, Number 1, January 2013 coefficients. In the Cox models, we accounted for practice in two ways. First, we used a robust sandwich estimate for the covariance matrix, which results in robust standard errors for the effect estimates. Second, we added to the full model a term for “practice mean exposure,” which allows us to derive the contribution of between- and within-exposure to the overall effect.27 RESULTS Air Pollution Linkage Successful postcode linkage was made for approximately 99% of patients in our cohort for all pollutants of interest (Table 1). Annual mean concentrations of PM10 and NO2 were higher in London than the rest of the country, whereas SO2 was highest in the North. PM10, SO2, and NO2 were all associated with greater deprivation (Fig. 1), whereas O3 was higher in more affluent areas. The pattern of higher concentrations with increasing deprivation was seen in the North and London, but there was no such trend in the South (eTable 3, http://links.lww. com/EDE/A628). Descriptive statistics for PM2.5 are shown in eTable 4 (http://links.lww.com/EDE/A628). Among patients with assigned exposure, the two pollutants most closely related were PM10 and NO2 (positive correlation r = 0.86). O3 was negatively correlated with PM10, SO2, and NO2. Practice was a strong determinant in explaining the amount of variation in pollutant concentrations seen between patients in the cohort (intraclass correlation coefficients in Table 1). For example, 94% of variation for O3 and 77% of variation for SO2 were caused by between-practice differences. Incidence of Cardiovascular Events A summary of the incident recording of MI, stroke, heart failure, and arrhythmia events is presented in Table 2. For example, for incident MIs, 25,871 patients (3.1%) already had an MI recorded by 1 January 2003 and therefore were excluded from the analyses of incident MI. Among the 810,686 eligible patients, 13,956 (1.7%) had a first MI recorded in 2003 to 2007. Men were more likely than women to experience an MI, arrhythmia, or heart failure; for stroke, rates were similar. There were strong effects of geography and deprivation, with those in the North and more deprived areas experiencing a greater rate of disease (eg, for MIs, those in the North had an incidence of 2.1% vs. 1.6% in the South; for the most deprived, it was 2.4% vs. 1.4% for the least deprived). Effects of Air Pollution The associations between assigned air pollution exposure (for IQR changes in concentrations during 2002) and 5-year incidence of disease (2003–2007) are quantified in a series of HRs in Table 3 (results scaled to 10 µg/m3 are given in eTable 5, http://links.lww.com/EDE/A628). The strongest associations with pollution were seen for heart failure. © 2012 Lippincott Williams & Wilkins Epidemiology • Volume 24, Number 1, January 2013 Air Pollution and Incidence of Cardiovascular Disease TABLE 1. Summary of Assigned Pollutant Levels in 2002 for Study Cohort (n = 836,557) Assigned Pollutant Exposure in 2002 Patients with linkage, no. (%) Pollution level (µg/m3) Mean (SD) Range Interquartile range Region (no. of practices); mean (SD) North (n = 81) South (excluding London, n = 96) London (n = 28) Practice in urban area (no. of practices); mean (SD) Yes (n = 173) No (n = 32) Deprivation (modified IMD) quintile; mean (SD) 1 (most deprived) 2 3 4 5 (least deprived) Correlationa with future years exposure 2003 2004 2005 2006 Correlationa with other pollutants NO2 SO2 O3 Intraclass correlation (ICC) by practice PM10 NO2 SO2 O3 831,788 (99) 831,375 (99) 824,388 (99) 825,598 (99) 19.7 (2.3) 10.6–29.8 3.0 22.5 (7.4) 1.7–60.8 10.7 3.9 (2.1) 0.03–24.2 2.2 51.7 (2.4) 44.0–66.2 3.0 19.8 (2.3) 19.1 (2.0) 22.5 (1.2) 23.4 (6.3) 19.4 (6.1) 33.3 (4.5) 4.8 (2.1) 3.3 (1.9) 3.8 (1.2) 50.9 (2.4) 52.6 (2.2) 50.2 (0.8) 20.1 (2.2) 17.7 (1.9) 23.6 (7.0) 16.1 (6.2) 4.0 (2.0) 3.5 (2.6) 51.5 (2.2) 52.3 (3.2) 21.0 (2.4) 20.2 (2.5) 19.4 (2.5) 19.3 (2.2) 19.5 (1.7) 26.6 (7.1) 23.7 (7.8) 21.4 (7.9) 21.0 (7.0) 21.9 (6.1) 4.4 (2.3) 4.4 (2.5) 3.8 (2.2) 3.7 (1.9) 3.6 (1.5) 51.1 (2.2) 51.2 (2.2) 51.8 (2.6) 51.7 (2.5) 52.0 (2.1) 0.92 0.91 0.84 0.85 0.98 0.97 0.97 0.97 0.81 0.67 0.68 0.61 0.63 0.55 0.56 n/a 0.86 0.52 –0.44 0.87 — 0.50 –0.48 0.90 — — –0.45 0.77 — — — 0.94 a Spearman’s rank correlation coefficient. FIGURE 1. A–D, Assigned exposure in all patients (n = 836,557) by quintiles of age-sex adjusted (modified) Index of Multiple Deprivation (IMD). © 2012 Lippincott Williams & Wilkins www.epidem.com | 47 Epidemiology • Volume 24, Number 1, January 2013 Atkinson et al TABLE 2. Incidence of MI, Stroke, Arrhythmias, and Heart Failure 2003–2007 MI (n = 810,686) Baseline Variables Stroke (n = 819,370) Arrhythmias (n = 790,751) Heart failure (n = 810,188) All Patientsa No. No. Incidenceb % No. Incidenceb % No. Incidenceb % No. Incidenceb % 836,557 13,956 1.72 13,012 1.59 21,720 2.75 12,851 1.59 405,169 431,388 8,471 5,485 2.27 1.33 6,267 6,745 1.63 1.64 11,209 10,511 3.14 2.73 6,712 6,139 1.83 1.58 242,576 228,234 166,015 128,305 71,427 927 2,178 2,924 4,289 3,638 0.38 0.98 1.86 3.64 5.59 478 1,295 2,409 4,428 4,402 0.20 0.57 1.48 3.63 6.70 1,427 2,905 4,725 7,417 5,246 0.59 1.30 3.02 6.61 9.22 293 878 2,085 4,615 4,980 0.12 0.39 1.30 3.90 8.22 396,647 151,974 161,513 126,423 303,327 5,293 3,307 3,518 1,838 4,181 1.47 2.67 1.93 1.48 1.63 5,681 3,049 2,565 1,717 4,238 1.49 2.14 1.70 1.44 1.58 10,294 5,624 3,457 2,345 6,869 2.95 2.93 3.44 2.09 2.74 5,329 3,625 2,310 1,587 3,551 1.48 2.10 2.10 1.34 1.40 243,556 109,104 180,570 4,702 2,185 2,888 1.88 2.28 1.60 4,236 1,899 2,639 1.68 1.91 1.52 7,330 3,924 3,597 3.12 4.22 2.22 4,194 2,570 2,536 1.74 2.90 1.47 808,737 27,820 12,620 1,336 1.69 4.02 11,897 1,115 1.58 3.06 20,458 1,262 2.90 3.71 11,366 1,485 1.59 4.13 125,125 711,362 9,756 4,200 1.62 2.60 8,638 4,374 1.46 2.32 14,819 6,901 2.59 4.25 8,060 4,791 1.46 2.56 103,191 146,811 171,437 208,859 205,309 2,343 2,823 2,937 3,234 2,605 2.39 2.01 1.79 1.65 1.43 2,097 2,548 2,748 3,040 2,564 2.09 1.76 1.65 1.54 1.43 2,847 3,967 4,488 5,392 4,997 3.04 2.96 2.89 2.91 2.90 2,109 2,646 2,778 2,983 2,327 2.20 1.92 1.74 1.58 1.37 320,154 424,411 91,992 6,082 6,652 1,222 2.05 1.63 1.52 5,483 6,371 1,158 1.83 1.53 1.45 8,647 11,088 1,985 3.07 2.89 2.64 5,404 6,132 1,315 1.91 1.54 1.73 All patients Sex Men Women Age in 2003 (in years) 40–49 50–59 60–69 70–79 80–89 Smoking Nonsmoker Ex-smoker Current smoker Unknown BMI (kg/m2) <25 25–30 >30 Unknown Diabetes No Yes Hypertension No Yes Modified IMD Quintile 1 (most) 2 3 4 5 (least) Practice Region North South (excluding London) London a All patients refers to all patients in cohort before exclusions are made for existing disease at baseline (MI n=25,871, 3.1%; Stroke n=17,187, 2.1%; Arrhythmias n=45,806, 5.5%; Heart Failure n=26,369, 3.2%). Each of the columns for the diseases is based on patients without the existing disease only. b Adjusted for age and sex. For example, IQR changes in PM10 (3.0 µg/m3) and NO2 (10.7 µg/m3) were both associated with 11% increases in heart failure. These associations were reduced when adjusted for smoking and BMI and further reduced with adjustment for the Index of Multiple Deprivation (HR = 1.06 [95% confidence interval {CI} = 1.01–1.11] for both PM10 and NO2). HRs and 95% CIs for PM2.5 were similar to those for PM10 (eTable 6, http://links.lww.com/EDE/A628). 48 | www.epidem.com The evidence for associations of PM10 and NO2 with incident MI, stroke, or arrhythmias was weak both before and after adjustment for potential confounders. By contrast, SO2 maintained an association with MIs even after adjustment for the Index of Multiple Deprivation (1.05 [1.02–1.07] for a 2.2µg/m3 increment in SO2). O3 tended to show negative associations with the outcomes, which lessened with adjustment, although heart failure persisted (6% lower risk with a 3-µg/m3 © 2012 Lippincott Williams & Wilkins Epidemiology • Volume 24, Number 1, January 2013 Air Pollution and Incidence of Cardiovascular Disease TABLE 3. Hazard Ratiosa Summarizing the Change in Risk of Incident MI, Stroke, Arrhythmias, and Heart Failure in 2003–2007 Associated with an Interquartile Change in Each Pollutant Myocardial Inf. (n = 810,686) Stroke (n = 819,370) Arrhythmias (n = 790,751) Heart Failure (n = 810,188) Pollutant Baseline Variables HRa (95% CI) HRa (95 % CI) HRa (95% CI) HRa (95% CI) PM10 Adjusted for age and sex Further adjusted for smoking, BMI, and comorbidityb Further adjusted for (modified) IMD 1.03 1.01 0.98 (0.99–1.07) (0.98–1.05) (0.94–1.01) 1.02 1.01 0.98 (0.99–1.05) (0.98–1.04) (0.95–1.01) 1.00 1.00 0.99 (0.97–1.03) (0.97–1.03) (0.96–1.02) 1.11 1.09 1.06 (1.06–1.17) (1.05–1.14) (1.01–1.11) NO2 Adjusted for age and sex Further adjusted for smoking, BMI, and comorbidityb Further adjusted for (modified) IMD 1.04 1.02 0.98 (0.99–1.09) (0.98–1.07) (0.93–1.03) 1.04 1.03 0.99 (1.00–1.08) (0.99–1.07) (0.95–1.03) 1.00 1.00 0.99 (0.96–1.03) (0.97–1.03) (0.96–1.02) 1.11 1.10 1.06 (1.06–1.17) (1.05–1.15) (1.01–1.11) SO2 Adjusted for age and sex Further adjusted for smoking, BMI, and comorbidityb Further adjusted for (modified) IMD 1.09 1.07 1.05 (1.07–1.10) (1.04–1.10) (1.02–1.07) 1.05 1.04 1.02 (1.04–1.07) (1.02–1.07) (1.00–1.05) 1.03 1.02 1.02 (1.01–1.04) (1.00-1-04) (1.00–1.04) 1.08 1.07 1.04 (1.07–1.10) (1.03–1.10) (1.01–1.08) O3 Adjusted for age and sex Further adjusted for smoking, BMI, and comorbidityb Further adjusted for (modified) IMD 0.93 0.94 0.96 (0.90–0.96) (0.91–0.97) (0.93–1.00) 0.97 0.98 1.00 (0.94–1.01) (0.95–1.02) (0.97–1.04) 1.01 1.01 1.02 (0.98–1.05) (0.98–1.05) (0.98–1.05) 0.91 0.92 0.94 (0.87–0.95) (0.88–0.96) (0.90–0.98) a Hazard ratios refer to an IQR change in each pollutant (PM10 = 3.0 µg/m3, SO2 = 2.2 µg/m3, NO2 = 10.7 µg/m3, O3 = 3.0 µg/m3). Diabetes and hypertension. b FIGURE 2. Stratified hazard ratios from fully adjusted model for incidence of heart failure and PM10 (A), NO2 (B), SO2 (C), and O3 (D) exposure. © 2012 Lippincott Williams & Wilkins www.epidem.com | 49 Epidemiology • Volume 24, Number 1, January 2013 Atkinson et al TABLE 4. Within- and Between-Practice Hazard Ratiosa Summarizing the Change in Risk of Incident MI, Stroke, Arrhythmias, and Heart Failure in 2003–2007 From an Interquartile Change in PM10 MI (n = 810,686) Stroke (n = 819,370) Arrhythmias (n = 790,751) Heart Failure (n = 810,188) Adjustment for Modified IMD Practice Effect HRa (95 % CI) HRa (95 % CI) HRa (95 % CI) HRa (95 % CI) No No Yes Yes Within Between Within Between 1.08 0.93 1.01 0.96 (1.02–1.15) (0.86–1.00) (0.96–1.07) (0.90–1.03) 1.05 0.96 1.00 0.98 (0.97–1.13) (0.89–1.04) (0.93–1.06) (0.91–1.06) 1.01 0.98 1.01 0.98 (0.97–1.06) (0.93–1.04) (0.96–1.06) (0.93–1.04) 1.09 1.01 1.02 1.04 (1.02–1.16) (0.93–1.09) (0.96–1.09) (0.97–1.12) a All models adjusted for age, sex, smoking, BMI, diabetes and hypertension. Hazard ratios refer to an IQR change in PM10 of 3.0 µg/m3. increase). Results for the broader groups of CHD and cerebrovascular disease were similar to the respective subgroups of MI and stroke (eTable 7, http://links.lww.com/EDE/A628). Fitting a time-varying covariate for pollution in the model based on previous years’ exposure through the study made no appreciable difference to our results (data not shown). We also investigated the robustness of effect sizes to adjustment for other pollutants (eTable 8, http://links.lww.com/EDE/A628). The full model effects of a 6% increase in heart failure for an IQR change in PM10 and NO2 were reduced to 5% when SO2 was added to the model and to 3 to 4% when O3 was added. The negative associations with O3 moved toward unity with adjustment for all pollutants. Effect Modification Figure 2 shows the results from fitting the fully adjusted model for heart failure for all pollutants stratified by sex, age, BMI, smoking, Index of Multiple Deprivation, and region. For PM10, NO2, and SO2, associations tended to increase as the level of deprivation decreased. The pattern among other stratified variables was less clear, although patients with BMI > 30 and ex-smokers had smaller associations for all pollutants. There was some variation in the effect size of the associations by geography; larger associations were seen in the South than in the North. Within London practices, associations were greater (except for NO2), although CIs were wide. Clustering Effect of Practice We investigated the influence of practice by partitioning the HR into between- and within-practice estimates. Table 4 shows the results of doing this for PM10 in models with and without adjustment for Index of Multiple Deprivation. In the model not adjusting for the Index of Multiple Deprivation, positive associations are seen within practice (ie, 8% increase in MIs per IQR increase in PM10, which contrasts with negative associations between practice [7% decrease in MIs per IQR increase in PM10]). The adjustment for the Index of Multiple Deprivation brings these divergent associations much closer together, removing most of the within-practice effects. A similar pattern was noted with the other pollutants (data not shown). 50 | www.epidem.com DISCUSSION In this large, population-based cohort study, we found inconsistent evidence to support the hypothesis that longterm exposure to particulate air pollution was associated with increased incidence of CVD. Associations between PM and incident CHD, MI, stroke, and arrhythmias were close to unity but increased for heart failure. Increased incidence of heart failure was also positively associated with NO2 and SO2. Our study is the first to investigate the long-term effects of air pollution on the development of CVD in a large UK population incorporating individual risk factors. Previously, Elliot et al28 reported positive associations between black smoke and SO2 and subsequent mortality in Great Britain using small-area population and socioeconomic status statistics, but lacking data on individual risk factors. More recently, a large representative study of the UK population reported on long-term effects in relation to the prevalence of CHD and found small associations with PM10.29 Air Pollution Exposure Assignment In our study, pollution estimates for 1 × 1 km grids across England (mapped to residents’ postcodes) were estimated using pollution emission inventories and meteorological information combined with air dispersion models. Dispersion models, together with land-use-regression models that predict pollution concentrations at a given site based on surrounding land use and traffic characteristics, provide improvements on methods that assign exposure using measurements from the nearest monitor.21 It has been suggested that dispersion models are more sophisticated and reliable than land-useregression models in intraurban settings.30 The key advantage of dispersion models over other approaches is that they provide a better representation of the process under study.30 However, they are more expensive to implement because of their substantial data requirements.30 A comparison of the performance of land-use-regression and dispersion models in predicting annual NO2 concentrations in the Netherlands concluded there was moderate agreement between the methods.31 Furthermore, the performance of our models was comparable to the land-use-regression data available for the United Kingdom.32,33 © 2012 Lippincott Williams & Wilkins Epidemiology • Volume 24, Number 1, January 2013 In our study, the validity of the modeled exposure data varied among the pollutants and from year to year (R2 statistics for each pollutant for years 2002–2007 are given in the eAppendix, http://links.lww.com/EDE/A628), both in relation to the national network sites and the smaller number of verification sites. Although the R2 values based on verification sites provide the strongest indication of the performance of the model, the manner in which the national network data are used in the calibration process does not preclude the national network sites from providing some indication of model performance. The difficulty in modeling PM is well established33 because of the complexity of the PM mixture for example. The removal of sulfur from petrol and diesel as a result of European Union legislation and the move away from coal to gas and electricity for domestic and industrial use have caused SO2 levels to fall substantially in the last 50 years, making them harder to model.32 Our validation statistics for PM10 and SO2 were broadly similar to UK estimates derived using land-use-regression models for PM10 concentrations in 200133 and SO2 concentrations in 1991.32 Nonetheless, we believe the poorer model performance for PM10 and SO2 relative to NO2 should be a consideration in the overall assessment of our results. Despite the year-to-year variability in the validation R2 statistics, our sensitivity analysis demonstrated that the estimated HRs were robust to the choice of exposure year. Furthermore, a time-varying-exposure survival model gave results comparable to those derived from 2002 data alone (data not shown). We are therefore confident in the choice of 2002 as the exposure period used for our study, despite the lower R2 statistics compared with other years. Misclassification of grid square pollutant concentration by the model is only one potential source of error in our exposure assignment. Another is misclassification of personal exposure arising from the use of exposures based solely on residential address, rather than monitored personal exposure (from other sources such as indoor or workplace). We acknowledge these weaknesses in our study, but note that it is likely that this type of measurement error would bias effect estimates toward the null.34 However, we were able to demonstrate robust associations between all pollutants and incidence of heart failure. Studies of PM and Cardiovascular Events Evidence linking PM to the incidence of both fatal and nonfatal CVD in large population cohorts has been limited to three studies of women in the United States—the Women’s Health Initiative,20 the Nurses’ Health Study,15 and the California Teachers Study.17 All three studies identified events from a combination of questionnaires, medical records, and death registration. Miller et al20 reported an increased HR for PM10 and first cardiovascular event (MI, coronary revascularization, stroke, CHD, and cerebrovascular death) of 1.04 (95% CI = 0.95–1.12) per 10 µg/m3. For MI, the HR for PM2.5 was © 2012 Lippincott Williams & Wilkins Air Pollution and Incidence of Cardiovascular Disease 1.06 (0.85–1.34), and for stroke, 1.28 (1.02–1.61) per 10 µg/ m3 increment in PM2.5. Puett et al15 reported increased HRs for PM2.5 and PM2.5–10 for incident CHD events but with lower CIs below 1. Lipsett et al17 reported little evidence for an association between either PM10 or PM2.5 and MI incidence (HR 0.98 [0.91–1.06] and 0.98 [0.83–1.16], respectively) but a stronger association for both PM10 and PM2.5 and stroke (1.06 [1.00–1.13] and 1.14 [0.99–1.32], respectively) each per 10 µg/m3 increment. In our study of more than 800,000 English adults, we found HRs for PM10 and PM2.5 with incident CHD, MI, and stroke that were close to unity, consistent with the rather weak evidence for MI, but inconsistent with the evidence for the stronger associations for stroke reported in the studies referenced above.15,17,20 Of the many methodological differences with our work, we note that the modeled levels of particulate exposure were lower in the United Kingdom, and that these US studies were based on women alone. Although it has been suggested that the associations between PM and CHD mortality are stronger in women than in men,35 we found no evidence of this in our study. Our study found associations between the incidence of heart failure events and residential levels of PM10 and PM2.5 exposure. This finding extends previous evidence linking long-term exposure to PM and mortality from heart failure.19,36 Pope et al19 analyzed data from the American Cancer Society cohort and reported an increased HR for mortality from heart failure (including dysrhythmias and cardiac arrest) of 1.13 (95% CI = 1.05–1.21) per 10 µg/m3 increment in PM2.5. Beelen et al36 assessed the association between PM2.5 and heart failure mortality in the Netherlands Cohort Study on Diet and Cancer and reported an HR larger than ours (2.69 [95% CI = 1.37–5.27] per 10 µg/m3 increment). There is a more substantial body of evidence linking shortterm exposure to particulate air pollution and heart failure mortality and morbidity.2 Results for Gases Few studies have reported results for gaseous pollutants and cardiovascular outcomes. Miller et al20 observed positive associations with NO2, O3, and SO2, with CIs that included 1.0. Rosenlund et al37 reported positive associations between NO2 and SO2 and incident MI, again with CIs that included 1.0, in a case-control study of first-time MI cases and population controls age 45 to 70 years in Stockholm county. Gan et al16 and Rosenlund et al13 focused on traffic sources in their studies, observing positive associations between NO2 and CHD events with lower confidence limits close to 1.0. These findings are broadly consistent with the general lack of evidence for an association with NO2 and O3 in our study. Our finding of consistent associations between SO2 and increased incidence of a range of CVDs was in line with the results from the only other studies from the United Kingdom that assessed long-term exposure to air pollution and disease.28,29 SO2 has also been associated with increased numbers of deaths from www.epidem.com | 51 Atkinson et al all disease-related causes, cardiopulmonary causes, and lung cancer.3,6,21 However, given the lack of biological plausibility for health effects of low concentrations of SO2, the pollutant may simply be an indicator for combustion sources.23 In our study, we observed either negative or null associations between O3 and CVD events. Because O3 is a regional pollutant, variability in O3 concentrations is mainly between regions, with little within-practice variation. Ozone is highest in the South where disease incidence is lowest, and lowest in the North where disease incidence is highest, and therefore, regional differences are likely to explain the observed relationships. In addition, O3 has a pronounced seasonal pattern, which our annual estimates do not reflect. Stronger associations have been observed in studies using summer-only concentrations.17 However, these data were unavailable to us, which is a limitation of our study. Adjustment for Socioeconomic Status We presented estimates adjusted for our marker of socioeconomic status (modified Index of Multiple Deprivation), which had the effect of moving all associations toward the null. We think the adjustment is potentially important because it controls for many unmeasured confounders, such as diet and nutrition. However, because increasing deprivation was associated with higher levels of pollution (except ozone) in our study, there is a chance that this adjustment is removing effects of air pollution. The finer spatial resolution of the Index of Multiple Deprivation variable in some urban areas may represent fine-scale variability in the pollution levels not captured in the 1 × 1 km resolution of the pollutant estimates. Other studies have adjusted for socioeconomic status using a variety of indicators. Some used household income and reported little impact on pollutant associations.14,15,20 Others have used small-area Census-based measures of deprivation and observed increased estimates of the effects of air pollution on coronary events and mortality.13,21 Rosenlund et al13 concluded that this was likely representing an adjustment for smoking (for which they had no data) but also noted that in Rome the most affluent were living in the most polluted areas, a finding also observed in the American Cancer Society study.21 This was not the case in our study, in which PM10 concentrations generally increased with deprivation. Effect Modification We did not replicate other authors’ findings of effect modification with factors such as socioeconomic status and BMI; larger associations have been reported in the less educated15,18,38 and more obese.15,20 Instead, we tended to show the reverse, with greater overall effects seen in those who were least deprived and of normal weight. We attribute this to the fact that the region that consistently showed associations (the South) had a larger proportion of patients who were the least deprived and of normal weight (eg, Index of Multiple Deprivation least deprived quintile: 34% of patients in the South vs. 14% in the North). However, we also observed that the 52 | www.epidem.com Epidemiology • Volume 24, Number 1, January 2013 overall relationship between deprivation and pollution (the most deprived patients tended to reside in areas with higher levels of pollution) was not apparent in the South. A Swedish study of pollution and MI37 found larger effects in the better educated; the authors speculated that this may be due to the fact that in Stockholm more socioeconomically privileged people tended to live nearer the city centre. We acknowledge that the differing nature of the relationship between socioeconomic status and pollution across England may account for the geographical variations we observed. Data Sources Our study was strengthened by using three independent sources of data to identify incident events. To ensure data quality, the Clinical Practice Research Datalink protocol specifies internal checks on data continuity and completeness and provides recording guidelines to all practices that contribute data to it.25 The introduction in 2004 of the Quality and Outcomes Framework (a “pay-for-performance” contract for primary care) further improved the recording of CVD on primary care databases.39 In the United Kingdom, there is complete coverage for death registrations, admissions to NHS hospitals, and NHS-funded admissions to private hospitals. Patients from practices consenting to data linkage (approximately 40% of current practices) are representative of all Clinical Practice Research Datalink patients.40 Our analysis of these data sources suggests that studies using only hospitalization or mortality records may miss some events because of coding differences and inconsistencies among the systems (data not shown). The misclassification of events (eg, when an initial diagnosis by the general practitioner is not confirmed at admission to hospital) cannot be ruled out, however. Conclusion Our study found evidence of an association between long-term exposure to particulate pollution and NO2 with the incidence of heart failure events but not with MI, arrhythmias, or stroke. These results, from one of the few studies to be based on a whole population sample, differ from those reported from the United States and mainland Europe. Further research is required to understand the reasons for these differences. Additional verification of SO2 and PM2.5 data is required to further understand the role of these pollutants in the onset of CVD. ACKNOWLEDGMENTS The Clinical Practice Research Datalink (CPRD) is owned by the Secretary of State of the UK Department of Health and operates within the Medicine and Healthcare Products Regulatory Agency (MHRA). CPRD has received funding from the MHRA, Wellcome Trust, Medical Research Council, NIHR Health Technology Assessment Programme, Innovative Medicine Initiative, UK Department of Health, Technology Strategy Board, Seventh Framework Programme EU, various universities, contract research organizations, and pharmaceutical companies. © 2012 Lippincott Williams & Wilkins Epidemiology • Volume 24, Number 1, January 2013 REFERENCES 1. Department of Health. Cardiovascular disease and air pollution (Committee on the Medical Effects of Air Pollutants). 2006. Available at: http:// comeap.org.uk/documents/reports.html. Accessed 15 July 2011. 2. 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