Differentiating the effects of characteristics of PM pollution on mortality from ischemic and hemorrhagic strokes

Differentiating the effects of characteristics of PM pollution on mortality from ischemic and hemorrhagic strokes

Accepted Manuscript Title: Differentiating the effects of characteristics of PM pollution on mortality from ischemic and hemorrhagic strokes Author: H...

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Accepted Manuscript Title: Differentiating the effects of characteristics of PM pollution on mortality from ischemic and hemorrhagic strokes Author: Hualiang Lin Jun Tao Yaodong Du Tao Liu Zhengmin Qian Linwei Tian Qian Di Weilin Zeng Jianpeng Xiao Lingchuan Guo Xing Li Yanjun Xu Wenjun Ma PII: DOI: Reference:

S1438-4639(15)00152-2 http://dx.doi.org/doi:10.1016/j.ijheh.2015.11.002 IJHEH 12886

To appear in: Received date: Revised date: Accepted date:

4-7-2015 13-11-2015 14-11-2015

Please cite this article as: Lin, H., Tao, J., Du, Y., Liu, T., Qian, Z., Tian, L., Di, Q., Zeng, W., Xiao, J., Guo, L., Li, X., Xu, Y., Ma, W.,Differentiating the effects of characteristics of PM pollution on mortality from ischemic and hemorrhagic strokes, International Journal of Hygiene and Environmental Health (2015), http://dx.doi.org/10.1016/j.ijheh.2015.11.002 This is a PDF file of an unedited manuscript that has been accepted for publication. As a service to our customers we are providing this early version of the manuscript. The manuscript will undergo copyediting, typesetting, and review of the resulting proof before it is published in its final form. Please note that during the production process errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain.

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Differentiating the effects of characteristics of PM pollution on mortality from

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ischemic and hemorrhagic strokes

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Hualiang Lin a, Jun Tao b, Yaodong Du c, Tao Liu a, Zhengmin Qian d, Linwei Tian e,

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Qian Di f, Weilin Zeng a, Jianpeng Xiao a, Lingchuan Guo a, Xing Li a, Yanjun Xu g,

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Wenjun Ma a,*

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a

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Disease Control and Prevention, Guangzhou, 511430, China

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Guangdong Provincial Institute of Public Health, Guangdong Provincial Center for

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b

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Protection, Guangzhou, China

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Guangdong Provincial Weather Center, Guangzhou, China

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Department of Epidemiology, School of Public Health, Saint Louis University, Saint

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Louis, MO, USA;

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South China Institute of Environmental Sciences, Ministry of Environmental

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School of Public Health, The University of Hong Kong, Hong Kong SAR, China

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Department of Environmental Health, Harvard School of Public Health, Boston,

USA g

Guangdong Provincial Center for Disease Control and Prevention, Guangzhou,

511430, China

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Corresponding author at: Wenjun Ma, Guangdong Provincial Institute of Public

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Health, Guangdong Provincial Center for Disease Control and Prevention, Qunxian 1

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Road, 160, Guangzhou, China. E-mail: [email protected]

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Abbreviations:

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PM: particulate matter; OC: organic carbon; EC: elemental carbon; PM10: particulate

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matter with aerodynamic diameter ≤10µm; PM2.5: particulate matter with

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aerodynamic diameter ≤2.5µm; QA: quality assurance; QC: quality control; ICD-10:

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International Classification of Diseases, Tenth Revision; SO2: sulfur dioxide; NO2:

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nitrogen dioxide; GAM: generalized additive model; PH: public holidays; DOW: day

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of the week; df: degree of freedom; ER: excess risk; CI: confidence interval; IQR:

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interquartile range.

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ABSTRACT

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Though increasing evidence supports significant association between particulate

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matter (PM) air pollution and stroke, it remains unclear what characteristics, such as

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particle size and chemical constituents, are responsible for this association. We

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investigated the association between particulate matter with different particle sizes,

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chemical constituents of fine particulate pollution and mortalities from ischemic

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stroke and hemorrhagic stroke in Guangzhou, China. A time-series model with

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quasi-Poisson function was applied to assess the association of PM pollution with

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different particle sizes and chemical constituents with mortalities from ischemic and

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hemorrhagic strokes in Guangzhou, Chinathe association of PM with different particle

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sizes and seven major PM2.5 components with mortality from overall stroke, ischemic

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stroke and hemorrhagic stroke in Guangzhou, we controlled for potential confounding

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factors in the model, such as temporal trends, day of the week, public holidays,

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meteorological factors and influenza epidemic.with adjustment for potential

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confounding factors. We found significant association between stroke mortality and various PM fractions, such as PM10, PM2.5 and PM1, with generally larger magnitudes for smaller particles. For the PM2.5 chemical constituents, we found that organic carbon (OC), elemental carbon (EC), sulfate, nitrate, and ammonium were

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significantly associated with hemorrhagic stroke mortality. The analysis for specific

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types of stroke suggested that it was hemorrhagic stroke, rather than ischemic stroke,

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that was significantly associated with PM pollution. Our study shows that various PM

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pollution fractions are associated with stroke mortality, and constituents primarily 3

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from combustion and secondary aerosols might be the harmful components of PM2.5

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in Guangzhou, and this study suggests that PM pollution is more relevant to

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hemorrhagic stroke in the study area, however more studies are warranted due to the

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underlying limitations of this study.

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Keywords: Particulate matter air pollution; stroke; particle size; chemical constituents

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Introduction A great number of epidemiological studies have demonstrated a consistent increased risk from stroke with short term exposure to ambient particulate matter (PM)

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air pollution, which was generally measured as particulate matter with aerodynamic

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diameter ≤10µm (PM10) or ≤2.5µm (PM2.5) (Dominici et al., 2006, Williams et al.,

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2014). Previous studies mainly evaluated the relationship of stroke occurrence with

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total mass concentration of the particles, fewer have examined the stroke effects of

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different characteristics of the particles, such as particle size and their chemical

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constituents (Kettunen et al., 2007), and more importantly limited studies have been

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conducted to differentiate the effects of these PM characteristics on different stroke

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types, which presented an obstacle to a better understanding of the biological

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mechanisms of their association.

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Epidemiological and toxicological studies suggest that smaller particles might be more harmful to human health. Only limited epidemiological studies, however, have

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examined the association between stroke and these smaller particles with inconsistent findings. For example, a study examined the relationship between stroke mortality and three size fractions (PM2.5-10, PM1-2.5 and PM1) in Barcelona, Spain, and found that PM1 and PM2.5-10, rather than PM1-2.5, was associated with stroke mortality (Perez

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et al., 2009). A study from Helsinki, Finland only detected significant stroke effects of

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PM2.5 and ultrafine particles (PM0.1) in warm season, but not in cold season (Kettunen

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et al., 2007). And in Copenhagen, Denmark, ultrafine particle, rather than PM10, was

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found to be associated with ischemic stroke hospitalization without atrial fibrillation 5

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(Andersen et al., 2010). One recent systematic review suggested that PM2.5 and PM10,

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rather than PM2.5-10, were associated with stroke mortality (Wang et al., 2014). On the other hand, the current air pollution control guidelines/regulations

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generally use total mass concentration as the indicator. Although it is important in to

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protecting human health, more targeted air quality standards need to incorporate PM

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chemical constituents or emission sources that are more directly related to the health

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impacts, and this has been viewed as the ultimate goal of air pollution control policies.

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However, such standards has been hindered by limited information on the toxicity of

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PM constituents (Dai et al., 2014). PM consists of many chemical components that

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originate from different sources, such as industrial emission, traffic, biomass burning

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and coal combustion. Exploring which specific PM component was associated with a

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given health outcome will also help to explain the underlying mechanism of the PM

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health effects (Li et al., 2014).

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The objective of this study was to investigate the relationship between particulate

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matter airPM pollution with different particle sizes (PM10, PM2.5-10, PM2.5, PM1-2.5 and PM1), PM2.5 constituents and mortalities from ischemic stroke and hemorrhagic strokes in Guangzhou, China.

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Materials and methods

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Study setting

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Guangzhou, the capital city of Guangdong Province, is an economic center of

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south China. Due to the rapid economic development and corresponding rise in 6

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energy consumption over the past decades, Guangzhou this city has experienced some

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of the worstserious air pollution among China’s cities. Guangzhou has a typical

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subtropical humid-monsoon climate with an average annual temperature of 22 °C and

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average rainfall of 1500-2000 mm. The residents in urban districts of Guangzhou

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were selected as the subjects of this study, with a population of about 5.5 million,

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accounting for 69.7% of the whole population of this city. The urban areas were

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chosen for two reasons. First, they were close to the air monitoring stations. Second,

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the mortality data were of high quality because most of the residents living in these

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districts are permanent residents (Yu et al., 2012).

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Data collection

Daily mortality data from 1 January 2007 to 31 December 2011 were obtained

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from the death registry system, which included the information of sex, date of death,

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age at death, residential address, and the underlying cause of death. In Guangzhou, all

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deaths were obliged to be reported to the death registry system. Hospital or community doctors were requested to report the cause of death on a death certificate. The government has mandated detailed quality assurance (QA) and quality control (QC) for the death registry. The cause of death was coded using the International

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Classification of Diseases, Tenth Revision (ICD-10). Mortality from stroke (ICD-10:

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I60–I66), and sub-categories, including ischemic stroke (ICD-10: I63–I66), and

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hemorrhagic stroke (ICD-10: I60–I62) were extracted to construct the time series. We

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also compiled stroke mortality data among the residents near the air monitoring 7

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station to evaluate the impact of potential exposure misclassification. The air pollution data were collected from two different air monitoring stations.

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The two stations were surrounded by residential areas where there were neither major

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industrial sources nor local fugitive dust sources (Fig. 1). An automatic air monitoring

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system was installed on the rooftop of Panyu Meteorological Centre (Station 1) to

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measure daily air pollution from 1 January 2009 through 31 December 2011,

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including PM10, PM2.5 and PM1, and also gaseous air pollutants including sulfur

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dioxide (SO2) and nitrogen dioxide (NO2). Measurements of PM10, PM2.5 and PM1

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were performed using a GRIMM Aerosol Spectrometer (Model 1.108, Grimm Aerosol

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Technik GmbH, Ainring, Germany). Details about the air pollution collection and

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quality control have been introduced elsewhere. In brief, the GRIMM model 1.108

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monitor is designed to measure particle size distribution and the mass concentration

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based on a light scattering measurement of individual particles in the collected air

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samples. Thus, the particle density, determined by chemical composition, could affect

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the concentration of PM mass. However, the PM mass concentrations are converted to a mass distribution using a density factor corresponding to the GRIMM established “urban environment” factor. Thus, the measured PM mass should be accurate (Grimm and Eatough 2009). We estimated PM2.5-10 concentrations by subtracting daily PM2.5

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from PM10, and PM1-2.5 by subtracting PM1 from PM2.5. When no concentration was

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measured on some observation days, they were treated as missing data; during the

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measurement period of 2009-2011, the proportion of missing data for the particle

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concentration was very low (ranging from 1% to 2%). 8

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Daily PM2.5 chemical composition data were obtained from another automatic

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monitoring system, which was located on the rooftop of the South China Institute of

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Environmental Sciences (Station 2). PM2.5 samples were collected on 47 mm quartz

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microfiber filters (Whatman International Ltd, Maidstone, England, QMA) using a

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sampler (BGI Incorporated, Waltham, MA, US, Model PQ200) operating at a flow

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rate of 16.7 L min-1. For this study, we measured seven major PM2.5 chemical

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constituents for four months (January, April, July and November) of each year from

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2007 through 2010. These measures included organic carbon (OC), elemental carbon

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(EC), and five water-soluble ions (nitrate (NO3–), sulfate (SO42–), ammonium (NH4+),

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sodium ions (Na+), and chloride ion (Cl–)). Details of the measurement and QA/QC

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procedure can be found elsewhere (Tao et al., 2012).

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We also collected daily meteorological data, including daily mean temperature

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(°C) and relative humidity (%) from Guangzhou Weather Station. Approval to conduct

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this study was granted by the Medical Ethics Committee of Guangdong Provincial

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Centre for Disease Control and Prevention.

Statistical analysis

Due to different time periods to measure the concentrations of different particle

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fractions and PM2.5 chemical constituents, we constructed two datasets for the data

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analyses. The first one involved daily mass concentrations of PM10, PM2.5-10, PM2.5,

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PM1-2.5, and PM1 for 1 January 2009 through 31 December 2011 and the second

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included daily concentrations of PM2.5 chemical constituents for January, April, July 9

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and November of 2007-2010. We examined the short-term association between daily PM pollution and stroke

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mortality using generalized additive models (GAM) with a quasi-Poisson link

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function to account for over-dispersion in stroke mortality. In the model, we

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controlled for public holidays (PH) and day of the week (DOW) using categorical

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variables. To reduce the issues associated with multiple testing and model

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specifications, we followed some previous studies to select model specification a

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priori and the degree of freedom (df) for seasonal patterns and long-term trends and

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other meteorological variables (Peng et al., 2006). We applied 8 df per year for time

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trends to filter out the information at time scales of longer than two months, 6 df for

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mean temperature of the current day (Temp0) and moving average of previous three

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days (Temp1–3) to account for the potential nonlinearity in the relationship between

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temperature and mortality, and 3 df for current day’s humidity (Humidity0).

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Smoothing spline functions were used for all nonlinear time varying variables.

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We established the core model for stroke mortality without air pollutants in the

model. We used residual plots to check whether there were discernable patterns for the core model. The core model can be specified as: log[E(Yt)] =α+s(t, df=8/year) + s(Temp0, df =6) + s(Temp1–3, df=6) + s(Humidity0, df=3) + β1*DOW+β2*PH

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where E(Yt) is the expected stroke mortality count on day t, α is the model intercept,

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s() indicates a smoother based on penalized splines, df is the degree of freedom, t

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represents time to adjust for long-term trend and seasonality, Temp0 is the mean 10

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temperature on the current day, Temp1–3 means the moving average for the previous 3

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days’ temperature, Humidity0 presents the humidity on the current day, PH represents

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a binary variable for the public holiday, DOW is an indicator for day of week, β is the

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regression coefficient.

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After the core model was established, we included the 5 particle size fractions in

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the models individually to analyze the association between these pollutants and stroke

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mortality. Because the particulate pollutants were highly inter-correlated (see Table 2),

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we did not include these pollutants in the same model.

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For the association between PM2.5 chemical constituents and stroke mortality, we

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included month and year, instead of time sequence, in the model to control for

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seasonal and long-term trends, as we only have data of four months each year. For the

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chemical constituents which were significantly associated with stroke mortality, we

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found that they were highly correlated with PM2.5 mass concentration (Table s1), so

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we did not include PM2.5 mass in the multivariate model in order to avoid collinearity.

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To examine the temporal relationship of PM pollution with stroke mortality, we

fitted the models with different lag structures from the current day (lag0) up to three lag days (lag3), as previous studies in China showed little evidence of association with a lag beyond 3 days (Yu et al., 2012). We also examined the stroke mortality impacts

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of multi-day lags (moving averages for the current day and the previous 1, 2 and 3

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days: lag01, lag02, and lag03, respectively). We reported the estimates at the lag with

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the most certain results for each PM size and PM2.5 components. To testify the

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linearity assumption of the relationship between the logarithm of daily stroke 11

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mortality and PM, we graphically examined the dose-response curve derived from a

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smoothing function (Kan et al., 2007).

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Sensitivity analysis

The sensitivity of the key findings was assessed in terms of the degrees of

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freedom in the smooth function of time trends (6-9 per year) and meteorological

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variables, including mean temperature (df = 5-9) and relative humidity (df = 3-7). To

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check the potential exposure misclassification resulting from the pollution data from

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one individual air monitoring station, we compiled stroke mortality data among the

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residents near the air monitoring stations, and did a similar analysis by restricting

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daily mortality data to those residents (with a mean distance of about 10-15 km from

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the monitoring stations, Fig. 1).

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All analyses were conducted using the “mgcv” package in R (version 3.1.0; R

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Development Core Team, Vienna, Austria). We reported the results as excess risk (ER,

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with 95% CI) in daily stroke mortality for an interquartile range (IQR) increase of PM pollution. Statistical significance was defined as p< 0.05.

Results

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From 1 January 2007 to 31 December 2011, we recorded a total of 9,066 stroke

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deaths, the corresponding annual stroke mortality rate was 33.21 per 100,000

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population. oOf whichthem, 5113 were ischemic stroke and 3953 were hemorrhagic

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stroke. On average, there were 5.0 stroke deaths per day (Table 1). 12

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During the period of 2009-2011, daily concentrations of PM10, PM2.5-10, PM2.5,

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PM1-2.5 and PM1 in Guangzhou were 56.0, 14.6, 41.4, 4.4 and 37.0 µg/m3, respectively

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(Table 1). PM2.5 accounted for a substantive fraction of PM10 concentration: the ratio

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of PM2.5 to PM10 ranged from 40.5% to 98.1%, with an average of 76.0%; and PM1

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also accounted for a substantial fraction of PM2.5 (89.3% on average, ranging from

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35.5% to 99.3%). Daily mean concentrations of NO2 and SO2 were 44.1 and 37.1

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µg/m3, respectively (Table 1). Various PMs were strongly correlated with each other

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(Table 2). PM10 was strongly associated with PM2.5 (correlation coefficient, r = 0.97)

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and with PM1 (r = 0.96). PM2.5 and PM1 were highly correlated (r = 0.99). Correlation

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coefficients for PM with gaseous pollutants and weather factors ranged from low to

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moderate.

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Over the 4 years (2007-2010), the daily averaged concentrations were 10.9 µg/m3

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for OC, 5.6 µg/m3 for EC, 7.7 µg/m3 for nitrate, and 17.5 µg/m3 for sulfate (Table 1).

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The other contributors to PM2.5 were ammonium (5.2 µg/m3), chloride (1.8 µg/m3)

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and sodium (1.8 µg/m3).

Generally, moderate to high correlations (r = 0.21–0.94) were observed for PM2.5

with the PM2.5 chemical constituents (supplemental Table s1). A significant correlation was observed among the PM2.5 components with the exception of sodium and EC.

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Fig. 2 presents the risk estimates for different particle fractions. We found PM10,

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PM2.5 and PM1 were associated with stroke mortality. The excess risk (ER) for per

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IQR increase in lag 2 day’s PM10, PM2.5, and PM1 were 7.18% (95% CI: 1.62%, 13

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13.05%), 6.62% (95% CI: 1.28%, 12.25%), and 8.74% (95% CI: 1.33%, 16.68%),

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respectively. We observed significant risk estimates for various PM fractions on

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hemorrhagic stroke mortality; however, this analysis did not find any association

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between PM pollutants and ischemic stroke mortality.

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Fig. 3 illustrates the percentage change in overall stroke mortality for per IQR

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increase in each of the PM2.5 chemical constituents, obtained from single-pollutant

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and multi-pollutant models. There was a positive and statistically significant

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association between overall stroke mortality and sulfate, nitrate, ammonium, OC, and

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EC in both single-pollutant and multi-pollutant models. We found most of the

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components had the highest impact at lag 3 day in single-day effects. In the

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single-pollutant model, an IQR increases in the 3-day lagged concentration of sulfate

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(14.6 ug/m3), nitrate (8.9 ug/m3), ammonium (5.1 ug/m3), OC (6.9 ug/m3), and EC

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(4.1 ug/m3) corresponded to a 1.39% (95% CI: 0.34%, 2.45%), 1.34% (95% CI:

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0.12%, 2.58%), 2.59% (95% CI: 0.96%, 4.25%), 1.67% (95% CI: 0.72%, 2.63%), and

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2.71% (95% CI: 1.05%, 4.39%) increase in stroke mortality, respectively. In multi-pollutant models with SO2 or NO2 being adjusting for, we found similar effect estimates for various constituents. Consistent results were observed for hemorrhagic stroke, while no association was detected for ischemic stroke.

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Supplemental Fig. s1 and s2 illustrate the effects of various PM2.5 chemical

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constituents on mortalities from ischemic and hemorrhagic strokes. Consistent results

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were observed for hemorrhagic stroke, while no association was detected for ischemic

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stroke. 14

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Fig. 4 shows the exposure-response relationships of PM10, PM2.5 and PM1 with

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stroke mortality. An approximately linear relationship was observed, with no clear

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evidence of obvious threshold concentrations below which PM concentration had no

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significant impact on stroke mortality.

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Sensitivity analyses found that the estimates obtained from this study were

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relatively robust to the degrees of freedom of the smoothing adjustment for time trend

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and weather variables. And when we only used the mortality from residents

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geographically close to the air monitoring station, we found comparable estimates

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(supplemental Fig. s3 and s4).

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Discussion

There has been limited information on the association between characteristics of

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PM pollution and stroke mortality (Kettunen et al., 2007). To our knowledge, this

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might be the first study to simultaneously quantify the effects of particle size and

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chemical constituents of PM pollution on stroke mortality. We found a significant association between stroke mortality and PM10, PM2.5, and PM1, and we found that PM2.5 chemical constituents, mainly combustion-related and secondary particle components, exhibited associations with stroke mortality; and our analysis found

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there was significant association of PM pollution with hemorrhagic stroke mortality,

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but not ischemic stroke mortality.

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The finding of this study was generally consistent with previous studies (Perez et

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al., 2009, Andersen et al., 2010, Liu et al., 2013). For example, a case-crossover study 15

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in Barcelona, Spain, also found that PM1 was associated with cardiovascular mortality,

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with ER for a 10 µg/m3 increase in PM1 on lag day 1 being 2.8% (95% CI: 0.0%-5.8%)

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(Perez et al., 2009). Two recent studies from Beijing and Shenyang, China also

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demonstrated significant cardiovascular impacts of PM0.1 and PM0.5, respectively (Liu

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et al., 2013, Meng et al., 2013). Significant mortality effects of smaller particles were

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also observed in other areas (Andersen et al., 2010, Belleudi et al., 2010) and in one

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recent systematic review (Wang et al., 2014). On the other hand, some studies

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reported that coarse and fine particles, but not ultrafine particles, might account for

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the association between PM pollution and human health (Andersen et al., 2008), and

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some studies did not find any significant effect of PM pollution on occurrence of

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stroke (Villeneuve et al., 2012).

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This study found that ambient levels of EC and OC were among the toxic

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components with respect to stroke mortality. This is in agreement with a recent

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meta-analysis of short-term associations between ambient EC and cardiovascular

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mortality (Smith et al., 2009). Several other studies have also reported significant associations between cardiovascular health and OC/EC. A study from California found that an increase in daily ambient OC and EC were associated with higher cardiovascular mortality risk (Ostro et al., 2007), and further analysis suggested

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people with lower education levels were the most vulnerable population (Ostro et al.,

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2008). Significant cardiovascular effects have also been reported in Atlanta, US and

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Xi’an City, China (Metzger et al., 2004, Cao et al., 2012). Several possible biological

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pathways have been suggested to explain this association. For example, one study 16

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from Germany found higher levels of OC or EC could lead to changes in myocardial

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repolarization, which potentially increase the risk of sudden death (Henneberger et al.,

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2005). The ambient EC exposure has also been linked with ST-segment depression

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among the elderly (Gold et al., 2005).

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Our analysis found a significant association between stroke mortality and

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secondary aerosol components of PM2.5, including sulfate, nitrate, and ammonium.

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Sulfates have long been blamed as the main toxic component in fine particulates.

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Consistent with our study, Mar et al. found increased cardiovascular mortality

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associated with sulfate in Phoenix, US (Mar et al., 2000). On the other hand, a few

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other studies did not find significant association between sulfate and human health

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(Fairley 1999, Cao et al., 2012). Further examination of this issue is warranted.

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Nitrate was positively associated with stroke mortality in our study. Consistent

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findings were also reported in California, US (Fairley 2003), the Netherlands (Hoek et

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al., 2000), and Xi’an, China (Cao et al., 2012). However, Klemm and co-authors did

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not identify a significant association between nitrate and mortality in Atlanta, US (Klemm et al., 2004). The significant relationship between ammonium and stroke mortality observed in this study was in accordance with the findings from several recent studies. Peng’s study including 119 US communities observed a significant

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association in single-pollutant models, and the association was not statistical

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significant after adjusting for co-pollutants (Peng et al., 2009). In Xi’an, higher

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mortality was also associated with ammonium, but the association was not statistically

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significant (Huang et al., 2012). 17

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Several mechanisms have been proposed for the relationship between particulate

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pollution and stroke mortality. The effects on ischemic stroke might be through

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increased plasma viscosity (Yorifuji et al., 2011). While a few pathways have been

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proposed for their effects on hemorrhagic stroke. First, when inhaled in the pulmonary

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tract, the particles could cause pulmonary inflammation, oxidative stress, heart rate

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variability, and alterations in cardiovascular function; local inflammation may further

354

contribute to a systemic inflammatory state, which in turn was able to activate

355

hemorrhagic pathways, deteriorate vascular function, and possibly promote rupture of

356

atherosclerotic plaques (Brook et al., 2004); second, direct ischemic damage to blood

357

vessels induced by PM pollution might result in brain hemorrhage; third, PM

358

pollution has been linked with atherosclerosis and hypertension, which may cause

359

rupture of brain vessels and hemorrhagic stroke. Furthermore, the stronger association

360

for hemorrhagic stroke than ischemic stroke might be due to existence of other

361

environmental and genetic risk factors, such as hypertension, dietary pattern, or

363 364 365

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physical activity, which might be associated with hemorrhagic stroke in Guangzhou. We found significant effects of PM pollution on hemorrhagic stroke, but not

ischemic stroke, and this finding was consistent in the results of particle sizes and chemical constituents. Previous findings about the association of air pollution with

366

hemorrhagic and ischemic strokes remained inconsistent among different countries.

367

Most such studies from western countries have showed significant association with

368

ischemic but not hemorrhagic stroke, while studies from Asian countries have

369

suggested an association between air pollution and hemorrhagic stroke (Yorifuji et al., 18

Page 18 of 34

2014). For example, a Japanese study also reported a stronger effect of PM pollution

371

on hemorrhagic stroke than ischemic stroke (Yorifuji et al., 2011), while studies from

372

US and European countries suggested that PM pollution was associated with ischemic

373

stroke, rather than hemorrhagic stroke (Le Tertre et al., 2002, Wellenius et al., 2005).

374

Our study, from a more in-depth analysis based on different particle size fractions and

375

chemical compositions, supported the previous observations.

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A few limitations should be noted. First, we calculated PM2.5-10 and PM1-2.5 by subtracting PM2.5 from PM10, and PM1 from PM2.5, which was subjected to two

378

sources of measurement errors. Second, the study design was ecological in nature,

379

which did not allow us to explore individual-based association and control for

380

potential confounder at the individual level, such as smoking, hypertension,

381

occupational air pollution exposure, etc. Third, we used the data from one single

382

monitoring station, which may introduce exposure misclassification though the

383

sensitivity analysis by restricting the analysis to residents close to the monitoring

385 386 387

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station indicated the robustness of risk estimates. Fourth, the stroke mortality rate in the study area was relatively lower than that in other industrialized cities in China (Chen et al., 2013), indicating the possibility of under-reporting of the mortality data. Furthermore, we did not have the information of other pollutants, such as ultrafine

388

particles and ozone, which might also relate to stroke mortality. The onset date of

389

stroke symptom likely preceded date of death by a few days or longer, therefore the

390

analysis using stroke mortality may under-estimate the association (Wellenius et al.,

391

2005). 19

Page 19 of 34

392

394

Conclusion In summary, the present study suggests particle size and chemical composition

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might be important determinant of the association between PM pollution and stroke

396

mortality, and this study suggests that PM pollution might be more relevant to

397

hemorrhagic stroke in the study area, however more studies are warranted due to the

398

underlying limitations of this study.

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Acknowledgments We sincerely thank those who participated in data collection and

401

management of this study. This study was supported by Guangdong Medical Research

402

Foundation (B2013077).

406 407 408 409

d None.

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Conflict of interest

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527

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529

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530

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535

Figure legends:

536

Fig. 1. Geographical distribution of air pollution monitoring stations in Guangzhou,

538

China.

ip t

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cr

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Fig. 2. Percent increase (ERR with 95% CI) in stroke mortality for per IQR increase

541

in particulate pollutants with different lag days (single lags for the current day (lag0)

542

to 3 days before the current day (lag3) and multiday lags for the current day and prior

543

1 day before (lag01), 2 days (lag02), or 3 days (lag03)).

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Fig. 3. Percent increase (ERR with 95% CI) in overall stroke mortality for an

546

interquartile increase in PM2.5 chemical constituents with different lag days (single

547

lags for the current day (lag0) to 3 days before the current day (lag3) and multiday

548

lags for the current day and prior 1 day before (lag01), 2 days (lag02), or 3 days

550 551 552

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(lag03)).

Fig. 4. Smoothing plots of daily PM concentration against stroke mortality. X-axis is the PM concentration (1 µg/m3). Confounding factors included DOW, public holidays,

553

time trend, influenza epidemic, the current day’s mean temperature, previous three

554

days’ moving average of mean temperature, relative humidity, SO2 and NO2.

555

27

Page 27 of 34

555

Tables

556

Table 1

558

Summary statistics of daily stroke mortality, air pollutants, and weather conditions in

559

Guangzhou, China

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28

Page 28 of 34

Percentile Variable

Mean±SD Min

P25

P50

P75

Max

1 January 2007–31 December 2011

560

Daily mortality count

561

5.0±3.0

0

3

5

7

15

Ischemic stroke

2.8±2.0

0

1

3

4

10

Hemorrhagic stroke

2.2±1.7

0

1

2

3

22.5±6.4

5.4

18.0

24.0

71.8±13.2

25.0

64.0

(%)

73.0

82.0

99.0

M

1 January 2009–31 December 2011

33.5

an

Relative humidity

27.7

us

Temperature (°C)

10

cr

Meteorological factors

ip t

Stroke

Air pollution (µg/m3) 56.0±33.5

0.1

29.7

48.8

75.1

198.8

PM2.5-10

14.6±12.7

0.0

5.2

10.7

20.1

74.7

41.4±23.4

23.6

36.6

55.1

134.8

te

d

PM10

0.1

PM1-2.5

4.4±3.7

0.0

2.1

3.2

5.5

39.8

PM1

37.0±21.0

0.1

20.8

33.1

49.6

120.8

NO2

44.1±23.3

8.2

27.2

39.2

56.0

155.2

SO2

37.1±25.7

2.5

19.0

30.0

46.8

176.0

Ac ce p

PM2.5

January 2007–November 2010 PM constituent (µg/m3) Sulfate

17.5±9.8

2.4

9.4

16.1

24.0

60.9

Nitrate

7.7±7.7

0.9

2.3

4.6

11.4

47.5

Ammonium

5.2±3.5

0.1

2.3

4.8

7.4

19.4

OC

10.9±7.1

2.5

6.2

9.2

13.1

53.7

EC

5.6±3.2

1.5

3.1

4.8

7.2

17.5

29

Page 29 of 34

562

Abbreviation: SD, standard deviation; Px, xth percentiles; Min, minimum; Max,

563

maximum.

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564

Table 2

566

Spearman’s correlation coefficients between PM concentrations, gaseous pollutants,

567

and weather conditions in Guangzhou, China

0.87**

1.00

PM2.5

0.97**

0.74**

1.00

an

1.00

PM2.5-10

PM1-2.5

0.83**

0.81**

0.77**

1.00

PM1

0.96**

0.71**

SO2

0.50**

NO2

0.58**

d

PM10

us

PM1-2.5

PM1

SO2

NO2

Temperature

M

PM2.5-10 PM2.5

0.99**

te

PM10

0.71**

1.00

0.28**

0.55**

0.42**

0.56**

0.35**

0.63**

0.41**

-0.64** 0.65** 1.00

Ac ce p

568

Pollutants

cr

565

1.00

Temperature -0.45** -0.27** -0.48** -0.22** -0.50** -0.07*

0.44** 1.00

Humidity

-0.03

-0.22** -0.29** -0.17** -0.13** -0.18** -0.01

0.11**

**p < 0.01, * P< 0.05.

30

Page 30 of 34

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Figure 4 Click here to download high resolution image

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