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Comparison of Sources of Variability in School Age Children Exposure to Ambient PM2.5 Wenwei Che, H. Christopher Frey, and Alexis K. H. Lau Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/es506275c • Publication Date (Web): 05 Jan 2015 Downloaded from http://pubs.acs.org on January 12, 2015
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Comparison of Sources of Variability in School Age Children Exposure to Ambient PM2.5 W. W. Che,1 H. Christopher Frey,1,2,3* Alexis K.H. Lau1,2 1
Division of Environment, The Hong Kong University of Science and Technology, Clear Water Bay, Hong Kong, China 2
Department of Civil and Environmental Engineering, The Hong Kong University of Science and Technology, Clear Water Bay, Hong Kong, China 3
Department of Civil, Construction and Environmental Engineering, North Carolina State University, Campus Box 7908, Raleigh, North Carolina 27695-7908, United States,
[email protected], 1-919-515-1155, fax 1-919-515-7908
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ABSTRACT
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School age children are particularly susceptible to exposure to ambient fine particle (PM2.5). To
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provide insight into factors affecting variability in ambient PM2.5 exposure, distributions of daily
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PM2.5 exposures for school age children are estimated for four seasons in three climatic zones of
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the U.S. using a stochastic microenvironmental exposure model, based on ambient concentration,
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air exchange rate, penetration factor, deposition rate, census data, meteorological data, and time
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pattern data. Estimated daily individual exposure varies largely among seasons, regions and
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individuals. The mean ratio of ambient exposure to ambient concentration (Ea/Ca) ranges from
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0.46 to 0.61 among selected regions and seasons, resulting from differences in air exchange rate.
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The individual Ea/Ca varies by a factor of 2 to 3 over a 95% frequency range among simulated
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children, resulting from variability in children’s time patterns. These patterns are similar among
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age groups, but vary with day of week and outdoor temperature. Variability in exposure is larger
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between individuals than between groups. The high end ratio of the Ea/Ca, at the 95th percentile
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of inter-individual variability, is 30% to 50% higher than the mean Ea/Ca ratio. Results can be
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used to intepret and adjust exposure errors in epidemiology and to assist in development of
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exposure mitigation strategies.
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KEYWORDS
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Children’s exposure; APEX; inter-individual variability; geographic variability; seasonal
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variability
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INTRODUCTION
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Among the general population, children and adults 65 years and older are the two most
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susceptible subpopulations.1, 2 Children of school age (ages 6 to 18 years) account for
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approximately 18% of the U.S. population. Exposure to ambient PM2.5 (particles with
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aerodynamic diameter of 2.5 µm or less) is associated with a variety of adverse effects among
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school age children, including increase in airway inflammation and oxidative stress, exacerbation
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of asthma, induction of DNA damage and long-term deficit in lung function development.3-7
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Furthermore, children suffering from adverse effects such as asthma also experience lower
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school attendance, and lower school performance, and their parents experience challenges in
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work attendance.8-10 Understanding the variations in children’s exposure to ambient PM2.5 and
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contributions to it from various factors may help in evaluating air pollution-induced health risk
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and developing strategies to reduce related risk.11
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Exposure is the time-weighted concentration of various microenvironments in which an
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individual spends time.12 Human exposure to ambient PM2.5 includes exposure to the ambient
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PM2.5 concentration while outdoors, and exposure while indoors or in-vehicles to ambient PM2.5
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that has infiltrated into these microenvironments.13 Since most people, including children, spend
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more than 80% of their daily time indoors, infiltration of ambient PM2.5 to indoor
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microenvironments is an important determinant of personal exposure to PM2.5.14
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The infiltration of ambient PM2.5 depends on the characteristics of indoor ventilation, especially
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the air exchange rate (AER) between outdoors and indoors. Measurements in U.S. residents have
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shown that the average AER ranges from 0.36 h-1 to 1.57 h-1 across regions and seasons.15
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Personal exposure measurements demonstrate substantial variability in the mean personal 3 ACS Paragon Plus Environment
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exposure to ambient PM2.5 between cities and seasons.16, 17 For example, a personal exposure
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study conducted among 68 children aged 8 to 14 years, in three European cities, showed a
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difference of up to 62% (or 11.2 µg/m3) in the mean of 48-hour average personal exposure to
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PM2.5 across cities.18 Heterogeneity in AER is likely to be a key factor in seasonal and regional
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exposure variability. In the RIOPA study, AER was found to explain 24% of the variations in the
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ratio of ambient PM2.5 exposure to ambient concentration (Ea/Ca) among 374 non-smoking
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homes in Houston (TX), Los Angeles County (CA), and Elizabeth (NJ).19
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Recent studies suggest that the pattern of the amount of time spent in each microenvironment in
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each day may be another key contributor to personal PM2.5 exposure. Researchers in Korea
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measured the personal PM2.5 exposure population for multiple groups with different time patterns,
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and found that the group daily average exposure varied by more than a factor of four, from 9.8
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µg/m3 to 43.1 µg/m3.20 The European VESTA study observed an inter-child standard deviation of
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22.7 µg/m3 in the 48-hour average personal exposure to PM2.5 for children living in the same
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city.21 Relatively low correlations were observed in several studies between personal exposure
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and outdoor concentration, which is likely the result of variations in personal time patterns both
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between- and within-subjects.18, 22-25 Understanding the impact of time pattern on person’s
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exposure is an area where research efforts are expanding.26, 27 Ambient PM concentration
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measured at fixed site monitors is usually used as a surrogate for personal exposure to ambient
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PM2.5 in epidemiological health studies. However, the ratio of risk to ambient concentration is
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different from the ratio of risk to exposure.28, 29 The difference between personal exposure and
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ambient concentration contributes to exposure error.30, 31. Inter-individual variability in AER and
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children’s time patterns may contribute to the exposure errors.
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In recent years, stochastic population-based exposure models have been used to evaluate the
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impact of various factors on exposure estimation.32, 33 For example, Jiao et al. evaluated the
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influence of AER on estimated daily PM2.5 exposure for elderly adults over 65 years of age in the
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U.S.33 The Ea/Ca varied by 6% to 36% among selected regions and seasons as a result of
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differences in residential air exchange rates. However, studies on children are scarce.34
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The objectives of this paper are to: (1) evaluate the geographic and seasonal variability in Ea/Ca
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with respect to variations in residential AER; and (2) investigate the inter-individual variability
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in Ea/Ca with respect to variations in time patterns for school-age children. The term “time
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pattern” here refers to the time spent in each microenvironment, but doesn’t account for
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differences in exertion that may affect individual breathing rate.
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METHODOLOGY
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This part includes an overview of the study design and description of model configuration,
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parameterization for estimating microenvironmental exposure concentration, data sources for
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AER in residences and schools and other parameters related to study population and time
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patterns. Methods for statistical analysis of the estimated results are also described.
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Study design
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AER influences the exposure estimates.33, 35 Measurements on residential AERs reveal
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substantial variations across regions and seasons. To evaluate the geographic and seasonal
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variability in Ea/Ca with respect to variations in residential AER, children’s exposure to ambient
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PM2.5 is estimated for three climatic regions in four seasons in 2002.
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Three urban areas are chosen to represent diverse southeast, south central and northeast U.S.
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climate zones. These areas include: (1) a six-county area in North Carolina (NC) along
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Interstate 40, comprised of Wake, Durham, Orange, Alamance, Guilford, and Forsyth Counties,
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that includes the cities of Raleigh, Durham, Burlington, Greensboro, High Point, and Winston-
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Salem; (2) Harris County in Texas (TX), including the city of Houston; and (3) New York City
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(NYC), including Bronx, New York, Kings, Queens, and Richmond Counties. To address
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seasonal differences, one month from each of four seasons is selected, including April for spring,
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July for summer, October for fall, and December for winter.
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A few studies have examined how children spend their time and the sources of variations in time
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pattern.36-42 The sources of variation include age, sex, day type (weekday vs. weekend) and
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outdoor temperature.36, 38, 40-42 To investigate the inter-individual variability in Ea/Ca with respect
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to variations in time patterns, children’s PM2.5 exposure is estimated and compared by age, day
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type and outdoor temperature. Time patterns differentiated by sex were also examined, but they
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are not included in the exposure analysis because the differences in time spent between male and
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female students in microenvironments evaluated here are relatively small (Fig. S2).
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Children of ages 6 to 18 years old are selected to represent school age children. Three factors are
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examined here to evaluate the sensitivity of exposure estimates to children’s time pattern,
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including school age range, day type and outdoor temperature. Children are divided into three
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groups: children of elementary school age (ES), from 6 to 11 years; middle school age (MS),
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from 12 to 14 years; and high school age (HS), from 15 to 18 years. Each age group exposures
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are estimated for three day types: weekdays in school (WDSC); weekdays out of school (WDNS);
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and weekends (WEND). WDNS represents home schooled children or holidays on which 6 ACS Paragon Plus Environment
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schools are closed. Outdoor daily maximum temperature is categorized into three ranges: low
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temperature (LT) 84 ºF. Temperatures below 55 ºF are generally considered cold,43, 44 while 84
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ºF is the average temperature that will trigger a heat wave alert as defined by National Oceanic
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and Atmospheric Administration (NOAA).45
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A random sample of 5,000 individuals was simulated for each of the three age groups (ES, MS,
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HS) for each of three selected regions (NC, TX, NYC) during each of four seasons (spring,
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summer, fall, winter), resulting in 36 scenarios. An example of one scenario is a simulation of
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ambient PM2.5 exposure for 5,000 individuals of the elementary school age group for the North
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Carolina region in spring (ES-NC-spring). Variations in day type (WDSC, WDNS, WEND) and
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outdoor daily maximum temperature (LT, MT, HT) were addressed within each simulation.
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APEX model
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Scenario-based exposure models use stochastic methods to simulate inter-individual variability
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on a population basis. They are based on input data for population distribution by age, sex,
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location, daily time pattern, ambient concentration, and infiltration of ambient pollutant to
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specific microenvironments and other factors.46, 47 Typical microenvironments for school age
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children include home, school, restaurant, hotel, store, in vehicle, outdoor and other indoors.14, 18,
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34
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The Air Pollutants Exposure (APEX) model is one of such models developed by the U.S.
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Environmental Protection Agency (EPA) .47 This model has been refined and improved over the
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last several years as a result of its application to exposure assessments supporting scientific
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review of the U.S. National Ambient Air Quality Standards (NAAQS) for carbon monoxide, 7 ACS Paragon Plus Environment
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nitrogen dioxide, ozone, and sulfur dioxide.48-51 Furthermore, APEX has been developed and
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applied for quantification of human exposure to PM2.5,52 and is expected to be used in the next
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review cycle of the NAAQS for particulate matter.53
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APEX accounts for the most significant factors contributing to inhalation exposure, including the
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temporal and spatial distribution of people and pollutant concentrations throughout the study area
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and among microenvironments, while also allowing flexibility to adjust some of these factors.54
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Although APEX has the capability to account for indoor emission sources, this analysis is
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concerned only with exposures to pollutants of ambient origin.
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Parameterization
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Children’s exposure is simulated for eight microenvironments, including outdoors, home, school,
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in vehicle, store, restaurant, office and other indoors. PM2.5 concentrations in home and school
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are estimated using a mass balance method, which estimates the PM2.5 concentration of ambient
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origin in a specified microenvironment based on physical factors including AER, penetration (p),
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and deposition and decay rate (k).33, 46 The factor method is used to estimate PM2.5 concentration
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in vehicle, store, restaurant, office and other indoor microenvironments, by multiplying the
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ambient outdoor concentration by an indoor/outdoor (I/O) concentration ratio.25, 46
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Under the assumption of steady state and well-mixed microenvironment, the equation of mass
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balance model can be described as:
ܥ,ொ =
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×ாோ ாோା
ܥ
(1)
Where, 8 ACS Paragon Plus Environment
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ܥ,ொ = the PM2.5 concentration of ambient origin in a certain microenvironment (µg/m3);
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a
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= ambient origin;
I
= index of microenvironment (ME = o for outdoors, h for home, s for school, v for in-vehicle, t for store, r for restaurant, f for office, and i for other indoors.);
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= penetration factor (unitless);
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ܴܧܣ
= air exchange rate (h-1);
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݇
= deposition rate (h-1);
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ܥ
= ambient PM2.5 concentration (µg/m3).
ME
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The user specifies distributions of these parameters. Except in a few cases, primarily involving
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small sample sizes, the measured AER were found to be well fit by lognormal distributions.15, 55
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Here, the fitted lognormal distributions derived in previous studies for four seasons in three
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climatic regions are used for residential AER.15, 55
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School AER has been measured at a few U.S. locations for a variety of classroom types, built
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year, and mechanical system configuration.56-58 Based on these measurements, a log-normal
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distribution of AER was developed here for school microenvironments according to the best fit
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estimates for all reported data (Fig. S1). There is lack of data upon which to assess the effect of
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geographical and seasonal variation in school AER, therefore, the same distribution of AER is
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applied to all seasons and regions.
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Triangular distributions for penetration factor (p) and normal distribution for deposition rate (k)
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are adopted from Jiao et al,33 based on limited studies conducted in the U.S.25, 29 However,
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compared to AER, these two parameters have much less impact on exposure estimates.35 No
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studies were found that report p and k for PM2.5 in U.S. schools. Therefore, as a surrogate, the
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distributions of p and k for home are used here for schools.
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In this study, fixed I/O ratios, either from field measurements or previous studies, are applied for
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selected microenvironments, including 0.71 for vehicle, 0.75 for store, 1.0 for restaurant, 0.18 for
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office , and 0.85 for other indoor.46, 59, 60
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Demographic and time pattern data
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Population distributions by age group and sex were sampled from year 2000 United States
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Census data. Time-pattern diaries for each simulated individual on each simulation day were
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sampled from the Consolidated Human Activity Database (CHAD) based on matching
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demographic characteristics, daily temperature and day type.61 CHAD contains tens of thousands
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of diary records from several national and local studies covering various age, sex, occupation,
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day type, outdoor temperature and locations. There are 12,202 daily diary records for children of
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ages 6 to 18 in CHAD.
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Ambient PM2.5 concentration and outdoor temperature
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Daily average PM2.5 air quality data were obtained from the U.S. EPA based on predictions of
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2002 average concentrations for 12 km by 12 km grid cells from the Community Multiscale Air
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Quality (CMAQ) model, which were updated with available monitoring data using Bayesian
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statistical inference.62 Daily maximum temperature was obtained from State Climate Offices for
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each region and season based on request, in order to investigate the influence of outdoor
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temperature on children’s time patterns.
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Statistical analysis
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APEX output includes the estimated exposure of ambient origin for each simulated individual for
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each microenvironment on each day, and the time spent in each microenvironment. These 10 ACS Paragon Plus Environment
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outputs were processed and analyzed using SAS ver 9.3. The ratio of Ea/Ca and contributions to
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it from each microenvironment were estimated for each individual and simulation day. The
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variability in the Ea/Ca ratio is compared between scenarios in terms of age group, region and
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season, and within a scenario in terms of day type and daily maximum temperature. Two
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statistical summaries are used for comparison, including (1) cumulative distribution functions
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(CDF) and (2) coefficient of variance (CV), which is the standard deviation divided by the mean.
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Exposure at or above the 95th percentile of the population is also reported as it represents a high
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exposure and is of concern in risk management.12
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RESULTS
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The results are presented in four parts, including: (1) key input data; (2) sensitivity tests on
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microenvironmental parameters; (3) total and microenvironmental PM2.5 exposure; (4)
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geographic and seasonal variability in children’s exposure; and (5) factors affecting time patterns.
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Key input data
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Table l shows the 2000 census population distribution by age and gender for each study region,
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and the frequency of days in simulated regions and seasons by daily maximum temperature
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category, which is derived from 2002 meteorological data. In total, there are 1.8 million, 3.4
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million, and 8.0 million people in the NC, TX and NYC domains, of which school age children
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account for 17%, 21% and 17%, respectively. The distribution of days for the temperature
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categories varies with season and region. Over 60% of summer days are high temperature in all
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regions, especially for TX (93.5%); in the winter there are no high temperature days. Low
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temperature days dominate in winter for NC (70.0%) and NYC (96.8%), but are less prevalent
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for TX (10.0%). Medium temperature days dominant in the spring and fall for all three regions. 11 ACS Paragon Plus Environment
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Figure 1 shows the average amount of time spent by children of each age group in selected
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microenvironments by day type. For all age groups and day types, at least 80% of time is spent
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among home, school, outdoor and in vehicle microenvironments. Conversely, less than 3% of
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time is spent among office, store, and restaurants. The balance is spent in other indoor locations.
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Children spend different amounts of time at home, school and outdoors between day types.
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Children spend an average of 14.2 hours, 17.5 hours and 15.6 hours at home on WDSC, WDNS,
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and WEND, respectively. Time spent at school is on average 6.8 hours, 0 hours, and 2.0 hours on
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WDSC, WDNS and WEND, respectively, and the time spent outdoor is 0.8 hours, 2.0 hours and
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1.2 hours for three day types. Time spent at school on WEND is probably due to participation in
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extracurricular enrichment programs.
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ES and MS children have similar daily time patterns for each day type. HS children spend
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slightly less time at home and outdoors, and more time in vehicle and other indoors. Differences
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in time patterns are more pronounced for day types than age groups. For example, the difference
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in average time spent at home is only 1.7 hours among age groups versus 4.2 hours among day
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types.
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Male and female children spend comparable amounts of time at home, at school and in vehicle.
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Male children spend an average of 0.5 hours more time outdoors than females. Major differences
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between outdoor temperatures exist in the time spent outdoor and in school. On average, children
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spent 1.7 hours more outdoor on days with HT than those with LT, and 1.6 hours less time in
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school.
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Children’s daily time patterns are similar across geographic regions but differ among seasons.
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On average, children spend 1 hour more outdoors and 1.5 hours less inside schools in summer
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than in other seasons (Fig. S4). Children have more vacation and less school time in the summer.
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Higher outdoor temperatures in the summer are associated with more time spent outdoors.
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Sensitivity tests on microenvironmental parameters
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For the school microenvironment, fixed I/O ratios were commonly used in previous studies
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which does not adequately account for variability. 26,37 Here, distributions of AER in schools are
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developed and used with the mass balance method to better characterize variability. Sensitivity
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tests are conducted to evaluate the influence of the factor and mass balance methods on exposure
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estimates. The school Ea,s/Ca has more inter-individual variability using the mass balance method
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(Fig. S5).
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To evaluate the impact of uncertainty in the I/O ratios on total exposure estimates, a sensitivity
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test was conducted for vehicles using a fixed I/O ratio of 0.71 and a discrete I/O distribution. The
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distribution ranges from 0.1 to 1.0 based on three measurements conducted in North Carolina,
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China and Lebanon.59, 63, 64 Sensitivity analysis reveals small differences in total exposure (less
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than 1%) when comparing these different input assumptions (Fig. S6). Other microenvironments
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such as office store and restaurant comprise less than 3% of children’s time. Therefore, the
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impact on estimated daily exposures from using fixed I/O ratios rather than distributions of ratios
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in these microenvironments is minor.
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Total PM2.5 exposure and its variations
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Estimated children’s ambient exposure to PM2.5 (Ea) varies substantially across scenarios. The
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average daily ambient exposure varies by a factor of 2.7 across 36 scenarios, ranging from 5.1
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µg/m3 for elementary school children in NYC in fall (ES-NYC-fall) to 13.9 µg/m3 for middle
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school children in NYC in summer (MS-NYC-summer). Variations in the ambient concentration
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are the main cause for these variations in exposure. For example, the average daily ambient
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PM2.5 concentrations are 11.3 µg/m3 for ES-NYC-fall and 22.7 µg/m3 for MS-NYC-summer,
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accounting for about 73% of the differences in the mean exposure. However, there are still
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around 27% of the variations unexplained, which may be caused by the differences in AER and
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time patterns across scenarios.
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Children’s ambient exposure to PM2.5 is significantly lower than the ambient PM2.5 concentration.
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For ES-NC-spring scenario, the average daily ambient exposure is 6.4 µg/m3, while the average
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ambient concentration is 12.9 µg/m3, with the Ea/Ca ratio of 0.5. Within the scenario, the
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estimated children’s PM2.5 exposure varies largely among individuals. The Ea ranges from 2.4 14 ACS Paragon Plus Environment
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µg/m3 to 13.0 µg/m3, a factor of 5 for a 95% frequency range. Children with high daily exposure
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typically have relatively small amounts of time spent at home or schools, with large amounts of
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time spent outdoors or in other indoors. For this scenario, an average of 19.1 hours and 3.2 hours
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is spent in home and school, respectively, for children below the 2.5th percentile of daily
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exposure, compared to12.0 hours and 0.7 hours, respectively, for children above the 97.5th
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percentile. The microenvironmental PM2.5 concentration for home and school is smaller than for
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outdoor and other indoors, therefore, more time spent in home and school leads to smaller
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exposure to ambient PM2.5. The four most important microenvironments of home, outdoor,
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school and vehicle account for 50%, 16%, 11% and 6% of average exposure, respectively.
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Variability in time pattern and parameters affecting microenvironmental concentrations
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contribute substantially to the inter-individual variability in estimated exposure. The individual
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daily Ea/Ca, which excludes the impact from ambient concentration, varies by a factor of 2 to 3
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over a 95% frequency range among simulated children for a given scenario. For
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microenvironments for which PM2.5 concentrations are estimated based on the factor method,
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including outdoor, vehicle, store, office and restaurants, the CV of inter-individual variability in
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Ea/Ca is similar to the CV of time spent in that microenvironment, indicating that the variability
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in time pattern is the dominant factor in determining the variability in Ea/Ca in these
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microenvironments. For home and school, for which microenvironmental concentrations are
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based on the mass balance method, the CV of inter-individual variability in Ea,ME/Ca is higher
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than the CV of time pattern by 67% for home and 8% for school, indicating an influence from
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the distributions of AER, p, k.
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Geographic and seasonal variability
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Estimated inter-individual variability in Ea/Ca differs among climate zones and seasons, as shown
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in Figure 2. Depending on season, the difference in the average daily Ea/Ca ratio ranges from 1%
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to 29% between the selected regions. The regional differences in Ea/Ca are largest in fall and
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smallest in spring. In fall, the largest average Ea/Ca ratio of 0.59 occurs in TX and the lowest
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average Ea/Ca ratio of 0.46 occurs in NYC. The variability in Ea/Ca among regions follows the
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variations in residential AER. For example, the geometric mean of residential AER is highest at
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0.65 h-1 in TX, but lowest at 0.22 h-1 in NYC. The three selected regions are located in different
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climatic zones with different temperature distributions among seasons, which affects the
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frequency of natural ventilation and thus AER and exposure pattern.
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The difference in the average daily Ea/Ca ratio between seasons ranges from 0% to 30%, with the
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largest in NYC and the smallest in TX. The seasonal variability in Ea/Ca is mainly caused by
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seasonal differences in residential AER. Taking NYC as an example, the highest average Ea/Ca
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ratio of 0.59 occurs in summer, for which the residential AER geometric mean of 0.64 h-1 is the
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largest among the seasons, and the lowest average Ea/Ca ratio of 0.46 occurs in fall associated
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with a residential AER geometric mean of 0.22 h-1. Higher residential AER is typically
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associated with more frequent natural ventilation, such as opening windows or doors.
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The trends when comparing CDFs of inter-individual variability for children between seasons
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and regions are similar to those reported by Jiao et al,26 based on an analysis of exposure for
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elderly people of age 65 and older. For example, the sequence of seasons in which the mean
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Ea/Ca ratio varies from high to low in the NC domain is summer, fall, winter and spring, with a
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maximum difference of 16% in the mean Ea/Ca ratio among seasons, for both children and the 16 ACS Paragon Plus Environment
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elderly. The inter-individual variability in the Ea/Ca ratio for children and the elderly is
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comparable for a given season and area, with a slightly wider range for the elderly. The latter
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may be caused by a larger amount of time spent at home at the lower end of the elderly, since the
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microenvironmental PM2.5 concentrations are typically lower than other microenvironments.
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Factors affecting time patterns
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Children’s average exposure differs among WDSC, WDNS and WEND, as indicated in Figure 3.
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For example, for the ES-NC-sping scenario, the average individual daily Ea/Ca varies by 12%
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among three day types, and the 95th percentile varies by 20%. The inter-day type variation in
320
Ea/Ca is larger for days with no or little time spent in school. For the ES-NC-spring scenario, the
321
ratio of 95th percentile of daily Ea/Ca to the mean Ea/Ca is 1.39, 1.50 and 1.48 for WDSC, WDNS
322
and WEND, respectively.
323
The differences in daily Ea,ME/Ca among these three day types are particularly evident for the
324
school, home, outdoor and other indoors microenvironments, mainly because of differences in
325
time patterns. The daily Ea,s/Ca for school varies from 0.02 to 0.25 over a 95% frequency range
326
on WDSC versus a value of 0 on WDNS, and values of 0 to 0.04 on WEND. The large variation
327
in Ea,s/Ca on WDSC are related to the variations in the amount of time spent in schools and in
328
AER. The ratios for home (Ea,h/Ca) and outdoors (Ea,o/Ca) are higher on WEND than WDSC,
329
resulting from a larger portion of time spent in these microenvironments. The upper end of
330
Ea,o/Ca approaches 1 for children on WEND, indicating that some of them spent most of their
331
time outdoors, such as camping outside. The values of Ea,h/Ca and Ea,o/Ca on WDNS have a
332
similar distribution as for WEND. No significant differences in distributions of Ea,v/Ca are
333
observed for the vehicle microenvironment among day types. 17 ACS Paragon Plus Environment
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Similar time patterns among age groups lead to similar patterns in the estimated exposure. For
335
example, for the NC-Spring scenarios, the average Ea/Ca ranges narrowly from 0.50 to 0.52
336
among ES, MS and HS age groups. Similarly, the 95th percentile ranges narrowly from 0.74 to
337
0.76. The 95th percentile of the daily Ea/Ca is 46-50% higher than the mean.
338
The impact of daily maximum temperature on time patterns and exposure depends on age group.
339
For the elementary school students, the average Ea/Ca ratio ranges narrowly from 0.51 to 0.52, a
340
variation of 2%, among three temperature categories in spring in NC. While for the high school
341
students, the average Ea/Ca ratio is 0.54, 0.52 and 0.56 on LT, MT and HT days, respectively, a
342
variation of approximately 8%.
343
The differences in Ea,ME/Ca ratio among temperature categories are mainly associated with
344
variations in the amount of time spent in school, outdoors and “other indoor” locations, for
345
which the microenvironmental PM2.5 is typically higher than other microenvironments except
346
outdoor. The impact of daily maximum temperature on time pattern and exposure is also affected
347
by day type. For the HS-NC-Spring scenario, over 90% of the LT days overlap with WDNS in
348
the simulation, which leads to large Ea/Ca ratios on LT for this scenario.
349
DISCUSSION
350
The estimated children’s ambient exposures to PM2.5 are significantly lower than ambient
351
concentrations and vary substantially among seasons, regions and simulated individuals. The
352
mean exposure varies among regions and seasons by a factor of 2.7, and varies among
353
individuals by a factor of 5 over a 95% frequency range within a region and season. This
354
indicates that the within-group exposure variability is larger than between-group variability.
355
Variations in children’s exposure is affected by ambient concentration, AER, and time pattern. 18 ACS Paragon Plus Environment
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356
The estimated average value of Ea/Ca ratio in this study ranges from 0.46 to 0.61 across regions,
357
seasons. The result is comparable to monthly average value of 0.54 (95% CI: 0.42, 0.65) from a
358
pooled analysis on ambient PM2.5 exposure in field measurements across nine U.S. cities by
359
Kioumourtzoglou et al.17 In Kioumourtzoglou et al., between-city heterogeneity is found among
360
five cities, including Atlanta, Baltimore, Boston, Steubenville, and Seattle, which lends support
361
for the geographic variability observed in the mean Ea/Ca between domains located in different
362
U.S. climatic zones.
363
Seasonal and regional differences in the mean Ea/Ca ratio for children are mainly caused by
364
variations in residential AER and are similar to those estimated for the elderly reported by Jiao et
365
al.26 Time patterns may also affect variations in the mean Ea/Ca between seasons and regions,
366
because of variations in percentage of days with high temperature. Although season is not a
367
criterion in diary selection, ambient temperature is. However, the impact of the temperature on
368
the mean Ea/Ca is much smaller compared to the influence from variations in AER.
369
The CV analysis implies that the majority of the inter-individual variability in Ea/Ca is caused by
370
variation in time pattern. Among factors examined here affecting time patterns, day type has the
371
largest impact on the Ea/Ca ratio, especially for the 95th percentile. Daily maximum temperature
372
also has an impact on Ea/Ca ratio, but the impact depends on age group and is affected by day
373
type. Day type and daily maximum temperature substantially affects children’s time spent in
374
some microenvironments, such as home, school and outdoor, resulting in different exposure
375
patterns in terms of inter-individual distributions of Ea/Ca. ES and MS children have similar time
376
patterns and, thus, similar Ea/Ca distributions.
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377
The Ea/Ca ratio may help to interpret exposure errors inherent in epidemiologic studies that use
378
ambient air quality as an exposure surrogate. The mean Ea/Ca indicates the so-called “Classical”
379
component of exposure error, which is the, which is the difference between the aggregated
380
exposure and the ambient PM2.5 concentrations. And the inter-individual variability in Ea/Ca
381
provides insights regarding the so-called “Berkson” component of exposure error, which results
382
from using aggregated instead of individual exposure.17, 30 Factors which cause the variation in
383
exposure errors can be used to interpret and adjust for in health risk estimation observed in
384
epidemiological studies. Daily ambient temperature, which varies with season, has been used as
385
an adjustment factor in epidemiological studies. 28, 65, 66 For example, the effect estimates of
386
PM2.5 on daily mortality for a New York city case study was highest in summer, for which the
387
estimated mean Ea/Ca ratio was also the highest among the seasons.28 The differences in Ea/Ca
388
ratio among temperature categories lend support to the plausibility of temperature adjustment in
389
epidemiological studies. Recent epidemiological studies indicate there may be variance in health
390
effect associated with day type.67 Further investigation is needed to characterize the relationship
391
between differences in time patterns by day type and variations in health effect in
392
epidemiological studies.
393
However, there was seasonal variability in the effect estimate not explained by seasonal
394
variability in the mean Ea/Ca ratio. A possible additional source of variability in effect estimates
395
may be seasonal variation in PM2.5 chemical composition. 68, 69 PM toxicity may vary with
396
chemical composition. Further study is needed to evaluate the variations in Ea/Ca ratio with
397
regard to different PM components. While such work is needed, it is not guaranteed that a better
398
estimate will result.70, 71
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399
For risk assessment, the frequency distribution of exposures within a population, not just the
400
mean exposure, is of concern. Stochastic exposure modeling quantifies the distribution of
401
exposures in a population, which aids in identifying factors that could contribute to elevated
402
exposures.72 The estimated 95th percentile of Ea/Ca is 30% to 50% higher than the mean Ea/Ca
403
among simulated children for all regions, seasons, ages, day type, and outdoor temperature.
404
Exposures at or above the 95th percentile of inter-individual variability represent high end
405
exposures.12 Individuals at the high end of the exposure distribution are often of interest when
406
considering various actions to mitigate exposure. High residential air exchange rates are typically
407
associated with high Ea/Ca ratios. Residential ventilation could be adjusted by home occupants,
408
in combination with filtration options, to reduce infiltration of ambient pollution on days with
409
high concentraion perhaps in response to better advisory messaging.
410
Higher Ea/Ca ratios are observed on WDNS than WDSC due to more time spent outdoors or in
411
“other indoor” locations. In some cities in China, schools are closed on high pollution days.73
412
However, such decision may actually lead to increases in children’s exposures, based on
413
comparison of time pattern data for WDNS versus WDSC, unless outdoor avoidance occurs. For
414
example, some groups, particularly children, the elderly, and those with respiratory problems,
415
modify their behavior on high-O3 days, by reducing time spent outdoors or limiting outdoor activity
416
exertion level.74 In particular, asthmatic children are more likely to avoid high outdoor
417
concentrations. A combination of an air quality warning system and improved communication of
418
hazard and advice could help parents guide their children to avoid high exposure situations
419
through behavior modification.
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420
To better characterize children’s exposure in school, the mass balance method for estimating the
421
indoor PM2.5 concentration was used. This method has been shown to appropriately account for
422
variability in residential indoor concentration.24 The school exposure to concentration ratio,
423
Ea,s/Ca, has more variability among simulated individuals based on the mass balance method
424
compared to the factor method. However, due to the limited mesurement data, the distribution of
425
school AERs are not differenciated among seasons and regions. For better characteriztion of
426
children’s exposure, there is a need for further measurments on school AERs by season and
427
region.
428
Another limitation is related to the time pattern database. There are limited data on time patterns
429
when stratifying exposure assessment by exposure factors such as age, sex, day type, and
430
temperature. Moreover, there are insufficient data in CHAD from which to quantify the
431
interaction effects among these factors. For example, there are only 20 records for female
432
elementary school children on school weekday with high ambient temperature. A sample size of
433
only 20 for such a stratified grouping of factors may not adequately quantify inter-individual
434
variability. In some cases if the exposed population is stratified by region and season, there may
435
not be any diary record. One reason for limited diary sample sizes is that traditional survey
436
methods are time consuming and burdensome to participating subjects. To reduce burden on
437
subjects, there is a growing effort to utilize common conveniently available personal electronic
438
devices, such as smart phones, global positioning systems (GPS), and movement sensors
439
(accelerometers), to collect data on personal activities.75 Future work is warranted to integrate
440
this information into CHAD to better identify and quantify various factors associated with
441
children’s time patterns and their interactions.
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442
ACKNOWLEDGEMENTS
443
This work is sponsored by grant GRF 614713 from the Hong Kong Research Grants Council and
444
Oversea Research Awards from the Hong Kong University of Science and Technology. Dr.
445
Frey's participation in this research was supported in part by grant R833863 from the U.S.
446
Environmental Protection Agency's Science to Achieve Results (STAR) program. John Langstaff
447
of U.S. Environmental Protection Agency (EPA) provided guidance on configuring APEX. Dr.
448
Wan Jiao, formerly at North Carolina State University and now at U.S. EPA, provided input data.
449
This research has not been subjected to any EPA review and therefore does not necessarily
450
reflect the views of the Agency, and no official endorsement should be inferred.
451
SUPPORTING INFORMATION
452
Additional information on input parameters for microenvironments is summarized in Tables S1.
453
The average Ea/Ca ratios in selected regions, seasons, and age groups are listed in Table S2. The
454
Coefficient of Variation (CV) of inter-individual variability in time spent and Ea,ME/Ca in eight
455
microenvironments are reported for the ES-NC-SP scenario in Table S3. The inputs for school
456
AERs and a comparison of exposure estimates for schools from using mass balance and factor
457
methods is shown in Figures S1 and S5. A summary of children’s time pattern by age group,
458
gender, day type, daily maximum temperature, season and region is presented in Figures S2, S3,
459
and S4. Sensitivity tests on inputs for vehicles are presented in Figure S6. Inter-individual
460
variability in total and microenvironmental ambient exposure for different school age groups and
461
different daily maximum temperature ranges are presented in Figures S7 and S8, respectively. A
462
comparison of inter-individual variability in exposure estimates for children and the elderly for
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463
the NC domain is presented in Figure S9. This information is available free of charge via the
464
Internet at http://pubs.acs.org/
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REFERENCES 1. WHO Air quality guidelines for particulate matter, ozone, nitrogen dioxide and sulfur dioxide: global update 2005: summary of risk assessment. World health Organization: Geneva, 2005. 2. Integrated science assessment for particulate matter. US Environmental Protection Agency: Research Triangle Park, NC, 2009. 3. Bae, S.; Pan, X. C.; Kim, S. Y.; Park, K.; Kim, Y. H.; Kim, H.; Hong, Y. C., Exposures to particulate matter and polycyclic aromatic hydrocarbons and oxidative stress in schoolchildren. Environ Health Perspect 2010, 118, (4), 579-83. 4. Schwartz, J.; Neas, L. M., Fine particles are more strongly associated than coarse particles with acute respiratory health effects in schoolchildren. Epidemiology (Cambridge, Mass.) 2000, 11, (1), 6-10. 5. Mar, T. F.; Jansen, K.; Shepherd, K.; Lumley, T.; Larson, T. V.; Koenig, J. Q., Exhaled Nitric Oxide in Children with Asthma and Short-Term PM2.5 Exposure in Seattle. Environ Health Persp 2005, 113, (12), 1791-1794. 6. Sørensen, M.; Autrup, H.; Hertel, O.; Wallin, H.; Knudsen, L. E.; Loft, S., Personal Exposure to PM2.5 and Biomarkers of DNA Damage. Cancer Epidem Biomar 2003, 12, (3), 191-196. 7. Gauderman, W. J.; Avol, E.; Gilliland, F.; Vora, H.; Thomas, D.; Berhane, K.; McConnell, R.; Kuenzli, N.; Lurmann, F.; Rappaport, E.; Margolis, H.; Bates, D.; Peters, J., The effect of air pollution on lung development from 10 to 18 years of age. New Engl J Med 2004, 351, (11), 1057-1067. 8. Diette, G. B.; Markson, L.; Skinner, E. A.; Nguyen, T. T. H.; Algatt-Bergstrom, P.; Wu, A. W., Nocturnal asthma in children affects school attendance, school performance, and parents' work attendance. Arch Pediat Adol Med 2000, 154, (9), 923-928. 9. Forrest, C. B.; Bevans, K. B.; Riley, A. W.; Crespo, R.; Louis, T. A., School Outcomes of Children With Special Health Care Needs. Pediatrics 2011, 128, (2), 303-312. 10. Moonie, S.; Sterling, D. A.; Figgs, L. W.; Castro, M., The relationship between school absence, academic performance, and asthma status. J School Health 2008, 78, (3), 140148. 11. Pope, C. A.; Dockery, D. W., Health effects of fine particulate air pollution: Lines that connect. J Air Waste Manage 2006, 56, (6), 709-742. 12. EPA, U. S., Guidelines for exposure assessment. In Federal Register, U.S. Environmental Protection Agency: Washington, D.C., 1992; Vol. 57, pp 22888-22938. 13. Wilson, W. E.; Brauer, M., Estimation of ambient and non-ambient components of particulate matter exposure from a personal monitoring panel study. J Expo Sci Env Epid 2006, 16, (3), 264-274. 14. Ashmore, M. R.; Dimitroulopoulou, C., Personal exposure of children to air pollution. Atmos Environ 2009, 43, (1), 128-141. 15. Murray, D. M.; Burmaster, D. E., Residential air exchange rates in the United States: empirical and estimated parametric distributions by season and climatic region. Risk Anal 1995, 15, (4), 459-465.
25 ACS Paragon Plus Environment
Environmental Science & Technology
16.Avery, C. L.; Mills, K. T.; Williams, R.; McGraw, K. A.; Poole, C.; Smith, R. L.; Whitsel, E. A., Estimating error in using ambient PM2.5 concentrations as proxies for personal exposures: a review. Epidemiology (Cambridge, Mass.) 2010, 21, (2), 215-223. 17. Kioumourtzoglou, M. A.; Spiegelman, D.; Szpiro, A. A.; Sheppard, L.; Kaufman, J. D.; Yanosky, J. D.; Williams, R.; Laden, F.; Hong, B. L.; Suh, H., Exposure measurement error in PM2.5 health effects studies: A pooled analysis of eight personal exposure validation studies. Environ Health-Glob 2014, 13. 18. Gauvin, S.; Reungoat, P.; Cassadou, S.; Déchenaux, J.; Momas, I.; Just, J.; Zmirou, D., Contribution of indoor and outdoor environments to PM2.5 personal exposure of children--VESTA study. Sci. Total Environ. 2002, 297, (1-3), 175-181. 19. Meng, Q. Y.; Spector, D.; Colome, S.; Turpin, B., Determinants of Indoor and Personal Exposure to PM(2.5) of Indoor and Outdoor Origin during the RIOPA Study. Atmos Environ (1994) 2009, 43, (36), 5750-5758. 20. Lim, S.; Kim, J.; Kim, T.; Lee, K.; Yang, W.; Jun, S.; Yu, S., Personal exposures to PM2.5 and their relationships with microenvironmental concentrations. Atmos Environ 2012, 47, 407-412. 21. Adgate, J. L.; Ramachandran, G.; Pratt, G. C.; Waller, L. A.; Sexton, K., Spatial and temporal variability in outdoor, indoor, and personal PM2.5 exposure. Atmos Environ 2002, 36, (20), 3255-3265. 22. Adgate, J. L.; Mongin, S. J.; Pratt, G. C.; Zhang, J.; Field, M. P.; Ramachandran, G.; Sexton, K., Relationships between personal, indoor, and outdoor exposures to trace elements in PM(2.5). Sci Total Environ 2007, 386, (1-3), 21-32. 23. Crist, K. C.; Liu, B.; Kim, M.; Deshpande, S. R.; John, K., Characterization of fine particulate matter in Ohio: indoor, outdoor, and personal exposures. Environmental Research 2008, 106, (1), 62-71. 24. Meng, Q. Y.; Turpin, B. J.; Korn, L.; Weisel, C. P.; Morandi, M.; Colome, S.; Zhang, J.; Stock, T.; Spektor, D.; Winer, A.; Zhang, L.; Lee, J. H.; Giovanetti, R.; Cui, W.; Kwon, J.; Alimokhtari, S.; Shendell, D.; Jones, J.; Farrar, C.; Maberti, S., Influence of ambient (outdoor) sources on residential indoor and personal PM2.5 concentrations: Analyses of RIOPA data. J Expo Sci Env Epid 2004, 15, (1), 17-28. 25.Weisel, C. P.; Zhang, J.; Turpin, B. J.; Morandi, M. T.; Colome, S.; Stock, T. H.; Spektor, D. M.; Korn, L.; Winer, A. M.; Kwon, J.; Meng, Q. Y.; Zhang, L.; Harrington, R.; Liu, W.; Reff, A.; Lee, J. H.; Alimokhtari, S.; Mohan, K.; Shendell, D.; Jones, J.; Farrar, L.; Maberti, S.; Fan, T., Relationships of Indoor, Outdoor, and Personal Air (RIOPA). Part I. Collection methods and descriptive analyses. Res Rep Health Eff Inst 2005, (130 Pt 1), 1107; discussion 109-127. 26. Buonanno, G.; Stabile, L.; Morawska, L., Personal exposure to ultrafine particles: the influence of time-activity patterns. Sci Total Environ 2014, 468, 903-907. 27. Dons, E.; Int Panis, L.; Van Poppel, M.; Theunis, J.; Willems, H.; Torfs, R.; Wets, G., Impact of time–activity patterns on personal exposure to black carbon. Atmos Environ 2011, 45, (21), 3594-3602. 28. Chang, H. H.; Fuentes, M.; Frey, H. C., Time series analysis of personal exposure to ambient air pollution and mortality using an exposure simulator. J Expo Sci Env Epid 2012, 22, (5), 483-488. 29. Ozkaynak, H.; Xue, J.; Spengler, J.; Wallace, L.; Pellizzari, E.; Jenkins, P., Personal exposure to airborne particles and metals: results from the Particle TEAM study in 26 ACS Paragon Plus Environment
Page 26 of 35
Page 27 of 35
Environmental Science & Technology
Riverside, California. Journal of exposure analysis and environmental epidemiology 1996, 6, (1), 57-78. 30. Zeger, S. L.; Thomas, D.; Dominici, F.; Samet, J. M.; Schwartz, J.; Dockery, D.; Cohen, A., Exposure measurement error in time-series studies of air pollution: concepts and consequences. Environ Health Persp 2000, 108, (5), 419-426. 31.Goldman, G. T.; Mulholland, J. A.; Russell, A. G.; Strickland, M. J.; Klein, M.; Waller, L. A.; Tolbert, P. E., Impact of exposure measurement error in air pollution epidemiology: effect of error type in time-series studies. Environmental health : a global access science source 2011, 10, 61. 32. Baxter, L. K.; Burke, J.; Lunden, M.; Turpin, B. J.; Rich, D. Q.; Thevenet-Morrison, K.; Hodas, N.; Ozkaynak, H., Influence of human activity patterns, particle composition, and residential air exchange rates on modeled distributions of PM2.5 exposure compared with central-site monitoring data. J Expo Sci Env Epid 2013, 23, (3), 241-247. 33. Jiao, W.; Frey, H. C.; Cao, Y., Assessment of Inter-Individual, Geographic, and Seasonal Variability in Estimated Human Exposure to Fine Particles. Environ. Sci. Technol. 2012, 46, (22), 12519-12526. 34. Branco, P. T. B. S.; Alvim-Ferraz, M. C. M.; Martins, F. G.; Sousa, S. I. V., The microenvironmental modelling approach to assess children's exposure to air pollution – A review. Environmental Research 2014, 135, (0), 317-332. 35. Cao, J.; Yang, C. X.; Li, J. X.; Chen, R. J.; Chen, B. H.; Gu, D. F.; Kan, H. D., Association between long-term exposure to outdoor air pollution and mortality in China: A cohort study (vol 186, pg 1594, 2011). Journal of hazardous materials 2011, 191, (1-3), 398-398. 36. Zivin, J. G.; Neidell, M. J. Temperature and the allocation of time: Implications for climate change; National Bureau of Economic Research: 2010. 37. Brockman, R.; Jago, R.; Fox, K. R., Children's active play: self-reported motivators, barriers and facilitators. Bmc Public Health 2011, 11, (1), 461. 38. Hartig, T.; Catalano, R.; Ong, M., Cold summer weather, constrained restoration, and the use of antidepressants in Sweden. Journal of Environmental Psychology 2007, 27, (2), 107-116. 39. Copperman, R. B.; Bhat, C. R., Exploratory analysis of children's daily time-use and activity patterns: Child development supplement to US Panel Study of Income Dynamics. Transportation Research Record: Journal of the Transportation Research Board 2007, 2021, (1), 36-44. 40. Mauldin, T.; Meeks, C. B., Sex differences in children's time use. Sex Roles 1990, 22, (910), 537-554. 41. Hofferth, S. L.; Sandberg, J. F., How American children spend their time. Journal of Marriage and Family 2001, 63, (2), 295-308. 42. Bhat, C. R.; Misra, R., Discretionary activity time allocation of individuals between inhome and out-of-home and between weekdays and weekends. Transportation 1999, 26, (2), 193-209. 43. Medina-Ramon, M.; Schwartz, J., Temperature, temperature extremes, and mortality: a study of acclimatisation and effect modification in 50 US cities. Occup Environ Med 2007, 64, (12), 827-833. 44. Braun, M. B.; Simonson, S. J., Introduction to massage therapy. Lippincott Williams & Wilkins: 2008. 27 ACS Paragon Plus Environment
Environmental Science & Technology
45. Harlan, S. L.; Brazel, A. J.; Prashad, L.; Stefanov, W. L.; Larsen, L., Neighborhood microclimates and vulnerability to heat stress. Social Science & Medicine 2006, 63, (11), 2847-2863. 46. Burke, J. M.; Zufall, M. J.; Ozkaynak, H., A population exposure model for particulate matter: case study results for PM2.5 in Philadelphia, PA. Journal Of Exposure Analysis And Environmental Epidemiology 2001, 11, (6), 470-489. 47. Total Risk Integrated Methodology (TRIM) Air Pollutants Exposure Model Documentation (TRIM.Expo / APEX, Version 4) Volume II: Technical Support Document. In Research Triangle Park, North Carolina, 2012. 48. Ozone Population Exposure Analysis for Selected Urban Areas. U.S. Environmental Protection Agency: Research Triangle Park, NC, 2007. 49. Risk and Exposure Assessment to Support the Review of the SO2 Primary National Ambient Air Quality Standards: Final Report. U.S. Environmental Protection Agency: Research Triangle Park, NC, 2009. 50. Quantitative Risk and Exposure Assessment for Carbon Monoxide. U.S. Environmental Protection Agency: Research Triangle Park, NC, 2010. 51. Risk and Exposure Assessment to Support the Review of the NO2 Primary National Ambient Air Quality Standard. U.S. Environmental Protection Agency: Research Triangle Park, NC, 2010. 52. Dionisio, K. L.; Isakov, V.; Baxter, L. K.; Sarnat, J. A.; Sarnat, S. E.; Burke, J.; Rosenbaum, A.; Graham, S. E.; Cook, R.; Mulholland, J.; Ozkaynak, H., Development and evaluation of alternative approaches for exposure assessment of multiple air pollutants in Atlanta, Georgia. J Expo Sci Env Epid 2013, 23, (6), 581-592. 53. Quantitative Health Risk Assessment for Particulate Matter. U.S. Environmental Protection Agency: Research Triangle Park, NC, 2010. 54. Che, W.; Frey, H. C.; Lau, A. K., Assessment of the Effect of Population and Diary Sampling Methods on Estimation of School‐Age Children Exposure to Fine Particles. Risk Anal 2014. 55. Koontz, M.; Rector, H. Estimated of Distribution of Residential Air Exchange Rates; EPA 600/R-95/180: 1995. 56. Mullen, N. A.; Bhangar, S.; Hering, S. V.; Kreisberg, N. M.; Nazaroff, W. W., Ultrafine particle concentrations and exposures in six elementary school classrooms in northern California. Indoor Air 2011, 21, (1), 77-87. 57. Shendell, D. G.; Winer, A. M.; Weker, R.; Colome, S. D., Evidence of inadequate ventilation in portable classrooms: results of a pilot study in Los Angeles County. Indoor Air 2004, 14, (3), 154-8. 58. Godwin, C.; Batterman, S., Indoor air quality in Michigan schools. Indoor Air 2007, 17, (2), 109-121. 59. Riediker, M.; Williams, R.; Devlin, R.; Griggs, T.; Bromberg, P., Exposure to particulate matter, volatile organic compounds, and other air pollutants inside patrol cars. Environ. Sci. Technol. 2003, 37, (10), 2084-2093. 60. Jiao, W.; Frey, H. C., Method for Measuring the Ratio of In-Vehicle to Near-Vehicle Exposure Concentrations of Airborne Fine Particles. Transport Res Rec 2013, (2341), 3442.
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61. McCurdy, T.; Glen, G.; Smith, L.; Lakkadi, Y., The National Exposure Research Laboratory's consolidated human activity database. Journal Of Exposure Analysis And Environmental Epidemiology 2000, 10, (6), 566-578. 62. McMillan, N. J.; Holland, D. M.; Morara, M.; Feng, J. Y., Combining numerical model output and particulate data using Bayesian space-time modeling. Environmetrics 2010, 21, (1), 48-65. 63. Du, X.; Wu, Y.; Fu, L. X.; Wang, S. X.; Zhang, S. J.; Hao, J. M., Intake fraction of PM2.5 and NOx from vehicle emissions in Beijing based on personal exposure data. Atmos Environ 2012, 57, 233-243. 64. Abi-Esber, L.; El-Fadel, M., Indoor to outdoor air quality associations with self-pollution implications inside passenger car cabins. Atmos Environ 2013, 81, 450-463. 65. Basu, R., High ambient temperature and mortality: a review of epidemiologic studies from 2001 to 2008. Environ Health-Glob 2009, 8. 66. Sarnat, S. E.; Sarnat, J. A.; Mulholland, J.; Isakov, V.; Ozkaynak, H.; Chang, H. H.; Klein, M.; Tolbert, P. E., Application of alternative spatiotemporal metrics of ambient air pollution exposure in a time-series epidemiological study in Atlanta. J Expo Sci Env Epid 2013, 23, (6), 593-605. 67. Ito, K.; Mathes, R.; Ross, Z.; Nadas, A.; Thurston, G.; Matte, T., Fine Particulate Matter Constituents Associated with Cardiovascular Hospitalizations and Mortality in New York City. Environ Health Persp 2011, 119, (4), 467-473. 68. Rogula-Kozlowska, W.; Klejnowski, K.; Rogula-Kopiec, P.; Osrodka, L.; Krajny, E.; Blaszczak, B.; Mathews, B., Spatial and seasonal variability of the mass concentration and chemical composition of PM2.5 in Poland. Air Qual Atmos Hlth 2014, 7, (1), 41-58. 69. Vecchi, R.; Marcazzan, G.; Valli, G.; Ceriani, M.; Antoniazzi, C., The role of atmospheric dispersion in the seasonal variation of PM1 and PM2.5 concentration and composition in the urban area of Milan (Italy). Atmos Environ 2004, 38, (27), 4437-4446. 70. Franklin, M.; Koutrakis, P.; Schwartz, J., The role of particle composition on the association between PM2.5 and mortality. Epidemiology 2008, 19, (5), 680-689. 71. Bell, M. L.; Dominici, F.; Ebisu, K.; Zeger, S. L.; Samet, J. M., Spatial and temporal variation in PM2.5 chemical composition in the United States for health effects studies. Environ Health Persp 2007, 115, (7), 989-995. 72. Bogen, K. T.; Cullen, A. C.; Frey, H. C.; Price, P. S., Probabilistic Exposure Analysis for Chemical Risk Characterization. Toxicol Sci 2009, 109, (1), 4-17. 73. Schools to be closed for air pollution. http://usa.chinadaily.com.cn/china/201311/06/content_17086343.htm 74. Integrated Science Assessment for ozone and related photochemical oxidants. U.S. Environmental Protection Agency: Research Triangle Park, NC, 2013. 75. Breen, M. S.; Long, T. C.; Schultz, B. D.; Crooks, J.; Breen, M.; Langstaff, J. E.; Isaacs, K. K.; Tan, Y. M.; Williams, R. W.; Cao, Y.; Geller, A. M.; Devlin, R. B.; Batterman, S. A.; Buckley, T. J., GPS-based microenvironment tracker (MicroTrac) model to estimate time-location of individuals for air pollution exposure assessments: Model evaluation in central North Carolina. Journal of exposure science & environmental epidemiology 2014.
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Table 1. Model input data regarding population distribution and days with different daily maximum temperature Population distribution by age and gender (% of the total population) six-county region, NC Harris County, TX New York City Age Range (years) 6 to 11 12 to 14 15 to 18 6 to 18
Month April July October December
Male Female Male Female Female 4.1 5.0 4.8 4.3 4.1 1.9 2.4 2.2 2.0 1.9 2.5 3.1 2.9 2.6 2.5 8.5 10.5 10.0 8.9 8.5 Distribution of daily maximum temperature (% of days per month) six-county region, NC Harris County, TX New York City a b c LT MT HT LT MT HT LT MT HT 3.3 73.3 23.3 0.0 60.0 40.0 23.3 63.3 13.3 0.0 12.9 87.1 0.0 6.5 93.5 0.0 38.7 61.3 9.7 77.4 12.9 0.0 80.6 19.4 22.6 77.4 0.0 70.0 30.0 0.0 10.0 90.0 0.0 96.8 3.2 0.0 Male 4.3 2.0 2.6 8.8
a
Low temperature range (LT: 84 ºF). b
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Percentage of Daily Time
Records: 3155 100%
1715 2776 1012
471
936
812
400
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925 Total = 12,202 Restaurant
80%
Office Store
60%
OtherIndoor Vehicle
40%
Outdoor School
20%
Home
ES: Ages 6 to 11
WEND
WDNS
WDSC
WEND
WDNS
WDSC
WEND
WDNS
WDSC
0%
MS: Ages 12 to 14 HS: Ages 15 to 18
Figure 1. Average daily time spent among eight microenvironments on weekday in school (WDSC), weekday out of school (WDNS), and weekend (WEND) for children of elementary school (ES) age (6 to 11), middle school (MS) age (12 to 14) and high school (HS) age (15 to 18) in Consolidated Human Activity Database.
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Cumulative Frequency
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1.0 0.8 0.6 0.4 0.2 0.0
Spring Summer Fall Winter
0
0.2
0.4
0.6
0.8
1
Ea/Ca
Cumulative Frequency
(a)
Six-county area, North Carolina
1.0 0.8 0.6 0.4 0.2 0.0
Spring Summer Fall Winter
0
0.2
0.4
0.6
0.8
1
Ea/Ca
Cumulative Frequency
(b)
Harris County, Texas
1.0 0.8 0.6 0.4 0.2 0.0
Spring Summer Fall Winter
0
0.2
0.4
0.6
0.8
1
Ea/Ca
(c)
New York City
Note: Ea = daily average total ambient exposure; Ca = daily average ambient concentration.
Figure 2. Geographic and seasonal variability in the ratio of estimated daily ambient exposure to ambient concentration for children of elementary school age (6 to 11) in NC domain, Harris County, TX and NYC, 2002. 33
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1.0 0.8 0.6 0.4 0.2 0.0
Cumulative Frequency
Cumulative Frequency
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WDSC WDNS WEND
0
0.2
0.4
0.6
0.8
1.0 0.8 0.6 0.4 0.2 0.0
WDSC WDNS WEND
0
1
0.2
1.0 0.8 0.6 0.4 0.2 0.0
WDSC WDNS WEND
0.4
0.6
0.8
1.0 0.8 0.6 0.4 0.2 0.0
1
WEND
0.2
0.6
0.8
1
(d) Ambient outdoor exposure Cumulative Frequency
Cumulative Frequency
0.4 Ea, o/Ca
1.0 0.8 0.6 0.4 0.2 0.0
WDSC WDNS WEND
0.4
1
WDNS
0
(c) Ambient exposure at school
0.2
0.8
WDSC
Ea, s/Ca
0
0.6
(b) Ambient exposure at home Cumulative Frequency
Cumulative Frequency
(a) Total ambient exposure
0.2
0.4 Ea, h/Ca
Ea/Ca
0
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0.6
0.8
1.0 0.8 0.6 0.4 0.2 0.0
WDSC WDNS WEND
0
1
0.2
0.4
0.6
0.8
Ea, i/Ca
Ea, v/Ca
(e) Ambient exposure in vehicle
(f) Ambient exposure in other indoors
Note: Ea = daily average total ambient exposure; Ca = daily average ambient concentration; Ea,h= daily average ambient exposure at home; Ea,s= daily average ambient exposure at school; Ea,o= daily average ambient exposure outdoor; Ea,v= daily average ambient exposure in vehicle, Ea,i= daily average ambient exposure in other indoors.
Figure 3. Estimated cumulative frequency distributions of individual daily Ea/Ca in selected microenvironments on weekday in school (WDSC), weekday out of school (WDNS), and weekend (WEND) for children of elementary school age (6 to 11) in NC domain, spring 2002. 34 ACS Paragon Plus Environment
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