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Revisiting the Contributions of Far- and Near-Field Routes to Aggregate Human Exposure to Polychlorinated Biphenyls (PCBs) Li Li, Jon Arnot, and Frank Wania Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.8b00151 • Publication Date (Web): 17 May 2018 Downloaded from http://pubs.acs.org on May 17, 2018
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Environmental Science & Technology
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Revisiting the Contributions of Far- and Near-Field Routes to Aggregate Human Exposure to Polychlorinated Biphenyls (PCBs)
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Li Li1*, Jon A. Arnot1,2, and Frank Wania1
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1. Department of Physical & Environmental Sciences, University of Toronto at Scarborough, Toronto,
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Ontario, Canada, M1C 1A4
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2. ARC Arnot Research & Consulting, Toronto, Ontario, Canada, M4M 1W4
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Corresponding Author: Li L.; E-mail:
[email protected]. Phone: +1 (647) 601-4450
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ORCID:
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Li Li: 0000-0002-5157-7366
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Frank Wania: 0000-0003-3836-0901
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TOC Art
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Abstract
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The general population is exposed to polychlorinated biphenyls (PCBs) by both consuming food
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from far-field contaminated agricultural and aquatic environments, and inhalation and non-dietary
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ingestion in near-field indoor or residential environments. Here, we seek to evaluate the relative
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importance of far- and near-field routes by simulating the time-variant aggregate exposure of
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Swedish females to PCB congeners from 1930 to 2030. We rely on a mechanistic model, which
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integrates a food-chain bioaccumulation module and a human toxicokinetic module with dynamic
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substance flow analysis and nested indoor-urban-rural environmental fate modeling. Confidence in
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the model is established by successfully reproducing the observed PCB concentrations in Swedish
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human milk between 1972 and 2016. In general, far-field routes contribute most to total PCB uptake.
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However, near-field exposure is notable for (i) children and teenagers, who have frequent
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hand-to-mouth contact, (ii) cohorts born in earlier years, e.g., in 1956, when indoor environments
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were severely contaminated, and (iii) lighter chlorinated congeners. The relative importance of far-
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and near-field exposure in a cross-section of individuals of different age sampled at the same time is
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shown to depend on the time of sampling. The transition from the dominance of near- to far-field
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exposure that has happened for PCBs may also occur for other chemicals used indoors.
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Introduction
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It has generally been accepted that the human population takes up polychlorinated biphenyls (PCBs)
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predominantly via food originating from contaminated agricultural and aquatic environments (i.e., “far-field” environments) that are mostly distant from where PCB-containing products are used.1-3
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This understanding is rooted in the fact that PCBs are so hydrophobic and persistent that they are able to magnify to appreciable levels along food chains.4 It is also intuitively plausible because the bulk (> 70%) of the PCBs has been used outdoors (e.g., in large electrical transformers)5 and PCBs have long been detected in many outdoor environmental matrices (e.g., soils and sediments).6-8 Reliable information on food contamination therefore is a key requirement when modeling the time-variant human exposure to PCBs. Temporally resolved food contamination information can be either obtained from empirical observations,3, 9 derived semi-empirically from the contamination of the physical environment,10 or modeled mechanistically by considering contaminant accumulation along food chains.11, 12 However, although models often characterize the contamination of food realistically, irritatingly they do not always perform equally well in terms of predicting human exposure or the resulting body burdens. For example, Breivik et al.11 underestimated the lipid-normalized PCB concentrations observed in Swedish mothers’ milk samples taken from 1972 to 1992, despite successfully reproducing the observed time-dependent contamination in fish, beef and dairy products from the region. The underestimation is more notable for lighter chlorinated congeners (e.g., with a difference of up to 10 times for PCB-28 and 2 times for PCB-153), and for observations at earlier times (e.g., before 1980).11 Likewise, a toxicokinetic model underpredicted by a factor of 2 the observed lipid-normalized PCB-101 concentrations among a Welsh population in 1990, in particular for individuals under the age of 35.10 Is it possible that exposure pathways other than the diet are associated with the underestimation? Not until twenty years ago did researchers and regulators recognize the importance of PCB uptake from contaminated indoor environments (i.e., “near-field” environments) where PCBs have been used as additives to paints, caulks and joint sealants.13-15 In a few residential and school buildings, PCB contamination remains startlingly high even four decades after their construction or renovation with PCB-containing materials between the mid-1950s and 1970s.16 Interestingly, some existing biomonitoring evidence suggests that certain near-field exposure routes, e.g. air inhalation and dust ingestion, have features that match those of the overlooked source of exposure. For example, lighter
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chlorinated congeners (notably tri- and tetrachlorobiphenyls) are significantly more abundant in individuals living in contaminated indoor environments than those living elsewhere.17-21 Near-field
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exposure may contribute more to the total PCB exposure among some vulnerable groups, such as
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toddlers and K12 children.22 Furthermore, Meyer et al.23 observed PCB concentrations among
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residents living in contaminated indoor environments four times higher than in a reference population, which cannot be explained by differences in food contamination. We therefore
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hypothesize that neglecting near-field exposure is responsible for the underestimation in existing
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PCB exposure modeling. However, to date, the historical indoor emissions and contamination of
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PCBs have yet to be characterized mechanistically. While the human uptake via inhalation of
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contaminated urban outdoor air has been taken into account in an earlier modeling effort,3 the human uptake from more contaminated indoor environments has not been incorporated into current models.
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As such, the relative importance of far- and near-field uptake routes remains largely unexplored. In addition, human exposure is dynamic in nature, not only because the magnitude of individual exposure routes is age-dependent (e.g., due to anthropometric characteristics and human behavior that changes with age), but also because the contamination of exposure relevant environments varies in response to time-variant emissions. We therefore need to explore how the route-specific contributions vary over time. Here, we revisit the case of aggregate PCB exposure among Swedish women, previously investigated by Breivik et al.11 using only a far-field exposure model, by additionally taking into account emissions and contamination of PCBs in near-field environments and near-field uptake routes. To this end, we develop a mechanistic, dynamic modeling framework, which allows for an integrated simulation of PCB contamination of far- and near-field environments, accumulation along food chains, and ultimately time-variant concentration in humans. While we recognize some high-throughput screening models also couple and reconcile co-occurring far- and near-field exposure scenarios (e.g., the USEtox24 and SHEDS-HT25 models, and refs.26, 27), they are not ideal for this investigation because those models are static or steady state. While this work focuses on PCBs, which are “legacy” contaminants, its conclusions may also be beneficial for predicting, even
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reducing and preventing, human exposure to a wider range of “emerging” contaminants presently used indoors.
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Methods
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Overview of modeling framework
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Figure 1 overviews the modeling framework, which incorporates a dynamic substance flow analysis (Block I), a nested multimedia module describing chemical transport and fate in indoor, urban and
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rural environments (Block II), a food-chain bioaccumulation module calculating contamination in food (Block III), and a one-compartment human toxicokinetic module calculating aggregate exposure and the resulting concentration in bodies (Block IV). Construction, parameterization and testing of Blocks I and II have been described in detail in Li et al.28
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The model depicts the technosphere and the physical environment of the western Baltic drainage basin, which includes the territory of Sweden. The starting point of the modeling is the information
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on annual import of PCBs to the modeled region (since 1931), and the respective consumption
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indoors (e.g., mainly as additives to paints, caulks and joint sealants) and outdoors (e.g., mainly as
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coolants and lubricants in electrical transformers and capacitors). As shown in Figure 1, the dynamic
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substance flow module (Block I) calculates the accumulation of PCBs in indoor and outdoor
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in-service products (i.e., in-use stocks), landfills and dumps (i.e., waste stock), as well as emissions
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from industrial processes, use phase and waste disposal. Emissions from the indoor in-use stock serve as inputs to the indoor air compartment, and the remaining emissions are inputs to the urban air
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and fresh water (Figure S1). Despite recognizing the fact that PCBs were used in some, but not all, Swedish buildings, we assume that the entire indoor environment in the modeled region is a single uniform space receiving homogeneous indoor emissions. Thus, our modeled concentrations represent an “average” indoor contamination level across Sweden. Next, based on the indoor and outdoor emissions, the nested multimedia module (Block II; Figure 1) calculates time-variant concentrations in various compartments (e.g., air, fresh water, estuarine water, soil, carpet, vinyl floor and organic film) of near-field (i.e., indoor) and far-field (i.e., urban and rural) environments.28 The module considers the mass exchange between the indoor and urban environments through ventilation (based on an observed median air exchange rate of 1.23 h-1), and that between the urban and rural environments through atmospheric (based on an average atmospheric residence time of 27.2 h) and fresh water advection (based on precipitation rate). It also describes permanent loss of the emitted PCBs from the environment via anthropogenic (e.g., cleanup of indoor surfaces) and natural (e.g., irreversible burial in sediments) removal processes. Furthermore, the food-chain bioaccumulation module (Block III; Figure 1) takes the rural environmental concentrations and simulates the bioaccumulation through terrestrial and aquatic food chains. PCB concentrations in organisms at the time of slaughter represent the contamination levels in food, which, along with the contamination in indoor and urban environmental compartments, serve as inputs to the human toxicokinetic module (Block IV; Figure 1). The human toxicokinetic module calculates the time-variant uptake of PCBs via far- and near-field routes, and the evolution of PCB concentrations by taking into account major elimination processes (egestion, urination, respiration, biotransformation, etc.). The modeled results are for an “average” Swede living in an “average” house, i.e., represent the overall contamination level of the general Swedish population. Both Blocks III and IV are based on the fugacity approach,29 whereby the concentration of a chemical (C; in mol m-3) in an organism or human compartment is the product of a fugacity (f; in Pa) and a compartmental fugacity capacity (Z-value; in mol m-3 Pa-1). The mass transfer rate (N; in mol h-1) is expressed as the product of the fugacity (f; in Pa) in the compartment from which the chemical
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is coming, and a transfer parameter (D-value; in mol h-1 Pa-1). The model framework is applied to two PCB congeners (Table S1): PCB-28 is relatively volatile and degradable, and PCB-153 is much
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less volatile and more persistent.
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In the following, all organisms including the human, excluding the lumen of their gastrointestinal
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tracts, are treated as single well-mixed compartments of aqueous and lipid phases. Accordingly, all exposure results are represented in terms of the chemical amount that penetrates the absorption
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barriers (e.g., gastrointestinal tract wall, respiratory tract lining and skin) and is truly absorbed by
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wildlife and humans (i.e., uptake or internal exposure30), instead of the amount that crosses an outer exposure surface but does not necessarily pass the absorption barriers (i.e., intake or external
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exposure30).
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Figure 1. Schematic overview of the modeling framework applied in this study. A substance flow analysis module (Block I) estimates the stocks and emissions of PCBs. The transport and transform of PCBs in indoor, urban and rural environments are simulated with a nested
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multimedia module (Block II). Note that compartments irrelevant to chemical uptake by organisms and humans are hidden. A food-chain bioaccumulation module (Block III) and a
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human toxicokinetic module (Block IV) calculate the far- and near-field exposures.
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Food-chain bioaccumulation module
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The bioaccumulation module builds upon the earlier ACC-Human model12 and considers two food
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chains (Figure 1). The aquatic food chain consists of plankton, a planktivorous fish (represented by
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Baltic herring) and a piscivorous fish (represented by Baltic cod) living in the estuarine environment.
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The terrestrial food chain comprises vegetation (i.e., pasture grass for herbivores and vegetables for humans), and herbivorous animals raised either for meat (represented by beef cattle) or milk
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(represented by dairy cattle). Note that the vegetation here is different from the vegetation compartment (representing deciduous and coniferous trees) defined in Block II.28 All the organisms
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live in the rural environment.
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In contrast to ACC-Human12 which uses equations of different type to describe the contaminant
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dynamics in different organisms, we parameterize a generic equation (Eq. 1) incorporating processes applicable to different organisms (a process is set to zero if it is not applicable to an organism):
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d (VB ⋅ Z B ⋅ f B ) = ( IN diet + IN water + IN air + IN soil ) dt − ( OUTegestion + OUTwater + OUTair + OUTbiotransformation + OUTlactation ) = ∑ ( DfB,i ⋅ f B,i ) + DwaterB ⋅ f W,rural + DairB ⋅ f A,rural + DsoilB ⋅ fS,rural
(Eq. 1)
i
− ( DegestB + DwaterB + DairB + DbiotransB + DlactB ) ⋅ f B 161 162 163
where, VB is the body volume of an organism, which can be calculated from its age-dependent weight (Figure S2) and an organism density (assumed to be identical to that of water); ZB is the
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fugacity capacity of an organism, which is averaged from the fugacity capacities of water and lipid phases weighted by their volumetric fractions in the organism (Text S1); fB is the fugacity in the
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target organism; t is time (in h). Other denotations are elaborated in Text S1 unless explained below.
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As indicated in Eq.1, four uptake routes are considered (Text S1). (i) Uptake through eating prey
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(INdiet) is applicable to species other than plankton and vegetation. (ii) Uptake from water (INwater) describes either gill ventilation of estuarine water by aquatic species or the drinking of freshwater by
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terrestrial species. (iii) Uptake from air (INair) includes foliar mass exchange between the atmosphere and vegetation, and respiratory uptake by terrestrial animals. (iv) Uptake from soil (INsoil) results
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from the unintentional ingestion of soil particles on the pasture or harvested feed by terrestrial
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species, as well as root uptake by vegetation. We assume that intake rates of food, water, air and soil
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are proportional to body weight (Text S1). Three absorption efficiencies are applied to convert the calculated intake to uptake: For gastrointestinal uptake (INdiet and INsoil), a gastrointestinal absorption
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efficiency (ED) is organism-specific and calculated from the octanol-water partitioning coefficient (KOW; Text S1).31-33 For uptake from water (INwater) and air (INair), absorption efficiencies (EW and EA) are assumed to be 100% unless indicated in Text S1. In addition, we also consider five removal processes from organism bodies (Text S1). (i) Egestion via feces (OUTegestion) is applicable to organisms other than plankton and vegetation. (ii) Loss to water (OUTwater) includes gill ventilation for aquatic species and urination for terrestrial species. (iii) Loss to air (OUTair) includes foliar mass
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exchange between the atmosphere and vegetation, and exhalation by terrestrial animals. (iv)
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Biotransformation (OUTbiotransformation) is applicable to all organisms. (v) Lactation (OUTlactation) is the
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most notable process for dairy cattle.
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For each organism, Eq.1 links its fugacity with the fugacities in prey (fB,i), water (fW, estuarine water
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for aquatic species and fresh water for terrestrial species), rural air (fA,rural) and soil (fS,rural). Therefore, solution of this set of sequential equations yields the time-variant accumulation of a chemical in
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individual organisms. We define the ages at which organisms are either eaten by predators, or slaughtered or harvested by humans (Figure S2). For example, the cattle are slaughtered in the 28th
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month after birth. Thus, the chemical concentration in each kind of food is calculated from its fugacity at the moment the prey dies. For simplification, contamination of milk is assumed to equal
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the fugacity in dairy cattle in the 28th month.
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Human toxicokinetic module
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The uptake and elimination of PCBs by humans are modeled using the following toxicokinetic module (Eq. 2):
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d (VH ⋅ Z H ⋅ f H ) = N far-field + N near-field dt − ( DeH + DurH + DreH + DmH + DperH + DlH + DchH ) ⋅ f H
(Eq. 2)
in which, the product of an “effective” body volume (VH in m3), the fugacity capacity of the human body (ZH in mol Pa m-3) and the human fugacity (fH in Pa), represents the total amount of a chemical within the human body (in mol); t is time (in h); DeH, DurH, DreH, DmH, DperH, DlH, and DchH are D-values (in mol Pa−1·h−1) representing chemical loss from humans via egestion, urination,
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respiration, biotransformation, percutaneous excretion, lactation, and childbirth, respectively. The parameters above are calculated as in ACC-Human.12 The temperature of the human body (including
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skin and hands) is constant at 37 °C.
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In Eq.2, Nfar-field and Nnear-field sum up the far- and near-field uptake rates (in mol h-1), respectively.
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The far-field uptake includes:
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(I) Diet: Ndiet =
∑(D
fH,i
⋅ f fH,i ) . For infants younger than 6 months, human milk is the only dietary
i
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item; the consumption rate is taken from ref.12 and assumed to be constant throughout lactation. Note
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that while uptake through breast-feeding is accounted for in our calculation it is not discussed in this paper. Children and adults eat fish, beef, dairy, and vegetables, whereby Sweden-specific
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consumption rates of different kinds of food are taken from refs.12, 12
34-36
and are extrapolated
to account for age dependence. To remain consistent with earlier studies,11, 37, 38
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according to ref.
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we do not consider (i) losses or additions of PCBs during food processing and preparation, (ii)
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consumption of food imported from outside the modeled region, and (iii) temporal changes in diet
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composition;
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(II) Ingestion of soil particles (including soil and settled dust39) from the urban environment: Nsoil =
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DsoilH ⋅ fS,urban . We adopt the age-dependent soil ingestion rate recommended by the USEPA;39
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(III) Drinking water that originates from rural fresh water: Nwater = DwH ⋅ f FW,rural . An age-dependent
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water consumption rate is taken from ref.12;
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(IV) Inhalation of outdoor air (gaseous and particulate phases): Nair,outdoor = DreH,outdoor ⋅ f A,urban . As
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recommended, we assume that an individual spends on average 10% of the time outdoors.39 An age-dependent respiration rate is taken from ref.12.
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The near-field routes include:
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(I) Dermal permeation: Ndermal = DdeH ⋅ f A,indoor , which is described as two processes in series (Text
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S2):40 (i) diffusion across a stagnant air layer above the skin, quantified with an air-side mass transfer
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coefficient and a bathing removal efficiency, and (ii) permeation through the skin (specifically the stratum corneum and/or viable epidermis), quantified with a mass transfer coefficient within the skin
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(also named a dermal permeability coefficient). The relationship between age and the total body surface is parameterized as recommended in ref.16, 18. For simplification, we do not consider the
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impact of clothing on dermal permeation;
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(II) Non-dietary ingestion of PCBs from indoor compartments via (i) “hand-to-mouth transfer”,
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which involves mouthing or sucking hands that had contact with contaminated indoor surfaces and dust thereon, and (ii) “object-to-mouth transfer”, which involves licking or chewing contaminated
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indoor objects (e.g., smoking) and dust thereon.41, 42 Non-dietary ingestion is calculated by Nnondiet =
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DXH ⋅ f X (X = carpet, vinyl floor, organic film on hard surfaces). Hand-to-mouth transfer is treated
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as two sub-processes in series (Text S2): (i) surface-to-hand skin transfer, which depends on
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frequencies and contaminant transfer efficiencies for contact between hands and different surfaces, and is corrected for removal by hand washing; and (ii) hand-to-mouth contact, which depends on
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frequency and contaminant transfer efficiency of mouthing. We assume that the fugacity in indoor objects is the same as that in the indoor organic film. Age-dependent contact frequencies are taken
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from ref.43 (for children under the age of 11) and ref.41 (for other ages). The area of the hands is 5% of the total body surface,39 with a palm accounting for 40% of the area of a hand.42 The lip area
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available for mouthing is assumed to be 0.5% of the total body surface;42 and
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(III) Inhalation of indoor air (gaseous and particulate phases): Nair,indoor = DreH,indoor ⋅ f A,indoor .
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For gastrointestinal absorption (dietary and non-dietary ingestions, and ingestion of soil particles), we use a KOW-dependent absorption efficiency (ED)33 to convert calculated intake to uptake. For
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inhaled air, the absorption of gaseous contaminants is associated with an efficiency (EA) of 70%, and that of contaminants in the particulate phase is based on particle size-specific deposition fractions in the human respiratory system.42 Contaminants in ingested water are assumed to be fully bioavailable, i.e. EW = 100%. The model simulates the lifetime (up to the age of 80) aggregate exposure and the resulting body burden of females in different birth cohorts. To include her perinatal exposure, we additionally simulate the body burden of her mother, who gives birth at a user-defined age, up to the end of breast-feeding. The initial fugacity of every newborn and the fugacity of milk are equal to the
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fugacity of the mother. The initial fugacity of the mother and the fugacity of the milk she was fed are assumed to be negligible, as the perinatal exposure of a woman has little effect on her body burden
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during child-bearing age.44
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Results and discussion
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Evaluation of model performance
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Modeled concentrations in the indoor, urban and rural environments (outputs of Blocks I and II) have
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been evaluated in Li et al.28 Briefly, the modeled concentrations agree with the means or medians of observed concentrations in indoor air, as well as in air, fresh water, estuarine water and soil in the
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rural environment of the modeled region, with differences of less than a factor of two. In particular, our modeled peak concentrations in indoor air (~45 ng m-3 for PCB-28 and ~13 ng m-3 for PCB-153)
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are within the ranges (14 – 296 ng m-3 for PCB-28 and 1.5 – 45 ng m-3 for PCB-153) measured in
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rooms with known PCB sources.45-47
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We evaluate here the performance of the food-chain bioaccumulation module (Block III) and human toxicokinetic module (Block IV) by comparing model predictions with literature-reported
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observations (available since the late 1980s). Figures S3 and S4 compare the predicted and observed PCB-28 and PCB-153 concentrations in herring and cod; Figure S5 presents the comparison for PCB-153 in beef (data for PCB-28 not available in the literature). Overall, our predictions are in reasonable agreement with observations. Figures S3 – S5 also compare our predictions with those by Breivik et al.,11 demonstrating that our predictions peaked earlier, and are higher, than theirs before the mid-1970s, but the two predictions converge for the period after the mid-1970s. Whereas the
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herring data indicate that our predictions fit better with earlier observations than Breivik et al.11, the scarcity of congener-specific food contamination observations before the 1980s prevents us from
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determining which model’s prediction is more reasonable.
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Figure 2 compares the modeled time course of lipid-normalized PCB concentration in mothers’ milk
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with observations.48, 49 The mothers were 27 to 31 years old and 55% – 75% of them were nursing
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their first infant.48 We therefore use concentrations predicted in women aged 27, 29 and 31 immediately after bearing their first child for comparison. Modeled concentrations agree with
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observations within a factor of two. It is worth mentioning that our calculation is for a hypothetical “average” Swede living in a hypothetical “average” house, whereas in reality, only some Swedes lived in houses with indoor PCB sources. Figure S6 presents results of our additional calculation, which predicts that individuals living in PCB-contaminated buildings would be 13 (PCB-28) and 3 (PCB-153) times more contaminated than their counterparts living in PCB-free buildings, if we assume that PCBs had been used in 10% of Swedish buildings in which 10% of Swedes lived. Earlier monitoring work observed that the median concentrations of PCB-28 and PCB-153 in blood of Swedes living in flats with PCB-containing sealants are 30 (p < 0.001) and 1.3 (p = 0.35) times of those of Swedes living in uncontaminated flats.50 Furthermore, despite the remarkable difference between the concentrations predicted in the two groups of Swedes, the average concentration
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weighted by the relative size of the two groups is quite close to our modeled result for the hypothetical “average” Swede. This suggests that the modeled result is insensitive to the assumption
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as to what fractions of the Swedish population lived in buildings with and without PCB emissions.
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Our model performs much better than the model by Breivik et al.11 (Figure 2), which not only
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underestimated the observations but also failed to reproduce the observed temporal trend. Such an improved modeling performance is mainly attributed to two of our modifications to work by Breivik
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and colleagues.11 First, instead of assuming constant emission factors for a total in-use stock combining both indoor and outdoor uses,11 we distinguish between indoor and outdoor emissions and consider a rapid decline in emissions from indoor in-use stocks (see description of Block I in Li et al.28). Therefore, compared with Breivik et al.11, our approach predicts heavier contamination of the regional environment prior to mid-1970s. Second, in addition to the dietary exposure considered by Breivik et al.11, our approach incorporates the contribution of near-field routes to the human body burden. As demonstrated in the following sections, near-field exposure is more notable for individuals born in earlier times due to the remarkable indoor contamination at the time. The above two reasons point to severe regional emissions and contamination in the past, as well as higher relevance of near-field exposure routes to historical PCB concentrations, thus explaining the reason
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that Brevik et al. “tends to significantly underestimate the earlier values while being more in line with recent measurements”.11 In fact, Breivik et al.11 and Wood et al.51 also realized that their
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emissions prior to the 1970s had been too low, as modeling performance was improved by
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additionally assuming a 5% PCB loss during industrial processing. However, this 5% lacks a
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mechanistic explanation, and it is likely an overestimate according to a follow-up substance flow analysis.52 Instead of incriminating industrial processes, our work attributes the underestimation to
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higher emissions from indoor in-use stock in early years.
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Figure 2. Comparison between modeled and observed48, 49 PCB-28 (a) and PCB-153 (b) concentrations in Swedish first-time mothers’ milk. Modeled results in Breivik et al.11 are also
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presented for comparison. The single observational value for each year before 1996 represents a pooled sample comprising over 100 individual milk samples,48 whereas
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observations after 1996 are presented in means and standard deviations.49
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Additional calculations were performed to evaluate the relative contribution of the two modifications
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to our improved model performance relative to Breivik et al.11 (Figure S7). For PCB-28, the update
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of emission estimate is insufficient to explain the better fit with observations, because the modeled concentrations are still only half of the observed ones even if all atmospheric emissions occur in the
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rural environment, as assumed in Breivik et al.11 This suggests the importance of taking into account
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near-field exposure routes. For PCB-153, using the updated emission estimate but moving all atmospheric emissions to the rural environment can also lead to a satisfactory agreement between
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modeled and observed concentrations. Whereas ignoring the indoor and urban emissions omits the contribution from near-field exposure, it also adds the part of the PCB emissions that is predicted to
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be retained in the indoor and urban environments (~31% of the cumulative emissions by 201528) to
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the rural contamination. However, other parameters, e.g., the human biotransformation half-life
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(HLB), can be highly uncertain and variable. It is possible that equally good agreement between model and observations could also be achieved from parametrizations that do not consider near-field
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exposure, e.g., if the rural environment is assumed to have received all atmospheric PCB-28 emissions and a HLB at the lower end of the known range is applied (Figure S8). Therefore, further
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investigations may still want to thoroughly examine possible alternative explanations.
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Longitudinal aggregate exposure of cohorts born at different times
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We begin our discussion by illustrating how the age-dependent change in human exposure factors (i.e., anthropometric characteristics and human behavior) influences the relative contributions of
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near- and far-field routes to the aggregate human exposure to the two congeners. To eliminate the confounding effect of time-variant environmental contamination, we assume hypothetical constant emissions (e.g., 1 unit per time) of PCBs to either indoor (Figures 3a and 3c) or urban air (Figures 3b and 3d), which results in steady-state contamination of indoor, urban and rural environments. Figure 3 indicates that far-field routes contribute similarly to human total exposure with either indoor or urban emissions. This is because the contamination of the rural environment, where food originates, responds to the total regional emissions, irrespective of whether the emissions take place in indoor or urban environments.28 However, near-field exposure to PCB-28 almost equals far-field exposure in the case of indoor emissions (Figure 3a). Indoor emissions also increase the aggregate exposure to PCB-153 but the increment is less prominent than in the PCB-28 case (Figure 3c). In addition, when emissions occur outdoors (Figures 3b and 3d), near-field exposure (mainly inhalation of indoor air) does exist, albeit very small, because of ventilated contamination from outdoor air. During the lifetime of an individual, dietary uptake and inhalation peak in young adulthood; non-dietary ingestion is notable in childhood because mouthing behavior is frequent before adolescence (Figures 3a and 3c). For all ages, diet dominates the human far-field exposure to the two congeners. Inhalation of indoor air is always the single dominant route for near-field exposure to the more volatile PCB-28 (Figure 3a), whereas non-dietary ingestion contributes most to children’s near-field exposure to the less volatile PCB-153 (Figure 3c). Our identified dominant near-field exposure routes agree with an earlier study,42 in which PCB-28 was assigned to a chemical cluster (defined by molecular weight, partitioning properties and indoor degradation half-life) for which
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inhalation of indoor air is of great importance in determining the total “indoor intake fraction”, whereas PCB-153 belonged to a cluster where non-dietary ingestion dominates. In addition, because
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the two congeners have very low solubility and permeability, other routes make rather minor
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contributions to the total exposure.
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Figure 3. The lifetime total uptake rate of PCB-28 (Panels a and b) and PCB-153 (Panels c and d) under constant emissions solely to indoor air (Panels a and c) and urban air (Panels b
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and d). Note that the absolute values of the lifetime total uptake rates are arbitrary in this illustrative calculation; for each congener, the total uptake rates under two scenarios are
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normalized to the same magnitude thus no scale is provided.
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When realistic time-variant emissions are taken into consideration, the age-dependent route-specific
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contributions to aggregate human exposure differ between birth cohorts. Figure 4 shows the longitudinal, annually averaged exposure to PCB-28 and PCB-153 of female cohorts born in 1956
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(when indoor emissions started to increase), 1986 (when declining indoor emissions were exceeded by outdoor emissions), and in 2016 (when indoor and outdoor contamination is minimal) (Figure 4).
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The total uptake rates in recent years are lower than historical ones (moving from left to right in Figure 4), in accordance with the declining PCB contamination in different scales of the environment
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since the mid-1970s.28
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Figure 4. Age dependence of the total uptake rates of PCB-28 (Panels a, b, and c) and PCB-153 (Panels d, e, and f) by different exposure routes for females born in 1956, 1986 and 2016. In Panels b, c, e and f, the uptake rates at the age