Journal Pre-proof Distribution and ecological risk of substituted and parent polycyclic aromatic hydrocarbons in surface waters of the Bai, Chao, and Chaobai rivers in northern China Meng Qiao, Lujing Fu, Zhuorong Li, Dongqing Liu, Yaohui Bai, Xu Zhao PII:
S0269-7491(19)33564-X
DOI:
https://doi.org/10.1016/j.envpol.2019.113600
Reference:
ENPO 113600
To appear in:
Environmental Pollution
Received Date: 5 July 2019 Revised Date:
18 September 2019
Accepted Date: 8 November 2019
Please cite this article as: Qiao, M., Fu, L., Li, Z., Liu, D., Bai, Y., Zhao, X., Distribution and ecological risk of substituted and parent polycyclic aromatic hydrocarbons in surface waters of the Bai, Chao, and Chaobai rivers in northern China, Environmental Pollution (2019), doi: https://doi.org/10.1016/ j.envpol.2019.113600. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. Please note that, during the production process, errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain. © 2019 Published by Elsevier Ltd.
1
Distribution and ecological risk of substituted and parent
2
polycyclic aromatic hydrocarbons in surface waters of the
3
Bai, Chao, and Chaobai rivers in Northern China
4 5
Meng Qiaoa,b, Lujing Fua, Zhuorong Lia, Dongqing Liua, Yaohui Baia, Xu Zhaoa,c,*
6 7
a
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Eco-Environmental Sciences, Chinese Academy of Sciences, Beijing 100085, China
9
b
Key Laboratory of Drinking Water Science and Technology, Research Center for
Key Laboratory of Eco-restoration of Regional Contaminated Environment
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(Shenyang University), Ministry of Education, Shenyang 110044, China
11
c
University of Chinese Academy of Sciences, Beijing 100049, China
1
12
Abstract
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Like their parent polycyclic aromatic hydrocarbons (PAHs), substituted polycyclic
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aromatic hydrocarbons (SPAHs), including methyl PAHs (MPAHs), oxygenated PAHs
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(OPAHs), and chlorinated PAHs (ClPAHs), exist ubiquitously in urban and
16
agricultural rivers. Although laboratory studies have found the biological toxicities of
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certain SPAHs to be higher than that of their parent PAHs, the ecological risk of
18
SPAHs in rivers has been largely ignored. Here, we studied the distribution, source
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and transport of PAHs and SPAHs as well as ecological risks in the Chaobai River
20
System, which experiences a high level of anthropogenic activity. The results show
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that the concentration of ΣOPAHs (321 ± 651 ng/L) was higher than that of ΣPAHs
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(158 ± 105 ng/L), ΣMPAHs (28 ± 22 ng/L), and ΣClPAHs (30 ± 12 ng/L). We also
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found that (S)PAHs in Chaobai River mainly originated from Beiyun River (53%–
24
65%), which receives considerable municipal wastewater treatment plant effluent
25
from Beijing. The major transport pathway of (S)PAHs from Chaobai River was
26
likely for irrigation (83%–86%) and transportation into Yongdingxin River (13%–
27
16%), which finally merged into the Bohai Sea. The mixed chronic risk of (S)PAHs
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(risk quotient = 45 ± 53) was higher than the mixed acute risk (risk quotient = 1.9 ±
29
1.4), with all sites facing chronic risk and 90% of sites experiencing acute risk.
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Although the chronic and acute risks of (S)PAHs to plants, invertebrates, and
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vertebrates were mainly from PAHs (97.5% to chronic risk and 96.5% to acute),
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SPAHs still posed a chronic risk to invertebrates and vertebrates (risk quotient > 1).
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Accordingly, the ecological risk of (S)PAHs in Chaobai River should be taken into 2
34
consideration for ecosystem protection. The transmission of PAHs and SPAHs from
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Chaobai River may also pose potential risks to farmland through irrigation, as well as
36
to the Bohai Sea via river water discharge.
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Capsule:
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SPAHs posed significant chronic risk to invertebrates and vertebrates in Chaobai
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River, although the high acute and chronic risks were primarily from PAHs (> 95%).
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Keywords: Polycyclic aromatic hydrocarbons; Substituted polycyclic aromatic
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hydrocarbons; Source; Transport pathway; Aquatic ecological risk; Taxonomic groups
3
42
1. Introduction
43
Currently, 16 priority polycyclic aromatic hydrocarbons (PAHs) have been
44
designated by the US Environmental Protection Agency (US EPA) as persistent and
45
ubiquitous in aqueous environments (Yao et al., 2017). Recent research has also
46
shown substituted PAHs (SPAHs) to be widely distributed in aqueous environments at
47
similar or even higher concentrations than PAHs (Qiao et al., 2018; Qiao et al., 2017a).
48
The sources of SPAHs in the environment are similar to those of PAHs and include
49
emissions from incomplete combustion of fossil fuels and vehicle exhaust (Tsapakis
50
and Stephanou, 2007; Yoshino and Urano, 1997). Furthermore, some SPAHs can be
51
transformed from their corresponding PAHs through photochemical and biological
52
reactions (Iino et al., 1999; Lundstedt et al., 2007). Importantly, based on laboratory
53
research, the toxicities of some SPAHs are reported to be higher than that of their
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corresponding PAHs. For example, although parent PAHs, such as anthracene, pyrene,
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fluoranthene and chrysene are considered to be non- or weakly carcinogenic, their
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corresponding chlorinated PAHs (ClPAHs) are highly mutagenic when tested against
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Salmonella typhimurium TA 98 and TA 100 (Durant et al., 1996; Lofroth et al., 1985).
58
In addition, while anthracene exhibits no estrogenic activity, its corresponding
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oxygenated PAHs (OPAHs) anthraquinone has shown detectable estrogenic activity
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(Machala et al., 2001). Similarly, the estrogenic activity of OPAHs benzanthrone and
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benz[a]anthracene-7,12-dione are higher than that of their corresponding parent PAH
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benz[a]anthracene (Machala et al., 2001). Therefore, when assessing the ecological
63
toxicities of PAHs, SPAHs should also be considered. 4
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The ecological risks of PAHs have been assessed previously using risk quotient
65
(RQ) and species-sensitivity distribution (SSD) methodologies (Aziz et al., 2014; Cao
66
et al., 2010; Hu et al., 2017; Liang et al., 2019; Liu et al., 2010; Tang et al., 2017;
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Zhang et al., 2017). Earlier research in the Hai River Basin of China identified high
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and moderate risks in several estuaries using the RQ method, with 3-ring and 4-ring
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PAHs accounting most for most of the ecological risk caused by PAHs (Yan et al.,
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2016). However, mixed RQs can overestimate the risk to an ecosystem if species
71
exhibit different sensitivities to different target compounds, and therefore should only
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be used as a first-step indicator of ecological risk (Dudhagara et al., 2016; Gdara et al.,
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2018; Li et al., 2015; Meng et al., 2019). Accordingly, the SSD method was developed
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to describe variation in species sensitivity with statistical distribution functions (De
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Zwart and Posthuma, 2005) and assess the spatial distribution differences in
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ecological risk. For example, in Chaohu Lake, China, the multi-substance potentially
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affected fractions (msPAFs) of seven PAHs were obtained by the SSD model and
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varied from 0.29% to 1.58%, lower than the 5% threshold, with Pyr presenting the
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greatest ecological risk, followed by Ant, Flua, Phe, Nap, Fluo and Ace (Qin et al.,
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2013). However, as the toxic action mechanism of compounds can differ depending
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on the type of recipient species, a mixed risk taxon-specific method was developed
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based on the SSD method, known as the RQ_EQS_Taxa approach (Junghans et al.,
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2013; Spycher et al., 2018). This approach first classifies organisms into three
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taxonomic groups, i.e., plants (P), invertebrates (I) and vertebrates (V). The most
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sensitive species to each target compound is then chosen to calculate the acute and 5
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chronic quality criteria (AQC and CQC), which are derived based on maximum
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acceptable concentration environmental quality standard (MAC-EQS) and annual
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average environmental quality standard (AA-EQS), respectively. Acute and chronic
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quality criteria are calculated combined and separately for each of the three groups.
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As such, the resulting RQ_EQS_Taxa values more closely reflect the ecological risk of
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PAHs than the RQ or SSD methods. To date, however, the ecological risk of SPAHs in
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aquatic environments has been rarely reported. Therefore, we used the RQ_EQS_Taxa
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approach to assess the ecological risk of PAHs and SPAHs to the aqueous
94
environment.
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The Chaobai River System, one of the five largest rivers in the Haihe River Basin
96
in China, runs across Beijing, Hebei, and Tianjin (Xiong et al., 2017). The system
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consists of a typical anthropologically disturbed river with several water gates and
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several different water sources, including the Bai and Chao rivers upstream and the
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Beiyun, Ju, and Yongdingxin rivers downstream. Population density is a key factor for
100
the contamination of PAHs (Yao et al., 2017). As of 2017, the population density
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around the Chaobai River System is approximately 1500 persons/km2. In addition, the
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incomplete combustion of biomass and/or fossil fuel for heating is one of the most
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significant sources of PAHs and SPAHs in northern China (Qian et al., 2017).
104
Therefore, this river is considered to be heavily contaminated by PAHs and SPAHs.
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As such, understanding the distribution, sources, transport pathways, and ecological
106
risks of PAHs and SPAHs in this river system is critical.
107
We investigated the distributions of PAHs and SPAHs in the surface waters of the 6
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Bai, Chao, and Chaobai rivers, identified the sources and transport pathways of PAHs
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and SPAHs in these rivers, and, most importantly, assessed the ecological risks of
110
PAHs and SPAHs to the aquatic environment.
111
2. Materials and methods
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2.1 Target compounds
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We studied 16 target PAHs and 18 target SPAHs, including four methyl PAHs
114
(MPAHs), six OPAHs, and eight ClPAHs. Detailed information on the target PAHs
115
and SPAHs as well as their physical and chemical properties are listed in Table 1 and
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Table S1. Details on the four surrogate standard d-PAHs, two internal standards, and
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organic solvent are shown in Text S1.
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2.2 Sampling sites and strategies
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The Chaobai River System, which is located in Beijing, Hebei, and Tianjin, China,
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includes the Bai and Chao rivers upstream and Chaobai River downstream (Figure 1).
121
The Bai (sampling sites M1–M7) and Chao rivers (M8–M13) originate in Hebei
122
Province, and finally merge into Chaobai River (U1) after discharging from the
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Miyun Reservoir. In the urban area, the Suzhuang water gate at sampling site U5
124
experiences relatively low water flow. The agricultural area receives water from
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Beiyun River, which is mainly composed of effluent from municipal wastewater
126
treatment plants in Beijing via the Yunchaojian River (A1). Downstream, the Chaobai
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River also receives water from Ju River via Yinjuruchao River (A5) and merges into
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Yongdingxin River at site A13, before finally discharging into the Bohai Sea in
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Tianjin. 7
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Surface water samples were collected in March, June, September 2017 and January
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2018. One 4-L sample was taken per site in each season. The GPS coordinates of all
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the sites are listed in Table S2. Temperature, pH, conductivity, dissolved oxygen, and
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oxidation reduction potential were measured in situ at each sampling site. All samples
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were transported to the laboratory on ice and stored at 4 °C before analysis. Although
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sediments are deposited in Chaobai River, the sediment load in 2017 was 0, based on
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data obtained from the Beijing River Sediment Bulletin (2017). Therefore,
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particulates and sediments did not significantly influence the SPAHs and PAHs in the
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aqueous phase, and thus were not considered in this study.
139
2.3 Analytics
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The pretreatment and analytical procedures have been reported in our previous
141
study (Qiao et al., 2017b). In brief, the water samples were filtered with glass
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microfiber filters after transport to the laboratory. The four surrogate standards were
143
added to each water sample after filtration. The aqueous phase samples then
144
underwent solid phase extraction (SPE) using C18 columns preconditioned with 5 mL
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of dichloromethane (DCM), 5 mL of methanol (MeOH), and 5 mL of purified water.
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After extraction, the columns were eluted with 10 mL of DCM and 5 mL of hexane
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successively, with the eluent then concentrated to 0.5 mL and internal standards added
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for instrument analysis. An Agilent 7890A gas chromatograph equipped with a 5975C
149
mass detector (GC-MS) under electron impact (EI) source in selected ion monitoring
150
(SIM) mode was used for detection. A fused silica capillary column (DB-17MS, 30 m
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× 0.25 mm × 0.25 µm) was used for compound separation. The injector and detector 8
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temperatures were 280 °C and 290 °C, respectively. The temperature program was:
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60 °C (held for 1 min), heating to 110 °C at a rate of 20 °C/min, and to 290 °C at a
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rate of 3 °C/min (held for 20 min).
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The recoveries of the four surrogate standard d-PAHs were 92% ± 17%, 93% ±
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19%, 96% ± 20%, and 93% ± 22% [mean (%) ± standard deviation (%)], respectively.
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The limits of detection (LODs) and limits of quantification (LOQs) were calculated
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based on signal-to-noise ratios of 3 and 10, respectively. The recoveries of all target
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compounds and LODs and LOQs are listed in Table S3.
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Total organic carbon (TOC), ammonia nitrogen (NH3-N), nitrate nitrogen (NO3-N)
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total nitrogen (TN) orthophosphate (PO4-P) and total phosphorus (TP) were also
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measured, with details shown in Text S2.
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The mass loading calculations for PAHs and SPAHs in Chaobai River are detailed
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in Text S3.
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2.4 Ecological risk assessment
166 167
Both MAC-EQS and AA-EQS were used to assess ecological risk, representing AQC and CQC, respectively.
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The RQs for all mixed compounds were calculated separately for three taxonomic
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groups, i.e., plants (P), invertebrates (I), and vertebrates (V) according to the RQ-
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EQS_Taxa
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compounds against different species were obtained from the EU Water Framework
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Directive (EU-WFD), National Institute for Public Health and the Environment
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(RIVM), and L'Institut national de l'environnement industriel et des risques (Ineris)
approach (Spycher et al., 2018). The AQC and CQC values for most
9
174
websites (Table S4). If no AQC and CQC data were available, the values were
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calculated based on toxicity data from the Ecotoxicology Knowledgebase of the US
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Environmental Protection Agency Unites (USEPA ECOTOX) (2019) and other
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literature (Table S5). The following calculation procedures were carried out. The
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species were firstly classified into the P, I, and V groups. The median effective
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concentration (EC50) and no observed effect concentration (NOEC) endpoints were
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used for estimating acute and chronic risk for different species. The minimum value
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of the same endpoint (i.e., EC50 and NOEC) was selected as the AQC and CQC for
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each group. The minimum value was divided by an assessment factor based on the
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available number of toxicity data derived from the Technical Guidance for Deriving
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Environmental Quality Standards (European Commission, 2018), resulting in AQC
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and CQC values. The RQmix,j of compound i in taxonomic group j was calculated as: RQ୫୧୶, =
MEC QC
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where, MECi is the concentration of compound i and QCi is the AQC or CQC of
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compound i to taxonomic group j. An RQmix,j value > 1 indicates risk on the
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respective taxonomic group.
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3. Results and discussion
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3.1 Distribution of PAHs and SPAHs in Chaobai River
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The average concentration (± standard deviation) of ΣOPAHs (321 ± 651 ng/L) was
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much higher than that of ΣPAHs (158 ± 105 ng/L), ΣMPAHs (28 ± 22 ng/L), and
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ΣClPAHs (30 ± 12 ng/L) (Table 2). The OPAH contamination in Chaobai River was
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more severe than that in the urban rivers receiving effluent from the wastewater 10
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treatment plants in Beijing and Guangdong province, whereas PAH, MPAH, and
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ClPAH contamination was similar (Qiao et al., 2018; Qiao et al., 2019). The
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concentration of OPAHs only reached very high levels at certain sampling sites and in
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certain seasons (Figure S1), with AT and AQ showing the greatest contribution to total
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OPAHs, accounting for 55% and 18%, respectively (Figure S2).
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Individual compounds, including Nap, Fluo, Phe (all PAHs), and 2-MN (MPAH),
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and all target OPAHs were the major detected PAHs and SPAHs, the median
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concentrations of which ranged from 10 ng/L to 100 ng/L (Figure 2, Figure S2). All
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eight detected ClPAHs were found at lower concentrations than those of PAHs and
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other SPAHs, similar to previous results reported in urban rivers in Beijing and
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Guangdong (Qiao et al., 2018; Qiao et al., 2019).
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The concentrations of PAHs, MPAHs, and OPAHs did not vary significantly among
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the mountain, urban, and agricultural areas, which showed population densities of 215,
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1 244, and 628 persons/km2, respectively (Figure S3). In 2017, the urban area in
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Beijing changed from coal combustion for heating to natural gas and electrical power
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(Xinhuanet, 2017), whereas the mountain area in Miyun district in Beijing and
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agricultural areas in Hebei and Tianjin was still changing their energy use until 2018
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(Tianjin Municipal Peoples's Govenment, 2018; Miyun District Government, 2018;
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The People's Government of Langfang Municipal, 2018). Thus, although the human
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habitation densities in the mountain and agricultural areas were lower than that in the
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urban area, the emissions of PAHs and SPAHs may have been heavier during the
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study period, resulting in the similar pollution profiles among the three areas. The 11
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different ratios of isomers demonstrated that PAHs in the mountain areas originated
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primarily from combustion (Figure S4). Accordingly, the higher concentrations of
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PAHs, MPAHs, and ClPAHs in September and January than in March and June
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resulted from coal combustion in the cold seasons. In contrast, the concentration of
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OPAHs was significantly higher in June than in other seasons, indicating that OPAHs
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originated from different sources other than PAHs and other SPAHs (Figure S3).
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3.2 Sources and transport pathways of PAHs and SPAHs in Chaobai River
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In the Chaobai River System, the concentrations of TN were significantly
225
correlated with those of NH3-N and NO3-N (Pearson correlation, r = 0.596, p < 0.001);
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the concentrations of TP were significantly correlated with those of NH3-N, PO4-P,
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and TOC (Pearson correlation, r = 0.383, 0.973, 0.414, p < 0.01, 0.001, 0.01,
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respectively); and the concentrations of NH3-N were significantly correlated with
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those of TOC (Pearson correlation, r = 0.353, p < 0.01) (Table S6). These results
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indicate that the nutrients and TOC likely originated from treated or untreated
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municipal wastewater. In contrast, the concentrations of ΣPAHs, ΣMPAHs, ΣOPAHs,
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and ΣClPAHs were not correlated with the levels of nutrients or TOC (r < 0.3, p >
233
0.01). In comparison, in the wastewater treatment plant effluent receiving rivers, the
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concentrations of PAHs and SPAHs were well correlated with TOC (Pearson
235
correlation, r = 0.298, p < 0.01) and certain nutrients (Pearson correlation, r = 0.416, p
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< 0.01 for NH3-N; r = 0.377, p < 0.01 for PO4-P, r = 0.357, p < 0.05 for TP),
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suggesting that PAHs and SPAHs mainly came from domestic wastewater (Qiao et al.,
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2018). As such, PAHs and SPAHs in Chaobai River may have other emission sources. 12
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The concentrations of ΣPAHs, ΣMPAHs, and ΣClPAHs were significantly
240
correlated (Pearson correlation, r = 0.920, 0.437, 0.426, p < 0.001), whereas the
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concentration of ΣOPAHs was not well correlated with that of ΣPAHs, ΣMPAHs, or
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ΣClPAHs (r < 0.3, p > 0.05), suggested that PAHs, MPAHs, and ClPAHs likely
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originated from similar sources, i.e., incomplete combustion of fuel and vehicle
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exhaust emissions. In addition to fuel combustion and vehicle emissions, OPAHs are
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used as raw material in the dyeing and paper-making industries (Kaur et al., 2019;
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Srinivasan et al., 2019). OPAHs can also be transformed from PAHs or nitro-PAHs
247
through photo chemical and biological processes (Lundstedt et al., 2007).
248
Due to the cutoff of Bai and Chao River before merging into Chaobai River, we
249
only considered the mass flow in Chaobai River, but Bai and Chao River. To identify
250
the sources and transport pathways of the target compounds in Chaobai River, the
251
mass loadings of PAHs and SPAHs were calculated based on the Chaobai River flow
252
rate (Figure 3). The yearly average flow from Beiyun River via Yunchaojian River
253
(A1) contributed most (69%, 24.47 m3/s) to the flow in Chaobai River. The flow from
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Suzhang Gate upstream of Chaobai River (U5) and Ju River via Yinjuruchao River
255
(A5) contributed only 0.2% and 5%, respectively. The remaining flow originated from
256
unknown sources, with a contribution of 25% (I1). The unknown sources may include
257
precipitation, street sweeping water, and other unknown water discharge. The Chaobai
258
River flow discharged through Niumutun Gate between sites A2 and A3 accounting
259
for 1% (0.5 m3/s) of the total mass flow, likely for irrigation. The flow merged into
260
Yongdingxin River accounting for 33% at Ningchegu Gate (A13, 11.8 m3/s). The 13
261
transport pathways of the remaining flow were unknown, but probably for irrigation,
262
accounting for 43% (O2, 15.2 m3/s) between A3 and A11, and 22% between A11 and
263
A13 (O3, 7.8 m3/s). To identify the sources and transport pathways of PAHs and
264
SPAHs in Chaobai River, we determined their average mass loadings in the four
265
sampling seasons (Figure 3). Similar to the flow rate in Chaobai River, A1 was the
266
major contributor to the total mass loading of PAHs (65%, 286 g/d) and SPAHs (53%,
267
526 g/d). In addition, unknown sources contributed 35% and 47% of the total mass
268
loading of PAHs (153 g/d) and SPAHs (461 g/d), respectively. The discharge at
269
Niumutun Gate, which was likely for irrigation, reduced the loadings of PAHs and
270
SPAHs by 3% (15 g/d) and 20% (208 g/d), respectively. However, the major transport
271
pathways of PAHs and SPAHs were unknown (O2 + O3), but were probably for
272
irrigation, accounting for 80% (362 g/d) and 66% (688 g/d), respectively, with the
273
remaining PAHs (16%, 74 g/d) and SPAHs (13%, 139 g/d) transported into
274
Yongdingxin River at A13.
275
3.3 Ecological risk assessment of PAHs and SPAHs in Chaobai River
276
3.3.1 Risk caused by SPAHs compared with corresponding PAHs
277
Based on the AQC and CQC in Table S4, we identified several MPAHs, OPAHs,
278
and ClPAHs that posed a risk to the aqueous environment, but which have been
279
largely ignored in previous investigations on the ecological risk of PAHs. Here, both
280
the acute and chronic risks of SPAHs and their corresponding PAHs were compared
281
(Figure 4). Results demonstrated that the acute and chronic risks of 2-MN were
282
approximately 10 to 100 times higher than the risk of Nap. The acute risk quotients 14
283
(ARQs) of 2-MN and Nap ranged from 0.002 to 0.07 and 0.0000 to 0.001,
284
respectively; whereas, the chronic risk quotients (CRQs) of 2-MN and Nap ranged
285
from 0.06 to 2.2 and 0.0006 to 0.08, respectively. The risks of 2-CN and 1-CN (ARQs
286
= 0–0.0009, CRQs = 0–0.009) were similar or lower than those of Nap (ARQs = 0–
287
0.0013, CRQs = 0.0006–0.082). Regarding OPAHs, the CRQs of AQ ranged from 0.2
288
to 5.9, which was approximately 10 times higher than that of Ant (CRQs = 0.04–0.33),
289
whereas its acute risk was markedly lower (ARQs = 0.007–0.2 for AQ and ARQs =
290
0.04–0.33 for Ant). The acute and chronic risks of BAT (0–0.01 and 0–1.3,
291
respectively) were more than 10 times lower than that of BaA (0–0.8 and 0–35,
292
respectively). Thus, certain SPAHs appear to exhibit significantly higher acute and/or
293
chronic risk than their corresponding PAHs, i.e., 2-MN and AQ.
294
3.3.2 Risk profiles of mixed PAHs and SPAHs
295
The CRQmix values of all compounds were >1, ranging from 13.3 to 334 (45 ± 53),
296
much higher than the ARQmix values, which ranged from 0.4 to 13.0 (1.9 ± 1.4)
297
(Figure 5). According to the risks standard identified in previous research (Spycher et
298
al., 2018), for acute risk, only 10% of sites were good (0.1 < RQ < 1), 60% of sites
299
were moderate (1 < RQ < 2), 30% of sites were unsatisfactory (2 < RQ < 10), and 1%
300
of sites were poor (10 < RQ < 100); whereas, for chronic risk, 90% of sites were poor
301
(10 < RQ < 100) and 10% of sites were very poor (RQ > 100) (Table S7). Thus, the
302
chronic ecological risk of PAHs and SPAHs against the aqueous ecosystem was much
303
more severe than that of acute risk.
304
Individually (Figure 5), BaP (49%) and Chry (33%) showed the greatest 15
305
contribution (82%) to CRQmix, followed by BaA (7%) Flua (3%), and AQ (2%);
306
whereas, the 4-ring PAHs, including Pyr (17%), BaA (4%), Chry (13%), BbF (23%),
307
and BkF (13%), showed the greatest contribution to ARQmix (70%), followed by 5–6
308
ring DBA (13%) and BghiP (5%), and 3-ring Ant (5%) and Flua (4%). Both BaP and
309
4-ring Chry were the main components of mixed chronic risk, whereas, all 4-ring
310
PAHs, several 3-ring PAHs (including Ant and Flua), and several 5–6 ring PAHs
311
(including DBA and BghiP) exhibited the highest contribution to mixed acute risk. In
312
addition, the total contributions of SPAHs to CRQmix and ARQmix were only 2.5% and
313
3.5%, respectively, much less than that of the PAHs. Among SPAHs, both AQ and
314
2-MN showed the greatest contribution to CRQmix and ARQmix (1.7% and 1.5% for
315
AQ; 1.1% and 0.8% for 2-MN, respectively). Even so, the chronic risks of SPAHs
316
were >1 at more than 85% of sites (Figure S5), indicating that the chronic risks of
317
SPAHs should not be ignored. Additionally, AQC and CQC values have only been
318
derived for five SPAH compounds (i.e., 2-MN, AQ, BAT, 2-CN and 1-CN) from
319
previous literature (Table S5). Thus, if enough published toxicity data were available
320
for all detectable SPAHs, the evaluated risks caused by SPAHs would likely be much
321
higher.
322
3.3.3 RQs for different taxonomic groups
323
We determined the RQs based on the three different taxonomic groups (Figure 6).
324
The ARQmix,I values of PAHs and SPAHs were significantly higher than the values for
325
plants and vertebrates (ANOVA, p < 0.05). The ARQmix,
326
invertebrates were >1 at 83% of sites in Chaobai River; whereas, ARQmix,P and 16
I
values of risk to
327
ARQmix,I values of risk to plants and vertebrates were >1 at 63% and 53% sites,
328
respectively. In addition, the CRQmix, P, CRQmix, I, and CRQmix, V values were >1 for
329
all sampling sites and taxonomic groups (100%). Accordingly, the acute and chronic
330
ecological risk of PAHs and SPAHs posed to invertebrates, plants, and vertebrates in
331
Chaobai River should be taken into serious consideration for ecosystem protection.
332
The acute and chronic risks to the three different taxonomic groups by individual
333
PAH and SPAH compounds were evaluated using the average value at different
334
sampling sites and seasons (Figure 6). For PAH compounds, Pyr and BaA showed
335
obvious acute risk to plants and invertebrates (contributing ~0.4 to ARQmix, P and I), but
336
not to vertebrates. In contrast, Chry, DBA, and BghiP posed an acute risk to
337
invertebrates (contributing ~0.6 to ARQmix, I), but not to plants or vertebrates. Hence,
338
certain compounds only posed a risk to invertebrates, contributing 18% to ARQmix, I,
339
resulting in the highest acute risk. BaP and Chry posed the highest chronic risk to all
340
three taxonomic groups (contributing ~37 to CRQmix, I, P and V), whereas, BaA posed a
341
chronic risk only to plants (contributing ~3.4 to CRQmix, P). Thus, more compounds
342
presented a chronic risk to plants than to invertebrates and vertebrates. Regarding
343
SPAHs, all individual compounds posed risks to different taxonomic groups with RQs
344
<1. For example, 2-MN, AQ, and BAT contributed 0.016, 0.025 and 0.002 to ARQmix,
345
P, I and V,
346
V.
347
and 1-CN contributed 0.8, 0.003, and 0.001 to CRQmix, I and V. Thus, SPAHs posed
348
higher acute and chronic risks to invertebrates and vertebrates than to plants.
whereas 2-CN and 1-CN contributed only 0.0003 and 0.00012 to ARQmix, I and
Both 2-MN and BAT contributed 0.5 and 0.2 to CRQmix, P, I and V, whereas AQ, 2-CN,
17
349
3.3.4 Temporal and spatial variation of ecological risks
350
Based on the water sources and transport pathways of Chaobai River, Yunchaojian
351
River (A1) showed the highest contribution to yearly mass flow of both PAHs and
352
SPAHs. The acute and chronic risks of PAHs and SPAHs to all taxonomic groups at
353
A1 were slightly higher than that upstream of Chaobai River (U5) (Figure 7). Thus,
354
A1 was a major risk contributor in Chaobai River. Although the chronic risks of
355
SPAHs at Yinjuruchao River (A5) were slightly higher than those in Chaobai River,
356
the mass loadings of SPAHs was relatively low; thus A5 was not a major contributor
357
to the risk in Chaobai River. The SPAHs did not pose an acute risk to all taxonomic
358
groups (ARQmix, P, I and V < 1) or chronic risk to plants (CRQmix, P < 1) in Chaobai River,
359
except at the flow input sites (A1 and A5). The CRQmix, I and V values of SPAHs to
360
invertebrates and vertebrates were >1 at all sites. Thus, the PAHs exhibited both acute
361
and chronic risks and SPAHs exhibited chronic risks at the output sites (between U5,
362
A3, A11, and A13 for irrigation, and at A13 to Yongdingxin River) in Chaobai River.
363
Therefore, the transmission of PAHs and SPAHs from Chaobai River may pose
364
potential risks to farmland via irrigation, as well as to Bohai Sea via river water
365
discharge.
366
4. Conclusions
367
The concentrations of ΣPAHs, ΣMPAHs, ΣOPAHs, and ΣClPAHs in Chaobai River
368
were 158 ± 105 ng/L, 28 ± 22 ng/L, 321 ± 651 ng/L, and 30 ± 12 ng/L, respectively,
369
with the main components including Nap, Fluo, Phe, 2-MN, Fluo, AT, and AQ. Both
370
2-MN and AQ posed greater acute and/or chronic risks than their corresponding PAHs. 18
371
In addition, BaP and Chry showed the highest contribution (82%) to total chronic risk,
372
whereas, all 4-ring PAHs showed the highest contribution (70%) to total acute risk.
373
The chronic risks of PAHs and SPAHs were much higher than their acute risk. All
374
sites faced chronic risk and 90% of sites also experienced acute risk. PAHs posed
375
higher acute risk to invertebrates than to plants and vertebrates, whereas, plants were
376
threatened by more chronic risk compounds. SPAHs posed a significant chronic risk
377
to invertebrates and vertebrates (CRQmix >1).
378
Both PAHs and SPAHs in Chaobai River mainly originated from Beiyun River
379
which receives effluent from municipal wastewater treatment plants in Beijing.
380
Beiyun River was also a major risk contributor to Chaobai River. The major transport
381
pathways of PAHs and SPAHs were likely for irrigation (83%–86%) and transmission
382
to Yongdingxin River (13%–16%), which merges into Bohai Sea. Therefore, the
383
transmission of PAHs and SPAHs from Chaobai River may pose potential risks to
384
farmland through irrigation and to Bohai Sea via river water discharge.
385 386
Acknowledgements
387
We gratefully acknowledged Dr. Mireia Marti and Dr. Marion Junghans from the
388
Swiss Centre for Applied Ecotoxicology Eawag/EPFL for providing the AQC and
389
CQC calculation methods, Dr. Els Smit from the National Institute for Public Health
390
and the Environment (RIVM) for deriving AQC and CQC data on different taxonomic
391
groups, and the Beijing Water Authority for deriving the flow rate data in Chaobai
392
River. This work was supported by the Open Funds of the Key Laboratory of 19
393
Eco-restoration of Regional Contaminated Environment (Shenyang University)
394
Ministry of Education, Key Program of the Chinese Academy of Sciences (Grant No.
395
ZDRW-ZS-2016-5-6) and National Natural Science Foundation of China (Grant No.
396
51420105012, 51508552).
397 398
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517
22
518
Table 1 Information on PAHs and SPAHs Type
Compounds
PAHs
Naphthalene Acenaphthylene Acenaphthene Fluorene Phenanthrene Anthracene Fluoranthene Pyrene Benz[a]anthracene Chrysene Benzo[b]fluoranthene Benzo[k]fluoranthene Benzo[a]pyrene Indeno[1,2,3-cd]pyrene Dibenz[a,h]anthracene Benzo[g,h,i]perylene
Abbreviation
Purity
Solvent
Company
Nap Acy Ace Fluo Phe Ant Flua Pyr BaA Chry BbF BkF BaP IncdP DBA BghiP
Mixture, 200 µg/mL
CH2Cl2: MeOH (1:1)
AccuStandard, Inc., USA
MPAHs
2-Methylnaphthalene 2,6-Dimethylnaphthalene 3,6-Dimethylphenanthrene 1-Methylfluoranthene
2-MN 2,6-DMN 3,6-DMP 1-MF
100% 100% 100% 10 µg/mL
Solid Solid Solid Cyclohexane
AccuStandard AccuStandard AccuStandard AccuStandard
OPAHs
9-Fluorenone Anthrone Anthraquinone 2-Methylanthraquinone Benzanthrone Benz(a)anthracene-7,12-dione
9-FL AT AQ 2-MAQ BAT BA-7,12-D
100% 98% 100 µg/mL 99.0% 100% 50 µg/mL
Solid Solid Acetonitrile Solid Solid Toluene
AccuStandard AccuStandard AccuStandard AccuStandard AccuStandard AccuStandard
ClPAHs
1-Chloronaphthelene 2-Chloronaphthelene 1,4-Dichloronaphthelene 9-Chlorophenanthrene 2-Chloroanthracene
1-CN 2-CN DCN 9-ClPhe 2-ClAnt
95.5% 100 µg/mL 99.4% 50 µg/mL 50 ug/mL
Solid Methanol Solid Isooctane Isooctane
AccuStandard AccuStandard AccuStandard Chiron, Norway Chiron, Norway
1-Chloroanthraquinone
1-ClAQ
98%
Solid
AccuStandard
3-Chlorofluoranthene 1-Chloropyrene
3-ClFlua 1-ClPyr
50 µg/mL 50 µg/mL
Isooctane Isooctane
Chiron, Norway Chiron, Norway
519
23
520
Table 2 Concentrations of ΣPAHs, ΣMPAHs, ΣOPAHs, and ΣClPAHs in Chaobai River ng/L
ΣPAHs
ΣMPAHs
ΣOPAHs
ΣClPAHs
ΣSPAHs
Ave ± sd Min Max
158 ± 105 55 882
28 ± 22 5 155
321 ± 651 49 4659
30 ± 12 7 66
379 ± 652 86 4711
521
24
522 523
Figure 1 Sampling sites in Chaobai River System
25
Nap Acy Ace Fluo Phe Ant Flua Pyr BaA Chry BbF BkF BaP IncdP DBA BghiP 2-MN 2,6-DMN 3,6-DMP 1-MF 9-FL AT AQ 2-MAQ BAT BA-7,12-D 2-CN 1-CN D-CN 9-ClPhe 2-ClAnt 1-ClAQ 3-ClFlua 1-ClPyr
Concentration (ng/L) 10000
1000
524 525 100
10
1
0.1
0.01
Figure 2 Concentrations of individual target compounds in Chaobai River System
26
526 527 528 529 530 531
Figure 3 Yearly average flow rate (m3/s) and average PAH and SPAH mass loading in Chaobai River: Average mass loading (g/d) = [CMar. (ng/L) × FMar. (m3/s) + CJun. (ng/L) × FJun. (m3/s) + CSept. (ng/L) × FSept. (m3/s) + CJan. (ng/L) × FJan. (m3/s)] × 0.25 × 86 400 (s/d) / 106, where C is the concentration of PAHs or SPAHs, F is the flow rate at different water gates.
27
2.0 Acute Chronic
Lg (SPAH/PAH)
1.5 1.0 0.5 0.0 -0.5 -1.0 -1.5
2-
M N
/N ap AQ /A BA nt T/ Ba 2A C N /N ap 1C N /N ap
-2.0
532 533
Figure 4 Ratios of SPAH RQ and corresponding PAH RQ for acute and chronic risk
28
1000
RQmix
100
10
1
0.1
534 535 536
Acute
Chronic
Figure 5 RQmix and contribution of individual compounds to RQmix
29
100
10
63%
a
83%
53%
2.0
1000
a
a
50
a
b a
40
1.5
30 RQ
RQmix
100 1
1.0 20
10 0.1
0.5
0.01
537 538 539
100%
100%
100%
C-P
C-I
C-V
1 A-P
A-I
A-V
10
0.0
0 A-P
A-I
A-V
C-P
C-I
C-V
Nap Acy Ace Fluo Phe Ant Flua Pyr BaA Chry BbF BkF BaP IncdP DBA BghiP 2-MN AQ BAT 2-CN 1-CN
Figure 6 Acute (A) and chronic (C) RQ for mixed (left) and individual compounds (right) of the three taxonomic groups (P-plants, I-invertebrates, V-vertebrates)
30
RQmix for PAHs
100 10 1 0.1 0.01 RQmix for SPAHs
100
U5
A1
A2
A3
A5
A11
A13 A-P A-I A-V C-P C-I C-V
10 1 0.1 0.01
540 541 542 543 544
U5
A1
A2
A3
A5
A11
A13
Figure 7 Mixed acute (A) and mixed chronic (C) risk quotients to plants (P), invertebrates (I), and vertebrates (V) caused by PAHs and SPAHs, respectively, along Chaobai River with known input and output flows
31
• • • • •
Concentrations of oxygenated PAHs similar to or higher than PAHs (S)PAHs originated from Beiyun River and transported for irrigation or to Bohai Sea All sites facing chronic risk and 90% of sites experiencing acute risk Risks of anthraquinone and 2-methlynaphthalene higher than corresponding PAHs SPAHs posed significant chronic risk to vertebrates and invertebrates
Declaration of interests The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper. ☐The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: