Annika
Jahnke
*a,
Philipp
Mayer
bc,
Michael S.
McLachlan
a,
Håkan
Wickström
d,
Dorothea
Gilbert
c and
Matthew
MacLeod
a
aDepartment of Applied Environmental Science (ITM), Stockholm University, Svante Arrhenius väg 8, SE-106 91 Stockholm, Sweden. E-mail: annika.jahnke@itm.su.se
bDepartment of Environmental Engineering, Technical University of Denmark, Anker Engelunds Vej 1, DK-2800 Kongens Lyngby, Denmark
cDepartment of Environmental Science, Aarhus University, Frederiksborgvej 399, DK-4000 Roskilde, Denmark
dDepartment of Aquatic Resources, Swedish University of Agricultural Sciences, Stångholmsvägen 2, SE-178 93 Drottningholm, Sweden
First published on 6th January 2014
Passive equilibrium samplers deployed in two or more media of a system and allowed to come to equilibrium can be viewed as ‘chemometers’ that reflect the difference in chemical activities of contaminants between the media. We applied silicone-based equilibrium samplers to measure relative chemical activities of seven ‘indicator’ polychlorinated biphenyls (PCBs) and hexachlorobenzene in eels and sediments from a Swedish lake. Chemical concentrations in eels and sediments were also measured using exhaustive extraction methods. Lipid-normalized concentrations in eels were higher than organic carbon-normalized concentrations in sediments, with biota–sediment accumulation factors (BSAFs) of five PCBs ranging from 2.7 to 12.7. In contrast, chemical activities of the same pollutants inferred by passive sampling were 3.5 to 31.3 times lower in eels than in sediments. The apparent contradiction between BSAFs and activity ratios is consistent with the sorptive capacity of lipids exceeding that of sediment organic carbon from this ecosystem by up to 50-fold. Factors that may contribute to the elevated activity in sediments are discussed, including slower response of sediments than water to reduced emissions, sediment diagenesis and sorption to phytoplankton. The ‘chemometer’ approach has the potential to become a powerful tool to study the thermodynamic controls on persistent organic chemicals in the environment and should be extended to other environmental compartments.
Environmental impactEquilibrium sampling with silicone ‘chemometers’ was applied to determine ratios of chemical activities in eels and sediments for polychlorinated biphenyls (PCBs) and hexachlorobenzene. The study was conducted in an isolated Swedish lake with background contamination and eels introduced in 1979. The chemical activities of the PCBs were lower in the eels than in the sediments (i.e., aEel/aSediment < 1), whereas lipid-normalized concentrations of the eels exceeded organic carbon-normalized concentrations of the sediments (i.e., BSAF > 1). This apparent contradiction is explained by higher sorptive capacity of biota lipids compared to sediment organic carbon. The ‘chemometer’ approach provided novel, thermodynamically based insight into bioaccumulation and is highly promising for studying thermodynamic controls on persistent organic contaminants in a variety of systems. |
Metrics used to describe bioaccumulation4 include the bioconcentration, biomagnification and bioaccumulation factors, biota–sediment accumulation factors (BSAFs) and trophic magnification factors.5 Common to all these metrics is that bioaccumulation is assessed by comparison of measured concentrations of chemicals normalized to the lipid or organic carbon (OC) content of the matrix. The goal of the normalization procedures is to translate concentrations in different media into a common metric that can be compared. However, in this approach potential differences in the sorptive capacities of different lipids, and between lipids and OC are not accounted for, and other sorbing phases of potential importance, such as proteins in lean biota6–8 and black carbon in sediments,9 are neglected.
Fugacity, the equivalent partial pressure of a chemical in the gas phase,10 has been proposed as a metric for comparing levels of contamination in different media, as described by Clark et al.11 and further elaborated by Mayer et al.12 Recently, fugacity ratios have been used as part of an integrative approach to study and understand bioaccumulation.4 A similar concept was proposed by Webster et al.13 in their equilibrium lipid partitioning (ELP) approach. Chemical activity, which quantifies the energetic state of a chemical that determines the potential for spontaneous physicochemical processes, such as diffusion,14,15 is also closely related to fugacity (see Text S1 in the ESI† for additional details on the chemical activity concept). In a pioneering paper, Di Toro et al.16 explained the equilibrium partitioning from sediments to biota lipids on a chemical activity basis, and Mackay et al.17 recently suggested chemical activity as a unifying concept in the environmental assessment and management of chemicals. However, a general limitation on the application of all these concepts is that they often rely upon total concentration data that are transformed into fugacities, ELP concentrations or chemical activities by normalization. Thus, while providing useful conceptual frameworks, they have so far not helped to address the difficulties in choosing the correct normalization procedure.8 Direct measurements of chemical activity and related parameters, which can be achieved with novel equilibrium sampling techniques,15,18 offer a solution.
Here, we explore the utility of such a direct empirical approach for assessing bioaccumulation, and, more generally, for assessing differences in chemical activity or fugacity between environmental media: measuring equilibrium partitioning concentrations in polymer-based passive samplers equilibrated with biota and sediments as a proxy of chemical activity or fugacity in these media. Comparing chemical concentrations in the polymer after equilibration with two or more environmental media is equivalent to comparing the chemical activities or fugacities between those media. We selected silicone polymers as the reference phase, and employed them essentially as ‘chemometers’.12,19 Recent research has shown that silicone possesses unaltered sorptive properties even if immersed in complex matrices such as sediments and fish oil,20 making it suitable for sampling of sediments and biota.
This study aimed to explore the ‘chemometer’ approach using eels and sediments from a Swedish lake as a case study. We equilibrated silicone-based passive equilibrium samplers in eels and sediments collected from the same lake, determined the concentrations of selected persistent organochlorines in the silicone, calculated activity ratios, and compared them to ‘classical’ BSAFs.
In previous studies, equilibrium sampling of polychlorinated biphenyls (PCBs) was applied to sediments from a Finnish lake23 and the Baltic Sea.19 The measured chemical concentrations in the silicone (CSil, Sed, see Table S1 in the ESI† for the most important abbreviations) were then transformed into concentrations in model lipids at thermodynamic equilibrium with the sediments (CSed, Lip) according to
CSed, Lip = CSil, Sed × KLip/Sil | (1) |
Surface sediments were collected at site #4 (Fig. 1) by a diver on 19 November, 2011 by moving wide mouth glass jars over the sediment surface so that the upper 2–3 cm were transferred into the jars. The sediment was collected 20–30 m from a pier at Lomudden on the western shore of the lake at 2.5 m depth and 6 °C water temperature. The sediment samples were transported to the laboratory and stored at 4 °C until further processing. Additional sediment samples were collected at five sites across the lake (Fig. 1) using the same method on 24 November, 2012, at 3.6–7.0 m depth and 6 °C water temperature. The second sediment sampling campaign included the initial sampling location, station #4, to enable assessment of variability between the sampling campaigns.
Two different silicone polymers were used. Thin-films for eel sampling were cut from commercially available SSP-M823 sheets of approx. 30 × 30 cm size and 380 μm thickness (Specialty Silicone Products Inc., Ballston Spa, NY, USA). These films have a uniform thickness and hence the weight of each thin-film was also highly uniform. For sediment sampling, μm-thin layers of silicone were coated in-house on the inner vertical walls of 120 mL amber glass jars using a silicone (DC1-2577, Dow Corning, Seneffe, BE) solution in solvent. The amber glass jars were purchased from ApodanNordic PharmaPackaging A/S (Copenhagen, DK). The inner diameter of the jars was 5.5 cm, and the coating height was 4.6 cm, resulting in a surface area of the silicone coatings of 79 cm2. The glass jar coatings were made from a different polymer than the one used in our previous work19 due to earlier problems with coating detachment during sediment sampling.
To account for differences in the sorptive properties of the two silicone polymers, compound-specific DC1-2577/SSP-M823 partition ratios (KDC/SSP (ref. 27)) were applied. The polymers were inter-calibrated in co-exposure experiments, and KDC/SSP were determined to be 1.70 (HCB), 2.11 (PCBs 101 and 153), 2.15 (PCB 28), 2.29 (PCB 180), 2.30 (PCB 118), 2.34 (PCB 52) and 2.65 (PCB 138) (on average 2.21).27
Each jar was covered with aluminum foil, sealed with the lid and rotated on its side at 21 °C for 2 weeks to allow for equilibration of HCB and the ‘indicator’ PCBs between the sediment and the silicone. The sediment was then discarded, the jar was rinsed twice with 2 mL aliquots of double-distilled water, and the silicone surface was thoroughly wiped with lint-free tissues. For extraction, 2 mL of acetone and 10 μL of each IS solution (see above) were added to the jar, and it was rotated on its side for an additional 30 min. The solvent was removed, and the extraction was repeated with another 2 mL aliquot of acetone. Both solvent aliquots were collected in a test tube and exchanged to 1 mL of isooctane before further processing.
The total organic carbon (TOC) content of the sediments was determined after homogenization and acidification to remove inorganic carbon using an elemental analyzer as described in ref. 19.
A comprehensive cross-check of the equilibrium sampling data was carried out (Table S1†). Firstly, passive sampling data obtained from eels (CSil, Eel) were transformed into equilibrium partitioning concentrations in lipids (CLip, eq) according to
CLip, eq = CSil, Eel × DLip/Sil | (2) |
CSed, free = CSil, Sed/KSil/W | (3) |
CSed, free = CSed, OC/KOC | (4) |
The CSil, Eel results are given in Table S2 in the ESI.† PCB 28 was regularly <MQL; HCB showed chromatographic interferences and was not quantified in some of the extracts as the ratio of the quantifier:
qualifier m/z differed by >20% from that of the calibration standard. PCBs 52, 101, 118, 153, 138 and 180 were quantified in all extracts, with PCBs 153 and 138 showing the highest levels (on average 2180 ± 450 and 1570 ± 500 pg g−1 silicone, respectively, Table S2†).
Eel E consistently showed the lowest PCB levels. Depending on the congener, the highest levels were in eel A or D. The concentrations of the PCBs with 4–7 chlorines were lower by a factor of 1.7 (PCB 180) to 4.4 (PCB 101) (average 2.6 lower) in eel E than in the individual with the highest concentrations. The low levels in eel E may in part be due to a different part of the fish (from the caudal fin vs. the head) having been sampled. However, we assume that inter-individual differences are larger than variability in lipid-normalized concentrations in the different parts of the fish, and have therefore included eel E in calculations of averages and other statistical analyses.
Problems with coating detachment as described earlier for a different polymer19 were not observed with the DC1-2577 coatings. The sediment results are plotted in Fig. 2 (station #4 sampled in 2011 and 2012) and S1 in the ESI† (all data), and the CSil, Sed data are listed in Table S3 in the ESI.† For the samples collected at site #4 in 2011, the coated glass jar method showed levels <MQL for HCB. Furthermore, we observed data <MQL for PCBs 28 and 52 in the jars with 2 μm and 4 μm coatings. All other PCB congeners could be quantified with PCBs 153 and 138 at the highest levels (on average 18.6 ± 1.1 and 24.5 ± 1.3 ng g−1 silicone, respectively, Table S3†).
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Fig. 2 Mass [pg] of the chemical vs. silicone mass [mg] of the glass jar coatings equilibrated with Lake Ången sediment from station #4 sampled in 2011 and 2012. Blanks are also shown. Open symbols represent data <MQL (Table S3†). The HCB data from 2011 were <MQL. The PCB graphs indicate reproducible and artifact-free equilibrium sampling,22 whereas additional assessments (see the text and Fig. S1†) indicated underequilibration of PCBs 138 and 180 in the thickest coating of the 2011 data and PCB 180 at station #5. The p values of the linear regression through the origin for the 2011 dataset (n = 9) were <0.0001, whereas they were <0.008 for the 2012 dataset (n = 3, except for HCB, p = 0.011); data <MQL were included in this assessment. |
In the sample extracts from sites #1 to #5 collected in 2012, HCB was mostly, and PCBs 28 and 52 were occasionally <MQL in the 1 μm silicone coatings and/or at site #4 that showed the lowest levels. There was good agreement between the 2011 and 2012 PCB data collected at station #4 (Fig. 2, with slopes not being significantly different), underlining the reproducibility of sampling and analytical methods and demonstrating low inter-annual variability in Lake Ången sediments. The concentrations at the five stations differed by up to a factor of 2.6 (PCB 101 between stations #3 and #4), with station #4 (2011) at the lower end (Fig. S1†).
The different silicone coating thicknesses on the glass jars22 resulted in linear plots of chemical mass versus silicone mass (Fig. 2) forced through the origin with R2s of 0.94–0.99 for the PCBs with 5–7 chlorines. For the remaining chemicals that were in part <MQL, R2s were 0.88–0.96. This is consistent with the sampler and the medium having achieved equilibrium, and at the same time showing no sign of sampling artifacts.22 Additional validation plots are given in Fig. S1† with the regression lines not forced through the origin. The intercepts were in most cases not statistically different from zero (ANOVA, Fig. S1†), which is consistent with equilibrium partitioning between the sediment and the silicone coatings having been reached. The only exceptions were PCBs 138 and 180 in the 2011 data from station #4 and PCB 180 in the sediment from station #5, which indicate slight under-equilibration or sample depletion in the jar with the thickest silicone coating. Eliminating the 8 μm thick coating from the 2011 data yields intercepts that are not statistically different from zero for PCBs 138 and 180.
As an additional validation measure for the coated glass jar data, we calculated the freely dissolved concentration in the interstitial pore water (CSed, free) of the sediment from station #4 from the silicone-coated glass jars (Table S6 in the ESI†) according to eqn (3). CSed, free are given both at 20 °C and extrapolated to the actual water temperature at the time of sediment sampling (6 °C) as described in ref. 14 and 19. Furthermore, CSed, free was calculated from the exhaustive extraction data (CSed, OC from station #4 (ref. 33)) according to eqn (4). The KOC data used in this transformation were estimated as [0.35 × KOW (ref. 25)] according to Seth et al.,34 [0.63 × KOW] according to Karickhoff et al.35 and [0.98 × KOW] according to Di Toro et al.,16 and the resulting CSed, free is included in Table S6.†CSed, free from the passive sampling approach was compared to CSed, free from the exhaustive extraction, showing reasonable agreement (Fig. S2 in the ESI†). The CSed, free dataset from passive sampling was by an average factor of 1.8 lower than the data obtained using the Seth et al.34 relationship; it agreed well with the data from the Karickhoff et al.35 relationship and exceeded the data from the Di Toro et al.16 relationship by an average factor of 1.5 (Fig. S2†). These differences in CSed, free derived from CSed, OC show that there is considerable uncertainty associated with the calculated CSed, free depending on the generic KOC–KOW relationship since the sorptive capacity of the OC is highly variable.16,34,35
BSAF = CEel, Lip/CSed, OC | (5) |
The obtained BSAFs are plotted in Fig. 3A. In this assessment, only semi-quantitative BSAFs were obtained for HCB, PCB 28 and PCB 52 since they were in part <MQL. For the PCBs with 5 to 7 chlorines, BSAFs ranged from 2.7 (PCB 101) to 12.7 (PCB 153).
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Fig. 3 (A) BSAFs of HCB and the ‘indicator’ PCBs. Open symbols represent data that were in part <MQL. The data above the shaded area corresponding to BSAFs of 1–3 (depending on the supposed generic KOC–KOW relationship16,34,35) indicate an enrichment of the chemicals in eels compared to sediments. (B) (i) Activity ratios [CSil, Eel/CSil, Sed] of HCB and the ‘indicator’ PCBs; (ii) ratios of CEel, Lip and their concentrations in model lipids at thermodynamic equilibrium with the sediments [CSed, Lip = CSil, Sed × KLip/Sil (ref. 24)] calculated from the silicone coatings of glass jars equilibrated with Lake Ången sediments. Averages of all quantifiable data are included. |
We compared the Lake Ången sediment data with our earlier Baltic Sea sediment results from the Stockholm Archipelago.19 The average PCB concentrations in the silicone equilibrated with Lake Ången sediments are between a factor of 0.65 (PCB 52) and 2.36 (PCB 180), and on average 1.21, of the Stockholm Archipelago average. This good agreement of CSil equilibrated with sediments from Lake Ången and the Baltic Sea is consistent with the absence of point sources of PCBs and HCB to Lake Ången.
aEel/aSed = CSil, Eel/(CSil, Sed/KDC/SSP) | (6) |
The activity ratio aEel/aSed for all compounds is below 1.0 (Fig. 3B) indicating a lower chemical activity in eels relative to sediments. Activities in silicone equilibrated with eel tissue are lower by a factor of 2.3 for HCB and factors of 3.5 (PCB 118) up to 31.1 (PCB 101) for PCBs.
We additionally calculated chemical concentrations in model lipids at thermodynamic equilibrium with the sediment (CSed, Lip) according to a modified version of eqn (1) that takes into account the differences in sorptive capacities of the applied silicone polymers:
CSed, Lip = (CSil, Sed/KDC/SSP)KLip/Sil | (7) |
The obtained CSed, Lip was then compared to CEel, Lip from exhaustive extraction (Fig. 3B). The lipid-normalized concentrations in the eels were considerably lower than the equilibrium partitioning extrapolation from sediment to lipid, and the concentration ratios [CEel, Lip/CSed, Lip] were in good agreement with the concentration ratios on a silicone basis [CSil, Eel/CSil, Sed] (Fig. 3B). HCB is closest to equilibrium, whereas PCB 101 shows the largest disequilibrium between sediments and eels, followed by PCB 52, possibly due to biotransformation. Biotransformation of PCBs has been shown to be structure-dependent in fish, being greater for PCBs possessing vicinal hydrogen atoms in the meta/para positions such as PCBs 101 and 52.39
Since the sorptive capacities of biota lipids have been shown not to differ substantially between a large range of different lipids (i.e., olive oil, fish oil and seal oil24 and linseed oil, soybean oil, olive oil, fish oil, milk fat and goose fat40), the variable characteristics of the sediment organic carbon between ecosystems are likely to be decisive for differences of KLip/OC. Correspondingly, KLip/OC are sediment-specific, and our calculated KLip/OC for Lake Ången sediments were 29.3 (PCB 118), 31.2 (PCB 101), 36.1 (PCB 138), 48.3 (PCB 153) and 49.7 (PCB 180).
The observed BSAFs were lower than KLip/OC, which also indicates under-equilibration of biota lipids with sediment OC in agreement with the obtained activity ratios of <1 (Fig. 3B). The Lake Ången dataset hence suggests that differences in the sorptive capacities of lipids and OC may be considerable and deserve evaluation. The differences can be assessed for other systems using the proposed passive sampling approach.
The first is that a process or group of processes may increase the chemical activity in the sediments compared to the overlying water. Higher activities in sediments can, for instance, occur as the result of falling levels in the environment to which a slower response by the sediment compartment compared to water and air can be expected.41,42 Higher chemical activities in sediments relative to water can also be driven by ongoing sediment OC diagenesis that can reduce the sorptive capacity of the sediments and thereby increase the chemical activity of persistent chemicals in the sediments.43 While both these processes are expected to occur in Lake Ången, they will only induce significant sediment–water disequilibrium if the transfer of chemicals from sediments to the water column is slow compared to the loss of chemicals from the water column to the air, which seems unlikely for this shallow lake with an average depth of 5 m.
The second hypothesis is that reduced activity in the water column results from primary production and subsequent sorption of persistent chemicals to phytoplankton. Nizzetto et al.44 reported that this process can act as an efficient biological pump, dramatically decreasing freely dissolved concentrations in the water column. For food webs for which contaminant exposure is primarily determined by the water column, this situation could result in an exposure below that expected from the sediments. While this process is very efficient under stratified conditions and during the peaks of primary production,44 it seems unlikely that the overall annual effect alone is sufficient to explain the considerably lower chemical activities in the eels compared to sediments. Furthermore, this effect should be of minor importance in a shallow lake such as Lake Ången where stratification will seldom occur. The observation of HCB being closer to equilibrium than the more hydrophobic PCBs is consistent with this second explanation, since phytoplankton-related contaminant depletion in the water column is of higher importance with increasing hydrophobicity.45
A third hypothesis is that the sediment samples were not representative of the actual habitat of the eels. However, the small range in CSil, Eel and in CSil, Sed (a factor of 2.6 and 3.1, respectively, for PCB 153, n = 14 and 24, respectively) compared to the extent of the thermodynamic gradient (CSil, Eel/CSil, Sed = 0.16) speaks against this explanation. Furthermore, the eels had very likely been present in the lake for more than 20 years and therefore had ample opportunity to migrate throughout the lake.
The fourth hypothesis is that enhanced biotransformation could contribute to lower chemical activities in the eels. However, we do not believe that this process could be sufficiently fast to be the dominant factor determining our measured activity ratios.
Finally, it is possible to hypothesize that there is an error in the passive sampling methodology. We have carefully evaluated the methods with respect to equilibration and a range of potential artifacts22,29 as described above. A lack of equilibration during sediment sampling is unlikely for the vast majority of the presented data (see above), and even if it was the case, it could not explain the observed activity ratios, since under-equilibration would imply an even larger disequilibrium between eels and sediments. A change of sorptive properties of the silicone when immersed in sediments and biota can be ruled out based on a previous study.20 A lack of equilibration during in-tissue sampling would bias the ratios in the observed direction, but is unlikely based on previous time series studies,21,32 experiments using different silicone thicknesses21 and due to the inclusion of a safety factor of approx. 6 times prolonged sampling times. Furthermore, this effect would also become obvious when comparing CLip, eq (Table S4†) with CEel, Lip (Table S5†). Finally, the observation of HCB being closer to equilibrium than the more hydrophobic PCBs is an additional indication of well-calibrated methods, since HCB in general is a faster-equilibrating compound which leads to smaller activity gradients than those observed for PCBs.
In summary, it is at present difficult to identify a single hypothesis or mechanism that can explain the observed disequilibrium between eels and sediments. The activity ratios <1 might rather be the result of several processes, some of them being discussed above. This study illustrates that the ‘chemometer’ approach can effectively indicate thermodynamic differences in real environmental systems, whereas additional studies may be required to fully explain the causes of these differences. The ‘chemometer’ measurements might thus inspire research on phenomena and processes that are not yet sufficiently understood to be integrated into environmental fate models.
Footnote |
† Electronic supplementary information (ESI) available. See DOI: 10.1039/c3em00589e |
This journal is © The Royal Society of Chemistry 2014 |