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Ecotoxicology and Human Environmental Health
Using compound-specific and bulk stable isotope analysis for trophic positioning of bivalves in contaminated Baltic Sea sediments Caroline Ek, Henry Holmstrand, Lukas Mustajärvi, Andrius Garbaras, Ruta Bariseviciute, Justina Sapolaite, Anna Sobek, Elena Gorokhova, and Agnes ML Karlson Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.7b05782 • Publication Date (Web): 22 Mar 2018 Downloaded from http://pubs.acs.org on March 23, 2018
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Using compound-specific and bulk stable isotope analysis for trophic positioning of bi-
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valves in contaminated Baltic Sea sediments
3 4
Caroline Eka,*, Henry Holmstranda, Lukas Mustajärvia, Andrius Garbarasb, Ruta Barise-
5
viciuteb, Justina Sapolaiteb, Anna Sobeka, Elena Gorokhovaa, Agnes ML Karlsona,c
6 7
a
8
Svante Arrhenius väg 8, SE-106 91 Stockholm, Sweden
Department of Environmental Science and Analytical Chemistry, Stockholm University,
9 10
b
11
LT-02300 Vilnius, Lithuania
Mass Spectrometry Laboratory, Center for Physical Science and Technology, Savanoriu 231,
12 13
c
14
rhenius väg 20, SE-114 18 Stockholm, Sweden
Department of Ecology, Environment and Plant Science, Stockholm University, Svante Ar-
15 16
*Corresponding author:
17 18
Caroline Ek
19 20 21 22 23 24 25 26
Department of Environmental Research and Monitoring, Swedish Museum of Natural History, Frescativägen 40, SE-114 18 Stockholm, Sweden +46 8 5195 4107
[email protected] ACS Paragon Plus Environment
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Abstract
28 29
Stable nitrogen isotopes (δ15N) are used as indicators of trophic position (TP) of consumers.
30
Deriving TP from δ15N of individual amino acids (AAs) is becoming popular in ecological
31
studies, because of lower uncertainty than TP based on bulk δ15N (TPBulk). This method would
32
also facilitate biomagnification studies provided that isotope fractionation is unaffected by
33
toxic exposure. We compared TPAA and TPBulk estimates for a sediment-dwelling bivalve
34
from two coastal sites, a pristine and a contaminated. Chemical analysis of PCB levels in
35
mussels, sediments, and pore water confirmed the expected difference between sites. Both
36
methods, but in particular the TPAA underestimated the actual TP of bivalves. Using error
37
propagation, the total uncertainty related to the analytical precision and assumptions in the TP
38
calculations was found to be similar between the two methods. Interestingly, the significantly
39
higher intercept for the regression between TPAA and TPBulk in the contaminated site com-
40
pared to the pristine site indicates a higher deamination rate due to detoxification as a result of
41
chronic exposure and a higher 15N fractionation. Hence, there is a need for controlled experi-
42
ments on assumptions underlying amino acid-specific stable isotope methods in food web and
43
bimagnification studies.
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Introduction
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Stable isotope analysis (SIA) is an essential tool for analysis of food web structure, which is
49
increasingly used in ecosystem management and risk assessment of environmental contami-
50
nants. The ratio of stable nitrogen isotopes (15N:14N, expressed relative to an international
51
standard; δ15N value) can be used for establishing the trophic position (TP) of consumers due
52
to its stepwise increase up the food chain. According to recommendations set in EU legisla-
53
tion,1 the TP estimates are of particular relevance for monitoring of contaminants in biota un-
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der the Water Framework Directive. For chemical status assessment the European Commis-
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sion recently suggested normalisation of contaminant concentrations in monitored species to a
56
specific TP before checking compliance with Environmental Quality Standard (EQSBiota) val-
57
ues. This procedure would both minimize natural variability and allow for flexibility in the
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choice of monitoring species between member states.1 A common approach for TP estimation
59
is to measure δ15N of different food web components in specific tissues or whole body sam-
60
ples, bulk δ15N values. However, with this approach, information on the so called isotope
61
baseline δ15N (ultimate nitrogen source, which can vary considerably between ecosystems)
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and the trophic shift (∆15N; the trophic enrichment in
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called trophic discrimination factor) are also required to assign particular consumers to specif-
64
ic TPs in the food web.2 The accuracy of TP estimates based on bulk δ15N (TPBulk) are de-
65
pendent on the predictability of the isotope transfer between the diet and the consumer, with
66
average values of 2-4 ‰2-4 commonly being used. However, large variability in ∆15N (-3.2 ‰
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to +9.7 ‰;4,5) exists which introduce uncertainty to the TPBulk estimates. Other areas of con-
68
cern with respect to the accuracy of TP estimates are variations in the baseline isotopic com-
69
position with potential differences on both a spatial6 and temporal scale,7,8 which require rel-
70
evant sampling of either primary producers or primary consumers to provide the δ15N corre-
71
sponding to TP 1 or TP 2, respectively.9,10
72 73
The recent improvement in the SIA-based approach for TP assessment, which is termed com-
74
pound specific isotope analysis (CSIA), provides information on stable isotope ratios in spe-
75
cific compounds, e.g. amino acids (AAs, AA-CSIA). Some AAs, often referred to as trophic
76
AAs, increase in δ15N between the diet and the consumer, whereas others, source AAs, show
77
none or very little change in their δ15N. Chikaraishi et al.11 proposed a new method to esti-
78
mate TP (TPAA) using the relationship between glutamic acid (Glu, trophic AA) and phenylal-
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anine (Phe, source AA). The method suggested thus allows for both trophic shift information
15
N between diet and consumers, also
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(δ15NGlu) and an integrated baseline δ15N value (δ15NPhe) from a single sample of a consumer.
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CSIA can therefore provide a more accurate TP estimation compared to previous methods.11-
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14
83
pared to the TPBulk estimates.15,16
84 85
Trophic magnification factors (TMFs) are used to assess contaminant biomagnification in a
86
food web,17 as opposed to assessing magnification only between two TPs. The TMF is the
87
slope of the regression between contaminant concentration and TP for consumers in the food
88
web and thus indicates the average increase in contaminant concentration per trophic level.
89
Improved understanding of food web structure, variability in TP, and, especially variations in
90
the baseline isotopic composition, are critical for accurate TMF assessments. Application of
91
TPAA instead of TPBulk may allow for more precise comparisons between ecosystems and im-
92
prove TMF accuracy, provided that isotope fractionation is unaffected by toxic exposure in
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contaminated environments. The latter concern stems from recent experimental studies indi-
94
cating that δ15N and δ13C values may be affected by various physiological responses to con-
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taminant exposure.18-21 Energetic costs imposed by toxicity have been linked to various re-
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sponse mechanisms related to active removal, biotransformation and excretion of harmful
97
compounds.22 Many of these processes directly affect nitrogen fluxes, and thus may influence
98
15
99
AA-δ15N values are products of their specific biosynthetic pathways.24 Therefore, any stress
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(e.g. contaminant exposure) that alters amino acid metabolism may lead to profound changes
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in individual AA-δ15N values. Since the amount, and therefore relative abundances, of AAs
102
contribute to variations in bulk δ15N, it is possible that changes in dominant AAs will translate
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into altered bulk δ15N values.
104 105
Effects of toxic exposure on δ15N and δ13C values have so far been explored mostly in labora-
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tory settings.18-20,25,26 Therefore, field evaluations of the impact of toxic exposure on TP esti-
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mates in chronically polluted systems are necessary. Here, we focus on the comparative anal-
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ysis of TP estimates (TPBulk and TPAA) obtained for a facultative deposit- and suspension-
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feeding bivalve in relatively pristine and heavily contaminated environments. Suspension-
110
feeders are commonly used as a δ15N baseline in food web analysis because these animals
111
presumably integrate the isotopic signal of primary producers, which decreases δ15N variabil-
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ity related to seasonal and spatial heterogeneity of the first trophic level.9,10 We addressed two
113
questions: (1) do TPs inferred from bulk (TPBulk) and amino acid (TPAA) stable isotope analy-
In food web studies, this method was found to produce more reliable TP estimates com-
N fractionation via, for example, imbalance in protein synthesis and protein catabolism.23
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sis differ, and (2) do TPs differ between areas experiencing different contaminant load. As a
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test species, we used a small marine bivalve Limecola balthica (Linnaeus, 1758) categorised
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as a primary consumer with a TP of 2,8 although it is likely that the actual TP of the species
117
can be closer to 2.5 as it feeds on sediment possibly containing organic material originating
118
from higher trophic levels e.g. heterotrophic bacteria, excrements from other organisms and
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resting eggs of zooplankton.27 The animals were collected together with sediment (proxy for
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their diet28) in a coastal area of the northern Baltic proper. The animal and sediment samples
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were analysed for isotope composition (bulk and AA-CSIA) and contaminant concentrations
122
(PCBs; omnipresent and bioaccumulative persistent contaminants listed under the Water
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Framework Directive), and the TPBulk and TPAA values were calculated for each site and com-
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pared.
125 126
Material and Methods
127 128
Study sites
129 130
Two study sites in the north-western Baltic proper were selected: Ålöfjärden (N58° 40’45;
131
E17° 8’28; contaminated site) and Uttervik (N58° 50’; E17° 32; reference site). Both sites are
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shallow bays in the southern Stockholm Archipelago, located approximately 25 km apart. The
133
Uttervik site corresponds to the monitoring station 6001 (depth 20 m) in the combined Swe-
134
dish national-regional monitoring program for benthic fauna and sediments in the Baltic prop-
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er; no point sources of environmental contaminants are known from this area. The Ålöfjärden
136
site is highly contaminated due to an active steelwork industry in the vicinity. This bay is
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classified as having very high contaminant load for PAHs,29 with reported PAH concentra-
138
tions in sediment of 16 to 50 µg g DW-1.30,31 According to the national monitoring programs
139
and a recipient-control study in Ålöfjärden,30,32 the basic environmental conditions (sediment
140
type, average chlorophyll concentration, benthic and pelagic species composition) are similar
141
between the Ålöfjärden and Uttervik sites (Table S1).
142 143
Field sampling of Limecola balthica and sediment
144 145
The specimens of Limecola balthica (formerly known as Macoma balthica) as well as surface
146
sediment were collected from 7.5 m (n=2) and 20 m (n=1) bottom depth on October 10 (7.5 m
147
depth) and November 19 (20 m depth) 2014 in Ålöfjärden, and from 7, 8 and 20 m bottom
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depth in Uttervik (ntot=3) on November 19, 2014. Sampling was conducted using a benthic
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sled set at collecting the oxidised upper 2 cm of sediment from each site and depth. Sediments
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were sieved on a 1 mm mesh and Limecola specimens of similar size were picked out and
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immediately frozen at -20 °C. Additional sediment samples for contaminant analyses in total
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sediment and pore water were sampled with a gravity corer from the same stations.
153 154
Chemical analysis of polychlorinated biphenyls (PCBs)
155 156
Seven indicator PCBs (CB28; CB52; CB101; CB118; CB138; CB180; PCB7), were analysed
157
in the animals, sediment and pore water. Pore water concentration was included since it is a
158
more reliable indicator of exposure to sediment-living organisms than total sediment concen-
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tration.33 PCB7 were chosen as indicators for contamination levels since they have been moni-
160
tored for almost two decades in the Baltic Sea and are commonly found in environmental
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samples.34 Sediment and mussels were extracted by Accelerated Solvent Extraction (ASE)
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and the passive samplers used for pore water analysis were extracted by ultrasonication; both
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methods used hexane:acetone as solvent. Clean-up was performed with open silica gel col-
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umns and all samples were analysed on a gas chromatographer coupled to a mass spectrome-
165
ter (GC-MS). See Supporting Information Chemical analysis of Polychlorinated biphenyls
166
(PCBs) for the details on the chemical analysis.
167 168
Stable isotope ratio analyses
169 170
Limecola samples (1 mg of freeze-dried individual specimens, homogenized using a mortar
171
and pestle) as well as sub-samples of sediment (15 mg DW) were analysed for bulk δ15N and
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δ13C at the Center for Physical Science and Technology, Vilnius, Lithuania. Subsamples (5
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mg, freeze-dried animals) originating from the same individual as for the bulk analysis were
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analysed for AA-CSIA at the Department of Environmental Science and Analytical Chemis-
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try, Stockholm University, Sweden.
176 177
Bulk isotope ratio analysis
178
A Flash EA 1112 Series Elemental Analyzer connected via a Conflo III to a DeltaV Ad-
179
vantage isotope ratio mass spectrometer (all Thermo Finnigan, Bremen, Germany) was used
180
to analyse bulk samples. The stable isotope ratios
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to the international standards atmospheric air (δ15N) and Vienna Pee Dee Belemnite (δ13C).
182
Caffeine (IAEA-600) was used as secondary reference material for the reference gas calibra-
15
N:14N and 13C:12C are expressed relative
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tion. An internal standard, fish muscle tissue (Esox lucius), was analysed in the beginning,
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middle and end of each run (n = 6); overall analytical precision was less than 0.1 ‰ for both
185
δ15N and δ13C. Elemental composition of nitrogen and carbon (%N and %C, respectively) are
186
expressed as the percentage content of the sample dry weight. Calibration curves for the %N
187
and %C quantification were created using EMA P2 reference material (Elemental Microanal-
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ysis). For analytical precision of elemental composition, a series of samples (n = 9) each con-
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taining a single individual of the crustacean Daphnia magna collected from a culture (size
190
340-520 µg) were used. The overall analytical precision was 0.2% and 0.9% for %N and %C,
191
respectively
192 193
Amino acid compound specific isotope analysis (AA-CSIA)
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Samples of freeze-dried mussel powder were hydrolysed in 6 M hydrochloric acid (HCl), pu-
195
rified using a cation exchange resin and derivatized in two consecutive reactions. First an es-
196
terification using an acetyl chloride:isopropanol mixture (1:4) was carried out to remove the
197
carboxylic group, followed by the second derivatization; an acylation using a trifluoroacetic
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anhydride:dichloromethane mixture (1:3) to remove the amino group. The samples were then
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dissolved in ethyl acetate and transferred to GC-vials and analysed using a GC-combustion-
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isotope ratio MS (GC-C-IRMS). For more details, see Supporting Information, Amino acid
201
compound specific isotope analysis (AA-CSIA). After every fourth sample, a standard sample
202
was analysed that generated an analytical precision of 1.1 ‰ (nGlu = 10) and 1.5 ‰ (nPhe = 8)
203
for Glu and Phe, respectively.
204 205
Data analysis
206 207
The estimates for TPBulk and TPAA were calculated using equation 12 and 2,11 respectively. For
208
TPBulk, 3.4 ‰ was used as the average trophic shift (∆15NBulk) and average sediment δ15N val-
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ues for the site in question as a baseline. The bulk of the organic carbon and nitrogen content
210
in Baltic Sea sediments is considered to consist mainly of blooms from microalgae and cya-
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nobacteria,35 generally from seasonal phytoplankton blooms; in particular the spring bloom of
212
diatoms.36,37 For this reason we have chosen to set the TPbase=1 although it is likely that also
213
other types of organic matter with potential higher TPs can contribute as food sources e.g.
214
heterotrophic bacteria, excrement from other organisms and resting eggs from zooplankton.27
215
For TPAA, the offset in glutamic acid and phenylalanine in primary consumers (βGlu/Phe) can
216
vary substantially depending on mode of photosynthesis. For planktonic algae and cyanobac-
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teria this difference is assumed to be +3.4 ‰ whereas for terrestrial C3 vascular plants it has
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instead been reported to be -8.4 ‰.38 Such difference will impact the TP estimate substantial-
219
ly in mixed systems where the plant sources are not monolithic39 wherefore it is important to
220
consider and assess the relative contribution of different plant sources at the base of the food
221
web at the specific study site. In this study we have examined shallow coastal ecosystems that
222
can potentially be such mixed systems. However, based on the resemblance of δ13C values for
223
both bivalves (Uttervik: -19.4 ‰; Ålöfjärden: -20.2 ‰) and sediment (Uttervik: -21.6 ‰;
224
Ålöfjärden: -23.8 ‰) in our study to planktonic δ13C (-18 to -24 ‰), a large contribution of
225
terrestrial carbon (-25 to-37 ‰) is not likely.35,40-42 Moreover, terrestrial material can be high-
226
ly refractory and do not promote growth in deposit-feeders.21,41 For an extended description of
227
potential food sources see table S1 in the Supporting Information.
228 229
For the TPAA calculations, the difference in glutamic acid and phenylalanine in primary con-
230
sumers (βGlu/Phe) was set to +3.4 ‰ representing cyanobacteria and microalgae, and the
231
trophic shift between glutamic acid and phenylalanine (∆15NGlu-Phe) set to 7.6 ‰, respectively,
232
according to Chikaraishi et al.:11
233 234
= ( − )⁄∆ + 1
235
= ( − −
236 237
Uncertainties associated with TPBulk and TPAA estimates were calculated using error propaga-
238
tion.43 For TPBulk, the analytical precision of δ15N determination for animals and sediment
239
(this study) and ∆15NBulk (±0.98 ‰;2) were used. For TPAA, the analytical precision of δ15N
240
determination in Glu and Phe (this study) as well as βGlu/Phe (±0.9 ‰) and ∆15NGlu-Phe (±1.2 ‰)
241
as recommended by Chikaraishi et al.11 were used.
242 243
Bioaccumulation factors in bivalves (lipid normalized) based on pore water concentrations
244
(Cpw, BAF) and total sediment concentrations (Ctot, BSAF) of each PCB congener was calcu-
245
lated as:
/ )⁄∆ "
(Equation 1) +1
(Equation 2)
246 &'())*+
247
#$% =
248
#.$% =
(Equation 3)
&,&'())*+
(Equation 4)
&/0/
249
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Statistics
252 253
Sediment data (%C, %N, δ15N and δ13C) were compared between the sites to evaluate similar-
254
ities in the baseline δ15N and ultimate carbon sources. This was done using generalised least
255
square models with restricted maximum likelihood (GLS-REML) to account for incomplete
256
independency of samples within each site. To test the site effect on δ15N and δ13C values in
257
the bulk samples, generalized linear models (GLMs) were used with δ15N (δ13C) as a response
258
variable and site, sampling depth and the interaction term site × depth as explanatory varia-
259
bles. Models were evaluated using Shapiro-Wilks test for normality and the most parsimoni-
260
ous model was selected based on the Akaike Information Criterion (AIC). To test if the bioac-
261
cumulation factors (BAF for pore water and BSAF for sediment concentrations) for PCBs
262
differed between sites (Ålöfjärden vs. Uttervik), paired t-tests were performed with the seven
263
PCB congeners as pairs (log-transformed mean values within sites for each congener was
264
used, Table S2).
265 266
Two-way ANOVA was used for evaluating differences in TP between the estimation methods
267
(TPBulk vs. TPAA) and sites (Ålöfjärden vs. Uttervik); Sidaks’ post-hoc test was used for pair-
268
wise comparisons. Whether the TP estimates deviated from the nominal TP of 2, correspond-
269
ing to primary consumers such as bivalves and gastropods,10 was tested using one sample t-
270
test. Moreover, to test the effect of site (indicating exposure effect) on the relationship be-
271
tween TPAA and TPBulk, a GLM with TPAA as response variable and site, TPBulk and the inter-
272
action term site × TPBulk as explanatory variables was carried out. To interpret the main ef-
273
fects of the model, TPbulk values were centred.44 The rationale for this test was to evaluate
274
how TPAA changes in concert with TPBulk in a contaminant area and thus if chemical exposure
275
can influence this relationship. The statistical software R version 3. 3. 2 (2016-10-31) was
276
used for all tests except for the two-way ANOVA and the paired t-tests which were performed
277
in Statistica 8.0 (StatSoft, USA) and the one sample t-tests done in GraphPad.45 The signifi-
278
cance level was set to α = 0.05. Values are presented as mean ± SD unless specified other-
279
wise.
280 281
Results
282 283
Differences in PCB concentrations between the sites
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In the animals from Ålöfjärden, ΣPCB7 concentrations were ~7 times higher compared to
285
those from Uttervik, with individual congeners varying from 1.3 to 5.1 ng g DW-1 in
286
Ålöfjärden and 0.07 to 1.3 ng g DW-1 in Uttervik (see Supporting Information, Table S2, for
287
lipid-normalised concentrations). PCB concentrations in mussels thus followed observed PCB
288
concentrations in sediment and sediment pore water at the two sites (see Supporting Infor-
289
mation, Table S2, for details on specific congener concentrations measured in the animals,
290
sediment and pore water). Accordingly, bioaccumulation factors (BAF, BSAF) were not sig-
291
nificantly different at the two sites; BAF: t= -0.28, df=6, p=0.79, BSAF: t=1.14, df=6, p=0.30.
292
It is worth noting however, that the two low-chlorinated PCBs (28 and 52) had lower values
293
for both BAF and BSAF at Ålöfjärden than in Uttervik (Figure S1).
294 295
Sediment elemental and isotopic composition
296
The sediment %N was significantly higher in Uttervik compared to Ålöfjärden (t13,1 = -11.68,
297
p < 0.001), whereas %C values were uniform between the sites (t13,1 = -0.14, p > 0.8; Figure
298
1A, Supporting Information Table S1). Furthermore, the sediment δ15N values in Ålöfjärden
299
were 1.4 ‰ higher (t13,1 = 4.02, p < 0.001) compared to those in Uttervik, whereas the δ13C
300
values showed the reverse pattern, being 2.2 ‰ lower in Ålöfjärden compared to Uttervik
301
(t13,1 = -5.1, p < 0.0001; Figure 1B, Supporting Information Table S1).
302 303
Bulk and compound specific stable isotope values in Limecola balthica
304
No effect of sampling depth was found for neither δ15N nor δ13C values of the bivalves for the
305
bulk samples. The samples were therefore pooled within the sites for further analyses. The
306
bulk δ15N values of the bivalves from Ålöfjärden were 1.3 ‰ higher compared to those from
307
Uttervik (t15,1 = 4.32, p < 0.001; Table 1, Figure 2A). Moreover, the bulk δ13C values were 1.2
308
‰ lower in the bivalves from Ålöfjärden (t15,1 = -2.75, p < 0.015; Table 2, Figure 2A). The
309
two-way ANOVA identified a significant effect of site on δ15N in amino acids, (F1,14 = 5.511,
310
p < 0.04), with higher values observed in Ålöfjärden compared to Uttervik (δ15NGlu by 1.7 ‰
311
and δ15NPhe by 0.7 ‰; Table 1, Figure 2B).
312 313
Trophic positioning
314
The overall uncertainties associated with TPBulk and TPAA estimates were similar, varying
315
from 0.34 TP to 0.36 TP (see Supporting Information, Table S3). The TPBulk values were sig-
316
nificantly higher than TPAA (Table 1), but with no significant difference between sites (two-
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way ANOVA; Table 2, Figure 3). At both sites, the TPBulk estimates were not significantly
318
different from the TP 2 of a primary consumer (Figure 3, Uttervik: p > 0.6, and Ålöfjärden: p
319
> 0.6). In contrast, TPAA was significantly lower in Uttervik (p < 0.01), and marginally lower
320
in Ålöfjärden (p = 0.1) than 2. Moreover, individual TPAA values were significantly positively
321
related to TPBulk (t13,1 = 2.28, p < 0.04), and noteworthy, with significantly higher TPBulk-
322
specific TPAA estimates for animals from Ålöfjärden compared to animals from Uttervik
323
(t13,1=2.42, p < 0.03).
324
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Discussion
328
AA-CSIA and to examine whether these estimates are affected by contaminant load. These
329
questions were addressed by analysing δ15N of bulk samples and AA-δ15N of the primary
330
consumer Limecola balthica. We found a significant difference between the TPBulk and TPAA
331
estimates, with TPAA values significantly underestimating the actual TP of these animals.
332
Moreover, some support for elevated TPAA estimates at the contaminated site was also found
333
(see Table 2 and Figure 2B), whereas the TPBulk estimates were similar between the sites.
334 335
The observed differences in the bivalve bulk δ15N and δ13C (Figure 2A) values between the
336
sites reflected the difference in the sediment bulk isotopic composition (Figure 1B). There-
337
fore, no difference was found for either TPBulk or TPAA in mean TP values between the sites .
338
However, the relationship between TPAA and TPBulk had a significant site effect, implying that
339
bivalves from Ålöfjärden had slightly higher TPAA than those from Uttervik for the same
340
TPBulk values. The most likely explanation for this small difference would be higher
341
fractionation in the bivalves from Ålöfjärden (p=0.054) reflecting higher trans- and deamina-
342
tion rates46 due to detoxification processes while baseline δ15N between the sites (15NPhe) was
343
similar. However, although the analysis of PCB levels in the animals, sediment and pore wa-
344
ter has shown that Ålöfjärden is indeed a contaminated area as suggested by earlier reports,30
345
it is unclear whether the measured concentrations were sufficiently toxic to cause physiologi-
346
cal effects. For example, the measured ΣPCB7 body concentration in Ålöfjärden (1.8 µg g
347
DW-1) was half of the internal concentration (3.9 µg g DW-1) measured in Mytilus edulis ex-
348
posed to Aroclor 1248 (mixture of PCBs), for which no effects on the body condition index
349
was found.47 Moreover, sub-cellular effects in Mytilus galloprovincialis exposed to Aroclor
350
1254 and PCB-138, were observed only at concentrations 4- and 10-fold higher48 than the
351
internal concentrations observed in the bivalves from Ålöfjärden. This suggests that the PCB
352
concentrations in Ålöfjärden might not be high enough to induce a pathological condition and,
353
hence, cause altered
354
study, whereas PAHs and heavy metals were also present in the sediments as well as other
355
contaminants that may contribute to toxicity. The concentration of the sum of 13 PAHs in
356
sediment from Ålöfjärden were up to 80 ug g DW-1,30 exceeding safe levels according to
357
guidelines for sediment risk assessment.29 However, it is also possible that environmental
358
factors other than contaminant load are more influential in setting the stage for isotopic signa-
The aim of this study was to compare the trophic position values estimated using bulk and
15
15
NGlu
N fractionation. On the other hand, we measured only PCBs in this
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tures in biota. For example, the slightly higher %N in the Uttervik sediments could contribute
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to the lower δ15N values, both in the sediment and in the bivalves due to the negative correla-
361
tion between N availability and fractionation.49 In a previous study, Karlson et al.28 found the
362
sediment-Limecola δ15N difference to correlate negatively with sediment N content, however,
363
in our study the difference in sediment %N between sites were smaller (0.43 to 0.75%).
364 365 366
In Limecola and other bivalves, a TP of 2 has previously been used,8,39 and our TPBulk esti-
367
mates were in the range of the expected TP (min-max: 1.8-2.3, average 2.1). However, it
368
should be noted that a TP of 2 most likely underestimate the real TP since Limecola also feed
369
on e.g. resting eggs in the sediment and likely various microorganisms associated to decom-
370
posing particles. The TPAA values were even lower (1.3 to 2.1, average 1.7) which is obvious-
371
ly biased. This implies that in spite of food web-based reports demonstrating superior accura-
372
cy of TPAA estimates,15,50 the CSIA-based assessment for field-collected Baltic Limecola
373
would underestimate its TP considerably. Notably, other field studies also provide evidence
374
for biased/artificial TPAA estimates. For example, Vokhshoori and McCarthy51 found that
375
TPAA for the Californian mussel Mytilus californianus ranged between 1.0 and 1.8 compared
376
to the nominal TP 2. This was explained by a deviation from the commonly assumed trophic
377
enrichment factor between glutamic acid and phenylalanine value in the consumers (∆15NGlu-
378
Phe);
379
meta-analysis on the application of AA-δ15N for TP estimates, Nielsen et al.52 found that
380
∆15NGlu-Phe of 6.6 ‰ instead of the commonly used 7.6, and βGlu/Phe of 2.9 instead of 3.4 ± 0.9
381
‰11 may better explain variations in TP for a wide range of organisms. Therefore, in addition,
382
TPAA estimates using revised discrimination factors (6.6 for βGlu-Phe and 2.9 ∆15NGlu-Phe) by
383
Nielsen et al.52 were also calculated together with associated uncertainties (± 1.7 for ∆15NGlu-
384
Phe
385
these lower values would be used instead together with associated uncertainties, TPAA would
386
be in the range of TP 2 and statistically non-distinguishable from the TPBulk values (Uttervik:
387
p=0.2, and Ålöfjärden p=0.8). However, even though TPAA estimates for bivalves in our study
388
had a higher accuracy using data from Nielsen et al.42 compared to Chikaraishi et al.,11 the
389
precision was lower (SDtotal 0.45-0.46). Altogether, this suggests that (1) species-specific val-
390
ues might be needed for accurate TP assessment, or (2) the uncertainties associated with both
391
∆15NGlu-Phe (± 1.7 ‰) and βGlu/Phe (± 2.0 ‰) reported by Chikaraishi et al.11 need to be revised
392
(see e.g. Nielsen et al.42) and included in the TP analysis. This is also partly supported by a
3-5 ‰ compared to 7.6 ± 1.2 ‰ reported in Chikaraishi et al.11 Moreover, in a recent
and ± 2.0 for βGlu-Phe) using error propagation (see Supporting Information, Table S3). If
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recent review by Ohkouchi et al.,53 where the ∆15NGlu-Phe was generally found to vary between
394
6 ‰ to 8‰ for wild-caught organisms and controlled feeding studies although greater varia-
395
tion was also found (0‰ to >10 ‰). As the authors suggested, the observed variation was
396
likely due to differences in food quality and mode of nitrogen excretion previously known to
397
influence bulk δ15N,4,54 and therefore also fractionation of trophic amino acids like glutamic
398
acid. Thus, it can be expected that to achieve more accurate TPAA estimates one would require
399
both species- and habitat-specific values for ∆15NGlu-Phe. Finally, studies have also shown that
400
the βGlu-Phe value is species- and context-dependent with varying values for terrestrial, pelagic
401
and mixed systems which can require an assessment of potential plant sources at the base of
402
the food web to accurately derive true βGlu-Phe in certain systems.39,55 If using this approach for
403
our data and assuming bivalves feeding on (heterotrophically conditioned) organic matter of
404
terrestrial origin in the more enriched spectra (-25 ‰), the TP of bivalves accordingly in-
405
crease to above 2. Hence, future studies need to include measure of primary producers to al-
406
low mix βGlu-Phe values to be calculated.38 By accounting for uncertainties associated with
407
measured δ15N in the bulk samples, glutamic acid and phenylalanine, together with uncertain-
408
ties for ∆15NBulk, ∆15NGlu-Phe and βGlu/Phe, we were able to assess the variability related to the
409
TP estimates (Figure 3 and Supporting Information, Table S3). Both methods (Post2 and
410
Chikaraishi et al.11) had very similar overall uncertainty, even though analytical precision for
411
AA-δ15N was much lower. This means that even though TPAA have less uncertainty related to
412
the trophic shift and fractionation by primary producers the high analytical error does not re-
413
sult in overall improvement in the TP uncertainty in our study. Methodological improvements
414
in AA-CSIA, particularly related to derivatization steps56 can increase analytical precision and
415
thus improve future TPAA estimates.
416 417
In conclusion, contrary to the common assumption that TP estimates based on AA-CSIA are
418
more accurate, we found that using bulk δ15N provided more ecologically relevant estimates
419
for a deposit- and suspension-feeding bivalve although both methods produced TP estimates
420
that are likely underestimates. The AA-CSIA method underestimated TP values considerably
421
and suffered relatively high analytical uncertainties. Although average TP values were not
422
significantly different between the sites experiencing different contaminant load, the animals
423
from the contaminated site had significantly higher TPAA for a given TPBulk estimate. To fur-
424
ther investigate whether stable isotope ratios may respond to chronic exposure in polluted
425
areas, the assessment of the population in question should include measurements that can be
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used to infer physiological and biochemical responses indicative of the health status of the test
427
animals, such as physiological rates, biomarkers and body condition indices. Finally, there is a
428
need for more controlled studies to make the best use of amino-specific stable isotope meth-
429
ods in food web studies.
430 431
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Supporting information available
433 434
SI includes information on Sediment characteristics (Table S1), Chemical analysis of Poly-
435
chlorinated biphenyls (PCBs) and measured concentrations in mussel, sediment and pore wa-
436
ter (Table S2), information on amino acid compound specific isotope analysis (AA-CSIA) and
437
a summary of uncertainties involved in TP calculation (Table S3). This information is availa-
438
ble free of charge via the Internet at http://pubs.acs.org.
439 440
Acknowledgement
441 442
This study was supported by the Delta Facility of the Faculty of Science, Stockholm Universi-
443
ty, Department of Environmental Science and Analytical Chemistry (trans-unit collaboration
444
funding), the Swedish Institute (Stable Isotope network in the Baltic Sea region) and the For-
445
mas project (HOC Flux Grant no #2012-1211). We thank Nesrine Mansouri for PCB analysis
446
of mussels, Karin Ström for help with the amino acid extraction and Maria Lagerström for
447
advices on amino acid extraction, Jakob Walve for sharing unpublished data on cyanobacteri-
448
al composition in Ålöfjärden and Svealands kustvattenvårdsförbund for supplying the phyto-
449
plankton data. Askö Laboratory Staff helped with field sampling. We thank Katrine Borgå
450
and three anonymous reviewers for valuable comments and Douglas Jones for proofreading
451
this manuscript.
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Table 1. Summary of endpoints measured or calculated in Limecola from Uttervik (reference)
453
and Ålöfjärden (contaminated) sites.a DW
δ15N
δ13C
Glu
Phe
TPBulk
TPAA
mean
17.9
7.2
-20.4
10.6
2.6
2.1
1.6
SE
1.2
0.2
0.3
0.6
0.4
0.06
0.07
mean
18.7
8.6
-21.6
12.2
3.3
2.1
1.8
SE
0.5
0.2
0.3
0.5
0.3
0.06
0.06
Uttervik
Ålöfjärden
454
a
DW, dry weight in mg; δ15N, in bulk sample; δ13C, in bulk sample; Glu, δ15N value in glu-
455
tamic acid; Phe, δ15N value in phenylalanine; TPBulk, bulk δ15N-based TP; TPAA, AA-CSIA-
456
based TP. All stable isotope ratios are presented in ‰.
457 458 459
Table 2. Two-way ANOVA applied to compare the TP estimates within (TPBulk vs. TPAA;
460
Sidaks’ multiple comparisons test; see Figure 3) and between sites (Uttervik vs. Ålofjärden).
461 ANOVA table
SS
MS
F1, 30
P value
Interaction
0.03254
0.03254
0.3522
0.5573
Site
0.08810
0.08810
0.9534
0.3367
TPBulk vs. TPAA
1.742
1.742
18.85
0.0001
Residual
2.772
0.09241
462 463
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Figure 1. Variability in the elemental (%N and %C; panel A) and isotopic (δ15N and δ13C val-
466
ues, ‰; panel B) composition of the sediment at the study sites: Uttervik (reference) and
467
Ålöfjärden (contaminated). Asterisks indicate significant effects for a variable between the
468
sites (unpaired t-test with Welch correction for unequal variances; **: p < 0.001; ***: p