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Pesticide body burden of the crustacean Gammarus pulex as a measure of toxic pressure in agricultural streams Naeem Shahid, Jeremias Martin Becker, Martin Krauss, Werner Brack, and Matthias Liess Environ. Sci. Technol., Just Accepted Manuscript • Publication Date (Web): 22 Jun 2018 Downloaded from http://pubs.acs.org on June 22, 2018
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Title
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Pesticide body burden of the crustacean Gammarus pulex as a measure of toxic pressure in
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agricultural streams
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Author Affiliation 1. Author: Naeem Shahid *,†,‡,§ (
[email protected], phone: 0341 235 1494, fax: +49 341
5
235 1494)
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2. Author: Jeremias Martin Becker†,‡
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3. Author: Martin Krauss∥
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4. Author: Werner Brack‡,∥ 5. Author: Matthias Liess*,†,‡ (
[email protected], phone: +49 341 235 1578, fax: +49
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341 235 1578)
11 12
†
13
Permoserstraße 15, 04318 Leipzig, Germany
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‡
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Germany
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§
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Vehari, Pakistan
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∥UFZ,
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Permoserstraße 15, 04318 Leipzig, Germany
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*
UFZ, Helmholtz Centre for Environmental Research, Department of System-Ecotoxicology,
RWTH Aachen University, Institute for Environmental Research (Biology V), Aachen,
Department of Environmental Sciences, COMSATS Institute of Information Technology,
Helmholtz Centre for Environmental Research, Department Effect-Directed Analysis,
Corresponding author
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ABSTRACT
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Risk assessments of toxicants in aquatic environments are typically based on the evaluation of
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concentrations in water or sediment. However, concentrations in water are highly variable, while
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the body burden may provide a better time-integrated measure of pesticide exposure and
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potential effects in aquatic organisms. Here, we quantified pesticide body burdens in a dominant
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invertebrate species from agricultural streams, Gammarus pulex, compared them pesticide
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concentrations in water samples, and linked the pesticide contamination with observed ecological
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effects on macroinvertebrate communities.
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In total, 19 of 61 targeted analytes were found in the organisms, ranging from 0.037 to 93.94 ng
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g-1 (wet weight). Neonicotinoids caused the highest toxic pressure among the pesticides detected
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in G. pulex. Using linear solvation energy relationships (LSERs), we derived equivalent pesticide
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concentrations in stream water based on the body burden. These equivalent concentrations
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correlated with the concentrations in water samples collected after run-off (65% of variance
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explained).
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Pesticide pressure significantly affected the aquatic macroinvertebrate community structure,
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expressed as SPEARpesticides, and caused, on average, threefold increased insecticide tolerance in
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G. pulex as a result of adaptation. The toxic pressure derived from body burden and from water
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samples similarly explained the change in community structure (68% and 64%). However, the
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increased tolerance of G. pulex to pesticides was better explained by the toxicity derived from
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body burden (70%) than by the toxicity from water samples (53%). We conclude that the internal
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body burden of macroinvertebrates is suitable to assess the overall pesticide exposure and effects
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in agricultural streams.
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Abstract Art
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INTRODUCTION
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Pesticides in agricultural streams considerably affect the diversity and species composition of
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aquatic macroinvertebrates1, 2 and, consequently, related ecosystem functions such as leaf litter
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degradation.3-6 Sensitive species show significant reduction even at concentrations more than 2
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orders of magnitude below the acute median lethal concentration (LC50) that kills 50% of the
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individuals of laboratory standard test species.2,
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concentrations include an increased sensitivity of individuals to pesticides under multiple stress
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conditions8 and the culmination of effects from sequential exposure.9 The same low
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concentrations exert a considerable pressure for adaptation, which results in increased pesticide
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tolerance in exposed non-target species, with unknown ecological consequences on their general
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fitness.10,
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regarding the protection from pesticide contamination are necessary. The decision base for such
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measures is a profound quantification and localisation of pesticide exposure and effects through
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monitoring in agricultural streams.
11
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Reasons for these low environmental effect
To reduce effects of pesticides in the environment, local management measures
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One relevant pathway of pesticides to enter agricultural streams is through run-off from arable
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land after heavy rainfall. Accordingly aquatic organisms are typically exposed to short pulses of
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high pesticide concentrations.12 Thus, relevant measurements of pesticide exposure must include
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run-off events; as such peak concentrations are related to the long-term effects on the
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macroinvertebrate community much better than the low concentrations found in event-
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independent samples.2, 13 However, measuring these short-term pesticide pulses is challenging as
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the peak concentrations depend on the timing and intensity of both the pesticide application and
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the subsequent run-off event, which can vary widely within a spraying season.12, 13
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Currently, a range of passive samplers have been suggested for integrative sampling of various
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pollutants in surface waters14-16 and have also been used to capture short-term pollution events.17,
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18
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linking local toxic pressure to ecological effects on macroinvertebrate communities.3,
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However, the installation of passive samplers is costly and time-consuming. Toxic pressure was
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defined here as a stress exerted by pesticides in streams, using Toxic Unit20 modified by applying
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the highest Toxic Unit - TUmax as a measure for the ecological relevant toxic pressure.2 In the
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present study, we additionally used an alternative quantification of pesticide exposure based on
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pesticide residues in macroinvertebrates sampled from agricultural streams. Organisms
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accumulate pesticides in lipids and proteins from the water phase according to the compound
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properties and therefore, may serve as natural passive samplers.21 Their body burden may
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provide a better time-integrated picture of the overall pesticide exposure than do short-term
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measurements from the water phase. Additionally, an assessment of pesticide exposure based on
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internal concentrations may be more representative because it is the concentration at the site of
Generally, pesticide concentrations determined by passive samplers are highly suitable for
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action within organisms, rather than the external concentration in water, that triggers adverse
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effects.22
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We used pesticide residues in the common freshwater shrimp G. pulex to predict the time
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integrated pesticide concentrations in stream water based on equilibrium partitioning23 with a
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linear solvation energy relationship (LSER)24 model. This model estimates the partitioning of
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pesticides into different compartments such as storage and membrane lipids and proteins and
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considers polar and H-bonding interactions rather than hydrophobicity only. The predicted
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equilibrium concentrations in water (Cw,eq) were compared with the pesticide peak
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concentrations in water samples from the same streams following rain events. Additionally, we
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evaluated the ecological effect of the toxic pressure estimated from body burden and from water
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samples on the macroinvertebrate community composition according to the SPEAR approach
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(Species at Risk)2 and on the pesticide tolerance in G. pulex as a consequence of adaptation.
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MATERIALS AND METHODS
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Description of the study sites
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The investigated streams were located in central Germany, including 9 sites from intense
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agricultural landscapes and 6 sites from either undisturbed forested sections or from streams with
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considerable buffer strips and non-agricultural upstream reaches (Supporting Information, Figure
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S1). The second group was considered non-agricultural streams and used as reference sites.
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During macroinvertebrate sampling, different environmental parameters such as water level, pH,
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water temperature, dissolved oxygen and electrical conductivity were measured (Supporting
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Information, Table S1).
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Sampling of Gammarus pulex and water
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Thirty individuals of G. pulex (wet weight 900mg) per site were sampled for the analysis of
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pesticide body burden in May 2016 during the maximum pesticide application period in the
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study area.12, 25 Organisms of different sizes were collected to avoid any bias regarding greater
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bioaccumulation and exposure time. After collection, individuals were transferred to the lab and
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stored at −20°C.
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Water samples from all streams were collected using event-driven samplers (EDS)2 from May to
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July 2016 during the maximum pesticide application period. The number of samples from each
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site varied from 1 to 5, depending on rainfall events. Briefly, two brown glass bottles, each with
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a capacity of 1 L, were installed at each sampling site. Both bottles were attached to a stainless
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rod at heights of 5 and 15 cm from the regular level of the stream water that filled when the
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water level had risen due to heavy rainfall (see Supporting Information, Figure S2 for illustration
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of event-driven samplers). After rainfall events, bottles were collected within 24 h, kept in a cool
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box at 4°C and transported to the laboratory. Subsequently, 1 mL aliquots were transferred into 2
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mL autosampler vials and stored at −20°C for analysis. Results of pesticide concentrations in
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water samples have already been published elsewhere.11 In the present study we compared water
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concentrations (external concentrations) with body burden (internal concentrations) to measure
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the pesticide exposure and potential effects in aquatic organisms.
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Sample preparation and extraction
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Target compounds were extracted from gammarids using the method of Inostroza, et al.26
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(pulverized liquid extraction and a QuEChERS approach with an additional hexane phase).
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Frozen gammarids were transferred to a 10 mL centrifuge tube; 1 mL of LC-MS grade
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acetonitrile, 1 mL of LC-MS grade water and 0.5 mL of LC grade hexane were added; then the
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sample was homogenized using an Ultra-Turrax (IKA, Staufen, Germany) homogenizer.
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Subsequently, 400 mg of MgSO4 and 100 mg of NaCl were added to induce phase separation
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between water and acetonitrile. The top-layer hexane fraction was taken for the analysis of
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pyrethroids via gas chromatography-tandem mass spectrometry (GC-MS/MS), evaporated to
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dryness in a nitrogen stream, reconstituted in 500 µL of ethyl acetate and filtered using a PTFE
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syringe filter (pore size 0.45 µm) into a 2 mL autosampler vial. Permethrin-D6 was added as an
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injection standard. The acetonitrile phase was cleaned up via dispersive solid-phase extraction
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using primary-secondary amine and transferred into a 2 mL glass vial. The sample was
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evaporated to dryness and reconstituted in 450 µL of methanol:water (70:30) for liquid
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chromatography-high-resolution mass spectrometry (LC-HRMS) analysis. A volume of 50 µL of
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internal standard solution containing 40 isotope-labelled compounds (1 µg/mL) was added.
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GC-MS/MS analysis
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The pyrethroid analysis was conducted via GC-MS/MS using an Agilent GC 7890-MS/MS 7000
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system with negative-mode chemical ionization. For separation, we used a HP-5ms UltraInert
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column (30 m x 0.25 mm, 0.25 µm film thickness) equipped with a guard column (5 m x 0.25
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mm). The column oven program started at 100°C, was held for 1 min, increased at 30°C/min to
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150°C, then at 6°C/min to 186°C and at 10°C/min to 300°C, and was then held for 2 min. The
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transfer line temperature was 300°C. Splitless injection of 1 µL was used at an injector
147
temperature of 280°C. Pyrethroids were quantified with MassHunter software (Agilent) using
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one quantifier and up to two qualifier MS/MS transitions. A method-matched calibration was
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prepared using water spiked at seven concentration levels ranging from 0.028 to 28 ng (g
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gammarids wet weight)-1, for which the same sample preparation protocol was used as for the
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samples.
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LC-HRMS analysis
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Polar pesticides were analysed using LC-HRMS in positive ion mode (Ultimate 3000 LC system
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coupled to a QExactive Plus MS equipped with a heated electrospray ionization (ESI) source, all
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from Thermo Scientific). Separation was conducted using a methanol:water gradient (eluent A
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and B, respectively, both containing 0.1% formic acid) on a Kinetex C18 EVO column (50 x 2.1
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mm, 2.6 µm particle size, Phenomenex) at a flow rate of 300 µL/min. After eluting for 1 min
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with 5% B, the fraction of B was linearly increased to 100% within 12 min and kept for 11 min.
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Then, the flow was diverted to waste, and the column was rinsed for 2 min using
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isopropanol:acetone 50:50 / eluent B / eluent A (85% / 10% / 5%). Finally, the column was re-
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equilibrated to the starting conditions for 5.7 min. The heated ESI source and the transfer
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capillary were operated at 300°C, the spray voltage was 3.8 kV, the sheath gas flow rate was 45
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a.u., and the auxiliary gas flow rate was 1 a.u. The runs combined a full scan experiment (100-
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1000 m/z) at a nominal resolving power of 70,000 (referenced to m/z 200) and data-independent
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MS/MS experiments at a nominal resolving power of 35,000. For the latter, we acquired the data
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using isolation windows of approximately 50 mass units (i.e., m/z ranges 97-147, 144-194, 191-
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241, 238-288, 285-335, 332-382, 379-429, 426-476) and 280 mass units (i.e., m/z ranges 460-
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740, 730-1010). Eight method-matched calibration standards corresponding to levels of 0.056 to
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27.8 ng (g gammarids wet weight)-1 were prepared the same way as the samples using 1 mL of
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spiked water instead of gammarids. For water analysis, the calibration standards at
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concentrations from 1 to 2000 ng/L were prepared using the same method as that applied to the
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samples using 1 mL of pristine stream water, 25 µL of a methanolic analyte stock solution of the
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appropriate concentration, 25 µL of an internal standard solution and 10 µL of a 2 M NH4-
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formate buffer (pH 3.5).
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For data evaluation, the software Trace Finder 3.2 (Thermo) was used, employing internal
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calibration with the isotope-labelled compound with the closest retention time of each analyte.
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For quantification, we used the full scan extracted ion chromatogram (7 ppm window), while for
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confirmation, one or two diagnostic MS/MS fragments and isotope patterns were compared with
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those of reference standards. Table S2 provides an overview of all analysed pesticides, their
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physicochemical properties, method detection limits and recoveries for the gammarid extraction
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method and Table S3 contains detected pesticides at all study sites.
183 184
Calculation of chemical activity and partition coefficients
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We assumed proteins and lipids as the relevant phases for the absorption of organic pollutants
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and calculated estimated equilibrium concentrations (Cw,eq) in body tissues of G. pulex (Eq. 1).
ܥ௪, =
ܥ, (݂ௌ ܭௌௐ + ݂ ܭெௐ + ݂ ܭௐ ) × 0.2175
(1)
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where Cb,m is the total measured concentration of contaminants in body tissues, fSL is the storage
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lipid fraction, KSLW represents the storage lipid-water partitioning coefficient, fML is the
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membrane lipid fraction, KMLW represents the membrane lipid-water partition coefficient, fP is the
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protein fraction, and KPW is the protein-water partitioning coefficient. To calculate gammarid-
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water partition coefficients, the composition of G. pulex (per dry weight) was assumed as 47%
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protein,27 4.5% storage lipid and 1.5% membrane lipid.28 The factor 0.217529 was used for the
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conversion of wet weight to dry weight. This assumption is well in agreement with typical values
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from more in-depth studies on the composition of Gammarus pulex,30 although ignoring
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variability between sexes, seasons and individuals. The present experimental setting did not
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allow for measuring individual lipid contents in the specimens used in the experiments.
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Partition coefficients were calculated using linear solvation energy relationships (LSERs, Eq. 2)
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for (1) protein (muscle)–water, (2) storage lipid–water and (3) membrane lipid–water. The
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system parameters (v, e, s, a, b, and c) used for the respective systems were taken from the open-
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access UFZ-LSER database.24 The compound descriptors (V, E, S, A and B) were calculated for
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all compounds using the software ACD/Percepta (ACD labs, v2016; Supporting Information,
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Table S4).
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log ܭ = ܸݒ+ ݁ ܧ+ ܵݏ+ ܽ ܣ+ ܾ ܤ+ ܿ
(2)
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Calculation of pesticide exposure
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Measured and estimated equilibrium water concentrations of pesticides were converted into toxic
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units (TU) representing the decadic logarithm of the concentration of a compound divided by its
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LC50 in a 48 h acute toxicity test with a standard reference organism. We estimated the overall
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pesticide-induced toxic pressure in a stream as the maximum toxic unit of all compounds (TUmax;
209
Eq. (3)2), quantified either from internal body burdens (TUmax-Int) or from external water samples
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(TUmax-Ext). TUmax works very well for agricultural streams but may not for other ecosystems that
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receive contamination from many different sources.31
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TU୫ୟ୶ = Maxୀଵ ቂlogଵ ቀ ቁቃ ఱబ
(3)
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where TUmax is the highest toxic unit of n pesticides at a given site, Ci is the freely dissolved
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pesticide concentration (µg L−1), and LC50i is the median lethal concentration (µg L−1) of that
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pesticide for a reference organism after a 48 h exposure (Supporting Information, Table S5). We
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used Daphnia magna, Chironomus tentans, Chironomus riparius and Hyalella azteca as
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reference organisms; the LC50 values were obtained from the ECOTOX database32 and the 10 ACS Paragon Plus Environment
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Pesticide Properties Database PPDB.33 When data from several organisms were available for the
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same compound, the most sensitive organism was used. For instance, Chironomus riparius and
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Hyalella azteca showed much higher sensitivity to neonicotinoid insecticides as compared to
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Daphnia magna and were therefore considered as reference organisms. In few cases, the name of
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the reference species was not provided in the database and therefore considered unknown
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(Supporting Information, Table S5).
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Characterizing effects of pesticides on the macroinvertebrate community
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At each sampling site, we quantified the long-term effects of pesticides on the macroinvertebrate
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community composition using the bio-indicator SPEARpesticides2 The SPEAR index categorizes
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aquatic macroinvertebrates into vulnerable and non-vulnerable species on the basis of four
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ecological traits: (1) potential for pesticide exposure, (2) physiological sensitivity, (3) generation
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time (pace of recovery), and (4) migration ability (recolonization). We calculated SPEAR using
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the desktop application SPEAR Calculator 0.10.0.2, 34
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Stream macroinvertebrates were sampled from May to July 2016 along with the collection of G.
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pulex. At each site, ten subsamples were collected from different habitats along a 50 m stream
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section. Macroinvertebrates were collected using a 25 × 25 cm kick-net with a 500 µm mesh
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size. The content of the Surber sampler was filtered through a set of four sieves (mesh sizes: 8
236
mm, 4 mm, 2 mm, and 500 µm; Retsch GmbH, Haan, Germany) and transferred into plastic trays
237
for the identification of taxa (family level) and determination of abundance. When the family of
238
an organism could not be identified, the individuals were preserved in ethanol and identified in
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the laboratory with a stereo-microscope (Zeiss Discovery V20; Oberkochen, Germany). The
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abundance of each family was divided by the sampling area to calculate population densities per
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m² used for the calculation of the SPEARpesticides values.
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Identification of insecticide tolerance in Gammarus pulex
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At each study site, 170 individuals of G. pulex within a size range of 6–10 mm were collected
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together with the individuals used for the body burden analysis, using a 25 × 25 cm kick-net with
246
a 500 µm mesh size. The individuals were caught with a pipette and transferred into aerated and
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cooled plastic boxes filled with stream water. On the day of collection, the organisms were
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transported to the laboratory and left to acclimate in white trays filled with a mixture of aerated
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ADaM (Artificial Daphnia medium)35 and steam water at 15°C for 24 h.
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Insecticide sensitivity was assessed in acute toxicity tests following the OECD guidelines for the
251
testing of chemicals and the guidelines for rapid tests for community-level risk assessment.36, 37
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We selected the neonicotinoid insecticide clothianidin for sensitivity testing that represents the
253
most commonly applied class of insecticides in agriculture for more than a decade.38 A 500 mg L-
254
1
255
(Spiess-Urania Chemical GmbH, Germany) in distilled water while stirring for 12 h and further
256
diluted in ADaM to obtain the required test concentrations. The test organisms were exposed to
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seven different concentrations i.e., 0, 5, 15, 45, 135, 405 and 1215 µg/L for a period of 48 h.
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Only undamaged and active individuals without visible infection with parasites were selected for
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pesticide exposure. Five organisms were placed in a stainless tea strainer, and four tea strainers
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per concentration were placed in a glass beaker containing 1000 mL of the test solution. During
261
contamination, the beakers were constantly aerated and the temperature was maintained at 15°C.
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After exposure for 48 h, the organisms were checked for immobility. Organisms were considered
stock solution of the neonicotinoid insecticide clothianidin was prepared with DANTOP®
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immobile when they neither moved their bodies within 30 seconds of undisturbed observation
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nor after probing with a rod (fanning of gills and antenna was not considered body movement).
265 266
Data analysis
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All data analyses were conducted using the open-source application RStudio version 1.1.383 for
268
Windows39 and the basic R version 3.4.3 for Windows.40 To compare the insecticide tolerance in
269
different populations, we calculated the EC50 (concentration that immobilized 50% of the test
270
individuals) and the 95% confidence intervals from the acute toxicity tests using a generalized
271
linear model with a quasi-binomial error distribution and a logit link function. The tolerance of
272
G. pulex populations from each site was quantified as the ratio of the local EC50/mean EC50 of all
273
populations from non-contaminated streams (TUmax-Int < -3). This EC50 ratio allowed us to
274
directly compare the tolerance of different populations to neonicotinoids and thus to quantify
275
adaptation in contaminated streams.
276
Linear regression was applied to analyse the relationships between the toxic pressure calculated
277
from pesticide body burden and water concentration (TUmax-Int and TUmax-Ext, respectively) and
278
the change in community structure or the neonicotinoid tolerance. To identify the additional
279
effect of the local species diversity on the increase in neonicotinoid tolerance, we applied
280
multiple linear regression model. The normal distribution and homoscedasticity of residuals were
281
confirmed using normal-Q-Q plots, histograms, plots of residuals vs. fitted values, and statistical
282
tests for deviations from the normal distribution and from variance homogeneity. To obtain a
283
normal distribution, the EC50 ratio was ln(x) transformed before analysis. Agricultural and non-
284
agricultural streams were compared with respect to the SPEAR index, EC50 and physicochemical
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parameters using two-sample t-tests and Welch's t-tests. In cases in which the data were not
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normally distributed, Wilcoxon's rank sum test was used.
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RESULTS
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Pesticide residues in individuals of Gammarus pulex
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A total of 19 chemicals of 61 targeted compounds (see Supporting Information, Table S2) were
291
quantified in all organisms collected (Supporting Information, Table S3). Concentrations ranged
292
from 0.037 to 14.28 ng g-1 (wet weight) for insecticides, 0.08 to 93.94 ng g-1 for herbicides and
293
0.06 to 12.74 ng g-1 for fungicides. The fungicide prothioconazole-desthio was the most
294
frequently detected chemical across all sites. The highest concentration was found for the
295
herbicide diflufenican with 93.94 ng g-1 (Supporting Information, Table S3).
296
Generally, insecticides were detected only in organisms from agricultural streams. The only
297
exceptions were low concentrations of the pyrethroid insecticides cyfluthrin and cypermethrin in
298
organisms from a single non-agricultural stream (Non-Agri 6). Additionally, organisms from
299
non-agricultural streams showed only very low concentrations of the fungicide prothioconazole-
300
desthio (0.17-0.28 ng g-1) and the herbicides diflufenican (2.58 ng g-1) and prosulfocarb (2.18 ng
301
g-1).
302 303
Pesticides in the water samples
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A total of 50 chemicals of 55 targeted analytes were detected in the water samples collected from
305
the streams. All the agricultural sites were contaminated with most of the analytes, including
306
insecticides, fungicides and herbicides. The fungicide prothioconazole-desthio and herbicides
307
ethofumesate and terbuthylazine were the most frequently detected chemicals in water samples
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across all the streams. The highest concentration was found for the herbicide ethofumesate with
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84.70 µg L-1. In agricultural streams, the most commonly detected insecticides were clothianidin,
310
thiamethoxam and thiacloprid. The highest concentration was determined for thiamethoxam
311
(2.83 µg L-1). In most non-agricultural streams, only certain herbicides and fungicides were
312
detected. Four of these sites were slightly contaminated (3.4 to 12 ng L-1) with the neonicotinoid
313
insecticide clothianidin (Supporting Information, Table S6).
314 315
Estimation of aquatic pesticide exposure
316
The toxicity of the pesticide mixture measured in water samples after runoff events was
317
expressed in toxic units of the most toxic compound (TUmax-Ext, see materials and methods). To
318
derive the pesticide exposure alternatively from the body burden of G. pulex, we converted the
319
internal pesticide concentrations to estimated equilibrium concentrations in water and calculated
320
the maximum toxic unit (TUmax-Int) for invertebrates. The results of both methods are compared
321
in Table 1.
322
In agricultural streams, the TUmax-Int ranged from -1.3 to 0.7 with a median value of 0.4. In all of
323
the agricultural sites, neonicotinoids represented the most toxic compound. The highest toxicity
324
was caused by imidacloprid (TUmax-Int at 5 sampling sites; mean TU = 0.6), followed by
325
thiacloprid (TUmax-Int at 4 sampling sites; mean TU = -0.8). In contrast, the non-agricultural
326
streams were contaminated only to a minor extent. In those streams, the TUmax-Int ranged from -
327
6.2 to -4.3 with a median value of -6.0.
328
The TUmax-Ext in agricultural streams ranged from -3.2 to -1.1 and was always lower than the
329
TUmax-Int, with a mean difference of 1.8 TU. In non-agricultural streams, by contrast, the TUmax-
330
Ext
ranged from -3.3 to -5.0 and was always higher than the TUmax-Int (mean difference: 1.5 TU),
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331
except for one stream in which insecticides were detected in the organisms (Non-Agri 6).
332
However, TUmax-Int and TUmax-Ext were significantly correlated with one another (adjusted R² =
333
0.65, p < 0.001; Fig. 1). Both TUmax-Int and TUmax-Ext showed a clear separation of streams from
334
intense agricultural areas and from reference streams. However, within these groups the TUmax-Int
335
was not clearly associated with the TUmax-Ext, indicating a relevant amount of residual variation.
336
Table 1
337
Pesticide-induced toxic pressure in the investigated streams, expressed as the toxic unit of the most toxic compound
338
(TUmax). The toxic units were calculated from pesticide concentrations in water samples collected after runoff events
339
(TUmax-Ext); they were also derived from internal pesticide concentrations detected in G. pulex, which were converted
340
to equivalent concentrations in water (TUmax-Int). Additionally, the toxic pressure was estimated using the
341
SPEARpesticides bio-indicator based on the macroinvertebrate community composition (SPEAR), and using the
342
increase in tolerance of G. pulex (EC50) to the neonicotinoid insecticide clothianidin as a result of adaptation. Most toxic compound
TUmax
SPEAR
Site ID
EC50 (95% CI)
Ext
Int
In water
In organisms
Agri-1
-1.8
0.4
Thiamethoxam (I)
Imidacloprid (I)
22.3
263(228-302)
Agri-2
-3.2
0.0
Diflufenican (H)
Thiacloprid (I)
24.4
298(227-388)
Agri-3
-1.9
-0.6
Pirimiphos-methyl (I) Thiacloprid (I)
10.2
321(203-506)
Agri-4
-1.8
0.4
Thiamethoxam (I)
Imidacloprid (I)
17.0
178(148-213)
Agri-5
-1.9
-1.3
Clothianidin (I)
Thiacloprid (I)
32.4
191(135-270)
Agri-6
-1.1
0.5
Thiamethoxam (I)
Imidacloprid (I)
7.0
213(171-265)
Agri-7
-1.7
0.4
Thiamethoxam (I)
Imidacloprid (I)
14.7
153(121-192)
Agri-8
-1.7
0.7
Thiamethoxam (I)
Imidacloprid (I)
25.0
190(144-249)
Agri-9
-1.9
-1.3
Clothianidin (I)
Thiacloprid (I)
15.6
160(121-210)
Non-Agri-1
-3.6
-6.2
Pirimicarb (I)
Prothioconazole-desthio (F)
49.7
83(62-110)
Non-Agri-2
-4.8
-6.1
Prosulfocarb (H)
Prothioconazole-desthio (F)
37.7
94(66-132)
Non-Agri-3
-3.3
-6.0
Clothianidin (I)
Prothioconazole-desthio (F)
48.4
67(37-120)
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Non-Agri-4
-3.4
-6.1
Clothianidin (I)
Prothioconazole-desthio (F)
34.4
98(85-111)
Non-Agri-5
-3.8
-4.3
Clothianidin (I)
Diflufenican (H)
37.2
93(65-130)
50.3
57(38-83)
Non-Agri-6
-5.0
-4.4
-
Cyfluthrin
(I)
343
I: insecticide; F: fungicide; H: herbicide; Agri: Agricultural sites; Non-Agri: Non-agricultural sites; Ext: external;
344
Int: Internal.
345
346 347
Fig. 1. Relationship between TUmax-Int (TUmax calculated using
348
equivalent pesticide concentrations in water derived from internal
349
pesticide concentrations of G. pulex) and TUmax-Ext (TUmax calculated
350
using pesticide concentrations measured in water). The grey area
351
corresponds to the 95% confidence interval. R² = 0.67, adjusted R² =
352
0.65, F = 26.5, residual d.f. = 13, p < 0.001.
353 354
Ecological effect assessment
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355
To compare how both estimations of pesticide exposure (TUmax-Ext and TUmax-Int) could explain
356
the observed ecological effects of pesticides on macroinvertebrate communities, we applied the
357
SPEARpesticides
358
(http://www.systemecology.eu/indicate/). Agricultural streams showed low to medium
359
SPEARpesticides values from 7 to 32.4, which corresponded to a range from bad (< 11) to moderate
360
(< 33) ecological status as defined by Beketov et al.41 In contrast, non-agricultural streams
361
showed significantly higher SPEARpesticides values (Wilcoxon's rank sum test, W = 54, p-value
44) ecological status (Table 1). Of all environmental parameters measured,
364
SPEARpesticides depended only on pesticide exposure and was equally well explained by the
365
toxicity calculated from body burdens (TUmax-Int, Fig. 2a) and by the toxicity in water samples
366
(TUmax-Ext, Fig. 2b).
indicator.2
Calculation
was
performed
using
the
INDICATE
tool
367
368 369
Fig. 2. Relationship between the community composition of macroinvertebrates, expressed as SPEARpesticides, and
370
water contamination, expressed as toxic units. The grey areas correspond to the 95% confidence interval. (a) The
371
calculation of TUmax-Int was based on the equivalent pesticide concentrations in water derived from internal
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372
pesticide concentrations in G. pulex; R² = 0.70, adjusted R² = 0.68, F = 30.89, regression d.f. = 1, residual d.f. =
373
13, p < 0.0001. (b) The calculation of TUmax-Ext was based on pesticide concentrations in water samples collected
374
from streams after run-off events; R² = 0.67, adjusted R² = 0.64, F = 26.28, regression d.f. = 1, residual d.f. = 13, p
375
< 0.0001.
376 377
In the next step, we compared the calculated TUmax values and SPEARpesticides with a second
378
indicator of pesticide effects, the insecticide tolerance of G. pulex from agricultural and non-
379
agricultural sites. On average, populations from agricultural streams showed 3-fold higher
380
tolerance to the neonicotinoid insecticide clothianidin than those from non-agricultural control
381
streams (Welch two-sample t-test, p < 0.001, t = -6.39, d.f. = 9.67; Fig. 3).
382 383
Fig. 3. Comparison of the median effective concentrations (EC50) of G.
384
pulex collected from agricultural (red) and non-agricultural streams
385
(green) after 48 h exposure to the neonicotinoid insecticide clothianidin in
386
the laboratory. The boundaries of the central box are the 25th and 75th
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387
percentiles; the horizontal line is the median; the blue dot indicates the
388
mean; and whiskers of the boxplot represent the minimum and maximum
389
values. The significance level for the observations is displayed as: *** =
390
p < 0.001.
391
The observed increase in insecticide tolerance was better explained by the pesticide toxicity
392
estimated from internal body burden (TUmax-Int, adjusted R2 = 0.70, Fig. 4a) than that from
393
pesticide concentrations in water samples (TUmax-Ext, adjusted R2 = 0.53, Fig. 4b). The increase in
394
insecticide tolerance with TUmax-Int tended to be stronger when the local species diversity was
395
below average, but the difference was not significant (adjusted R² = 0.72, F = 3.28, d.f. = 1,
396
residual d.f. = 11, p = 0.097 for the interaction toxic unit:Shannon; Supporting Information,
397
Figure S4). The two indicators of pesticide effects, SPEARpesticides and the insecticide tolerance in
398
G. pulex, were closely correlated (adjusted R² = 0.67; Fig. 5).
399 400
Fig. 4. The freshwater shrimp G. pulex adapted to pesticide exposure, resulting in increased tolerance to the
401
neonicotinoid insecticide clothianidin. Pesticide exposure (in toxic units) were calculated from equivalent
402
pesticide concentrations in water derived from the internal body burden of G. pulex (a) or from pesticide
403
concentrations measured in water samples (b). The increase in tolerance was quantified as the ratio of the local
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404
EC50/mean EC50 of all populations from non-contaminated streams (TUmax-Int < -3). The grey areas correspond to
405
the 95% confidence interval. (a) R² = 0.72, adjusted R² = 0.70, F = 33.95, residual d.f. = 13, p < 0.001. (b) R² =
406
0.56, adjusted R² = 0.53, F = 16.58, residual d.f. = 13, p = 0.001.
407
408 409
Fig. 5. Relationship between the community composition of
410
macroinvertebrates, expressed as SPEARpesticides, and the increase in
411
tolerance of G. pulex to the insecticide clothianidin, expressed as ratio
412
of the local EC50/mean EC50 of all populations from non-contaminated
413
streams (TUmax-Int < -3). The grey areas correspond to the 95%
414
confidence interval. R² = 0.70, adjusted R² = 0.67, F = 29.74, d.f. = 13,
415
p < 0.001.
416 417
DISCUSSION
418
Pesticide exposure derived from water samples and body burden 21 ACS Paragon Plus Environment
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419
Both the pesticide exposure derived from water samples after runoff (TUmax-Ext) and from body
420
burden in G. pulex (TUmax-Int) showed that the agricultural and the non-agricultural streams
421
differed in the level of pesticide contamination (Table 1). All agricultural streams showed a
422
TUmax-Int ≥ -1.3 and a TUmax-Ext ≥ -3.2, whereas all non-agricultural streams showed a TUmax-Int ≤
423
-4.3 and a TUmax-Ext ≤ -3.3. According to Liess and von der Ohe,2 a pesticide contamination of
424
TUmax > -3 results in considerable chronic effects on macroinvertebrates, and such an effect was
425
confirmed by an increased dominance of tolerant macroinvertebrate taxa (low SPEARpesticides
426
values) and an increased insecticide tolerance of G. pulex in agricultural streams. However,
427
within the agricultural and the non-agricultural streams, no clear correlation was observed
428
between TUmax-Int and TUmax-Ext, which presumably results from the uncertainty associated with
429
both methods.
430
The neonicotinoid insecticides provided the highest toxicity (both in organisms and in the stream
431
water), confirming previous pesticide measurements from water samples in the study area.3, 10
432
Inostroza, et al.42 measured the pesticide body burden in G. pulex from the nearby Holtemme
433
River and identified neonicotinoids as the most toxic compounds. Neonicotinoids represent the
434
class of insecticides that is currently sold in the largest quantities in the study area43 and
435
worldwide.44 Although Inostroza, et al.42 reported no pesticide measurements from water
436
samples, the derived toxicity from body burden (TUmax-Int = -2.7 to -0.07) was generally lower
437
than that in our study. This difference might result from the fact that the highest pesticide
438
concentration is typically found in the small upper reaches of streams due to the dilution effects
439
in larger rivers.45, 46
440
In the present study, we found that in agricultural streams, the TUmax-Int calculated from
441
estimated equilibrium water concentrations derived from body burden was approximately one
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442
order of magnitude higher than the TUmax-Ext derived from measured water concentrations (Table
443
1). This difference was most likely due to the uncertainty of calculated partition coefficients
444
between G. pulex and the water phase but might also reflect disequilibrium at highly dynamic
445
water concentrations during a peak event. As shown previously, neonicotinoids have a tendency
446
to exhibit a higher bioaccumulation than that estimated with existing partitioning models.26 The
447
availability of effect concentrations and thus TUs based on internal concentrations in G. pulex
448
would largely remove this uncertainty and provide a better basis for the estimation of effects on
449
populations and communities. However, good correlation between body burden and community
450
effect (SPEAR) shows that even with uncertainties resulting from back calculation to water
451
concentrations, internal concentrations are a useful and robust approach in the assessment of
452
pesticide effects.
453 454
Comparison of pesticide exposure with pesticide effects
455
The effects of pesticide exposure on the macroinvertebrate community composition
456
(SPEARpesticides) were similar to the findings of previous studies in which pesticide exposure was
457
quantified from water and sediment samples.3,
458
(TUmax-Int) explained the changes in the community composition equally as effectively as the
459
toxicity derived from water samples (TUmax-Ext). These results suggest that pesticide
460
concentrations in both water samples after run-off and macroinvertebrates can be used for an
461
adequate assessment of long-term pesticide exposure in streams.
462
In contrast, the TUmax-Int explained the increase in tolerance to the insecticide clothianidin in G.
463
pulex considerably better (adj. R² = 0.70) than the TUmax-Ext (adj. R² = 0.53). This difference
464
resulted primarily from a particularly low TUmax-Ext in a single agricultural stream (Agri-2, Table
7, 47
The toxicity derived from body burden
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465
1), whereas TUmax-Int, SPEARpesticides and the insecticide tolerance consistently indicated a high
466
pesticide exposure in this stream. This observation suggests that assessing the pesticide exposure
467
of a stream from water samples was in our case less reliable than the assessment based on body
468
burdens or on observable effects on macroinvertebrates. Pesticide peaks in the stream water may
469
be more subject to unpredictable short-term variation caused by the erratic combination of
470
rainfall and pesticide applications than to the other exposure indicators that rely on longer-term
471
processes. However, peak concentrations in the water still provided an adequate measure of
472
pesticide exposure as the difference from the other indicators became obvious only in one of 15
473
streams (Fig. 2b, Fig. 4b).
474
Consistent with an earlier study,10 we observed that the increase in insecticide tolerance of G.
475
pulex with TUmax-Int was less strong when the local species diversity was high. However, this
476
effect was not significant, probably due to the limited number of study sites compared with
477
Becker and Liess.10 In contrast, Russo, et al.48 even reported increased sensitivity to
478
esfenvalerate in G. pulex populations collected from agricultural streams. Pesticides may weaken
479
exposed organisms,49 rendering them more sensitive to subsequent exposure unless they can
480
adapt to the toxicant. Refuge sections can serve as a source of immigrating sensitive organisms
481
and increase the local species diversity, both of which undermine the local adaptation to
482
pesticides.10, 11, 50 The higher availability of refuge sections at the sites studied by Russo et al.48
483
may therefore explain the increased sensitivity instead of adaptation, as opposed to the
484
populations investigated in Shahid et al.11 and the present study. Another study also reported
485
increased sensitivity51 to thiacloprid in G. pulex populations experiencing pre-exposure to
486
wastewater. Organisms subjected to press disturbance are more likely less tolerant to
487
superimposed pulse disturbances.52 Interestingly, with increasing duration of exposure,
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488
gammarids subjected to pure wastewater showed a slight increase in EC50 between 4 to 6 weeks.
489
It might be an indication towards evolution of co-tolerance.53
490
The increase in the insecticide tolerance of G. pulex in agricultural streams was closely
491
correlated with changes in the macroinvertebrate community composition. Both effects of
492
pesticide exposure likely represent a selection process for more tolerant organisms that acts
493
simultaneously on the population and the community levels.54 Therefore, as previously suggested
494
by Luoma,55 the local increase in pesticide tolerance of a rather tolerant species such as G.
495
pulex2 can be used as an approximation
496
community composition and vice versa.
497
We conclude that pesticide residues in macroinvertebrates are suitable to assess the overall
498
pesticide exposure and effects in agricultural streams. This method appears to be at least as
499
reliable as the assessment based on pesticide concentrations in stream water after run-off events:
500
Water concentrations underestimated the high toxicity in one stream that was indicated by body
501
burdens and by the adaptation of macroinvertebrates to insecticides at the species and
502
community levels. In contrast, the back-calculation from body burden to water concentration
503
tended to overestimate the pesticide toxicity in highly exposed streams. However, both
504
assessment methods generally provided adequate results that were confirmed by the observed
505
pesticide effects on macroinvertebrates. We suggest that the comparison between body burden
506
and synthetic passive samplers is an important area for future investigation.
of long-term effects on the macroinvertebrate
507 508
ACKNOWLEDGEMENTS
509
We thank Oliver Kaske and Klaus Seyfarth from the Department of System-Ecotoxicology,
510
Helmholtz Centre for Environmental Research GmbH – UFZ, and Stefanie Lippmann from the
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511
University of Koblenz-Landau for their support in the collection and identification of
512
macroinvertebrates. We also acknowledge German Academic Exchange Service (Deutscher
513
Akademischer Austauschdienst, DAAD) for financially supporting to N.S through doctoral
514
fellowship. A free academic license for JChem, InstantJChem and the Calculator Plugins was
515
kindly provided by ChemAxon (Budapest, Hungary).
516 517
AUTHOR CONTRIBUTIONS
518
N.S. collected the water samples and the invertebrates for the chemical analysis and SPEAR
519
calculation, conducted the sensitivity tests, analyzed the data and wrote the first draft of the
520
manuscript. J.M.B. contributed to the data analyses, interpretation of results and writing of the
521
manuscript. M.K. and W.B. performed the chemical analyses and contributed to the writing of
522
the manuscript. M.L. conceived the concept of research and contributed to the interpretation of
523
results and writing of the manuscript.
524
SUPPORTING INFORMATION
525
Figures showing the study map, illustration of event-driven water sampler (EDS), comparison of
526
the ecological status of streams, and effect of species diversity on the adaptation to pesticides.
527
Tables showing physicochemical properties of investigated streams, compound descriptors, list
528
of median lethal concentrations and reference organisms used in TU calculation, and lists of
529
pesticides analysed and detected in water and G. pulex (PDF).
530 531
REFERENCES
532 533
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Environmental Science & Technology
40. R Core Team R: A Language and Environment for Statistical Computing. Vienna: R Foundation for Statistical Computing; 2013. R Foundation for Statistical Computing. (Aavailable from http://www.rproject.org/), 2017. 41. Beketov, M.; Foit, K.; SchÄfer, R.; Schriever, C.; Sacchi, A.; Capri, E.; Biggs, J.; Wells, C.; Liess, M., SPEAR indicates pesticide effects in streams–comparative use of species-and family-level biomonitoring data. Environ. Pollut. 2009, 157, (6), 1841-1848. 42. Inostroza, P. A.; Vera-Escalona, I.; Wicht, A.-J.; Krauss, M.; Brack, W.; Norf, H., Anthropogenic Stressors Shape Genetic Structure: Insights from a Model Freshwater Population along a Land Use Gradient. Environ. Sci. Technol. 2016, 50, (20), 11346-11356. 43. BVL Inlandsabsatz und Export von Pflanzenschutzmitteln - Jahresbericht 2014; Federal Office of Consumer Protection and Food Safety Germany (BVL): 2015; p 12. 44. Jeschke, P.; Nauen, R.; Schindler, M.; Elbert, A., Overview of the status and global strategy for neonicotinoids. J. Agric. Food Chem. 2010, 59, (7), 2897-2908. 45. Szöcs, E.; Brinke, M.; Karaoglan, B.; SchÄfer, R. B., Large Scale Risks from Agricultural Pesticides in Small Streams. Environ. Sci. Technol. 2017, 51, (13), 7378-7385. 46. Schulz, R., Field studies on exposure, effects, and risk mitigation of aquatic nonpoint-source insecticide pollution. J. Environ. Qual. 2004, 33, (2), 419-448. 47. Hunt, L.; Bonetto, C.; Marrochi, N.; Scalise, A.; Fanelli, S.; Liess, M.; Lydy, M. J.; Chiu, M. C.; Resh, V. H., Species at Risk (SPEAR) index indicates effects of insecticides on stream invertebrate communities in soy production regions of the Argentine Pampas. Sci. Total Environ. 2017, 580, (Supplement C), 699709. 48. Russo, R.; Becker, J. M.; Liess, M., Sequential exposure to low levels of pesticides and temperature stress increase toxicological sensitivity of crustaceans. Sci. Total Environ. 2018, 610, 563569. 49. Ashauer, R.; Boxall, A. B.; Brown, C. D., Modeling combined effects of pulsed exposure to carbaryl and chlorpyrifos on Gammarus pulex. Environ. Sci. Technol. 2007, 41, (15), 5535-5541. 50. Gassmann, A. J.; Carrière, Y.; Tabashnik, B. E., Fitness costs of insect resistance to Bacillus thuringiensis. Annu. Rev. Entomol. 2009, 54, 147-63. 51. Zubrod, J. P.; Englert, D.; Luderwald, S.; Poganiuch, S.; Schulz, R.; Bundschuh, M., History Matters: Pre-Exposure to Wastewater Enhances Pesticide Toxicity in Invertebrates. Environ Sci Technol 2017, 51, (16), 9280-9287. 52. Parkyn, S. M.; Collier, K. J., Interaction of press and pulse disturbance on crayfish populations: flood impacts in pasture and forest streams. Hydrobiologia 2004, 527, (1), 113-124. 53. Lopes, I.; Baird, D. J.; Ribeiro, R., Genetically determined resistance to lethal levels of copper by Daphnia longispina: association with sublethal response and multiple/coresistance. Environ Toxicol Chem 2005, 24, (6), 1414-1419. 54. Grant, A., Pollution-Tolerant Species and Communities: Intriguing Toys or Invaluable Monitoring Tools? Human and Ecological Risk Assessment: An International Journal 2002, 8, (5), 955-970. 55. Luoma, S. N., Detection of trace contaminant effects in aquatic ecosystems. Journal of the Fisheries Board of Canada 1977, 34, (3), 436-439.
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