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Population growth rate responses of Ceriodaphnia dubia to ternary mixtures of specific acting chemicals: Pharmacological versus eco-toxicological modes of action. Carlos Barata, Maria Fernandez-San Juan, Maria Luisa Feo, Ethel Eljarrat, Amadeu Soares, Damia Barcelo, and Donald Baird Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/es301312h • Publication Date (Web): 24 Jul 2012 Downloaded from http://pubs.acs.org on July 29, 2012
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TITLE PAGE:
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Population growth rate responses of Ceriodaphnia dubia to ternary
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mixtures of specific acting chemicals: Pharmacological versus Eco-
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toxicological modes of action.
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Carlos Barata 1*, María Fernández-San Juan 1, Maria Luisa Feo 1, Ethel Eljarrrat 1,
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Amadeu M.V.M. Soares 2, Damià Barceló 1, Donald J. Baird 3
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1 Institute of Environmental Assessment and Water Research (IDAEA-CSIC), Jordi
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Girona 18, 08034 Barcelona, Spain.
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2 Departamento de Biologia, Universidade de Aveiro, 14 3810-193 Aveiro, Portugal
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3 Environment Canada @ Canadian Rivers Institute, Department of Biology, University
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of New Brunswick, Fredericton, NB. Canada.
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*Address correspondence to Carlos Barata, Institute of Environmental Assessment and Water Research (IDAEA-CSIC), Jordi Girona 18, 08034 Barcelona, Spain. Telephone: +34-93-4006100. Fax: +34-93-2045904. E-mail:
[email protected] D.J.
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ABSTRACT
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When considering joint toxic apical effects at higher levels of biological organization,
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such as the growth of populations, the so-called pharmacological mode of action that
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relies on toxicological mechanistic effects on molecular target sites, may not be
29
relevant. Such effects on population growth rate will depend on the extent to which
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juvenile and adult survival rates and production rates (juvenile developmental rates and
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reproduction) are affected by toxic exposure, and also by the sensitivity of population
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growth rates to life-history changes. In such cases, the ecotoxicological mode of action,
33
defined as the crucial life-history trait processes and/or xenobiotic-life-history trait
34
interactions underlying a toxicological effect on population growth rate, should be
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considered. Life-table response experiments with the crustacean Ceriodaphnia dubia
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exposed to single and ternary mixtures of nine compounds were conducted to test the
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hypothesis that joint effects on population growth rates could be predicted from the
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mixture constituent ecotoxicological mode of action. Joint effects of mixtures
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containing pharmacologically dissimilar compounds (cadmium, λ-cyhalothrin and
40
chlorpyrifos) that differentially affected life-history traits contributing to population
41
growth rates were accurately predicted by the independent-action concept. Conversely,
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the concentration-addition concept accurately predicted joint effects of two different
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mixtures: one containing pharmacologically similar acting pyrethroids that also affected
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similarly life-history traits, other one that included pharmacologically dissimilar
45
compounds (3, 4 dichloroaniline, sodium bromide and fenoxycarb) acting mainly on
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reproduction rates. These results indicate that when assessing combined effects on
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population growth rate responses, selection of mixture toxicity conceptual models based
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on the ecotoxicological mode of action of mixture constituents provided more accurate
49
predictions than those based on the pharmacological mode of action.
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Key Words: mixture toxicity, mode of action, metals, insecticides, pyrethroids,
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Ceriodaphnia, population growth rate.
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INTRODUCTION
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Mixture toxicology aims to quantitatively predict the effects of combinations of
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chemicals from information about the toxicity of the individual components. This aim
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can be realised by making the assumption that the components of a mixture produce a
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common effect and act non-interactively, in an additive fashion. Two different
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conceptual models, termed concentration addition (CA) and independent action (IA),
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describe general relationships between the effects of single substances and their
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corresponding mixtures. The concentration addition model is founded on the
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assumption that mixture components each possess a similar pharmacological mode of
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action, hereafter defined following Escher et al. 1and Borgert et al. 2 as the crucial
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biochemical processes and/or xenobiotic-biochemical interactions underlying a
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toxicological apical effect, and thus is most applicable for toxic substances that have the
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same molecular target site 3. The alternative model of independent action assumes a
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dissimilar pharmacological mode of action of mixture constituents that interact with
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different target sites, leading to a common toxicological endpoint within an organism 4.
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A basic assumption of this model is that the effects of individual constituents are
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expected to be independent in a strictly probabilistic sense.
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The combination of accurate experimental and biometric methods employing a large
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number of substances with defined mode of actions, have confirmed the adequacy of
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both, CA and IA models, to predict combined joint effects of complex mixtures even at
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very low doses
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experimental framework has mostly been tested using highly standardized bioassay
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systems focus on short-term integral adverse effects. The accuracy of existing mixture
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toxicity models predicting combined long term toxicity effects remains unresolved, due
5-11
. Nevertheless, as pointed out by Altenburger et al.
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, the above
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to the inability to define the mode of action for most substances and species in the field
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and the lack of good empirical data on long term population responses.
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There is a long lasting debate in both human and environmental risk assessment about
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the question whether the validity of the concept of CA or IA is strictly confined to
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mixtures of toxicants with identical primary molecular mechanisms of action, or
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whether a more phenomenological understanding of “similar action” in terms of
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common apical endpoints or common adverse outcomes provides a sufficient basis for
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expecting concentration-additive joint actions of toxicants
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studies have reported that joint effects of pharmacologically dissimilar and specifically
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acting mixtures are additive and predicted by the CA concept in molluscs, insects,
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crustaceans, fish and mammals
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Daphnia, fish and rats that for mixtures having pharmacologically dissimilar modes of
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action or different chemical structures, joint effects changed across lethal and sublethal
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endpoints in an unpredicted way according to the IA concept 22-26. Cleuvers
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that joint toxicity of pharmaceuticals with putative different modes of action but that
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acted by non polar narcosis to algae was additive and predicted by the IA. Christiansen
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et al.22 showed that mixtures of anti-androgens having distinct chemical structure and
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dosed below their no-observed-adverse-effect-level impaired sexual differentiation of
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male rats in a way expected by the CA. Thus, the above mentioned studies support the
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view that whole organism responses are the outcome of an array of interactions of
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compounds in various organs and tissues within individuals, and thus primary and
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secondary mode of actions may be equally important, hence it may not be useful to
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classify toxic chemicals by a given mode of action and, indeed, it may result in
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erroneous conclusions regarding the hazard posed by such mixtures. Several authors,
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thus, have proposed that in mixture toxicity risk assessment
13-19
. Several experimental
11, 20-22
. There is also reported evidence in plants,
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reported
induction of similar
5
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phenomenological effects should be sufficient for accepting that mixture constituents
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had a “similar mode of action” 13, 19. Opposite to the previous opinion, several empirical
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studies conducted in unicellular algae
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pharmacologically dissimilar acting mixtures are better predicted by the IA concept
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even al low exposure levels8,
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Kortenkamp et al.
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constituents are not known for certainty in most studies. Barata et al.
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when considering whole organism apical endpoints, mixture-toxicity investigations
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should instead focus on the eco-toxicological mode of action, hereafter defined as the
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crucial physiological-life-history trait processes and/or xenobiotic- trait interactions
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underlying a toxicological effect on the studied apical endpoint. In the previous study it
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was shown that reproduction in the crustacean Daphnia magna responded to
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pharmacologically dissimilar binary mixtures of the pyrethroid λ-cyhalothrin and the
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metal cadmium, in a way predicted by the CA concept. Barata et al.
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demonstrated that regardless of their distinct pharmacological mode of action both
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chemicals shared a common effect, impaired food acquisition, which is known to be one
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of the major factors regulating fecundity, in D. magna.
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In ecological risk assessment of chemicals, population growth rate (hereafter referred as
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PGR), measured either as the multiplication rate per unit of time λ = e
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Malthusian parameter r = loge λ, has been proposed as a more relevant measurement of
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toxicant effects than traditional measures of mortality or reproduction. This is argued
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from the viewpoint that PGR integrates life-history responses, facilitating the prediction
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of the impact at higher levels of ecological organisation
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concerning an individual's contribution to PGR, age at reproduction, offspring
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production, and juvenile and adult survival rates are measured and combined to
populations
support the view that
27
. Nevertheless, as stated by Borgert et al.2 and
19
, the pharmacological mode of action of the tested mixture 28
argued that
r
28
further
or as the
29, 30
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127
calculate a predicted PGR
. Life-table response experiments have made a valuable
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contribution to the assessment of population consequences of toxicant effects on
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individual life-history traits 31-33. In life-table response experiments, the extent to which
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PGR responds to toxicant exposure is determined through decomposition analysis: an
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analysis of the severity of toxic effects on individual life-history traits as well as the
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sensitivity of PGR to changes in its constituent individual traits
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assessment studies that have considered effects on population responses and that have
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precisely tested CA and IA models have been mostly limited to unicellular organism-
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systems and short term exposures
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pharmacological mode of action for predicting mixture toxicity has not been fully tested
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at the population level or/and using long term responses, and thus has limited
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application in complex ecological systems.
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In this study we test the hypothesis that joint effects of mixtures on PGR responses can
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be predicted from the ecotoxicological mode of action of their individual mixture
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constituents, which can be considered a special case of the proposed phenomenological
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mode of action 13, 19. This hypothesis was tested using life table response experiments
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conducted using the cladoceran Ceriodaphnia dubia Richard, which is commonly used
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in laboratory ecotoxicity testing 37, exposed to three ternary mixtures. C. dubia's short
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life-cycle and high fecundity allows the determination of population growth rate
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parameters from short duration life-history toxicity tests 38. Thus cost–effective complex
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experimental designs can be performed 33. Mixtures included: (1) chemicals that are
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known to differentially affect survival and reproduction responses of C. dubia and other
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related species (cadmium, chlorpyrifos and λ-cyhalothrin) 28, 39; (2) pyrethroid
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insecticides (λ-cyhalothrin, cypermethrin and deltamethrin) that similarly affect survival
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and reproduction in C. dubia and other cladocerans 40, 41 and (3) compounds that impair
5-8,
31, 32
. Mixture
34-36
. Thus, so far the usefulness of
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embryo development and hence offspring survival (3,4 dichloroaniline, sodium bromide
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and fenoxycarb) 39, 42. Mixtures 1 and 3 included chemicals with putatively dissimilar
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pharmacological modes of action: λ-cyhalothrin is a sodium-channel blocker and γ-
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aminobutyric acid (GABA) inhibitor currently used to control arthropod pests 43. The
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organophosphorus insecticide chlorpyrifos causes cholinesterase inhibition in the
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cladoceran D. magna, impairing the nervous system 44. Cadmium toxicity in organisms
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is related to the production of reactive oxygen species and/or interferences with Ca2+
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transport, disrupting key physiological processes such as osmoregulation 45, 46. In D.
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magna exposures to cadmium also causes oxidative stress 47. 3, 4 dichloroaniline is the
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main degradation product of the herbicide propanil 48 and is considered to act in D.
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magna more specifically than by non polar narcosis 49. Fenoxycarb is a juvenile
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hormone analog acting in arthropods inhibiting metamorphosis to the adult stage 50. The
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pharmacological mode of action of sodium bromide in cladoceran species is not known.
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According to our hypothesis, the combined toxicity of the mixture of the dissimilarly-
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acting substances cadmium, chlorpyrifos and λ-cyhalothrin on population growth rate
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response should be predicted by the IA concept and of the pyrethroid mixture and that
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of 3,4 dichloroaniline, sodium bromide and fenoxycarb by the CA one. PGR responses
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were estimated from juvenile and adult survival rates, age at first reproduction and
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reproduction rates using the two stage demographic model of Sibly et al. 51. The
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ecotoxicological mode of action of single substances and mixtures was determined
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quantifying their effects on life-history traits using decomposition analysis following
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Barata et al. 33. Single and joint mixture effects and CA and IA predictions were
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estimated using a modelling framework proposed by Barata et al. 23.
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EXPERIMENTAL SECTION
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Chemicals
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The substances employed in the toxicity experiments were cadmium (Cd, CAS No
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7440-43-9), Bromide (Br, CAS No 7647-15-6) prepared from Aldrich (Madrid, Spain)
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analytical reagent grade salts (99% purity, 3CdSO4.8H2O and NaBr, respectively); λ-
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cyhalothrin (CAS-No 91465-08-6; 99% purity), deltamethrin (CAS No 52918-63-5
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99.8%), cypermethrin (CAS-No 52315-07-8, mixture of isomers 95.8 %), fenoxycarb
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(CAS No 72490-01-8 99.6%), chlorpyrifos (CAS No 2921-88-2 99.9%) from Riedel-
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de Haën (Seelze, Germany), and 3,4 dichloroaniline (DCA, CAS No 95-76-1, 98%
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purity) from Aldrich. All other chemicals were analytical grade and were obtained from
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Merck (Darmstadt, Germany).
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Experimental animals
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Individuals of a lab clone of C dubia obtained originally from the National Water
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Research Institute, Saskatoon, Canada
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were selected for this study. Ten bulk cultures of 20 animals were maintained in 150
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mL of ASTM hard water
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standard organic extract
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corresponding to 1.8 mg C/L). Photoperiod was set to 12h light: 12h dark and
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temperature at 24 ± 0.5 oC. Cultures were changed every other day with freshly
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prepared medium and neonates removed within 24 h of release. Every week, cultures
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were reset with newly release neonates.
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Experimental approach
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Single substance and mixture toxicity tests were measured separately in independent
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sets of experiments that were repeated at least twice to account for changes in sensitivity
199
54
200
plus a control. Ternary mixture combinations followed a fixed ratio design, in which
201
exposure levels were selected to include constant equitoxic (EC50) mixture ratios and
52
and maintained for over ten years in our lab
53
, in 180 mL screw top glass jars, with the addition of a
33
. Animals were fed with Chlorella vulgaris (5105 cells/ mL,
. Single substance toxicity tests included from seven to twenty exposure treatments
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202
from 13 to 15 different mixture effect levels
. Chosen EC50s were selected from the
203
single substance toxicity assays. Details of the experimental approach are provided in
204
Methods, Supporting Information .
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Life- table response assays
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Population assays were initiated with < 12 h old neonates collected from the bulk
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cultures and were randomly assigned in groups of five individuals in 40 mL of test
208
medium in 50 mL borosilicate glass jars. Experimental treatments consisted of five
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replicates. Test solutions were prepared by adding appropriate amounts of a
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concentrated stock solution to ASTM hard water, and the solution was mixed
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thoroughly. Acetone (HPLC grade; < 0.5 mL/L) was used as a carrier for all but Cd and
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Br treatments. A control without acetone was also used to assess the possibility of
213
carrier effects. Culture conditions were similar to those described for bulk cultures, but
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medium was changed every day. Life-table experiments lasted 10 days. The following
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demographic parameters were recorded: juvenile and adult survivorship, age of
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releasing neonates which included age at first reproduction, and daily reproduction rates
217
(number of neonates produced per surviving female per day). Details of life-table
218
response assays are provided in Methods, Supporting Information.
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Demographic analysis
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PGR (λ) in the different treatments was determined from the age-specific data on
221
fecundities and survival probabilities over the 5 replicates used. λ was computed
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iteratively from the simplified 2-stage model of Sibly et al. 51.
t −t
n pjj λ j + pa λ−1 =1 223
(1)
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Where n is the number of offspring produced per female and day, tj is the average time
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to first reproduction in days, pj juvenile survival rates (proportion of juveniles surviving
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per day from birth to first reproduction), pa adult survival rates (proportion of adults
227
surviving per day averaged over the adult period). A time unit of 1 day was employed
228
for all treatments because reproductive output was measured every day. Estimates of the
229
variability of λ levels within treatments were obtained from Jack-Knife pseudovalues56.
230
The ecotoxicological mode of action of a given pollutant was assessed quantifying by
231
how much exposure treatment effects on n, Sj, Sa and tj contribute to the overall impact
232
on PGR (λ). This procedure is termed decomposition analysis, and was performed
233
following Levin et al. (32: Equation 16) using the sensitivity equations given by Sibly et
234
al.
235
Supporting Information.
236
Chemical analyses
237
Duplicated water samples of freshly prepared and old (1 day) test solutions were
238
collected at the beginning and end of the tests to measure toxic substance
239
concentrations, oxygen levels and pH. Analysis of pyrethroids, fenoxycarb, bromide
240
and DCA were restricted to the three concentrations including low, middle and high
241
exposure levels and those of chlorpyrifos to the two highest exposure levels (see Table
242
S1 in Supplementary Information). Details of analytical methods are provided in
243
Methods, Supporting Information.
244
Data analysis
245
Concentration-response relationships of single substances were biometrically modelled
246
considering proportional responses of PGR relative to control treatments (R) and by
247
fitting observed responses to the non-linear allosteric decay regression model depicted
248
in Equation 2 23. Analyses were performed on Jack-Knife pseudovalues of λ 56. Prior to
51
(Equations 4-7). Details of demographic analysis are provided in Methods,
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analysis, the intrinsic rate of population increase, r, was calculated according to the
250
formula λ = e r. Although both parameters are used in demography as descriptors of
251
PGR, r is considered more appropriate for biometric modelling purposes 51. 1 cik 1+ EC 50 k
252
R (ci ) =
253
where
254
R(ci)
- proportional r- response at concentration ci relative to controls
255
ci
- concentration of the toxic substance (i)
256
EC50 - the half saturation constant (i.e. the concentration that caused an
257 258
( 2)
inhibition of 50% of r). k
-decay index
259
Predicted values for mixture combinations considering the CA and IA models were
260
determined following a previously established procedure of Barata et al.
261
the model of CA and considering a mixture of n chemicals, where each chemical
262
contributes to the overall toxicity proportionally to its EC50i (expressed as TUi),
263
expected proportional responses (R mix) of equation 2 can be re-calculated as: R mix =
1 1 + ∑ TU i i =1 n
23
. Following
( 3)
k'
264 where k' =
n
z
∏k i =1
TU i i
, and z =
n
∑ TU
i
i =1
265
Calculating k’ as the geometric mean of the ki obtained for each chemical of the mixture
266
weighted by its relative toxicity (TUi). This approach assumes that the response in a
267
mixture of n chemicals is proportional to the addition of the equi-effective individual
268
concentrations of its constituents. Thus, by solving equation 3, it is possible to obtain
269
expected mixture responses based on the CA model considering non-linear allosteric
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decay biological responses of the n mixture constituents. Alternatively, expected
271
proportional responses (Rmix) of a n-compound mixture by the IA model can be
272
obtained directly from equation 4 sensu Bliss 4. n
R mix = ∏ R ( c i )
273
( 4)
i =1
274
Where ci is again the concentration of the ith component and R(ci) is the proportional
275
response relative to control treatments of that concentration if the compound is applied
276
alone.
277
Using Equations 3 and 4, then it is possible to plot predicted combine toxicity responses
278
for similarly and dissimilarly acting chemicals according to the CA and IA concepts
279
respectively and, hence, to compare them with observed responses.
280
The adequacy of CA and IA models to predict combined toxicity of the studied
281
mixtures was tested statistically comparing predicted vs. observed joint response
282
regression lines following Barata et al.23. Details are given in Methods, Supporting
283
Information.
284 285
RESULTS
286
Chemical analysis
287
Oxygen levels and pH values varied little in freshly prepared and old test solutions and
288
were within acceptable limits. Only measured concentration levels of chlorpyrifos and
289
those of pyrethroids were not within 10% of nominal ones. Accordingly actual
290
chlorpyrifos, λ-cyhalothrin, cypermethrin and deltamethrin test concentrations were
291
taken as the arithmetic mean between measured initial and final concentrations, which
292
were 87, 72, 76 and 69% of their nominal levels, respectively. Further information is in
293
Results (chemical analyses, Table S1) in Supporting Information.
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Single substance toxicity
296
Proportional PGR responses to the eight studied individual chemicals followed a
297
sigmoid decay curve (Figure 1), which could be modelled as an allosteric decay
298
function ( Equation 2). In all cases, the residuals of the regression models obtained were
299
normally distributed (Kolmogorov–Smirnov tests p>0.05) giving coefficients of
300
determination greater than 0.7 (Table 1). The shape and steepness depicted as the
301
allosteric decay index (k in Table 1) of the curves obtained varied across chemicals with
302
chlorpyrifos and fenoxycarb having the steepest and smoothest curves, respectively.
303
Individual C. dubia toxicity of the eight tested chemicals on PGR differed largely across
304
substances, with EC50 values ranging over six orders of magnitude between
305
deltamethrin (0.08 nmol/L) and Br (129.76 µmol/L) (Table 1). Further details of single
306
exposures are shown in Fig S1 (SI, “Results”).
307
Decomposition analyses depicted in Figure 2 indicate differences among the tested
308
substances in terms of their effects on life-history traits contributing to the observed
309
PGR changes. For Cd, fenoxycarb, DCA and Br effects on reproduction rates had the
310
greatest contribution to observed changes in PGR. For pyrethroid insecticides effects on
311
juvenile survival rates and reproduction rates or age at first reproduction contributed
312
equally to PGR changes, whereas chlorpyrifos affected PGR mainly impairing juvenile
313
and adult survival rates.
314
Mixture toxicity
315
Results of mixture toxicity experiments are given in Figure 3, together with the
316
corresponding fitted models (Table 1). EC50 s of the three assayed mixtures fell into the
317
span of toxicities determined for their individual constituents. Joint effects of the first
318
mixture of Cd, chlorpyrifos and λ-cyhalothrin were accurately predicted by the IA
319
concept (Figure 3A) being largely affected by the contribution of Cd at low effect levels
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(grey line 1). Observed joint EC50 was closer to the estimated EC50 by the IA (Table
321
1). A closer look of the data plotting predicted vs. observed responses (inner graph in
322
Figure 3A) indicated that fitted linear regression lines of both models (IA and CA) were
323
different (had different slopes and elevations according to Table S2, SI “Results”), and
324
that the IA regression was almost identical to the identity line (y=x), having a slope and
325
elevation of 1 and 0, respectively (Table S2, SI “Results”). These results indicate that
326
combined effects were accurately predicted by the IA. Joint effects of mixtures 2 and 3
327
were accurately predicted by the CA concept (Figures 3 B, C). In both mixtures,
328
observed joint effect levels (EC50s) were closer to the estimated concentration addition
329
EC50s (Table 1). Joint effects predicted by IA and CA concepts versus observed
330
responses (inner graphs) in both mixtures had different slopes and elevations, and CA
331
regressions had slopes and intercepts of 1 and 0, respectively (Table S2, SI “Results”).
332
In mixtures 2 and 3 none of the constituents involved (grey lines 4-9) had a dominant
333
contribution in the observed joint response. Note that in mixture 3 despite that joint
334
toxicity predicted by the IA concept was dominated by fenoxycarb (grey line 9) at low
335
effect levels, observed responses depicted as a doted line did not (Fig 3 C).
336
Decomposition analyses depicted in Figure 2 (bottom panel) of mixture effects on PGR
337
showed high degree of concordance with the reported contribution of mixture
338
constituents. In mixture 1, toxic effects on juvenile survival and reproduction rates had
339
the greatest contribution to observed changes in PGR. For mixture 2, age at first
340
reproduction, juvenile survival and reproduction rates contributed similarly to PGR
341
changes, whereas in mixture 3 effects on reproduction rates had the greatest
342
contribution to observed changes in PGR.
343
DISCUSSION
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To improve accuracy and repetitiveness, predictive hazard assessment of mixtures at
345
the population level have mostly been performed using unicellular organisms 5-8, 27, 34, 35
346
and, in only a few occasions, attempts have been made to address demographic effects
347
on metazoan species
348
lower to higher levels of biological organisation; pharmacological modes of action have
349
limited utility to predict non interactive joint effects of mixtures according to the
350
concentration addition or independent action concepts
351
population responses are directly driven by cellular responses and hence effects on cells
352
will more easily translate to higher biological levels. Thus it is not surprising to find a
353
close match of joint observed effects and those predicted by the CA and IA concepts for
354
pharmacological similar and dissimilar acting chemicals, respectively
355
metazoan species, this argument is significantly weakened
356
concordance of expected versus observed joint effects in metazoans is, in many cases,
357
likely related to biometric and exposure problems. Increasing biological complexity and
358
exposure periods can decrease repeatability and accuracy
359
such problems were minimized by choosing a small-bodied, clonal species with a short
360
life-cycle and by repeating single and mixture exposures several times. Observed
361
concentration effects on PGR responses (EC50s) were within the same order of
362
magnitude as those reported elsewhere in C. dubia and related Daphnia species 39, 41, 42.
363
Fenoxycarb was an exception in our study since impaired PCR responses (EC 20 = 0.6
364
µg/L, EC 50 = 18 µg/L) at concentrations 20 to 500 fold higher than those reported
365
elsewhere in C. dubia 39, 62. Nevertheless, reported studies conducted in C. dubia and D.
366
magna indicate that fenoxycarb effects on PGR and reproduction responses may vary
367
over three orders of magnitude across assays
368
conditions
39
36, 58-61
. Several authors have noted that moving from effects at
and UV radiation
63
2, 16, 24, 58
. In microbial systems,
5-8, 27
.
In
2, 16, 23, 58
. The lack of
24, 54, 55
. In this present study,
and are strongly affected by food
64
. Thus the use in this present study of different food
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369
conditions and of artificial light produced by low UV-emission neon-lamps may have
370
contributed to these observed discrepancies.
371
Our hypothesis stated that when predicting joint effects of toxic substances on metazoan
372
population dynamics, the ecotoxicological mode of action of mixture constituents
373
should be more relevant. We tested our hypothesis using three ternary mixtures that
374
included: (1) pharmacological and ecotoxicologically dissimilar acting chemicals: Cd,
375
λ-cyhalothrin and chlorpyrifos; (2) pharmacological and ecotoxicologically similarly-
376
acting pyrethroids, and (3) the pharmacological dissimilar but ecotoxicologically
377
similarly-acting compounds Br, DCA and fenoxycarb. In testing our hypothesis, we
378
demonstrated that mixture 1 included chemicals with dissimilar ecotoxicological mode
379
of actions and mixtures 2 and 3 included chemicals with similar ecotoxicological mode
380
of action. Secondly, we demonstrated that the joint toxicity of mixtures 1, 2 and 3 was
381
accurately predicted by the IA, CA and CA concepts, respectively.
382
Results reported in Figure 2 indicated that mixture constituent contributions to PGR in
383
the mixture of Cd, λ cyhalothrin and chlorpyrifos were different. In single exposures,
384
effects of Cd on PGR were mainly associated with lower fecundity rates, while those of
385
chlorpyrifos were linked to reductions on juvenile and adult survival rates, and those of
386
λ-cyhalothrin were related with the increase in developmental rates and the decrease in
387
juvenile survival. In a close relative species, D. magna, Barata et al.
388
sublethal doses, λ- cyhalothrin and Cd inhibited food acquisition resulting in reduced
389
offspring number and/or increased development rates in adult individuals. Barata et al.
390
41, 65, 66
391
demographic responses of D. magna and of the copepod Acartia tonsa impairing
392
survival rates. Thus, the described ecotoxicological modes of action of Figure 2 agree
393
with reported studies. Joint effects of these three substances in mixture 1 reflected their
28
showed that, at
also reported that organophosphorous compounds and pyrethroids affected
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contributions in single exposure assays, as they were mainly related to detrimental
395
effects on juvenile survival (chlorpyrifos and λ cyhalothrin) and fecundity rates (Cd)
396
(Figure 2). According to our hypothesis, thus, observed joint toxicity responses were
397
additive and predicted by the IA concept (Figure 3).
398
The ternary mixture of pyrethroids was used as positive control provided that included
399
similar acting chemicals that are known to have similar ecotoxicological modes of
400
action. Our results and studies performed in copepods and Daphnia species have shown
401
that these pyrethroids affect juvenile survival and, at sublethal doses, are able to impair
402
juvenile development (here measured as age at first reproduction) and reproduction
403
rates
404
by the CA concept. The remaining mixture of DCA, Br and fenoxycarb included
405
compounds that regardless of their different chemistry and likely distinct
406
pharmacological mode of action, shared a common ecotoxicological effect in C. dubia
407
and other Daphnia species: impaired embryo survival 42, 62, 68. Results depicted in Figure
408
2 indicated that indeed effects on reproduction rates had the greatest contribution to
409
PGR changes in single and mixture exposures. Consequently, joint effects on PGR were
410
accurately predicted by the CA concept.
411
The results presented in this study showed that joint effects of the tested dissimilar
412
mixtures on demographic responses can be predicted from the analysis of their
413
ecotoxicological mode of action. Barata et al. 23, 28 also found that predicted joint effects
414
of binary mixtures of pyrethroids, metals and DCA on D. magna sublethal responses,
415
such as food acquisition and reproduction, agree with their ecotoxicological mode of
416
action but joint effects on survival did not. According to these authors, pyrethroids and
417
metals affected similarly the physiological mechanisms of feeding (i.e. poisoned the gut
418
and disrupted the feeding apparatus) and reproduction (food intake and hence
28, 66, 67
. Consequently, pyrethroid joint toxicity of PGR was accurately predicted
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419
reproductive investment or egg number) and, as a result, joint effects of their binary
420
combinations were additive and predicted by the CA. Alternatively, DCA and Cd
421
affected differentially the two responses that determine reproduction rates: egg survival
422
and number, respectively. Consequently, joint effects of binary mixtures of DCA and
423
Cd on reproduction rates were accurately predicted by the IA concept. On the contrary,
424
survival responses to high doses of binary mixtures of metals and pyrethroids were
425
caused by few specific different mechanisms (oxidative stress by Cu, displacement of
426
essential metals in key metabolic paths by Cd, neurotoxicity of pyrethroids) and hence
427
were predicted by the IA concept 23.
428
From a risk assessment perspective, this present study support the phenomenological
429
similarity criterion proposed by Kortenkamp, Backhaus and Faust among other authors
430
13, 18
431
concept of concentration addition could be extended to mixture constituents having
432
common apical endpoints or common adverse outcomes. Furthermore, the results
433
presented here also support the general consensus that CA can be considered a default
434
worse-case conservative model in environmental and human risk assessment of
435
chemical mixtures, provided that CA tends to predict higher joint toxic effects than IA
436
and, in most cases, differences between predictions of both models do not differ more
437
than two fold13, 18.The third mixture tested in our study constituted a clear example
438
supporting the phenomenological similarity criteria, since it included compounds with
439
different structures (fenoxycarb, DCA and BrNa) and probably with different molecular
440
target sites but a common ecotoxicological or phenomenological effect on the level of
441
the studied apical endpoint: all mixture constituents affected PGR mainly impairing
442
embryo survival. Consequently, joint effects of the third mixture were better predicted
443
by CA. Conversely, the first tested mixture included compounds with different
. The phenomenological point of view of similar mode of action states that the
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molecular target sites and different ecotoxicological or phenomenological effects on
445
PGR. The mixture constituents affected PGR impairing development, reproduction and
446
survival rates, and hence, were better predicted by IA. Moreover, as shown in Table 1,
447
IA and CA predictions of joint effects impairing PGR 50% (EC50) were always within
448
two fold and, in all cases, the effect predictions of CA were greater than those of IA.
449
The proposed ecotoxicological mode of action approach can be considered an
450
operational method to assess common or uncommon phenomenological modes of action
451
among mixture constituents when considering joint effects in populations or whole
452
individuals. When considering population apical endpoints, toxic effects depend on the
453
extent to which juvenile and adult survival rates, juvenile developmental rates and
454
reproduction are affected by a toxicant and the sensitivity of the apical endpoint (i.e.
455
PGR) to life-history changes 69. Thus, target sites of intoxication are the life-history
456
traits at the population level. In whole individuals Barata et al. 28 were able to predict
457
joint toxicity of chemical mixtures on D. magna reproduction assessing
458
phenomenological adverse effects on food acquisition and embryo survival.
459
Consequently, we believe that mixture ecotoxicological investigations on whole
460
organism or levels beyond individuals will benefit from assessing ecotoxicological
461
modes of action that can be easily evaluated just studying the concentration at which
462
lethal effects on embryos, juveniles and adults occur and food acquisition is impaired.
463
In Daphnia, other cladoceran, copepod and polychaete species such analysis required
464
only short term acute and sublethal assays 66-68,
465
focus in extending the proposed operational phenomenological mode of action
466
procedure to other taxa and toxicant groups.
467 468
ASSOCIATED CONTENT
469
Supporting Information
70-72
. Thus future research needs should
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470
Details of experimental procedures and further explanation of results for chemical
471
analyses, individual and joint responses. This information is available free of charge via
472
the Internet at http://pubs.acs.org.
473
AUTHOR INFORMATION
474
Corresponding Author
475
Phone: +34-93-4006100; fax: +34-93-2045904; e-mail:
[email protected] 476
ACKNOWLEDGMENTS
477
This work was supported by the Spanish MICINN grants (CGL2008-01898/BOS and
478
CTM2011-30471-C02-01) and FEDER funds. We thank the constructive suggestions of
479
three anonymous referees.
480
REFERENCES
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44. Barata, C.; Solayan, A.; Porte, C., Role of B - esterases in assessing toxicity of organophosphorous (chlorpyrifos, malathion) and carbamate (carbofuran) pesticides to Daphnia magna. Aquat. Toxicol. 2004, 66, 125-139. 45. Stohs, S. J.; Bagghi, D., Oxidative mechanisms in the toxicity of metal ions. Free Rad. Biol. Med. 1995, 18, 321-336. 46. Pyle, G. G.; Kamunde, C. N.; Mc Donald, D. G.; Wood, C. M., Dietary sodium inhibits aqueous copper uptake in rainbow trout (Oncorhynchus mykiss). J. Exp. Biol. 2003, 206, 609-618. 47. Barata, C.; Varo, I.; Navarro, J. C.; Arun, S.; Porte, C., Antioxidant enzyme activities and lipid peroxidation in the freshwater cladoceran Daphnia magna exposed to redox cycling compounds. Comp. Biochem. Physiol. Part C. 2005, 140, 175-186. 48. Santos, T. C. R.; Rocha, J. C.; Alonso, R. M.; Martínez, E.; Ibañez, C.; Barceló, D., Rapid degradation of propanil in rice crop fields. Environ. Sci. Technol. 1998, 32, (22), 3479-3484. 49. Neuwoehner, J.; Zilberman, T.; Fenner, K.; Escher, B. I., QSAR-analysis and mixture toxicity as diagnostic tools: Influence of degradation on the toxicity and mode of action of diuron in algae and daphnids. Aquat. Toxicol. 2010, 97, (1), 58-67. 50. Dhadialla, T. S.; Carlson, G. R.; Le, D. P., New insecticides with ecdysteroidal and juvenile hormone activity. In 1998; Vol. 43, pp 545-569. 51. Sibly, R. M.; Hansen, F. T.; Forbes, V. E., Confidence intervals for population growth rate of organisms with two-stage life histories. Oikos 2000, 88, 335-340. 52. Robinson, K. A.; Baird, D. J.; Wrona, F. J., Surface metal adsorption on zooplankton carapaces: Implications for exposure and effects in consumer organisms. Environ. Pollu. 2003, 122, (2), 159-167. 53. ASTM, Standard methods for measuring the toxicity of sediment-associated contaminants with freshwater invertebrates. E 1706 -95b. In Annual book of ASTM standards, ASTM: Philadelphia, 1999; Vol. 11.05, pp 65-68. 54. Cedergreen, N.; Kudsk, P.; Mathiassen, S. K.; Sørensen, H.; Streibig, J. C., Reproducibility of binary-mixture toxicity studies. Environ. Toxicol. Chem. 2007, 26, (1), 149-156. 55. Altenburger, R.; Nendza, M.; Schüürmann, G., Mixture toxicity and its modeling by quantitative structure-activity relationships. Environ. Toxicol. Chem. 2003, 22, (8), 1900-1915. 56. Meyer, J. S.; Ingersoll, C. G.; McDonald, L. L.; Boyce, M. S., Estimating uncertainty in population growth rates: jackknife vs. bootstrap techniques. Ecology 1986, 67, 1156-1166. 57. Zar, J. H., Bioestatistical Analysis. Third edition ed.; Bioestatistical Analysis, Prentice-Hall International, Inc: New Jersey, 1996; p 662. 58. Cedergreen, N.; Abbaspoor, M.; Sørensen, H.; Streibig, J. C., Is mixture toxicity measured on a biomarker indicative of what happens on a population level? A study with Lemna minor. Ecotox. Environ. Safe. 2007, 67, (3), 323-332. 59. Chen, X. D.; Stark, J. D., Individual-and population-level toxicity of the insecticide, spirotetramat and the agricultural adjuvant, Destiny to the Cladoceran, Ceriodaphnia dubia. Ecotoxicology 2010, 19, (6), 1124-1129. 60. Enserink, E. L.; Maas-Diepeveen, J. L.; Van Leeuwen, C. J., Combined effects of metals; An ecotoxicological evaluation. Water Res. 1991, 25, (6), 679-687. 61. Bjergager, M. B. A.; Hanson, M. L.; Lissemore, L.; Henriquez, N.; Solomon, K. R.; Cedergreen, N., Synergy in microcosms with environmentally realistic concentrations of prochloraz and esfenvalerate. Aquat. Toxicol. 2011, 101, (2), 412-422.
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Table 1. Allosteric decay regression models fitted to the single and ternary mixtures. All regressions were significant at P