Towards a multi-bioassay-based index for toxicity assessment of fluvial waters

被引:0
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作者
Lalit K. Pandey
Isabelle Lavoie
Soizic Morin
Stephen Depuydt
Jie Lyu
Hojun Lee
Jinho Jung
Dong-Hyuk Yeom
Taejun Han
Jihae Park
机构
[1] Institute of Green Environmental Research Center,Department of Plant Science, Faculty of Applied Sciences
[2] MJP Rohilkhand University,Lab of Plant Growth Analysis
[3] Institut national de la recherche scientifique,Department of Life Sciences
[4] centre Eau Terre Environnement,Department of Marine Sciences
[5] Irstea,Division of Environmental Science & Ecological Engineering
[6] UR EABX,Ecotoxicology Team
[7] Ghent University Global Campus,undefined
[8] Jilin Normal University,undefined
[9] Incheon National University,undefined
[10] Korea University,undefined
[11] Korea Institute of Toxicology,undefined
[12] Ghent University Global Campus,undefined
来源
关键词
Aquatic plants; Bioassay; Biological indicators; Microorganisms; Multi-descriptor index; Multiple endpoints; Receiving water;
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学科分类号
摘要
Despite their proven reliability for revealing ‘acceptable’ degrees of toxicity in waste- and reclaimed waters, bioassays are rarely used to assess the toxicity of hazardous contaminants present in natural waters. In this study, we used organisms from different trophic levels to assess the toxicity of water samples collected from four different South Korean rivers. The main objective was to develop a multi-descriptor index of toxicity for undiluted river water. The responses of six test organisms (Aliivibrio fischeri, Pseudokirchneriella subcapitata, Heterocypris incongruens, Moina macrocopa, Danio rerio and Lemna minor) after laboratory exposure to water samples were considered for this index, as well as the frequency of teratologies in diatom assemblages. Each individual test was attributed a toxicity class and score (three levels; no toxicity = 0, low toxicity = 1, confirmed toxicity = 2) based on the organism’s response after exposure and a total score was calculated. The proposed index also considers the number of test organisms that received the highest toxicity score (value = 2). An overall toxicity category was then attributed to the water sample based on those two metrics: A = no toxicity, B = slight toxicity, C = moderate toxicity; D = toxicity and E = high toxicity. The susceptibility of the test organisms varied greatly and the sensitivity of their response also differed among bioassays. The combined responses of organisms from different trophic levels and with different life strategies provided multi-level diagnostic information about the intensity and the nature of contamination.
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