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Improved prediction of sediment toxicity using a combination of sediment and overlying water contaminant exposures

机译:利用沉积物和覆盖水污染曝光的组合改善了沉积物毒性预测

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摘要

The choice of sediment quality assessment methodologies can strongly influence assessment outcomes and management decisions for contaminated sites. While in situ (field) methods may potentially provide greater realism, high costs and/or complex logistics often prevent their use and assessment must rely on laboratory-based methods. In this study, we utilised static-renewal and flow-through ecotoxicology tests in parallel on sediments with a wide range of properties and varying types and concentrations of contaminants. The prediction of chronic effects to amphipod reproduction was explored using multiple linear regression (MLR). The study confirmed the considerable over-estimation of the risk of toxicity of contaminated sediments in field locations when assessments rely on the results of laboratory-based static and static-renewal tests. Improved prediction of toxicity risks was achieved using a combination of contaminant exposure measures from sediment and overlying water. Existing sediment and water quality guideline values (GVs) were effective for predicting risks posed by sediments containing mixtures of common metal and organic contaminants. For 17 sediments with paired data sets from static-renewal and flow-through tests, the best prediction of toxicity to reproduction was achieved using a 2-parameter MLR that included hazard quotients for sediment contaminants and toxic units for dissolved metals (r(2) = 0.892). The inclusion of particle size, organic carbon and acid-volatile sulfide did not improve toxicity predictions, despite these parameters being recognised as modifying contaminant bioavailability. The use of dilute-acid-extractable metal concentrations in place total recoverable metal concentrations did not improve the predictions. The study also confirmed that sediments existing within the estuarine and marine bays of Sydney Harbour pose significant risks of adverse effects to benthic organisms. (C) 2020 Elsevier Ltd. All rights reserved.
机译:沉积物质量评估方法的选择能够强烈影响污染地点的评估结果和管理决策。虽然原位(现场)方法可能会提供更大的现实主义,但高成本和/或复杂的物流经常防止他们的使用和评估必须依赖基于实验室的方法。在本研究中,我们利用静态更新和流通通过生态毒理学测试,并在沉积物上并行试验,具有各种性质和不同类型和污染物浓度。利用多元线性回归(MLR)探索了对AMphipod繁殖的慢性效应的预测。该研究证实,当评估依赖于基于实验室的静态和静态重新试验的结果时,对现场位置污染沉积物毒性毒性风险的显着过度估计。利用来自沉积物和覆盖水的污染物暴露措施的组合,实现了改善的毒性风险预测。现有的沉积物和水质指南值(GVS)可有效预测沉积物含有常见金属和有机污染物的混合物所带来的风险。对于来自静态更新和流通测试的配对数据集的17个沉积物,使用包含2参数MLR实现对繁殖的毒性的最佳预测,其中包括沉积物污染物的危险版本和溶解金属的有毒单元(R(2) = 0.892)。虽然这些参数被认为是改性污染物生物利用度,但颗粒尺寸,有机碳和酸挥发性硫化硫化硫化硫化硫化物并未改善毒性预测。使用稀酸可提取的金属浓度在适当的总可回收金属浓度下没有改善预测。该研究还证实,悉尼港口河口和海湾海湾的沉积物对底栖生物产生了严重的不良反应风险。 (c)2020 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Environmental Pollution》 |2020年第1期|115187.1-115187.9|共9页
  • 作者单位

    CSIRO Land & Water Ctr Environm Contaminants Res Lucas Heights NSW 2234 Australia|Nankai Univ Coll Environm Sci & Engn Minist Educ Key Lab Pollut Proc & Environm Criter Tianjin Key Lab Remediat & Pollut Control Urban E Tianjin 300350 Peoples R China;

    CSIRO Land & Water Ctr Environm Contaminants Res Lucas Heights NSW 2234 Australia;

    CSIRO Land & Water Ctr Environm Contaminants Res Lucas Heights NSW 2234 Australia;

    CSIRO Land & Water Ctr Environm Contaminants Res Lucas Heights NSW 2234 Australia|Hong Kong Univ Sci & Technol Hong Kong Branch Southern Marine Sci & Engn Guangdong Lab Guangzho Clear Water Bay Hong Kong Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Risk assessment; Sediment quality; Chronic toxicity prediction; Benthic invertebrates; Multiple linear regression; Field-based assessments;

    机译:风险评估;沉积物质量;慢性毒性预测;底栖无脊椎动物;多元线性回归;基于现场的评估;

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