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Prediction of aquatic toxicity of chemical mixtures by the QSAR approach using 2D structural descriptors

机译:使用2D结构描述仪通过QSAR方法预测化学混合物的水生毒性

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摘要

The rapid industrialization has led to the generation of various organic chemicals and multi-component mixtures which affect the environment adversely. Although organic chemicals are often exposed to the environment as a form of chemical mixtures rather than individual compounds, there is insufficient toxicity data available for the chemical mixtures due to the associated complexities. Most importantly, the nature of toxicity of mixtures is completely different from the individual chemicals, which makes the evaluation more difficult and challenging. In this paper, we have developed QSAR models for various individual and mixture data sets for the prediction of the aquatic toxicity. We have used Partial Least Squares (PLS) regression as a statistical tool to build the models. The various structural features of the individual chemicals and the mixture components have been modeled against the toxicity end point pEC(50) (negative logarithm of median effective concentration in molar scale) of the aquatic organisms Photobacterium phosphoreum (marine bacterium) and Selenastrum capricornutum (freshwater algae). The mixture descriptors have been calculated by the weighted descriptor generation approach. The models were developed in accordance with OECD guidelines, and the quality of each model has been adjudged by strict validation parameters. The final models are robust, extremely predictive and interpretable mechanistically which can be used for the prediction of toxicity of untested chemical mixtures under the domain of applicability of the developed models.
机译:快速工业化导致各种有机化学品和多组分混合物产生不利影响环境的影响。虽然有机化学品通常暴露于环境中,作为化学混合物的形式而不是单独的化合物,但由于相关的复杂性,该化学混合物的毒性数据不足。最重要的是,混合物毒性的性质与个体化学品完全不同,这使得评估更加困难和具有挑战性。在本文中,我们开发了用于预测水生毒性的各种个人和混合数据集的QSAR模型。我们使用了部分最小二乘(PLS)回归作为构建模型的统计工具。各种化学物质和混合物组分的各种结构特征符合水生生物磷病(海洋细菌)和Selenastrum Cocricornutum的毒性终点PEC(50)(摩尔量级中位数有效浓度的阴性对数)(淡水(淡水)(淡水藻类)。通过加权描述符生成方法计算混合描述符。该模型是根据经合组织的指南开发的,并且通过严格的验证参数判决每个模型的质量。最终模型是稳健的,极其预测和可解释的机械性地,可用于预测开发模型的适用范畴内未经测试的化学混合物的毒性。

著录项

  • 来源
    《Journal of Hazardous Materials》 |2021年第15期|124936.1-124936.13|共13页
  • 作者

    Chatterjee Mainak; Roy Kunal;

  • 作者单位

    Jadavpur Univ Dept Pharmaceut Technol Drug Theoret & Cheminformat Lab Kolkata 700032 India;

    Jadavpur Univ Dept Pharmaceut Technol Drug Theoret & Cheminformat Lab Kolkata 700032 India;

  • 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

    Chemical mixtures; Aquatic toxicity; QSAR models; Partial least squares (PLS);

    机译:化学混合物;水生毒性;QSAR模型;部分最小二乘(PL);
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