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Generating accurate in silico predictions of acute aquatic toxicity for a range of organic chemicals: Towards similarity-based machine learning methods

机译:在一系列有机化学品中产生急性水生毒性的硅预测中的准确:朝向基于相似的机器学习方法

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摘要

There has been an increase in the use of non-animal approaches, such as in silico and/or in vitro methods, for assessing the risks of hazardous chemicals. A number of machine learning algorithms link molecular descriptors that interpret chemical structural properties with their biological activity. These computer-aided methods encounter several challenges, the most significant being the heterogeneity of datasets; more efficient and inclusive computational methods that are able to process large and heterogeneous chemical datasets are needed. In this context, this study verifies the utility of similarity-based machine learning methods in predicting the acute aquatic toxicity of diverse organic chemicals on Daphnia magna and Oryzias latipes. Two similarity-based methods were tested that employ a limited training dataset, most similar to a given fitting point, instead of using the entire dataset that encompasses a wide range of chemicals. The kernel-weighted local polynomial approach had a number of advantages over the distance-weighted k-nearest neighbor (k-NN) algorithm. The results highlight the importance of lipophilicity, electrophilic reactivity, molecular polarizability, and size in determining acute toxicity. The rigorous model validation ensures that this approach is an important tool for estimating toxicity in new or untested chemicals.
机译:使用非动物方法有所增加,例如硅和/或体外方法,用于评估危险化学品的风险。许多机器学习算法链接分子描述符,将化学结构特性与其生物活性解释。这些计算机辅助方法遇到了几个挑战,最重要的是数据集的异质性;需要更有效和包含化学数据集的更高效和包含的计算方法。在这种情况下,该研究验证了基于相似性的机器学习方法的效用预测Daphnia Magna和Oryzias LaTipes的不同有机化学品的急性水生毒性。测试了两个相似性的方法,该方法采用有限的训练数据集,最类似于给定的拟合点,而不是使用包含各种化学品的整个数据集。内核加权本地多项式方法具有与距离加权k最近邻(K-NN)算法的许多优点。结果突出了亲脂性,电泳反应性,分子极化性和规模在确定急性毒性方面的重要性。严谨的模型验证确保这种方法是估算新的或未经测试的化学品中毒性的重要工具。

著录项

  • 来源
    《Chemosphere》 |2021年第1期|130681.1-130681.15|共15页
  • 作者单位

    Univ Gdansk Fac Chem Lab Environm Chemometr Wita Stwosza 63 PL-80308 Gdansk Poland;

    Natl Inst Environm Studies NIES Ctr Hlth & Environm Risk Res 16-2 Onogawa Tsukuba Ibaraki 3058506 Japan|Natl Inst Hlth Sci NIHS Div Genet & Mutagenesis Kawasaki Ku 3-25-26 Tonomachi Kawasaki Kanagawa 2109501 Japan;

    Natl Inst Environm Studies NIES Ctr Hlth & Environm Risk Res 16-2 Onogawa Tsukuba Ibaraki 3058506 Japan;

    Natl Inst Environm Studies NIES Ctr Hlth & Environm Risk Res 16-2 Onogawa Tsukuba Ibaraki 3058506 Japan;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);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 risk assessment; Ecotoxicity; Organic toxicants; Similarity-based methods; In silico methods;

    机译:化学风险评估;生态毒性;有机毒物;基于相似性的方法;在Silico方法中;
  • 入库时间 2022-08-19 02:48:05

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