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In Silico Guidance for In Vitro Androgen and Glucocorticoid Receptor ToxCast Assays

机译:在体外雄激素和糖皮质激素受体Toxcast测定的基石指导下

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摘要

Molecular initiating events (MIEs) are key events in adverse outcome pathways that link molecular chemistry to target biology. As they are based on chemistry, these interactions are excellent targets for computational chemistry approaches to in silico modeling. In this work, we aim to link ligand chemical structures to MIEs for androgen receptor (AR) and glucocorticoid receptor (GR) binding using ToxCast data. This has been done using an automated computational algorithm to perform maximal common substructure searches on chemical binders for each target from the ToxCast dataset. The models developed show a high level of accuracy, correctly assigning 87.20% of AR binders and 96.81% of GR binders in a 25% test set using holdout cross-validation. The 2D structural alerts developed can be used as in silico models to predict these MIEs and as guidance for in vitro ToxCast assays to confirm hits. These models can target such experimental work, reducing the number of assays to be performed to gain required toxicological insight. Development of these models has also allowed some structural alerts to be identified as predictors for agonist or antagonist behavior at the receptor target. This work represents a first step in using computational methods to guide and target experimental approaches.
机译:分子启动事件(MIES)是与靶向生物学链接分子化学的不利结果途径的关键事件。由于它们是基于化学的,这些相互作用是在硅建模中计算化学方法的优异目标。在这项工作中,我们的目的是使用毒品数据将配体化学结构与MIES联系起来对雄激素受体(AR)和糖皮质激素受体(GR)结合的MIES。这已经使用自动计算算法完成了从Toxcast DataSet对每个目标的化学粘合剂进行最大常见的子结构搜索。该模型开发出高度的精度,正确分配87.20%的Ar粘合剂和96.81%的族菌粘合剂,在25%的测试集中使用Holdout交叉验证设置。开发的2D结构警报可以用作Silico模型中的,以预测这些MIES并作为体外Toxcast测定的指导以确认命中。这些模型可以靶向这样的实验工作,减少要进行的测定数以获得所需的毒理学洞察力。这些模型的发展还允许将一些结构警报鉴定为受体目标中的激动剂或拮抗性行为的预测因子。这项工作代表了使用计算方法指导和目标实验方法的第一步。

著录项

  • 来源
    《Environmental Science & Technology》 |2020年第12期|7461-7470|共10页
  • 作者单位

    Centre for Molecular Informatics Department of Chemistry and MRC Toxicology Unit University of Cambridge Cambridge CB2 1EW U.K.;

    Oak Ridge Institute for Science and Education Oak Ridge Tennessee 37830 United States Integrated Systems Toxicology Division National Health and Environmental Effects Research Laboratory Office of Research and Development U.S. Environmental Protection Agency Research Triangle Park Durham North Carolina 27709 United States;

    Integrated Systems Toxicology Division National Health and Environmental Effects Research Laboratory Office of Research and Development U.S. Environmental Protection Agency Research Triangle Park Durham North Carolina 27709 United States;

    Centre for Molecular Informatics Department of Chemistry University of Cambridge Cambridge CB2 1EW U.K.;

    Unilever Safety and Environmental Assurance Centre Sharnbrook Bedfordshire MK44 1LQ U.K.;

    Unilever Safety and Environmental Assurance Centre Sharnbrook Bedfordshire MK44 1LQ U.K.;

  • 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
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