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首页> 外文期刊>Toxicological sciences: An official journal of the Society of Toxicology >New Quantitative Structure-Activity Relationship Models Improve Predictability of Ames Mutagenicity for Aromatic Azo Compounds
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New Quantitative Structure-Activity Relationship Models Improve Predictability of Ames Mutagenicity for Aromatic Azo Compounds

机译:新的定量构效关系模型提高了芳香偶氮化合物的Ames致突变性的可预测性

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摘要

Existing Quantitative Structure-Activity Relationship (QSAR) models have limited predictive capabilities for aromatic azo compounds. In this study, 2 new models were built to predict Ames mutagenicity of this class of compounds. The first one made use of descriptors based on simplified molecular input-line entry system (SMILES), calculated with the CORAL software. The second model was based on the k-nearest neighbors algorithm. The statistical quality of the predictions from single models was satisfactory. The performance further improved when the predictions from these models were combined. The prediction results from other QSAR models for mutagenicity were also evaluated. Most of the existing models were found to be good at finding toxic compounds but resulted in many false positive predictions. The 2 new models specific for this class of compounds avoid this problem thanks to a larger set of related compounds as training set and improved algorithms.
机译:现有的定量结构-活性关系(QSAR)模型对芳族偶氮化合物的预测能力有限。在这项研究中,建立了2个新模型来预测此类化合物的Ames致突变性。第一个使用了基于简化分子输入线输入系统(SMILES)的描述符,该描述符是使用CORAL软件计算的。第二个模型基于k最近邻算法。单个模型的预测的统计质量令人满意。当这些模型的预测相结合时,性能进一步提高。还评估了其他QSAR模型的致突变性预测结果。发现大多数现有模型都善于发现有毒化合物,但导致许多假阳性预测。归因于此类化合物的2种新模型避免了此问题,这是由于有大量相关化合物作为训练集和改进的算法,因此避免了这一问题。

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