利用局部对称碎片的相关权重对硝基芳香化合物的致突变性进行计算机预测。

IF 2.3 4区 医学 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Mutation research. Genetic toxicology and environmental mutagenesis Pub Date : 2023-10-01 DOI:10.1016/j.mrgentox.2023.503684
Andrey A. Toropov, Alla P. Toropova, Alessandra Roncaglioni, Emilio Benfenati
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引用次数: 0

摘要

大多数定量结构-性质/活性关系(QSPRs/QSAR)技术涉及分别使用不同的程序来生成分子描述符,并分别基于可用的描述符来构建模型。在这里,对CORAL程序的能力进行了评估。该程序的用户应通过简化分子输入线输入系统(SMILES)以及感兴趣终点的实验数据来应用分子结构的表示作为建模的基础。SMILES的局部对称性是对称表示符号的一种新颖组合,这些符号是三个“xyx”、四个“xyyx”或五个符号“xyzyx”。我们使用这种优化的、新的灵活描述符更新了CORAL软件,该描述符对分子特定部分的对称组成敏感。计算实验表明,考虑SMILES的这些属性可以提高硝基芳香族化合物致突变性模型的预测潜力。此外,上述计算实验已经证实了使用相关性理想度指数(IIC)和相关性强度指数(CII)对SMILES的各种属性(包括局部对称性)的相关性权重进行蒙特卡罗优化的优点。没有局部对称碎片的验证集(五个不同的模型)的确定系数的平均值为0.8589±0.025,而使用局部对称碎片将预测潜力的标准提高到0.9055±0.010。
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In silico prediction of the mutagenicity of nitroaromatic compounds using correlation weights of fragments of local symmetry

Most quantitative structure-property/activity relationships (QSPRs/QSARs) techniques involve using different programs separately for generating molecular descriptors and separately for building models based on available descriptors. Here, the capabilities of the CORAL program are evaluated. A user of the program should apply as the basis for models the representation of the molecular structure by means of the simplified molecular input-line entry system (SMILES) as well as experimental data on the endpoint of interest. The local symmetry of SMILES is a novel composition of symmetrically represented symbols, which are three ‘xyx’, four ‘xyyx’, or five symbols ‘xyzyx’. We updated our CORAL software using this optimal, new flexible descriptor, sensitive to the symmetric composition of a specific part of the molecule. Computational experiments have shown that taking account of these attributes of SMILES can improve the predictive potential of models for the mutagenicity of nitroaromatic compounds. In addition, the above computational experiments have confirmed the advantage of using the index of ideality of correlation (IIC) and the correlation intensity index (CII) for Monte Carlo optimization of the correlation weights for various attributes of SMILES, including the local symmetry. The average value of the coefficient of determination for the validation set (five different models) without fragments of local symmetry is 0.8589 ± 0.025, whereas using fragments of local symmetry improves this criterion of the predictive potential up to 0.9055 ± 0.010.

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来源期刊
CiteScore
3.80
自引率
5.30%
发文量
84
审稿时长
105 days
期刊介绍: Mutation Research - Genetic Toxicology and Environmental Mutagenesis (MRGTEM) publishes papers advancing knowledge in the field of genetic toxicology. Papers are welcomed in the following areas: New developments in genotoxicity testing of chemical agents (e.g. improvements in methodology of assay systems and interpretation of results). Alternatives to and refinement of the use of animals in genotoxicity testing. Nano-genotoxicology, the study of genotoxicity hazards and risks related to novel man-made nanomaterials. Studies of epigenetic changes in relation to genotoxic effects. The use of structure-activity relationships in predicting genotoxic effects. The isolation and chemical characterization of novel environmental mutagens. The measurement of genotoxic effects in human populations, when accompanied by quantitative measurements of environmental or occupational exposures. The application of novel technologies for assessing the hazard and risks associated with genotoxic substances (e.g. OMICS or other high-throughput approaches to genotoxicity testing). MRGTEM is now accepting submissions for a new section of the journal: Current Topics in Genotoxicity Testing, that will be dedicated to the discussion of current issues relating to design, interpretation and strategic use of genotoxicity tests. This section is envisaged to include discussions relating to the development of new international testing guidelines, but also to wider topics in the field. The evaluation of contrasting or opposing viewpoints is welcomed as long as the presentation is in accordance with the journal''s aims, scope, and policies.
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