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Global structure–activity relationship model for nonmutagenic carcinogens using virtual ligand-protein interactions as model descriptors

机译:使用虚拟配体-蛋白质相互作用作为模型描述符的非诱变致癌物的全局构效关系模型

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Structure–activity relationship (SAR) models are powerful tools to investigate the mechanisms of action of chemical carcinogens and to predict the potential carcinogenicity of untested compounds. We describe the use of a traditional fragment-based SAR approach along with a new virtual ligand-protein interaction-based approach for modeling of nonmutagenic carcinogens. The ligand-based SAR models used descriptors derived from computationally calculated ligand-binding affinities for learning set agents to 5495 proteins. Two learning sets were developed. One set was from the Carcinogenic Potency Database, where chemicals tested for rat carcinogenesis along with Salmonella mutagenicity data were provided. The second was from Malacarne et al. who developed a learning set of nonalerting compounds based on rodent cancer bioassay data and Ashby’s structural alerts. When the rat cancer models were categorized based on mutagenicity, the traditional fragment model outperformed the ligand-based model. However, when the learning sets were composed solely of nonmutagenic or nonalerting carcinogens and noncarcinogens, the fragment model demonstrated a concordance of near 50%, whereas the ligand-based models demonstrated a concordance of 71% for nonmutagenic carcinogens and 74% for nonalerting carcinogens. Overall, these findings suggest that expert system analysis of virtual chemical protein interactions may be useful for developing predictive SAR models for nonmutagenic carcinogens. Moreover, a more practical approach for developing SAR models for carcinogenesis may include fragment-based models for chemicals testing positive for mutagenicity and ligand-based models for chemicals devoid of DNA reactivity.
机译:结构-活性关系(SAR)模型是研究化学致癌物作用机理和预测未经测试化合物潜在致癌性的强大工具。我们描述了使用传统的基于片段的SAR方法以及新的基于虚拟配体-蛋白质相互作用的方法对非诱变致癌物进行建模。基于配体的SAR模型使用的描述符来自计算得出的配体结合亲和力,用于学习5495蛋白的定位试剂。开发了两个学习集。一组来自致癌潜能数据库,其中提供了测试大鼠致癌作用的化学物质以及沙门氏菌的致突变性数据。第二个是从马拉卡拉恩等人。他根据啮齿动物的癌症生物测定数据和阿什比的结构警报开发了一套学习用的非变质化合物。当根据致突变性对大鼠癌症模型进行分类时,传统的片段模型优于基于配体的模型。但是,当学习集仅由非诱变或不变的致癌物和非致癌物组成时,片段模型显示出将近50%的一致性,而基于配体的模型则显示出非致癌性致癌剂的一致性为71%,非致癌性致癌剂的一致性为74%。总体而言,这些发现表明,虚拟化学蛋白质相互作用的专家系统分析对于开发非诱变致癌物的预测SAR模型可能有用。此外,开发用于致癌的SAR模型的更实用的方法可能包括基于片段的化学诱变测试模型和基于配体的缺乏DNA反应性模型的化学模型。

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