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首页> 外文期刊>Journal of chemical information and modeling >Development of novel 3D-QSAR combination approach for screening and optimizing B-Raf inhibitors in silico
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Development of novel 3D-QSAR combination approach for screening and optimizing B-Raf inhibitors in silico

机译:开发用于筛选和优化计算机中B-Raf抑制剂的新型3D-QSAR组合方法

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B-Raf is a member of the RAF family of serine/threonine kinases: it mediates cell division, differentiation, and apoptosis signals through the RAS-RAF-MAPK pathway. Thus, B-Raf is of keen interest in cancer therapy, such as melanoma. In this study, we propose the first combination approach to integrate the pharmacophore (PhModel), CoMFA, and CoMSIA models for B-Raf, and this approach could be used for screening and optimizing potential B-Raf inhibitors in silico. Ten PhModels were generated based on the HypoGen BEST algorithm with the flexible fit method and diverse inhibitor structures. Each PhModel was designated to the alignment rule and screening interface for CoMFA and CoMSIA models. Therefore, CoMFA and CoMSIA models could align and recognize diverse inhibitor structures. We used two quality validation methods to test the predication accuracy of these combination models. In the previously proposed combination approaches, they have a common factor in that the number of training set inhibitors is greater than that of testing set inhibitors. In our study, the 189 known diverse series B-Raf inhibitors, which are 7-fold the number of training set inhibitors, were used as a testing set in the partial least-squares validation. The best validation results were made by the CoMFA09 and CoMSIA09 models based on the Hypo09 alignment model. The predictive r~2_(pred) values of 0.56 and 0.56 were derived from the CoMFA09 and CoMSIA09 models, respectively. The CoMFA09 and CoMSIA09 models also had a satisfied predication accuracy of 77.78% and 80%, and the goodness of hit test score of 0.675 and 0.699, respectively. These results indicate that our combination approach could effectively identify diverse B-Raf inhibitors and predict the activity.
机译:B-Raf是RAF丝氨酸/苏氨酸激酶家族的成员:它通过RAS-RAF-MAPK途径介导细胞分裂,分化和凋亡信号。因此,B-Raf在诸如黑色素瘤的癌症治疗中引起了浓厚的兴趣。在这项研究中,我们提出了第一种结合方法,用于整合B-Raf的药效基团(PhModel),CoMFA和CoMSIA模型,该方法可用于筛选和优化计算机中潜在的B-Raf抑制剂。基于HypoGen BEST算法,灵活拟合方法和多种抑制剂结构,生成了十个PhModel。将每个PhModel指定给CoMFA和CoMSIA模型的比对规则和筛选界面。因此,CoMFA和CoMSIA模型可以对齐并识别各种抑制剂结构。我们使用两种质量验证方法来测试这些组合模型的预测准确性。在先前提出的组合方法中,它们具有一个共同的因素,即训练集抑制剂的数量大于测试集抑制剂的数量。在我们的研究中,将189种已知的系列B-Raf抑制剂(其训练集抑制剂的数量增加了7倍)用作部分最小二乘验证中的测试集。最好的验证结果是由基于Hypo09对准模型的CoMFA09和CoMSIA09模型得出的。预测的r〜2_(pred)值为0.56和0.56,分别来自CoMFA09和CoMSIA09模型。 CoMFA09和CoMSIA09模型的预测准确度也令人满意,分别为77.78%和80%,并且命中测试得分的良好性分别为0.675和0.699。这些结果表明我们的联合方法可以有效地识别各种B-Raf抑制剂并预测其活性。

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