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An improved large-scale prediction model of CYP1A2 inhibitors by using combined fragment descriptors

机译:联合片段描述符的改进CYP1A2抑制剂大规模预测模型

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CYP1A2, an important member of the cytochromes P450 ( CYPs) superfamily, is involved in the metabolism or bioactivation of many clinical drugs and precarcinogens. Thus, accurate prediction of CYP1A2 inhibitors is of great importance in early drug discovery and cancer prevention. In this study, a dataset of more than 12 000 structurally diverse compounds was used to develop prediction models by a support vector machine (SVM). By combining two types of fragment descriptors, i.e. Molecular Hologram and MACCS descriptors, an improved radial basis function (RBF)-based SVM model was obtained, of which the accuracies (ACCs), sensitivities (SENs), specificities (SPEs), and Matthews correlation coefficients (MCCs) were 90.95%, 92.40%, 89.70%, 0.8191 for 6396 training samples, and 83.14%, 85.17%, 81.41%, 0.6638 for 6395 test samples, respectively. The prediction capability of the SVM model obtained was further validated by an independent dataset of 2581 samples with geometric mean (G-mean) based accuracy of 70.67%. The results indicate that the combination of the two types of fragment descriptors is an extremely efficient method for eliciting the key structural features of CYP inhibitors, and thus can be employed to large-scale virtual screening of inhibitors of CYP isoforms.
机译:CYP1A2是细胞色素P450(CYPs)超家族的重要成员,它参与许多临床药物和前致癌物的代谢或生物激活。因此,CYP1A2抑制剂的准确预测在早期药物发现和癌症预防中非常重要。在这项研究中,通过支持向量机(SVM)使用了12 000多种结构多样的化合物的数据集来开发预测模型。通过结合分子全息图和MACCS描述符这两种类型的片段描述符,获得了改进的基于径向基函数(RBF)的SVM模型,其中精度(ACC),灵敏度(SEN),特异性(SPE)和Matthews 6396个训练样本的相关系数(MCCs)分别为90.95%,92.40%,89.70%,0.8191和6395个样本的相关系数分别为83.14%,85.17%,81.41%,0.6638。通过2581个样本的独立数据集进一步验证了所获得的SVM模型的预测能力,基于几何平均数(G-mean)的准确性为70.67%。结果表明,两种类型的片段描述符的组合是一种非常有效的方法,用于发现CYP抑制剂的关键结构特征,因此可用于大规模虚拟筛选CYP亚型的抑制剂。

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