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首页> 外文期刊>Bulletin of the Korean Chemical Society >Bayesian Model for the Classification of GPCR Agonists and Antagonists
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Bayesian Model for the Classification of GPCR Agonists and Antagonists

机译:贝叶斯模型的GPCR激动剂和拮抗剂的分类

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G-protein coupled receptors (GPCRs) are involved in a wide variety of physiological processes and are known to be targets for nearly 50% of drugs. The various functions of GPCRs are affected by their cognate ligands which are mainly classified as agonists and antagonists. The purpose of this study is to develop a Bayesian classification model, that can predict a compound as either human GPCR agonist or antagonist. Total 6627 compounds experimentally determined as either GPCR agonists or antagonists covering all the classes of GPCRs were gathered to comprise the dataset. This model distinguishes GPCR agonists from GPCR antagonists by using chemical fingerprint, FCFP_6. The model revealed distinctive structural characteristics between agonistic and antagonistic compounds: in general, 1) GPCR agonists were flexible and had aliphatic amines, and 2) GPCR antagonists had planar groups and aromatic amines. This model showed very good discriminative ability in general, with pretty good discriminant statistics for the training set (accuracy: 90.1%) and a good predictive ability for the test set (accuracy: 89.2%). Also, receiver operating characteristic (ROC) plot showed the area under the curve (AUC) to be 0.957, and Matthew’s Correlation Coefficient (MCC) value was 0.803. The quality of our model suggests that it could aid to classify the compounds as either GPCR agonists or antagonists, especially in the early stages of the drug discovery process.
机译:G蛋白偶联受体(GPCR)参与多种生理过程,已知是近50%药物的靶标。 GPCR的各种功能受其同源配体影响,它们主要分为激动剂和拮抗剂。这项研究的目的是开发一种贝叶斯分类模型,该模型可以预测化合物是人GPCR激动剂还是拮抗剂。收集了通过实验确定为涵盖所有GPCR类的GPCR激动剂或拮抗剂的6627种化合物,以构成数据集。该模型通过使用化学指纹FCFP_6将GPCR激动剂与GPCR拮抗剂区分开来。该模型显示了激动剂和拮抗化合物之间的独特结构特征:通常,1)GPCR激动剂具有柔性并具有脂肪胺,2)GPCR拮抗剂具有平面基团和芳香胺。该模型通常显示出很好的判别能力,对训练集具有很好的判别统计(准确度:90.1%),对测试集具有良好的预测能力(准确度:89.2%)。此外,接收器工作特性(ROC)图显示曲线下面积(AUC)为0.957,而Matthew的相关系数(MCC)值为0.803。我们模型的质量表明,它可以帮助将化合物分类为GPCR激动剂或拮抗剂,尤其是在药物发现过程的早期阶段。

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