首页> 外文期刊>Organic and Medicinal Chemistry Letters >In silico identification of novel lead compounds with AT1 receptor antagonist activity: successful application of chemical database screening protocol
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In silico identification of novel lead compounds with AT1 receptor antagonist activity: successful application of chemical database screening protocol

机译:在计算机上鉴定具有AT1受体拮抗剂活性的新型先导化合物:化学数据库筛选方案的成功应用

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BackgroundAT1 receptor antagonists are clinically effective drugs for the treatment of hypertension, cardiovascular, and related disorders. In an attempt to identify new AT1 receptor antagonists, a pharmacophore-based virtual screening protocol was applied. The pharmacophore models were generated from 30 training set compounds. The best model was chosen on the basis of squared correlation coefficient of training set and internal test set. The validity of the developed model was also ensured using catScramble validation method and external test set prediction.ResultsThe final model highlighted the importance of hydrogen bond acceptor, hydrophobic aliphatic, hydrophobic, and ring aromatic features. The model satisfied all the statistical criteria such as cost function analysis and correlation coefficient. The result of estimated activity for internal and external test set compounds reveals that the generated model has high prediction capability. The validated pharmacophore model was further used for mining of 56000 compound database (MiniMaybridge). Total 141 hits were obtained and all the hits were checked for druggability, this led to the identification of two active druggable AT1 receptor antagonists with diverse structure.ConclusionA highly validated pharmacophore model generated in this study identified two novel druggable AT1 receptor antagonists. The developed model can also be further used for mining of other virtual database.
机译:背景技术AT1受体拮抗剂是用于治疗高血压,心血管疾病和相关疾病的临床有效药物。为了鉴定新的AT1受体拮抗剂,应用了基于药效团的虚拟筛选方案。药效团模型是由30种训练化合物组成的。根据训练集和内部测试集的平方相关系数,选择最佳模型。使用catScramble验证方法和外部测试集预测还可以确保所开发模型的有效性。该模型满足成本函数分析和相关系数等所有统计标准。内部和外部测试集化合物的估计活性结果表明,生成的模型具有较高的预测能力。经过验证的药效团模型进一步用于56000化合物数据库的挖掘(MiniMaybridge)。总共获得了141次命中,并检查了所有命中的可药性,从而鉴定出了两种结构多样的活性可药物AT1受体拮抗剂。开发的模型还可以进一步用于其他虚拟数据库的挖掘。

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