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首页> 外文期刊>Journal of chemical information and modeling >Linear and nonlinear 3D-QSAR approaches in tandem with ligand-based homology modeling as a computational strategy to depict the pyrazolo-triazolo-pyrimidine antagonists binding site of the human adenosine A(2A) receptor
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Linear and nonlinear 3D-QSAR approaches in tandem with ligand-based homology modeling as a computational strategy to depict the pyrazolo-triazolo-pyrimidine antagonists binding site of the human adenosine A(2A) receptor

机译:线性和非线性3D-QSAR方法与基于配体的同源性建模相结合,作为计算策略来描述人腺苷A(2A)受体的吡唑并三唑并嘧啶拮抗剂结合位点

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摘要

The integration of ligand- and structure-based strategies might sensitively increase the success of drug discovery process. We have recently described the application of Molecular Electrostatic Potential autocorrelated vectors (autoMEPs) in generating both linear (Partial Least-Square, PLS) and nonlinear (Response Surface Analysis, RSA) 3D-QSAR models to quantitatively predict the binding affinity of human adenosine A(3) receptor antagonists. Moreover, we have also reported a novel GPCR modeling approach, called Ligand-Based Homology Modeling (LBHM), as a tool to simulate the conformational changes of the receptor induced by ligand binding. In the present study, the application of both linear and nonlinear 3D- QSAR methods and LBHM computational techniques has been used to depict the hypothetical antagonist binding site of the human adenosine A(2A) receptor. In particular, a collection of 127 known human A(2A) antagonists has been utilized to derive two 3D-QSAR models (autoMEPs/PLS&RSA). In parallel, using a rhodopsin-driven homology modeling approach, we have built a model of the human adenosine A2A receptor. Finally, 3D-QSAR and LBHM strategies have been utilized to predict the binding affinity of five new human A(2A) pyrazolo-triazolo-pyrimidine antagonists finding a good agreement between the theoretical and the experimental predictions.
机译:基于配体和基于结构的策略的整合可能会敏感地增加药物发现过程的成功率。我们最近描述了分子静电势自相关载体(autoMEPs)在生成线性(偏最小二乘,PLS)和非线性(响应表面分析,RSA)3D-QSAR模型中的应用,以定量预测人腺苷A的结合亲和力(3)受体拮抗剂。此外,我们还报道了一种新颖的GPCR建模方法,称为基于配体的同源性建模(LBHM),作为一种模拟由配体结合诱导的受体构象变化的工具。在本研究中,线性和非线性3D-QSAR方法以及LBHM计算技术的应用已用于描述人腺苷A(2A)受体的假想拮抗剂结合位点。特别是,已使用127种已知的人类A(2A)拮抗剂的集合来推导两个3D-QSAR模型(​​autoMEPs / PLS&RSA)。同时,使用视紫红质驱动的同源性建模方法,我们建立了人类腺苷A2A受体的模型。最后,3D-QSAR和LBHM策略已被用于预测五种新的人类A(2A)吡唑并三唑并嘧啶拮抗剂的结合亲和力,从而在理论和实验预测之间找到了很好的一致性。

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