首页> 外文期刊>Journal of Computer-Aided Molecular Design >Receptor-based 3D QSAR analysis of estrogen receptor ligands - merging the accuracy of receptor-based alignments with the computational efficiency of ligand-based methods
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Receptor-based 3D QSAR analysis of estrogen receptor ligands - merging the accuracy of receptor-based alignments with the computational efficiency of ligand-based methods

机译:基于受体的3D QSAR雌激素受体配体分析 - 以基于配体的方法计算效率合并受体基对比对的准确性

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One of the major challenges in computational approaches to drug design is the accurate prediction of binding affinity of biomolecules. In the present study several prediction methods for a published set of estrogen receptor ligands are investigated and compared. The binding modes of 30 ligands were determined using the docking program AutoDock and were compared with available X-ray structures of estrogen receptor-ligand complexes. On the basis of the docking results an interaction energy-based model, which uses the information of the whole ligand-receptor complex, was generated. Several parameters were modified in order to analyze their influence onto the correlation between binding affinities and calculated ligand-receptor interaction energies. The highest correlation coefficient (r(2) = 0.617, q(LOO)(2) = 0.570) was obtained considering protein flexibility during the interaction energy evaluation. The second prediction method uses a combination of receptor-based and 3D quantitative structure-activity relationships (3D QSAR) methods. The ligand alignment obtained from the docking simulations was taken as basis for a comparative field analysis applying the GRID/GOLPE program. Using the interaction field derived with a water probe and applying the smart region definition (SRD) variable selection, a significant and robust model was obtained (r(2) = 0.991, q(LOO)(2) = 0.921). The predictive ability of the established model was further evaluated by using a test set of six additional compounds. The comparison with the generated interaction energy-based model and with a traditional CoMFA model obtained using a ligand-based alignment (r(2) = 0.951, q(LOO)(2) = 0.796) indicates that the combination of receptor-based and 3D QSAR methods is able to improve the quality of the underlying model. [References: 58]
机译:计算药物设计方法中的主要挑战之一是准确预测生物分子的结合亲和力。在本研究中,研究并比较了几种公开的雌激素受体配体的预测方法。使用对接程序Autodock测定30个配体的结合模式,并与雌激素受体 - 配体复合物的可用X射线结构进行比较。在对接结果的基础上,产生了使用整个配体 - 受体复合物的信息的相互作用能量的模型。修饰了几个参数,以分析它们对结合亲和力与计算配体 - 受体相互作用能之间的相关性的影响。考虑在相互作用能量评估期间,获得最高的相关系数(R(2)= 0.617,Q(LOO)(2)= 0.570)。第二预测方法使用受体基和3D定量结构 - 活动关系(3D QSAR)方法的组合。从对接模拟获得的配体对准作为应用GRID / GOLPE计划的比较场分析的基础。使用与水探测器导出的相互作用场并应用智能区域定义(SRD)变量选择,获得了显着且鲁棒的模型(R(2)= 0.991,Q(LOO)(2)= 0.921)。通过使用六种另外的化合物的测试组进一步评估已建立模型的预测能力。与生成的相互作用的基于能量基模型的比较和使用使用基于配体的对齐获得的传统COMFA模型(R(2)= 0.951,Q(LOO)(2)= 0.796)表示基于受体和基于的组合3D QSAR方法能够提高底层模型的质量。 [参考:58]

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