School of Biomedical Informatics, The University of Texas Health Science Center at Houston, 7000 Fannin, Suite 690, Houston, Texas 77030, United States.
J Chem Inf Model. 2010 Dec 27;50(12):2119-28. doi: 10.1021/ci100285f. Epub 2010 Nov 16.
Class A G-protein-coupled receptors (GPCRs) are among the most important targets for drug discovery. However, a large set of experimental structures, essential for a structure-based approach, will likely remain unavailable in the near future. Thus, there is an actual need for modeling tools to characterize satisfactorily at least the binding site of these receptors. Using experimentally solved GPCRs, we have enhanced and validated the ligand-steered homology method through cross-modeling and investigated the performance of the thus generated models in docking-based screening. The ligand-steered modeling method uses information about existing ligands to optimize the binding site by accounting for protein flexibility. We found that our method is able to generate quality models of GPCRs by using one structural template. These models perform better than templates, crude homology models, and random selection in small-scale high-throughput docking. Better quality models typically exhibit higher enrichment in docking exercises. Moreover, they were found to be reliable for selectivity prediction. Our results support the fact that the ligand-steered homology modeling method can successfully characterize pharmacologically relevant sites through a full flexible ligand-flexible receptor procedure.
A 类 G 蛋白偶联受体 (GPCR) 是药物发现的最重要靶点之一。然而,在不久的将来,很可能仍无法获得大量对于基于结构的方法至关重要的实验结构。因此,确实需要建模工具来至少充分描述这些受体的结合位点。我们使用实验解决的 GPCR,通过交叉建模增强和验证了配体引导的同源建模方法,并研究了由此产生的模型在基于对接的筛选中的性能。配体引导的建模方法使用现有配体的信息通过考虑蛋白质柔性来优化结合位点。我们发现,我们的方法能够通过使用一个结构模板生成 GPCR 的高质量模型。这些模型在小规模高通量对接中比模板、原始同源模型和随机选择表现更好。更好的质量模型通常在对接练习中表现出更高的富集度。此外,它们被发现可用于选择性预测。我们的结果支持以下事实:通过完整的柔性配体-柔性受体过程,配体引导的同源建模方法可以成功地描述具有药理相关性的位点。