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使用LigandFit进行基于结构的虚拟配体筛选:构象预测与化合物库富集

Structure-based virtual ligand screening with LigandFit: pose prediction and enrichment of compound collections.

作者信息

Montes Matthieu, Miteva Maria A, Villoutreix Bruno O

机构信息

INSERM U648, Université Paris 5, 75006 Paris, France.

出版信息

Proteins. 2007 Aug 15;68(3):712-25. doi: 10.1002/prot.21405.

DOI:10.1002/prot.21405
PMID:17510958
Abstract

Virtual ligand screening methods based on the structure of the receptor are extensively used to facilitate the discovery of lead compounds. In the present study, we investigated the LigandFit package on four different proteins (coagulation factor VIIa, estrogen receptor, thymidine kinase, and neuraminidase), a relatively large compound collection of 65,560 unique "drug-like" molecules and four focused libraries (1950 molecules each). We performed virtual screening experiments with the large database and evaluated six scoring functions available in the package (DockScore, LigScore1, LigScore2, PLP1, PLP2, and PMF). The results showed that LigandFit is an efficient program, especially when used with LigScore1. Similar computations were carried out using focused libraries. In this situation the LigScore1 scoring function outperformed the other ones on three out of the four proteins tested. Even for the difficult neuraminidase case, the LigandFit/LigScore1 combination was still reasonably successful. Assessment of docking accuracy was also performed and again, we found that LigandFit (with DockScore and the CFF parameters) was performing well. On the basis of these results and observed increased enrichments after LigandFit/Ligscore1 screening on focused libraries, we suggest that using this program as a final step of a hierarchical protocol can be very beneficial to assist lead finding.

摘要

基于受体结构的虚拟配体筛选方法被广泛用于促进先导化合物的发现。在本研究中,我们在四种不同的蛋白质(凝血因子VIIa、雌激素受体、胸苷激酶和神经氨酸酶)、一个包含65560个独特“类药物”分子的相对较大的化合物库以及四个聚焦文库(每个文库1950个分子)上研究了LigandFit软件包。我们使用大型数据库进行了虚拟筛选实验,并评估了该软件包中可用的六种评分函数(DockScore、LigScore1、LigScore2、PLP1、PLP2和PMF)。结果表明,LigandFit是一个高效的程序,特别是与LigScore1一起使用时。使用聚焦文库进行了类似的计算。在这种情况下,LigScore1评分函数在测试的四种蛋白质中的三种上优于其他函数。即使对于困难的神经氨酸酶情况,LigandFit/LigScore1组合仍然相当成功。还进行了对接准确性评估,我们再次发现LigandFit(使用DockScore和CFF参数)表现良好。基于这些结果以及在聚焦文库上进行LigandFit/Ligscore1筛选后观察到的富集增加,我们建议将该程序用作分层方案的最后一步对于协助寻找先导物可能非常有益。

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