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基于药效团模型和虚拟筛选技术的新型 c-Met 抑制剂的发现。

Pharmacophore modeling and virtual screening studies to identify new c-Met inhibitors.

机构信息

Laboratory of Molecular Design and Drug Discovery, School of Basic Science, China Pharmaceutical University, 24 Tongjiaxiang, Nanjing 210009, China.

出版信息

J Mol Model. 2012 Jul;18(7):3087-100. doi: 10.1007/s00894-011-1328-5. Epub 2011 Dec 28.

Abstract

Mesenchymal epithelial transition factor (c-Met) is an attractive target for cancer therapy. Three-dimensional pharmacophore hypotheses were built based on a set of known structurally diverse c-Met inhibitors. The best pharmacophore model, which identified inhibitors with an associated correlation coefficient of 0.983 between their experimental and estimated IC(50) values, consisted of two hydrogen-bond acceptors, one hydrophobic, and one ring aromatic feature. The highly predictive power of the model was rigorously validated by test set prediction and Fischer's randomization method. The high values of enrichment factor and receiver operating characteristic (ROC) score indicated the model performed fairly well at distinguishing active from inactive compounds. The model was then applied to screen compound database for potential c-Met inhibitors. A filtering protocol, including druggability and molecular docking, were also applied in hits selection. The final 38 molecules, which exhibited good estimated activities, desired binding mode and favorable drug likeness were identified as potential c-Met inhibitors. Their novel backbone structures could be served as scaffolds for further study, which may facilitate the discovery and rational design of potent c-Met kinase inhibitors.

摘要

间质上皮转化因子(c-Met)是癌症治疗的一个有吸引力的靶点。基于一组已知结构多样的 c-Met 抑制剂,构建了三维药效团假说。最佳药效团模型确定了与实验和估算的 IC(50)值之间相关系数为 0.983 的抑制剂,该模型由两个氢键受体、一个疏水性和一个环状芳香特征组成。通过测试集预测和 Fischer 随机化方法对模型的高度预测能力进行了严格验证。富集因子和接收者操作特征(ROC)评分的高值表明,该模型在区分活性和非活性化合物方面表现相当出色。然后,该模型被应用于筛选潜在的 c-Met 抑制剂化合物数据库。还应用了药物可用性和分子对接等过滤方案来选择命中。最终确定了 38 个分子,它们表现出良好的估算活性、所需的结合模式和良好的药物相似性,被认为是潜在的 c-Met 抑制剂。它们新颖的骨架结构可以作为进一步研究的支架,这可能有助于发现和合理设计有效的 c-Met 激酶抑制剂。

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