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Ligand-based pharmacophore modeling and Bayesian approaches to identify c-Src inhibitors

机译:基于Ligand的药物造型建模和贝叶斯探测C-SRC抑制剂的方法

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摘要

Cellular Src (c-Src) kinases play a critical role in cell adhesion, proliferation, angiogenesis and cancer. Ligand-based pharmacophore models, used to identify the critical chemical features of c-Src inhibitors, were generated and validated by training, test and decoy sets, respectively. Best pharmacophore model, Hypo1, consists of four features such as HBA, HBD, Hy-Ar and RA. Hypo1 was used in virtual screening of the chemical databases such as Maybridge, Chembridge and NCI. The sorted compounds by Hypo1 were further reduced by applying drug-like properties and ADMET. Totally, 85 compounds which showed the good drug-like properties were selected from three databases and subjected to molecular docking for refinement of the retrieved hits by analysing the suitable orientation of the compounds in the active site of c-Src. Finally, 18 compounds were selected based on consensus scoring and hydrogen bond interactions with critical amino acids such as Met341, Thr338, Glu339 or Asp404. In addition, the Bayesian model was generated from the training set to find suitable fragments for inhibition of the c-Src function. Based on the above finding, we suggested that the Hypo1 and the good fragments from the Bayesian model will be helpful to select the compounds from various databases to identify the novel and potent c-Src inhibitor.
机译:细胞SRC(C-SRC)激酶在细胞粘附,增殖,血管生成和癌症中起重要作用。通过训练,试验和诱饵套,产生并验证了用于鉴定C-SRC抑制剂的关键化学特征的基于配体的药效模型。最佳的Pharmacophore模型,Hypo1,由四个功能组成,如HBA,HBD,HY-AR和RA。 Hypo1用于虚拟筛选化学数据库,如Maybridge,Chembridge和NCI。通过施用药物样性能和允许进一步降低Spo1的分选化合物。完全,显示出良好的药物状性质的85种化合物选自三个数据库,并通过分析C-SRC活性位点中的化合物的合适取向来进行分子对接以改善检索的命中。最后,基于与临界氨基酸如MET341,THR38,GLU339或ASP404的临界氨基酸相互作用和氢键相互作用选择18种化合物。此外,贝叶斯模型是从训练组生成的,以找到合适的碎片,用于抑制C-SRC功能。基于上述发现,我们建议贝叶斯模型的Hypo1和良好碎片将有助于从各种数据库中选择化合物以鉴定新颖和有效的C-SRC抑制剂。

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