首页> 外文期刊>Journal of Molecular Modeling >Data mining using template-based molecular docking on tetrahydroimidazo-[4,5,1-jk][1,4]-benzodiazepinone (TIBO) derivatives as HIV-1RT inhibitors
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Data mining using template-based molecular docking on tetrahydroimidazo-[4,5,1-jk][1,4]-benzodiazepinone (TIBO) derivatives as HIV-1RT inhibitors

机译:使用基于模板的分子对接作为HIV-1RT抑制剂的四氢咪唑-[4,5,1-jk] [1,4]-苯并二氮杂酮(TIBO)衍生物进行数据挖掘

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摘要

TIBO (Tetrahydroimidazo-[4,5,1-jk][1,4]-benzodiazepinone) compounds are potent non-nucleoside reverse transcriptase inhibitors (NNRTIs) that show a great promise for the treatment of AIDS. A structure-based molecular modeling approach based on template-based flexible docking simulation followed by ‘Tabu clustering’ was performed on a series of 46 TIBO derivatives considered as training set of HIV-1 NNRTIs. Four different templates of the highest active ligand (pIC50 = 8.52) of the series were used. The results were reasonably satisfactory. A good correlation was observed between the biological activity and binding affinity of the compounds, which suggest that identified binding conformations of these inhibitors are reliable. Statistical modeling yielded satisfactory results (r 2 = 0.878). Our studies suggest that template-based docking followed by ‘Tabu clustering’ enhances the docking efficiency. Also, cross-validation with a test-set containing 16 compounds gave satisfactory results (r 2 = 0.836). Data mining of PubChem database yielded a total of 31 hits (25 novel TIBO like compounds, as well as, 6 novel scaffolds) with enhanced binding efficacy as hits. These hits may, be targeted toward potent lead-optimization and, help in designing and synthesizing novel compounds with enhanced therapeutic efficacy.
机译:TIBO(四氢咪唑基-[4,5,1-jk] [1,4]-苯并二氮杂酮)化合物是有效的非核苷类逆转录酶抑制剂(NNRTIs),具有治疗艾滋病的广阔前景。对一系列46种TIBO衍生物(被视为HIV-1 NNRTI的训练集)进行了基于结构的灵活对接模拟,然后进行“ Tabu聚类”的基于结构的分子建模方法。使用了该系列的四个最高活性配体(pIC50 = 8.52)的不同模板。结果相当令人满意。在化合物的生物学活性和结合亲和力之间观察到良好的相关性,这表明这些抑制剂的鉴定的结合构象是可靠的。统计模型得出令人满意的结果(r 2 = 0.878)。我们的研究表明,基于模板的对接后再加上“ Tabu聚类”可提高对接效率。同样,使用包含16种化合物的测试集进行交叉验证也得到了令人满意的结果(r 2 = 0.836)。 PubChem数据库的数据挖掘产生了总共31个结果(25个新颖的TIBO样化合物,以及6个新颖的支架),结合效率更高。这些命中可以针对有效的铅优化,并有助于设计和合成具有增强治疗功效的新型化合物。

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