Research Program on Biomedical Informatics (GRIB), Hospital del Mar Medical Research Institute (IMIM), 08003, Barcelona, Spain.
Chemistry Department, Federal University of Paraíba, João Pessoa, PB, 58051-970, Brazil.
Mol Divers. 2019 Aug;23(3):555-572. doi: 10.1007/s11030-018-9890-8. Epub 2018 Nov 12.
Epigenetics has become a focus of interest in drug discovery. In this sense, bromodomain-containing proteins have emerged as potential epigenetic targets in cancer research and other therapeutic areas. Several computational approaches have been applied to the prediction of bromodomain inhibitors. Nevertheless, such approaches have several drawbacks such as the fact that they predict activity against only one bromodomain-containing protein, using structurally related compounds. Also, there are no reports focused on meaningfully analyzing the physicochemical/structural features that are necessary for the design of a bromodomain inhibitor. This work describes the development of two different multi-target models based on quantitative structure-activity relationships (mt-QSAR) for the prediction and in silico design of multi-target bromodomain inhibitors against the proteins BRD2, BRD3, and BRD4. The first model relied on linear discriminant analysis (LDA) while the second focused on artificial neural networks. Both models exhibited accuracies higher than 85% in the dataset. Several molecular fragments were extracted, and their contributions to the inhibitory activity against the three BET proteins were calculated by the LDA model. Six molecules were designed by assembling the fragments with positive contributions, and they were predicted as multi-target BET bromodomain inhibitors by the two mt-QSAR models. Molecular docking calculations converged with the predictions performed by the mt-QSAR models, suggesting that the designed molecules can exhibit potent activity against the three BET proteins. These molecules complied with the Lipinski's rule of five.
表观遗传学已成为药物发现的关注焦点。从这个意义上说,含溴结构域的蛋白已成为癌症研究和其他治疗领域中潜在的表观遗传靶点。已经应用了几种计算方法来预测溴结构域抑制剂。然而,这些方法存在几个缺点,例如它们仅预测对一种含溴结构域蛋白的活性,使用结构相关的化合物。此外,没有报道专门针对分析设计溴结构域抑制剂所需的物理化学/结构特征进行有意义的分析。这项工作描述了两种不同的多靶模型的开发,这些模型基于定量构效关系 (mt-QSAR),用于预测和计算机设计针对蛋白质 BRD2、BRD3 和 BRD4 的多靶溴结构域抑制剂。第一个模型依赖于线性判别分析 (LDA),而第二个模型则专注于人工神经网络。两个模型在数据集上的准确率均高于 85%。提取了几个分子片段,并通过 LDA 模型计算了它们对三种 BET 蛋白的抑制活性的贡献。通过组装具有正贡献的片段设计了六个分子,并通过两个 mt-QSAR 模型预测它们为多靶 BET 溴结构域抑制剂。分子对接计算与 mt-QSAR 模型的预测结果一致,表明设计的分子可以对三种 BET 蛋白表现出强大的活性。这些分子符合 Lipinski 的五规则。