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Sequential Application of Ligand and Structure Based Modeling Approaches to Index Chemicals for Their hH4R Antagonism

机译:配体和基于结构的建模方法在hH4R拮抗作用指数化学制品中的顺序应用

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摘要

The human histamine H4 receptor (hH4R), a member of the G-protein coupled receptors (GPCR) family, is an increasingly attractive drug target. It plays a key role in many cell pathways and many hH4R ligands are studied for the treatment of several inflammatory, allergic and autoimmune disorders, as well as for analgesic activity. Due to the challenging difficulties in the experimental elucidation of hH4R structure, virtual screening campaigns are normally run on homology based models. However, a wealth of information about the chemical properties of GPCR ligands has also accumulated over the last few years and an appropriate combination of these ligand-based knowledge with structure-based molecular modeling studies emerges as a promising strategy for computer-assisted drug design. Here, two chemoinformatics techniques, the Intelligent Learning Engine (ILE) and Iterative Stochastic Elimination (ISE) approach, were used to index chemicals for their hH4R bioactivity. An application of the prediction model on external test set composed of more than 160 hH4R antagonists picked from the chEMBL database gave enrichment factor of 16.4. A virtual high throughput screening on ZINC database was carried out, picking ∼4000 chemicals highly indexed as H4R antagonists' candidates. Next, a series of 3D models of hH4R were generated by molecular modeling and molecular dynamics simulations performed in fully atomistic lipid membranes. The efficacy of the hH4R 3D models in discrimination between actives and non-actives were checked and the 3D model with the best performance was chosen for further docking studies performed on the focused library. The output of these docking studies was a consensus library of 11 highly active scored drug candidates. Our findings suggest that a sequential combination of ligand-based chemoinformatics approaches with structure-based ones has the potential to improve the success rate in discovering new biologically active GPCR drugs and increase the enrichment factors in a synergistic manner.
机译:人组胺H4受体(hH4R)是G蛋白偶联受体(GPCR)家族的成员,是一种越来越有吸引力的药物靶标。它在许多细胞途径中起着关键作用,并且已经研究了许多hH4R配体用于治疗多种炎症性,过敏性和自身免疫性疾病以及镇痛活性。由于在实验阐明hH4R结构方面的挑战性困难,虚拟筛选活动通常在基于同源性的模型上进行。但是,在过去的几年中,有关GPCR配体化学性质的大量信息也已积累,这些基于配体的知识与基于结构的分子建模研究的适当结合成为计算机辅助药物设计的一种有前途的策略。在这里,两种化学信息学技术,即智能学习引擎(ILE)和迭代随机淘汰(ISE)方法,被用于对化学品的hH4R生物活性进行索引。将预测模型应用于从chEMBL数据库中选择的160多种hH4R拮抗剂组成的外部测试集,其富集因子为16.4。在ZINC数据库上进行了虚拟高通量筛选,选择了约4000种高度索引的化学物质作为H4R拮抗剂的候选物质。接下来,通过在完全原子脂质膜上进行的分子建模和分子动力学模拟,生成了一系列的hH4R 3D模型。检查了hH4R 3D模型在区分有效成分和非有效成分方面的功效,并选择性能最佳的3D模型用于在聚焦库上进行的进一步对接研究。这些对接研究的结果是一个共有11个高活性评分药物候选者的共识库。我们的发现表明,基于配体的化学信息学方法与基于结构的方法的顺序组合具有提高发现新的具有生物活性的GPCR药物的成功率并以协同方式增加富集因子的潜力。

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