Beijing Institute of Pharmacology and Toxicology, 27 Taiping Road, Beijing 100850, China.
Department of Medicinal Chemistry, School of Pharmacy, Fudan University, Shanghai 201203, China.
Bioorg Med Chem. 2021 Dec 15;52:116515. doi: 10.1016/j.bmc.2021.116515. Epub 2021 Nov 11.
Hierarchical virtual screening combined with ADME prediction and cluster analysis methods were used to identify influenza virus PB2 inhibitors with high activity, good druggability properties, and diverse structures. The 200,000 molecules in the ChemDiv core library were narrowed down to a final set of 97 molecules, of which six compounds were found to rescue cells from both H1N1 and H3N2 virus-induced CPE with EC50 values ranging from 5.81 μM to 42.77 μM, and could bind to the PB2 CBD of H1N1, with K values of 0.11 μM to 6.4 μM. The six compounds have novel structures and low molecular weight and are, thus, suitable serve as lead compounds for development as PB2 inhibitors. A receptor-based pharmacophore model was successfully constructed using key amino acid residues for the binding of inhibitors to PB2, provided by the MD simulations. This pharmacophore model suggested that to improve the activity of our active compounds, we should mainly focus on optimizing their existing structures with the aim of increasing their adaptability to the binding site, rather than adding chemical fragments to increase their binding to adjacent sites. This pharmacophore construction method facilitates the creation of a reasonable pharmacophore model without the need to fully understand the structure-activity relationships, and our descriptions provide a useful reference for similar research.
采用层次虚拟筛选结合 ADME 预测和聚类分析方法,鉴定出具有高活性、良好成药性和多样结构的流感病毒 PB2 抑制剂。从 ChemDiv 核心库的 20 万个分子中筛选出最终的 97 个分子,其中 6 个化合物对 H1N1 和 H3N2 病毒诱导的 CPE 具有细胞保护作用,EC50 值范围为 5.81 μM 至 42.77 μM,并且可以与 H1N1 的 PB2 CBD 结合,K 值为 0.11 μM 至 6.4 μM。这 6 个化合物具有新颖的结构和低分子量,因此适合作为 PB2 抑制剂的先导化合物。使用 MD 模拟提供的关键氨基酸残基,成功构建了基于受体的药效基团模型,用于抑制剂与 PB2 的结合。该药效基团模型表明,为了提高我们活性化合物的活性,我们应该主要集中优化它们现有的结构,以提高其对结合位点的适应性,而不是添加化学片段来增加其与相邻位点的结合。这种药效基团构建方法有助于创建合理的药效基团模型,而无需完全了解结构-活性关系,我们的描述为类似研究提供了有用的参考。