State Key Laboratory of Natural Medicines, China Pharmaceutical University , Nanjing, Jiangsu 210009, China.
J Chem Inf Model. 2013 Oct 28;53(10):2715-29. doi: 10.1021/ci400348f. Epub 2013 Oct 7.
Protein-protein interactions (PPIs) play a crucial role in cellular function and form the backbone of almost all biochemical processes. In recent years, protein-protein interaction inhibitors (PPIIs) have represented a treasure trove of potential new drug targets. Unfortunately, there are few successful drugs of PPIIs on the market. Structure-based pharmacophore (SBP) combined with docking has been demonstrated as a useful Virtual Screening (VS) strategy in drug development projects. However, the combination of target complexity and poor binding affinity prediction has thwarted the application of this strategy in the discovery of PPIIs. Here we report an effective VS strategy on p53-MDM2 PPI. First, we built a SBP model based on p53-MDM2 complex cocrystal structures. The model was then simplified by using a Receptor-Ligand complex-based pharmacophore model considering the critical binding features between MDM2 and its small molecular inhibitors. Cascade docking was subsequently applied to improve the hit rate. Based on this strategy, we performed VS on NCI and SPECS databases and successfully discovered 6 novel compounds from 15 hits with the best, compound 1 (NSC 5359), K(i) = 180 ± 50 nM. These compounds can serve as lead compounds for further optimization.
蛋白质-蛋白质相互作用 (PPIs) 在细胞功能中起着至关重要的作用,几乎构成了所有生化过程的基础。近年来,蛋白质-蛋白质相互作用抑制剂 (PPIIs) 一直是潜在新药靶点的宝库。不幸的是,市场上成功的 PPII 药物寥寥无几。基于结构的药效团 (SBP) 与对接相结合已被证明是药物开发项目中一种有用的虚拟筛选 (VS) 策略。然而,由于目标的复杂性和结合亲和力预测的不佳,该策略在 PPII 的发现中应用受到了阻碍。在这里,我们报告了一种针对 p53-MDM2 PPI 的有效 VS 策略。首先,我们基于 p53-MDM2 复合物共晶结构构建了一个 SBP 模型。然后,通过使用基于受体-配体复合物的药效团模型来简化模型,该模型考虑了 MDM2 与其小分子抑制剂之间的关键结合特征。随后应用级联对接来提高命中率。基于该策略,我们对 NCI 和 SPECS 数据库进行了 VS,并从 15 个命中化合物中成功发现了 6 种新型化合物,其中最佳化合物 1(NSC 5359)的 K(i) 值为 180 ± 50 nM。这些化合物可以作为进一步优化的先导化合物。