Department of Chemistry, Lomonosov Moscow State University, 119991 Moscow, Russia.
A.N. Belozersky Institute of Physico-Chemical Biology, Lomonosov Moscow State University, 119991 Moscow, Russia.
Molecules. 2020 Jul 11;25(14):3171. doi: 10.3390/molecules25143171.
Tankyrase enzymes (TNKS), a core part of the canonical Wnt pathway, are a promising target in the search for potential anti-cancer agents. Although several hundreds of the TNKS inhibitors are currently known, identification of their novel chemotypes attracts considerable interest. In this study, the molecular docking and machine learning-based virtual screening techniques combined with the physico-chemical and ADMET (absorption, distribution, metabolism, excretion, toxicity) profile prediction and molecular dynamics simulations were applied to a subset of the ZINC database containing about 1.7 M commercially available compounds. Out of seven candidate compounds biologically evaluated in vitro for their inhibition of the TNKS2 enzyme using immunochemical assay, two compounds have shown a decent level of inhibitory activity with the IC values of less than 10 nM and 10 μM. Relatively simple scores based on molecular docking or MM-PBSA (molecular mechanics, Poisson-Boltzmann, surface area) methods proved unsuitable for predicting the effect of structural modification or for accurate ranking of the compounds based on their binding energies. On the other hand, the molecular dynamics simulations and Free Energy Perturbation (FEP) calculations allowed us to further decipher the structure-activity relationships and retrospectively analyze the docking-based virtual screening performance. This approach can be applied at the subsequent lead optimization stages.
端粒体酶(TNKS)是经典 Wnt 途径的核心部分,是寻找潜在抗癌药物的有希望的靶点。尽管目前已知数百种 TNKS 抑制剂,但对其新型化学型的鉴定仍引起了相当大的兴趣。在这项研究中,应用了基于分子对接和机器学习的虚拟筛选技术,结合物理化学和 ADMET(吸收、分布、代谢、排泄、毒性)特性预测和分子动力学模拟,对包含约 170 万个商业可得化合物的 ZINC 数据库的子集进行了研究。在使用免疫化学测定法对 TNKS2 酶进行体外抑制的生物评估中,七种候选化合物中有两种化合物表现出相当水平的抑制活性,IC 值均小于 10 nM 和 10 μM。基于分子对接或 MM-PBSA(分子力学、泊松-玻尔兹曼、表面积)方法的相对简单的评分,不适用于预测结构修饰的效果,也不适用于根据化合物的结合能对其进行准确排序。另一方面,分子动力学模拟和自由能微扰(FEP)计算允许我们进一步破译结构-活性关系,并回顾性分析基于对接的虚拟筛选性能。这种方法可以应用于后续的先导化合物优化阶段。