Khanfar Mohammad A, Taha Mutasem O
Department of Pharmaceutical Sciences, Faculty of Pharmacy, Univerity of Jordan, Amman, Jordan.
Drug Discovery Unit, Department of Pharmaceutical Sciences, Faculty of Pharmacy, University of Jordan, Amman, Jordan.
J Mol Recognit. 2017 Sep;30(9). doi: 10.1002/jmr.2623. Epub 2017 Mar 15.
Situin 2 (SIRT2) enzyme is a histone deacetylase that has important role in neuronal development. SIRT2 is clinically validated target for neurodegenerative diseases and some cancers. In this study, exhaustive unsupervised pharmacophore modeling was combined with quantitative structure-activity relationship (QSAR) analysis to explore the structural requirements for potent SIRT2 inhibitors using 146 known SIRT2 ligands. A computational workflow that combines genetic function algorithm with k-nearest neighbor or multiple linear regression was implemented to build self-consistent and predictive QSAR models based on combinations of pharmacophores and physicochemical descriptors. Successful pharmacophores were complemented with exclusion spheres to optimize their receiver operating characteristic curve profiles. Optimal QSAR models and their associated pharmacophore hypotheses were experimentally validated by identification and in vitro evaluation of several new promising SIRT2 inhibitory leads retrieved from the National Cancer Institute structural database. The most potent hit illustrated IC value of 5.4μM. The chemical structures of active hits were validated by proton nuclear magnetic resonance and mass spectroscopy.
沉默调节蛋白2(SIRT2)酶是一种组蛋白脱乙酰酶,在神经元发育中起重要作用。SIRT2是神经退行性疾病和某些癌症的临床验证靶点。在本研究中,将详尽的无监督药效团建模与定量构效关系(QSAR)分析相结合,使用146种已知的SIRT2配体来探索强效SIRT2抑制剂的结构要求。实施了一种将遗传函数算法与k近邻或多元线性回归相结合的计算工作流程,以基于药效团和物理化学描述符的组合构建自洽且具有预测性的QSAR模型。成功的药效团用排除球进行补充,以优化其受试者工作特征曲线轮廓。通过从美国国立癌症研究所结构数据库中检索到的几种新的有前景的SIRT2抑制先导化合物的鉴定和体外评估,对最佳QSAR模型及其相关的药效团假设进行了实验验证。最有效的命中物的IC值为5.4μM。活性命中物的化学结构通过质子核磁共振和质谱进行了验证。