Bioinformatics Research Center, School of Pharmacy and Pharmaceutical Sciences, Isfahan University of Medical Sciences, Isfahan 81746-73461, Iran.
Department of Biotechnology, Chemistry and Pharmacy, DoE Department of Excellence 2018-2022, University of Siena, via Aldo Moro 2, 53100 Siena, Italy.
Molecules. 2020 Apr 22;25(8):1952. doi: 10.3390/molecules25081952.
Histone deacetylases (HDACs) are a class of epigenetic modulators overexpressed in numerous types of cancers. Consequently, HDAC inhibitors (HDACIs) have emerged as promising antineoplastic agents. Unfortunately, the most developed HDACIs suffer from poor selectivity towards a specific isoform, limiting their clinical applicability. Among the isoforms, HDAC1 represents a crucial target for designing selective HDACIs, being aberrantly expressed in several malignancies. Accordingly, the development of a predictive in silico tool employing a large set of HDACIs (aminophenylbenzamide derivatives) is herein presented for the first time. Software Phase was used to derive a 3D-QSAR model, employing as alignment rule a common-features pharmacophore built on 20 highly active/selective HDAC1 inhibitors. The 3D-QSAR model was generated using 370 benzamide-based HDACIs, which yielded an excellent correlation coefficient value (R = 0.958) and a satisfactory predictive power (Q = 0.822; Q = 0.894). The model was validated (r = 0.794) using an external test set (113 compounds not used for generating the model), and by employing a decoys set and the receiver-operating characteristic (ROC) curve analysis, evaluating the Güner-Henry score (GH) and the enrichment factor (EF). The results confirmed a satisfactory predictive power of the 3D-QSAR model. This latter represents a useful filtering tool for screening large chemical databases, finding novel derivatives with improved HDAC1 inhibitory activity.
组蛋白去乙酰化酶(HDACs)是一类在多种癌症中过度表达的表观遗传调节剂。因此,HDAC 抑制剂(HDACIs)已成为有前途的抗肿瘤药物。不幸的是,最发达的 HDACIs 对特定同工型的选择性较差,限制了它们的临床应用。在同工型中,HDAC1 是设计选择性 HDACIs 的关键靶标,在几种恶性肿瘤中异常表达。因此,首次提出了一种使用大型 HDACI(氨基苯甲酰胺衍生物)的预测性计算工具。软件阶段用于推导 3D-QSAR 模型,采用基于 20 种高活性/选择性 HDAC1 抑制剂的共同特征药效团作为对齐规则。3D-QSAR 模型使用 370 种基于苯甲酰胺的 HDACI 生成,得到了优异的相关系数值(R = 0.958)和令人满意的预测能力(Q = 0.822;Q = 0.894)。该模型通过使用外部测试集(113 种未用于生成模型的化合物)进行验证(r = 0.794),并通过使用 decoys 集和接收器操作特性(ROC)曲线分析,评估 Güner-Henry 分数(GH)和富集因子(EF)。结果证实了 3D-QSAR 模型具有令人满意的预测能力。后者是筛选大型化学数据库的有用筛选工具,可找到具有改善的 HDAC1 抑制活性的新型衍生物。