Hu Zhihao, Lin Qianxia, Liu Haiyun, Zhao Tiansheng, Yang Bowen, Tu Guogang
Department of Medicinal Chemistry, School of Pharmaceutical Science, NanChang University, Nanchang, 330006, China.
Jiangxi University of Traditional Chinese Medicine, Nanchang, 330006, Jiangxi, People's Republic of China.
Mol Divers. 2022 Apr;26(2):757-768. doi: 10.1007/s11030-021-10181-y. Epub 2021 Feb 24.
Histone deacetylases (HDACs) were highlighted as a novel category of anticancer targets. Several HDACs inhibitors were approved for therapeutic use in cancer treatment. Comparatively, receptor-dependent 4D-QSAR, LQTA-QSAR, is a new approach which generates conformational ensemble profiles of compounds by molecular dynamics simulations at binding site of enzyme. This work describes a receptor-dependent 4D-QSAR studies on hydroxamate-based HDACs inhibitors. The 4D-QSAR model was generated by multiple linear regression method of QSARINS. Leave-N-out cross-validation (LNO) and Y-randomization were performed to analysis of the independent test set and to verify the robustness of the model. Best 4D-QSAR model showed the following statistics: R = 0.8117, Q = 0.6881, Q = 0.6830, R = 0.884. The results may be used for further virtual screening and design for novel HDACs inhibitors. The receptor dependent 4D-QSAR model was developed for the hydroxamate derivatives as HDAC inhibitors by making use of molecular dynamics simulation to obtain conformational ensemble profile for each compound. The multiple linear regression method was used to generate 4D-QSAR model with the suitable predictive ability and the excellent statistical parameters.
组蛋白去乙酰化酶(HDACs)被视为一类新型抗癌靶点。几种HDACs抑制剂已获批用于癌症治疗。相比之下,受体依赖性4D-QSAR,即LQTA-QSAR,是一种通过在酶结合位点进行分子动力学模拟来生成化合物构象集合概况的新方法。这项工作描述了基于异羟肟酸的HDACs抑制剂的受体依赖性4D-QSAR研究。4D-QSAR模型通过QSARINS的多元线性回归方法生成。采用留一法交叉验证(LNO)和Y随机化对独立测试集进行分析并验证模型的稳健性。最佳4D-QSAR模型显示出以下统计数据:R = 0.8117,Q = 0.6881,Q = 0.6830,R = 0.884。这些结果可用于进一步的虚拟筛选和新型HDACs抑制剂的设计。通过利用分子动力学模拟获得每种化合物的构象集合概况,为作为HDAC抑制剂的异羟肟酸衍生物建立了受体依赖性4D-QSAR模型。采用多元线性回归方法生成具有合适预测能力和优异统计参数的4D-QSAR模型。