Mehta Pakhuri, Srivastava Shubham, Choudhary Bhanwar Singh, Sharma Manish, Malik Ruchi
a Department of Pharmacy, School of Chemical Sciences and Pharmacy , Central University of Rajasthan , Kishangarh, Ajmer , Rajasthan , India.
b School of Pharmacy , Maharishi Markandeshwar University , Ambala , Haryana , India.
J Recept Signal Transduct Res. 2017 Dec;37(6):578-589. doi: 10.1080/10799893.2017.1369122. Epub 2017 Aug 31.
Multidrug resistance along with side-effects of available anti-epileptic drugs and unavailability of potent and effective agents in submicromolar quantities presents the biggest therapeutic challenges in anti-epileptic drug discovery. The molecular modeling techniques allow us to identify agents with novel structures to match the continuous urge for its discovery. KCNQ2 channel represents one of the validated targets for its therapy. The present study involves identification of newer anti-epileptic agents by means of a computer-aided drug design adaptive protocol involving both structure-based virtual screening of Asinex library using homology model of KCNQ2 and 3D-QSAR based virtual screening with docking analysis, followed by dG bind and ligand efficiency calculations with ADMET studies, of which 20 hits qualified all the criterions. The best ligands of both screenings with least potential for toxicity predicted computationally were then taken for molecular dynamic simulations. All the crucial amino acid interactions were observed in hits of both screenings such as Glu130, Arg207, Arg210 and Phe137. Robustness of docking protocol was analyzed through Receiver operating characteristic (ROC) curve values 0.88 (Area under curve AUC = 0.87) in Standard Precision and 0.84 (AUC = 0.82) in Extra Precision modes. Novelty analysis indicates that these compounds have not been reported previously as anti-epileptic agents.
多药耐药性,以及现有抗癫痫药物的副作用和亚微摩尔量的有效强力药物的缺乏,是抗癫痫药物研发中最大的治疗挑战。分子建模技术使我们能够识别具有新结构的药物,以满足对其不断探索的需求。KCNQ2通道是其治疗的有效靶点之一。本研究通过一种计算机辅助药物设计自适应方案来鉴定新型抗癫痫药物,该方案包括使用KCNQ2同源模型对Asinex文库进行基于结构的虚拟筛选和基于3D-QSAR的虚拟筛选及对接分析,随后进行dG结合和配体效率计算以及ADMET研究,其中有20个命中物符合所有标准。然后将计算预测毒性潜力最小的两次筛选中的最佳配体用于分子动力学模拟。在两次筛选的命中物中均观察到了所有关键的氨基酸相互作用,如Glu130、Arg207、Arg210和Phe137。通过标准精度下的0.88(曲线下面积AUC = 0.87)和超精度模式下的0.84(AUC = 0.82)的受试者工作特征(ROC)曲线值分析了对接方案的稳健性。新颖性分析表明,这些化合物以前尚未作为抗癫痫药物被报道过。