Kumar Rajender, Garg Prabha, Bharatam P V
a Department of Pharmacoinformatics , National Institute of Pharmaceutical Education and Research (NIPER) , Sector-67, S.A.S. Nagar 160 062 , Punjab , India.
J Biomol Struct Dyn. 2015;33(5):1082-93. doi: 10.1080/07391102.2014.929535. Epub 2014 Jun 23.
Aspartate β-semialdehyde dehydrogenase (ASADH) is a key enzyme for the biosynthesis of essential amino acids and several important metabolites in microbes. Inhibition of ASADH enzyme is a promising drug target strategy against Mycobacterium tuberculosis (Mtb). In this work, in silico approach was used to identify potent inhibitors of Mtb-ASADH. Aspartyl β-difluorophosphonate (β-AFP), a known lead compound, was used to understand the molecular recognition interactions (using molecular docking and molecular dynamics analysis). This analysis helped in validating the computational protocol and established the participation of Arg99, Glu224, Cys130, Arg249, and His256 amino acids as the key amino acids in stabilizing ligand-enzyme interactions for effective binding, an essential feature is H-bonding interactions with the two arginyl residues at the two ends of the ligand. Best binding conformation of β-AFP was selected as a template for shape-based virtual screening (ZINC and NCI databases) to identify compounds that competitively inhibit the Mtb-ASADH. The top rank hits were further subjected to ADME and toxicity filters. Final filter was based on molecular docking analysis. Each screened molecule carries the characteristics of the highly electronegative groups on both sides separated by an average distance of 6 Å. Finally, the best predicted 20 compounds exhibited minimum three H-bonding interactions with Arg99 and Arg249. These identified hits can be further used for designing the more potent inhibitors against ASADH family. MD simulations were also performed on two selected compounds (NSC4862 and ZINC02534243) for further validation. During the MD simulations, both compounds showed same H-bonding interactions and remained bound to key active residues of Mtb-ASADH.
天冬氨酸β-半醛脱氢酶(ASADH)是微生物中必需氨基酸和几种重要代谢物生物合成的关键酶。抑制ASADH酶是一种有前景的抗结核分枝杆菌(Mtb)药物靶点策略。在这项工作中,采用计算机模拟方法来鉴定Mtb-ASADH的有效抑制剂。天冬氨酰β-二氟膦酸酯(β-AFP)是一种已知的先导化合物,用于了解分子识别相互作用(使用分子对接和分子动力学分析)。该分析有助于验证计算方案,并确定精氨酸99、谷氨酸224、半胱氨酸130、精氨酸249和组氨酸256氨基酸在稳定配体-酶相互作用以实现有效结合中的关键作用,一个重要特征是与配体两端的两个精氨酰残基形成氢键相互作用。选择β-AFP的最佳结合构象作为基于形状的虚拟筛选(ZINC和NCI数据库)的模板,以鉴定竞争性抑制Mtb-ASADH的化合物。排名靠前的命中物进一步经过ADME和毒性筛选。最终筛选基于分子对接分析。每个筛选出的分子在两侧都带有高电负性基团的特征,平均距离为6 Å。最后,预测的最佳20种化合物与精氨酸99和精氨酸249表现出至少三个氢键相互作用。这些鉴定出的命中物可进一步用于设计针对ASADH家族的更有效抑制剂。还对两种选定的化合物(NSC4862和ZINC02534243)进行了分子动力学模拟以进一步验证。在分子动力学模拟过程中,两种化合物都表现出相同的氢键相互作用,并与Mtb-ASADH的关键活性残基保持结合。