Kumar Ashutosh, Chaturvedi Vinita, Bhatnagar Shalini, Sinha Sudhir, Siddiqi Mohammad Imran
Molecular and Structural Biology Division and Drug Target Discovery and Development Division, Central Drug Research Institute, Lucknow 226001, India.
J Chem Inf Model. 2009 Jan;49(1):35-42. doi: 10.1021/ci8003607.
In view of the worldwide spread of multidrug resistance of Mycobacterium tuberculosis, there is an urgent need to discover antitubercular agents with novel structures. Thymidine monophosphate kinase from M. tuberculosis (TMPKmt) is an attractive target for antitubercular chemotherapy. We report here the identification of potent antitubercular compounds targeting TMPKmt using virtual screening methods. For this purpose we have developed a pharmacophore hypothesis based on the substrate and known TMPKmt inhibitors and employed it to screen the Maybridge small molecule database. The molecular docking was then performed in order to select the compounds on the basis of their ability to form favorable interactions with the TMPKmt active site. In addition, we applied straightforward weighting using structure interaction fingerprints to include additional knowledge into structure based virtual screening. Eight compounds were acquired and evaluated for antitubercular activity against M. tuberculosis H37Rv in vitro, and out of these 3 compounds showed MIC of 3.12 microg/mL whereas 2 compounds showed MIC of 12.5 microg/mL. All the active compounds were found to be nontoxic in Vero cell lines and mice bone marrow macrophages. All the identified hits highlighted a key hydrogen bonding interaction with Arg74. The observed pi-stacking interaction with Phe70 was also produced by the identified hits. These hits represent promising starting points for structural optimization in hit-to-lead development.
鉴于结核分枝杆菌的多重耐药性在全球范围内传播,迫切需要发现具有新结构的抗结核药物。结核分枝杆菌的胸苷一磷酸激酶(TMPKmt)是抗结核化疗的一个有吸引力的靶点。我们在此报告使用虚拟筛选方法鉴定靶向TMPKmt的强效抗结核化合物。为此,我们基于底物和已知的TMPKmt抑制剂建立了药效团假说,并用于筛选Maybridge小分子数据库。然后进行分子对接,以便根据化合物与TMPKmt活性位点形成有利相互作用的能力来选择化合物。此外,我们使用结构相互作用指纹进行直接加权,将更多知识纳入基于结构的虚拟筛选。获得了8种化合物,并对其抗结核分枝杆菌H37Rv的体外抗结核活性进行了评估,其中3种化合物的最低抑菌浓度(MIC)为3.12μg/mL,而2种化合物的MIC为12.5μg/mL。所有活性化合物在Vero细胞系和小鼠骨髓巨噬细胞中均无毒。所有鉴定出的活性化合物均突出显示与Arg74存在关键氢键相互作用。鉴定出的活性化合物还产生了与Phe70的π-堆积相互作用。这些活性化合物代表了从活性化合物到先导化合物开发中结构优化的有希望的起点。