Liu Zhenming, Huang Changkang, Fan Keqiang, Wei Ping, Chen Hao, Liu Shiyong, Pei Jianfeng, Shi Lei, Li Bo, Yang Kun, Liu Ying, Lai Luhua
State Key Laboratory for Structural Chemistry of Unstable and Stable Species, College of Chemistry and Molecular Engineering, Peking University, Beijing 100871, China.
J Chem Inf Model. 2005 Jan-Feb;45(1):10-17. doi: 10.1021/ci049809b.
The SARS coronavirus 3C-like proteinase is considered as a potential drug design target for the treatment of severe acute respiratory syndrome (SARS). Owing to the lack of available drugs for the treatment of SARS, the discovery of inhibitors for SARS coronavirus 3C-like proteinase that can potentially be optimized as drugs appears to be highly desirable. We have built a "flexible" three-dimensional model for SARS 3C-like proteinase by homology modeling and multicanonical molecular dynamics method and used the model for virtual screening of chemical databases. After Dock procedures, strategies including pharmocophore model, consensus scoring, and "drug-like" filters were applied in order to accelerate the process and improve the success rate of virtual docking screening hit lists. Forty compounds were purchased and tested by HPLC and colorimetric assay against SARS 3C-like proteinase. Three of them including calmidazolium, a well-known antagonist of calmodulin, were found to inhibit the enzyme with an apparent K(i) from 61 to 178 microM. These active compounds and their binding modes provide useful information for understanding the binding sites and for further selective drug design against SARS and other coronavirus.
严重急性呼吸综合征冠状病毒3C样蛋白酶被认为是治疗严重急性呼吸综合征(SARS)的一个潜在药物设计靶点。由于缺乏治疗SARS的可用药物,发现能够潜在优化为药物的严重急性呼吸综合征冠状病毒3C样蛋白酶抑制剂似乎非常必要。我们通过同源建模和多规范分子动力学方法构建了严重急性呼吸综合征3C样蛋白酶的“柔性”三维模型,并将该模型用于化学数据库的虚拟筛选。在对接程序之后,应用包括药效团模型、一致性评分和“类药”筛选在内的策略,以加速该过程并提高虚拟对接筛选命中列表的成功率。购买了40种化合物,并通过高效液相色谱法和比色法针对严重急性呼吸综合征3C样蛋白酶进行测试。发现其中3种化合物,包括钙调蛋白的著名拮抗剂卡米达唑,能抑制该酶,其表观抑制常数(K(i))为61至178微摩尔。这些活性化合物及其结合模式为理解结合位点以及进一步针对SARS和其他冠状病毒进行选择性药物设计提供了有用信息。