Soleymani Niousha, Ahmadi Shahin, Shiri Fereshteh, Almasirad Ali
Department of Medicinal Chemistry, Faculty of Pharmacy, Tehran Medical Sciences, Islamic Azad University, Tehran, Iran.
Department of Chemistry, Faculty of Pharmaceutical Chemistry, Tehran Medical Sciences, Islamic Azad University, Tehran, Iran.
BMC Chem. 2023 Apr 7;17(1):32. doi: 10.1186/s13065-023-00947-w.
The 3C-like protease (3CL), known as the main protease of SARS-COV, plays a vital role in the viral replication cycle and is a critical target for the development of SARS inhibitor. Comparative sequence analysis has shown that the 3CL of two coronaviruses, SARS-CoV-2 and SARS-CoV, show high structural similarity, and several common features are shared among the substrates of 3CL in different coronaviruses. The goal of this study is the development of validated QSAR models by CORAL software and Monte Carlo optimization to predict the inhibitory activity of 81 isatin and indole-based compounds against SARS CoV 3CL. The models were built using a newer objective function optimization of this software, known as the index of ideality correlation (IIC), which provides favorable results. The entire set of molecules was randomly divided into four sets including: active training, passive training, calibration and validation sets. The optimal descriptors were selected from the hybrid model by combining SMILES and hydrogen suppressed graph (HSG) based on the objective function. According to the model interpretation results, eight synthesized compounds were extracted and introduced from the ChEMBL database as good SARS CoV 3CL inhibitor. Also, the activity of the introduced molecules further was supported by docking studies using 3CL of both SARS-COV-1 and SARS-COV-2. Based on the results of ADMET and OPE study, compounds CHEMBL4458417 and CHEMBL4565907 both containing an indole scaffold with the positive values of drug-likeness and the highest drug-score can be introduced as selected leads.
3C样蛋白酶(3CL)是严重急性呼吸综合征冠状病毒(SARS-CoV)的主要蛋白酶,在病毒复制周期中起着至关重要的作用,是开发SARS抑制剂的关键靶点。比较序列分析表明,两种冠状病毒严重急性呼吸综合征冠状病毒2(SARS-CoV-2)和SARS-CoV的3CL具有高度的结构相似性,不同冠状病毒中3CL的底物具有几个共同特征。本研究的目标是通过CORAL软件和蒙特卡罗优化开发经过验证的定量构效关系(QSAR)模型,以预测81种异吲哚酮和吲哚类化合物对SARS-CoV 3CL的抑制活性。这些模型是使用该软件的一种更新的目标函数优化方法构建的,称为理想相关性指数(IIC),该方法提供了良好的结果。将整个分子集随机分为四组,包括:活性训练集、被动训练集、校准集和验证集。基于目标函数,通过结合SMILES和氢抑制图(HSG)从混合模型中选择最佳描述符。根据模型解释结果,从ChEMBL数据库中提取并引入了8种合成化合物作为良好的SARS-CoV 3CL抑制剂。此外,使用SARS-CoV-1和SARS-CoV-2的3CL进行对接研究进一步支持了所引入分子的活性。基于药物代谢动力学、药物效应动力学和有机磷效应研究的结果,化合物CHEMBL4458417和CHEMBL4565907均含有吲哚支架,具有类药性正值和最高药物得分,可作为选定的先导化合物引入。