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通过基于结构的虚拟筛选、分子对接和分子动力学模拟,从内部、Chembridge和Zinc数据库中识别针对SARS COVID-19主要蛋白酶靶点的计算机辅助先导可成药化合物。

In-Silico Lead Druggable Compounds Identification against SARS COVID-19 Main Protease Target from In-House, Chembridge and Zinc Databases by Structure-Based Virtual Screening, Molecular Docking and Molecular Dynamics Simulations.

作者信息

Ghufran Mehreen, Ullah Mehran, Khan Haider Ali, Ghufran Sabreen, Ayaz Muhammad, Siddiq Muhammad, Abbas Syed Qamar, Hassan Syed Shams Ul, Bungau Simona

机构信息

Department of Pathology, Medical Teaching Institution Bacha Khan Medical College (BKMC) Mardan, Mardan 23200, Pakistan.

District Medical Officer, Sehat Sahulat Program (SSP), KPK, Mardan 23200, Pakistan.

出版信息

Bioengineering (Basel). 2023 Jan 11;10(1):100. doi: 10.3390/bioengineering10010100.

Abstract

Pharmacological strategies to lower the viral load among patients suffering from severe diseases were researched in great detail during the SARS-CoV-2 outbreak. The viral protease M (3CLpro) is necessary for viral replication and is among the main therapeutic targets proposed, thus far. To stop the pandemic from spreading, researchers are working to find more effective M inhibitors against SARS-CoV-2. The 33.8 kDa M protease of SARS-CoV-2, being a nonhuman homologue, has the possibility of being utilized as a therapeutic target against coronaviruses. To develop drug-like compounds capable of preventing the replication of SARS-main CoV-2's protease (M), a computer-aided drug design (CADD) approach is extremely viable. Using MOE, structure-based virtual screening (SBVS) of in-house and commercial databases was carried out using SARS-CoV-2 proteins. The most promising hits obtained during virtual screening (VS) were put through molecular docking with the help of MOE. The virtual screening yielded 3/5 hits (in-house database) and 56/66 hits (commercial databases). Finally, 3/5 hits (in-house database), 3/5 hits (ZINC database), and 2/7 hits (ChemBridge database) were chosen as potent lead compounds using various scaffolds due to their considerable binding affinity with M protein. The outcomes of SBVS were then validated using an analysis based on molecular dynamics simulation (MDS). The complexes' stability was tested using MDS and post-MDS. The most promising candidates were found to exhibit a high capacity for fitting into the protein-binding pocket and interacting with the catalytic dyad. At least one of the scaffolds selected will possibly prove useful for future research. However, further scientific confirmation in the form of preclinical and clinical research is required before implementation.

摘要

在新冠疫情期间,对降低重症患者病毒载量的药理策略进行了深入研究。病毒蛋白酶M(3CLpro)是病毒复制所必需的,也是迄今为止提出的主要治疗靶点之一。为阻止疫情蔓延,研究人员正在努力寻找更有效的抗新冠病毒M抑制剂。新冠病毒33.8 kDa的M蛋白酶作为非人类同源物,有可能被用作抗冠状病毒的治疗靶点。为开发能够阻止新冠病毒主要蛋白酶(M)复制的类药物化合物,计算机辅助药物设计(CADD)方法非常可行。使用分子操作环境(MOE),利用新冠病毒蛋白对内部和商业数据库进行基于结构的虚拟筛选(SBVS)。在虚拟筛选(VS)过程中获得的最有前景的命中化合物借助MOE进行分子对接。虚拟筛选在内部数据库中产生了3/5个命中化合物,在商业数据库中产生了56/66个命中化合物。最后,由于它们与M蛋白具有相当大的结合亲和力,使用各种支架将内部数据库中的3/5个命中化合物、锌数据库中的3/5个命中化合物和ChemBridge数据库中的2/7个命中化合物选为有效的先导化合物。然后使用基于分子动力学模拟(MDS)的分析对SBVS的结果进行验证。使用MDS和MDS后分析测试复合物的稳定性。发现最有前景的候选化合物具有很高的能力,能够适配到蛋白质结合口袋并与催化二元组相互作用。所选的至少一种支架可能对未来研究有用。然而,在实施之前需要以临床前和临床研究的形式进行进一步的科学验证。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b7ea/9854631/fcfc3732e6cc/bioengineering-10-00100-g001.jpg

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