鉴定抗COVID-19 3CL蛋白酶药物相似先导化合物的杂交方法

Imra Aqeel, Muhammad Bilal, Abdul Majid, Tuba Majid
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引用次数: 3

摘要

SARS-CoV-2是一种基于rna的阳性单链大分子,自2022年6月以来已造成630多万人死亡。此外,疫情封锁扰乱了全球供应链,间接给全球经济造成了毁灭性破坏。设计和开发针对这种病毒及其各种变体的药物至关重要。在本文中,我们开发了一个基于计算机研究的混合框架,以重新利用现有的治疗药物,寻找可以治愈COVID-19的药物样生物活性分子。第一步,从ChEMBL数据库中检索到针对SARS冠状病毒3CL蛋白酶的共133个药物相似生物活性分子。基于标准IC50,数据集分为三类:活动、非活动和中间。我们的对比分析表明,与基于梯度增强、XGBoost、支持向量、决策树和随机森林的回归模型相比,基于额外树回归(ETR)的QSAR模型对化合物生物活性的预测结果有所改善。ADMET分析鉴定了13个生物活性分子,其ChEMBL id为187460、190743、222234、222628、222735、222769、222840、222893、225515、358279、363535、365134和426898。这些分子是SARS-CoV-2 3CL蛋白酶非常合适的候选药物。下一步,通过分子对接计算生物活性分子的结合亲和力,最终筛选出6个生物活性分子,其ChEMBL编号分别为187460、222769、225515、358279、363535和365134。这些分子可能是SARS-CoV-2的合适候选药物。预计药理学家和/或药物制造商将进一步研究这六种分子,以找到适合SARS-CoV-2的候选药物。他们可以在下游药物开发阶段采用这些有前途的化合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Hybrid Approach to Identifying Druglikeness Leading Compounds against COVID-19 3CL Protease.

Hybrid Approach to Identifying Druglikeness Leading Compounds against COVID-19 3CL Protease.

Hybrid Approach to Identifying Druglikeness Leading Compounds against COVID-19 3CL Protease.

Hybrid Approach to Identifying Druglikeness Leading Compounds against COVID-19 3CL Protease.

SARS-CoV-2 is a positive single-strand RNA-based macromolecule that has caused the death of more than 6.3 million people since June 2022. Moreover, by disturbing global supply chains through lockdowns, the virus has indirectly caused devastating damage to the global economy. It is vital to design and develop drugs for this virus and its various variants. In this paper, we developed an in silico study-based hybrid framework to repurpose existing therapeutic agents in finding drug-like bioactive molecules that would cure COVID-19. In the first step, a total of 133 drug-likeness bioactive molecules are retrieved from the ChEMBL database against SARS coronavirus 3CL Protease. Based on the standard IC50, the dataset is divided into three classes: active, inactive, and intermediate. Our comparative analysis demonstrated that the proposed Extra Tree Regressor (ETR)-based QSAR model has improved prediction results related to the bioactivity of chemical compounds as compared to Gradient Boosting-, XGBoost-, Support Vector-, Decision Tree-, and Random Forest-based regressor models. ADMET analysis is carried out to identify thirteen bioactive molecules with the ChEMBL IDs 187460, 190743, 222234, 222628, 222735, 222769, 222840, 222893, 225515, 358279, 363535, 365134, and 426898. These molecules are highly suitable drug candidates for SARS-CoV-2 3CL Protease. In the next step, the efficacy of the bioactive molecules is computed in terms of binding affinity using molecular docking, and then six bioactive molecules are shortlisted, with the ChEMBL IDs 187460, 222769, 225515, 358279, 363535, and 365134. These molecules can be suitable drug candidates for SARS-CoV-2. It is anticipated that the pharmacologist and/or drug manufacturer would further investigate these six molecules to find suitable drug candidates for SARS-CoV-2. They can adopt these promising compounds for their downstream drug development stages.

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