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通过计算方法寻找 SARS-CoV-2 治疗方法。

Looking for SARS-CoV-2 Therapeutics Through Computational Approaches.

机构信息

Institute of Biostructures and Bioimaging, National Research Council of Italy (CNR-IBB), Naples, Italy.

出版信息

Curr Med Chem. 2023;30(28):3158-3214. doi: 10.2174/0929867329666221004104430.

Abstract

BACKGROUND

In the last few years, in silico tools, including drug repurposing coupled with structure-based virtual screening, have been extensively employed to look for anti-COVID-19 agents.

OBJECTIVE

The present review aims to provide readers with a portrayal of computational approaches that could be conducted more quickly and cheaply to novel anti-viral agents. Particular attention is given to docking-based virtual screening.

METHODS

The World Health Organization website was consulted to gain the latest information on SARS-CoV-2, its novel variants and their interplay with COVID-19 severity and treatment options. The Protein Data Bank was explored to look for 3D coordinates of SARS-CoV-2 proteins in their free and bound states, in the wild-types and mutated forms. Recent literature related to in silico studies focused on SARS-CoV-2 proteins was searched through PubMed.

RESULTS

A large amount of work has been devoted thus far to computationally targeting viral entry and searching for inhibitors of the S-protein/ACE2 receptor complex. Another large area of investigation is linked to in silico identification of molecules able to block viral proteases -including Mpro- thus avoiding maturation of proteins crucial for virus life cycle. Such computational studies have explored the inhibitory potential of the most diverse molecule databases (including plant extracts, dietary compounds, FDA approved drugs).

CONCLUSION

More efforts need to be dedicated in the close future to experimentally validate the therapeutic power of in silico identified compounds in order to catch, among the wide ensemble of computational hits, novel therapeutics to prevent and/or treat COVID- 19.

摘要

背景

在过去几年中,包括药物重定位和基于结构的虚拟筛选在内的计算工具已被广泛用于寻找抗 COVID-19 药物。

目的

本综述旨在为读者提供一种能够更快、更廉价地进行新型抗病毒药物研究的计算方法。特别关注基于对接的虚拟筛选。

方法

世界卫生组织的网站被查询以获取有关 SARS-CoV-2、其新型变体及其与 COVID-19 严重程度和治疗选择相互作用的最新信息。蛋白质数据库被探索以寻找 SARS-CoV-2 蛋白在野生型和突变型中的自由态和结合态的 3D 坐标。通过 PubMed 搜索了与 SARS-CoV-2 蛋白的计算研究相关的最新文献。

结果

迄今为止,已经投入了大量工作来计算靶向病毒进入并寻找 S 蛋白/ACE2 受体复合物抑制剂。另一个大的研究领域与通过计算识别能够阻断病毒蛋白酶(包括 Mpro)的分子有关,从而避免对病毒生命周期至关重要的蛋白质成熟。这些计算研究探索了最广泛的分子数据库(包括植物提取物、膳食化合物、FDA 批准的药物)的抑制潜力。

结论

在不久的将来,需要投入更多的努力来验证通过计算鉴定的化合物的治疗效果,以便在广泛的计算命中中捕捉到预防和/或治疗 COVID-19 的新型治疗方法。

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