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用于发现和优化受天然产物启发的 SARS-CoV-2 2'--甲基转移酶抑制剂的信息学和计算方法。

Informatics and Computational Approaches for the Discovery and Optimization of Natural Product-Inspired Inhibitors of the SARS-CoV-2 2'--Methyltransferase.

机构信息

Department of Drug Discovery, Biomedical Sciences and Public Health, Medical University of South Carolina, Charleston, South Carolina 29425, United States.

Department of Chemistry, University of Malaya, 50603 Kuala Lumpur, Malaysia.

出版信息

J Nat Prod. 2024 Feb 23;87(2):217-227. doi: 10.1021/acs.jnatprod.3c00875. Epub 2024 Jan 19.

Abstract

The urgent need for new classes of orally available, safe, and effective antivirals─covering a breadth of emerging viruses─is evidenced by the loss of life and economic challenges created by the HIV-1 and SARS-CoV-2 pandemics. As frontline interventions, small-molecule antivirals can be deployed prophylactically or postinfection to control the initial spread of outbreaks by reducing transmissibility and symptom severity. Natural products have an impressive track record of success as prototypic antivirals and continue to provide new drugs through synthesis, medicinal chemistry, and optimization decades after discovery. Here, we demonstrate an approach using computational analysis typically used for rational drug design to identify and develop natural product-inspired antivirals. This was done with the goal of identifying natural product prototypes to aid the effort of progressing toward safe, effective, and affordable broad-spectrum inhibitors of replication by targeting the highly conserved RNA 2'--methyltransferase (2'-O-MTase). Machaeriols RS-1 () and RS-2 () were identified using a previously outlined informatics approach to first screen for natural product prototypes, followed by -guided synthesis. Both molecules are based on a rare natural product group. The machaeriols (-), isolated from the genus , endemic to Amazonia, inhibited the SARS-CoV-2 2'-O-MTase more potently than the positive control, Sinefungin (), and modeling suggests distinct molecular interactions. This report highlights the potential of computationally driven screening to leverage natural product libraries and improve the efficiency of isolation or synthetic analog development.

摘要

迫切需要新的口服、安全且有效的抗病毒药物类别 - 涵盖广泛的新兴病毒 - 这一点可以从 HIV-1 和 SARS-CoV-2 大流行造成的生命损失和经济挑战中得到证明。作为一线干预措施,小分子抗病毒药物可以预防性使用或在感染后使用,通过降低传染性和症状严重程度来控制疫情的初始传播。天然产物作为原型抗病毒药物取得了令人瞩目的成功记录,并在发现几十年后通过合成、药物化学和优化继续提供新药。在这里,我们展示了一种使用计算分析的方法,该方法通常用于合理药物设计,以识别和开发受天然产物启发的抗病毒药物。这是为了确定天然产物原型,以帮助努力开发针对高度保守的 RNA 2'-甲基转移酶(2'-O-MTase)的安全、有效和负担得起的广谱复制抑制剂。使用先前概述的信息学方法,首先筛选天然产物原型,然后进行指导合成,鉴定出 Machaeriols RS-1()和 RS-2()。这两种分子都基于一种罕见的天然产物群。Machaeriols (-)从亚马逊地区特有的属中分离出来,对 SARS-CoV-2 2'-O-MTase 的抑制作用比阳性对照 Sinefungin()更强,而且建模表明存在不同的分子相互作用。本报告强调了计算驱动筛选利用天然产物库和提高分离或合成类似物开发效率的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e5f8/10898454/99c4101a2f3f/np3c00875_0001.jpg

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