通过深度学习方法从化学指纹中筛选抗炎、抗凝和呼吸药物对SARS-CoV-2 3CLpro的抑制作用

Elena Caires Silveira
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引用次数: 1

摘要

背景:严重急性呼吸综合征冠状病毒2型(SARS-CoV-2)是2019冠状病毒病(COVID-19)的病原,它触发的病理生理过程不仅与病毒感染机制有关,而且与宿主反应模式有关。药物再利用是快速识别SARS-CoV-2感染治疗方法的一种很有前途的策略,并且可以利用几个有吸引力的分子病毒靶点。其中,3CL蛋白酶是一个非常有趣的潜在靶点。目的:基于化学指纹图谱在抗炎、抗凝血和呼吸系统药物中筛选潜在的3CLpro抑制剂化合物。方法:筛选基于药物性质预测框架,其中评估的性质是抑制3CLpro蛋白活性的能力,并使用密集神经网络进行预测,并根据生物测定数据进行训练和验证。结果:在验证集和测试集上,模型曲线下面积分别为98.2和76.3,特异性均较高(98.5%和94.7%)。在筛选的1278种化合物中,该模型显示四种抗炎药、两种抗凝血药和一种呼吸药是潜在的3CLpro抑制剂。结论:这些发现为新冠肺炎患者的治疗提供了可能的协同效应,并为体外和体内研究提供了潜在的方向,这对验证其结果是必不可少的。
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Screening Anti-inflammatory, Anticoagulant, and Respiratory Agents for SARS-CoV-2 3CLpro Inhibition from Chemical Fingerprints Through a Deep Learning Approach.

Background: Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), the etiologic agent of coronavirus disease 2019 (COVID-19), triggers a pathophysiological process linked not only to viral mechanisms of infectivity, but also to the pattern of host response. Drug repurposing is a promising strategy for rapid identification of treatments for SARS-CoV-2 infection, and several attractive molecular viral targets can be exploited. Among those, 3CL protease is a potential target of great interest.

Objective: The objective of the study was to screen potential 3CLpro inhibitors compounds based on chemical fingerprints among anti-inflammatory, anticoagulant, and respiratory system agents.

Methods: The screening was developed based on a drug property prediction framework, in which the evaluated property was the ability to inhibit the activity of the 3CLpro protein, and the predictions were performed using a dense neural network trained and validated on bioassay data.

Results: On the validation and test set, the model obtained area under the curve values of 98.2 and 76.3, respectively, demonstrating high specificity for both sets (98.5% and 94.7%). Regarding the 1278 compounds screened, the model indicated four anti-inflammatory agents, two anticoagulants, and one respiratory agent as potential 3CLpro inhibitors.

Conclusions: Those findings point to a possible desirable synergistic effect in the management of patients with COVID-19 and provide potential directions for in vitro and in vivo research, which are indispensable for the validation of their results.

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来源期刊
CiteScore
3.00
自引率
0.00%
发文量
60
审稿时长
>12 weeks
期刊介绍: The Revista de Investigación Clínica – Clinical and Translational Investigation (RIC-C&TI), publishes original clinical and biomedical research of interest to physicians in internal medicine, surgery, and any of their specialties. The Revista de Investigación Clínica – Clinical and Translational Investigation is the official journal of the National Institutes of Health of Mexico, which comprises a group of Institutes and High Specialty Hospitals belonging to the Ministery of Health. The journal is published both on-line and in printed version, appears bimonthly and publishes peer-reviewed original research articles as well as brief and in-depth reviews. All articles published are open access and can be immediately and permanently free for everyone to read and download. The journal accepts clinical and molecular research articles, short reports and reviews. Types of manuscripts: – Brief Communications – Research Letters – Original Articles – Brief Reviews – In-depth Reviews – Perspectives – Letters to the Editor
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