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Attacking COVID-19 Progression Using Multi-Drug Therapy for Synergetic Target Engagement

机译:使用多药物治疗进行协同目标参与的多药物治疗进展

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摘要

COVID-19 is a devastating respiratory and inflammatory illness caused by a new coronavirus that is rapidly spreading throughout the human population. Over the past 12 months, severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), the virus responsible for COVID-19, has already infected over 160 million (>20% located in United States) and killed more than 3.3 million people around the world (>20% deaths in USA). As we face one of the most challenging times in our recent history, there is an urgent need to identify drug candidates that can attack SARS-CoV-2 on multiple fronts. We have therefore initiated a computational dynamics drug pipeline using molecular modeling, structure simulation, docking and machine learning models to predict the inhibitory activity of several million compounds against two essential SARS-CoV-2 viral proteins and their host protein interactors—S/Ace2, Tmprss2, Cathepsins L and K, and Mpro—to prevent binding, membrane fusion and replication of the virus, respectively. All together, we generated an ensemble of structural conformations that increase high-quality docking outcomes to screen over >6 million compounds including all FDA-approved drugs, drugs under clinical trial (>3000) and an additional >30 million selected chemotypes from fragment libraries. Our results yielded an initial set of 350 high-value compounds from both new and FDA-approved compounds that can now be tested experimentally in appropriate biological model systems. We anticipate that our results will initiate screening campaigns and accelerate the discovery of COVID-19 treatments.
机译:Covid-19是由新的冠状病毒引起的症状和炎症性疾病,这些冠状病毒在整个人口中迅速蔓延。在过去的12个月内,严重急性呼吸综合征冠状病毒2(SARS-COV-2),负责Covid-19的病毒已经感染了超过1.6亿(20%的位于美国),并造成超过330万人世界各地(>美国死亡人数)。随着我们近期历史上最具挑战性的时期之一,迫切需要识别可以在多个前面攻击SARS-COV-2的药物候选人。因此,我们已经使用分子建模,结构模拟,对接和机器学习模型开始计算动态药物管道,以预测对两个基本SARS-COV-2病毒蛋白及其宿主蛋白互动仪-S / Ace2的抑制活性为几百万化合物的抑制活性, TMPRSS2,Codepsins L和K,以及MPRO - 以防止粘合,膜融合和病毒复制。我们都在一起,我们产生了结构构象的集合,这些结构构象可以增加高质量的对接结果,以筛选超过600万种化合物,包括所有FDA批准的药物,临床试验中的药物(> 3000)和来自片段文库的另外> 3000万元的嗜型化学品。我们的结果产生了来自新的和FDA批准的化合物的初始350个高价值化合物,现在可以在适当的生物模型系统中进行实验测试。我们预计我们的结果将启动筛选活动并加速Covid-19治疗的发现。

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