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Screening of Therapeutic Agents for COVID-19 Using Machine Learning and Ensemble Docking Studies

机译:使用机器学习和集合对接研究筛选Covid-19治疗剂

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The current pandemic demands a search for therapeutic agents against the novel coronavirus SARS-CoV-2. Here, we present an efficient computational strategy that combines machine learning (ML)-based models and high-fidelity ensemble docking studies to enable rapid screening of possible therapeutic ligands. Targeting the binding affinity of molecules for either the isolated SARS-CoV-2 S-protein at its host receptor region or the S-protein:human ACE2 interface complex, we screen ligands from drug and biomolecule data sets that can potentially limit and/or disrupt the host-virus interactions. Top scoring one hundred eighty-seven ligands (with 75 approved by the Food and Drug Administration) are further validated by all atom docking studies. Important molecular descriptors ((2)chi(n), topological surface area, and ring count) and promising chemical fragments (oxolane, hydroxy, and imidazole) are identified to guide future experiments. Overall, this work expands our knowledge of small-molecule treatment against COVID-19 and provides a general screening pathway (combining quick ML models with expensive high-fidelity simulations) for targeting several chemical/biochemical problems.
机译:目前的大流行要求寻找针对新型冠状病毒SARS-COV-2的治疗剂。在这里,我们提出了一种有效的计算策略,将机器学习(ML)的模型和高保真集合对接研究结合起来,以便能够快速筛选可能的治疗配体。靶向分子在其宿主受体区域或S-蛋白中分离的SAR-COV-2 S-蛋白的结合亲和力:人ACE2界面复合物,我们将配体与药物和生物分子数据组筛网,可以潜在限制和/或扰乱宿主病毒交互。所有原子对接研究都进一步验证了一百八十七个配体(有75名有75名批准的食物和药物管理局)。重要的分子描述夹((2)CHI(N),拓扑表面积和环数)和有前途的化学碎片(Oxolane,羟基和咪唑)被鉴定以引导未来的实验。总体而言,这项工作扩大了我们对Covid-19对小分子处理的了解,并提供了一种通用筛查途径(将Quick ML模型与昂贵的高保真仿真组合),以靶向几种化学/生物化学问题。

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