论文标题
SARS-COV-2主要蛋白酶MPRO的量子模拟能够准确地对不同的配体进行评分
Quantum Simulations of SARS-CoV-2 Main Protease Mpro Enable Accurate Scoring of Diverse Ligands
论文作者
论文摘要
COVID-19的大流行导致了前所未有的努力,以识别可以降低其相关发病率/死亡率的药物。计算化学方法比实验对应物更快地将潜在的候选者分列。这些方法已被广泛用于搜索可以抑制SARS-COV-2复制周期中涉及的关键蛋白质的小分子。一个重要的目标是SARS-COV-2主要蛋白酶MPRO,一种酶,将病毒多蛋白切割成病毒复制和转录所需的个体蛋白质。不幸的是,由于配体支架和不同电荷状态,标准的计算筛选方法在将多种配体对受体排名为受体方面面临困难。在这里,我们描述了MPRO与各种配体复合物中MPRO的全密度量子力学(DFT/QM)模拟,以获得绝对的配体结合能。我们的计算是通过在Amazon Web Services(AWS)上运行在计算资源(AWS)上运行的新的云本地并行DFT/QM实现来实现的。我们获得的结果是有希望的:该方法非常有能力为其与MPRO的亲和力评分非常多样化的现有药物化合物,并暗示DFT/QM方法可能更广泛地适用于针对该目标的筛选。此外,每个DFT/QM模拟每个配体仅需要约1小时(壁时钟时间)。快速的周转时间提高了在配体多样性至关重要的阶段,大规模量子力学在药物发现管道中广泛应用的实际可能性。
The COVID-19 pandemic has led to unprecedented efforts to identify drugs that can reduce its associated morbidity/mortality rate. Computational chemistry approaches hold the potential for triaging potential candidates far more quickly than their experimental counterparts. These methods have been widely used to search for small molecules that can inhibit critical proteins involved in the SARS-CoV-2 replication cycle. An important target is the SARS-CoV-2 main protease Mpro, an enzyme that cleaves the viral polyproteins into individual proteins required for viral replication and transcription. Unfortunately, standard computational screening methods face difficulties in ranking diverse ligands to a receptor due to disparate ligand scaffolds and varying charge states. Here, we describe full density functional quantum mechanical (DFT/QM) simulations of Mpro in complex with various ligands to obtain absolute ligand binding energies. Our calculations are enabled by a new cloud-native parallel DFT/QM implementation running on computational resources from Amazon Web Services (AWS). The results we obtain are promising: the approach is quite capable of scoring a very diverse set of existing drug compounds for their affinities to Mpro and suggest the DFT/QM approach is potentially more broadly applicable to repurpose screening against this target. In addition, each DFT/QM simulation required only ~1 hour (wall clock time) per ligand. The fast turnaround time raises the practical possibility of a broad application of large-scale quantum mechanics in the drug discovery pipeline at stages where ligand diversity is essential.