Coronavirus disease 2019 (COVID-19) is a major threat worldwide due to its fast spreading. As yet, there are no established drugs available. Speeding up drug discovery is urgently required. We applied a workflow of combined in silico methods (virtual drug screening, molecular docking and supervised machine learning algorithms) to identify novel drug candidates against COVID-19. We constructed chemical libraries consisting of FDA-approved drugs for drug repositioning and of natural compound datasets from literature mining and the ZINC database to select compounds interacting with SARS-CoV-2 target proteins (spike protein, nucleocapsid protein, and 2′-o-ribose methyltransferase). Supported by the supercomputer MOGON, candidate compounds were predicted as presumable SARS-CoV-2 inhibitors. Interestingly, several approved drugs against hepatitis C virus (HCV), another enveloped (−) ssRNA virus (paritaprevir, simeprevir and velpatasvir) as well as drugs against transmissible diseases, against cancer, or other diseases were identified as candidates against SARS-CoV-2. This result is supported by reports that anti-HCV compounds are also active against Middle East Respiratory Virus Syndrome (MERS) coronavirus. The candidate compounds identified by us may help to speed up the drug development against SARS-CoV-2.
【저자키워드】 COVID-19, Infectious diseases, artificial intelligence, COVID-19, Coronavirus disease 2019, HIV, Human immunodeficiency virus, natural products, Chemotherapy, ACE2, angiotensin converting enzyme 2, SARS, Severe acute respiratory syndrome, ROC, Receiver Operating Characteristic, MERS, Middle East respiratory syndrome, AUC, area under the curve, WHO, World Health Organization, FDA, Food and Drug Administration, LBE, lowest binding energy, ssRNA, single-stranded RNA virus,