Faculty of Medicine and Health Technology, Tampere University, Tampere, Finland.
BioMediTech Institute, Tampere University, Tampere, Finland.
Brief Bioinform. 2022 Jan 17;23(1). doi: 10.1093/bib/bbab507.
The pharmacological arsenal against the COVID-19 pandemic is largely based on generic anti-inflammatory strategies or poorly scalable solutions. Moreover, as the ongoing vaccination campaign is rolling slower than wished, affordable and effective therapeutics are needed. To this end, there is increasing attention toward computational methods for drug repositioning and de novo drug design. Here, multiple data-driven computational approaches are systematically integrated to perform a virtual screening and prioritize candidate drugs for the treatment of COVID-19. From the list of prioritized drugs, a subset of representative candidates to test in human cells is selected. Two compounds, 7-hydroxystaurosporine and bafetinib, show synergistic antiviral effects in vitro and strongly inhibit viral-induced syncytia formation. Moreover, since existing drug repositioning methods provide limited usable information for de novo drug design, the relevant chemical substructures of the identified drugs are extracted to provide a chemical vocabulary that may help to design new effective drugs.
针对 COVID-19 大流行的药物库主要基于通用的抗炎策略或扩展性差的解决方案。此外,由于正在进行的疫苗接种运动进展不如预期顺利,因此需要负担得起且有效的治疗方法。为此,人们越来越关注药物重定位和从头药物设计的计算方法。在这里,多种基于数据的计算方法被系统地整合在一起,以进行虚拟筛选,并为 COVID-19 的治疗确定候选药物。从优先药物清单中,选择了一组具有代表性的候选药物进行人体细胞测试。两种化合物,7-羟基星形孢菌素和巴非替尼,在体外显示出协同的抗病毒作用,并强烈抑制病毒诱导的合胞体形成。此外,由于现有的药物重定位方法为从头药物设计提供的可用信息有限,因此提取了已识别药物的相关化学亚结构,以提供一个可能有助于设计新的有效药物的化学词汇。