Ab Ghani Nur Syatila, Emrizal Reeki, Makmur Haslina, Firdaus-Raih Mohd
Institute of Systems Biology, Universiti Kebangsaan Malaysia, 43600 UKM Bangi, Selangor, Malaysia.
Department of Applied Physics, Faculty of Science and Technology, Universiti Kebangsaan Malaysia, 43600 UKM Bangi, Selangor, Malaysia.
Comput Struct Biotechnol J. 2020;18:2931-2944. doi: 10.1016/j.csbj.2020.10.013. Epub 2020 Oct 21.
Structures of protein-drug-complexes provide an atomic level profile of drug-target interactions. In this work, the three-dimensional arrangements of amino acid side chains in known drug binding sites (substructures) were used to search for similarly arranged sites in SARS-CoV-2 protein structures in the Protein Data Bank for the potential repositioning of approved compounds. We were able to identify 22 target sites for the repositioning of 16 approved drug compounds as potential therapeutics for COVID-19. Using the same approach, we were also able to investigate the potentially promiscuous binding of the 16 compounds to off-target sites that could be implicated in toxicity and side effects that had not been provided by any previous studies. The investigations of binding properties in disease-related proteins derived from the comparison of amino acid substructure arrangements allows for effective mechanism driven decision making to rank and select only the compounds with the highest potential for success and safety to be prioritized for clinical trials or treatments. The intention of this work is not to explicitly identify candidate compounds but to present how an integrated drug repositioning and potential toxicity pipeline using side chain similarity searching algorithms are of great utility in epidemic scenarios involving novel pathogens. In the case of the COVID-19 pandemic caused by the SARS-CoV-2 virus, we demonstrate that the pipeline can identify candidate compounds quickly and sustainably in combination with associated risk factors derived from the analysis of potential off-target site binding by the compounds to be repurposed.
蛋白质-药物复合物的结构提供了药物-靶点相互作用的原子水平概况。在这项工作中,已知药物结合位点(子结构)中氨基酸侧链的三维排列被用于在蛋白质数据库中的SARS-CoV-2蛋白质结构中搜索排列相似的位点,以寻找已批准化合物的潜在重新定位。我们能够确定16种已批准药物化合物重新定位的22个靶点,作为COVID-19的潜在治疗方法。使用相同的方法,我们还能够研究这16种化合物与可能导致毒性和副作用的脱靶位点的潜在混杂结合,而此前的任何研究都未涉及这些方面。通过比较氨基酸子结构排列对疾病相关蛋白质中结合特性进行研究,有助于进行有效的机制驱动决策,从而对化合物进行排名和选择,仅优先考虑具有最高成功和安全潜力的化合物用于临床试验或治疗。这项工作的目的不是明确识别候选化合物,而是展示如何使用侧链相似性搜索算法的综合药物重新定位和潜在毒性流程在涉及新型病原体的疫情场景中具有巨大效用。在由SARS-CoV-2病毒引起的COVID-19大流行的情况下,我们证明该流程可以结合通过分析待重新利用化合物的潜在脱靶位点结合得出的相关风险因素,快速且可持续地识别候选化合物。