Pathology and Stem Cell Research Center, Kerman University of Medical Sciences, Kerman, Iran.
Food Hygiene and Public Health Department, Faculty of Veterinary Medicine, Shahid Bahonar University of Kerman, Kerman, Iran.
BMC Biotechnol. 2021 Mar 12;21(1):22. doi: 10.1186/s12896-021-00680-z.
The coronavirus disease-19 (COVID-19) emerged in Wuhan, China and rapidly spread worldwide. Researchers are trying to find a way to treat this disease as soon as possible. The present study aimed to identify the genes involved in COVID-19 and find a new drug target therapy. Currently, there are no effective drugs targeting SARS-CoV-2, and meanwhile, drug discovery approaches are time-consuming and costly. To address this challenge, this study utilized a network-based drug repurposing strategy to rapidly identify potential drugs targeting SARS-CoV-2. To this end, seven potential drugs were proposed for COVID-19 treatment using protein-protein interaction (PPI) network analysis. First, 524 proteins in humans that have interaction with the SARS-CoV-2 virus were collected, and then the PPI network was reconstructed for these collected proteins. Next, the target miRNAs of the mentioned module genes were separately obtained from the miRWalk 2.0 database because of the important role of miRNAs in biological processes and were reported as an important clue for future analysis. Finally, the list of the drugs targeting module genes was obtained from the DGIDb database, and the drug-gene network was separately reconstructed for the obtained protein modules.
Based on the network analysis of the PPI network, seven clusters of proteins were specified as the complexes of proteins which are more associated with the SARS-CoV-2 virus. Moreover, seven therapeutic candidate drugs were identified to control gene regulation in COVID-19. PACLITAXEL, as the most potent therapeutic candidate drug and previously mentioned as a therapy for COVID-19, had four gene targets in two different modules. The other six candidate drugs, namely, BORTEZOMIB, CARBOPLATIN, CRIZOTINIB, CYTARABINE, DAUNORUBICIN, and VORINOSTAT, some of which were previously discovered to be efficient against COVID-19, had three gene targets in different modules. Eventually, CARBOPLATIN, CRIZOTINIB, and CYTARABINE drugs were found as novel potential drugs to be investigated as a therapy for COVID-19.
Our computational strategy for predicting repurposable candidate drugs against COVID-19 provides efficacious and rapid results for therapeutic purposes. However, further experimental analysis and testing such as clinical applicability, toxicity, and experimental validations are required to reach a more accurate and improved treatment. Our proposed complexes of proteins and associated miRNAs, along with discovered candidate drugs might be a starting point for further analysis by other researchers in this urgency of the COVID-19 pandemic.
新型冠状病毒病-19(COVID-19)在中国武汉出现,并迅速在全球范围内传播。研究人员正在努力寻找尽快治疗这种疾病的方法。本研究旨在确定与 COVID-19 相关的基因,并找到新的药物靶点治疗方法。目前,针对 SARS-CoV-2 尚无有效的靶向药物,同时,药物发现方法既耗时又昂贵。为了应对这一挑战,本研究利用基于网络的药物再利用策略来快速鉴定针对 SARS-CoV-2 的潜在药物。为此,使用蛋白质-蛋白质相互作用(PPI)网络分析,针对 COVID-19 治疗提出了七种潜在药物。首先,收集了 524 种与人相互作用的 SARS-CoV-2 病毒蛋白,然后为这些收集的蛋白构建了 PPI 网络。接下来,由于 miRNA 在生物过程中起着重要作用,并被报道为未来分析的重要线索,分别从 miRWalk 2.0 数据库中获得了所述模块基因的靶 miRNAs。最后,从 DGIDb 数据库中获得针对模块基因的药物列表,并分别为获得的蛋白质模块重建药物-基因网络。
基于 PPI 网络的网络分析,确定了七个蛋白质簇作为与 SARS-CoV-2 病毒更相关的蛋白质复合物。此外,确定了七种治疗候选药物以控制 COVID-19 中的基因调控。紫杉醇(PACLITAXEL)作为最有效的治疗候选药物,先前被提到可用于治疗 COVID-19,在两个不同的模块中有四个基因靶点。其他六种候选药物,即硼替佐米(BORTEZOMIB)、卡铂(CARBOPLATIN)、克唑替尼(CRIZOTINIB)、阿糖胞苷(CYTARABINE)、柔红霉素(DAUNORUBICIN)和沃利替尼(VORINOSTAT),其中一些先前被发现对 COVID-19 有效,在不同的模块中有三个基因靶点。最终,卡铂(CARBOPLATIN)、克唑替尼(CRIZOTINIB)和阿糖胞苷(CYTARABINE)药物被发现是一种新的潜在药物,可作为治疗 COVID-19 的研究对象。
我们针对 COVID-19 预测可再利用候选药物的计算策略为治疗目的提供了有效和快速的结果。然而,为了达到更准确和改进的治疗效果,还需要进一步的实验分析和测试,如临床适用性、毒性和实验验证。我们提出的蛋白质复合物和相关 miRNA,以及发现的候选药物可能是其他研究人员在 COVID-19 大流行的紧迫性下进行进一步分析的起点。