College of Bioinformatics Science and Technology, Harbin Medical University.
Department of Physiology, Harbin Medical University.
Brief Bioinform. 2021 Jul 20;22(4). doi: 10.1093/bib/bbaa348.
At present, computational methods for drug repositioning are mainly based on the whole structures of drugs, which limits the discovery of new functions due to the similarities between local structures of drugs. In this article, we, for the first time, integrated the features of chemical-genomics (substructure-domain) and pharmaco-genomics (domain-indication) based on the assumption that drug-target interactions are mediated by the substructures of drugs and the domains of proteins to identify the relationships between substructure-indication and establish a drug-substructure-indication network for predicting all therapeutic effects of tested drugs through only information on the substructures of drugs. In total, 83 205 drug-indication relationships with different correlation scores were obtained. We used three different verification methods to indicate the accuracy of the method and the reliability of the scoring system. We predicted all indications of olaparib using our method, including the known antitumor effect and unknown antiviral effect verified by literature, and we also discovered the inhibitory mechanism of olaparib toward DNA repair through its specific sub494 (o = C-C: C), as it participates in the low synthesis of the poly subfunction of the apoptosis pathway (hsa04210) by inhibiting the Inositol 1,4,5-trisphosphate receptor(s) (ITPRs) and hydrolyzing poly (ADP ribose) polymerases. ElectroCardioGrams of four drugs (quinidine, amiodarone, milrinone and fosinopril) demonstrated the effect of anti-arrhythmia. Unlike previous studies focusing on the overall structures of drugs, our research has great potential in the search for more therapeutic effects of drugs and in predicting all potential effects and mechanisms of a drug from the local structural similarity.
目前,药物重定位的计算方法主要基于药物的整体结构,由于药物局部结构的相似性,限制了新功能的发现。在本文中,我们首次基于药物-靶标相互作用是由药物的亚结构和蛋白质的域介导的假设,整合了化学基因组学(亚结构域)和药物基因组学(域-指征)的特征,以确定亚结构-指征之间的关系,并建立药物-亚结构-指征网络,通过仅药物亚结构的信息来预测所有测试药物的治疗效果。总共获得了 83205 种具有不同相关评分的药物-指征关系。我们使用三种不同的验证方法来指示方法的准确性和评分系统的可靠性。我们使用我们的方法预测了奥拉帕利的所有指征,包括文献验证的已知抗肿瘤作用和未知抗病毒作用,我们还通过其特定的亚结构 494(o = C-C:C)发现了奥拉帕利抑制 DNA 修复的机制,因为它通过抑制肌醇 1,4,5-三磷酸受体(ITPRs)和水解聚(ADP 核糖)聚合酶,参与凋亡途径的低合成多亚功能(hsa04210)。四种药物(奎尼丁、胺碘酮、米力农和福辛普利)的心电图显示了抗心律失常的效果。与以前专注于药物整体结构的研究不同,我们的研究在寻找更多的药物治疗效果以及从局部结构相似性预测药物的所有潜在效果和机制方面具有巨大的潜力。