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基于一种新型核范数最小化方法对甲型人流感病毒的药物重新定位

Repositioning Drugs on Human Influenza A Viruses Based on a Novel Nuclear Norm Minimization Method.

作者信息

Liang Hang, Zhang Li, Wang Lina, Gao Man, Meng Xiangfeng, Li Mengyao, Liu Junhui, Li Wei, Meng Fanzheng

机构信息

Pediatric Department of Respiration II, The First Hospital of Jilin University, Changchun, China.

Norman Bethune Health Science Center, Jilin University, Changchun, China.

出版信息

Front Physiol. 2021 Jan 18;11:597494. doi: 10.3389/fphys.2020.597494. eCollection 2020.

Abstract

Influenza A viruses, especially H3N2 and H1N1 subtypes, are viruses that often spread among humans and cause influenza pandemic. There have been several big influenza pandemics that have caused millions of human deaths in history, and the threat of influenza viruses to public health is still serious nowadays due to the frequent antigenic drift and antigenic shift events. However, only few effective anti-flu drugs have been developed to date. The high development cost, long research and development time, and drug side effects are the major bottlenecks, which could be relieved by drug repositioning. In this study, we proposed a novel antiviral Drug Repositioning method based on minimizing Matrix Nuclear Norm (DRMNN). Specifically, a virus-drug correlation database consisting of 34 viruses and 205 antiviral drugs was first curated from public databases and published literature. Together with drug similarity on chemical structure and virus sequence similarity, we formulated the drug repositioning problem as a low-rank matrix completion problem, which was solved by minimizing the nuclear norm of a matrix with a few regularization terms. DRMNN was compared with three recent association prediction algorithms. The AUC of DRMNN in the global fivefold cross-validation (fivefold CV) is 0.8661, and the AUC in the local leave-one-out cross-validation (LOOCV) is 0.6929. Experiments have shown that DRMNN is better than other algorithms in predicting which drugs are effective against influenza A virus. With H3N2 as an example, 10 drugs most likely to be effective against H3N2 viruses were listed, among which six drugs were reported, in other literature, to have some effect on the viruses. The protein docking experiments between the chemical structure of the prioritized drugs and viral hemagglutinin protein also provided evidence for the potential of the predicted drugs for the treatment of influenza.

摘要

甲型流感病毒,尤其是H3N2和H1N1亚型,是经常在人类中传播并引发流感大流行的病毒。历史上曾发生过几次重大流感大流行,导致数百万人死亡,由于频繁的抗原漂移和抗原转变事件,如今流感病毒对公众健康的威胁仍然严重。然而,迄今为止仅开发出少数几种有效的抗流感药物。高开发成本、长研发时间和药物副作用是主要瓶颈,而药物重新定位可以缓解这些问题。在本研究中,我们提出了一种基于最小化矩阵核范数的新型抗病毒药物重新定位方法(DRMNN)。具体而言,首先从公共数据库和已发表文献中整理出一个由34种病毒和205种抗病毒药物组成的病毒-药物关联数据库。结合化学结构上的药物相似性和病毒序列相似性,我们将药物重新定位问题表述为一个低秩矩阵补全问题,通过最小化带有一些正则项的矩阵核范数来解决。将DRMNN与最近的三种关联预测算法进行了比较。DRMNN在全局五折交叉验证(五折CV)中的AUC为0.8661,在局部留一法交叉验证(LOOCV)中的AUC为0.6929。实验表明,在预测哪些药物对甲型流感病毒有效方面,DRMNN优于其他算法。以H3N2为例,列出了最有可能对H3N2病毒有效的10种药物,其中有6种药物在其他文献中报道对该病毒有一定作用。对优先级药物的化学结构与病毒血凝素蛋白之间的蛋白质对接实验也为预测药物治疗流感的潜力提供了证据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1de8/7849835/7326122b53cc/fphys-11-597494-g001.jpg

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