Suppr超能文献

使用新型机器学习方法识别治疗新冠病毒病的合适药物组合:RAIN方法

Identification of Suitable Drug Combinations for Treating COVID-19 Using a Novel Machine Learning Approach: The RAIN Method.

作者信息

Kiaei Aliakbar, Salari Nader, Boush Mahnaz, Mansouri Kamran, Hosseinian-Far Amin, Ghasemi Hooman, Mohammadi Masoud

机构信息

Department of Computer Engineering, Sharif University of Technology, Tehran 1136511155, Iran.

Department of Biostatistics, School of Health, Kermanshah University of Medical Sciences, Kermanshah 6715847141, Iran.

出版信息

Life (Basel). 2022 Sep 19;12(9):1456. doi: 10.3390/life12091456.

Abstract

COVID-19 affects several human genes, each with its own -value. The combination of drugs associated with these genes with small -values may lead to an estimation of the combined -value between COVID-19 and some drug combinations, thereby increasing the effectiveness of these combinations in defeating the disease. Based on human genes, we introduced a new machine learning method that offers an effective drug combination with low combined -values between them and COVID-19. This study follows an improved approach to systematic reviews, called the Systematic Review and Artificial Intelligence Network Meta-Analysis (RAIN), registered within PROSPERO (CRD42021256797), in which, the PRISMA criterion is still considered. Drugs used in the treatment of COVID-19 were searched in the databases of ScienceDirect, Web of Science (WoS), ProQuest, Embase, Medline (PubMed), and Scopus. In addition, using artificial intelligence and the measurement of the -value between human genes affected by COVID-19 and drugs that have been suggested by clinical experts, and reported within the identified research papers, suitable drug combinations are proposed for the treatment of COVID-19. During the systematic review process, 39 studies were selected. Our analysis shows that most of the reported drugs, such as azithromycin and hydroxyl-chloroquine on their own, do not have much of an effect on the recovery of COVID-19 patients. Based on the result of the new artificial intelligence, on the other hand, at a significance level of less than 0.05, the combination of the two drugs therapeutic corticosteroid + camostat with a significance level of 0.02, remdesivir + azithromycin with a significance level of 0.03, and interleukin 1 receptor antagonist protein + camostat with a significance level 0.02 are considered far more effective for the treatment of COVID-19 and are therefore recommended. Additionally, at a significance level of less than 0.01, the combination of interleukin 1 receptor antagonist protein + camostat + azithromycin + tocilizumab + oseltamivir with a significance level of 0.006, and the combination of interleukin 1 receptor antagonist protein + camostat + chloroquine + favipiravir + tocilizumab7 with corticosteroid + camostat + oseltamivir + remdesivir + tocilizumab at a significant level of 0.009 are effective in the treatment of patients with COVID-19 and are also recommended. The results of this study provide sets of effective drug combinations for the treatment of patients with COVID-19. In addition, the new artificial intelligence used in the RAIN method could provide a forward-looking approach to clinical trial studies, which could also be used effectively in the treatment of diseases such as cancer.

摘要

新冠病毒会影响多个人类基因,每个基因都有其自身的P值。与这些P值较小的基因相关的药物组合,可能会得出新冠病毒与某些药物组合之间的联合P值估算结果,从而提高这些组合对抗该疾病的有效性。基于人类基因,我们引入了一种新的机器学习方法,该方法能提供一种有效的药物组合,其与新冠病毒之间的联合P值较低。本研究遵循一种改进的系统评价方法,称为系统评价与人工智能网络荟萃分析(RAIN),已在国际前瞻性系统评价注册库(PROSPERO,注册号CRD42021256797)中注册,其中仍考虑采用PRISMA标准。在科学Direct、科学网(WoS)、ProQuest、Embase、医学在线(PubMed)和Scopus等数据库中搜索了用于治疗新冠病毒的药物。此外,利用人工智能以及对受新冠病毒影响的人类基因与临床专家建议并在已识别的研究论文中报道的药物之间的P值进行测量,提出了适合治疗新冠病毒的药物组合。在系统评价过程中,共筛选出39项研究。我们的分析表明,大多数报告的药物,如单独使用的阿奇霉素和羟氯喹,对新冠病毒患者的康复效果并不显著。另一方面,基于新的人工智能结果,在显著性水平小于0.05时,治疗用皮质类固醇+抑肽酶组合的显著性水平为0.02,瑞德西韦+阿奇霉素组合的显著性水平为0.03,白细胞介素1受体拮抗剂蛋白+抑肽酶组合的显著性水平为0.02,这些组合被认为对治疗新冠病毒更有效,因此被推荐使用。此外,在显著性水平小于0.01时,白细胞介素1受体拮抗剂蛋白+抑肽酶+阿奇霉素+托珠单抗+奥司他韦组合的显著性水平为0.006,白细胞介素1受体拮抗剂蛋白+抑肽酶+氯喹+法匹拉韦+托珠单抗7与皮质类固醇+抑肽酶+奥司他韦+瑞德西韦+托珠单抗组合的显著性水平为0.009,这些组合对治疗新冠病毒患者有效,也被推荐使用。本研究结果为治疗新冠病毒患者提供了有效的药物组合方案。此外,RAIN方法中使用的新人工智能可为临床试验研究提供前瞻性方法,该方法也可有效应用于癌症等疾病的治疗。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bbaa/9505329/570dab4afe8a/life-12-01456-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验