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CDCM:一种在传染病暴发期间快速筛选药物的基于相关性的连通性图谱方法。

CDCM: a correlation-dependent connectivity map approach to rapidly screen drugs during outbreaks of infectious diseases.

作者信息

Liao Junlei, Yi Hongyang, Wang Hao, Yang Sumei, Jiang Duanmei, Huang Xin, Zhang Mingxia, Shen Jiayin, Lu Hongzhou, Niu Yuanling

机构信息

School of Mathematics and Statistics, HNP-LAMA, Central South University, Changsha 410083, Hunan, China.

National Clinical Research Centre for Infectious Diseases, The Third People's Hospital of Shenzhen and The Second Affiliated Hospital of Southern University of Science and Technology, Shenzhen 518112, China.

出版信息

Brief Bioinform. 2024 Nov 22;26(1). doi: 10.1093/bib/bbae659.

Abstract

In the context of the global damage caused by coronavirus disease 2019 (COVID-19) and the emergence of the monkeypox virus (MPXV) outbreak as a public health emergency of international concern, research into methods that can rapidly test potential therapeutics during an outbreak of a new infectious disease is urgently needed. Computational drug discovery is an effective way to solve such problems. The existence of various large open databases has mitigated the time and resource consumption of traditional drug development and improved the speed of drug discovery. However, the diversity of cell lines used in various databases remains limited, and previous drug discovery methods are ineffective for cross-cell prediction. In this study, we propose a correlation-dependent connectivity map (CDCM) to achieve cross-cell predictions of drug similarity. The CDCM mainly identifies drug-drug or disease-drug relationships from the perspective of gene networks by exploring the correlation changes between genes and identifying similarities in the effects of drugs or diseases on gene expression. We validated the CDCM on multiple datasets and found that it performed well for drug identification across cell lines. A comparison with the Connectivity Map revealed that our method was more stable and performed better across different cell lines. In the application of the CDCM to COVID-19 and MPXV data, the predictions of potential therapeutic compounds for COVID-19 were consistent with several previous studies, and most of the predicted drugs were found to be experimentally effective against MPXV. This result confirms the practical value of the CDCM. With the ability to predict across cell lines, the CDCM outperforms the Connectivity Map, and it has wider application prospects and a reduced cost of use.

摘要

在2019冠状病毒病(COVID-19)造成全球破坏以及猴痘病毒(MPXV)疫情爆发成为国际关注的突发公共卫生事件的背景下,迫切需要研究能够在新发传染病爆发期间快速测试潜在治疗方法的手段。计算药物发现是解决此类问题的有效途径。各种大型开放数据库的存在减少了传统药物开发的时间和资源消耗,并提高了药物发现的速度。然而,各个数据库中使用的细胞系多样性仍然有限,并且先前的药物发现方法对于跨细胞预测无效。在本研究中,我们提出了一种相关性依赖连接图谱(CDCM)以实现药物相似性的跨细胞预测。CDCM主要通过探索基因之间的相关性变化并识别药物或疾病对基因表达影响的相似性,从基因网络的角度识别药物-药物或疾病-药物关系。我们在多个数据集上验证了CDCM,发现它在跨细胞系的药物识别方面表现良好。与连接图谱的比较表明,我们的方法更稳定,并且在不同细胞系中表现更好。在将CDCM应用于COVID-19和MPXV数据时,对COVID-19潜在治疗化合物的预测与先前的几项研究一致,并且发现大多数预测药物在实验上对MPXV有效。这一结果证实了CDCM的实用价值。凭借跨细胞系预测的能力,CDCM优于连接图谱,并且具有更广泛的应用前景和更低的使用成本。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9018/11658818/329e60ae4bd5/bbae659f1.jpg

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