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NOGEA:一种面向网络的基因信息熵方法,用于剖析疾病共病和药物重定位。

NOGEA: A Network-oriented Gene Entropy Approach for Dissecting Disease Comorbidity and Drug Repositioning.

机构信息

College of Life Science, Northwest University, Xi'an 710069, China; College of Life Science, Northwest A & F University, Yangling 712100, China.

College of Life Science, Northwest A & F University, Yangling 712100, China.

出版信息

Genomics Proteomics Bioinformatics. 2021 Aug;19(4):549-564. doi: 10.1016/j.gpb.2020.06.023. Epub 2021 Mar 17.

Abstract

Rapid development of high-throughput technologies has permitted the identification of an increasing number of disease-associated genes (DAGs), which are important for understanding disease initiation and developing precision therapeutics. However, DAGs often contain large amounts of redundant or false positive information, leading to difficulties in quantifying and prioritizing potential relationships between these DAGs and human diseases. In this study, a network-oriented gene entropy approach (NOGEA) is proposed for accurately inferring master genes that contribute to specific diseases by quantitatively calculating their perturbation abilities on directed disease-specific gene networks. In addition, we confirmed that the master genes identified by NOGEA have a high reliability for predicting disease-specific initiation events and progression risk. Master genes may also be used to extract the underlying information of different diseases, thus revealing mechanisms of disease comorbidity. More importantly, approved therapeutic targets are topologically localized in a small neighborhood of master genes in the interactome network, which provides a new way for predicting drug-disease associations. Through this method, 11 old drugs were newly identified and predicted to be effective for treating pancreatic cancer and then validated by in vitro experiments. Collectively, the NOGEA was useful for identifying master genes that control disease initiation and co-occurrence, thus providing a valuable strategy for drug efficacy screening and repositioning. NOGEA codes are publicly available at https://github.com/guozihuaa/NOGEA.

摘要

高通量技术的快速发展使得越来越多的疾病相关基因(DAGs)得以被识别,这些基因对于理解疾病的发生和开发精准治疗方法非常重要。然而,DAGs 通常包含大量冗余或假阳性信息,这导致很难对这些 DAGs 与人类疾病之间的潜在关系进行定量和优先级排序。在这项研究中,提出了一种基于网络的基因熵方法(NOGEA),通过定量计算它们对有向疾病特异性基因网络的扰动能力,来准确推断有助于特定疾病的主基因。此外,我们还证实了通过 NOGEA 鉴定的主基因在预测疾病特异性起始事件和进展风险方面具有很高的可靠性。主基因还可用于提取不同疾病的潜在信息,从而揭示疾病共病的机制。更重要的是,已批准的治疗靶点在互作网络中的主基因的小邻域中具有拓扑定位,为预测药物-疾病关联提供了一种新方法。通过这种方法,有 11 种旧药物被新识别并预测对治疗胰腺癌有效,然后通过体外实验进行了验证。总的来说,NOGEA 有助于识别控制疾病起始和共发生的主基因,从而为药物疗效筛选和重新定位提供了一种有价值的策略。NOGEA 代码可在 https://github.com/guozihuaa/NOGEA 上公开获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a168/9040018/50ec8e9fc575/gr1.jpg

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