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Mining conditions specific hub genes from RNA-Seq gene-expression data via biclustering and their application to drug discovery

机译:通过双聚类法从RNA-Seq基因表达数据中挖掘条件特定的轮毂基因及其在药物发现中的应用

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摘要

Gene-expression data is being widely used for various clinical research. It represents expression levels of thousands of genes across the various experimental conditions simultaneously. Mining conditions specific hub genes from gene-expression data is a challenging task. Conditions specific hub genes signify the functional behaviour of bicluster across the subset of conditions and can act as prognostic or diagnostic markers of the diseases. In this study, the authors have introduced a new approach for identifying conditions specific hub genes from the RNA-Seq data using a biclustering algorithm. In the proposed approach, efficient 'runibic' biclustering algorithm, the concept of gene co-expression network and concept of protein-protein interaction network have been used for getting better performance. The result shows that the proposed approach extracts biologically significant conditions specific hub genes which play an important role in various biological processes and pathways. These conditions specific hub genes can be used as prognostic or diagnostic biomarkers. Conditions specific hub genes will be helpful to reduce the analysis time and increase the accuracy of further research. Also, they summarised application of the proposed approach to the drug discovery process.
机译:基因表达数据被广泛用于各种临床研究。它代表了各种实验条件下数千种基因的表达水平。从基因表达数据中挖掘特定枢纽基因的条件是一项艰巨的任务。特定轮毂基因的病情表明在病情子集中双链簇的功能行为,并可以作为疾病的预后或诊断标志物。在这项研究中,作者介绍了一种使用双聚类算法从RNA-Seq数据中鉴定条件特异性轮毂基因的新方法。在提出的方法中,有效的“ runibic”双聚类算法,基因共表达网络的概念和蛋白质-蛋白质相互作用网络的概念已被用来获得更好的性能。结果表明,所提出的方法可提取具有特定生物学意义的条件的特定轮毂基因,这些基因在各种生物学过程和途径中均起着重要作用。这些条件的特定毂基因可以用作预后或诊断生物标志物。条件特定的枢纽基因将有助于减少分析时间并提高进一步研究的准确性。他们还总结了所提出的方法在药物发现过程中的应用。

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