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Mining hub genes from RNA-Seq gene expression data using biclustering algorithm

机译:采用BICLRESTING算法来自RNA-SEQ基因表达数据的挖掘集线器基因

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摘要

Biclustering is a popularly used data mining technique for the analysis of gene expression data. Recently, multiple biclustering algorithms have been designed for finding co-expressed genes from the microarray gene expression data. Microarray data has some drawbacks. To overcome the drawbacks of microarray data, RNA-Seq technology was introduced. RNA-Seq technology is the advanced high throughput technique. In this paper, we have introduced a new approach for identifying hub genes from the RNA-Seq data using biclustering algorithm. For mining biclusters, efficient 'runibic' biclustering algorithm is used. The 'runibic' algorithm performs well on various issues such as overlapping, noise, stable output, accuracy, large-scale data, and biological significance. For each significant bicluster, we have constructed a gene co-expression network (GCN). Further, each constructed GCN used for identifying hub genes. The identified hub genes are specific to the subsets of experimental conditions. The extracted hub genes can be useful in the several clinical applications as prognostic or diagnostic markers of the diseases.
机译:BICLUSTING是一种普遍使用的数据挖掘技术,用于分析基因表达数据。最近,已经设计了多种Biclesting算法,用于从微阵列基因表达数据中寻找共表达基因。微阵列数据有一些缺点。为了克服微阵列数据的缺点,介绍了RNA-SEQ技术。 RNA-SEQ技术是先进的高吞吐量技术。在本文中,我们已经使用Biclustering算法引入了一种用于从RNA-SEQ数据识别集线器基因的新方法。对于采矿双板,使用高效的“统一”双板算法。 “统一”算法在各种问题上表现良好,例如重叠,噪声,稳定的输出,精度,大规模数据和生物学意义。对于每个重要的Bicluster,我们构建了基因共表达网络(GCN)。此外,用于鉴定轮毂基因的每个构建的GCN。所识别的轮毂基因特异于实验条件的子集。提取的轮毂基因可用于几种临床应用中作为疾病的预后或诊断标志物。

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