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biDCG: A New Method for Discovering Global Features of DNA Microarray Data via an Iterative Re-Clustering Procedure

机译:biDCG:一种通过迭代重新聚类程序发现DNA微阵列数据全局特征的新方法

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摘要

Biclustering techniques have become very popular in cancer genetics studies, as they are tools that are expected to connect phenotypes to genotypes, i.e. to identify subgroups of cancer patients based on the fact that they share similar gene expression patterns as well as to identify subgroups of genes that are specific to these subtypes of cancer and therefore could serve as biomarkers. In this paper we propose a new approach for identifying such relationships or biclusters between patients and gene expression profiles. This method, named biDCG, rests on two key concepts. First, it uses a new clustering technique, DCG-tree [Fushing et al, PLos One, 8, e56259 (2013)] that generates ultrametric topological spaces that capture the geometries of both the patient data set and the gene data set. Second, it optimizes the definitions of bicluster membership through an iterative two-way reclustering procedure in which patients and genes are reclustered in turn, based respectively on subsets of genes and patients defined in the previous round. We have validated biDCG on simulated and real data. Based on the simulated data we have shown that biDCG compares favorably to other biclustering techniques applied to cancer genomics data. The results on the real data sets have shown that biDCG is able to retrieve relevant biological information.
机译:双聚类技术已在癌症遗传学研究中变得非常流行,因为它们有望将表型与基因型联系起来,即基于它们共享相似的基因表达模式并鉴定基因的亚组这一事实来鉴定癌症患者的亚组。特定于这些癌症亚型的蛋白,因此可以用作生物标记。在本文中,我们提出了一种新的方法来识别患者与基因表达谱之间的这种关系或双聚类。这种名为biDCG的方法基于两个关键概念。首先,它使用一种新的聚类技术DCG-tree [Fushing等人,PLos One,8,e56259(2013)],该技术会生成捕获患者数据集和基因数据集的几何形状的超测拓扑空间。其次,它通过一个双向双向重新聚类过程优化了双聚类成员的定义,在该过程中,患者和基因分别基于前一轮中定义的基因子集和患者被重新聚类。我们已经在模拟和真实数据上验证了biDCG。基于模拟数据,我们表明biDCG与应用于癌症基因组学数据的其他双聚类技术相比具有优势。真实数据集上的结果表明,biDCG能够检索相关的生物学信息。

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