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Leveraging additional knowledge to support coherent bicluster discovery in gene expression data

机译:利用其他知识来支持基因表达数据中的连贯双聚簇发现

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摘要

The increasing availability of gene expression data has encouraged the development of purposely-built intelligent data analysis techniques. Grouping genes characterized by similar expression patterns is a widely accepted - and often mandatory -analysis step. Despite the fact that a number of biclustering methods have been developed to discover clusters of genes exhibiting a similar expression profile under a subgroup of experimental conditions, approaches driven by similarity measures based on expression profiles alone may lead to groups that are biologically meaningless. The integration of additional information, such as functional annotations, into biclustering algorithms can instead provide an effective support for identifying meaningful gene associations. In this paper we propose a new biclustering approach called Additional Information Driven Iterative Signature Algorithm, AID-ISA. It supports the extraction of biologically relevant biclusters by leveraging additional knowledge. We show that AID-ISA allows the discovery of coherent biclusters in baker's yeast and human gene expression data sets.
机译:基因表达数据的可用性不断提高,鼓励了有目的的智能数据分析技术的发展。以相似的表达模式为特征的基因分组是一个被广泛接受且通常是强制性的分析步骤。尽管已经开发了许多双重聚类方法来发现在一组实验条件下表现出相似表达谱的基因簇,但仅基于表达谱由相似性度量驱动的方法可能会导致在生物学上毫无意义的组​​。相反,将其他信息(例如功能注释)集成到双簇算法中,可以为识别有意义的基因关联提供有效的支持。在本文中,我们提出了一种称为“附加信息驱动的迭代签名算法,AID-ISA”的新的双簇方法。它通过利用更多的知识来支持提取生物学相关的比目鱼。我们表明,AID-ISA允许在面包酵母和人类基因表达数据集中发现连贯的双簇。

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