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Mining functional biclusters of DNA microarray gene expression data

机译:挖掘DNA微阵列基因表达数据的功能二聚体

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A subset of genes sharing compatible expression patterns under a subset of conditions can be found from DNA microarray data using biclustering algorithms. In this paper, we present a novel geometrical biclustering algorithm in combination with gene ontology annotations to identify the gene functional biclusters. Unlike many existing biclustering algorithms, we first consider the biclustering patterns through geometrical interpretation. Such a perspective makes it possible to unify the formulation of different types of biclusters as hyperplanes in spatial space and facilitates the use of a generic plane finding algorithm for bicluster detection. In our bottom-up biclustering algorithm, the well-known Hough transform is first employed in pair-column spaces to reduce the computation complexity and then the resulting patterns are merged step by step into large-size biclusters incorporated with gene functional modules. The algorithm integrates the numerical characteristics in a gene expression matrix and the gene functions in the biological activities. Our experiments on real data show that the new algorithm outperforms most existing methods for mining gene functional biclusters.
机译:可以使用双聚类算法从DNA微阵列数据中找到在子集条件下共享兼容表达模式的基因子集。在本文中,我们提出了一种新颖的几何双聚类算法,结合基因本体注释来识别基因功能双聚类。与许多现有的双簇算法不同,我们首先通过几何解释来考虑双簇模式。这样的观点使得有可能统一将不同类型的双节簇的表示统一为空间空间中的超平面,并且有助于将通用的平面发现算法用于双节簇的检测。在我们的自下而上的双簇算法中,首先在成对的列空间中采用众所周知的Hough变换以降低计算复杂度,然后将生成的模式逐步合并为带有基因功能模块的大型双簇。该算法将数字特征整合到基因表达矩阵中,并将基因功能发挥到生物活动中。我们在真实数据上的实验表明,新算法优于大多数现有的挖掘基因功能双聚类的方法。

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