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Network constrained clustering for gene microarray data.

机译:网络约束聚类的基因芯片数据。

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摘要

Many bioinformatics problems can be tackled from a fresh angle offered by the network perspective. Directly inspired by metabolic network structural studies, we propose an improved gene clustering approach for inferring gene signaling pathways from gene microarray data. Based on the construction of co-expression networks that consists of both significantly linear and non-linear gene associations together with controlled biological and statistical significance, our approach tends to group functionally related genes into tight clusters despite their expression dissimilarities. We illustrate our approach and compare it to the traditional clustering approaches on a yeast galactose metabolism dataset and a retinal gene expression dataset. Our approach greatly outperforms the traditional approach in rediscovering the relatively well known galactose metabolism pathway in yeast and in clustering genes of the photoreceptor differentiation pathway. AVAILABILITY: The clustering method has been implemented in an Rpackage "GeneNT" that is freely available from: http://www.cran.org.
机译:可以从网络角度提供的新角度解决许多生物信息学问题。受代谢网络结构研究的直接启发,我们提出了一种改进的基因聚类方法,用于从基因微阵列数据推断基因信号通路。基于共表达网络的构建,该网络由显着的线性和非线性基因关联以及受控的生物学和统计学意义组成,尽管它们的表达差异,我们的方法仍倾向于将功能相关的基因分组为紧密的簇。我们举例说明了我们的方法,并将其与酵母半乳糖代谢数据集和视网膜基因表达数据集上的传统聚类方法进行了比较。我们的方法在重新发现酵母中相对知名的半乳糖代谢途径以及光感受器分化途径的聚类基因方面大大优于传统方法。可用性:聚类方法已在Rpackage“ GeneNT”中实现,可从http://www.cran.org免费获得。

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