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SiBIC: A Web Server for Generating Gene Set Networks Based on Biclusters Obtained by Maximal Frequent Itemset Mining

机译:SiBIC:一种基于Biclusters的基因组网络生成Web服务器该Biclusters通过最大频繁项集挖掘获得

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摘要

Detecting biclusters from expression data is useful, since biclusters are coexpressed genes under only part of all given experimental conditions. We present a software called SiBIC, which from a given expression dataset, first exhaustively enumerates biclusters, which are then merged into rather independent biclusters, which finally are used to generate gene set networks, in which a gene set assigned to one node has coexpressed genes. We evaluated each step of this procedure: 1) significance of the generated biclusters biologically and statistically, 2) biological quality of merged biclusters, and 3) biological significance of gene set networks. We emphasize that gene set networks, in which nodes are not genes but gene sets, can be more compact than usual gene networks, meaning that gene set networks are more comprehensible. SiBIC is available at .
机译:从表达数据检测双簇是有用的,因为双簇是在所有给定实验条件中仅一部分共表达的基因。我们提供了一个名为SiBIC的软件,该软件从给定的表达数据集中首先详尽地列举了二聚体,然后将其合并为相当独立的二聚体,最后将其用于生成基因集网络,其中分配给一个节点的基因集具有共表达的基因。我们评估了此过程的每个步骤:1)生物学上和统计学上所生成的双簇的重要性,2)合并的双簇的生物学质量,以及3)基因组网络的生物学意义。我们强调,结点不是基因而是基因集的基因集网络可以比通常的基因网络更紧凑,这意味着基因集网络更容易理解。 SiBIC的网址为。

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