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首页> 外文期刊>Nucleic acids research >Graph-based identification of cancer signaling pathways from published gene expression signatures using PubLiME
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Graph-based identification of cancer signaling pathways from published gene expression signatures using PubLiME

机译:使用PubLiME从已发表的基因表达特征中基于图谱识别癌症信号通路

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Gene expression technology has become a routine application in many laboratories and has provided large amounts of gene expression signatures that have been identified in a variety of cancer types. Interpretation of gene expression signatures would profit from the availability of a procedure capable of assigning differentially regulated genes or entire gene signatures to defined cancer signaling pathways. Here we describe a graph-based approach that identifies cancer signaling pathways from published gene expression signatures. Published gene expression signatures are collected in a database (PubLiME: Published Lists of Microarray Experiments) enabled for cross-platform gene annotation. Significant co-occurrence modules composed of up to 10 genes in different gene expression signatures are identified. Significantly co-occurring genes are linked by an edge in an undirected graph. Edge-betweenness and k-clique clustering combined with graph modularity as a quality measure are used to identify communities in the resulting graph. The identified communities consist of cell cycle, apoptosis, phosphorylation cascade, extra cellular matrix, interferon and immune response regulators as well as communities of unknown function. The genes constituting different communities are characterized by common genomic features and strongly enriched cis-regulatory modules in their upstream regulatory regions that are consistent with pathway assignment of those genes.
机译:基因表达技术已成为许多实验室的常规应用,并提供了已在多种癌症类型中鉴定出的大量基因表达特征。基因表达特征的解释将受益于能够将差异调节的基因或整个基因特征分配给确定的癌症信号传导途径的程序。在这里,我们描述了一种基于图的方法,可以从已发表的基因表达特征中识别出癌症信号通路。已发布的基因表达签名收集在一个数据库(PubLiME:微阵列实验的已发布列表)中,可用于跨平台基因注释。确定了由不同基因表达特征中多达10个基因组成的重要共现模块。显着共存的基因通过无向图中的一条边连接。边缘间和k形聚类与图模块性相结合作为质量度量,用于识别结果图中的社区。所确定的群落包括细胞周期,凋亡,磷酸化级联,细胞外基质,干扰素和免疫应答调节剂以及功能未知的群落。构成不同群落的基因的特点是具有共同的基因组特征,并且在上游调控区域内顺式调控模块的浓度大大提高,与这些基因的途径分配相一致。

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