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Multi-Edge Gene Set Networks Reveal Novel Insights into Global Relationships between Biological Themes

机译:多方优势基因集网络显示新的见解生物主题之间的全球关系

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摘要

Curated gene sets from databases such as KEGG Pathway and Gene Ontology are often used to systematically organize lists of genes or proteins derived from high-throughput data. However, the information content inherent to some relationships between the interrogated gene sets, such as pathway crosstalk, is often underutilized. A gene set network, where nodes representing individual gene sets such as KEGG pathways are connected to indicate a functional dependency, is well suited to visualize and analyze global gene set relationships. Here we introduce a novel gene set network construction algorithm that integrates gene lists derived from high-throughput experiments with curated gene sets to construct co-enrichment gene set networks. Along with previously described co-membership and linkage algorithms, we apply the co-enrichment algorithm to eight gene set collections to construct integrated multi-evidence gene set networks with multiple edge types connecting gene sets. We demonstrate the utility of approach through examples of novel gene set networks such as the chromosome map co-differential expression gene set network. A total of twenty-four gene set networks are exposed via a web tool called MetaNet, where context-specific multi-edge gene set networks are constructed from enriched gene sets within user-defined gene lists. MetaNet is freely available at .
机译:来自数据库(例如KEGG Pathway和Gene Ontology)的精选基因集通常用于系统地组织源自高通量数据的基因或蛋白质列表。但是,被询问的基因集之间的某些关系(例如途径串扰)所固有的信息内容通常未被充分利用。一个基因组网络非常适合可视化和分析全局基因组关系,在该网络中,代表单个基因组的节点(例如KEGG途径)被连接以指示功能依赖性。在这里,我们介绍了一种新颖的基因集网络构建算法,该算法将源自高通量实验的基因列表与精选的基因集进行整合,以构建共富集基因集网络。与先前描述的共同成员关系和链接算法一起,我们将共同富集算法应用于八个基因集集合,以构建具有多个边缘类型连接基因集的集成多证据基因集网络。我们通过新颖的基因集网络(例如染色体图共差表达基因集网络)的示例展示了该方法的实用性。通过称为MetaNet的网络工具公开了总共二十四个基因集网络,其中从用户定义的基因列表中的丰富基因集构建了特定于上下文的多边缘基因集网络。 MetaNet可从以下网站免费获得。

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