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首页> 外文期刊>BMC Bioinformatics >TopoICSim: a new semantic similarity measure based on gene ontology
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TopoICSim: a new semantic similarity measure based on gene ontology

机译:TopoICSim:一种基于基因本体的新型语义相似性度量

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The Gene Ontology (GO) is a dynamic, controlled vocabulary that describes the cellular function of genes and proteins according to tree major categories: biological process, molecular function and cellular component. It has become widely used in many bioinformatics applications for annotating genes and measuring their semantic similarity, rather than their sequence similarity. Generally speaking, semantic similarity measures involve the GO tree topology, information content of GO terms, or a combination of both. Here we present a new semantic similarity measure called TopoICSim (Topological Information Content Similarity) which uses information on the specific paths between GO terms based on the topology of the GO tree, and the distribution of information content along these paths. The TopoICSim algorithm was evaluated on two human benchmark datasets based on KEGG pathways and Pfam domains grouped as clans, using GO terms from either the biological process or molecular function. The performance of the TopoICSim measure compared favorably to five existing methods. Furthermore, the TopoICSim similarity was also tested on gene/protein sets defined by correlated gene expression, using three human datasets, and showed improved performance compared to two previously published similarity measures. Finally we used an online benchmarking resource which evaluates any similarity measure against a set of 11 similarity measures in three tests, using gene/protein sets based on sequence similarity, Pfam domains, and enzyme classifications. The results for TopoICSim showed improved performance relative to most of the measures included in the benchmarking, and in particular a very robust performance throughout the different tests. The TopoICSim similarity measure provides a competitive method with robust performance for quantification of semantic similarity between genes and proteins based on GO annotations. An R script for TopoICSim is available at http://bigr.medisin.ntnu.no/tools/TopoICSim.R .
机译:基因本体论(GO)是一个动态的受控词汇表,它根据树的主要类别描述基因和蛋白质的细胞功能:生物过程,分子功能和细胞成分。它已在许多生物信息学应用程序中广泛用于注释基因和测量其语义相似性,而不是其序列相似性。一般而言,语义相似性度量涉及GO树形拓扑,GO术语的信息内容或两者的组合。在这里,我们提出了一种新的语义相似性度量,称为TopoICSim(拓扑信息内容相似性),该度量基于GO树的拓扑使用了GO词之间的特定路径上的信息,以及沿这些路径的信息内容分布。使用来自生物学过程或分子功能的GO术语,基于KEGG途径和分组为家族的Pfam域,在两个人类基准数据集上评估了TopoICSim算法。与五种现有方法相比,TopoICSim度量的性能优越。此外,还使用三个人类数据集对由相关基因表达定义的基因/蛋白质集测试了TopoICSim相似性,与先前公布的两个相似性度量相比,其表现出了更高的性能。最终,我们使用了一个在线基准测试资源,该工具在基于序列相似性,Pfam结构域和酶分类的基因/蛋白质组的基础上,通过三个测试,针对11种相似性度量对一组相似性度量进行了评估。 TopoICSim的结果表明,相对于基准测试中包含的大多数衡量指标,其性能都有所提高,尤其是在各种测试中,其性能都非常稳定。 TopoICSim相似性度量为基于GO注释的基因和蛋白质之间的语义相似性量化提供了一种性能强大的竞争方法。可从http://bigr.medisin.ntnu.no/tools/TopoICSim.R获得用于TopoICSim的R脚本。

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