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Extracting Cross-Ontology Weighted Association Rules from Gene Ontology Annotations

机译:从基因本体注释中提取交叉本体加权关联规则

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Gene Ontology (GO) is a structured repository of concepts (GO Terms) that are associated to one or more gene products through a process referred to as annotation. The analysis of annotated data is an important opportunity for bioinformatics. There are different approaches of analysis, among those, the use of association rules (AR) which provides useful knowledge, discovering biologically relevant associations between terms of GO, not previously known. In a previous work, we introduced GO-WAR (Gene Ontology-based Weighted Association Rules), a methodology for extracting weighted association rules from ontology-based annotated datasets. We here adapt the GO-WAR algorithm to mine cross-ontology association rules, i.e., rules that involve GO terms present in the three sub-ontologies of GO. We conduct a deep performance evaluation of GO-WAR by mining publicly available GO annotated datasets, showing how GO-WAR outperforms current state of the art approaches.
机译:基因本体论(GO)是结构化的概念库(GO术语),这些概念通过称为注释的过程与一个或多个基因产品相关联。带注释的数据分析是生物信息学的重要机会。有多种不同的分析方法,其中包括使用关联规则(AR),该规则提供有用的知识,发现GO术语之间生物学上相关的关联(以前未知)。在先前的工作中,我们介绍了GO-WAR(基于基因本体的加权关联规则),该方法可从基于本体的带注释的数据集中提取加权关联规则。我们在这里将GO-WAR算法修改为挖掘交叉本体关联规则,即涉及GO的三个子本体中存在的GO术语的规则。我们通过挖掘可公开获得的带GO注释的数据集,对GO-WAR进行了深入的性能评估,显示了GO-WAR如何胜过当前的最新方法。

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