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首页> 外文期刊>Journal of biomedical informatics. >Interestingness measures and strategies for mining multi-ontology multi-level association rules from gene ontology annotations for the discovery of new GO relationships
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Interestingness measures and strategies for mining multi-ontology multi-level association rules from gene ontology annotations for the discovery of new GO relationships

机译:从基因本体注释中挖掘多本体多层次关联规则以发现新的GO关系的兴趣度量和策略

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摘要

The Gene Ontology (GO), a set of three sub-ontologies, is one of the most popular bio-ontologies used for describing gene product characteristics. GO annotation data containing terms from multiple sub-ontologies and at different levels in the ontologies is an important source of implicit relationships between terms from the three sub-ontologies. Data mining techniques such as association rule mining that are tailored to mine from multiple ontologies at multiple levels of abstraction are required for effective knowledge discovery from GO annotation data. We present a data mining approach, Multi-ontology data mining at All Levels (MOAL) that uses the structure and relationships of the GO to mine multi-ontology multi-level association rules. We introduce two interestingness measures: Multi-ontology Support ( MOSupport) and Multi-ontology Confidence ( MOConfidence) customized to evaluate multi-ontology multi-level association rules. We also describe a variety of post-processing strategies for pruning uninteresting rules. We use publicly available GO annotation data to demonstrate our methods with respect to two applications (1) the discovery of co-annotation suggestions and (2) the discovery of new cross-ontology relationships.
机译:基因本体论(GO)是由三个子本体论组成的集合,是用于描述基因产物特征的最流行的生物本体论之一。包含来自多个子本体的术语以及本体中不同级别的GO注释数据是来自三个子本体的术语之间隐式关系的重要来源。为了从GO批注数据中有效地发现知识,需要采用数据挖掘技术(例如关联规则挖掘),以便从多个本体在多个抽象级别进行挖掘。我们提出一种数据挖掘方法,即“所有级别的多本体数据挖掘”(MOAL),该方法使用GO的结构和关系来挖掘多本体多层次的关联规则。我们介绍了两个有趣的度量:定制的多本体支持(MOSupport)和多本体置信度(MOConfidence),用于评估多本体多级关联规则。我们还描述了修剪无趣规则的各种后处理策略。我们使用可公开获得的GO注释数据来说明针对两个应用程序的方法(1)发现共同注释建议,以及(2)发现新的交叉本体关系。

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