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Mining Association Rule Bases from Integrated Genomic Data and Annotations

机译:挖掘协会从综合基因组数据和注释中的规则基础

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During the last decade, several clustering and association rule mining techniques have been applied to highlight groups of co-regulated genes in gene expression data. Nowadays, integrating these data and biological knowledge into a single framework has become a major challenge to improve the relevance of mined patterns and simplify their interpretation by biologists. GenMiner was developed for mining association rules from such integrated datasets. It combines a new no-malized discretization method, called NorDi, and the JClose algorithm to extract condensed representations for association rules. Experimental results show that GenMiner requires less memory than Apriori based approaches and that it improves the relevance of extracted rules. Moreover, association rules obtained revealed significant co-annotated and co-expressed gene patterns showing important biological relationships supported by recent biological literature.
机译:在过去的十年中,已经应用了几种聚类和关联规则挖掘技术在基因表达数据中突出显示共调节基因的基团。如今,将这些数据和生物学知识集成到一个框架中已成为改善开采模式的相关性并简化其通过生物学家解释的重大挑战。从这些集成数据集开发了用于挖掘关联规则的Genminer。它结合了一种名为Nordi的新的无恶序离散化方法,以及jClose算法来提取关联规则的浓缩表示。实验结果表明,Genminer需要比基于Apriori的方法更少,并且它提高了提取规则的相关性。此外,所获得的关联规则揭示了显着的共注注支和共同表达基因模式,显示出最近的生物学中支持的重要生物关系。

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