Mining Association Rules among Gene Functions in Clusters of Similar Gene Expression Maps.

Li An, Zoran Obradovic, Desmond Smith, Olivier Bodenreider, Vasileios Megalooikonomou
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Abstract

Association rules mining methods have been recently applied to gene expression data analysis to reveal relationships between genes and different conditions and features. However, not much effort has focused on detecting the relation between gene expression maps and related gene functions. Here we describe such an approach to mine association rules among gene functions in clusters of similar gene expression maps on mouse brain. The experimental results show that the detected association rules make sense biologically. By inspecting the obtained clusters and the genes having the gene functions of frequent itemsets, interesting clues were discovered that provide valuable insight to biological scientists. Moreover, discovered association rules can be potentially used to predict gene functions based on similarity of gene expression maps.

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Abstract Image

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挖掘相似基因表达图簇中基因功能的关联规则
关联规则挖掘方法最近被应用于基因表达数据分析,以揭示基因与不同条件和特征之间的关系。然而,在检测基因表达图谱与相关基因功能之间的关系方面却鲜有建树。在这里,我们介绍了一种在小鼠大脑相似基因表达图簇中挖掘基因功能关联规则的方法。实验结果表明,检测到的关联规则具有生物学意义。通过检查所获得的簇和具有频繁项集基因功能的基因,发现了一些有趣的线索,为生物科学家提供了有价值的见解。此外,发现的关联规则还可用于根据基因表达图的相似性预测基因功能。
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