Mining Negative Correlation Biclusters from Gene Expression Data using Generic Association Rules.

Procedia Computer Science(2017)

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摘要
A majority of existing biclustering algorithms for microarrays data focus only on extracting biclusters with positive correlations of genes. Nevertheless, biological studies show that a group of biologically significant genes may exhibit negative correlations. In this paper, we propose a new biclustering algorithm, called NBic-ARM (Negative Biclusters using Association Rule Mining). Based on Generic Association Rules, our algorithm identifies negatively-correlated genes. To assess NBic-ARM’s performance, we carried out exhaustive experiments on three real-life datasets. Our results prove NBic-ARM’s ability to identify statistically and biologically significant biclusters.
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关键词
Biclustering,Negative correlations,Generic Association Rules,Data mining,Bioinformatic,DNA microarray data
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