Publication Date: 19 Nov 2012
Type: Original Research
Journal: Bioinformatics and Biology Insights
Citation: Bioinformatics and Biology Insights 2012:6 265-274
doi: 10.4137/BBI.S10383
Recently, microarray technologies have become a robust technique in the area of genomics. An important step in the analysis of gene expression data is the identification of groups of genes disclosing analogous expression patterns. Cluster analysis partitions a given dataset into groups based on specified features. Euclidean distance is a widely used similarity measure for gene expression data that considers the amount of changes in gene expression. However, the huge number of genes and the intricacy of biological networks have highly increased the challenges of comprehending and interpreting the resulting group of data, increasing processing time. The proposed technique focuses on a QT based fast 2-dimensional hierarchical clustering algorithm to perform clustering. The construction of the closest pair data structure is an each level is an important time factor, which determines the processing time of clustering. The proposed model reduces the processing time and improves analysis of gene expression data.
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I have had the honor to work with the professional team at Bioinformatics and Biology Insights. The reviewers' recommendations were very interesting and I am satisfied of the article quality. I encourage scientists to submit their work to Libertas Academica.
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