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Shifting-and-Scaling Correlation Based Biclustering Algorithm. | LitMetric

AI Article Synopsis

  • The existence of various correlations among biologically significant genes complicates gene expression data analysis, prompting researchers to explore beyond traditional methods.
  • The study introduces a new correlation measure called Shifting and Scaling Similarity (SSSim), which helps identify highly correlated gene pairs in expression data.
  • An innovative technique, the Intensive Correlation Search (ICS) biclustering algorithm, utilizes SSSim to reveal functionally significant groups of genes, demonstrating good performance with benchmark datasets.

Article Abstract

The existence of various types of correlations among the expressions of a group of biologically significant genes poses challenges in developing effective methods of gene expression data analysis. The initial focus of computational biologists was to work with only absolute and shifting correlations. However, researchers have found that the ability to handle shifting-and-scaling correlation enables them to extract more biologically relevant and interesting patterns from gene microarray data. In this paper, we introduce an effective shifting-and-scaling correlation measure named Shifting and Scaling Similarity (SSSim), which can detect highly correlated gene pairs in any gene expression data. We also introduce a technique named Intensive Correlation Search (ICS) biclustering algorithm, which uses SSSim to extract biologically significant biclusters from a gene expression data set. The technique performs satisfactorily with a number of benchmarked gene expression data sets when evaluated in terms of functional categories in Gene Ontology database.

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Source
http://dx.doi.org/10.1109/TCBB.2014.2323054DOI Listing

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