Abstract

BackgroundTraditional methods of analysing gene expression data often include a statistical test to find differentially expressed genes, or use of a clustering algorithm to find groups of genes that behave similarly across a dataset. However, these methods may miss groups of genes which form differential co-expression patterns under different subsets of experimental conditions. Here we describe coXpress, an R package that allows researchers to identify groups of genes that are differentially co-expressed.ResultsWe have developed coXpress as a means of identifying groups of genes that are differentially co-expressed. The utility of coXpress is demonstrated using two publicly available microarray datasets. Our software identifies several groups of genes that are highly correlated under one set of biologically related experiments, but which show little or no correlation in a second set of experiments. The software uses a re-sampling method to calculate a p-value for each group, and provides several methods for the visualisation of differentially co-expressed genes.ConclusioncoXpress can be used to find groups of genes that display differential co-expression patterns in microarray datasets.

Highlights

  • Traditional methods of analysing gene expression data often include a statistical test to find differentially expressed genes, or use of a clustering algorithm to find groups of genes that behave across a dataset

  • Data analysis often includes the use of a statistical test, such as a t-test or analysis of variance, to find genes differentially expressed in one set of conditions when compared to another, or the use of clustering algorithms in order to find groups of genes which behave over a number of experiments [2]

  • The acute myeloid leukaemia (AML)/acute lymphoblastic leukaemia (ALL) leukaemia dataset The utility of coXpress is demonstrated using gene expression data from the leukaemia microarray study of Golub et al [21]

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Summary

Introduction

Traditional methods of analysing gene expression data often include a statistical test to find differentially expressed genes, or use of a clustering algorithm to find groups of genes that behave across a dataset. Data analysis often includes the use of a statistical test, such as a t-test or analysis of variance, to find genes differentially expressed in one set of conditions when compared to another, or the use of clustering algorithms in order to find groups of genes which behave over a number of experiments [2]. These techniques may not detect differential co-expression patterns that exist between two biological states. Various clustering algorithms were used on a number of datasets, and the results evaluated by determining those genes that share a common transcrip-

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