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A novel gene expression index (GEI) with software support for comparing microarray gene signatures
Authors:Haseeb Ahmad Khan
Affiliation:Analytical and Molecular Bioscience Research Group, Department of Biochemistry, College of Science, King Saud University, Riyadh, Saudi Arabia
Abstract:This study was aimed to examine the validity of commonly used statistical tests for comparison of expression data from simulated and real gene signatures as well as pathway-characterized gene sets. A novel algorithm based on 10 sub-gradations (5 for up- and 5 for down-regulation) of fold-changes has been designed and testified using an Excel add-in software support. Our findings showed the limitations of conventional statistics for comparing the microarray gene expression data. However, the newly introduced Gene Expression Index (GEI) appeared to be more robust and straightforward for two-group comparison of normalized data. The software automation simplifies the task and the results are displayed in a comprehensive format including a color-coded bar showing the intensity of cumulative gene expression.
Keywords:ANCOVA, Analysis of covariance   ANOVA, Analysis of variance   BGA, Between group analysis   GEI, Gene Expression Index   GSEA, Gene set enrichment analysis   ROC, Receiver operating characteristic   SAM, Significance analysis of microarrays   SAM-GS, Significance analysis of microarrays for gene sets
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