DEXUS identifies differentially expressed genes in RNA-Seq data under all possible study designs such as studies without replicates, without sample groups, and with unknown conditions. DEXUS works also for known conditions, for example for RNA-Seq data with two or multiple conditions. RNA-Seq read count data can be provided both by the S4 class Count Data Set and by read count matrices. Differentially expressed transcripts can be visualized by heatmaps, in which unknown conditions, replicates, and samples groups are also indicated. This software is fast since the core algorithm is written in C. For very large data sets, a parallel version of DEXUS is provided in this package. DEXUS is a statistical model that is selected in a Bayesian framework by an EM algorithm. DEXUS does not need replicates to detect differentially expressed transcripts, since the replicates (or conditions) are estimated by the EM method for each transcript. The method provides an informative/non-informative value to extract differentially expressed transcripts at a desired significance level or power.
Package details |
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Author | Guenter Klambauer |
Bioconductor views | CellBiology Classification DifferentialExpression GeneExpression ImmunoOncology QualityControl RNASeq Sequencing |
Maintainer | Guenter Klambauer <klambauer@bioinf.jku.at> |
License | LGPL (>= 2.0) |
Version | 1.30.0 |
Package repository | View on Bioconductor |
Installation |
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