DEGseq: An R package to identify differentially expressed genes from RNA-Seq data.
Description
Identify Differentially Expressed Genes from RNA-seq data.
Parameters
- Dataset: 2 sample groups.
- Method: The inference algorithm:
- LRT:
Likelihood Ratio Test (Marioni et al. 2008).
- FET:
Fisher's Exact Test (Joshua et al. 2009).
- MARS:
MA-plot-based method with Random Sampling model (Wang et al. 2009).
- MATR:
MA-plot-based method with Technical Replicates (Wang et al. 2009).
- P-value/FdrSignificance Cutt-off method and value.
- Output: DESeq creates a standard MeV viewer nodeo nthe left tree which conists of heatmaps and tables of
both significant, non-significant and a combined list of genes.
How to Run DEGseq
- Load RNAseq type data
- Launch DEGseq from ToolBar -> Statistics -> DEGseq
- Assign samples to 2 groups or leave them out
- Choose inferecne method
- Choose significance coutt-off method (p-value or fdr) and specify a value
- Hit OK