| Literature DB >> 22849430 |
Zhide Fang1, Jeffrey Martin, Zhong Wang.
Abstract
RNA sequencing (RNA-Seq) is rapidly replacing microarrays for profiling gene expression with much improved accuracy and sensitivity. One of the most common questions in a typical gene profiling experiment is how to identify a set of transcripts that are differentially expressed between different experimental conditions. Some of the statistical methods developed for microarray data analysis can be applied to RNA-Seq data with or without modifications. Recently several additional methods have been developed specifically for RNA-Seq data sets. This review attempts to give an in-depth review of these statistical methods, with the goal of providing a comprehensive guide when choosing appropriate metrics for RNA-Seq statistical analyses.Entities:
Year: 2012 PMID: 22849430 PMCID: PMC3541212 DOI: 10.1186/2045-3701-2-26
Source DB: PubMed Journal: Cell Biosci ISSN: 2045-3701 Impact factor: 7.133
Figure 1The analysis workflows of microarray and RNA-Seq data.
A comparison of common statistical methods for RNA-Seq differential gene expression analysis
| Fisher’s exact Test | Poisson | No | No | No | [ |
| Likelihood ratio test | Poisson | No | Yes | No | [ |
| edgeR | Negative Binomial | Yes | Yes | Yes | [ |
| DESeq | Negative Binomial | Yes | No | Yes | [ |
| baySeq | Negative Binomial | Yes | Yes | Yes | [ |
| BBSeq | Beta-Binomial | Yes | No | Yes | [ |
| Two-stage poisson model | Poisson | Yes | Yes | No | [ |
The 2×2 contingency table for one gene
Figure 2Histograms and wrongly fitted models for 1000 simulated data points.