2011
DOI: 10.2202/1544-6115.1637
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The NBP Negative Binomial Model for Assessing Differential Gene Expression from RNA-Seq

Abstract: We propose a new statistical test for assessing differential gene expression using RNA sequencing (RNA-Seq) data. Commonly used probability distributions, such as binomial or Poisson, cannot appropriately model the count variability in RNA-Seq data due to overdispersion. The small sample size that is typical in this type of data also prevents the uncritical use of tools derived from large-sample asymptotic theory. The test we propose is based on the NBP parameterization of the negative binomial distribution. I… Show more

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Cited by 161 publications
(232 citation statements)
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“…We have run these procedures on other packages and methods such as DESeq2 and edgeR-robust with essentially similar results. Of course, many other methods exist, including but not limited to: Cuffdiff (Trapnell et al (2010)), Cuffdiff2 (Trapnell et al (2013)), NBPSeq (Di, Schafer, Cumbie, and Chang (2011)), TSPM (Auer and Doerge (2011)), baySeq (Hardcastle and Kelly (2010)), EBSeq (Leng et al (2013)), NOISeq (Tarazona, García-Alcalde, Dopazo, Ferrer, and Conesa (2011)), SAMseq (J. Li and Tibshirani (2013)), ShrinkSeq (Van De Wiel et al (2012)), DEGSeq (Wang, Feng, Wang, Wang, and Zhang (2010)), BBSeq (Y.-H. Zhou, Xia, and Wright (2011)), FDM (Singh et al (2011)), RSEM (B. Li and Dewey (2011)), Myrna (Langmead, Hansen, and Leek (2010)), PANDORA (Moulos and Hatzis (2014)), ALDEx2 (Fernandes et al (2014)), PoissonSeq (J. Li, Witten, Johnstone, and Tibshirani (2011)), and GPSeq (Srivastava and Chen (2010)).…”
Section: Cc-by-nd 40 International License Peer-reviewed) Is the Autmentioning
confidence: 99%
“…We have run these procedures on other packages and methods such as DESeq2 and edgeR-robust with essentially similar results. Of course, many other methods exist, including but not limited to: Cuffdiff (Trapnell et al (2010)), Cuffdiff2 (Trapnell et al (2013)), NBPSeq (Di, Schafer, Cumbie, and Chang (2011)), TSPM (Auer and Doerge (2011)), baySeq (Hardcastle and Kelly (2010)), EBSeq (Leng et al (2013)), NOISeq (Tarazona, García-Alcalde, Dopazo, Ferrer, and Conesa (2011)), SAMseq (J. Li and Tibshirani (2013)), ShrinkSeq (Van De Wiel et al (2012)), DEGSeq (Wang, Feng, Wang, Wang, and Zhang (2010)), BBSeq (Y.-H. Zhou, Xia, and Wright (2011)), FDM (Singh et al (2011)), RSEM (B. Li and Dewey (2011)), Myrna (Langmead, Hansen, and Leek (2010)), PANDORA (Moulos and Hatzis (2014)), ALDEx2 (Fernandes et al (2014)), PoissonSeq (J. Li, Witten, Johnstone, and Tibshirani (2011)), and GPSeq (Srivastava and Chen (2010)).…”
Section: Cc-by-nd 40 International License Peer-reviewed) Is the Autmentioning
confidence: 99%
“…(See also Di et al (2011) for a comparison of approaches to model mean-variance relations in RNA-Seq data.) To obtain the coefficients a 0 and a 1 , we regress the dispersion estimatesα il for all counting bins from all genes on their average normalized count valuesμ il with a gamma-family GLM.…”
Section: Model and Inferencementioning
confidence: 99%
“…Some prominent examples include Lu et al (2005), Robinson and Smyth (2008a,b), Anders and Huber (2010), Hardcastle and Kelly (2010), Di et al (2011), Van De Wiel et al (2012), andMcCarthy et al (2012). A recent review of methods was provided by Lorenz et al (2014).…”
Section: Significance Testing For Rna-seq Read Count Datamentioning
confidence: 99%