Bias correction and Bayesian analysis of aggregate counts in SAGE libraries

dc.contributor.author

Zaretzki, Russell L

dc.contributor.author

Gilchrist, Michael A

dc.contributor.author

Briggs, William M

dc.contributor.author

Armagan, Artin

dc.date.accessioned

2011-06-21T17:29:32Z

dc.date.available

2011-06-21T17:29:32Z

dc.date.issued

2010

dc.description.abstract

Background: Tag-based techniques, such as SAGE, are commonly used to sample the mRNA pool of an organism's transcriptome. Incomplete digestion during the tag formation process may allow for multiple tags to be generated from a given mRNA transcript. The probability of forming a tag varies with its relative location. As a result, the observed tag counts represent a biased sample of the actual transcript pool. In SAGE this bias can be avoided by ignoring all but the 3' most tag but will discard a large fraction of the observed data. Taking this bias into account should allow more of the available data to be used leading to increased statistical power. Results: Three new hierarchical models, which directly embed a model for the variation in tag formation probability, are proposed and their associated Bayesian inference algorithms are developed. These models may be applied to libraries at both the tag and aggregate level. Simulation experiments and analysis of real data are used to contrast the accuracy of the various methods. The consequences of tag formation bias are discussed in the context of testing differential expression. A description is given as to how these algorithms can be applied in that context. Conclusions: Several Bayesian inference algorithms that account for tag formation effects are compared with the DPB algorithm providing clear evidence of superior performance. The accuracy of inferences when using a particular non-informative prior is found to depend on the expression level of a given gene. The multivariate nature of the approach easily allows both univariate and joint tests of differential expression. Calculations demonstrate the potential for false positive and negative findings due to variation in tag formation probabilities across samples when testing for differential expression.

dc.description.version

Version of Record

dc.identifier.citation

Zaretzki,Russell L.;Gilchrist,Michael A.;Briggs,William M.;Armagan,Artin. 2010. Bias correction and Bayesian analysis of aggregate counts in SAGE libraries. Bmc Bioinformatics 11( ): 72-72.

dc.identifier.issn

1471-2105

dc.identifier.uri

https://hdl.handle.net/10161/4340

dc.language.iso

en_US

dc.publisher

Springer Science and Business Media LLC

dc.relation.isversionof

10.1186/1471-2105-11-72

dc.relation.journal

Bmc Bioinformatics

dc.subject

gene-expression

dc.subject

differential expression

dc.subject

serial analysis

dc.subject

model

dc.subject

supersage

dc.subject

biochemical research methods

dc.subject

biotechnology & applied microbiology

dc.subject

mathematical & computational biology

dc.title

Bias correction and Bayesian analysis of aggregate counts in SAGE libraries

dc.title.alternative
dc.type

Other article

duke.date.pubdate

2010-2-3

duke.description.issue
duke.description.volume

11

pubs.begin-page

72

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
275200500001.pdf
Size:
443.06 KB
Format:
Adobe Portable Document Format