hdl:10101/npre.2008.2002.3
Document Type:
Manuscript
Date:
Received 28 August 2008 14:08 UTC; Posted 29 August 2008
Subjects:
Genetics & Genomics, Bioinformatics
Tags:
Abstract:

Most of the statistical tests currently used to detect differentially expressed genes are based on asymptotic results, and perform poorly for low expression tags. Another problem is the common use of a single canonical cutoff for the significance level (p-value) of all the tags, without taking into consideration the type II error and the highly variable character of the sample size of the tags.

This work reports the development of two significance tests for the comparison of digital expression profiles, based on frequentist and Bayesian points of view, respectively. Both tests are exact, and do not use any asymptotic considerations, thus producing more correct results for low frequency tags than the chi-square test. The frequentist test uses a tag-customized critical level which minimizes a linear combination of type I and type II errors. A comparison of the Bayesian and the frequentist tests revealed that they are linked by a Beta distribution function. These tests can be used alone or in conjunction, and represent an improvement over the currently available methods for comparing digital profiles.

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Additional information

License:
This document is licensed to the public under the Creative Commons Attribution 3.0 License
How to cite this document:

Varuzza, Leonardo, Gruber, Arthur, and Pereira, Carlos. Significance tests for comparing digital gene expression profiles. Available from Nature Precedings <http://hdl.handle.net/10101/npre.2008.2002.3> (2008)

Version info:

Other versions of this document in Nature Precedings

Version number Document title Date
v2 Posted 27 August 2008
v1 Posted 23 June 2008

Other versions of this document elsewhere on the web

None known.

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