Literature DB >> 22180073

Combining P values to improve classification of differential gene expression in the HTself software.

D A Cortez1, A P Tonon, P Colepicolo, R Z N Vêncio.   

Abstract

HTself is a web-based bioinformatics tool designed to deal with the classification of differential gene expression in low replication microarray studies. It is based on a statistical test that uses self-self experiments to derive intensity-dependent cutoffs. We developed an extension of HTself, originally released in 2005, by calculating P values instead of using a fixed acceptance level α. As before, the statistic used to compute single-spot P values is obtained from the Gaussian kernel density estimator method applied to self-self data. Different spots corresponding to the same biological gene (replicas) give rise to a set of independent P values that can be combined by well-known statistical methods. The combined P value can be used to decide whether a gene can be considered differentially expressed or not. HTself2 is a new version of HTself that uses P values combination. It is implemented as a user-friendly desktop application to help laboratories without a bioinformatics infrastructure.

Mesh:

Year:  2011        PMID: 22180073     DOI: 10.4238/2011.December.5.5

Source DB:  PubMed          Journal:  Genet Mol Res        ISSN: 1676-5680


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  3 in total

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