Sciweavers

BMCBI
2008

Background correction using dinucleotide affinities improves the performance of GCRMA

13 years 4 months ago
Background correction using dinucleotide affinities improves the performance of GCRMA
Background: High-density short oligonucleotide microarrays are a primary research tool for assessing global gene expression. Background noise on microarrays comprises a significant portion of the measured raw data, which can have serious implications for the interpretation of the generated data if not estimated correctly. Results: We introduce an approach to calculate probe affinity based on sequence composition, incorporating nearest-neighbor (NN) information. Our model uses position-specific dinucleotide information, instead of the original single nucleotide approach, and adds up to 10% to the total variance explained (R2) when compared to the previously published model. We demonstrate that correcting for background noise using this approach enhances the performance of the GCRMA preprocessing algorithm when applied to control datasets, especially for detecting low intensity targets. Conclusion: Modifying the previously published position-dependent affinity model to incorporate dinuc...
Raad Z. Gharaibeh, Anthony Fodor, Cynthia Gibas
Added 09 Dec 2010
Updated 09 Dec 2010
Type Journal
Year 2008
Where BMCBI
Authors Raad Z. Gharaibeh, Anthony Fodor, Cynthia Gibas
Comments (0)