Authors
Martin J Aryee, José A Gutiérrez-Pabello, Igor Kramnik, Tapabrata Maiti, John Quackenbush
Publication date
2009/12
Journal
BMC bioinformatics
Volume
10
Pages
1-10
Publisher
BioMed Central
Description
Background
Microarray gene expression time-course experiments provide the opportunity to observe the evolution of transcriptional programs that cells use to respond to internal and external stimuli. Most commonly used methods for identifying differentially expressed genes treat each time point as independent and ignore important correlations, including those within samples and between sampling times. Therefore they do not make full use of the information intrinsic to the data, leading to a loss of power.
Results
We present a flexible random-effects model that takes such correlations into account, improving our ability to detect genes that have sustained differential expression over more than one time point. By modeling the joint distribution of the samples that have been profiled across all time points, we gain sensitivity compared to a marginal analysis …
Total citations
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