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Bayesian analysis of gene expression levels |
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[编者的话] Bayesian是现在生物信息学研究的热点,这期再向大家推荐一篇文章。
Background Methods of microarray analysis
that suit experimentalists using the technology are vital. Many
methodologies discard the quantitative results inherent in cDNA microarray
comparisons or cannot be flexibly applied to multifactorial experimental
design. Here we present a flexible, quantitative Bayesian framework. This
framework can be used to analyze normalized microarray data acquired by
any replicated experimental design in which any number of treatments,
genotypes, or developmental states are studied using a continuous chain of
comparisons. Results We apply this method to
Saccharomyces cerevisiae microarray datasets on the transcriptional
response to ethanol shock, to SNF2 and SWI1 deletion in rich and minimal
media, and to wild-type and zap1 expression in media with high, medium,
and low levels of zinc. The method is highly robust to missing data, and
yields estimates of the magnitude of expression differences and
experimental error variances on a per-gene basis. It reveals genes of
interest that are differentially expressed at below the twofold level,
genes with high 'fold-change' that are not statistically significantly
different, and genes differentially regulated in quantitatively
unanticipated ways. Conclusions Anyone with replicated normalized cDNA microarray ratio datasets can use the freely available MacOS and Windows software, which yields increased biological insight by taking advantage of replication to discern important changes in expression level both above and below a twofold threshold. Not only does the method have utility at the moment, but also, within the Bayesian framework, there will be considerable opportunity for future development.
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1999-2005 中国科学院上海生命科学研究院生物信息中心 |