The clustering of regression models method with applications in gene expression data Journal Article


Authors: Qin, L. X.; Self, S. G.
Article Title: The clustering of regression models method with applications in gene expression data
Abstract: Identification of differentially expressed genes and clustering of genes are two important and complementary objectives addressed with gene expression data. For the differential expression question, many "per-gene" analytic methods have been proposed. These methods can generally be characterized as using a regression function to independently model the observations for each gene; various adjustments for multiplicity are then used to interpret the statistical significance of these per-gene regression models over the collection of genes analyzed. Motivated by this common structure of per-gene models, we proposed a new model-based clustering method - the clustering of regression models method, which groups genes that share a similar relationship to the covariate(s). This method provides a unified approach for a family of clustering procedures and can be applied for data collected with various experimental designs. In addition, when combined with per-gene methods for assessing differential expression that employ the same regression modeling structure, an integrated framework for the analysis of microarray data is obtained. The proposed methodology was applied to two microarray data sets, one from a breast cancer study and the other from a yeast cell cycle study. © 2005, The International Biometric Society.
Keywords: gene cluster; major clinical study; nonhuman; methodology; cell cycle; breast cancer; cluster analysis; gene expression; gene expression profiling; breast neoplasms; statistical significance; saccharomyces cerevisiae; oligonucleotide array sequence analysis; models, statistical; gene identification; models, genetic; dna microarray; yeast; regression analysis; womens health; biometry; mixture models; gene expression analysis; covariance; gene clustering; family structure
Journal Title: Biometrics
Volume: 62
Issue: 2
ISSN: 0006-341X
Publisher: Wiley Blackwell  
Date Published: 2006-06-01
Start Page: 526
End Page: 533
Language: English
DOI: 10.1111/j.1541-0420.2005.00498.x
PUBMED: 16918917
PROVIDER: scopus
DOI/URL:
Notes: --- - "Cited By (since 1996): 10" - "Export Date: 4 June 2012" - "CODEN: BIOMA" - "Source: Scopus"
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  1. Li-Xuan Qin
    191 Qin
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