Finding gene clusters for a replicated time course study Journal Article


Authors: Qin, L. X.; Breeden, L.; Self, S. G.
Article Title: Finding gene clusters for a replicated time course study
Abstract: Background: Finding genes that share similar expression patterns across samples is an important question that is frequently asked in high-throughput microarray studies. Traditional clustering algorithms such as K-means clustering and hierarchical clustering base gene clustering directly on the observed measurements and do not take into account the specific experimental design under which the microarray data were collected. A new model-based clustering method, the clustering of regression models method, takes into account the specific design of the microarray study and bases the clustering on how genes are related to sample covariates. It can find useful gene clusters for studies from complicated study designs such as replicated time course studies. Findings. In this paper, we applied the clustering of regression models method to data from a time course study of yeast on two genotypes, wild type and YOX1 mutant, each with two technical replicates, and compared the clustering results with K-means clustering. We identified gene clusters that have similar expression patterns in wild type yeast, two of which were missed by K-means clustering. We further identified gene clusters whose expression patterns were changed in YOX1 mutant yeast compared to wild type yeast. Conclusions: The clustering of regression models method can be a valuable tool for identifying genes that are coordinately transcribed by a common mechanism. © 2014 Qin et al.; licensee BioMed Central Ltd.
Keywords: genetics; methodology; cell cycle protein; cell cycle proteins; cell cycle; cluster analysis; gene expression profiling; statistics; homeodomain proteins; algorithms; time; time factors; gene expression regulation; algorithm; oligonucleotide array sequence analysis; pattern recognition, automated; gene inactivation; dna microarray; saccharomyces cerevisiae proteins; homeodomain protein; microarray; saccharomyces cerevisiae protein; regression analysis; repressor protein; repressor proteins; gene expression regulation, fungal; multigene family; fungal gene; regression; gene knockout techniques; genes, fungal; automated pattern recognition; clustering; time course; article; replications; yox1 protein, s cerevisiae
Journal Title: BMC Research Notes
Volume: 7
Issue: 1
ISSN: 1756-0500
Publisher: Biomed Central Ltd  
Date Published: 2014-01-01
Start Page: 60
Language: English
DOI: 10.1186/1756-0500-7-60
PUBMED: 24460656
PROVIDER: scopus
PMCID: PMC3906880
DOI/URL:
Notes: Export Date: 11 February 2015 -- Source: Scopus
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  1. Li-Xuan Qin
    190 Qin