MOTIVATION: Biological differences between classes are reflected in transcriptional changes which in turn affect the levels by which essential genes are individually expressed and collectively connected. The purpose of this communication is to introduce an analytical procedure to simultaneously identify genes that are differentially expressed (DE) as well as differentially connected (DC) in two or more classes of interest. RESULTS: Our procedure is based on a two-step approach: First, mixed-model equations are applied to obtain the normalized expression levels of each gene in each class treatment. These normalized expressions form the basis to compute a measure of (possible) DE as well as the correlation structure existing among genes. Second, a two-component mixture of bi-variate distributions is fitted to identify the component that encapsulates those genes that are DE and/or DC. We demonstrate our approach using three distinct datasets including a human systemic inflammation oligonucleotide data; a spotted cDNA data dealing with bovine in vitro adipogenesis and SAGE database on cancerous and normal tissue samples.
MOTIVATION: Biological differences between classes are reflected in transcriptional changes which in turn affect the levels by which essential genes are individually expressed and collectively connected. The purpose of this communication is to introduce an analytical procedure to simultaneously identify genes that are differentially expressed (DE) as well as differentially connected (DC) in two or more classes of interest. RESULTS: Our procedure is based on a two-step approach: First, mixed-model equations are applied to obtain the normalized expression levels of each gene in each class treatment. These normalized expressions form the basis to compute a measure of (possible) DE as well as the correlation structure existing among genes. Second, a two-component mixture of bi-variate distributions is fitted to identify the component that encapsulates those genes that are DE and/or DC. We demonstrate our approach using three distinct datasets including a human systemic inflammationoligonucleotide data; a spotted cDNA data dealing with bovine in vitro adipogenesis and SAGE database on cancerous and normal tissue samples.
Authors: Natalia Moreno-Sánchez; Julia Rueda; María J Carabaño; Antonio Reverter; Sean McWilliam; Carmen González; Clara Díaz Journal: Funct Integr Genomics Date: 2010-06-04 Impact factor: 3.410
Authors: W M Muir; G J M Rosa; B R Pittendrigh; S Xu; S D Rider; M Fountain; J Ogas Journal: Comput Stat Data Anal Date: 2009-03-15 Impact factor: 1.681
Authors: Amy S Leonardson; Jun Zhu; Yanqing Chen; Kai Wang; John R Lamb; Marc Reitman; Valur Emilsson; Eric E Schadt Journal: Hum Mol Genet Date: 2010-01-01 Impact factor: 6.150
Authors: Scott M Gibson; Stephen P Ficklin; Sven Isaacson; Feng Luo; Frank A Feltus; Melissa C Smith Journal: PLoS One Date: 2013-02-07 Impact factor: 3.240