BACKGROUND: Joint analysis of transcriptomic and proteomic data taken from the same samples has the potential to elucidate complex biological mechanisms. Most current methods that integrate these datasets allow for the computation of the correlation between a gene and protein but only after a one-to-one matching of genes and proteins is done. However, genes and proteins are connected via biological pathways and their relationship is not necessarily one-to-one. In this paper, we investigate the use of Correlated Factor Analysis (CFA) for modeling the correlation of genome-scale gene and protein data. Unlike existing approaches, CFA considers all possible gene-protein pairs and utilizes all gene and protein information in its modeling framewo...
Abstract Background Bioinformatics and high-throughput technologies such as microarray studies allow...
<p><b>A</b>) The list of co-regulated genes was determined for each gene using the Individual and Gr...
Abstract Background Most existing transcriptional databases like Comprehensive Systems-Biology Datab...
Abstract Background Joint analysis of transcriptomic and proteomic data taken from the same samples ...
International audienceBiological data produced by high throughput technologies are becoming more and...
The study addressed here aimed to analyze a large number of human genome transcripts from diverse ti...
Background Through the use of DNA microarrays it is now possible to obtain quantitative measurement...
This project is an investigation of whether analysing subsets of time series gene expression data ca...
Weighted gene co-expression network analysis (WGCNA) is used to detect clusters with highly correlat...
MotivationCapturing association patterns in gene expression levels under different conditions or tim...
Includes bibliographical references (pages 52-56)Microarray data can be used to derive an understand...
Estimates of correlation between pairs of genes in co-expression analysis are commonly used to const...
Biomarker identification, using network methods, depends on finding regular co-expression patterns; ...
Abstract Background Gene co-expression, in the form of a correlation coefficient, has been valuable ...
Biomarker identification, using network methods, depends on finding regular co-expression patterns; ...
Abstract Background Bioinformatics and high-throughput technologies such as microarray studies allow...
<p><b>A</b>) The list of co-regulated genes was determined for each gene using the Individual and Gr...
Abstract Background Most existing transcriptional databases like Comprehensive Systems-Biology Datab...
Abstract Background Joint analysis of transcriptomic and proteomic data taken from the same samples ...
International audienceBiological data produced by high throughput technologies are becoming more and...
The study addressed here aimed to analyze a large number of human genome transcripts from diverse ti...
Background Through the use of DNA microarrays it is now possible to obtain quantitative measurement...
This project is an investigation of whether analysing subsets of time series gene expression data ca...
Weighted gene co-expression network analysis (WGCNA) is used to detect clusters with highly correlat...
MotivationCapturing association patterns in gene expression levels under different conditions or tim...
Includes bibliographical references (pages 52-56)Microarray data can be used to derive an understand...
Estimates of correlation between pairs of genes in co-expression analysis are commonly used to const...
Biomarker identification, using network methods, depends on finding regular co-expression patterns; ...
Abstract Background Gene co-expression, in the form of a correlation coefficient, has been valuable ...
Biomarker identification, using network methods, depends on finding regular co-expression patterns; ...
Abstract Background Bioinformatics and high-throughput technologies such as microarray studies allow...
<p><b>A</b>) The list of co-regulated genes was determined for each gene using the Individual and Gr...
Abstract Background Most existing transcriptional databases like Comprehensive Systems-Biology Datab...