Estimates of correlation between pairs of genes in co-expression analysis are commonly used to construct networks among genes using gene expression data. As previously noted, the distribution of such correlations depends on the observed expression level of the involved genes, which we refer to this as a mean-correlation relationship in RNA-seq data, both bulk and single-cell. This dependence introduces an unwanted technical bias in co-expression analysis whereby highly expressed genes are more likely to be highly correlated. Such a relationship is not observed in protein-protein interaction data, suggesting that it is not reflecting biology. Ignoring this bias can lead to missing potentially biologically relevant pairs of genes that are low...
MOTIVATION: RNA-seq co-expression analysis is in its infancy and reasonable practices remain poorly ...
Background: Rapid growth in the availability of genome-wide transcript abundance levels through gene...
Weighted gene co-expression network analysis (WGCNA) is used to detect clusters with highly correlat...
Digital transcriptome analysis by next-generation sequencing discovers substantial mRNA variants. Va...
Large amounts of gene expression data available in the public realm, provide us with the opportunity...
In this study, we benchmarked five representative single-cell RNA-sequencing data-preprocessing meth...
Motivation Microarray technology can be used to study the expression of thousands of genes across a ...
RNA-sequencing (RNA-seq) technology is a high-throughput next-generation sequencing procedure. It al...
Abstract Background Co-expression measures are often used to define networks among genes. Mutual inf...
BACKGROUND: Joint analysis of transcriptomic and proteomic data taken from the same samples has the ...
Genome-wide gene expression analysis are routinely used to gain a systems-level understanding of com...
International audienceCo-expression networks are essential tools to infer biological associations be...
Abstract Background Gene co-expression, in the form of a correlation coefficient, has been valuable ...
Background: Rapid growth in the availability of genome-wide transcript abundance levels through gene...
Gene expression data refers to the amount of product made by a gene go through central dogma. The pr...
MOTIVATION: RNA-seq co-expression analysis is in its infancy and reasonable practices remain poorly ...
Background: Rapid growth in the availability of genome-wide transcript abundance levels through gene...
Weighted gene co-expression network analysis (WGCNA) is used to detect clusters with highly correlat...
Digital transcriptome analysis by next-generation sequencing discovers substantial mRNA variants. Va...
Large amounts of gene expression data available in the public realm, provide us with the opportunity...
In this study, we benchmarked five representative single-cell RNA-sequencing data-preprocessing meth...
Motivation Microarray technology can be used to study the expression of thousands of genes across a ...
RNA-sequencing (RNA-seq) technology is a high-throughput next-generation sequencing procedure. It al...
Abstract Background Co-expression measures are often used to define networks among genes. Mutual inf...
BACKGROUND: Joint analysis of transcriptomic and proteomic data taken from the same samples has the ...
Genome-wide gene expression analysis are routinely used to gain a systems-level understanding of com...
International audienceCo-expression networks are essential tools to infer biological associations be...
Abstract Background Gene co-expression, in the form of a correlation coefficient, has been valuable ...
Background: Rapid growth in the availability of genome-wide transcript abundance levels through gene...
Gene expression data refers to the amount of product made by a gene go through central dogma. The pr...
MOTIVATION: RNA-seq co-expression analysis is in its infancy and reasonable practices remain poorly ...
Background: Rapid growth in the availability of genome-wide transcript abundance levels through gene...
Weighted gene co-expression network analysis (WGCNA) is used to detect clusters with highly correlat...