Current methods for the identification of putatively co-regulated genes directly from gene expression time profiles are based on the similarity of the time profile. Such association metrics, despite their central role in gene network inference and machine learning, have largely ignored the impact of dynamics or variation in mRNA stability. Here we introduce a simple, but powerful, new similarity metric called lead-lag R2 that successfully accounts for the properties of gene dynamics, including varying mRNA degradation and delays. Using yeast cell-cycle time-series gene expression data, we demonstrate that the predictive power of lead-lag R2 for the identification of co-regulated genes is significantly higher than that of standard similarity...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Background: Inferring regulatory interactions between genes from transcriptomics time-resolved data,...
Some current similarity measurement method include Normal Euclidean Distance, Pearson Product-Moment...
Gene expression is to a large extent controlled at the level of mRNA accumulation. Genes whose produ...
We address possible limitations of publicly available data sets of yeast gene expression. We study t...
BACKGROUND: The increasing availability of time-series expression data opens up new possibilities to...
Differential expression of genes detected with the analysis of high throughput genomic experiments i...
A gene network gives the knowledge of the regulatory relationships among the genes. Each gene has it...
Microarray time-series data provides us a possible means for identification of transcriptional regul...
Abstract Background Gene regulatory networks have an essential role in every process of life. In thi...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
Many computational methods have been developed to infer causality among genes using cross-sectional ...
Background: Gene regulatory network (GRN) is a fundamental topic in systems biology. The dynamics of...
MotivationCapturing association patterns in gene expression levels under different conditions or tim...
Background: Gene regulatory network (GRN) is a fundamental topic in systems biology. The dynamics of...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Background: Inferring regulatory interactions between genes from transcriptomics time-resolved data,...
Some current similarity measurement method include Normal Euclidean Distance, Pearson Product-Moment...
Gene expression is to a large extent controlled at the level of mRNA accumulation. Genes whose produ...
We address possible limitations of publicly available data sets of yeast gene expression. We study t...
BACKGROUND: The increasing availability of time-series expression data opens up new possibilities to...
Differential expression of genes detected with the analysis of high throughput genomic experiments i...
A gene network gives the knowledge of the regulatory relationships among the genes. Each gene has it...
Microarray time-series data provides us a possible means for identification of transcriptional regul...
Abstract Background Gene regulatory networks have an essential role in every process of life. In thi...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
Many computational methods have been developed to infer causality among genes using cross-sectional ...
Background: Gene regulatory network (GRN) is a fundamental topic in systems biology. The dynamics of...
MotivationCapturing association patterns in gene expression levels under different conditions or tim...
Background: Gene regulatory network (GRN) is a fundamental topic in systems biology. The dynamics of...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Background: Inferring regulatory interactions between genes from transcriptomics time-resolved data,...
Some current similarity measurement method include Normal Euclidean Distance, Pearson Product-Moment...