<div><p>Dynamic correlations are pervasive in high-throughput data. Large numbers of gene pairs can change their correlation patterns in response to observed/unobserved changes in physiological states. Finding changes in correlation patterns can reveal important regulatory mechanisms. Currently there is no method that can effectively detect global dynamic correlation patterns in a dataset. Given the challenging nature of the problem, the currently available methods use genes as surrogate measurements of physiological states, which cannot faithfully represent true underlying biological signals. In this study we develop a new method that directly identifies strong latent dynamic correlation signals from the data matrix, named DCA: Dynamic Cor...
BACKGROUND: The increasing availability of time-series expression data opens up new possibilities to...
Digital transcriptome analysis by next-generation sequencing discovers substantial mRNA variants. Va...
<p>A) Ranked canonical correlations between RNA expression and protein expression, compared with ran...
Dynamic correlations are pervasive in high-throughput data. Large numbers of gene pairs can change t...
MOTIVATION: The biological regulatory system is highly dynamic. The correlations between many functi...
Genes act as a system and not in isolation. Thus, it is important to consider coordinated changes of...
Current methods for the identification of putatively co-regulated genes directly from gene expressio...
<p><b>Copyright information:</b></p><p>Taken from "Correlation analysis reveals the emergence of coh...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
This work studies the dynamics of a gene expression time series network. The network, which is obtai...
In this study, we benchmarked five representative single-cell RNA-sequencing data-preprocessing meth...
This work studies the dynamics of a gene expression time series network. The network, which is obtai...
BACKGROUND: Biological data often originate from samples containing mixtures of subpopulations, corr...
AbstractMost investigations of coordinated gene expression have focused on identifying correlated ex...
<p><b>Copyright information:</b></p><p>Taken from "Correlation analysis reveals the emergence of coh...
BACKGROUND: The increasing availability of time-series expression data opens up new possibilities to...
Digital transcriptome analysis by next-generation sequencing discovers substantial mRNA variants. Va...
<p>A) Ranked canonical correlations between RNA expression and protein expression, compared with ran...
Dynamic correlations are pervasive in high-throughput data. Large numbers of gene pairs can change t...
MOTIVATION: The biological regulatory system is highly dynamic. The correlations between many functi...
Genes act as a system and not in isolation. Thus, it is important to consider coordinated changes of...
Current methods for the identification of putatively co-regulated genes directly from gene expressio...
<p><b>Copyright information:</b></p><p>Taken from "Correlation analysis reveals the emergence of coh...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
This work studies the dynamics of a gene expression time series network. The network, which is obtai...
In this study, we benchmarked five representative single-cell RNA-sequencing data-preprocessing meth...
This work studies the dynamics of a gene expression time series network. The network, which is obtai...
BACKGROUND: Biological data often originate from samples containing mixtures of subpopulations, corr...
AbstractMost investigations of coordinated gene expression have focused on identifying correlated ex...
<p><b>Copyright information:</b></p><p>Taken from "Correlation analysis reveals the emergence of coh...
BACKGROUND: The increasing availability of time-series expression data opens up new possibilities to...
Digital transcriptome analysis by next-generation sequencing discovers substantial mRNA variants. Va...
<p>A) Ranked canonical correlations between RNA expression and protein expression, compared with ran...