Inferring gene regulatory relationships from observational data is challenging. Manipulation and intervention is often required to unravel causal relationships unambiguously. However, gene copy number changes, as they frequently occur in cancer cells, might be considered natural manipulation experiments on gene expression. An increasing number of data sets on matched array comparative genomic hybridisation and transcriptomics experiments from a variety of cancer pathologies are becoming publicly available. Here we explore the potential of a meta-analysis of thirty such data sets. The aim of our analysis was to assess the potential of in silico inference of trans-acting gene regulatory relationships from this type of data. We found sufficien...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
We developed a machine learning analysis pipeline to discover functional gene variants by examining ...
<div><p>Genomic copy number alterations are common in cancer. Finding the genes causally implicated ...
Inferring gene regulatory relationships from observational data is challenging. Manipulation and int...
<div><p>Inferring gene regulatory relationships from observational data is challenging. Manipulation...
BACKGROUND: Gene regulatory relationships can be inferred using matched array comparative genomics a...
The copy numbers of genes in cancer samples are often highly disrupted and form a natural amplificat...
Cancer is a genetic disease in which multiple genes are perturbed. Thus, information about the regul...
textabstractBackground: It has been shown that a random-effects framework can be used to test the as...
The mRNA expression levels of genes have been shown to have discriminating power for the classificat...
Genomic copy number alterations are common in cancer. Finding the genes causally implicated in oncog...
Gene regulatory network inference is a standard technique for obtaining structured regulatory inform...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
With an increasing number of cancer profiling studies assaying both transcript mRNA and copy number ...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
We developed a machine learning analysis pipeline to discover functional gene variants by examining ...
<div><p>Genomic copy number alterations are common in cancer. Finding the genes causally implicated ...
Inferring gene regulatory relationships from observational data is challenging. Manipulation and int...
<div><p>Inferring gene regulatory relationships from observational data is challenging. Manipulation...
BACKGROUND: Gene regulatory relationships can be inferred using matched array comparative genomics a...
The copy numbers of genes in cancer samples are often highly disrupted and form a natural amplificat...
Cancer is a genetic disease in which multiple genes are perturbed. Thus, information about the regul...
textabstractBackground: It has been shown that a random-effects framework can be used to test the as...
The mRNA expression levels of genes have been shown to have discriminating power for the classificat...
Genomic copy number alterations are common in cancer. Finding the genes causally implicated in oncog...
Gene regulatory network inference is a standard technique for obtaining structured regulatory inform...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
With an increasing number of cancer profiling studies assaying both transcript mRNA and copy number ...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
Transcriptomic data quantifying gene expression states for single cells or cell populations at a gen...
We developed a machine learning analysis pipeline to discover functional gene variants by examining ...
<div><p>Genomic copy number alterations are common in cancer. Finding the genes causally implicated ...