<div><p>The application of complex network modeling to analyze large co-expression data sets has gained traction during the last decade. In particular, the use of the weighted gene co-expression network analysis framework has allowed an unbiased and systems-level investigation of genotype-phenotype relationships in a wide range of systems. Since mouse is an important model organism for biomedical research on human disease, it is of great interest to identify similarities and differences in the functional roles of human and mouse orthologous genes. Here, we develop a novel network comparison approach which we demonstrate by comparing two gene-expression data sets from a large number of human and mouse tissues. The method uses weighted topolo...
Computational approaches toward gene annotation are a formidable challenge, now that many genome seq...
BACKGROUND:Mouse has been extensively used as a tool for investigating the onset and development of ...
Gene expression microarray data can be used for the assembly of genetic coexpression network graphs....
The application of complex network modeling to analyze large co-expression data sets has gained trac...
Abstract Background A genome-wide comparative analysis of human and mouse gene expression patterns w...
<p>Comparative analysis of weighted gene co-expression networks in human and mouse</p> - Table
<p>Comparative analysis of weighted gene co-expression networks in human and mouse</p> - Table
Co-expression maps of the human and mouse species derived from microarray data for the first release...
Model organisms are commonly used to study human diseases and to develop suitable interventions. The...
Following advancements in the "omics" fields of molecular biology and genetics, much attention has b...
Background Predicting molecular responses in human by extrapolating results from model organisms re...
Establishing a functional network is invaluable to our understanding of gene function, pathways, and...
Interactions between genes can influence how selection acts on sequence variation. In gene regulator...
Variation among individuals is a prerequisite of evolution by natural selection. As such, identifyin...
<div><p>What are the commonalities between genes, whose expression level is partially controlled by ...
Computational approaches toward gene annotation are a formidable challenge, now that many genome seq...
BACKGROUND:Mouse has been extensively used as a tool for investigating the onset and development of ...
Gene expression microarray data can be used for the assembly of genetic coexpression network graphs....
The application of complex network modeling to analyze large co-expression data sets has gained trac...
Abstract Background A genome-wide comparative analysis of human and mouse gene expression patterns w...
<p>Comparative analysis of weighted gene co-expression networks in human and mouse</p> - Table
<p>Comparative analysis of weighted gene co-expression networks in human and mouse</p> - Table
Co-expression maps of the human and mouse species derived from microarray data for the first release...
Model organisms are commonly used to study human diseases and to develop suitable interventions. The...
Following advancements in the "omics" fields of molecular biology and genetics, much attention has b...
Background Predicting molecular responses in human by extrapolating results from model organisms re...
Establishing a functional network is invaluable to our understanding of gene function, pathways, and...
Interactions between genes can influence how selection acts on sequence variation. In gene regulator...
Variation among individuals is a prerequisite of evolution by natural selection. As such, identifyin...
<div><p>What are the commonalities between genes, whose expression level is partially controlled by ...
Computational approaches toward gene annotation are a formidable challenge, now that many genome seq...
BACKGROUND:Mouse has been extensively used as a tool for investigating the onset and development of ...
Gene expression microarray data can be used for the assembly of genetic coexpression network graphs....