Curated gene sets from databases such as KEGG Pathway and Gene Ontology are often used to systematically organize lists of genes or proteins derived from high-throughput data. However, the information content inherent to some relationships between the interrogated gene sets, such as pathway crosstalk, is often underutilized. A gene set network, where nodes representing individual gene sets such as KEGG pathways are connected to indicate a functional dependency, is well suited to visualize and analyze global gene set relationships. Here we introduce a novel gene set network construction algorithm that integrates gene lists derived from high-throughput experiments with curated gene sets to construct co-enrichment gene set networks. Along with...
A common evidence network is a data structure that integrates evidence for relationships between gen...
Detecting associations between an input gene set and annotated gene sets (e.g., pathways) is an impo...
Differential gene expression (DGE) studies often suffer from poor interpretability of their primary ...
Curated gene sets from databases such as KEGG Pathway and Gene Ontology are often used to systematic...
<div><p>Curated gene sets from databases such as KEGG Pathway and Gene Ontology are often used to sy...
Curated gene sets from databases such as KEGG Pathway and Gene Ontology are often used to systematic...
<p>A) Co-membership gene set networks connect gene sets if there is significant overlap in the gene ...
<p>In the KEGG Pathway gene set networks nodes represent KEGG Pathways; green nodes are metabolic pa...
In systems biology study, biological networks were used to gain insights into biological systems. Wh...
Gene-set enrichment analysis is a useful technique to help functionally characterize large gene list...
The GeneWeaver bipartite data model provides an efficient means to evaluate shared molecular compone...
We present an approach to extracting information from textual documents of biological knowledge and ...
The GeneWeaver bipartite data model provides an efficient means to evaluate shared molecular compone...
The GeneWeaver bipartite data model provides an efficient means to evaluate shared molecular compone...
Meta-analysis of high-throughput gene expression data is often used for the interpretation of propri...
A common evidence network is a data structure that integrates evidence for relationships between gen...
Detecting associations between an input gene set and annotated gene sets (e.g., pathways) is an impo...
Differential gene expression (DGE) studies often suffer from poor interpretability of their primary ...
Curated gene sets from databases such as KEGG Pathway and Gene Ontology are often used to systematic...
<div><p>Curated gene sets from databases such as KEGG Pathway and Gene Ontology are often used to sy...
Curated gene sets from databases such as KEGG Pathway and Gene Ontology are often used to systematic...
<p>A) Co-membership gene set networks connect gene sets if there is significant overlap in the gene ...
<p>In the KEGG Pathway gene set networks nodes represent KEGG Pathways; green nodes are metabolic pa...
In systems biology study, biological networks were used to gain insights into biological systems. Wh...
Gene-set enrichment analysis is a useful technique to help functionally characterize large gene list...
The GeneWeaver bipartite data model provides an efficient means to evaluate shared molecular compone...
We present an approach to extracting information from textual documents of biological knowledge and ...
The GeneWeaver bipartite data model provides an efficient means to evaluate shared molecular compone...
The GeneWeaver bipartite data model provides an efficient means to evaluate shared molecular compone...
Meta-analysis of high-throughput gene expression data is often used for the interpretation of propri...
A common evidence network is a data structure that integrates evidence for relationships between gen...
Detecting associations between an input gene set and annotated gene sets (e.g., pathways) is an impo...
Differential gene expression (DGE) studies often suffer from poor interpretability of their primary ...