Traditional correlation network analysis typically involves creating a network using gene expression data and then identifying biologically relevant clusters from that network by enrichment with Gene Ontology or pathway information. When one wants to examine these networks in a dynamic way - such as between controls versus treatment or over time - a snapshot approach is taken by comparing network structures at each time point. The biological relevance of these structures are then reported and compared. In this research, we examine the same snapshot networks but focus on the enrichment of changes in structure to determine if these results give any more insight into the mechanisms behind observed phenotypes. Our main hypothesis is that mo...
Background: High-throughput studies continue to produce volumes of metadata representing valuable so...
We address the problem of finding large-scale functional and structural relationships between genes,...
<p>Schematic compares several approaches to gene expression profiling data. Gene expression levels f...
Correlation networks are ideal to describe the relationship between the expression profiles of genes...
The ability to model intragenic relationships using networks has allowed for the interpretation of c...
Correlation networks are emerging as a powerful tool for modeling temporal mechanisms within the cel...
Network analyses, such as gene co-expression networks are an important approach for the systems-leve...
Gene co-expression networks (GCN), built using high-throughput gene expression data are fundamental ...
Correlation networks have been used in biological networks to analyze and model high-throughput biol...
Correlation networks are emerging as powerful tools for modeling relationships in high-throughput da...
Recently, High-throughput instruments and associated studies have produced volumes of publicly avail...
Time course gene expression experiments are a popular means to infer co-expression. Many methods hav...
High-throughput technologies such as microarrays have led to the rapid accumulation of large scale g...
Many biological systems can be described as networks where different elements interact, in order to ...
Thesis (Ph.D.)--University of Washington, 2016-08The recent explosion in the availability of gene ex...
Background: High-throughput studies continue to produce volumes of metadata representing valuable so...
We address the problem of finding large-scale functional and structural relationships between genes,...
<p>Schematic compares several approaches to gene expression profiling data. Gene expression levels f...
Correlation networks are ideal to describe the relationship between the expression profiles of genes...
The ability to model intragenic relationships using networks has allowed for the interpretation of c...
Correlation networks are emerging as a powerful tool for modeling temporal mechanisms within the cel...
Network analyses, such as gene co-expression networks are an important approach for the systems-leve...
Gene co-expression networks (GCN), built using high-throughput gene expression data are fundamental ...
Correlation networks have been used in biological networks to analyze and model high-throughput biol...
Correlation networks are emerging as powerful tools for modeling relationships in high-throughput da...
Recently, High-throughput instruments and associated studies have produced volumes of publicly avail...
Time course gene expression experiments are a popular means to infer co-expression. Many methods hav...
High-throughput technologies such as microarrays have led to the rapid accumulation of large scale g...
Many biological systems can be described as networks where different elements interact, in order to ...
Thesis (Ph.D.)--University of Washington, 2016-08The recent explosion in the availability of gene ex...
Background: High-throughput studies continue to produce volumes of metadata representing valuable so...
We address the problem of finding large-scale functional and structural relationships between genes,...
<p>Schematic compares several approaches to gene expression profiling data. Gene expression levels f...