We present a novel technique—Compressed Adjacency Matrices—for visualizing gene regulatory networks. These directed networks have strong structural characteristics: out-degrees with a scale-free distribution, in-degrees bound by a low maximum, and few and small cycles. Standard visualization techniques, such as node-link diagrams and adjacency matrices, are impeded by these network characteristics. The scale-free distribution of out-degrees causes a high number of intersecting edges in node-link diagrams. Adjacency matrices become space-inefficient due to the low in-degrees and the resulting sparse network. Compressed adjacency matrices, however, exploit these structural characteristics. By cutting open and rearranging a...
New advancement in microarray technologies has made it possible to reconstruct gene regulation netwo...
Motivation: Many modeling frameworks have been applied to infer regulatory networks from gene expres...
Gene co-expression networks are increasingly used to explore the system-level functionality of genes...
We present a novel technique—Compressed Adjacency Matrices—for visualizing gene ...
Abstract — A very effective means to study the gene networks is visualization. With rapid increase o...
Visualizing network data is applicable in domains such as biology, engineering, and social sciences....
Node grouping is a common way of adding structure and information to networks that aids their interp...
Network graphs appear in a number of important biological data problems, recording information relat...
Gene network reconstruction is a bioinformatics task that aims at modelling the complex regulatory a...
Regulatory network reconstruction is an ongoing field of research that biologists have been pressing...
Although the use of microarray technology has seen exponential growth, analysis of microarray data r...
Gene co-expression networks (GCNs) are constructed from Gene Expression Matrices (GEMs) in a bottom ...
Visualizing network data is applicable in domains such as biology, engineering, and social sciences....
We propose a new network visualization technique using scattered data interpolation and surface rend...
Regulation of gene expression at the transcriptional level is a fundamental mechanism that is well c...
New advancement in microarray technologies has made it possible to reconstruct gene regulation netwo...
Motivation: Many modeling frameworks have been applied to infer regulatory networks from gene expres...
Gene co-expression networks are increasingly used to explore the system-level functionality of genes...
We present a novel technique—Compressed Adjacency Matrices—for visualizing gene ...
Abstract — A very effective means to study the gene networks is visualization. With rapid increase o...
Visualizing network data is applicable in domains such as biology, engineering, and social sciences....
Node grouping is a common way of adding structure and information to networks that aids their interp...
Network graphs appear in a number of important biological data problems, recording information relat...
Gene network reconstruction is a bioinformatics task that aims at modelling the complex regulatory a...
Regulatory network reconstruction is an ongoing field of research that biologists have been pressing...
Although the use of microarray technology has seen exponential growth, analysis of microarray data r...
Gene co-expression networks (GCNs) are constructed from Gene Expression Matrices (GEMs) in a bottom ...
Visualizing network data is applicable in domains such as biology, engineering, and social sciences....
We propose a new network visualization technique using scattered data interpolation and surface rend...
Regulation of gene expression at the transcriptional level is a fundamental mechanism that is well c...
New advancement in microarray technologies has made it possible to reconstruct gene regulation netwo...
Motivation: Many modeling frameworks have been applied to infer regulatory networks from gene expres...
Gene co-expression networks are increasingly used to explore the system-level functionality of genes...