DocumentCode
1312607
Title
Compressed Adjacency Matrices: Untangling Gene Regulatory Networks
Author
Dinkla, Kasper ; Westenberg, Michel A. ; Van Wijk, Jarke J.
Volume
18
Issue
12
fYear
2012
Firstpage
2457
Lastpage
2466
Abstract
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 an adjacency matrix, we achieve a compact and neatly-arranged visualization. Compressed adjacency matrices allow for easy detection of subnetworks with a specific structure, so-called motifs, which provide important knowledge about gene regulatory networks to domain experts. We summarize motifs commonly referred to in the literature, and relate them to network analysis tasks common to the visualization domain. We show that a user can easily find the important motifs in compressed adjacency matrices, and that this is hard in standard adjacency matrix and node-link diagrams. We also demonstrate that interaction techniques for standard adjacency matrices can be used for our compressed variant. These techniques include rearrangement clustering, highlighting, and filtering.
Keywords
biology computing; data visualisation; genetics; matrix algebra; network theory (graphs); compressed adjacency matrices; directed networks; gene regulatory networks; motifs; neatly-arranged visualization; network characteristics; node-link diagrams; rearrangement clustering; scale-free distribution; sparse network; standard adjacency matrix; standard visualization; structural characteristics; visualization domain; Bismuth; Computer aided manufacturing; Layout; Proteins; Sparse matrices; Standards; Visualization; Network; adjacency matrix; gene regulation; scale-free;
fLanguage
English
Journal_Title
Visualization and Computer Graphics, IEEE Transactions on
Publisher
ieee
ISSN
1077-2626
Type
jour
DOI
10.1109/TVCG.2012.208
Filename
6327251
Link To Document