Title
Parsimonious reconstruction of network evolution
Abstract
<AbstractText Label="BACKGROUND" NlmCategory="BACKGROUND">Understanding the evolution of biological networks can provide insight into how their modular structure arises and how they are affected by environmental changes. One approach to studying the evolution of these networks is to reconstruct plausible common ancestors of present-day networks, allowing us to analyze how the topological properties change over time and to posit mechanisms that drive the networks' evolution. Further, putative ancestral networks can be used to help solve other difficult problems in computational biology, such as network alignment.We introduce a combinatorial framework for encoding network histories, and we give a fast procedure that, given a set of gene duplication histories, in practice finds network histories with close to the minimum number of interaction gain or loss events to explain the observed present-day networks. In contrast to previous studies, our method does not require knowing the relative ordering of unrelated duplication events. Results on simulated histories and real biological networks both suggest that common ancestral networks can be accurately reconstructed using this parsimony approach. A software package implementing our method is available under the Apache 2.0 license at http://cbcb.umd.edu/kingsford-group/parana.Our parsimony-based approach to ancestral network reconstruction is both efficient and accurate. We show that considering a larger set of potential ancestral interactions by not assuming a relative ordering of unrelated duplication events can lead to improved ancestral network inference.
Year
DOI
Venue
2011
10.1186/1748-7188-7-25
Algorithms for Molecular Biology
Keywords
Field
DocType
biomedical research,bioinformatics,algorithms
Biological network,Computer science,Network alignment,Bioinformatics,Modular structure,Common descent
Conference
Volume
Issue
ISSN
7
1
1748-7188
Citations 
PageRank 
References 
8
0.62
12
Authors
6
Name
Order
Citations
PageRank
Rob Patro111112.98
Emre Sefer2345.12
justin malin380.62
Guillaume Marçais416712.87
Saket Navlakha539323.55
Carl Kingsford669554.27