DocumentCode
44375
Title
A Divide and Conquer Approach for Construction of Large-Scale Signaling Networks from PPI and RNAi Data Using Linear Programming
Author
Ozsoy, Oyku Eren ; Can, Tolga
Author_Institution
Inf. Inst., Middle East Tech. Univ., Ankara, Turkey
Volume
10
Issue
4
fYear
2013
fDate
July-Aug. 2013
Firstpage
869
Lastpage
883
Abstract
Inference of topology of signaling networks from perturbation experiments is a challenging problem. Recently, the inference problem has been formulated as a reference network editing problem and it has been shown that finding the minimum number of edit operations on a reference network to comply with perturbation experiments is an NP-complete problem. In this paper, we propose an integer linear optimization (ILP) model for reconstruction of signaling networks from RNAi data and a reference network. The ILP model guarantees the optimal solution; however, is practical only for small signaling networks of size 10-15 genes due to computational complexity. To scale for large signaling networks, we propose a divide and conquer-based heuristic, in which a given reference network is divided into smaller subnetworks that are solved separately and the solutions are merged together to form the solution for the large network. We validate our proposed approach on real and synthetic data sets, and comparison with the state of the art shows that our proposed approach is able to scale better for large networks while attaining similar or better biological accuracy.
Keywords
RNA; bioinformatics; computational complexity; genetics; heuristic programming; linear programming; molecular biophysics; optimisation; proteins; ILP model; NP-complete problem; PPI data; RNAi data; biological accuracy; computational complexity; gene; heuristic programming; inference problem; integer linear optimization model; large signaling network; large-scale signaling network construction; linear programming; minimum edit operation number; perturbation experiment; reference network division; reference network editing problem; reference subnetwork solution merging; signaling network topology inference; small signaling network size; Data models; Linear programming; Network topology; Optimization; Proteins; Topology; RNA interference; Signaling network topology; linear optimization; protein-protein interactions;
fLanguage
English
Journal_Title
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
Publisher
ieee
ISSN
1545-5963
Type
jour
DOI
10.1109/TCBB.2013.80
Filename
6560041
Link To Document