Title :
Mining Minimal Motif Pair Sets Maximally Covering Interactions in a Protein-Protein Interaction Network
Author :
Boyen, Peter ; Neven, Frank ; Van Dyck, D. ; Valentim, Felipe L. ; van Dijk, Aalt D. J.
Author_Institution :
Hasselt Univ. & Transnat., Univ. of Limburg, Diepenbeek, Belgium
Abstract :
Correlated motif covering (CMC) is the problem of finding a set of motif pairs, i.e., pairs of patterns, in the sequences of proteins from a protein-protein interaction network (PPI-network) that describe the interactions in the network as concisely as possible. In other words, a perfect solution for CMC would be a minimal set of motif pairs that describes the interaction behavior perfectly in the sense that two proteins from the network interact if and only if their sequences match a motif pair in the minimal set. In this paper, we introduce and formally define CMC and show that it is closely related to the red-blue set cover (RBSC) problem and its weighted version (WRBSC)-both well-known NP-hard problems for that there exist several algorithms with known approximation factor guarantees. We prove the hardness of approximation of CMC by providing an approximation factor preserving reduction from RBSC to CMC. We show the existence of a theoretical approximation algorithm for CMC by providing an approximation factor preserving reduction from CMC to WRBSC. We adapt the latter algorithm into a functional heuristic for CMC, called CMC-approx, and experimentally assess its performance and biological relevance. The implementation in Java can be found at http:// bioinformatics.uhasselt.be.
Keywords :
approximation theory; bioinformatics; biological techniques; computational complexity; data mining; molecular biophysics; molecular configurations; optimisation; proteins; NP-hard problems; WRBSC problem; approximation factor guarantee; approximation factor preserving reduction; approximation hardness; correlated motif covering; minimal motif pair set mining; protein sequence pattern pairs; protein-protein interaction network; red-blue set cover problem; theoretical approximation algorithm; weighted RBSC problem; Approximation algorithms; Approximation methods; Bioinformatics; IEEE transactions; Proteins; Silicon; Graphs and networks; PPI networks; biology and genetics; correlated motifs; local search; Algorithms; Computational Biology; Fungal Proteins; Models, Biological; Pattern Recognition, Automated; Protein Conformation; Protein Interaction Maps; Proteins; Reproducibility of Results; Sequence Analysis, Protein; Software; Species Specificity;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2012.165