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Author(s): Alballa M, Butler G
BACKGROUND: Membrane proteins are key gates that control various vital cellular functions. Membrane proteins are often detected using transmembrane topology prediction tools. While transmembrane topology prediction tools can detect integral membrane protein...
Article GUID: 33349234
Author(s): Salmanian S; Pezeshk H; Sadeghi M;
Background: Predicting physical interaction between proteins is one of the greatest challenges in computational biology. There are considerable various protein interactions and a huge number of protein sequences and synthetic peptides with unknown interacti...
Article GUID: 33334319
Author(s): Alballa M, Butler G
BMC Bioinformatics. 2020 Apr 23;21(Suppl 3):25 Authors: Alballa M, Butler G
Article GUID: 32321420
Author(s): Reid I, O'Toole N, Zabaneh O, Nourzadeh R, Dahdouli M, Abdellateef M, Gordon PM, Soh J, Butler G, Sensen CW, Tsang A
BMC Bioinformatics. 2014 Jul 01;15:229 Authors: Reid I, O'Toole N, Zabaneh O, Nourzadeh R, Dahdouli M, Abdellateef M, Gordon PM, Soh J, Butler G, Sensen CW, Tsang A
Article GUID: 24980894
Title: | Inter-protein residue covariation information unravels physically interacting protein dimers |
Authors: | Salmanian S, Pezeshk H, Sadeghi M, |
Link: | https://pubmed.ncbi.nlm.nih.gov/33334319/ |
DOI: | 10.1186/s12859-020-03930-7 |
Category: | BMC Bioinformatics |
PMID: | 33334319 |
Dept Affiliation: | ENCS
1 Department of Bioinformatics, Institute of Biochemistry and Biophysics, University of Tehran, Tehran, Iran. 2 School of Mathematics, Statistics and Computer Science, College of Science, University of Tehran, Tehran, Iran. pezeshk@ut.ac.ir. 3 Department of Mathematics and Statistics, Concordia University, Montreal, Canada. pezeshk@ut.ac.ir. 4 School of Biological Sciences, Institute for Research in Fundamental Sciences, Tehran, Iran. pezeshk@ut.ac.ir. 5 National Institute of Genetic Engineering and Biotechnology, Tehran, Iran. |
Description: |
Background: Predicting physical interaction between proteins is one of the greatest challenges in computational biology. There are considerable various protein interactions and a huge number of protein sequences and synthetic peptides with unknown interacting counterparts. Most of co-evolutionary methods discover a combination of physical interplays and functional associations. However, there are only a handful of approaches which specifically infer physical interactions. Hybrid co-evolutionary methods exploit inter-protein residue coevolution to unravel specific physical interacting proteins. In this study, we introduce a hybrid co-evolutionary-based approach to predict physical interplays between pairs of protein families, starting from protein sequences only. Results: In the present analysis, pairs of multiple sequence alignments are constructed for each dimer and the covariation between residues in those pairs are calculated by CCMpred (Contacts from Correlated Mutations predicted) and three mutual information based approaches for ten accessible surface area threshold groups. Then, whole residue couplings between proteins of each dimer are unified into a single Frobenius norm value. Norms of residue contact matrices of all dimers in different accessible surface area thresholds are fed into support vector machine as single or multiple feature models. The results of training the classifiers by single features show no apparent different accuracies in distinct methods for different accessible surface area thresholds. Nevertheless, mutual information product and context likelihood of relatedness procedures may roughly have an overall higher and lower performances than other two methods for different accessible surface area cut-offs, respectively. The results also demonstrate that training support vector machine with multiple norm features for several accessible surface area thresholds leads to a considerable improvement of prediction performance. In this context, CCMpred roughly achieves an overall better performance than mutual information based approaches. The best accuracy, sensitivity, specificity, precision and negative predictive value for that method are 0.98, 1, 0.962, 0.96, and 0.962, respectively. Conclusions: In this paper, by feeding norm values of protein dimers into support vector machines in different accessible surface area thresholds, we demonstrate that even small number of proteins in pairs of multiple alignments could allow one to accurately discriminate between positive and negative dimers. |