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A Hidden Markov Model method, capable of predicting and discriminating β-barrel outer membrane proteins

BACKGROUND: Integral membrane proteins constitute about 20–30% of all proteins in the fully sequenced genomes. They come in two structural classes, the α-helical and the β-barrel membrane proteins, demonstrating different physicochemical characteristics, structure and localization. While transmembra...

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Autores principales: Bagos, Pantelis G, Liakopoulos, Theodore D, Spyropoulos, Ioannis C, Hamodrakas, Stavros J
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2004
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC385222/
https://www.ncbi.nlm.nih.gov/pubmed/15070403
http://dx.doi.org/10.1186/1471-2105-5-29
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author Bagos, Pantelis G
Liakopoulos, Theodore D
Spyropoulos, Ioannis C
Hamodrakas, Stavros J
author_facet Bagos, Pantelis G
Liakopoulos, Theodore D
Spyropoulos, Ioannis C
Hamodrakas, Stavros J
author_sort Bagos, Pantelis G
collection PubMed
description BACKGROUND: Integral membrane proteins constitute about 20–30% of all proteins in the fully sequenced genomes. They come in two structural classes, the α-helical and the β-barrel membrane proteins, demonstrating different physicochemical characteristics, structure and localization. While transmembrane segment prediction for the α-helical integral membrane proteins appears to be an easy task nowadays, the same is much more difficult for the β-barrel membrane proteins. We developed a method, based on a Hidden Markov Model, capable of predicting the transmembrane β-strands of the outer membrane proteins of gram-negative bacteria, and discriminating those from water-soluble proteins in large datasets. The model is trained in a discriminative manner, aiming at maximizing the probability of correct predictions rather than the likelihood of the sequences. RESULTS: The training has been performed on a non-redundant database of 14 outer membrane proteins with structures known at atomic resolution; it has been tested with a jacknife procedure, yielding a per residue accuracy of 84.2% and a correlation coefficient of 0.72, whereas for the self-consistency test the per residue accuracy was 88.1% and the correlation coefficient 0.824. The total number of correctly predicted topologies is 10 out of 14 in the self-consistency test, and 9 out of 14 in the jacknife. Furthermore, the model is capable of discriminating outer membrane from water-soluble proteins in large-scale applications, with a success rate of 88.8% and 89.2% for the correct classification of outer membrane and water-soluble proteins respectively, the highest rates obtained in the literature. That test has been performed independently on a set of known outer membrane proteins with low sequence identity with each other and also with the proteins of the training set. CONCLUSION: Based on the above, we developed a strategy, that enabled us to screen the entire proteome of E. coli for outer membrane proteins. The results were satisfactory, thus the method presented here appears to be suitable for screening entire proteomes for the discovery of novel outer membrane proteins. A web interface available for non-commercial users is located at: , and it is the only freely available HMM-based predictor for β-barrel outer membrane protein topology.
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spelling pubmed-3852222004-04-07 A Hidden Markov Model method, capable of predicting and discriminating β-barrel outer membrane proteins Bagos, Pantelis G Liakopoulos, Theodore D Spyropoulos, Ioannis C Hamodrakas, Stavros J BMC Bioinformatics Research Article BACKGROUND: Integral membrane proteins constitute about 20–30% of all proteins in the fully sequenced genomes. They come in two structural classes, the α-helical and the β-barrel membrane proteins, demonstrating different physicochemical characteristics, structure and localization. While transmembrane segment prediction for the α-helical integral membrane proteins appears to be an easy task nowadays, the same is much more difficult for the β-barrel membrane proteins. We developed a method, based on a Hidden Markov Model, capable of predicting the transmembrane β-strands of the outer membrane proteins of gram-negative bacteria, and discriminating those from water-soluble proteins in large datasets. The model is trained in a discriminative manner, aiming at maximizing the probability of correct predictions rather than the likelihood of the sequences. RESULTS: The training has been performed on a non-redundant database of 14 outer membrane proteins with structures known at atomic resolution; it has been tested with a jacknife procedure, yielding a per residue accuracy of 84.2% and a correlation coefficient of 0.72, whereas for the self-consistency test the per residue accuracy was 88.1% and the correlation coefficient 0.824. The total number of correctly predicted topologies is 10 out of 14 in the self-consistency test, and 9 out of 14 in the jacknife. Furthermore, the model is capable of discriminating outer membrane from water-soluble proteins in large-scale applications, with a success rate of 88.8% and 89.2% for the correct classification of outer membrane and water-soluble proteins respectively, the highest rates obtained in the literature. That test has been performed independently on a set of known outer membrane proteins with low sequence identity with each other and also with the proteins of the training set. CONCLUSION: Based on the above, we developed a strategy, that enabled us to screen the entire proteome of E. coli for outer membrane proteins. The results were satisfactory, thus the method presented here appears to be suitable for screening entire proteomes for the discovery of novel outer membrane proteins. A web interface available for non-commercial users is located at: , and it is the only freely available HMM-based predictor for β-barrel outer membrane protein topology. BioMed Central 2004-03-15 /pmc/articles/PMC385222/ /pubmed/15070403 http://dx.doi.org/10.1186/1471-2105-5-29 Text en Copyright © 2004 Bagos et al; licensee BioMed Central Ltd. This is an Open Access article: verbatim copying and redistribution of this article are permitted in all media for any purpose, provided this notice is preserved along with the article's original URL.
spellingShingle Research Article
Bagos, Pantelis G
Liakopoulos, Theodore D
Spyropoulos, Ioannis C
Hamodrakas, Stavros J
A Hidden Markov Model method, capable of predicting and discriminating β-barrel outer membrane proteins
title A Hidden Markov Model method, capable of predicting and discriminating β-barrel outer membrane proteins
title_full A Hidden Markov Model method, capable of predicting and discriminating β-barrel outer membrane proteins
title_fullStr A Hidden Markov Model method, capable of predicting and discriminating β-barrel outer membrane proteins
title_full_unstemmed A Hidden Markov Model method, capable of predicting and discriminating β-barrel outer membrane proteins
title_short A Hidden Markov Model method, capable of predicting and discriminating β-barrel outer membrane proteins
title_sort hidden markov model method, capable of predicting and discriminating β-barrel outer membrane proteins
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC385222/
https://www.ncbi.nlm.nih.gov/pubmed/15070403
http://dx.doi.org/10.1186/1471-2105-5-29
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