Improving pairwise comparison of protein sequences with domain co-occurrence.

Comparing and aligning protein sequences is an essential task in bioinformatics. More specifically, local alignment tools like BLAST are widely used for identifying conserved protein sub-sequences, which likely correspond to protein domains or functional motifs. However, to limit the number of false...

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Main Authors: Christophe Menichelli, Olivier Gascuel, Laurent Bréhélin
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC5766236?pdf=render
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spelling doaj-ea0053acea6e4d349465a49d6da1f4402020-11-25T02:27:30ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582018-01-01141e100588910.1371/journal.pcbi.1005889Improving pairwise comparison of protein sequences with domain co-occurrence.Christophe MenichelliOlivier GascuelLaurent BréhélinComparing and aligning protein sequences is an essential task in bioinformatics. More specifically, local alignment tools like BLAST are widely used for identifying conserved protein sub-sequences, which likely correspond to protein domains or functional motifs. However, to limit the number of false positives, these tools are used with stringent sequence-similarity thresholds and hence can miss several hits, especially for species that are phylogenetically distant from reference organisms. A solution to this problem is then to integrate additional contextual information to the procedure. Here, we propose to use domain co-occurrence to increase the sensitivity of pairwise sequence comparisons. Domain co-occurrence is a strong feature of proteins, since most protein domains tend to appear with a limited number of other domains on the same protein. We propose a method to take this information into account in a typical BLAST analysis and to construct new domain families on the basis of these results. We used Plasmodium falciparum as a case study to evaluate our method. The experimental findings showed an increase of 14% of the number of significant BLAST hits and an increase of 25% of the proteome area that can be covered with a domain. Our method identified 2240 new domains for which, in most cases, no model of the Pfam database could be linked. Moreover, our study of the quality of the new domains in terms of alignment and physicochemical properties show that they are close to that of standard Pfam domains. Source code of the proposed approach and supplementary data are available at: https://gite.lirmm.fr/menichelli/pairwise-comparison-with-cooccurrence.http://europepmc.org/articles/PMC5766236?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Christophe Menichelli
Olivier Gascuel
Laurent Bréhélin
spellingShingle Christophe Menichelli
Olivier Gascuel
Laurent Bréhélin
Improving pairwise comparison of protein sequences with domain co-occurrence.
PLoS Computational Biology
author_facet Christophe Menichelli
Olivier Gascuel
Laurent Bréhélin
author_sort Christophe Menichelli
title Improving pairwise comparison of protein sequences with domain co-occurrence.
title_short Improving pairwise comparison of protein sequences with domain co-occurrence.
title_full Improving pairwise comparison of protein sequences with domain co-occurrence.
title_fullStr Improving pairwise comparison of protein sequences with domain co-occurrence.
title_full_unstemmed Improving pairwise comparison of protein sequences with domain co-occurrence.
title_sort improving pairwise comparison of protein sequences with domain co-occurrence.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2018-01-01
description Comparing and aligning protein sequences is an essential task in bioinformatics. More specifically, local alignment tools like BLAST are widely used for identifying conserved protein sub-sequences, which likely correspond to protein domains or functional motifs. However, to limit the number of false positives, these tools are used with stringent sequence-similarity thresholds and hence can miss several hits, especially for species that are phylogenetically distant from reference organisms. A solution to this problem is then to integrate additional contextual information to the procedure. Here, we propose to use domain co-occurrence to increase the sensitivity of pairwise sequence comparisons. Domain co-occurrence is a strong feature of proteins, since most protein domains tend to appear with a limited number of other domains on the same protein. We propose a method to take this information into account in a typical BLAST analysis and to construct new domain families on the basis of these results. We used Plasmodium falciparum as a case study to evaluate our method. The experimental findings showed an increase of 14% of the number of significant BLAST hits and an increase of 25% of the proteome area that can be covered with a domain. Our method identified 2240 new domains for which, in most cases, no model of the Pfam database could be linked. Moreover, our study of the quality of the new domains in terms of alignment and physicochemical properties show that they are close to that of standard Pfam domains. Source code of the proposed approach and supplementary data are available at: https://gite.lirmm.fr/menichelli/pairwise-comparison-with-cooccurrence.
url http://europepmc.org/articles/PMC5766236?pdf=render
work_keys_str_mv AT christophemenichelli improvingpairwisecomparisonofproteinsequenceswithdomaincooccurrence
AT oliviergascuel improvingpairwisecomparisonofproteinsequenceswithdomaincooccurrence
AT laurentbrehelin improvingpairwisecomparisonofproteinsequenceswithdomaincooccurrence
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