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LRRpredictor—A New LRR Motif Detection Method for Irregular Motifs of Plant NLR Proteins Using an Ensemble of Classifiers

Leucine-rich-repeats (LRRs) belong to an archaic procaryal protein architecture that is widely involved in protein–protein interactions. In eukaryotes, LRR domains developed into key recognition modules in many innate immune receptor classes. Due to the high sequence variability imposed by recogniti...

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Autores principales: Martin, Eliza C., Sukarta, Octavina C. A., Spiridon, Laurentiu, Grigore, Laurentiu G., Constantinescu, Vlad, Tacutu, Robi, Goverse, Aska, Petrescu, Andrei-Jose
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7140858/
https://www.ncbi.nlm.nih.gov/pubmed/32182725
http://dx.doi.org/10.3390/genes11030286
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author Martin, Eliza C.
Sukarta, Octavina C. A.
Spiridon, Laurentiu
Grigore, Laurentiu G.
Constantinescu, Vlad
Tacutu, Robi
Goverse, Aska
Petrescu, Andrei-Jose
author_facet Martin, Eliza C.
Sukarta, Octavina C. A.
Spiridon, Laurentiu
Grigore, Laurentiu G.
Constantinescu, Vlad
Tacutu, Robi
Goverse, Aska
Petrescu, Andrei-Jose
author_sort Martin, Eliza C.
collection PubMed
description Leucine-rich-repeats (LRRs) belong to an archaic procaryal protein architecture that is widely involved in protein–protein interactions. In eukaryotes, LRR domains developed into key recognition modules in many innate immune receptor classes. Due to the high sequence variability imposed by recognition specificity, precise repeat delineation is often difficult especially in plant NOD-like Receptors (NLRs) notorious for showing far larger irregularities. To address this problem, we introduce here LRRpredictor, a method based on an ensemble of estimators designed to better identify LRR motifs in general but particularly adapted for handling more irregular LRR environments, thus allowing to compensate for the scarcity of structural data on NLR proteins. The extrapolation capacity tested on a set of annotated LRR domains from six immune receptor classes shows the ability of LRRpredictor to recover all previously defined specific motif consensuses and to extend the LRR motif coverage over annotated LRR domains. This analysis confirms the increased variability of LRR motifs in plant and vertebrate NLRs when compared to extracellular receptors, consistent with previous studies. Hence, LRRpredictor is able to provide novel insights into the diversification of LRR domains and a robust support for structure-informed analyses of LRRs in immune receptor functioning.
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spelling pubmed-71408582020-04-10 LRRpredictor—A New LRR Motif Detection Method for Irregular Motifs of Plant NLR Proteins Using an Ensemble of Classifiers Martin, Eliza C. Sukarta, Octavina C. A. Spiridon, Laurentiu Grigore, Laurentiu G. Constantinescu, Vlad Tacutu, Robi Goverse, Aska Petrescu, Andrei-Jose Genes (Basel) Article Leucine-rich-repeats (LRRs) belong to an archaic procaryal protein architecture that is widely involved in protein–protein interactions. In eukaryotes, LRR domains developed into key recognition modules in many innate immune receptor classes. Due to the high sequence variability imposed by recognition specificity, precise repeat delineation is often difficult especially in plant NOD-like Receptors (NLRs) notorious for showing far larger irregularities. To address this problem, we introduce here LRRpredictor, a method based on an ensemble of estimators designed to better identify LRR motifs in general but particularly adapted for handling more irregular LRR environments, thus allowing to compensate for the scarcity of structural data on NLR proteins. The extrapolation capacity tested on a set of annotated LRR domains from six immune receptor classes shows the ability of LRRpredictor to recover all previously defined specific motif consensuses and to extend the LRR motif coverage over annotated LRR domains. This analysis confirms the increased variability of LRR motifs in plant and vertebrate NLRs when compared to extracellular receptors, consistent with previous studies. Hence, LRRpredictor is able to provide novel insights into the diversification of LRR domains and a robust support for structure-informed analyses of LRRs in immune receptor functioning. MDPI 2020-03-08 /pmc/articles/PMC7140858/ /pubmed/32182725 http://dx.doi.org/10.3390/genes11030286 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Martin, Eliza C.
Sukarta, Octavina C. A.
Spiridon, Laurentiu
Grigore, Laurentiu G.
Constantinescu, Vlad
Tacutu, Robi
Goverse, Aska
Petrescu, Andrei-Jose
LRRpredictor—A New LRR Motif Detection Method for Irregular Motifs of Plant NLR Proteins Using an Ensemble of Classifiers
title LRRpredictor—A New LRR Motif Detection Method for Irregular Motifs of Plant NLR Proteins Using an Ensemble of Classifiers
title_full LRRpredictor—A New LRR Motif Detection Method for Irregular Motifs of Plant NLR Proteins Using an Ensemble of Classifiers
title_fullStr LRRpredictor—A New LRR Motif Detection Method for Irregular Motifs of Plant NLR Proteins Using an Ensemble of Classifiers
title_full_unstemmed LRRpredictor—A New LRR Motif Detection Method for Irregular Motifs of Plant NLR Proteins Using an Ensemble of Classifiers
title_short LRRpredictor—A New LRR Motif Detection Method for Irregular Motifs of Plant NLR Proteins Using an Ensemble of Classifiers
title_sort lrrpredictor—a new lrr motif detection method for irregular motifs of plant nlr proteins using an ensemble of classifiers
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7140858/
https://www.ncbi.nlm.nih.gov/pubmed/32182725
http://dx.doi.org/10.3390/genes11030286
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