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B-Pred, a structure based B-cell epitopes prediction server

The ability to predict immunogenic regions in selected proteins by in-silico methods has broad implications, such as allowing a quick selection of potential reagents to be used as diagnostics, vaccines, immunotherapeutics, or research tools in several branches of biological and biotechnological rese...

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Autores principales: Giacò, Luciano, Amicosante, Massimo, Fraziano, Maurizio, Gherardini, Pier Federico, Ausiello, Gabriele, Helmer-Citterich, Manuela, Colizzi, Vittorio, Cabibbo, Andrea
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Dove Medical Press 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3413014/
https://www.ncbi.nlm.nih.gov/pubmed/22888263
http://dx.doi.org/10.2147/AABC.S30620
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author Giacò, Luciano
Amicosante, Massimo
Fraziano, Maurizio
Gherardini, Pier Federico
Ausiello, Gabriele
Helmer-Citterich, Manuela
Colizzi, Vittorio
Cabibbo, Andrea
author_facet Giacò, Luciano
Amicosante, Massimo
Fraziano, Maurizio
Gherardini, Pier Federico
Ausiello, Gabriele
Helmer-Citterich, Manuela
Colizzi, Vittorio
Cabibbo, Andrea
author_sort Giacò, Luciano
collection PubMed
description The ability to predict immunogenic regions in selected proteins by in-silico methods has broad implications, such as allowing a quick selection of potential reagents to be used as diagnostics, vaccines, immunotherapeutics, or research tools in several branches of biological and biotechnological research. However, the prediction of antibody target sites in proteins using computational methodologies has proven to be a highly challenging task, which is likely due to the somewhat elusive nature of B-cell epitopes. This paper proposes a web-based platform for scoring potential immunological reagents based on the structures or 3D models of the proteins of interest. The method scores a protein’s peptides set, which is derived from a sliding window, based on the average solvent exposure, with a filter on the average local model quality for each peptide. The platform was validated on a custom-assembled database of 1336 experimentally determined epitopes from 106 proteins for which a reliable 3D model could be obtained through standard modeling techniques. Despite showing poor sensitivity, this method can achieve a specificity of 0.70 and a positive predictive value of 0.29 by combining these two simple parameters. These values are slightly higher than those obtained with other established sequence-based or structure-based methods that have been evaluated using the same epitopes dataset. This method is implemented in a web server called B-Pred, which is accessible at http://immuno.bio.uniroma2.it/bpred. The server contains a number of original features that allow users to perform personalized reagent searches by manipulating the sliding window’s width and sliding step, changing the exposure and model quality thresholds, and running sequential queries with different parameters. The B-Pred server should assist experimentalists in the rational selection of epitope antigens for a wide range of applications.
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spelling pubmed-34130142012-08-10 B-Pred, a structure based B-cell epitopes prediction server Giacò, Luciano Amicosante, Massimo Fraziano, Maurizio Gherardini, Pier Federico Ausiello, Gabriele Helmer-Citterich, Manuela Colizzi, Vittorio Cabibbo, Andrea Adv Appl Bioinform Chem Original Research The ability to predict immunogenic regions in selected proteins by in-silico methods has broad implications, such as allowing a quick selection of potential reagents to be used as diagnostics, vaccines, immunotherapeutics, or research tools in several branches of biological and biotechnological research. However, the prediction of antibody target sites in proteins using computational methodologies has proven to be a highly challenging task, which is likely due to the somewhat elusive nature of B-cell epitopes. This paper proposes a web-based platform for scoring potential immunological reagents based on the structures or 3D models of the proteins of interest. The method scores a protein’s peptides set, which is derived from a sliding window, based on the average solvent exposure, with a filter on the average local model quality for each peptide. The platform was validated on a custom-assembled database of 1336 experimentally determined epitopes from 106 proteins for which a reliable 3D model could be obtained through standard modeling techniques. Despite showing poor sensitivity, this method can achieve a specificity of 0.70 and a positive predictive value of 0.29 by combining these two simple parameters. These values are slightly higher than those obtained with other established sequence-based or structure-based methods that have been evaluated using the same epitopes dataset. This method is implemented in a web server called B-Pred, which is accessible at http://immuno.bio.uniroma2.it/bpred. The server contains a number of original features that allow users to perform personalized reagent searches by manipulating the sliding window’s width and sliding step, changing the exposure and model quality thresholds, and running sequential queries with different parameters. The B-Pred server should assist experimentalists in the rational selection of epitope antigens for a wide range of applications. Dove Medical Press 2012-07-25 /pmc/articles/PMC3413014/ /pubmed/22888263 http://dx.doi.org/10.2147/AABC.S30620 Text en © 2012 Giacò et al, publisher and licensee Dove Medical Press Ltd. This is an Open Access article which permits unrestricted noncommercial use, provided the original work is properly cited.
spellingShingle Original Research
Giacò, Luciano
Amicosante, Massimo
Fraziano, Maurizio
Gherardini, Pier Federico
Ausiello, Gabriele
Helmer-Citterich, Manuela
Colizzi, Vittorio
Cabibbo, Andrea
B-Pred, a structure based B-cell epitopes prediction server
title B-Pred, a structure based B-cell epitopes prediction server
title_full B-Pred, a structure based B-cell epitopes prediction server
title_fullStr B-Pred, a structure based B-cell epitopes prediction server
title_full_unstemmed B-Pred, a structure based B-cell epitopes prediction server
title_short B-Pred, a structure based B-cell epitopes prediction server
title_sort b-pred, a structure based b-cell epitopes prediction server
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3413014/
https://www.ncbi.nlm.nih.gov/pubmed/22888263
http://dx.doi.org/10.2147/AABC.S30620
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