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Pattern Recognition in Pulmonary Tuberculosis Defined by High Content Peptide Microarray Chip Analysis Representing 61 Proteins from M. tuberculosis

BACKGROUND: Serum antibody-based target identification has been used to identify tumor-associated antigens (TAAs) for development of anti-cancer vaccines. A similar approach can be helpful to identify biologically relevant and clinically meaningful targets in M.tuberculosis (MTB) infection for diagn...

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Autores principales: Gaseitsiwe, Simani, Valentini, Davide, Mahdavifar, Shahnaz, Magalhaes, Isabelle, Hoft, Daniel F., Zerweck, Johannes, Schutkowski, Mike, Andersson, Jan, Reilly, Marie, Maeurer, Markus J.
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2008
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2588537/
https://www.ncbi.nlm.nih.gov/pubmed/19065269
http://dx.doi.org/10.1371/journal.pone.0003840
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author Gaseitsiwe, Simani
Valentini, Davide
Mahdavifar, Shahnaz
Magalhaes, Isabelle
Hoft, Daniel F.
Zerweck, Johannes
Schutkowski, Mike
Andersson, Jan
Reilly, Marie
Maeurer, Markus J.
author_facet Gaseitsiwe, Simani
Valentini, Davide
Mahdavifar, Shahnaz
Magalhaes, Isabelle
Hoft, Daniel F.
Zerweck, Johannes
Schutkowski, Mike
Andersson, Jan
Reilly, Marie
Maeurer, Markus J.
author_sort Gaseitsiwe, Simani
collection PubMed
description BACKGROUND: Serum antibody-based target identification has been used to identify tumor-associated antigens (TAAs) for development of anti-cancer vaccines. A similar approach can be helpful to identify biologically relevant and clinically meaningful targets in M.tuberculosis (MTB) infection for diagnosis or TB vaccine development in clinically well defined populations. METHOD: We constructed a high-content peptide microarray with 61 M.tuberculosis proteins as linear 15 aa peptide stretches with 12 aa overlaps resulting in 7446 individual peptide epitopes. Antibody profiling was carried with serum from 34 individuals with active pulmonary TB and 35 healthy individuals in order to obtain an unbiased view of the MTB epitope pattern recognition pattern. Quality data extraction was performed, data sets were analyzed for significant differences and patterns predictive of TB+/−. FINDINGS: Three distinct patterns of IgG reactivity were identified: 89/7446 peptides were differentially recognized (in 34/34 TB+ patients and in 35/35 healthy individuals) and are highly predictive of the division into TB+ and TB−, other targets were exclusively recognized in all patients with TB (e.g. sigmaF) but not in any of the healthy individuals, and a third peptide set was recognized exclusively in healthy individuals (35/35) but no in TB+ patients. The segregation between TB+ and TB− does not cluster into specific recognition of distinct MTB proteins, but into specific peptide epitope ‘hotspots’ at different locations within the same protein. Antigen recognition pattern profiles in serum from TB+ patients from Armenia vs. patients recruited in Sweden showed that IgG-defined MTB epitopes are very similar in individuals with different genetic background. CONCLUSIONS: A uniform target MTB IgG-epitope recognition pattern exists in pulmonary tuberculosis. Unbiased, high-content peptide microarray chip-based testing of clinically well-defined populations allows to visualize biologically relevant targets useful for development of novel TB diagnostics and vaccines.
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spelling pubmed-25885372008-12-09 Pattern Recognition in Pulmonary Tuberculosis Defined by High Content Peptide Microarray Chip Analysis Representing 61 Proteins from M. tuberculosis Gaseitsiwe, Simani Valentini, Davide Mahdavifar, Shahnaz Magalhaes, Isabelle Hoft, Daniel F. Zerweck, Johannes Schutkowski, Mike Andersson, Jan Reilly, Marie Maeurer, Markus J. PLoS One Research Article BACKGROUND: Serum antibody-based target identification has been used to identify tumor-associated antigens (TAAs) for development of anti-cancer vaccines. A similar approach can be helpful to identify biologically relevant and clinically meaningful targets in M.tuberculosis (MTB) infection for diagnosis or TB vaccine development in clinically well defined populations. METHOD: We constructed a high-content peptide microarray with 61 M.tuberculosis proteins as linear 15 aa peptide stretches with 12 aa overlaps resulting in 7446 individual peptide epitopes. Antibody profiling was carried with serum from 34 individuals with active pulmonary TB and 35 healthy individuals in order to obtain an unbiased view of the MTB epitope pattern recognition pattern. Quality data extraction was performed, data sets were analyzed for significant differences and patterns predictive of TB+/−. FINDINGS: Three distinct patterns of IgG reactivity were identified: 89/7446 peptides were differentially recognized (in 34/34 TB+ patients and in 35/35 healthy individuals) and are highly predictive of the division into TB+ and TB−, other targets were exclusively recognized in all patients with TB (e.g. sigmaF) but not in any of the healthy individuals, and a third peptide set was recognized exclusively in healthy individuals (35/35) but no in TB+ patients. The segregation between TB+ and TB− does not cluster into specific recognition of distinct MTB proteins, but into specific peptide epitope ‘hotspots’ at different locations within the same protein. Antigen recognition pattern profiles in serum from TB+ patients from Armenia vs. patients recruited in Sweden showed that IgG-defined MTB epitopes are very similar in individuals with different genetic background. CONCLUSIONS: A uniform target MTB IgG-epitope recognition pattern exists in pulmonary tuberculosis. Unbiased, high-content peptide microarray chip-based testing of clinically well-defined populations allows to visualize biologically relevant targets useful for development of novel TB diagnostics and vaccines. Public Library of Science 2008-12-09 /pmc/articles/PMC2588537/ /pubmed/19065269 http://dx.doi.org/10.1371/journal.pone.0003840 Text en Gaseitsiwe et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Gaseitsiwe, Simani
Valentini, Davide
Mahdavifar, Shahnaz
Magalhaes, Isabelle
Hoft, Daniel F.
Zerweck, Johannes
Schutkowski, Mike
Andersson, Jan
Reilly, Marie
Maeurer, Markus J.
Pattern Recognition in Pulmonary Tuberculosis Defined by High Content Peptide Microarray Chip Analysis Representing 61 Proteins from M. tuberculosis
title Pattern Recognition in Pulmonary Tuberculosis Defined by High Content Peptide Microarray Chip Analysis Representing 61 Proteins from M. tuberculosis
title_full Pattern Recognition in Pulmonary Tuberculosis Defined by High Content Peptide Microarray Chip Analysis Representing 61 Proteins from M. tuberculosis
title_fullStr Pattern Recognition in Pulmonary Tuberculosis Defined by High Content Peptide Microarray Chip Analysis Representing 61 Proteins from M. tuberculosis
title_full_unstemmed Pattern Recognition in Pulmonary Tuberculosis Defined by High Content Peptide Microarray Chip Analysis Representing 61 Proteins from M. tuberculosis
title_short Pattern Recognition in Pulmonary Tuberculosis Defined by High Content Peptide Microarray Chip Analysis Representing 61 Proteins from M. tuberculosis
title_sort pattern recognition in pulmonary tuberculosis defined by high content peptide microarray chip analysis representing 61 proteins from m. tuberculosis
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2588537/
https://www.ncbi.nlm.nih.gov/pubmed/19065269
http://dx.doi.org/10.1371/journal.pone.0003840
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