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Unbiased Identification of Blood-based Biomarkers for Pulmonary Tuberculosis by Modeling and Mining Molecular Interaction Networks

Efficient diagnosis of tuberculosis (TB) is met with multiple challenges, calling for a shift of focus from pathogen-centric diagnostics towards identification of host-based multi-marker signatures. Transcriptomics offer a list of differentially expressed genes, but cannot by itself identify the mos...

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Autores principales: Sambarey, Awanti, Devaprasad, Abhinandan, Mohan, Abhilash, Ahmed, Asma, Nayak, Soumya, Swaminathan, Soumya, D'Souza, George, Jesuraj, Anto, Dhar, Chirag, Babu, Subash, Vyakarnam, Annapurna, Chandra, Nagasuma
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5233809/
https://www.ncbi.nlm.nih.gov/pubmed/28065665
http://dx.doi.org/10.1016/j.ebiom.2016.12.009
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author Sambarey, Awanti
Devaprasad, Abhinandan
Mohan, Abhilash
Ahmed, Asma
Nayak, Soumya
Swaminathan, Soumya
D'Souza, George
Jesuraj, Anto
Dhar, Chirag
Babu, Subash
Vyakarnam, Annapurna
Chandra, Nagasuma
author_facet Sambarey, Awanti
Devaprasad, Abhinandan
Mohan, Abhilash
Ahmed, Asma
Nayak, Soumya
Swaminathan, Soumya
D'Souza, George
Jesuraj, Anto
Dhar, Chirag
Babu, Subash
Vyakarnam, Annapurna
Chandra, Nagasuma
author_sort Sambarey, Awanti
collection PubMed
description Efficient diagnosis of tuberculosis (TB) is met with multiple challenges, calling for a shift of focus from pathogen-centric diagnostics towards identification of host-based multi-marker signatures. Transcriptomics offer a list of differentially expressed genes, but cannot by itself identify the most influential contributors to the disease phenotype. Here, we describe a computational pipeline that adopts an unbiased approach to identify a biomarker signature. Data from RNA sequencing from whole blood samples of TB patients were integrated with a curated genome-wide molecular interaction network, from which we obtain a comprehensive perspective of variations that occur in the host due to TB. We then implement a sensitive network mining method to shortlist gene candidates that are most central to the disease alterations. We then apply a series of filters that include applicability to multiple publicly available datasets as well as additional validation on independent patient samples, and identify a signature comprising 10 genes — FCGR1A, HK3, RAB13, RBBP8, IFI44L, TIMM10, BCL6, SMARCD3, CYP4F3 and SLPI, that can discriminate between TB and healthy controls as well as distinguish TB from latent tuberculosis and HIV in most cases. The signature has the potential to serve as a diagnostic marker of TB.
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spelling pubmed-52338092017-01-23 Unbiased Identification of Blood-based Biomarkers for Pulmonary Tuberculosis by Modeling and Mining Molecular Interaction Networks Sambarey, Awanti Devaprasad, Abhinandan Mohan, Abhilash Ahmed, Asma Nayak, Soumya Swaminathan, Soumya D'Souza, George Jesuraj, Anto Dhar, Chirag Babu, Subash Vyakarnam, Annapurna Chandra, Nagasuma EBioMedicine Research Paper Efficient diagnosis of tuberculosis (TB) is met with multiple challenges, calling for a shift of focus from pathogen-centric diagnostics towards identification of host-based multi-marker signatures. Transcriptomics offer a list of differentially expressed genes, but cannot by itself identify the most influential contributors to the disease phenotype. Here, we describe a computational pipeline that adopts an unbiased approach to identify a biomarker signature. Data from RNA sequencing from whole blood samples of TB patients were integrated with a curated genome-wide molecular interaction network, from which we obtain a comprehensive perspective of variations that occur in the host due to TB. We then implement a sensitive network mining method to shortlist gene candidates that are most central to the disease alterations. We then apply a series of filters that include applicability to multiple publicly available datasets as well as additional validation on independent patient samples, and identify a signature comprising 10 genes — FCGR1A, HK3, RAB13, RBBP8, IFI44L, TIMM10, BCL6, SMARCD3, CYP4F3 and SLPI, that can discriminate between TB and healthy controls as well as distinguish TB from latent tuberculosis and HIV in most cases. The signature has the potential to serve as a diagnostic marker of TB. Elsevier 2016-12-21 /pmc/articles/PMC5233809/ /pubmed/28065665 http://dx.doi.org/10.1016/j.ebiom.2016.12.009 Text en © 2016 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research Paper
Sambarey, Awanti
Devaprasad, Abhinandan
Mohan, Abhilash
Ahmed, Asma
Nayak, Soumya
Swaminathan, Soumya
D'Souza, George
Jesuraj, Anto
Dhar, Chirag
Babu, Subash
Vyakarnam, Annapurna
Chandra, Nagasuma
Unbiased Identification of Blood-based Biomarkers for Pulmonary Tuberculosis by Modeling and Mining Molecular Interaction Networks
title Unbiased Identification of Blood-based Biomarkers for Pulmonary Tuberculosis by Modeling and Mining Molecular Interaction Networks
title_full Unbiased Identification of Blood-based Biomarkers for Pulmonary Tuberculosis by Modeling and Mining Molecular Interaction Networks
title_fullStr Unbiased Identification of Blood-based Biomarkers for Pulmonary Tuberculosis by Modeling and Mining Molecular Interaction Networks
title_full_unstemmed Unbiased Identification of Blood-based Biomarkers for Pulmonary Tuberculosis by Modeling and Mining Molecular Interaction Networks
title_short Unbiased Identification of Blood-based Biomarkers for Pulmonary Tuberculosis by Modeling and Mining Molecular Interaction Networks
title_sort unbiased identification of blood-based biomarkers for pulmonary tuberculosis by modeling and mining molecular interaction networks
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5233809/
https://www.ncbi.nlm.nih.gov/pubmed/28065665
http://dx.doi.org/10.1016/j.ebiom.2016.12.009
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