Predicting susceptibility to tuberculosis based on gene expression profiling in dendritic cells
Abstract Tuberculosis (TB) is a deadly infectious disease, which kills millions of people every year. The causative pathogen, Mycobacterium tuberculosis (MTB), is estimated to have infected up to a third of the world’s population; however, only approximately 10% of infected healthy individuals progr...
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doaj-ffefa45ee3b3462d9dbdbe1fa3f7f2232020-12-08T01:49:37ZengNature Publishing GroupScientific Reports2045-23222017-07-017111110.1038/s41598-017-05878-wPredicting susceptibility to tuberculosis based on gene expression profiling in dendritic cellsJohn D. Blischak0Ludovic Tailleux1Marsha Myrthil2Cécile Charlois3Emmanuel Bergot4Aurélien Dinh5Gloria Morizot6Olivia Chény7Cassandre Von Platen8Jean-Louis Herrmann9Roland Brosch10Luis B. Barreiro11Yoav Gilad12Department of Human Genetics, University of ChicagoIntegrated Mycobacterial Pathogenomics, Institut PasteurDepartment of Human Genetics, University of ChicagoCentre de Lutte Antituberculeuse de Paris, DASES Mairie de ParisService de pneumologie et oncologie thoracique, CHU Côte de NacreMaladies Infectieuses, AP-HP, Hôpital Universitaire Raymond-PoincaréClinical Investigation & Access Biological Resources (ICAReB), Institut PasteurClinical Core, Centre for Translational Science, Institut PasteurClinical Core, Centre for Translational Science, Institut PasteurINSERM, U1173, UFR Simone Veil, Université de Versailles Saint QuentinIntegrated Mycobacterial Pathogenomics, Institut PasteurDepartment of Genetics, CHU Sainte-Justine Research CenterDepartment of Human Genetics, University of ChicagoAbstract Tuberculosis (TB) is a deadly infectious disease, which kills millions of people every year. The causative pathogen, Mycobacterium tuberculosis (MTB), is estimated to have infected up to a third of the world’s population; however, only approximately 10% of infected healthy individuals progress to active TB. Despite evidence for heritability, it is not currently possible to predict who may develop TB. To explore approaches to classify susceptibility to TB, we infected with MTB dendritic cells (DCs) from putatively resistant individuals diagnosed with latent TB, and from susceptible individuals that had recovered from active TB. We measured gene expression levels in infected and non-infected cells and found hundreds of differentially expressed genes between susceptible and resistant individuals in the non-infected cells. We further found that genetic polymorphisms nearby the differentially expressed genes between susceptible and resistant individuals are more likely to be associated with TB susceptibility in published GWAS data. Lastly, we trained a classifier based on the gene expression levels in the non-infected cells, and demonstrated reasonable performance on our data and an independent data set. Overall, our promising results from this small study suggest that training a classifier on a larger cohort may enable us to accurately predict TB susceptibility.https://doi.org/10.1038/s41598-017-05878-w |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
John D. Blischak Ludovic Tailleux Marsha Myrthil Cécile Charlois Emmanuel Bergot Aurélien Dinh Gloria Morizot Olivia Chény Cassandre Von Platen Jean-Louis Herrmann Roland Brosch Luis B. Barreiro Yoav Gilad |
spellingShingle |
John D. Blischak Ludovic Tailleux Marsha Myrthil Cécile Charlois Emmanuel Bergot Aurélien Dinh Gloria Morizot Olivia Chény Cassandre Von Platen Jean-Louis Herrmann Roland Brosch Luis B. Barreiro Yoav Gilad Predicting susceptibility to tuberculosis based on gene expression profiling in dendritic cells Scientific Reports |
author_facet |
John D. Blischak Ludovic Tailleux Marsha Myrthil Cécile Charlois Emmanuel Bergot Aurélien Dinh Gloria Morizot Olivia Chény Cassandre Von Platen Jean-Louis Herrmann Roland Brosch Luis B. Barreiro Yoav Gilad |
author_sort |
John D. Blischak |
title |
Predicting susceptibility to tuberculosis based on gene expression profiling in dendritic cells |
title_short |
Predicting susceptibility to tuberculosis based on gene expression profiling in dendritic cells |
title_full |
Predicting susceptibility to tuberculosis based on gene expression profiling in dendritic cells |
title_fullStr |
Predicting susceptibility to tuberculosis based on gene expression profiling in dendritic cells |
title_full_unstemmed |
Predicting susceptibility to tuberculosis based on gene expression profiling in dendritic cells |
title_sort |
predicting susceptibility to tuberculosis based on gene expression profiling in dendritic cells |
publisher |
Nature Publishing Group |
series |
Scientific Reports |
issn |
2045-2322 |
publishDate |
2017-07-01 |
description |
Abstract Tuberculosis (TB) is a deadly infectious disease, which kills millions of people every year. The causative pathogen, Mycobacterium tuberculosis (MTB), is estimated to have infected up to a third of the world’s population; however, only approximately 10% of infected healthy individuals progress to active TB. Despite evidence for heritability, it is not currently possible to predict who may develop TB. To explore approaches to classify susceptibility to TB, we infected with MTB dendritic cells (DCs) from putatively resistant individuals diagnosed with latent TB, and from susceptible individuals that had recovered from active TB. We measured gene expression levels in infected and non-infected cells and found hundreds of differentially expressed genes between susceptible and resistant individuals in the non-infected cells. We further found that genetic polymorphisms nearby the differentially expressed genes between susceptible and resistant individuals are more likely to be associated with TB susceptibility in published GWAS data. Lastly, we trained a classifier based on the gene expression levels in the non-infected cells, and demonstrated reasonable performance on our data and an independent data set. Overall, our promising results from this small study suggest that training a classifier on a larger cohort may enable us to accurately predict TB susceptibility. |
url |
https://doi.org/10.1038/s41598-017-05878-w |
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