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Dynamic regulatory network controlling Th17 cell differentiation

Despite their importance, the molecular circuits that control the differentiation of naïve T cells remain largely unknown. Recent studies that reconstructed regulatory networks in mammalian cells have focused on short-term responses and relied on perturbation-based approaches that cannot be readily...

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Autores principales: Yosef, Nir, Shalek, Alex K., Gaublomme, Jellert T., Jin, Hulin, Lee, Youjin, Awasthi, Amit, Wu, Chuan, Karwacz, Katarzyna, Xiao, Sheng, Jorgolli, Marsela, Gennert, David, Satija, Rahul, Shakya, Arvind, Lu, Diana Y., Trombetta, John J., Pillai, Meenu R., Ratcliffe, Peter J., Coleman, Mathew L., Bix, Mark, Tantin, Dean, Park, Hongkun, Kuchroo, Vijay K., Regev, Aviv
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3637864/
https://www.ncbi.nlm.nih.gov/pubmed/23467089
http://dx.doi.org/10.1038/nature11981
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author Yosef, Nir
Shalek, Alex K.
Gaublomme, Jellert T.
Jin, Hulin
Lee, Youjin
Awasthi, Amit
Wu, Chuan
Karwacz, Katarzyna
Xiao, Sheng
Jorgolli, Marsela
Gennert, David
Satija, Rahul
Shakya, Arvind
Lu, Diana Y.
Trombetta, John J.
Pillai, Meenu R.
Ratcliffe, Peter J.
Coleman, Mathew L.
Bix, Mark
Tantin, Dean
Park, Hongkun
Kuchroo, Vijay K.
Regev, Aviv
author_facet Yosef, Nir
Shalek, Alex K.
Gaublomme, Jellert T.
Jin, Hulin
Lee, Youjin
Awasthi, Amit
Wu, Chuan
Karwacz, Katarzyna
Xiao, Sheng
Jorgolli, Marsela
Gennert, David
Satija, Rahul
Shakya, Arvind
Lu, Diana Y.
Trombetta, John J.
Pillai, Meenu R.
Ratcliffe, Peter J.
Coleman, Mathew L.
Bix, Mark
Tantin, Dean
Park, Hongkun
Kuchroo, Vijay K.
Regev, Aviv
author_sort Yosef, Nir
collection PubMed
description Despite their importance, the molecular circuits that control the differentiation of naïve T cells remain largely unknown. Recent studies that reconstructed regulatory networks in mammalian cells have focused on short-term responses and relied on perturbation-based approaches that cannot be readily applied to primary T cells. Here, we combine transcriptional profiling at high temporal resolution, novel computational algorithms, and innovative nanowire-based tools for performing perturbations in primary T cells to systematically derive and experimentally validate a model of the dynamic regulatory network that controls Th17 differentiation. The network consists of two self-reinforcing, but mutually antagonistic, modules, with 12 novel regulators, whose coupled action may be essential for maintaining the balance between Th17 and other CD4+ T cell subsets. Overall, our study identifies and validates 39 regulatory factors, embeds them within a comprehensive temporal network and reveals its organizational principles, and highlights novel drug targets for controlling Th17 differentiation.
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spelling pubmed-36378642013-10-25 Dynamic regulatory network controlling Th17 cell differentiation Yosef, Nir Shalek, Alex K. Gaublomme, Jellert T. Jin, Hulin Lee, Youjin Awasthi, Amit Wu, Chuan Karwacz, Katarzyna Xiao, Sheng Jorgolli, Marsela Gennert, David Satija, Rahul Shakya, Arvind Lu, Diana Y. Trombetta, John J. Pillai, Meenu R. Ratcliffe, Peter J. Coleman, Mathew L. Bix, Mark Tantin, Dean Park, Hongkun Kuchroo, Vijay K. Regev, Aviv Nature Article Despite their importance, the molecular circuits that control the differentiation of naïve T cells remain largely unknown. Recent studies that reconstructed regulatory networks in mammalian cells have focused on short-term responses and relied on perturbation-based approaches that cannot be readily applied to primary T cells. Here, we combine transcriptional profiling at high temporal resolution, novel computational algorithms, and innovative nanowire-based tools for performing perturbations in primary T cells to systematically derive and experimentally validate a model of the dynamic regulatory network that controls Th17 differentiation. The network consists of two self-reinforcing, but mutually antagonistic, modules, with 12 novel regulators, whose coupled action may be essential for maintaining the balance between Th17 and other CD4+ T cell subsets. Overall, our study identifies and validates 39 regulatory factors, embeds them within a comprehensive temporal network and reveals its organizational principles, and highlights novel drug targets for controlling Th17 differentiation. 2013-03-06 2013-04-25 /pmc/articles/PMC3637864/ /pubmed/23467089 http://dx.doi.org/10.1038/nature11981 Text en Users may view, print, copy, download and text and data- mine the content in such documents, for the purposes of academic research, subject always to the full Conditions of use: http://www.nature.com/authors/editorial_policies/license.html#terms
spellingShingle Article
Yosef, Nir
Shalek, Alex K.
Gaublomme, Jellert T.
Jin, Hulin
Lee, Youjin
Awasthi, Amit
Wu, Chuan
Karwacz, Katarzyna
Xiao, Sheng
Jorgolli, Marsela
Gennert, David
Satija, Rahul
Shakya, Arvind
Lu, Diana Y.
Trombetta, John J.
Pillai, Meenu R.
Ratcliffe, Peter J.
Coleman, Mathew L.
Bix, Mark
Tantin, Dean
Park, Hongkun
Kuchroo, Vijay K.
Regev, Aviv
Dynamic regulatory network controlling Th17 cell differentiation
title Dynamic regulatory network controlling Th17 cell differentiation
title_full Dynamic regulatory network controlling Th17 cell differentiation
title_fullStr Dynamic regulatory network controlling Th17 cell differentiation
title_full_unstemmed Dynamic regulatory network controlling Th17 cell differentiation
title_short Dynamic regulatory network controlling Th17 cell differentiation
title_sort dynamic regulatory network controlling th17 cell differentiation
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3637864/
https://www.ncbi.nlm.nih.gov/pubmed/23467089
http://dx.doi.org/10.1038/nature11981
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