Engineering a riboswitch-based genetic platform for the self-directed evolution of acid-tolerant phenotypes

Cells are exposed to shifts in environmental pH, which direct their metabolism and behavior. Here the authors design pH-sensing riboswitches to create a gene expression program, digitalize the system to respond to a narrow pH range and apply it to evolve host cells with improved tolerance to a varie...

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Autores principales: Hoang Long Pham, Adison Wong, Niying Chua, Wei Suong Teo, Wen Shan Yew, Matthew Wook Chang
Formato: article
Lenguaje:EN
Publicado: Nature Portfolio 2017
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Acceso en línea:https://doaj.org/article/5c2c92d882484cfb8b1ed9af3d8bee95
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spelling oai:doaj.org-article:5c2c92d882484cfb8b1ed9af3d8bee952021-12-02T17:06:18ZEngineering a riboswitch-based genetic platform for the self-directed evolution of acid-tolerant phenotypes10.1038/s41467-017-00511-w2041-1723https://doaj.org/article/5c2c92d882484cfb8b1ed9af3d8bee952017-09-01T00:00:00Zhttps://doi.org/10.1038/s41467-017-00511-whttps://doaj.org/toc/2041-1723Cells are exposed to shifts in environmental pH, which direct their metabolism and behavior. Here the authors design pH-sensing riboswitches to create a gene expression program, digitalize the system to respond to a narrow pH range and apply it to evolve host cells with improved tolerance to a variety of organic acids.Hoang Long PhamAdison WongNiying ChuaWei Suong TeoWen Shan YewMatthew Wook ChangNature PortfolioarticleScienceQENNature Communications, Vol 8, Iss 1, Pp 1-12 (2017)
institution DOAJ
collection DOAJ
language EN
topic Science
Q
spellingShingle Science
Q
Hoang Long Pham
Adison Wong
Niying Chua
Wei Suong Teo
Wen Shan Yew
Matthew Wook Chang
Engineering a riboswitch-based genetic platform for the self-directed evolution of acid-tolerant phenotypes
description Cells are exposed to shifts in environmental pH, which direct their metabolism and behavior. Here the authors design pH-sensing riboswitches to create a gene expression program, digitalize the system to respond to a narrow pH range and apply it to evolve host cells with improved tolerance to a variety of organic acids.
format article
author Hoang Long Pham
Adison Wong
Niying Chua
Wei Suong Teo
Wen Shan Yew
Matthew Wook Chang
author_facet Hoang Long Pham
Adison Wong
Niying Chua
Wei Suong Teo
Wen Shan Yew
Matthew Wook Chang
author_sort Hoang Long Pham
title Engineering a riboswitch-based genetic platform for the self-directed evolution of acid-tolerant phenotypes
title_short Engineering a riboswitch-based genetic platform for the self-directed evolution of acid-tolerant phenotypes
title_full Engineering a riboswitch-based genetic platform for the self-directed evolution of acid-tolerant phenotypes
title_fullStr Engineering a riboswitch-based genetic platform for the self-directed evolution of acid-tolerant phenotypes
title_full_unstemmed Engineering a riboswitch-based genetic platform for the self-directed evolution of acid-tolerant phenotypes
title_sort engineering a riboswitch-based genetic platform for the self-directed evolution of acid-tolerant phenotypes
publisher Nature Portfolio
publishDate 2017
url https://doaj.org/article/5c2c92d882484cfb8b1ed9af3d8bee95
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AT wenshanyew engineeringariboswitchbasedgeneticplatformfortheselfdirectedevolutionofacidtolerantphenotypes
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