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A Modelling Framework Linking Resource-Based Stochastic Translation to the Optimal Design of Synthetic Constructs

SIMPLE SUMMARY: In synthetic biology, it is commonplace to design and insert gene expression constructs into cells for the production of useful proteins. In order to maximise production yield, it is useful to predict the performance of these “engineered cells” in advance of conducting experiments. T...

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Detalles Bibliográficos
Autores principales: Sarvari, Peter, Ingram, Duncan, Stan, Guy-Bart
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7826857/
https://www.ncbi.nlm.nih.gov/pubmed/33430483
http://dx.doi.org/10.3390/biology10010037
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author Sarvari, Peter
Ingram, Duncan
Stan, Guy-Bart
author_facet Sarvari, Peter
Ingram, Duncan
Stan, Guy-Bart
author_sort Sarvari, Peter
collection PubMed
description SIMPLE SUMMARY: In synthetic biology, it is commonplace to design and insert gene expression constructs into cells for the production of useful proteins. In order to maximise production yield, it is useful to predict the performance of these “engineered cells” in advance of conducting experiments. This is typically a complex task, which in recent years has motivated the use of “whole-cell models” (WCMs) that act as computational tools for predicting different aspects of cell growth. Many useful WCMs exist, however a common problem is their over-simplification of ribosome movement on mRNA transcripts during translation. WCMs typically don’t consider that, for constructs with inefficient (“slow”) codons, ribosomes can stall and form “traffic jams”, thereby becoming unavailable for translation of other proteins. To more accurately address these scenarios, we have built a computational framework that combines whole-cell modelling with a detailed account of ribosome movement on mRNA. We show how our framework can be used to link the modular design of a gene expression construct (via its promoter, ribosome binding site and codon composition) to protein yield during continuous cell culture, with a particular focus on how the optimal design can change over time in the presence or absence of “slow” codons. ABSTRACT: The effect of gene expression burden on engineered cells has motivated the use of “whole-cell models” (WCMs) that use shared cellular resources to predict how unnatural gene expression affects cell growth. A common problem with many WCMs is their inability to capture translation in sufficient detail to consider the impact of ribosomal queue formation on mRNA transcripts. To address this, we have built a “stochastic cell calculator” (StoCellAtor) that combines a modified TASEP with a stochastic implementation of an existing WCM. We show how our framework can be used to link a synthetic construct’s modular design (promoter, ribosome binding site (RBS) and codon composition) to protein yield during continuous culture, with a particular focus on the effects of low-efficiency codons and their impact on ribosomal queues. Through our analysis, we recover design principles previously established in our work on burden-sensing strategies, namely that changing promoter strength is often a more efficient way to increase protein yield than RBS strength. Importantly, however, we show how these design implications can change depending on both the duration of protein expression, and on the presence of ribosomal queues.
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spelling pubmed-78268572021-01-25 A Modelling Framework Linking Resource-Based Stochastic Translation to the Optimal Design of Synthetic Constructs Sarvari, Peter Ingram, Duncan Stan, Guy-Bart Biology (Basel) Article SIMPLE SUMMARY: In synthetic biology, it is commonplace to design and insert gene expression constructs into cells for the production of useful proteins. In order to maximise production yield, it is useful to predict the performance of these “engineered cells” in advance of conducting experiments. This is typically a complex task, which in recent years has motivated the use of “whole-cell models” (WCMs) that act as computational tools for predicting different aspects of cell growth. Many useful WCMs exist, however a common problem is their over-simplification of ribosome movement on mRNA transcripts during translation. WCMs typically don’t consider that, for constructs with inefficient (“slow”) codons, ribosomes can stall and form “traffic jams”, thereby becoming unavailable for translation of other proteins. To more accurately address these scenarios, we have built a computational framework that combines whole-cell modelling with a detailed account of ribosome movement on mRNA. We show how our framework can be used to link the modular design of a gene expression construct (via its promoter, ribosome binding site and codon composition) to protein yield during continuous cell culture, with a particular focus on how the optimal design can change over time in the presence or absence of “slow” codons. ABSTRACT: The effect of gene expression burden on engineered cells has motivated the use of “whole-cell models” (WCMs) that use shared cellular resources to predict how unnatural gene expression affects cell growth. A common problem with many WCMs is their inability to capture translation in sufficient detail to consider the impact of ribosomal queue formation on mRNA transcripts. To address this, we have built a “stochastic cell calculator” (StoCellAtor) that combines a modified TASEP with a stochastic implementation of an existing WCM. We show how our framework can be used to link a synthetic construct’s modular design (promoter, ribosome binding site (RBS) and codon composition) to protein yield during continuous culture, with a particular focus on the effects of low-efficiency codons and their impact on ribosomal queues. Through our analysis, we recover design principles previously established in our work on burden-sensing strategies, namely that changing promoter strength is often a more efficient way to increase protein yield than RBS strength. Importantly, however, we show how these design implications can change depending on both the duration of protein expression, and on the presence of ribosomal queues. MDPI 2021-01-07 /pmc/articles/PMC7826857/ /pubmed/33430483 http://dx.doi.org/10.3390/biology10010037 Text en © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Sarvari, Peter
Ingram, Duncan
Stan, Guy-Bart
A Modelling Framework Linking Resource-Based Stochastic Translation to the Optimal Design of Synthetic Constructs
title A Modelling Framework Linking Resource-Based Stochastic Translation to the Optimal Design of Synthetic Constructs
title_full A Modelling Framework Linking Resource-Based Stochastic Translation to the Optimal Design of Synthetic Constructs
title_fullStr A Modelling Framework Linking Resource-Based Stochastic Translation to the Optimal Design of Synthetic Constructs
title_full_unstemmed A Modelling Framework Linking Resource-Based Stochastic Translation to the Optimal Design of Synthetic Constructs
title_short A Modelling Framework Linking Resource-Based Stochastic Translation to the Optimal Design of Synthetic Constructs
title_sort modelling framework linking resource-based stochastic translation to the optimal design of synthetic constructs
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7826857/
https://www.ncbi.nlm.nih.gov/pubmed/33430483
http://dx.doi.org/10.3390/biology10010037
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