Analysis of genetic variation and potential applications in genome-scale metabolic modeling

Genetic variation is the motor of evolution and allows organisms to overcome the environmental challenges they encounter. It can be both beneficial and harmful in the process of engineering cell factories for the production of proteins and chemicals. Throughout the history of biotechnology, there ha...

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Main Authors: João Gonçalo Rocha Cardoso, Mikael Rørdam eAndersen, Markus J Herrgard, Nikolaus eSonnenschein
Format: Article
Language:English
Published: Frontiers Media S.A. 2015-02-01
Series:Frontiers in Bioengineering and Biotechnology
Subjects:
SNP
Online Access:http://journal.frontiersin.org/Journal/10.3389/fbioe.2015.00013/full
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spelling doaj-17fe5679219a47b3b964cd1e43aaaacf2020-11-25T01:32:29ZengFrontiers Media S.A.Frontiers in Bioengineering and Biotechnology2296-41852015-02-01310.3389/fbioe.2015.00013127738Analysis of genetic variation and potential applications in genome-scale metabolic modelingJoão Gonçalo Rocha Cardoso0Mikael Rørdam eAndersen1Markus J Herrgard2Nikolaus eSonnenschein3Danmarks Tekniske UniversitetDanmarks Tekniske UniversitetDanmarks Tekniske UniversitetDanmarks Tekniske UniversitetGenetic variation is the motor of evolution and allows organisms to overcome the environmental challenges they encounter. It can be both beneficial and harmful in the process of engineering cell factories for the production of proteins and chemicals. Throughout the history of biotechnology, there have been efforts to exploit genetic variation in our favor to create strains with favorable phenotypes. Genetic variation can either be present in natural populations or it can be artificially created by mutagenesis and selection or adaptive laboratory evolution. On the other hand, unintended genetic variation during a long term production process may lead to significant economic losses and it is important to understand how to control this type of variation. With the emergence of next-generation sequencing technologies, genetic variation in microbial strains can now be determined on an unprecedented scale and resolution by re-sequencing thousands of strains systematically. In this article, we review challenges in the integration and analysis of large-scale re-sequencing data, present an extensive overview of bioinformatics methods for predicting the effects of genetic variants on protein function, and discuss approaches for interfacing existing bioinformatics approaches with genome-scale models of cellular processes in order to predict effects of sequence variation on cellular phenotypes.http://journal.frontiersin.org/Journal/10.3389/fbioe.2015.00013/fullGenetic VariationMetabolic EngineeringMetabolismSNPNext-generation sequencinghigh-throughput analysis
collection DOAJ
language English
format Article
sources DOAJ
author João Gonçalo Rocha Cardoso
Mikael Rørdam eAndersen
Markus J Herrgard
Nikolaus eSonnenschein
spellingShingle João Gonçalo Rocha Cardoso
Mikael Rørdam eAndersen
Markus J Herrgard
Nikolaus eSonnenschein
Analysis of genetic variation and potential applications in genome-scale metabolic modeling
Frontiers in Bioengineering and Biotechnology
Genetic Variation
Metabolic Engineering
Metabolism
SNP
Next-generation sequencing
high-throughput analysis
author_facet João Gonçalo Rocha Cardoso
Mikael Rørdam eAndersen
Markus J Herrgard
Nikolaus eSonnenschein
author_sort João Gonçalo Rocha Cardoso
title Analysis of genetic variation and potential applications in genome-scale metabolic modeling
title_short Analysis of genetic variation and potential applications in genome-scale metabolic modeling
title_full Analysis of genetic variation and potential applications in genome-scale metabolic modeling
title_fullStr Analysis of genetic variation and potential applications in genome-scale metabolic modeling
title_full_unstemmed Analysis of genetic variation and potential applications in genome-scale metabolic modeling
title_sort analysis of genetic variation and potential applications in genome-scale metabolic modeling
publisher Frontiers Media S.A.
series Frontiers in Bioengineering and Biotechnology
issn 2296-4185
publishDate 2015-02-01
description Genetic variation is the motor of evolution and allows organisms to overcome the environmental challenges they encounter. It can be both beneficial and harmful in the process of engineering cell factories for the production of proteins and chemicals. Throughout the history of biotechnology, there have been efforts to exploit genetic variation in our favor to create strains with favorable phenotypes. Genetic variation can either be present in natural populations or it can be artificially created by mutagenesis and selection or adaptive laboratory evolution. On the other hand, unintended genetic variation during a long term production process may lead to significant economic losses and it is important to understand how to control this type of variation. With the emergence of next-generation sequencing technologies, genetic variation in microbial strains can now be determined on an unprecedented scale and resolution by re-sequencing thousands of strains systematically. In this article, we review challenges in the integration and analysis of large-scale re-sequencing data, present an extensive overview of bioinformatics methods for predicting the effects of genetic variants on protein function, and discuss approaches for interfacing existing bioinformatics approaches with genome-scale models of cellular processes in order to predict effects of sequence variation on cellular phenotypes.
topic Genetic Variation
Metabolic Engineering
Metabolism
SNP
Next-generation sequencing
high-throughput analysis
url http://journal.frontiersin.org/Journal/10.3389/fbioe.2015.00013/full
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AT mikaelrørdameandersen analysisofgeneticvariationandpotentialapplicationsingenomescalemetabolicmodeling
AT markusjherrgard analysisofgeneticvariationandpotentialapplicationsingenomescalemetabolicmodeling
AT nikolausesonnenschein analysisofgeneticvariationandpotentialapplicationsingenomescalemetabolicmodeling
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