Systems metabolic engineering of Arabidopsis for increased cellulose production

Computational biology enabled us to manage vast amount of experimental data and make inferences on observations that we had not made. Among the many methods, predicting metabolic functions with genome-scale models had shown promising results in the recent years. Using sophisticated algorithms, suc...

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Main Author: Yen, Jiun Yang
Other Authors: Biological Systems Engineering
Format: Others
Published: Virginia Tech 2015
Subjects:
Online Access:http://hdl.handle.net/10919/54589
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spelling ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-545892020-09-29T05:42:03Z Systems metabolic engineering of Arabidopsis for increased cellulose production Yen, Jiun Yang Biological Systems Engineering Senger, Ryan S. Gillaspy, Glenda E. Zhang, Chenming cellulose Arabidopsis thaliana genome-scale model flux ratio flux balance analysis mitochondrial malate dehydrogenase biomass Computational biology enabled us to manage vast amount of experimental data and make inferences on observations that we had not made. Among the many methods, predicting metabolic functions with genome-scale models had shown promising results in the recent years. Using sophisticated algorithms, such as flux balance analysis, OptKnock, and OptForce, we can predict flux distributions and design metabolic engineering strategies at a greater efficiency. The caveat of these current methods is the accuracy of the predictions. We proposed using flux balance analysis with flux ratios as a possible solution to improving the accuracy of the conventional methods. To examine the accuracy of our approach, we implemented flux balance analyses with flux ratios in five publicly available genome-scale models of five different organisms, including Arabidopsis thaliana, yeast, cyanobacteria, Escherichia coli, and Clostridium acetobutylicum, using published metabolic engineering strategies for improving product yields in these organisms. We examined the limitations of the published strategies, searched for possible improvements, and evaluated the impact of these strategies on growth and product yields. The flux balance analysis with flux ratio method requires a prior knowledge on the critical regions of the metabolic network where altering flux ratios can have significant impact on flux redistribution. Thus, we further developed the reverse flux balance analysis with flux ratio algorithm as a possible solution to automatically identify these critical regions and suggest metabolic engineering strategies. We examined the accuracy of this algorithm using an Arabidopsis genome-scale model and found consistency in the prediction with our experimental data. Master of Science 2015-07-24T06:00:32Z 2015-07-24T06:00:32Z 2014-01-29 Thesis vt_gsexam:2112 http://hdl.handle.net/10919/54589 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf application/pdf Virginia Tech
collection NDLTD
format Others
sources NDLTD
topic cellulose
Arabidopsis thaliana
genome-scale model
flux ratio
flux balance analysis
mitochondrial malate dehydrogenase
biomass
spellingShingle cellulose
Arabidopsis thaliana
genome-scale model
flux ratio
flux balance analysis
mitochondrial malate dehydrogenase
biomass
Yen, Jiun Yang
Systems metabolic engineering of Arabidopsis for increased cellulose production
description Computational biology enabled us to manage vast amount of experimental data and make inferences on observations that we had not made. Among the many methods, predicting metabolic functions with genome-scale models had shown promising results in the recent years. Using sophisticated algorithms, such as flux balance analysis, OptKnock, and OptForce, we can predict flux distributions and design metabolic engineering strategies at a greater efficiency. The caveat of these current methods is the accuracy of the predictions. We proposed using flux balance analysis with flux ratios as a possible solution to improving the accuracy of the conventional methods. To examine the accuracy of our approach, we implemented flux balance analyses with flux ratios in five publicly available genome-scale models of five different organisms, including Arabidopsis thaliana, yeast, cyanobacteria, Escherichia coli, and Clostridium acetobutylicum, using published metabolic engineering strategies for improving product yields in these organisms. We examined the limitations of the published strategies, searched for possible improvements, and evaluated the impact of these strategies on growth and product yields. The flux balance analysis with flux ratio method requires a prior knowledge on the critical regions of the metabolic network where altering flux ratios can have significant impact on flux redistribution. Thus, we further developed the reverse flux balance analysis with flux ratio algorithm as a possible solution to automatically identify these critical regions and suggest metabolic engineering strategies. We examined the accuracy of this algorithm using an Arabidopsis genome-scale model and found consistency in the prediction with our experimental data. === Master of Science
author2 Biological Systems Engineering
author_facet Biological Systems Engineering
Yen, Jiun Yang
author Yen, Jiun Yang
author_sort Yen, Jiun Yang
title Systems metabolic engineering of Arabidopsis for increased cellulose production
title_short Systems metabolic engineering of Arabidopsis for increased cellulose production
title_full Systems metabolic engineering of Arabidopsis for increased cellulose production
title_fullStr Systems metabolic engineering of Arabidopsis for increased cellulose production
title_full_unstemmed Systems metabolic engineering of Arabidopsis for increased cellulose production
title_sort systems metabolic engineering of arabidopsis for increased cellulose production
publisher Virginia Tech
publishDate 2015
url http://hdl.handle.net/10919/54589
work_keys_str_mv AT yenjiunyang systemsmetabolicengineeringofarabidopsisforincreasedcelluloseproduction
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