Cpmoutational tools for metabolic modeling and gene duplication analysis

This thesis presents new computational methods to analyse both short and long-term effects of temperature increase on biological systems. First, we consider the problem of acclimation of an organism to increased temperatures on short timescales. We develop a novel method of network regression, Accli...

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Main Author: Spivakovsky-Gonzalez, Pablo
Format: Text
Language:unknown
Published: 2021
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Online Access:http://nora.nerc.ac.uk/id/eprint/532935/
https://www.repository.cam.ac.uk/handle/1810/339067
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spelling ftnerc:oai:nora.nerc.ac.uk:532935 2023-05-15T13:41:46+02:00 Cpmoutational tools for metabolic modeling and gene duplication analysis Spivakovsky-Gonzalez, Pablo 2021-11 http://nora.nerc.ac.uk/id/eprint/532935/ https://www.repository.cam.ac.uk/handle/1810/339067 unknown Spivakovsky-Gonzalez, Pablo. 2021 Cpmoutational tools for metabolic modeling and gene duplication analysis. University of Cambridge, Wolfson College, PhD Thesis, 97pp. Publication - Thesis NonPeerReviewed 2021 ftnerc 2023-02-04T19:53:25Z This thesis presents new computational methods to analyse both short and long-term effects of temperature increase on biological systems. First, we consider the problem of acclimation of an organism to increased temperatures on short timescales. We develop a novel method of network regression, AccliNet, based on the acclimation times, which takes into account prior knowledge of functional links between genes to improve the performance of the algorithm. The results obtained by AccliNet are compared with the performance of existing algorithms and are shown to be an improvement in this area. Next, we delve deeper into the metabolic response of the organism to changing temperatures, and develop methods to model and simulate the fluxes of metabolites occurring through a metabolic network. In particular, we construct a simplified model of aerobic respiration for an Antarctic species, and, given a gene expression dataset across different temperatures, we develop two different machine learning approaches to model the fluxes through the metabolic network. The first approach we use is based on denoising autoencoders. The performance of this method is compared to a traditional Bayesian inference approach and found to have higher accuracy. Next, we develop a different machine learning approach to model the unknown data distributions, in this case using a Generative Adversarial Network (GAN) to learn an SDE path through the sampled data points. The performance of this method is compared to the earlier autoencoder approach, as well as to other algorithms. The GAN method is found to have similar accuracy but less robustness to noise than the autoencoder approach. Lastly, we also consider the long-term effects of changing temperatures on biological systems. In particular, we develop a novel package for phylogenetic analysis, called PhylSim, which allows simulations and studies of adaptation and evolution under different scenarios of climate change. We apply the package to the case of adaptation of Antarctic species to their ... Text Antarc* Antarctic Natural Environment Research Council: NERC Open Research Archive Antarctic
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collection Natural Environment Research Council: NERC Open Research Archive
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description This thesis presents new computational methods to analyse both short and long-term effects of temperature increase on biological systems. First, we consider the problem of acclimation of an organism to increased temperatures on short timescales. We develop a novel method of network regression, AccliNet, based on the acclimation times, which takes into account prior knowledge of functional links between genes to improve the performance of the algorithm. The results obtained by AccliNet are compared with the performance of existing algorithms and are shown to be an improvement in this area. Next, we delve deeper into the metabolic response of the organism to changing temperatures, and develop methods to model and simulate the fluxes of metabolites occurring through a metabolic network. In particular, we construct a simplified model of aerobic respiration for an Antarctic species, and, given a gene expression dataset across different temperatures, we develop two different machine learning approaches to model the fluxes through the metabolic network. The first approach we use is based on denoising autoencoders. The performance of this method is compared to a traditional Bayesian inference approach and found to have higher accuracy. Next, we develop a different machine learning approach to model the unknown data distributions, in this case using a Generative Adversarial Network (GAN) to learn an SDE path through the sampled data points. The performance of this method is compared to the earlier autoencoder approach, as well as to other algorithms. The GAN method is found to have similar accuracy but less robustness to noise than the autoencoder approach. Lastly, we also consider the long-term effects of changing temperatures on biological systems. In particular, we develop a novel package for phylogenetic analysis, called PhylSim, which allows simulations and studies of adaptation and evolution under different scenarios of climate change. We apply the package to the case of adaptation of Antarctic species to their ...
format Text
author Spivakovsky-Gonzalez, Pablo
spellingShingle Spivakovsky-Gonzalez, Pablo
Cpmoutational tools for metabolic modeling and gene duplication analysis
author_facet Spivakovsky-Gonzalez, Pablo
author_sort Spivakovsky-Gonzalez, Pablo
title Cpmoutational tools for metabolic modeling and gene duplication analysis
title_short Cpmoutational tools for metabolic modeling and gene duplication analysis
title_full Cpmoutational tools for metabolic modeling and gene duplication analysis
title_fullStr Cpmoutational tools for metabolic modeling and gene duplication analysis
title_full_unstemmed Cpmoutational tools for metabolic modeling and gene duplication analysis
title_sort cpmoutational tools for metabolic modeling and gene duplication analysis
publishDate 2021
url http://nora.nerc.ac.uk/id/eprint/532935/
https://www.repository.cam.ac.uk/handle/1810/339067
geographic Antarctic
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genre_facet Antarc*
Antarctic
op_relation Spivakovsky-Gonzalez, Pablo. 2021 Cpmoutational tools for metabolic modeling and gene duplication analysis. University of Cambridge, Wolfson College, PhD Thesis, 97pp.
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