Using SetPSO to determine RNA secondary structure

RNA secondary structure prediction is an important field in Bioinformatics. A number of different approaches have been developed to simplify the determination of RNA molecule structures. RNA is a nucleic acid found in living organisms which fulfils a number of important roles in living cells. Knowle...

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Main Author: Neethling, Charles Marais
Other Authors: Engelbrecht, Andries P.
Published: 2013
Subjects:
Rna
Online Access:http://hdl.handle.net/2263/29202
http://upetd.up.ac.za/thesis/available/etd-02162009-112429/
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spelling ndltd-netd.ac.za-oai-union.ndltd.org-up-oai-repository.up.ac.za-2263-292022017-07-20T04:11:42Z Using SetPSO to determine RNA secondary structure Neethling, Charles Marais Engelbrecht, Andries P. mneethling@webmail.co.za Rna Secondary structure Setpso Combinatorial Computational intelligence Particle swarm optimiser UCTD RNA secondary structure prediction is an important field in Bioinformatics. A number of different approaches have been developed to simplify the determination of RNA molecule structures. RNA is a nucleic acid found in living organisms which fulfils a number of important roles in living cells. Knowledge of its structure is crucial in the understanding of its function. Determining RNA secondary structure computationally, rather than by physical means, has the advantage of being a quicker and cheaper method. This dissertation introduces a new Set-based Particle Swarm Optimisation algorithm, known as SetPSO for short, to optimise the structure of an RNA molecule, using an advanced thermodynamic model. Structure prediction is modelled as an energy minimisation problem. Particle swarm optimisation is a simple but effective stochastic optimisation technique developed by Kennedy and Eberhart. This simple technique was adapted to work with variable length particles which consist of a set of elements rather than a vector of real numbers. The effectiveness of this structure prediction approach was compared to that of a dynamic programming algorithm called mfold. It was found that SetPSO can be used as a combinatorial optimisation technique which can be applied to the problem of RNA secondary structure prediction. This research also included an investigation into the behaviour of the new SetPSO optimisation algorithm. Further study needs to be conducted to evaluate the performance of SetPSO on different combinatorial and set-based optimisation problems. Dissertation (MS)--University of Pretoria, 2009. Computer Science unrestricted 2013-09-07T15:08:44Z 2009-04-09 2013-09-07T15:08:44Z 2009-04-20 2009-04-09 2009-02-16 Dissertation http://hdl.handle.net/2263/29202 2008 C178/eo http://upetd.up.ac.za/thesis/available/etd-02162009-112429/ ©University of Pretoria 2008 C178/
collection NDLTD
sources NDLTD
topic Rna
Secondary structure
Setpso
Combinatorial
Computational intelligence
Particle swarm optimiser
UCTD
spellingShingle Rna
Secondary structure
Setpso
Combinatorial
Computational intelligence
Particle swarm optimiser
UCTD
Neethling, Charles Marais
Using SetPSO to determine RNA secondary structure
description RNA secondary structure prediction is an important field in Bioinformatics. A number of different approaches have been developed to simplify the determination of RNA molecule structures. RNA is a nucleic acid found in living organisms which fulfils a number of important roles in living cells. Knowledge of its structure is crucial in the understanding of its function. Determining RNA secondary structure computationally, rather than by physical means, has the advantage of being a quicker and cheaper method. This dissertation introduces a new Set-based Particle Swarm Optimisation algorithm, known as SetPSO for short, to optimise the structure of an RNA molecule, using an advanced thermodynamic model. Structure prediction is modelled as an energy minimisation problem. Particle swarm optimisation is a simple but effective stochastic optimisation technique developed by Kennedy and Eberhart. This simple technique was adapted to work with variable length particles which consist of a set of elements rather than a vector of real numbers. The effectiveness of this structure prediction approach was compared to that of a dynamic programming algorithm called mfold. It was found that SetPSO can be used as a combinatorial optimisation technique which can be applied to the problem of RNA secondary structure prediction. This research also included an investigation into the behaviour of the new SetPSO optimisation algorithm. Further study needs to be conducted to evaluate the performance of SetPSO on different combinatorial and set-based optimisation problems. === Dissertation (MS)--University of Pretoria, 2009. === Computer Science === unrestricted
author2 Engelbrecht, Andries P.
author_facet Engelbrecht, Andries P.
Neethling, Charles Marais
author Neethling, Charles Marais
author_sort Neethling, Charles Marais
title Using SetPSO to determine RNA secondary structure
title_short Using SetPSO to determine RNA secondary structure
title_full Using SetPSO to determine RNA secondary structure
title_fullStr Using SetPSO to determine RNA secondary structure
title_full_unstemmed Using SetPSO to determine RNA secondary structure
title_sort using setpso to determine rna secondary structure
publishDate 2013
url http://hdl.handle.net/2263/29202
http://upetd.up.ac.za/thesis/available/etd-02162009-112429/
work_keys_str_mv AT neethlingcharlesmarais usingsetpsotodeterminernasecondarystructure
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