Metaheuristics for Search Problems in Genomics - New Algorithms and Applications

In this thesis we made the first steps towards the systematic application of a methodology for automatically building formal models of complex biological systems. Such a methodology could be useful also to design artificial systems possessing desirable properties such as robustness and evolvability....

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Main Author: Benedettini, Stefano <1983>
Other Authors: Roli, Andrea
Format: Doctoral Thesis
Language:en
Published: Alma Mater Studiorum - Università di Bologna 2012
Subjects:
Online Access:http://amsdottorato.unibo.it/4403/
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spelling ndltd-unibo.it-oai-amsdottorato.cib.unibo.it-44032014-11-18T04:51:25Z Metaheuristics for Search Problems in Genomics - New Algorithms and Applications Benedettini, Stefano <1983> ING-INF/05 Sistemi di elaborazione delle informazioni In this thesis we made the first steps towards the systematic application of a methodology for automatically building formal models of complex biological systems. Such a methodology could be useful also to design artificial systems possessing desirable properties such as robustness and evolvability. The approach we follow in this thesis is to manipulate formal models by means of adaptive search methods called metaheuristics. In the first part of the thesis we develop state-of-the-art hybrid metaheuristic algorithms to tackle two important problems in genomics, namely, the Haplotype Inference by parsimony and the Founder Sequence Reconstruction Problem. We compare our algorithms with other effective techniques in the literature, we show strength and limitations of our approaches to various problem formulations and, finally, we propose further enhancements that could possibly improve the performance of our algorithms and widen their applicability. In the second part, we concentrate on Boolean network (BN) models of gene regulatory networks (GRNs). We detail our automatic design methodology and apply it to four use cases which correspond to different design criteria and address some limitations of GRN modeling by BNs. Finally, we tackle the Density Classification Problem with the aim of showing the learning capabilities of BNs. Experimental evaluation of this methodology shows its efficacy in producing network that meet our design criteria. Our results, coherently to what has been found in other works, also suggest that networks manipulated by a search process exhibit a mixture of characteristics typical of different dynamical regimes. Alma Mater Studiorum - Università di Bologna Roli, Andrea 2012-05-31 Doctoral Thesis PeerReviewed application/pdf en http://amsdottorato.unibo.it/4403/ info:eu-repo/semantics/openAccess
collection NDLTD
language en
format Doctoral Thesis
sources NDLTD
topic ING-INF/05 Sistemi di elaborazione delle informazioni
spellingShingle ING-INF/05 Sistemi di elaborazione delle informazioni
Benedettini, Stefano <1983>
Metaheuristics for Search Problems in Genomics - New Algorithms and Applications
description In this thesis we made the first steps towards the systematic application of a methodology for automatically building formal models of complex biological systems. Such a methodology could be useful also to design artificial systems possessing desirable properties such as robustness and evolvability. The approach we follow in this thesis is to manipulate formal models by means of adaptive search methods called metaheuristics. In the first part of the thesis we develop state-of-the-art hybrid metaheuristic algorithms to tackle two important problems in genomics, namely, the Haplotype Inference by parsimony and the Founder Sequence Reconstruction Problem. We compare our algorithms with other effective techniques in the literature, we show strength and limitations of our approaches to various problem formulations and, finally, we propose further enhancements that could possibly improve the performance of our algorithms and widen their applicability. In the second part, we concentrate on Boolean network (BN) models of gene regulatory networks (GRNs). We detail our automatic design methodology and apply it to four use cases which correspond to different design criteria and address some limitations of GRN modeling by BNs. Finally, we tackle the Density Classification Problem with the aim of showing the learning capabilities of BNs. Experimental evaluation of this methodology shows its efficacy in producing network that meet our design criteria. Our results, coherently to what has been found in other works, also suggest that networks manipulated by a search process exhibit a mixture of characteristics typical of different dynamical regimes.
author2 Roli, Andrea
author_facet Roli, Andrea
Benedettini, Stefano <1983>
author Benedettini, Stefano <1983>
author_sort Benedettini, Stefano <1983>
title Metaheuristics for Search Problems in Genomics - New Algorithms and Applications
title_short Metaheuristics for Search Problems in Genomics - New Algorithms and Applications
title_full Metaheuristics for Search Problems in Genomics - New Algorithms and Applications
title_fullStr Metaheuristics for Search Problems in Genomics - New Algorithms and Applications
title_full_unstemmed Metaheuristics for Search Problems in Genomics - New Algorithms and Applications
title_sort metaheuristics for search problems in genomics - new algorithms and applications
publisher Alma Mater Studiorum - Università di Bologna
publishDate 2012
url http://amsdottorato.unibo.it/4403/
work_keys_str_mv AT benedettinistefano1983 metaheuristicsforsearchproblemsingenomicsnewalgorithmsandapplications
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