Genetic algorithm for analysis of mutations in Parkinson’s disease

Detalhes bibliográficos
Autor(a) principal: Smigrodzki, Rafal
Data de Publicação: 2005
Outros Autores: Goertzel, Ben, Pennachin, Cassio, Coelho, Lúcio, Prosdocimi, Francisco, Parker Jr., W. Davis
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Repositório Institucional da UCB
Texto Completo: http://twingo.ucb.br:8080/jspui/handle/10869/423
https://repositorio.ucb.br:9443/jspui/handle/123456789/7616
Resumo: Mitochondrial genetics has unique features that impede analysis of the biological significance of mitochondrial mutations. Simple searches for differences in total mutational load between normal and pathological samples have been frequently unrewarding, raising the possibility that more complex patterns of mutations may be responsible for some conditions. We explore this possibility in the context of Parkinson’s disease (PD). Methods and materials: We report the development of a modified genetic algorithm suited for detection of biologically meaningful patterns of mitochondrial mutations. The algorithm is applied to a database of mutations derived from biological samples, and verified by the use of shuffled data, and repeated leave-one-out testing. Results: It is possible to derive, from a very small sample, multiple accurate classifier functions that correlate with biological features. The methodology is validated statistically through experiments with fabricated data. Conclusion: This algorithm might be generally applicable to conditions where interactions among multiple mitochondrial DNA mutations are important. The patterns embodied in the classifier functions obtained should be the subject of further experimental study.
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spelling Smigrodzki, RafalGoertzel, BenPennachin, CassioCoelho, LúcioProsdocimi, FranciscoParker Jr., W. Davis2016-10-10T03:52:06Z2016-10-10T03:52:06Z2005SMIGRODZKI, Rafal et al. Genetic algorithm for analysis of mutations in Parkinson’s disease. Artificial Intelligence in Medicine, v. 35, n.3, p. 227-241, 2005.9333657http://twingo.ucb.br:8080/jspui/handle/10869/423https://repositorio.ucb.br:9443/jspui/handle/123456789/7616Mitochondrial genetics has unique features that impede analysis of the biological significance of mitochondrial mutations. Simple searches for differences in total mutational load between normal and pathological samples have been frequently unrewarding, raising the possibility that more complex patterns of mutations may be responsible for some conditions. We explore this possibility in the context of Parkinson’s disease (PD). Methods and materials: We report the development of a modified genetic algorithm suited for detection of biologically meaningful patterns of mitochondrial mutations. The algorithm is applied to a database of mutations derived from biological samples, and verified by the use of shuffled data, and repeated leave-one-out testing. Results: It is possible to derive, from a very small sample, multiple accurate classifier functions that correlate with biological features. The methodology is validated statistically through experiments with fabricated data. Conclusion: This algorithm might be generally applicable to conditions where interactions among multiple mitochondrial DNA mutations are important. The patterns embodied in the classifier functions obtained should be the subject of further experimental study.Made available in DSpace on 2016-10-10T03:52:06Z (GMT). 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dc.title.pt_BR.fl_str_mv Genetic algorithm for analysis of mutations in Parkinson’s disease
title Genetic algorithm for analysis of mutations in Parkinson’s disease
spellingShingle Genetic algorithm for analysis of mutations in Parkinson’s disease
Smigrodzki, Rafal
Genetic algorithm
Mitochondrial DNA
Pattern recognition
Parkinson’s disease
title_short Genetic algorithm for analysis of mutations in Parkinson’s disease
title_full Genetic algorithm for analysis of mutations in Parkinson’s disease
title_fullStr Genetic algorithm for analysis of mutations in Parkinson’s disease
title_full_unstemmed Genetic algorithm for analysis of mutations in Parkinson’s disease
title_sort Genetic algorithm for analysis of mutations in Parkinson’s disease
author Smigrodzki, Rafal
author_facet Smigrodzki, Rafal
Goertzel, Ben
Pennachin, Cassio
Coelho, Lúcio
Prosdocimi, Francisco
Parker Jr., W. Davis
author_role author
author2 Goertzel, Ben
Pennachin, Cassio
Coelho, Lúcio
Prosdocimi, Francisco
Parker Jr., W. Davis
author2_role author
author
author
author
author
dc.contributor.author.fl_str_mv Smigrodzki, Rafal
Goertzel, Ben
Pennachin, Cassio
Coelho, Lúcio
Prosdocimi, Francisco
Parker Jr., W. Davis
dc.subject.por.fl_str_mv Genetic algorithm
Mitochondrial DNA
Pattern recognition
Parkinson’s disease
topic Genetic algorithm
Mitochondrial DNA
Pattern recognition
Parkinson’s disease
dc.description.abstract.por.fl_txt_mv Mitochondrial genetics has unique features that impede analysis of the biological significance of mitochondrial mutations. Simple searches for differences in total mutational load between normal and pathological samples have been frequently unrewarding, raising the possibility that more complex patterns of mutations may be responsible for some conditions. We explore this possibility in the context of Parkinson’s disease (PD). Methods and materials: We report the development of a modified genetic algorithm suited for detection of biologically meaningful patterns of mitochondrial mutations. The algorithm is applied to a database of mutations derived from biological samples, and verified by the use of shuffled data, and repeated leave-one-out testing. Results: It is possible to derive, from a very small sample, multiple accurate classifier functions that correlate with biological features. The methodology is validated statistically through experiments with fabricated data. Conclusion: This algorithm might be generally applicable to conditions where interactions among multiple mitochondrial DNA mutations are important. The patterns embodied in the classifier functions obtained should be the subject of further experimental study.
dc.description.version.pt_BR.fl_txt_mv Sim
dc.description.status.pt_BR.fl_txt_mv Publicado
description Mitochondrial genetics has unique features that impede analysis of the biological significance of mitochondrial mutations. Simple searches for differences in total mutational load between normal and pathological samples have been frequently unrewarding, raising the possibility that more complex patterns of mutations may be responsible for some conditions. We explore this possibility in the context of Parkinson’s disease (PD). Methods and materials: We report the development of a modified genetic algorithm suited for detection of biologically meaningful patterns of mitochondrial mutations. The algorithm is applied to a database of mutations derived from biological samples, and verified by the use of shuffled data, and repeated leave-one-out testing. Results: It is possible to derive, from a very small sample, multiple accurate classifier functions that correlate with biological features. The methodology is validated statistically through experiments with fabricated data. Conclusion: This algorithm might be generally applicable to conditions where interactions among multiple mitochondrial DNA mutations are important. The patterns embodied in the classifier functions obtained should be the subject of further experimental study.
publishDate 2005
dc.date.issued.fl_str_mv 2005
dc.date.accessioned.fl_str_mv 2016-10-10T03:52:06Z
dc.date.available.fl_str_mv 2016-10-10T03:52:06Z
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dc.identifier.citation.fl_str_mv SMIGRODZKI, Rafal et al. Genetic algorithm for analysis of mutations in Parkinson’s disease. Artificial Intelligence in Medicine, v. 35, n.3, p. 227-241, 2005.
dc.identifier.uri.fl_str_mv http://twingo.ucb.br:8080/jspui/handle/10869/423
https://repositorio.ucb.br:9443/jspui/handle/123456789/7616
dc.identifier.issn.none.fl_str_mv 9333657
identifier_str_mv SMIGRODZKI, Rafal et al. Genetic algorithm for analysis of mutations in Parkinson’s disease. Artificial Intelligence in Medicine, v. 35, n.3, p. 227-241, 2005.
9333657
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