Superiority of artificial neural networks for a genetic classification procedure

Detalhes bibliográficos
Autor(a) principal: Sant’Anna, I.C.
Data de Publicação: 2015
Outros Autores: Tomaz, R.S., Silva, G.N., Nascimento, M., Bhering, L.L., Cruz, C.D.
Tipo de documento: Artigo
Idioma: eng
Título da fonte: LOCUS Repositório Institucional da UFV
Texto Completo: http://dx.doi.org/10.4238/2015.August.19.24
http://www.locus.ufv.br/handle/123456789/19647
Resumo: The correct classification of individuals is extremely important for the preservation of genetic variability and for maximization of yield in breeding programs using phenotypic traits and genetic markers. The Fisher and Anderson discriminant functions are commonly used multivariate statistical techniques for these situations, which allow for the allocation of an initially unknown individual to predefined groups. However, for higher levels of similarity, such as those found in backcrossed populations, these methods have proven to be inefficient. Recently, much research has been devoted to developing a new paradigm of computing known as artificial neural networks (ANNs), which can be used to solve many statistical problems, including classification problems. The aim of this study was to evaluate the feasibility of ANNs as an evaluation technique of genetic diversity by comparing their performance with that of traditional methods. The discriminant functions were equally ineffective in discriminating the populations, with error rates of 23-82%, thereby preventing the correct discrimination of individuals between populations. The ANN was effective in classifying populations with low and high differentiation, such as those derived from a genetic design established from backcrosses, even in cases of low differentiation of the data sets. The ANN appears to be a promising technique to solve classification problems, since the number of individuals classified incorrectly by the ANN was always lower than that of the discriminant functions. We envisage the potential relevant application of this improved procedure in the genomic classification of markers to distinguish between breeds and accessions.
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spelling Superiority of artificial neural networks for a genetic classification procedureArtificial IntelligenceDiscriminationSimilarityStatisticsThe correct classification of individuals is extremely important for the preservation of genetic variability and for maximization of yield in breeding programs using phenotypic traits and genetic markers. The Fisher and Anderson discriminant functions are commonly used multivariate statistical techniques for these situations, which allow for the allocation of an initially unknown individual to predefined groups. However, for higher levels of similarity, such as those found in backcrossed populations, these methods have proven to be inefficient. Recently, much research has been devoted to developing a new paradigm of computing known as artificial neural networks (ANNs), which can be used to solve many statistical problems, including classification problems. The aim of this study was to evaluate the feasibility of ANNs as an evaluation technique of genetic diversity by comparing their performance with that of traditional methods. The discriminant functions were equally ineffective in discriminating the populations, with error rates of 23-82%, thereby preventing the correct discrimination of individuals between populations. The ANN was effective in classifying populations with low and high differentiation, such as those derived from a genetic design established from backcrosses, even in cases of low differentiation of the data sets. The ANN appears to be a promising technique to solve classification problems, since the number of individuals classified incorrectly by the ANN was always lower than that of the discriminant functions. We envisage the potential relevant application of this improved procedure in the genomic classification of markers to distinguish between breeds and accessions.Genetics and Molecular Research2018-05-17T14:19:20Z2018-05-17T14:19:20Z2015-08-19info:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/articlepdfapplication/pdf16765680http://dx.doi.org/10.4238/2015.August.19.24http://www.locus.ufv.br/handle/123456789/19647engv. 14, n. 3, p. 9898-9906, Agosto 2015Sant’Anna, I.C.Tomaz, R.S.Silva, G.N.Nascimento, M.Bhering, L.L.Cruz, C.D.info:eu-repo/semantics/openAccessreponame:LOCUS Repositório Institucional da UFVinstname:Universidade Federal de Viçosa (UFV)instacron:UFV2024-07-12T07:43:04Zoai:locus.ufv.br:123456789/19647Repositório InstitucionalPUBhttps://www.locus.ufv.br/oai/requestfabiojreis@ufv.bropendoar:21452024-07-12T07:43:04LOCUS Repositório Institucional da UFV - Universidade Federal de Viçosa (UFV)false
dc.title.none.fl_str_mv Superiority of artificial neural networks for a genetic classification procedure
title Superiority of artificial neural networks for a genetic classification procedure
spellingShingle Superiority of artificial neural networks for a genetic classification procedure
Sant’Anna, I.C.
Artificial Intelligence
Discrimination
Similarity
Statistics
title_short Superiority of artificial neural networks for a genetic classification procedure
title_full Superiority of artificial neural networks for a genetic classification procedure
title_fullStr Superiority of artificial neural networks for a genetic classification procedure
title_full_unstemmed Superiority of artificial neural networks for a genetic classification procedure
title_sort Superiority of artificial neural networks for a genetic classification procedure
author Sant’Anna, I.C.
author_facet Sant’Anna, I.C.
Tomaz, R.S.
Silva, G.N.
Nascimento, M.
Bhering, L.L.
Cruz, C.D.
author_role author
author2 Tomaz, R.S.
Silva, G.N.
Nascimento, M.
Bhering, L.L.
Cruz, C.D.
author2_role author
author
author
author
author
dc.contributor.author.fl_str_mv Sant’Anna, I.C.
Tomaz, R.S.
Silva, G.N.
Nascimento, M.
Bhering, L.L.
Cruz, C.D.
dc.subject.por.fl_str_mv Artificial Intelligence
Discrimination
Similarity
Statistics
topic Artificial Intelligence
Discrimination
Similarity
Statistics
description The correct classification of individuals is extremely important for the preservation of genetic variability and for maximization of yield in breeding programs using phenotypic traits and genetic markers. The Fisher and Anderson discriminant functions are commonly used multivariate statistical techniques for these situations, which allow for the allocation of an initially unknown individual to predefined groups. However, for higher levels of similarity, such as those found in backcrossed populations, these methods have proven to be inefficient. Recently, much research has been devoted to developing a new paradigm of computing known as artificial neural networks (ANNs), which can be used to solve many statistical problems, including classification problems. The aim of this study was to evaluate the feasibility of ANNs as an evaluation technique of genetic diversity by comparing their performance with that of traditional methods. The discriminant functions were equally ineffective in discriminating the populations, with error rates of 23-82%, thereby preventing the correct discrimination of individuals between populations. The ANN was effective in classifying populations with low and high differentiation, such as those derived from a genetic design established from backcrosses, even in cases of low differentiation of the data sets. The ANN appears to be a promising technique to solve classification problems, since the number of individuals classified incorrectly by the ANN was always lower than that of the discriminant functions. We envisage the potential relevant application of this improved procedure in the genomic classification of markers to distinguish between breeds and accessions.
publishDate 2015
dc.date.none.fl_str_mv 2015-08-19
2018-05-17T14:19:20Z
2018-05-17T14:19:20Z
dc.type.status.fl_str_mv info:eu-repo/semantics/publishedVersion
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv 16765680
http://dx.doi.org/10.4238/2015.August.19.24
http://www.locus.ufv.br/handle/123456789/19647
identifier_str_mv 16765680
url http://dx.doi.org/10.4238/2015.August.19.24
http://www.locus.ufv.br/handle/123456789/19647
dc.language.iso.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv v. 14, n. 3, p. 9898-9906, Agosto 2015
dc.rights.driver.fl_str_mv info:eu-repo/semantics/openAccess
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv pdf
application/pdf
dc.publisher.none.fl_str_mv Genetics and Molecular Research
publisher.none.fl_str_mv Genetics and Molecular Research
dc.source.none.fl_str_mv reponame:LOCUS Repositório Institucional da UFV
instname:Universidade Federal de Viçosa (UFV)
instacron:UFV
instname_str Universidade Federal de Viçosa (UFV)
instacron_str UFV
institution UFV
reponame_str LOCUS Repositório Institucional da UFV
collection LOCUS Repositório Institucional da UFV
repository.name.fl_str_mv LOCUS Repositório Institucional da UFV - Universidade Federal de Viçosa (UFV)
repository.mail.fl_str_mv fabiojreis@ufv.br
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