Application of artificial neural networks in indirect selection: a case study on the breeding of lettuce

The efficiency of artificial neural networks (ANN) to model complex problems may enable the prediction of characteristics that are hard to measure, providing better results than the traditional indirect selection. Thus, this study aimed to investigate the potential of using artificial neural networks (ANN) for indirect selection against early flowering in lettuce, identify the influence of genotype by environment interaction in this strategy and compare your results with the traditional indirect selection. The number of days to anthesis were used as the desired output and the information of six characteristics (fresh weight of shoots, mass of marketable fresh matter of shoots, commercial dry matter of shoots, average diameter of the head, head circumference and leaf number) as input file for the training of the ANN-MLP (Perceptron Multi-Layer). The use of ANN has great potential adjustment for indirect selection for genetic improvement of lettuce against early flowering. The selection based on the predicted values by network provided estimates of gain selection largest that traditional indirect selection. The ANN trained with data from an experiment have low power extrapolation to another experiment, due to effect of interaction genotype by environment. The ANNs trained simultaneously with data from different experiments presented greater predictive power and extrapolation.

Saved in:
Bibliographic Details
Main Authors: Azevedo,Alcinei Mistico, Andrade Júnior,Valter Carvalho de, Pedrosa,Carlos Enrrik, Oliveira,Celso Mattes de, Dornas,Marcus Flavius Silva, Cruz,Cosme Damião, Valadares,Nermy Ribeiro
Format: Digital revista
Language:English
Published: Instituto Agronômico de Campinas 2015
Online Access:http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0006-87052015000400387
Tags: Add Tag
No Tags, Be the first to tag this record!
id oai:scielo:S0006-87052015000400387
record_format ojs
spelling oai:scielo:S0006-870520150004003872015-10-26Application of artificial neural networks in indirect selection: a case study on the breeding of lettuceAzevedo,Alcinei MisticoAndrade Júnior,Valter Carvalho dePedrosa,Carlos EnrrikOliveira,Celso Mattes deDornas,Marcus Flavius SilvaCruz,Cosme DamiãoValadares,Nermy Ribeiro Lactuca sativa multi-layer-perceptron gain selection plant breeding computational intelligence The efficiency of artificial neural networks (ANN) to model complex problems may enable the prediction of characteristics that are hard to measure, providing better results than the traditional indirect selection. Thus, this study aimed to investigate the potential of using artificial neural networks (ANN) for indirect selection against early flowering in lettuce, identify the influence of genotype by environment interaction in this strategy and compare your results with the traditional indirect selection. The number of days to anthesis were used as the desired output and the information of six characteristics (fresh weight of shoots, mass of marketable fresh matter of shoots, commercial dry matter of shoots, average diameter of the head, head circumference and leaf number) as input file for the training of the ANN-MLP (Perceptron Multi-Layer). The use of ANN has great potential adjustment for indirect selection for genetic improvement of lettuce against early flowering. The selection based on the predicted values by network provided estimates of gain selection largest that traditional indirect selection. The ANN trained with data from an experiment have low power extrapolation to another experiment, due to effect of interaction genotype by environment. The ANNs trained simultaneously with data from different experiments presented greater predictive power and extrapolation.info:eu-repo/semantics/openAccessInstituto Agronômico de CampinasBragantia v.74 n.4 20152015-12-01info:eu-repo/semantics/articletext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S0006-87052015000400387en10.1590/1678-4499.0088
institution SCIELO
collection OJS
country Brasil
countrycode BR
component Revista
access En linea
databasecode rev-scielo-br
tag revista
region America del Sur
libraryname SciELO
language English
format Digital
author Azevedo,Alcinei Mistico
Andrade Júnior,Valter Carvalho de
Pedrosa,Carlos Enrrik
Oliveira,Celso Mattes de
Dornas,Marcus Flavius Silva
Cruz,Cosme Damião
Valadares,Nermy Ribeiro
spellingShingle Azevedo,Alcinei Mistico
Andrade Júnior,Valter Carvalho de
Pedrosa,Carlos Enrrik
Oliveira,Celso Mattes de
Dornas,Marcus Flavius Silva
Cruz,Cosme Damião
Valadares,Nermy Ribeiro
Application of artificial neural networks in indirect selection: a case study on the breeding of lettuce
author_facet Azevedo,Alcinei Mistico
Andrade Júnior,Valter Carvalho de
Pedrosa,Carlos Enrrik
Oliveira,Celso Mattes de
Dornas,Marcus Flavius Silva
Cruz,Cosme Damião
Valadares,Nermy Ribeiro
author_sort Azevedo,Alcinei Mistico
title Application of artificial neural networks in indirect selection: a case study on the breeding of lettuce
title_short Application of artificial neural networks in indirect selection: a case study on the breeding of lettuce
title_full Application of artificial neural networks in indirect selection: a case study on the breeding of lettuce
title_fullStr Application of artificial neural networks in indirect selection: a case study on the breeding of lettuce
title_full_unstemmed Application of artificial neural networks in indirect selection: a case study on the breeding of lettuce
title_sort application of artificial neural networks in indirect selection: a case study on the breeding of lettuce
description The efficiency of artificial neural networks (ANN) to model complex problems may enable the prediction of characteristics that are hard to measure, providing better results than the traditional indirect selection. Thus, this study aimed to investigate the potential of using artificial neural networks (ANN) for indirect selection against early flowering in lettuce, identify the influence of genotype by environment interaction in this strategy and compare your results with the traditional indirect selection. The number of days to anthesis were used as the desired output and the information of six characteristics (fresh weight of shoots, mass of marketable fresh matter of shoots, commercial dry matter of shoots, average diameter of the head, head circumference and leaf number) as input file for the training of the ANN-MLP (Perceptron Multi-Layer). The use of ANN has great potential adjustment for indirect selection for genetic improvement of lettuce against early flowering. The selection based on the predicted values by network provided estimates of gain selection largest that traditional indirect selection. The ANN trained with data from an experiment have low power extrapolation to another experiment, due to effect of interaction genotype by environment. The ANNs trained simultaneously with data from different experiments presented greater predictive power and extrapolation.
publisher Instituto Agronômico de Campinas
publishDate 2015
url http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0006-87052015000400387
work_keys_str_mv AT azevedoalcineimistico applicationofartificialneuralnetworksinindirectselectionacasestudyonthebreedingoflettuce
AT andradejuniorvaltercarvalhode applicationofartificialneuralnetworksinindirectselectionacasestudyonthebreedingoflettuce
AT pedrosacarlosenrrik applicationofartificialneuralnetworksinindirectselectionacasestudyonthebreedingoflettuce
AT oliveiracelsomattesde applicationofartificialneuralnetworksinindirectselectionacasestudyonthebreedingoflettuce
AT dornasmarcusflaviussilva applicationofartificialneuralnetworksinindirectselectionacasestudyonthebreedingoflettuce
AT cruzcosmedamiao applicationofartificialneuralnetworksinindirectselectionacasestudyonthebreedingoflettuce
AT valadaresnermyribeiro applicationofartificialneuralnetworksinindirectselectionacasestudyonthebreedingoflettuce
_version_ 1756375411096289280