High-efficiency phenotyping for vitamin A in banana using artificial neural networks and colorimetric data

ABSTRACT Banana is one of the most consumed fruits in Brazil and an important source of minerals, vitamins and carbohydrates for human diet. The characterization of banana superior genotypes allows identifying those with nutritional quality for cultivation and to integrate genetic improvement programs. However, identification and quantification of the provitamin carotenoids are hampered by the instruments and reagents cost for chemical analyzes, and it may become unworkable if the number of samples to be analyzed is high. Thus, the objective was to verify the potential of indirect phenotyping of the vitamin A content in banana through artificial neural networks (ANNs) using colorimetric data. Fifteen banana cultivars with four replications were evaluated, totaling 60 samples. For each sample, colorimetric data were obtained and the vitamin A content was estimated in the ripe banana pulp. For the prediction of the vitamin A content by colorimetric data, multilayer perceptron ANNs were used. Ten network architectures were tested with a single hidden layer. The network selected by the best fit (least mean square error) had four neurons in the hidden layer, enabling high efficiency in prediction of vitamin A (r2 = 0.98). The colorimetric parameters a* and Hue angle were the most important in this study. High-scale indirect phenotyping of vitamin A by ANNs on banana pulp is possible and feasible.

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Main Authors: Aquino,César Fernandes, Salomão,Luiz Carlos Chamhum, Azevedo,Alcinei Mistico
Format: Digital revista
Language:English
Published: Instituto Agronômico de Campinas 2016
Online Access:http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0006-87052016000300268
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spelling oai:scielo:S0006-870520160003002682016-08-09High-efficiency phenotyping for vitamin A in banana using artificial neural networks and colorimetric dataAquino,César FernandesSalomão,Luiz Carlos ChamhumAzevedo,Alcinei Mistico Musa spp. colorimetric parameters computational intelligence multilayer perceptro phenomic ABSTRACT Banana is one of the most consumed fruits in Brazil and an important source of minerals, vitamins and carbohydrates for human diet. The characterization of banana superior genotypes allows identifying those with nutritional quality for cultivation and to integrate genetic improvement programs. However, identification and quantification of the provitamin carotenoids are hampered by the instruments and reagents cost for chemical analyzes, and it may become unworkable if the number of samples to be analyzed is high. Thus, the objective was to verify the potential of indirect phenotyping of the vitamin A content in banana through artificial neural networks (ANNs) using colorimetric data. Fifteen banana cultivars with four replications were evaluated, totaling 60 samples. For each sample, colorimetric data were obtained and the vitamin A content was estimated in the ripe banana pulp. For the prediction of the vitamin A content by colorimetric data, multilayer perceptron ANNs were used. Ten network architectures were tested with a single hidden layer. The network selected by the best fit (least mean square error) had four neurons in the hidden layer, enabling high efficiency in prediction of vitamin A (r2 = 0.98). The colorimetric parameters a* and Hue angle were the most important in this study. High-scale indirect phenotyping of vitamin A by ANNs on banana pulp is possible and feasible.info:eu-repo/semantics/openAccessInstituto Agronômico de CampinasBragantia v.75 n.3 20162016-09-01info:eu-repo/semantics/articletext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S0006-87052016000300268en10.1590/1678-4499.467
institution SCIELO
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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 Aquino,César Fernandes
Salomão,Luiz Carlos Chamhum
Azevedo,Alcinei Mistico
spellingShingle Aquino,César Fernandes
Salomão,Luiz Carlos Chamhum
Azevedo,Alcinei Mistico
High-efficiency phenotyping for vitamin A in banana using artificial neural networks and colorimetric data
author_facet Aquino,César Fernandes
Salomão,Luiz Carlos Chamhum
Azevedo,Alcinei Mistico
author_sort Aquino,César Fernandes
title High-efficiency phenotyping for vitamin A in banana using artificial neural networks and colorimetric data
title_short High-efficiency phenotyping for vitamin A in banana using artificial neural networks and colorimetric data
title_full High-efficiency phenotyping for vitamin A in banana using artificial neural networks and colorimetric data
title_fullStr High-efficiency phenotyping for vitamin A in banana using artificial neural networks and colorimetric data
title_full_unstemmed High-efficiency phenotyping for vitamin A in banana using artificial neural networks and colorimetric data
title_sort high-efficiency phenotyping for vitamin a in banana using artificial neural networks and colorimetric data
description ABSTRACT Banana is one of the most consumed fruits in Brazil and an important source of minerals, vitamins and carbohydrates for human diet. The characterization of banana superior genotypes allows identifying those with nutritional quality for cultivation and to integrate genetic improvement programs. However, identification and quantification of the provitamin carotenoids are hampered by the instruments and reagents cost for chemical analyzes, and it may become unworkable if the number of samples to be analyzed is high. Thus, the objective was to verify the potential of indirect phenotyping of the vitamin A content in banana through artificial neural networks (ANNs) using colorimetric data. Fifteen banana cultivars with four replications were evaluated, totaling 60 samples. For each sample, colorimetric data were obtained and the vitamin A content was estimated in the ripe banana pulp. For the prediction of the vitamin A content by colorimetric data, multilayer perceptron ANNs were used. Ten network architectures were tested with a single hidden layer. The network selected by the best fit (least mean square error) had four neurons in the hidden layer, enabling high efficiency in prediction of vitamin A (r2 = 0.98). The colorimetric parameters a* and Hue angle were the most important in this study. High-scale indirect phenotyping of vitamin A by ANNs on banana pulp is possible and feasible.
publisher Instituto Agronômico de Campinas
publishDate 2016
url http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0006-87052016000300268
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