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

被引:19
作者
Azevedo, Alcinei Mistico [1 ]
de Andrade Junior, Valter Carvalho [2 ]
Pedrosa, Carlos Enrrik [3 ]
de Oliveira, Celso Mattes [3 ]
Silva Dornas, Marcus Flavius [2 ]
Cruz, Cosme Damiao [1 ]
Valadares, Nermy Ribeiro [2 ]
机构
[1] Univ Fed Vicosa, Dept Fitotecnia, Ave Peter Henry Rolfs S-N, BR-36570900 Vicosa, MG, Brazil
[2] Univ Fed Vales Jequitinhonha & Mucuri, Dept Agron, BR-39100000 Diamantina, MG, Brazil
[3] Univ Fed Lavras UFLA, Dept Agr, BR-37200000 Lavras, MG, Brazil
关键词
Lactuca sativa; multi-layer-perceptron; gain selection; plant breeding; computational intelligence; PHENOTYPIC STABILITY; CULTIVARS; VALUES;
D O I
10.1590/1678-4499.0088
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
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.
引用
收藏
页码:387 / 393
页数:7
相关论文
共 21 条
  • [1] [Anonymous], 2008, HORTIC BRAS, DOI DOI 10.1590/S0102-05362008000300012
  • [2] [Anonymous], REV BRASILEIRA GEOGR
  • [3] Genetic parameters and path analysis for early flowering and agronomic traits of lettuce
    Azevedo, Alcinei Mistico
    de Andrade Junior, Valter Carvalho
    de Castro e Castro, Barbara Monteiro
    de Oliveira, Celso Mattes
    Pedrosa, Carlos Enrrik
    Silva Dornas, Marcus Flavius
    Valadares, Nermy Ribeiro
    [J]. PESQUISA AGROPECUARIA BRASILEIRA, 2014, 49 (02) : 118 - 124
  • [4] Artificial neural network analysis of genetic diversity in Carica papaya L.
    Barbosa, Cibelle Degel
    Viana, Alexandre Pio
    Red Quintal, Silvana Silva
    Pereira, Messias Gonzaga
    [J]. CROP BREEDING AND APPLIED BIOTECHNOLOGY, 2011, 11 (03): : 224 - 231
  • [5] Caierão Eduardo, 2006, Cienc. Rural, V36, P1126, DOI 10.1590/S0103-84782006000400013
  • [6] CARVALHO FILHO JLS, 2011, CIENCIAS AGRARIAS, V6, P46, DOI DOI 10.5039/AGRARIA.V6I1A819
  • [7] Biometrical analysis of phosphorus use efficiency in lettuce cultivars adapted to high temperatures
    Cock, WRS
    do Amaral, AT
    Bressan-Smith, RE
    Monnerat, PH
    [J]. EUPHYTICA, 2002, 126 (03) : 299 - 308
  • [8] Cruz CD, 2012, Biometric models applied to genetic breeding., V4th
  • [9] Phenotypic stability of the lettuce in different periods and cropping environments
    da Silva Queiroz, Joao Pedro
    Meneses da Costa, Andrey Jefferson
    Neves, Leonarda Grillo
    Seabra Junior, Santino
    Aparecido Barelli, Marco Antonio
    [J]. REVISTA CIENCIA AGRONOMICA, 2014, 45 (02): : 276 - 283
  • [10] Filgueira F. A. R., 2008, NOVO MANUAL OLERICUL