Accessibility / Report Error

Genotype x environment interaction in cowpea by mixed models1 1 Parte da Tese de Doutorado do primeiro autor apresentada ao Programa de Pós-Graduação em Genética e Melhoramentos de Plantas da Escola Superior de Agricultura "Luiz de Queiroz", Universidade de São Paulo, Piracicaba-SP, Brasil; pesquisa liderada pelo Embrapa Meio-Norte Programa de Melhoramento de Feijão-caupi.

Interação genótipos x ambientes em feijão-caupi via modelos mistos

ABSTRACT

Several methods have been proposed to measure effects of genotype × environment interaction (G×E) on various traits of interest of plant species, such as grain yield. Among these methods, mixed models using the Restricted Maximum Likelihood (REML)-Best Linear Unbiased Prediction (BLUP) procedure with random genotype effects have been reported as advantageous, since they allow the obtaining of actual genotypic values for cultivation and use. The objective of this work was to evaluate the response of grain yield to different locations and years, and the effects of G×E on the performance of cowpea genotypes by the methodology of mixed models. Twenty genotypes were evaluated under rainfed conditions in 47 locations in 2010, 2011 and 2012 using randomized block design. After joint analysis, the genotypes adaptability and stability patterns within and between years were tested by the Harmonic Mean of Relative Performance of Genetic Values (HMRPGV) statistics. The analysis within the years showed highly significant effects of the genotype × location interaction in all the years evaluated. The results of the joint analysis presented highly significant effects (. ≤0.01) of the genotype, and triple interaction (genotype × location × year) (. ≤0.001), denoting a strong effect of the G×E on the genotype performances. The HMRPGV analysis was adequate to identify superior genotypes, highlighting the MNC02-676F-3, MNC03-737F-5-1, MNC03-737F-5-9, BRS-Tumucumaque, and BRS-Guariba as the genotypes with best stability and highest grain yield. The selection of these genotypes resulted in a new average yield (1,402 kg ha-1) which is higher than that obtained by selection based only on the phenotype (1,230 kg ha-1).

Key words:
Vigna unguiculata; G × E interaction; BLUP

RESUMO

Vários métodos têm sido propostos para medir a influência da interação genótipos por ambientes em características de interesse, tais como a produtividade de grãos. Entre estes, modelos mistos utilizando abordagens REML/BLUP com efeitos de genótipos aleatórios são apontados como vantajosos, visto que permitem obter os valores genotípicos reais de cultivo e uso. O objetivo deste estudo foi avaliar, por meio de modelos mistos, a resposta da produtividade de grãos em feijão-caupi às variações de locais e anos e a influência da interação genótipos por ambientes no desempenho dos genótipos. Vinte genótipos foram avaliados em 47 locais, sob regime de sequeiro, nos anos de 2010, 2011 e 2012, sob o delineamento de blocos casualizados. Após análise conjunta, os padrões de adaptabilidade e estabilidade dos genótipos dentro e entre anos foram testados pela estística da MHPRVG (Média Harmônica da Performance Relativa dos Valores Genotípicos). Para a análise dentro de anos, os efeitos da interação genótipos x locais foram altamente significativas para todos os anos considerados. Na análise conjunta, os efeitos de genótipos e da interação tripla (Genótipo x Local x Ano) foram altamente significativos (p≤0,01 e p≤0,001, respectivamente), indicando forte influência da interação genótipos por ambientes no desempenho dos genótipos. A avaliação por meio da MHPRVG foi adequada para identificar genótipos superiores, e destacou MNC02-676F-3, MNC03-737F-5-1, MNC03-737F-5-9, BRS Tumucumaque e BRS Guariba como os genótipos com melhor estabilidade e desempenho para a produtividade de grãos. A seleção dos genótipos mencionados resultou em uma nova média de 1.402 kg ha-1, que é maior do que a média obtida por seleção com base apenas no fenótipo (1.230 kg ha-1).

Palavras-chave:
Vigna unguiculata; Interação G x A; BLUP

INTRODUCTION

Cowpea (Vigna unguiculata (L.) Walp.) is a legume that has great nutritional value. This species is grown mainly in Africa, and Nigeria is the world's largest producer. It is widely cultivated in the Northeast region of Brazil, and nowadays also in the North and Center-West regions; Brazil is the world's third largest producer (SINGH et al., 2010SINGH, A. et al. Cowpea (Vigna unguiculata [L.] Walp.) genotypes response to multiple abiotic stresses. Journal of Photochemistry and Photobiology B: Biology, v. 100, p. 135-146, 2010.; VIJAYKUMAR; SAINI; JAWALI, 2010VIJAYKUMAR, A.; SAINI, A.; JAWALI, N. Phylogenetic analysis of subgenus vigna species using nuclear ribosomal RNA ITS: evidence of hybridization among Vigna unguiculata subspecies. Journal of Heredity, v. 101, n. 2, p. 177-188, 2010.). Researches on cowpea breeding in Brazil have been developed by the Brazilian Agricultural Research Corporation (Embrapa) which maintains an Active Germplasm Bank for this species and has been conducting a Breeding Program led by Embrapa Mid-North since 1991.

One of the main challenges of plant breeding is the expansion of cultivation to other regions, since it requires taking into account the adaptability of the species to different environmental conditions and the maintenance of its production stability. However, no studies on cowpea using methodologies with mixed models are found in the literature. These methodologies make it possible to predict the true Values for Cultivation and Use (VCU), and in this case, the effects of the genotype need to be assumed as the random effects in the statistical model (PIEPHO, 1997PIEPHO, H. P. Analyzing genotype-environment data by mixed models with multiplicative effects. Biometrics, v. 53, p. 761-766, 1997.; RESENDE, 2007RESENDE, M. D. V. Matemática e estatística na análise de experimentos e no melhoramento genético. Colombo: Embrapa Florestas, 2007. 435 p.; ROSADO et al., 2012ROSADO, A. M. et al. Seleção simultânea de clones de eucalipto de acordo com produtividade, estabilidade e adaptabilidade. Pesquisa Agropecuária Brasileira, v. 47, p. 964-971, 2012.; VERARDI et al., 2009VERARDI, C. K. et al. Adaptabilidade e estabilidade da produção de borracha e seleção em progênies de seringueira. Pesquisa Agropecuária Brasileira, 2009.).

The assumption that the effects of the genotype are random makes it possible to obtain the Best Linear Unbiased Predictions (BLUP) of effects of the genotypes and G×E, which eliminate their noise by weighing such effects through a regressing factor, which is usually referred to as repeatability, which in practice refers to the heritability of the trait, thus leading to shrinkage estimates of such effects and to prediction of genetic values (PIEPHO, 1997PIEPHO, H. P. Analyzing genotype-environment data by mixed models with multiplicative effects. Biometrics, v. 53, p. 761-766, 1997.; RESENDE, 2007RESENDE, M. D. V. Matemática e estatística na análise de experimentos e no melhoramento genético. Colombo: Embrapa Florestas, 2007. 435 p.; SEARLE; CASELLA; McCULLOCH, 1992SEARLE, S. R.; CASELLA, G.; McCULLOCH, C. E. Variance components. New York: John Wiley & Sons, 1992. 501 p.).

This concept has been used together with the Restricted Maximum Likelihood (REML) method, developed by Patterson and Thompson (1971)PATTERSON, H. D.; THOMPSON, R. Recovery of inter-block information when block sizes are unequal. Biometrika, v. 58, n. 3, p. 545-554, 1971. as the optimal procedure for the estimation of components of variance, maximizing the likelihood function of the residuals, instead of the observed data, giving an incidence matrix of the fixed effects. Therefore, the REML-BLUP analysis has been the most recommended for tests using mixed model approaches (BORGES et al., 2010BORGES, V. et al. Desempenho genotípico de linhagens de arroz de terras altas utilizando metodologia de modelos mistos. Bragantia, v. 69, n. 4, p. 833-841, 2010.; CARBONELL et al., 2007CARBONELL, S. A. M. et al. Estabilidade de cultivares e linhagens de feijoeiro em diferentes ambientes no estado de São Paulo. Bragantia, v. 66, n. 2, p. 193-201, 2007.; MAIA et al., 2009MAIA, M. C. C. et al. Seleção simultânea para produção, adaptabilidade e estabilidade genotípicas em clones de cajueiro, via modelos mistos. Pesquisa Agropecuária Tropical, v. 39, n. 1, p. 43-50, 2009.; PIMENTA et al., 2016PIMENTA, S. et al. Adaptabilidade e estabilidade de híbridos de pimentão nos sistemas convencional e orgânico. Horticultura Brasileira, v. 34, n. 2, 2016.; RESENDE, 2007RESENDE, M. D. V. Matemática e estatística na análise de experimentos e no melhoramento genético. Colombo: Embrapa Florestas, 2007. 435 p.; SCHAEFFER, 2004SCHAEFFER, L. R. Application for random models in animal breeding. Livestock Production Science, v. 86, p. 35-45, 2004.; SILVA et al., 2011SILVA, G. O. et al. Verificação da adaptabilidade e estabilidade de populações de cenoura pelos métodos AMMI, GGE biplot e REML/BLUP. Bragantia, v. 70, n. 3, p. 494-501, 2011.; ZENI-NETO et al., 2008ZENI-NETO, H. et al. Seleção para produtividade, estabilidade e adaptabilidade de clones de cana-de-açúcar em três ambientes no Estado do Paraná via modelos mistos. Scientia Agraria, v. 9, n. 4, p. 425-430, 2008.).

Using this type of approach, Borges et al. (2010)BORGES, V. et al. Desempenho genotípico de linhagens de arroz de terras altas utilizando metodologia de modelos mistos. Bragantia, v. 69, n. 4, p. 833-841, 2010. found responses varying from 1.06- to 1.08-fold the overall average for rice genotypes with better performance, in tests conducted in 11 locations and 11 years. Bastos et al. (2007)BASTOS, I. T. et al. Avaliação da interação genótipo x ambiente em cana-de-açúcar via modelos mistos. Pesquisa Agropecuária Tropical, v. 37, p. 195-203, 2007. evaluated the adaptability and stability of sugarcane genotypes and also found values for the selected clones with better performance than the overall average.

In this context, the objective of this work was to evaluate the response of grain yield of 16 lines and 4 cultivars to different locations and years, and the effects of G×E on the performance of cowpea genotypes by the methodology of mixed models.

MATERIAL AND METHODS

Sixteen elite lines and four cultivars from the Embrapa Mid-North Cowpea Breeding Program were evaluated-MNC02-675F-4-9 (1), MNC02-675F-4-2 (2), MNC02-675F-9-2 (3), MNC02-675F-9-3 (4), MNC02-676F-3 (5), MNC02-682F-2-6 (6), MNC02-683F-1 (7), MNC02-684F-5-6 (8), MNC03-725F-3 (9), MNC03-736F-7 (10), MNC03-737F-5-1 (11), MNC03-737F-5-4 (12), MNC03-737F-5-9 (13), MNC03-737F-5-10 (14), MNC03-737F-5-11 (15), MNC03-737F-11 (16), BRS-Tumucumaque (17), BRS-Cauamé (18), BRS-Itaim (19), and BRS-Guariba (20). The genotypes were evaluated under rainfed conditions in 47 experimental stations distributed in Brazil (Table 1, Figure 1) in three years (2010, 2011 and 2012); considering each location × year as a combination, making 82 different environments. The tests were conducted under randomized block design with four replications, the experimental plot consisted of four 5.0-m rows spaced 0.5 m apart, with 0.25 m between plants, and the evaluation area consisted of the two central rows.

Table 1
Locations and geographic descriptions of the experimental stations used in the Value for Cultivation and Use (VCU) tests during the period 2010-2012

Figure 1
Geographic distribution of the experimental stations used for evaluations of Value for Cultivation and Use of cowpea, between the years 2010 to 2012

An environment was initially considered as each location × year combination, with adjustments made for each year, considering the genotype effects as random and the location effects as fixed, according to the following model: y = Xb + Zg + Ti + e. The joint analysis was performed within each evaluation year according to the model: y = Xb + Zg + Ti + e, wherein y is the vector of observations; b is the vector of effects of the blocks × location combinations added to the overall average (fixed effects); g is the vector of genotype effects (assumed to be random); and i is the vector of effects of the genotype × location interaction (random). Subsequently, the analysis was performed considering the entire dataset, according to the model: y = Xb + Zg + Qm + Ti + Uq + e, wherein y is the vector of observations; b is the vector of effects of the combinations block × location × year added to the overall average (fixed effects); g is the vector of genotype effects (assumed to be random); m is the vector of effects of the genotype × year interaction (random); i is the vector of effects of the genotype × location interaction (random); q is the vector of effects of the genotype × location × year triple interaction (random); e is the vector of errors (random). X, Z, Q, T and U are the incidence matrices for these effects, respectively, assuming g ∼ N(0,g2) and e ∼ N(0,e2).

The Restricted Maximum Likelihood (REML)-Best Linear Unbiased Prediction (BLUP) procedure was used to compute the components of variance and subsequent prediction of random effects. The significance test for these effects was given by the Likelihood Ratio Test (LRT), considering the χ2. The experimental quality of all tests was measured by the Selective Accuracy statistics (RESENDE; DUARTE, 2007RESENDE, M. D. V. Matemática e estatística na análise de experimentos e no melhoramento genético. Colombo: Embrapa Florestas, 2007. 435 p.), defined as: . A = [1 / 1 + (σe2 / r) / σg2]0, 5, wherein . is the number of blocks used in the tests, σe2 is the residue variance, and σg2 is the genotypic variance.

Based on the random effects obtained through the joint analysis, the predicted genotypic values were obtained by µ + gi, wherein µ is the mean of all locations and gi is the genotypic effect free from the G×E. The criterion for the joint selection of genotypes, considering simultaneously the grain yield, stability and adaptability was given by the statistic of Mean Harmonic of Relative Performance of Genotypic Values (RESENDE, 2007RESENDE, M. D. V. Matemática e estatística na análise de experimentos e no melhoramento genético. Colombo: Embrapa Florestas, 2007. 435 p.): HMRPGVi= n / [∑j = 1n(1 / Vgij)], wherein . is the number of locations and Vgij is the genotype value for the genotype . expressed as the proportion of the mean of the location . . All analyzes in the present study were performed using the statistical program R (R 3.1.2).

RESULTS AND DISCUSSION

The experimental precision measured by the accuracy had values ranging from 0.24 to 0.98, and overall mean (considering all locations evaluated) of 0.79. According to Resende and Duarte (2007)RESENDE, M. D. V. Matemática e estatística na análise de experimentos e no melhoramento genético. Colombo: Embrapa Florestas, 2007. 435 p., accuracy values below 0.5 are low, from 0.5 to 0.7 are average, from 0.7 to 0.9 are high, and above 0.9 are very high, thus, 42% of the experiments presented high experimental accuracy and 38% presented very high accuracy.

The components of variance of the random effects and mean squares of the fixed effects obtained by the analysis within each year by mixed models are presented in Table 2. All sources of variation had highly significant effects within the three years of evaluation, except the genotype effect within 2011. The mean squares for the genotype effect presented different variation patterns over the years, highlighting the variation between genotypes in 2010, which was approximately 15-fold higher than the variation within 2011. On the other hand, the mean square for the effect of locations was greater within 2011.

Table 2
Analysis of variance within and between different years for grain yield of 20 cowpea genotypes evaluated in three years and 47 locations

According to the results of the joint analysis considering the whole dataset, the effects of genotypes were significant (. <0.01) by the LRT test; and the genotype × location interaction (G×L) and genotype × year interaction (G×Y) presented no significant differences. However, the triple interaction was significant (p ≤0.001), which confirms the strong effect of the G×E on the performance of the genotypes evaluated. The accuracy value was higher than 90%, indicating a satisfactory experimental accuracy for the joint analysis (RESENDE; DUARTE, 2007RESENDE, M. D. V.; DUARTE, J. B. Precisão e controle de qualidade em experimentos de avaliação de cultivares. Pesquisa Agropecuária Tropical, v. 37, p. 182-194, 2007.).

Although the effects of genotypes were not significant (. >0.05) in 2011, they were significant in 2010 and 2012. The G×L was significant within the three years evaluated, which justifies the use of all years in the overall joint analysis. According to Silva et al. (2011)SILVA, G. O. et al. Verificação da adaptabilidade e estabilidade de populações de cenoura pelos métodos AMMI, GGE biplot e REML/BLUP. Bragantia, v. 70, n. 3, p. 494-501, 2011., the absence of significant effects of genotypes is expected in cases of tests with very contrasting environments. These results indicate that the different performances of the genotypes were caused by a combination of factors that can be represented by the G×L×E triple interaction to the detriment of the other interaction effects and the main effects of genotypes.

According to Yan and Hunt (2002)YAN, W.; HUNT, L. A. Biplot analysis of diallel data. Crop Science, v. 42, p. 21-30, 2002., in cases where the proportion of variation explained by the interaction component is greater than that explained by the differences between genotypes, the locations are grouped within mega-environments; this information is essential for the recommendation of cultivars. The effects of years, and locations were significant (p < 0.001), i.e., both contributed significantly to the triple interaction.

The significance of the effects of locations, and years in the joint analysis (Table 2) provides arguments for these factors (years and locations) to be taken into account with equal importance in the estimation of the G×E in cowpea. Therefore, since much of this interaction is caused by unpredictable factors (such as precipitation, humidity, etc.), the use of mixed models should be prioritized to study the adaptability and stability in this case, because modeling may be inefficient when only fixed effects are used (BERNARDO, 2010BERNARDO, R. Breeding for quantitative traits in plants. 2nd. ed. Minnesota: Stemma Press, 2010. 400 p.).

The comparison between the ordering of the phenotypic mean for the trait of each genotype, the genotypic values free from the interaction (BLUP of each genotype added to the overall average) and the HMRPGV statistic is shown in Table 3. There was no differences between the classifications obtained by the phenotypic means and the genotypic values; and according to both, the five best genotypes were, in decreasing order: BRS-Tumucumaque, BRS-Guariba, MNC03-737F-5-9, MNC03-737F-5-1, and BRS-Cauamé. When the genotype performance was capitalized by the stability and adaptability (HMRPGV), the genotype 20 stood out as the one with the best performance, followed by 17, 13, 11, and 5.

Table 3
Response to grain yield of 20 cowpea genotypes evaluated in 47 locations and three years, according to the overall average, genotypic values free from the interactions, and Harmonic Mean of Relative Performance of Genetic Values (HMRPGV)

The response of the genotype with the best performance, according to the HMRPGV (genotype 20), was about 1.09-fold higher than the overall average of the environments, i.e., this genotype was approximately 9% superior than the overall average of the 47 locations.

The use of the mixed model methodology to evaluate adaptability and stability in cowpea are scarce in the literature (SANTOS et al., 2016SANTOS, A. D. et al. Adaptability and stability of erect cowpea genotypes via REML/BLUP and GGE Biplot. Bragantia, v. 75, n. 3, p. 299-306, 2016.; TORRES et al., 2015TORRES, F. E. et al. Interação genótipo x ambiente em genótipos de feijão-caupi semiprostrado via modelos mistos. Bragantia, v. 74, n. 3, p. 255-260, 2015.). Torres et al. (2015)TORRES, F. E. et al. Interação genótipo x ambiente em genótipos de feijão-caupi semiprostrado via modelos mistos. Bragantia, v. 74, n. 3, p. 255-260, 2015. found average gains of 18% with the selection of the best genotypes, which is twice the gains obtained in the present study. However, the fact that this study considered a significantly larger number of environments, directly affected the amplitude of the recommendation of genotypes based on the GxE pattern.

Carbonell et al. (2007)CARBONELL, S. A. M. et al. Estabilidade de cultivares e linhagens de feijoeiro em diferentes ambientes no estado de São Paulo. Bragantia, v. 66, n. 2, p. 193-201, 2007. evaluating adaptability and stability using mixed models in common bean (Phaseolus vulgaris L.), reported HMRPGV of 1.11-fold the overall average when considered the best bean genotype. These authors attributed this difference to a high precision of selection due to the use of HMRPGV statistics.

The selection of the five best genotypes based on HMRPGV (lines 5, 11, 13, 17 and 20) resulted in a new average of 65.4 (representing approximately 1,402 kg ha-1), which is higher than the average obtained by the selection based only on the predicted genotypic mean value for all environments (1,230 kg ha-1). This result confirms the advantage of using the HMRPGV method in the recommendation of varieties, as well as in the formation of populations for breeding programs.

CONCLUSIONS

  1. The genotypes MNC02-676F-3, MNC03-737F-5-1, MNC03-737F-5-9, BRS-Tumucumaque and BRS-Guariba are suitable for planting in the environments evaluated, since they have good stability combined to a superior performance compared to the other genotypes evaluated;

  2. The use of HMRPGV statistics in the evaluation of grain yield variations in cowpea is advantageous compared to the selection by phenotypic mean;

  3. The present study highlights the use of this methodology (HMRPGV) when there is a need for evaluations of G×E interaction, while considering a wide spatial and temporal variation, since in these cases, an efficient analysis with simplified interpretation of the results is necessary.

  • 1
    Parte da Tese de Doutorado do primeiro autor apresentada ao Programa de Pós-Graduação em Genética e Melhoramentos de Plantas da Escola Superior de Agricultura "Luiz de Queiroz", Universidade de São Paulo, Piracicaba-SP, Brasil; pesquisa liderada pelo Embrapa Meio-Norte Programa de Melhoramento de Feijão-caupi.

REFERENCES

  • BASTOS, I. T. et al Avaliação da interação genótipo x ambiente em cana-de-açúcar via modelos mistos. Pesquisa Agropecuária Tropical, v. 37, p. 195-203, 2007.
  • BERNARDO, R. Breeding for quantitative traits in plants 2nd. ed. Minnesota: Stemma Press, 2010. 400 p.
  • BORGES, V. et al Desempenho genotípico de linhagens de arroz de terras altas utilizando metodologia de modelos mistos. Bragantia, v. 69, n. 4, p. 833-841, 2010.
  • CARBONELL, S. A. M. et al Estabilidade de cultivares e linhagens de feijoeiro em diferentes ambientes no estado de São Paulo. Bragantia, v. 66, n. 2, p. 193-201, 2007.
  • MAIA, M. C. C. et al Seleção simultânea para produção, adaptabilidade e estabilidade genotípicas em clones de cajueiro, via modelos mistos. Pesquisa Agropecuária Tropical, v. 39, n. 1, p. 43-50, 2009.
  • PATTERSON, H. D.; THOMPSON, R. Recovery of inter-block information when block sizes are unequal. Biometrika, v. 58, n. 3, p. 545-554, 1971.
  • PIEPHO, H. P. Analyzing genotype-environment data by mixed models with multiplicative effects. Biometrics, v. 53, p. 761-766, 1997.
  • PIMENTA, S. et al Adaptabilidade e estabilidade de híbridos de pimentão nos sistemas convencional e orgânico. Horticultura Brasileira, v. 34, n. 2, 2016.
  • RESENDE, M. D. V. Matemática e estatística na análise de experimentos e no melhoramento genético Colombo: Embrapa Florestas, 2007. 435 p.
  • RESENDE, M. D. V.; DUARTE, J. B. Precisão e controle de qualidade em experimentos de avaliação de cultivares. Pesquisa Agropecuária Tropical, v. 37, p. 182-194, 2007.
  • ROSADO, A. M. et al Seleção simultânea de clones de eucalipto de acordo com produtividade, estabilidade e adaptabilidade. Pesquisa Agropecuária Brasileira, v. 47, p. 964-971, 2012.
  • SANTOS, A. D. et al Adaptability and stability of erect cowpea genotypes via REML/BLUP and GGE Biplot. Bragantia, v. 75, n. 3, p. 299-306, 2016.
  • SCHAEFFER, L. R. Application for random models in animal breeding. Livestock Production Science, v. 86, p. 35-45, 2004.
  • SEARLE, S. R.; CASELLA, G.; McCULLOCH, C. E. Variance components New York: John Wiley & Sons, 1992. 501 p.
  • SILVA, G. O. et al Verificação da adaptabilidade e estabilidade de populações de cenoura pelos métodos AMMI, GGE biplot e REML/BLUP. Bragantia, v. 70, n. 3, p. 494-501, 2011.
  • SINGH, A. et al Cowpea (Vigna unguiculata [L.] Walp.) genotypes response to multiple abiotic stresses. Journal of Photochemistry and Photobiology B: Biology, v. 100, p. 135-146, 2010.
  • TORRES, F. E. et al Interação genótipo x ambiente em genótipos de feijão-caupi semiprostrado via modelos mistos. Bragantia, v. 74, n. 3, p. 255-260, 2015.
  • VERARDI, C. K. et al Adaptabilidade e estabilidade da produção de borracha e seleção em progênies de seringueira. Pesquisa Agropecuária Brasileira, 2009.
  • VIJAYKUMAR, A.; SAINI, A.; JAWALI, N. Phylogenetic analysis of subgenus vigna species using nuclear ribosomal RNA ITS: evidence of hybridization among Vigna unguiculata subspecies. Journal of Heredity, v. 101, n. 2, p. 177-188, 2010.
  • YAN, W.; HUNT, L. A. Biplot analysis of diallel data. Crop Science, v. 42, p. 21-30, 2002.
  • ZENI-NETO, H. et al Seleção para produtividade, estabilidade e adaptabilidade de clones de cana-de-açúcar em três ambientes no Estado do Paraná via modelos mistos. Scientia Agraria, v. 9, n. 4, p. 425-430, 2008.

Publication Dates

  • Publication in this collection
    2017

History

  • Received
    29 Aug 2016
  • Accepted
    20 Mar 2017
Universidade Federal do Ceará Av. Mister Hull, 2977 - Bloco 487, Campus do Pici, 60356-000 - Fortaleza - CE - Brasil, Tel.: (55 85) 3366-9702 / 3366-9732, Fax: (55 85) 3366-9417 - Fortaleza - CE - Brazil
E-mail: ccarev@ufc.br