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Genotype by environment interaction and adaptability of photoperiod-sensitive biomass sorghum hybrids

ABSTRACT

Biomass sorghum is an alternative feedstock to cogenerate energy and produce second-generation ethanol. The aim of this study was to evaluate the Genotype by Environment Interaction (GEI) in biomass sorghum and to identify the hybrids that associate high adaptability and stability using the Toler nonlinear regression, the Genotypes plus Genotype by Environment (GGE) biplot, and the Annicchiarico recommendation index. Thirty-three experimental photoperiod-sensitive single-cross hybrids and three checks were evaluated in relation to the traits: flowering time, plant height, moisture content, green mass yield, and dry mass yield. It was observed that the effects of hybrids, environment, and GEI were expressive. The GEI was predominantly complex for the traits related to the biomass yield. The Toler, GGE biplot and Annicchiarico methods show complementarity. The experimental hybrids 1, 8, 22, 31 and 33 are promising because of associating stability and lower recommendation risk. The hybrids 1 and 8 present broad adaptability, while the hybrids 22, 31 and 33 exhibit specific adaptability to high quality environments.

Key words
Sorghum bicolor; single-cross; Toler nonlinear regression; recommendation index; GGE biplot

INTRODUCTION

Currently, there is a strong world demand for energy, and there is great concern with countries whose energy matrix is heavily based on nonrenewable energy sources, such as oil and oil products. Brazil is in a prominent position compared to some countries, since renewable energy sources supply 43.5% of the Brazilian energy matrix (MME 2017[MME] Ministério de Minas e Energia (2017) Resenha Energética Brasileira – Exercício 2016. Brasília. [Accessed 2018 April 10]. http://www.mme.gov.br/documents/10584/91108236/1+-+Resenha+Energética+Brasileira/
http://www.mme.gov.br/documents/10584/91...
). Brazilian geographic and agroclimatic characteristics make possible to explore several renewable sources of energy, such as bioenergy crops, which is the production of biomass in the process of energy cogenerated by burning in high pressure boilers (Naik et al. 2017Naik, D. K., Monika, K., Prabhakar, S., Parthasarathy, R., and Satyavathi, B. (2017). Pyrolysis of sorghum bagasse biomass into bio-char and bio-oil products. A thorough physicochemical characterization. Journal of Thermal Analysis and Calorimetry, 127, 1277-1289. https://doi.org/10.1007/s10973-016-6061-y
https://doi.org/10.1007/s10973-016-6061-...
).

Biomass sorghum presents a promising feedstock for energy cogeneration because it exhibits productivities up to 150 Mg.ha-1 of fresh mass in a cycle of only five months with entirely mechanized cultivation process (Rooney et al. 2007Rooney, W. L., Blumenthal, J., Bean, B., and Mullet, J. E. (2007). Designing sorghum as a dedicated bioenergy feedstock. Biofuels, Bioproducts and Biorefining, 1, 147-157. https://doi.org/10.1002/bbb.15
https://doi.org/10.1002/bbb.15...
; Mullet 2017Mullet, J. E. (2017). High-Biomass C4 Grasses ? Filling the Yield Gap. Plant Science, 261, 10-17. https://doi.org/10.1016/j.plantsci.2017.05.003
https://doi.org/10.1016/j.plantsci.2017....
). Public or private breeding programs for biomass sorghum are relatively recent. Brazilian Agricultural Research Corporation (Embrapa) for Maize and Sorghum has conducted a biomass sorghum breeding program focused on obtaining hybrids with high energetic potential from Multi-Environment Trials (MET) for assessing the value of cultivation and use (VCU) of new hybrids prior to recommendation (Parrella et al. 2010Parrella, R. A. C., Rodrigues, J. A. S., Tardin, F. D., Damasceno, C. M. B., and Schaffert, R. E. (2010). Desenvolvimento de híbridos de sorgo sensíveis ao fotoperíodo visando alta produtividade de biomassa. Sete lagoas: Embrapa Milho e Sorgo. [Accessed 2016 March 11]. https://www.embrapa.br/milho-e-sorgo/busca-de-publicacoes/-/publicacao/876558/desenvolvimento-de-hibridos-de-sorgo-sensiveis-ao-fotoperiodo-visando-alta-produtividade-de-biomassa
https://www.embrapa.br/milho-e-sorgo/bus...
).

There are few studies with biomass sorghum hybrids based on MET conducted in a wide diversity of environments in terms of geographic, climate and soil conditions. Nevertheless, some of these studies have detected pronounced Genotype by Environment Interaction (GEI) effect (Souza et al. 2014Souza, V. F., Parrella, R. A., Menezes, C. B., Tardin, F. D., May, A., Emydgio, B. M., Damasceno, C. M., and Schaffert, R. E. (2014). Influência da correção de estande na adaptabilidade e na estabilidade de sorgo biomassa. Revista Brasileira de Milho e Sorgo, 13, 371-381. https://doi.org/10.18512/1980-6477/rbms.v13n3p371-381
https://doi.org/10.18512/1980-6477/rbms....
; Castro et al. 2015Castro, F. M., Bruzi, A. T, Nunes, J. A. R., Parrella, R. A. C., Lombardi, G. M. R., Albuquerque, C. J. B. and Lopes, M. (2015). Agronomic and energetic potential of biomass sorghum genotypes. American Journal of Plant Sciences, 6, 1862-1873. https://doi.org/10.4236/ajps.2015.611187
https://doi.org/10.4236/ajps.2015.611187...
; Andrade et al. 2016Andrade, L. C., Menezes, C. B., Silva, K. J., Santos, C. V., Emygdio, B., and Tardin, F. D. (2016). Avaliação de produtividade, adaptabilidade e estabilidade genotípica de sorgo granífero em três ambientes. Revista Agropecuária Técnica, 37, 36-43. https://doi.org/10.25066/agrotec.v37i1.25328
https://doi.org/10.25066/agrotec.v37i1.2...
). Biomass sorghum is characterized by its wide adaptability to different growing environments provided by evolutionary process. Thus, more studies on GEI based on MET can help to discriminate the hybrids by environmental sensitivity, and also allow to better describe the interrelationship among environments, and specific GEI. In this regard, the hybrid’s characterization according to adaptability and stability for energetic biomass yield is essential to release commercially superior cultivars.

There are several methodologies to study adaptability and stability. A frequent question of the breeder is about which method to choose. Studies have showed that some methods traditionally used for evaluating phenotypic stability are not complementary, because they are based on similar concepts of stability (Bornhofen et al. 2017Bornhofen, E., Benin, G., Storck, L., Woyann, L. G., Duarte, T., Stoco, M. G., and Marchioro, S. V. (2017). Statistical methods to study adaptability and stability of wheat genotypes. Bragantia, 76, 1-10. https://doi.org/10.1590/1678-4499.557
https://doi.org/10.1590/1678-4499.557...
). Rono et al. (2016)Rono, J. K., Cheruiyot, E. K., Othira, J. O., Njuguna, V. W., Macharia, J. K., Owuoche, J., Oyier, M., and Kange, A. M. (2016). Adaptability and stability study of selected sweet sorghum genotypes for ethanol production under different environments using AMMI analysis and GGE biplots. The Scientific World Journal, 2016, 1-14. https://doi.org/10.1155/2016/4060857
https://doi.org/10.1155/2016/4060857...
suggested that this choice can be made according to the profile and the characteristics of the data set to be analyzed. For instance, nonparametric methods might be used when data do not follow clearly any probability distribution. On the other hand, some studies have proposed to apply complementary methods (Ferreira et al. 2006Ferreira, D. F., Demétrio, C. G. B., Manly, B. F. J., Machado, A. A., and Vencovsky, R. (2006). Statistical models in agriculture: biometrical methods for evaluating phenotypic stability plant breeding. Cerne, 12, 373-388.; Borges et al 2000Borges, L. C., Ferreira, D. F., Abreu, A. F., and Ramalho, M. A. P. (2000). Emprego de metodologias de avaliação de estabilidade fenotípica na cultura de feijoeiro (Phaseolus vulgaris L.). Revista Ceres, 47, 89-102.; Figueiredo et al. 2015Figueiredo, U. J., Nunes, J. A. R., Parrella, R. A. C., Souza, E. D., Silva, A. R., Emygdio, B. M., Machado, J. R. A., and Tardin, F. D. (2015). Adaptability and stability of genotypes of sweet sorghum by GGEBiplot and Toler methods. Genetics and Molecular Research, 14, 11211-11221. https://doi.org/10.4238/2015.September.22.15
https://doi.org/10.4238/2015.September.2...
). Borges et al. (2000)Borges, L. C., Ferreira, D. F., Abreu, A. F., and Ramalho, M. A. P. (2000). Emprego de metodologias de avaliação de estabilidade fenotípica na cultura de feijoeiro (Phaseolus vulgaris L.). Revista Ceres, 47, 89-102. suggested to use simultaneously the Toler method (Toler and Burrows 1998Toler, J. E., and Burrows, P. M. (1998). Genotypic performance over environmental arrays: A non-linear grouping protocol. Journal of Applied Statistics, 25, 131-143. https://doi.org/10.1080/02664769823368
https://doi.org/10.1080/02664769823368...
) and the Annicchiarico reliability index (Annicchiarico 1992Annicchiarico, P. (1992). Cultivar adoption and recommendation from alfafa trials in Northern Italy. Journal of Genetics and Breeding, 46, 269-278.). The Toler method provides information about genotype response patterns, while the Annicchiarico method provides an easy interpretation about adaptability and phenotypic stability (Borges et al. 2000Borges, L. C., Ferreira, D. F., Abreu, A. F., and Ramalho, M. A. P. (2000). Emprego de metodologias de avaliação de estabilidade fenotípica na cultura de feijoeiro (Phaseolus vulgaris L.). Revista Ceres, 47, 89-102.; Carvalho et al. 2016)Carvalho, L. C. B., Silva, K. J. D., Rocha, M. M., and Oliveira, G. C. X. (2016). Evolution of methodology for the study of adaptability and stability in cultivated species, 11, 990-1000. https://doi.org/10.5897/AJAR2015.10596
https://doi.org/10.5897/AJAR2015.10596...
. Ferreira et al. (2006)Ferreira, D. F., Demétrio, C. G. B., Manly, B. F. J., Machado, A. A., and Vencovsky, R. (2006). Statistical models in agriculture: biometrical methods for evaluating phenotypic stability plant breeding. Cerne, 12, 373-388. suggested to cope with GEI by applying a multivariate approach, such as the Additive Main Effects and Multiplicative Interaction (AMMI) and the Genotypes plus Genotype by Environment (GGE) Biplot, complemented by the Toler method. In general, all authors emphasize that the use of complementary methods simultaneously might help agronomists and breeders to identify promising genotypes that associate desirable response pattern and low recommendation risk across environments.

The aim of this study was to evaluate the GEI in biomass sorghum and to identify hybrids that associate high adaptability and stability using the Toler and Annicchiarico methods.

MATERIAL AND METHODS

Environments and Genotypes

Data from 10 environments of the VCU trials of biomass sorghum in the 2014/2015 agricultural crop, coordinated by Embrapa Maize and Sorghum, were used. The description of the environments where the experiments were set up regarding geographic aspects, climate and dates of sowing and harvesting are presented in Table 1.

Table 1
Environment description of the value for cultivation and use (VCU) trials of biomass sorghum according to the geographical aspects latitude (Lat), longitude (Long), altitude (Alt), climate (Cl); and to the cultivation aspects planting dates (PD) and harvest dates (HD) in the 2014/2015 agricultural crop year.

In these VCU trials, 36 genotypes were evaluated, being 33 experimental photoperiod-sensitive single-cross hybrids of biomass sorghum (201429B001 to 201429B033), developed by the biomass sorghum breeding program of Embrapa Maize and Sorghum, and three checks: a biomass sorghum cultivar ‘BRS 716’ (34), and two forage sorghum cultivars [‘Volumax’ (35) and ‘BRS 655’ (36)]. The cultivars ‘BRS 716’ e ‘BRS 655’ belongs to Embrapa Maize and Sorghum, while ‘Volumax’ belongs to Monsanto Company.

Experimental Planning and conducting

The experiments were laid out in a 6 × 6 triple lattice design. The plots were constituted by four 5.0 m long rows, spaced 0.7 m apart, considering only the two central lines as useful.

The experiments were set up and conducted following the same directions for VCU trials of biomass sorghum coordinated by Embrapa Maize and Sorghum. The furrowing of the area and simultaneous fertilization of the planting was done by application of NPK 8-28-16 formulation, according to soil analyses, and recommendation for the crop. On this occasion, 1/3 of nitrogen was applied. The seeding was carried out manually at a depth of 3 to 4 cm. The thinning was performed about 10 to 15 days after emergence, leaving 10 plants per linear meter. The population density was 140,000.ha-1 plants. Cover fertilization of the remaining 2/3 of nitrogen was applied 30 to 35 days after emergence. The control of weeds was carried out by the application of herbicides, especially atrazine base with dosage of 3 kg active ingredient per hectare, complemented by mechanical weeding. Applications of insecticides and fungicides for control of insect pests and diseases were carried out, when the incidence was observed.

The harvest was done manually with variable time among the environments, from 109 (Pelotas) to 187 (Sete Lagoas), days after sowing or planting (DAP), with a mean of 162 DAP. The harvest was accomplished when the grains reached the farinaceous or hard dough stage.

Morphoagronomic traits evaluated were: a) Flowering time (FLOW): counting the number of days elapsed from planting to the point where 50% of the plants in the plot were flowering, that is, 50% of the flowers of the panicle of each plant with release of pollen; b) Plant height (PH): measured in meters from the soil surface to the apex of the panicle. Data were taken from five plants randomly selected from the plot area and averaged; c) Total green mass yield (GMY): determined by weighing in kg.plot–1 of all whole plants of the area of each plot using suspension scale, having been cut 10 cm from the soil surface. GMY data were then converted to tons per hectare; d) Total dry mass yield (DMY): five whole plants without panicles were randomly taken at each plot, which were passed in an electric forage chopper. Afterwards, the material was homogenized and a sample was taken for oven drying with forced ventilation at 60 °C. The dry mass expressed as a percentage (% DM) was determined by the difference between the fresh and dry matter weights. Subsequently, the DMY (tons per hectare) was calculated for the product of the GMY and the % DM; e) Moisture content (MC): calculated by the difference between the weights of the fresh and dry matter and then expressed as percentage.

The PH and GMY traits were assessed in all environments, while the FLOW was evaluated in only six environments (Sete Lagoas-MG, Sinop-MT, Lavras-MG, Nova Porteirinha-MG, Uberlândia-MG and Goiânia-GO). The DMY and MC traits were evaluated in Sete Lagoas-MG, Sinop-MT, Lavras-MG, Nova Porteirinha-MG, Uberlândia-MG andDourados-MS.

Statistical Analysis

Individual (per environment) and multi-environment analyses with recovery of interblock information were performed using the lme4 R package (Bates et al. 2015Bates D., Maechler, M., Bolker, B., and Walker, S. (2015). Fitting Linear Mixed-Effects, Models Using lme4. Journal of Statistical Software, 67, 1-48. https://doi.org/10.18637/jss.v067.i01
https://doi.org/10.18637/jss.v067.i01...
) by the univariate mixed model approach. For the statistical models, we assumed blocks within replications, and errors as random effects following a normal distribution, common and independent variance. Selective accuracy was estimated for each environment for evaluating the experimental precision according to Resende and Duarte (2007)Resende, M. D. V., and Duarte, J. B. (2007). Precisão e controle de qualidade em experimentos de avaliação de cultivares. Pesquisa Agropecuária Tropical, 37, 182-194.: r^g^g=1-1/Fc, where Fc is the value of the statistics F of Fisher-Snedecor associated with the genotype effect in the analysis of variance. The coefficient of experimental variation per environment was also estimated to measure the experimental precision according to Garcia (1989)Garcia, C. H. (1989). Tabelas para classificação do coeficiente de variação. Piracicaba: Instituto de Pesquisas e Estudos Florestais. [Accessed 2016 February 25]. https://www.ipef.br/publicacoes/ctecnica/nr171.pdf
https://www.ipef.br/publicacoes/ctecnica...
and Pimentel-Gomes (2009)Pimentel-Gomes, F. (2009). Curso de estatística experimental. Piracicaba: FEALQ.:CVe = se/y × 100, where se is the square root of the error mean square, and y – is the overall mean.

Previously to multi-environment analysis, the Hartley’s homogeneity test of the residual variances was carried out as suggested by Pimentel-Gomes (2009)Pimentel-Gomes, F. (2009). Curso de estatística experimental. Piracicaba: FEALQ.. The variation due to GEI was partitioned into simple and complex parts, based on the differences of variation among genotypes, and lack of correlation between the phenotypic performances of genotypes across environments (Robertson 1959Robertson, A. (1959). Experimental design on the measurement of heritabilities and genetic correlations: Biometrical genetics. New York: Pergamon Press.; Cruz and Castoldi 1991Cruz, C. D., and Castoldi, F. (1991). Decomposição da interação genótipos ;x ambientes em partes simples e complexa. Revista Ceres, 38, 422-430.).

The analyses of phenotypic stability were performed by the Toler nonlinear regression method (Toler and Burrows 1998Toler, J. E., and Burrows, P. M. (1998). Genotypic performance over environmental arrays: A non-linear grouping protocol. Journal of Applied Statistics, 25, 131-143. https://doi.org/10.1080/02664769823368
https://doi.org/10.1080/02664769823368...
), and by the recommendation index proposed by Annicchiarico (1992)Annicchiarico, P. (1992). Cultivar adoption and recommendation from alfafa trials in Northern Italy. Journal of Genetics and Breeding, 46, 269-278. using the Stability software (Ferreira 2015Ferreira, D. F. (2015). “Estabilidade” (Programa análises dos modelos de estabilidade fenotípica). Lavras: Universidade Federal de Lavras. [Accessed 2016 August 12]. http://www.dex.ufla.br/~danielff/programas/estabilidade.html
http://www.dex.ufla.br/~danielff/program...
). The GGE Biplot method (Yan and Tinker 2006Yan, W., and Tinker, N. A. (2006). Biplot analysis of multi-environment trial data: principles and applications. Canadian Journal Plant Science 86, 623-645. https://doi.org/10.4141/P05-169
https://doi.org/10.4141/P05-169...
) was also performed using the GGEbiplots R package (Dumble 2017Dumble, S. (2017). GGEBiplots: GGE Biplots with ‘ggplot2’. R package version 0.1.1. https://CRAN.R-project.org/package=GGEBiplots
https://CRAN.R-project.org/package=GGEBi...
).

The response pattern of each genotype in the evaluated environments was described by the Toler method, which was adjusted according to the following nonlinear models (Toler and Burrows 1998Toler, J. E., and Burrows, P. M. (1998). Genotypic performance over environmental arrays: A non-linear grouping protocol. Journal of Applied Statistics, 25, 131-143. https://doi.org/10.1080/02664769823368
https://doi.org/10.1080/02664769823368...
):

y i j = α i + β i μ j + δ i j + ε i j , and y i j = α i + Z j β 1 i + 1 - Z j β 2 i μ j + δ i j + ε i j

where : adjusted mean of the genotype i in the environment j; αi: intercept value at μj = 0 associated with genotype i; β1i and β2i: regression coefficients related to response sensitivity of the genotype i in environments of lower and higher quality, respectively; μj: environmental index that denotes the effect of the environment j; βi: regression coefficient quantifying the response sensitivity of the genotype i in different environments; δij: deviation of the regression of the genotype i in the environment j; εij: average experimental error; Zj = 1, if μj ≤ 0 and, Zj = 0, if μj > 0.

As for the Toler method, the genotypes were classified in five groups, according to their response patterns over environments (Table 2): Group A - Criterion: reject H0:β1i = β2i, with β1i< 1 <β2i; Group B - Criterion: does not reject H0: β1i = β2i, reject H0: β1i = 1, but common βi is higher than 1; Group C - Criterion: does not reject H0: β1i = β2i, accept H0: β1i = 1; Group D - Criterion: does not reject H0: β1i = β2i, reject H0: β1i = 1, but common βi is lower than 1; Group E - Criterion: reject H0: β1i = β2i, with β1i > 1 >β2i. Additionally, some results of the Toler method for the trait DMY were plotted in scatter plots using the ggplot2 R package (Wickham 2016Wickham, H. (2016). ggplot2: Elegant Graphics for Data Analysis. New York: Springer. https://doi.org/10.1007/978-0-387-98141-3
https://doi.org/10.1007/978-0-387-98141-...
).

Table 2
Grouping of genotypes by the Toler method for the traits flowering time (FLOW), plant height (PH), moisture content (MC), green mass yield (GMY), and dry mass yield (DMY)

The recommendation index proposed by Annicchiarico was estimated based on the relative average response of the environments from the following expression: Ii= pi-z(1-α) s(pi), where: pi: relative average response (%) of the genotype i; z(1-α): upper quantile of the standard normal distribution for a confidence level 1-α, in this study, α = 0,25 was pre-established, and spi: standard deviation of the values of the relative means of the genotype i in the different environments. Moreover, we computed the Annicchiarico index of the genotype i based on the relative average response to the check ‘BRS 716’ (Ii(BRS716)), because this check is a single biomass sorghum cultivar.

The analysis of GGE Biplot method was carried out for the trait DMY, according to the following model (Yan and Tinker 2006Yan, W., and Tinker, N. A. (2006). Biplot analysis of multi-environment trial data: principles and applications. Canadian Journal Plant Science 86, 623-645. https://doi.org/10.4141/P05-169
https://doi.org/10.4141/P05-169...
):

y ¯ i j = λ 1 γ i 1 δ j 1 + λ 2 γ i 2 δ j 2 + ρ i j

where λ1 and λ2 are singular values of the first and second Principal Components (PC) associated with the matrix of the effects of genotypes added to effects of genotype x environment interactions; γi1 and γi2 are eigenvectors of the first and second PC associated with the effect of the genotype i; δj1 and δj2 are eigenvectors of the first and second PC associated with the effect of the environment j; ρij is the residual of the model associated with the genotype i in the environment j.

Biplots of the scores associated with two first PC were generated to better understanding the interrelationship among genotypes and/or environments, as proposed by Yan and Tinker (2006)Yan, W., and Tinker, N. A. (2006). Biplot analysis of multi-environment trial data: principles and applications. Canadian Journal Plant Science 86, 623-645. https://doi.org/10.4141/P05-169
https://doi.org/10.4141/P05-169...
.

RESULTS AND DISCUSSION

The experimental precision was evaluated by observing the estimates of the selective accuracy (rgg) and the coefficient of the experimental variation (CVe) (Pimentel-Gomes, 2009Pimentel-Gomes, F. (2009). Curso de estatística experimental. Piracicaba: FEALQ.; Resende and Duarte, 2007Resende, M. D. V., and Duarte, J. B. (2007). Precisão e controle de qualidade em experimentos de avaliação de cultivares. Pesquisa Agropecuária Tropical, 37, 182-194.). Overall, accuracy was high for all traits measured, indicating high reliability of experimental data for selective purposes. The values of r ^gg ranged from 28.17% (GMY, Nova Porteirinha) to 99.89% (FLOW, Lavras), while CVe values ranged from 0.80% (FLOW, Lavras) to 22.94% (DMY, Sete Lagoas). Therefore, the estimates ofr ^gg and CVe that have shown the traits GMY and DMY were more influenced by environmental factors than the FLOW, PH and MC (Table 3).

Table 3
Estimates of the parameters general mean ), selective accuracy (r̂ ĝg, (%)), and experimental coefficient of variation (CVe, %) for flowering time (FLOW), plant height (PH), moisture content (MC), green mass yield (GMY) and dry mass yield (DMY) for the evaluation of genotypes of biomass sorghum in ten environments in the 2014/15 agricultural crop year.

The effect of environment was expressive to the phenotypic variation for all traits (Tables 3 and 4). The differences among environments are related to macro-environmental factors, such as latitude, altitude, climate and soil (Table 1). This has been highlighted in other studies with biomass sorghum (Castro et al. 2015Castro, F. M., Bruzi, A. T, Nunes, J. A. R., Parrella, R. A. C., Lombardi, G. M. R., Albuquerque, C. J. B. and Lopes, M. (2015). Agronomic and energetic potential of biomass sorghum genotypes. American Journal of Plant Sciences, 6, 1862-1873. https://doi.org/10.4236/ajps.2015.611187
https://doi.org/10.4236/ajps.2015.611187...
), as well as other types of sorghum, as sweet sorghum (Figueiredo et al. 2015Figueiredo, U. J., Nunes, J. A. R., Parrella, R. A. C., Souza, E. D., Silva, A. R., Emygdio, B. M., Machado, J. R. A., and Tardin, F. D. (2015). Adaptability and stability of genotypes of sweet sorghum by GGEBiplot and Toler methods. Genetics and Molecular Research, 14, 11211-11221. https://doi.org/10.4238/2015.September.22.15
https://doi.org/10.4238/2015.September.2...
), forage sorghum (Mullet 2017Mullet, J. E. (2017). High-Biomass C4 Grasses ? Filling the Yield Gap. Plant Science, 261, 10-17. https://doi.org/10.1016/j.plantsci.2017.05.003
https://doi.org/10.1016/j.plantsci.2017....
) and grain sorghum (Batista et al. 2017Batista, P. S. C., Menezes, C. B., Carvalho, A. J., Portugal, A. F., Bastos, E. A., Cardoso, M. J., Santos, C. V., and Julio, M. P. M. (2017). Performance of grain sorghum hybrids under drought stress using GGE biplot analyses. Genetics and Molecular Research, 16, 1-12. https://doi.org/10.4238/gmr16039761
https://doi.org/10.4238/gmr16039761...
).

Table 4
Summary of the analysis of variance and percentages of the genotype x environment interaction in the simple and complex types for flowering time (FLOW), plant height (PH), moisture content (MC), green mass yield (GMY), and dry mass yield (DMY) for the evaluation of genotypes of biomass sorghum in the 2014/15 agricultural crop year.

The amplitude of variation of the means among the environments was 28 days, 2.58 m, 8.59%, 66.41 t.ha-1 and 13.07 t.ha-1 for FLOW, PH, MC, GMY and DMY, respectively (Table 3). It is important to stand out that the genotypes presented low relative performance in Pelotas environment, which might be explained by the high latitude, since the genotypes are photoperiod sensitive (Table 3). The daylength in regions of high latitudes is less than 12 h and 20 min, which contributes to initiate early floral development and, therefore, decreasing the PH, GMY and DMY traits (Parrella et al. 2010Parrella, R. A. C., Rodrigues, J. A. S., Tardin, F. D., Damasceno, C. M. B., and Schaffert, R. E. (2010). Desenvolvimento de híbridos de sorgo sensíveis ao fotoperíodo visando alta produtividade de biomassa. Sete lagoas: Embrapa Milho e Sorgo. [Accessed 2016 March 11]. https://www.embrapa.br/milho-e-sorgo/busca-de-publicacoes/-/publicacao/876558/desenvolvimento-de-hibridos-de-sorgo-sensiveis-ao-fotoperiodo-visando-alta-produtividade-de-biomassa
https://www.embrapa.br/milho-e-sorgo/bus...
; Rooney and Aydin 1999Rooney, W., and Aydin, S. (1999). Genetic control of a photoperiod-sensitive response in Sorghum bicolor (L.) Moench. Crop Science, 39, 397-400. https://doi.org/10.2135/cropsci1999.0011183X0039000200016x
https://doi.org/10.2135/cropsci1999.0011...
).

The variation among the genotypes was expressive for all traits (Tables 4 and 5). For FLOW, the cultivars ‘Volumax’ (35) and ‘BRS 655’ (36) were the earliest, because they are photoperiod nonsensitive. The photoperiod-sensitive genotypes of biomass sorghum ranged from 120 days (28) to 143 days (34), with emphasis on the later genotypes 34, 13, 6, 15, 1 and 8. For PH, the means ranged from 2.35 m (36) to 4.88 m (22), standing out the genotypes 22, 26, 27, 32, 23, 29, 33, 25 and 20, with a mean height of 4.73 m.

Table 5
Adjusted means and groups by the Toler method of biomass sorghum genotypes (ID), 33 experimental hybrids [201424B001 (1) to 201424B033 (33)] and the cultivars ‘BRS 716’ (34), ‘Volumax’ (35) and ‘BRS 655’ (36), for flowering time (FLOW, days after sowing), plant height (PH, m), moisture content (MC, %), green mass yield (GMY, ton/ha), and dry mass yield (DMY, ton/ha) in the 2014/15 agricultural crop year.

Of the requirements highlighted by the thermoelectric power plants for biomass burning and energy cogeneration, it is estimated that the genotypes must present a biomass moisture content of around 50% or 55% (May et al. 2013May, A., Silva, D. D., and Santos, F. C. (2013). Cultivo do sorgo biomassa para a cogeração de energia elétrica. Sete Lagoas: Embrapa Milho e Sorgo. [Accessed 2016 September 02]. https://www.embrapa.br/busca-de-publicacoes/-/publicacao/964766/cultivo-do-sorgo-biomassa-para-a-cogeracao-de-energia-eletrica
https://www.embrapa.br/busca-de-publicac...
). The experimental photoperiod-sensitive hybrids presented MC higher than 60%, ranging from 65.65% (28) to 72.30% (19) (Table 4). These values might be considered high for burning. Edaphoclimatic and crop management factors might influence the MC in the plant at harvest time and biomass processing (Milar 2009).

In terms of the ideal genotype for genetic improvement and commercial exploitation, the hybrids must also combine high biomass production. For the variable GMY, the hybrids 33, 31 and 13 were the most productive with a mean of74.77 t·ha-1 (Table 5). In relation to DMY, the most promising hybrids were 31, 33, 1, 22, 34 and 8 (Table 5). However, they presented on average 23.37 t·ha-1 of DMY, below the desired level of around 50 t·ha-1 (Parrella et al. 2010Parrella, R. A. C., Rodrigues, J. A. S., Tardin, F. D., Damasceno, C. M. B., and Schaffert, R. E. (2010). Desenvolvimento de híbridos de sorgo sensíveis ao fotoperíodo visando alta produtividade de biomassa. Sete lagoas: Embrapa Milho e Sorgo. [Accessed 2016 March 11]. https://www.embrapa.br/milho-e-sorgo/busca-de-publicacoes/-/publicacao/876558/desenvolvimento-de-hibridos-de-sorgo-sensiveis-ao-fotoperiodo-visando-alta-produtividade-de-biomassa
https://www.embrapa.br/milho-e-sorgo/bus...
). This low performance of biomass sorghum hybrids is also found in the literature (Rooney et al. 2007Rooney, W. L., Blumenthal, J., Bean, B., and Mullet, J. E. (2007). Designing sorghum as a dedicated bioenergy feedstock. Biofuels, Bioproducts and Biorefining, 1, 147-157. https://doi.org/10.1002/bbb.15
https://doi.org/10.1002/bbb.15...
; Silva et al. 2015Silva, K. J., Menezes, C. B., Tardin, F. D., Silva, A. R., Cardoso, M. J., Bastos, E. A., and Godinho, V. P. (2015). Seleção para produtividade de grãos, adaptabilidade e estabilidade de sorgo granífero. Revista Brasileira de Milho e Sorgo, 15, 335-345. https://doi.org/10.18512/1980-6477/rbms.v15n2p335-345
https://doi.org/10.18512/1980-6477/rbms....
; Mullet 2017Mullet, J. E. (2017). High-Biomass C4 Grasses ? Filling the Yield Gap. Plant Science, 261, 10-17. https://doi.org/10.1016/j.plantsci.2017.05.003
https://doi.org/10.1016/j.plantsci.2017....
), what reinforce the need of improvement of this crop to obtain better genotypes.

Another point that must be taken into account in the selection of genotypes of biomass sorghum is that they must present high performance in different growing environments. In this case, the GEI may difficult recommendation of the hybrids. For the MC, the GEI contributed with 23.79% ofthe phenotype variation, and for FLOW this contribution was 12.57%. For PH, GMY and DMY, the relative contribution was lower, with values of 7.46%, 6.31% and 9.30%, respectively (Table 4).

It can be observed that in all the evaluated traits there was greater participation of the GEI of the complex type (Table 4). This indicates a lack of correlation in the average performance of the genotypes evaluated in the tested environments (Robertson 1959Robertson, A. (1959). Experimental design on the measurement of heritabilities and genetic correlations: Biometrical genetics. New York: Pergamon Press.; Cruz and Castoldi 1991Cruz, C. D., and Castoldi, F. (1991). Decomposição da interação genótipos ;x ambientes em partes simples e complexa. Revista Ceres, 38, 422-430.) and a possibility of the presence of genotypes adapted to specific environments (Ramalho et al. 2012Ramalho, M. A. P., Abreu, A. F. B., Santos, J. B., and Nunes, J. A. R. (2012). Aplicação da genética quantitativa no melhoramento de plantas autógamas. Lavras: UFLA.). In orderto study more clearly the influence of GEI on adaptability and stability of the biomass sorghum genotypes in question, it is necessary to adopt additional biometric procedures, such as regression methods, multivariate approaches, and the recommendation index proposed by Annicchiarico (1992)Annicchiarico, P. (1992). Cultivar adoption and recommendation from alfafa trials in Northern Italy. Journal of Genetics and Breeding, 46, 269-278.. However, before to present the analyses using these methods is important to observe that this study was based on a single agricultural crop year. Thus, this model is unable to dissociate the genotype x environment x year interaction caused by unpredictable factors. Evaluations of MET across years are indispensable to dissociate the repeatable part of the GEI, and eventually it can be explored for the definition of mega-environments, and the safer recommendation of hybrids (Yan 2016Yan, W. (2016). Analysis and Handling of G × E in a Practical Breeding Program. Crop Science, 56, 2107-2118. https://doi.org/10.2135/cropsci2015.06.0336
https://doi.org/10.2135/cropsci2015.06.0...
). Despite this limitation, some important results in a single agricultural year can be obtained and might help breeders in a breeding program.

For all the traits, the genotypes showed variable response patterns by the Toler method (Table 5). For FLOW and MC, we adopted a particular interpretation of the groups classified by Toler (Table 2), where D and E response patterns describe the behavior that is closest to the desirable. These traits might be considered components of the general adaptability. In this case, breeders desire to reduce the flowering time without compromise the accumulation of biomass. Moisture in the biomass is directly linked to DMY and burning efficiency. It is suggested MC not superior to 55% at the harvest. The genotypes 1, 6, 13 and 15 stood out as the later ones with concave response pattern (E) and high predictability (correlation between observed and fitted means – r ≥ 0.87). For MC, genotypes 21 and 24 (pattern D) and 28 (pattern E) were highlighted with lower mean MC (MC ≤ 67%) and predictability above 80%.

For PH, GMY, and DMY, we adopted a conventional interpretation of the groups classified by Toler (Table 2). In the case of PH, the hybrids 27 and 29 associated high mean and desirable doubly response pattern (A) (Table 5). As for traits GMY and DMY, there is not any genotype with convex response pattern, and high mean. The hybrids with higher GMY (13, 31 and 33) were more adapted to high quality environments or Toler group B (31 and 33), while the hybrid 13 presented an undesirable doubly behavior (Table 4). For the DMY, the experimental hybrids 1, 8, 22, 31 and 33, and the check 34 showed the highest average yield of dry biomass, but with different response pattern across environments. The hybrids 1, 8 and ‘BRS 716’ presented broad adaptability and were classified in the Toler group C, while the hybrids 22, 31 and 33 were more adapted to above average environments – Toler group B (Fig. 1). These results show a problem often faced by breeders to identify productive genotypes with a desirable double response pattern (Rosse and Vencovsky 2000Rosse, L. N., and Vencovsky, R. (2000). Modelo de regressão não-linear aplicado ao estudo da estabilidade fenotípica de genótipos de feijão no estado do Paraná. Bragantia, 59, 99-107. https://doi.org/10.1590/S0006-87052000000100016
https://doi.org/10.1590/S0006-8705200000...
).

Figure 1
Observed (black dots) and fitted means by Toler nonlinear regression (blue line) of biomass sorghum genotypes for dry matter yield.

The use of two or more methods to study adaptability and phenotypic stability is only justified if there is complementarity (Borges et al. 2000Borges, L. C., Ferreira, D. F., Abreu, A. F., and Ramalho, M. A. P. (2000). Emprego de metodologias de avaliação de estabilidade fenotípica na cultura de feijoeiro (Phaseolus vulgaris L.). Revista Ceres, 47, 89-102.; Ferreira et al. 2006Ferreira, D. F., Demétrio, C. G. B., Manly, B. F. J., Machado, A. A., and Vencovsky, R. (2006). Statistical models in agriculture: biometrical methods for evaluating phenotypic stability plant breeding. Cerne, 12, 373-388.). The use of the Annicchiarico (1992)Annicchiarico, P. (1992). Cultivar adoption and recommendation from alfafa trials in Northern Italy. Journal of Genetics and Breeding, 46, 269-278. method to complement the Toler (1990)Toler, J. E., and Burrows, P. M. (1998). Genotypic performance over environmental arrays: A non-linear grouping protocol. Journal of Applied Statistics, 25, 131-143. https://doi.org/10.1080/02664769823368
https://doi.org/10.1080/02664769823368...
method is justified by its ease of analysis and interpretation, as well as to associate in a single parameter the description of the genotype for its adaptability and phenotypic stability (Annicchiarico 1992Annicchiarico, P. (1992). Cultivar adoption and recommendation from alfafa trials in Northern Italy. Journal of Genetics and Breeding, 46, 269-278.).

For the PH, GMY and DMY traits, 39.40%, 18.18% and 18.18% of the experimental hybrids had a high reliability index (above 100%) as a function of the average of the environments, respectively, that is, they had a lower risk of adoption(Table 6). In the case of FLOW and MC traits, the interpretation of the Annicchiarico index must be performed contrary, once that reduced flowering time and low moisture is desired. Considering a threshold for the reliability index less than 95%, ten and three experimental hybrids were highlighted FLOW and MC, respectively, where the genotypes 24, 28 and 30 were coincident (Table 6).

Table 6
Estimates of the Annicchiarico reliability index (I) of the biomass sorghum genotypes (ID), 33 experimental hybrids [201424B001 (1) to 201424B033 (33)] and the cultivars ‘BRS 716’ (34), ‘Volumax’ (35) and ‘BRS 655’ (36), based on the mean of the environments (Ii) and the check ‘BRS716’ (Ii(BRS716)) for flowering time (FLOW, days), plant height (PH, m), moisture content (MC), green mass yield (GMY, ton/ha), and dry mass yield (DMY, ton.ha–1) in the 2014/15 agricultural crop year.

Another approach was to determine the reliability index of the experimental genotypes in relation to a commercial check widely adopted by farmers. For this, we used the hybrid ‘BRS 716’ (genotype 34), because it is a biomass sorghum cultivar, while the checks ‘Volumax’ and ‘BRS 655’ are forage sorghum cultivars. According to the analyses of adaptability and stability by the method of Annicchiarico, the experimental photoperiod-sensitive hybrids that presented the lowest risk of adoption in relation to ‘BRS 716’ (Ii(BRS716)) were 22, 26 and 32 for PH and 24, 28 and 30 for MC. For FLOW, 25 of the 33 experimental hybrids associated lower risk of recommendation relative to ‘BRS 716’, while for GMY and DMY all hybrids presented higher risk. (Table 6). Although high correlation values (≥0.92) were observed between the reliability indexes, in relation to the average of the environment (Ii) and the check (Ii(BRS716)), it was detected a divergence in the classification of the genotypes (Table 6). This fact may be associated to differences in the ‘BRS 716’ response patterns and experimental hybrids in the tested environments for the different traits (Table 5).

According to Ferreira et al. (2006)Ferreira, D. F., Demétrio, C. G. B., Manly, B. F. J., Machado, A. A., and Vencovsky, R. (2006). Statistical models in agriculture: biometrical methods for evaluating phenotypic stability plant breeding. Cerne, 12, 373-388., the GEI is better described by multivariate approaches. There are some multivariate methods applied to investigate GEI, among them stands for the GGE biplot method, which allow to characterize the interrelationship among environments and genotypes (Yan and Tinker 2006Yan, W., and Tinker, N. A. (2006). Biplot analysis of multi-environment trial data: principles and applications. Canadian Journal Plant Science 86, 623-645. https://doi.org/10.4141/P05-169
https://doi.org/10.4141/P05-169...
). In Fig. 2 there were presented two biplots related to the trait DMY. The emphasis on this trait is because it might be considered a natural selection index, once it takes into account the other traits. Furthermore, DMY is more closely related to energy cogeneration yield (Castro et al. 2015Castro, F. M., Bruzi, A. T, Nunes, J. A. R., Parrella, R. A. C., Lombardi, G. M. R., Albuquerque, C. J. B. and Lopes, M. (2015). Agronomic and energetic potential of biomass sorghum genotypes. American Journal of Plant Sciences, 6, 1862-1873. https://doi.org/10.4236/ajps.2015.611187
https://doi.org/10.4236/ajps.2015.611187...
). The biplot A (Fig. 2) showed some environments were highly positive correlated, highlighting Uberlândia and Sinop, and Dourados, Lavras and Sete Lagoas. The environment Nova Porteirinha stands out for its low discrimination of genotypes as for DMY.

Figure 2
Biplots showing the interrelationship among environments and genotypes (a) and mean versus stability of genotypes (b) for dry mass yield (ton/ha). Abbreviations in blue color represent the environments (NP-Nova Porteirinha, Dracena-DR, Uberlândia-UB, SL-Sete Lagoas, LA–Lavras, GO-Goiânia, DO-Dourados, SI-Sinop, PE-Pelotas, GU-Guaíra), and numbers in black color are genotypes (experimental hybrids).

The biplot B (Fig. 2) highlights the performance and stability of the genotypes. The same experimental hybrids 31, 33, 1, 22 and 8 were pointed out in terms of adaptability as aforementioned and also associated high stability. However, GGE biplot does not inform appropriately on genotype response pattern across environments, what was done by Toler method. Additionally, the cultivar BRS 716 also had high mean, but less stable.

CONCLUSION

The genotype by environment interaction is expressive in biomass sorghum, mainly for the traits related to the biomass yield, which was predominantly complex. The Toler, GGE biplot and Annicchiarico methods present complementarity for describing the differential relative response of genotypes across environments. The experimental photoperiod-sensitive hybrids 1, 8, 22, 31 and 33 are promising because associate stability and lower recommendation risk. Moreover, the hybrids 1 and 8 presented response pattern for broad adaptability, while the hybrids 22, 31 and 33 for specific adaptability to high quality environments.

ACKNOWLEDGMENTS

This study was financed in the part by the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - Brasil (CAPES) – Finance Code 001 and by Embrapa Milho e Sorgo. We are also grateful to the Programa Bolsas Brasil PAEC-OEA-GCUB.

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Publication Dates

  • Publication in this collection
    13 Dec 2019
  • Date of issue
    Oct-Dec 2019

History

  • Received
    21 Jan 2019
  • Accepted
    16 June 2019
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