02439naa a2200325 a 450000100080000000500110000800800410001902400440006010000200010424501210012426000090024552015090025465000140176365000100177765000150178765000100180265300190181270000190183170000200185070000220187070000190189270000250191170000160193670000170195270000180196970000200198770000180200770000220202577300660204721378202021-12-15 2021 bl uuuu u00u1 u #d7 ahttps://doi.org/10.1002/agj2.207072DOI1 aSILVA, K. J. da aIdentification of mega-environments for grain sorghum in Brazil using GGE biplot methodology.h[electronic resource] c2021 aThe performance of genotypes in a wide range of environments can be affected by extensive genotype × environment (G × E) interactions, making the subdivision of the testing environments into relatively more homogeneous groups of locations (mega-environments) a necessary strategy. The genotype main effects + genotype × environment interaction biplot method (GGE) allows identification of megaenvironments and selection of stable genotypes adapted to specific environments and mega-environments. The objectives of this study were to identify mega-environments regarding sorghum [Sorghum bicolor (L.) Moench] grain yield and demonstrate that the GGE biplot method can identify essential locations for conducting tests in different mega-environments. A total of 22 competition trials of grain sorghum genotypes were conducted over three crop seasons across several production locations in Brazil. A total of 25, 22, and 30 genotypes were evaluated during the first, second, and third crop seasons, respectively. After identifying the presence of G × E interactions, the data were subjected to adaptability and stability analyses using the GGE biplot method. A phenotypic correlation network was used to express functional relationships between environments. The GGE biplot was found to be an efficient approach for identifying three mega-environments in grain sorghum in Brazil, selecting representative and discriminative environments, and recommending more adaptive and stable grain sorghum genotypes aGenótipo aGrão aRendimento aSorgo aMétodo biplot1 aTEODORO, P. E.1 aSILVA, M. J. da1 aTEODORO, L. P. R.1 aCARDOSO, M. J.1 aGODINHO, V. de P. C.1 aMOTA, J. H.1 aSIMON, G. A.1 aTARDIN, F. D.1 aSILVA, A. R. da1 aGUEDES, F. L.1 aMENEZES, C. B. de tAgronomy Journalgv. 113, n. 4, p. 3019-3030, Jul./Aug. 2021.