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Publication Details
AFRICAN RESEARCH NEXUS
SHINING A SPOTLIGHT ON AFRICAN RESEARCH
agricultural and biological sciences
AMMI and SREG GGE biplot analysis for matching varieties onto soybean production environments in Ethiopia
Scientific Research and Essays, Volume 4, No. 11, Year 2009
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Description
Matching soybean variety selection with its production environment is often challenged by the occurrence of significant genotype-by-environment interactions (GEI) in the variety development process. Several statistical models have been proposed for increasing the chance of exploiting positive GEI and supporting breeding program decisions in variety selection and recommendation for target set of environments. Additive main effects and multiplicative interactions (AMMI) and site regression (SREG) genotype plus genotype-by-environment interaction (GGE) models are among the models that effectively capture the additive (linear) and multiplicative (bilinear) components of GEI and provide meaningful interpretation of multi-environment data set in breeding programs. The objective of this study was to assess the significance and magnitude of GEI effect on soybean grain yield and exploit the positive GEI effect using AMMI and SREG GGE biplot analysis. Grain yield data of 11 genotypes evaluated at 4 sites for three cropping seasons (2002, 2003 and 2004) across the soybean production ecology in Ethiopia were used for this purpose. AMMI analysis showed that grain yield variation due to environments, genotypes and GEI were highly signifiscant (p<0.01). Environments explained the greater proportion (61.08%) of total yield variation followed by GEI (34.13%) and genotypes (4.79%), indicating the necessity for testing soybean varieties at multi-locations and over years. The first five bilinear AMMI model terms were highly significant (p<0.01) and of which the first two terms explained 67.5% of the GEI. According to the AMMI and SREG GGE biplots models, no single variety has superior performance in all the environments. However, the genotype TGx-1892-10F was overall winner in combining high yield with relatively less variable yield across environments. Application of AMMI and GGE biplots facilitated visual comparison and identification superior genotypes for each target set of environments. © 2009 Academic Journals.
Authors & Co-Authors
Asfaw, Asrat
Unknown Affiliation
Gurum, Fekadu
Unknown Affiliation
Atnaf, Mulugeta
Unknown Affiliation
Statistics
Citations: 58
Authors: 3
Identifiers
ISSN:
19922248
Research Areas
Genetics And Genomics
Study Design
Case-Control Study
Study Locations
Ethiopia