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    Multi-environment genomic selection in rice elite breeding lines

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    Authors
    Nguyen, Van Hieu
    Morantte, Rose Imee Zhella
    Lopena, Vitaliano
    Verdeprado, Holden
    Murori, Rosemary
    Ndayiragije, Alexis
    Katiyar, Sanjay
    Islam, Md Rafiqul
    Juma, Roselyne U.
    Galvez, Hayde
    Glaszmann, Jean-Christophe
    Cobb, Joshua N.
    Bartholomé, Jérôme
    Date Issued
    2022-10
    Language
    en
    Type
    Journal Article
    Accessibility
    Open Access
    Usage rights
    CC-BY-4.0
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    Citation
    Nguyen, V. H., Morantte, R.I.Z., Lopena, V., Verdeprado, H., Murori, R., Ndayiragije, A., Katiyar, S. et al. 2022.Multi-environment genomic selection in rice elite breeding lines. (2022).
    Permanent link to cite or share this item: https://hdl.handle.net/10568/127686
    DOI: https://doi.org/10.21203/rs.3.rs-2133066/v1
    Abstract/Description
    Abstract Background: Assessing the performance of elite lines in target environments is essential for breeding programs to select the most relevant genotypes. One of the main complexities in this task resides in accounting for the genotype by environment interactions. Genomic prediction models that integrate information from multi-environment trials and environmental covariates can be efficient tools in this context. The objective of this study was to assess the predictive ability of different genomic prediction models to optimize the use of multi- environment information. We used 111 elite breeding lines representing the diversity of the International Rice Research Institute (IRRI) breeding program for irrigated ecosystems. The lines were evaluated for three traits (days to flowering, plant height, and grain yield) in 15 environments in Asia and Africa and genotyped with 882 SNP markers. We evaluated the efficiency of genomic prediction to predict untested environments using seven multi-environment models and three cross-validation scenarios. Results: The elite lines were found to belong to the indica group and more specifically the indica-1B subgroup which gathered improved material originating from the Green Revolution. Phenotypic correlations between environments were high for days to flowering and plant height (33% and 54% of pairwise correlation greater than 0.5 ) but low for grain yield (lower than 0.2 in most cases). Clustering analyses based on environmental covariates separated Asia’s and Africa's environments into different clusters or subclusters. The predictive abilities ranged from 0.06 to 0.79 for days to flowering, 0.25 to 0.88 for plant height, and -0.29 to 0.62 for grain yield. We found that models integrating genotype-by-environment interaction effects did not perform significantly better than models integrating only main effects (genotypes and environment or environmental covariates). The different cross-validation scenarios showed that, in most cases, the use of all available environments gave better results than a subset. Conclusion: Multi-environment genomic prediction models with main effects were sufficient for accurate phenotypic prediction of elite lines in targeted environments. The recommendation for the breeders is to use simple multi-environment models with all available information for routine application in breeding programs.
    CGIAR Author ORCID iDs
    Holden Verdepradohttps://orcid.org/0000-0003-4232-5172
    Ndayiragije Alexishttps://orcid.org/0000-0002-2739-1019
    Jean Christophe Glaszmannhttps://orcid.org/0000-0001-9918-875X
    Joshua N. Cobbhttps://orcid.org/0000-0002-1732-2378
    Jérôme Bartholoméhttps://orcid.org/0000-0002-0855-3828
    CGIAR Action Areas
    Genetic Innovation
    CGIAR Impact Areas
    Nutrition, health and food security
    CGIAR Initiatives
    Accelerated Breeding
    Other CGIAR Affiliations
    Excellence in Breeding
    AGROVOC Keywords
    rice; research
    Species
    Oryza sativa
    Organizations Affiliated to the Authors
    Centre de Coopération Internationale en Recherche Agronomique pour le Développement; International Rice Research Institute; University of the Philippines; RiceTec Inc.
    Investors/sponsors
    Bill & Melinda Gates Foundation; CGIAR Trust Fund; Agropolis Foundation; Southeast Asian Regional Center for Graduate Study and Research in Agriculture
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    • CGIAR Initiative on Accelerated Breeding [478]

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