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    Accuracies of univariate and multivariate genomic prediction models in African cassava

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    Journal Article (1004.Kb)
    Authors
    Okeke, U.G.
    Akdemir, D.
    Rabbi, Ismail Y.
    Kulakow, P.A.
    Jannink, Jean-Luc
    Date Issued
    2017-12
    Date Online
    2017-03
    Language
    en
    Type
    Journal Article
    Review status
    Peer Review
    ISI journal
    Accessibility
    Open Access
    Usage rights
    CC-BY-4.0
    Metadata
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    Citation
    Okeke, U.G., Akdemir, D., Rabbi, I., Kulakow, P. & Jannink, J.L. (2017). Accuracies of univariate and multivariate genomic prediction models in African Cassava. Genetics Selection Evolution, 1-10.
    Permanent link to cite or share this item: https://hdl.handle.net/10568/89941
    DOI: https://doi.org/10.1186/s12711-017-0361-y
    Abstract/Description
    Background: Genomic selection (GS) promises to accelerate genetic gain in plant breeding programs especially for crop species such as cassava that have long breeding cycles. Practically, to implement GS in cassava breeding, it is necessary to evaluate different GS models and to develop suitable models for an optimized breeding pipeline. In this paper, we compared (1) prediction accuracies from a single-trait (uT) and a multi-trait (MT) mixed model for a singleenvironment genetic evaluation (Scenario 1), and (2) accuracies from a compound symmetric multi-environment model (uE) parameterized as a univariate multi-kernel model to a multivariate (ME) multi-environment mixed model that accounts for genotype-by-environment interaction for multi-environment genetic evaluation (Scenario 2). For these analyses, we used 16 years of public cassava breeding data for six target cassava traits and a fivefold cross-validation scheme with 10-repeat cycles to assess model prediction accuracies. Results: In Scenario 1, the MT models had higher prediction accuracies than the uT models for all traits and locations analyzed, which amounted to on average a 40% improved prediction accuracy. For Scenario 2, we observed that the ME model had on average (across all locations and traits) a 12% improved prediction accuracy compared to the uE model. Conclusions: We recommend the use of multivariate mixed models (MT and ME) for cassava genetic evaluation. These models may be useful for other plant species.
    Other CGIAR Affiliations
    Roots, Tubers and Bananas
    AGROVOC Keywords
    genomics; plant breeding; cassava; genotypes; plant genetic resources
    Subjects
    CASSAVA; GENETIC IMPROVEMENT; PLANT BREEDING; PLANT GENETIC RESOURCES
    Countries
    Nigeria
    Regions
    Africa; Western Africa
    Organizations Affiliated to the Authors
    Cornell University; International Institute of Tropical Agriculture
    Investors/sponsors
    Bill & Melinda Gates Foundation; Department for International Development, United Kingdom
    Collections
    • IITA Journal Articles [4999]
    • RTB Journal Articles [1344]

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