4.3 Article

Genomic Prediction Enhanced Sparse Testing for Multi-environment Trials

期刊

G3-GENES GENOMES GENETICS
卷 10, 期 8, 页码 2725-2739

出版社

GENETICS SOCIETY AMERICA
DOI: 10.1534/g3.120.401349

关键词

genomic-enabled prediction accuracy; sparse testing methods; allocation of non-overlapping; overlapping genotypes in environments; random cross-validations; maize multi-environment trials; genotype-by-environment interaction GE; GenPred; Shared data resources

资金

  1. Bill & Melinda Gates Foundation
  2. United States Agency for International Development (USAID) through Stress Tolerant Maize for Africa (STMA) [OPP1134248]
  3. Foundation for Research Levy on Agricultural Products (FFL)
  4. Agricultural Agreement Research Fund (JA) in Norway through NFR grant [267806]
  5. CGIAR Research Programs Maize and Wheat from Government of Australia
  6. CGIAR Research Programs Maize and Wheat from Government of Belgium
  7. CGIAR Research Programs Maize and Wheat from Government of Canada
  8. CGIAR Research Programs Maize and Wheat from Government of China
  9. CGIAR Research Programs Maize and Wheat from Government of France
  10. CGIAR Research Programs Maize and Wheat from Government of India
  11. CGIAR Research Programs Maize and Wheat from Government of Japan
  12. CGIAR Research Programs Maize and Wheat from Government of Korea
  13. CGIAR Research Programs Maize and Wheat from Government of Mexico
  14. CGIAR Research Programs Maize and Wheat from Government of Netherlands
  15. CGIAR Research Programs Maize and Wheat from Government of New Zealand
  16. CGIAR Research Programs Maize and Wheat from Government of Norway
  17. CGIAR Research Programs Maize and Wheat from Government of Sweden
  18. CGIAR Research Programs Maize and Wheat from Government of Switzerland
  19. CGIAR Research Programs Maize and Wheat from Government of U.K.
  20. CGIAR Research Programs Maize and Wheat from Government of U.S.
  21. World Bank

向作者/读者索取更多资源

Sparse testing refers to reduced multi-environment breeding trials in which not all genotypes of interest are grown in each environment. Using genomic-enabled prediction and a model embracing genotype x environment interaction (GE), the non-observed genotype-in-environment combinations can be predicted. Consequently, the overall costs can be reduced and the testing capacities can be increased. The accuracy of predicting the unobserved data depends on different factors including (1) how many genotypes overlap between environments, (2) in how many environments each genotype is grown, and (3) which prediction method is used. In this research, we studied the predictive ability obtained when using a fixed number of plots and different sparse testing designs. The considered designs included the extreme cases of (1) no overlap of genotypes between environments, and (2) complete overlap of the genotypes between environments. In the latter case, the prediction set fully consists of genotypes that have not been tested at all. Moreover, we gradually go from one extreme to the other considering (3) intermediates between the two previous cases with varying numbers of different or non-overlapping (NO)/overlapping (O) genotypes. The empirical study is built upon two different maize hybrid data sets consisting of different genotypes crossed to two different testers (T1 and T2) and each data set was analyzed separately. For each set, phenotypic records on yield from three different environments are available. Three different prediction models were implemented, two main effects models (M1andM2), and a model (M3)including GE. The results showed that the genome-based model including GE (M3) captured more phenotypic variation than the models that did not include this component. Also,M3provided higher prediction accuracy than modelsM1andM2for the different allocation scenarios. Reducing the size of the calibration sets decreased the prediction accuracy under all allocation designs withM3being the less affected model; however, using the genome-enabled models (i.e.,M2andM3) the predictive ability is recovered when more genotypes are tested across environments. Our results indicate that a substantial part of the testing resources can be saved when using genome-based models including GE for optimizing sparse testing designs.

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