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Article Dans Une Revue Nature Genetics Année : 2019

Genomic prediction of maize yield across European environmental conditions

Résumé

The development of germplasm adapted to changing climate is required to ensure food security1,2. Genomic prediction is a powerful tool to evaluate many genotypes but performs poorly in contrasting environmental scenarios3,4,5,6,7 (genotype × environment interaction), in spite of promising results for flowering time8. New avenues are opened by the development of sensor networks for environmental characterization in thousands of fields9,10. We present a new strategy for germplasm evaluation under genotype × environment interaction. Yield was dissected in grain weight and number and genotype × environment interaction in these components was modeled as genotypic sensitivity to environmental drivers. Environments were characterized using genotype-specific indices computed from sensor data in each field and the progression of phenology calibrated for each genotype on a phenotyping platform. A whole-genome regression approach for the genotypic sensitivities led to accurate prediction of yield under genotype × environment interaction in a wide range of environmental scenarios, outperforming a benchmark approach.
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Dates et versions

hal-02618545 , version 1 (25-05-2020)

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Emilie Millet, Willem Kruijer, Aude Coupel-Ledru, Santiago Alvarez Prado, Llorenç Cabrera Bosquet, et al.. Genomic prediction of maize yield across European environmental conditions. Nature Genetics, 2019, 51 (6), pp.952-956. ⟨10.1038/s41588-019-0414-y⟩. ⟨hal-02618545⟩
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