Big Data Improves Plant Breeding Predictability
This is a news story, published by Phys Org, that relates primarily to the IPK Leibniz Institute news.
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commercial wheat breeding programsPhys Org
•Technology
Technology
Big data approach makes plant predictions more accurate

89% Informative
Researchers at the IPK Leibniz Institute combined phenotypic and genotypic data from four commercial wheat breeding programs.
The new data set covered 12 years of trial activity in 168 environments and formed a training set for genomic predictions with up to 9,500 genotypes.
The study results were published in the Plant Biotechnology Journal .
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99
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