Autor: Crossa, José
- A marker weighting approach for enhancing within-family accuracy in genomic prediction
- Data augmentation enhances plant-genomic-enabled predictions
- Deep learning methods improve genomic prediction of wheat breeding
- Genomic prediction from multi-environment trials of wheat breeding
- Efficient arabinoxylan assay for wheat: Exploring variability and molecular marker associations in Wholemeal and refined flour
- Genomic prediction of synthetic hexaploid wheat upon tetraploid durum and diploid Aegilops parental pools
Autor: Dreisigacker, Susanne
- A marker weighting approach for enhancing within-family accuracy in genomic prediction
- Efficient arabinoxylan assay for wheat: Exploring variability and molecular marker associations in Wholemeal and refined flour
- Genomic prediction of synthetic hexaploid wheat upon tetraploid durum and diploid Aegilops parental pools
- Boosting genomic prediction transferability with sparse testing
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