2024
DOI: 10.1111/pbr.13235
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Machine Learning for Prediction of Resistance Scores in Wheat (Triticum aestivum L.)

Philipp Georg Heilmann,
Yohannes Fekadu Difabachew,
Matthias Frisch
et al.

Abstract: Machine learning methods were shown to improve the prediction accuracies of genomic prediction of resistance scores compared to methods like RR‐BLUP, which were originally designed for metric rather than ordinal response values. We conducted a cross‐validation study with 361 wheat genotypes evaluated for five fungal diseases. Our objective was to compare the prediction accuracy and the ability to identify the most resistant genotypes of 19 genomic prediction approaches. Each approach consisted of a different c… Show more

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