2024
DOI: 10.3389/fpls.2024.1398903
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Genomic prediction for sugarcane diseases including hybrid Bayesian-machine learning approaches

Chensong Chen,
Shamsul A. Bhuiyan,
Elizabeth Ross
et al.

Abstract: Sugarcane smut and Pachymetra root rots are two serious diseases of sugarcane, with susceptible infected crops losing over 30% of yield. A heritable component to both diseases has been demonstrated, suggesting selection could improve disease resistance. Genomic selection could accelerate gains even further, enabling early selection of resistant seedlings for breeding and clonal propagation. In this study we evaluated four types of algorithms for genomic predictions of clonal performance for disease resistance.… Show more

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