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izvor podataka: crosbi

Optimizing accuracy of performance predictions using available morpho‐physiological information in wheat breeding germplasm (CROSBI ID 288554)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Guberac, Sunčica ; Galić, Vlatko ; Rebekić, Andrijana ; Čupić, Tihomir ; Petrović, Sonja Optimizing accuracy of performance predictions using available morpho‐physiological information in wheat breeding germplasm // Annals of applied biology, 178 (2021), 1-10. doi: 10.1111/aab.12672

Podaci o odgovornosti

Guberac, Sunčica ; Galić, Vlatko ; Rebekić, Andrijana ; Čupić, Tihomir ; Petrović, Sonja

engleski

Optimizing accuracy of performance predictions using available morpho‐physiological information in wheat breeding germplasm

Wheat breeding programmes often harbour large number of developed progenies. Testing of all progenies in many target environments is not considered cost‐effective, so the genomic predictions are employed. Genomic predictions might be enhanced with adaptational traits given the cost‐effectiveness of their phenotyping. The aim of this study was to assess effectiveness of adding a priori available phenotyping data of adaptational morpho-physiological traits to genomic predictions in Bayesian framework. The panel of 120 winter wheat genotypes was sown in over four growing seasons (2013/2014–2016/2017) in field conditions in two replicates and phenotyped for target traits grain yield and plant height along with nine distinctness, uniformity and stability (DUS) traits. Five genotype groups were defined by the K‐means clustering method based on nine DUS traits. DUS traits were used as fixed covariates in five different genomic prediction models with different assumptions about the distribution densities of marker effects: Bayes A, Bayes B, Bayes C, Bayesian ridge regression and Bayesian lasso. Adding DUS traits as covariates significantly improved accuracies and reduced the root mean square errors (RMSEP) of genomic predictions. Marginal differences between different models were observed. Adding covariates to genomic prediction models might be good strategy to improve efficiencies accuracies of the predictions by accounting for environmental adaptations, provided their a priori availability or low costs of additional phenotyping.

wheat breeding ; genomic predictions ; adaptation ; stress

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Podaci o izdanju

178

2021.

1-10

objavljeno

0003-4746

1744-7348

10.1111/aab.12672

Povezanost rada

Biologija, Poljoprivreda (agronomija)

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