Accelerating the domestication of trees using genomic selection: accuracy of prediction models across ages and environments
2. Zero hunger
0303 health sciences
Time Factors
Models, Genetic
Inheritance Patterns
Reproducibility of Results
Agriculture
Genomics
Environment
Pinus
Trees
03 medical and health sciences
Phenotype
Quantitative Trait, Heritable
Linear Models
Selection, Genetic
DOI:
10.1111/j.1469-8137.2011.03895.x
Publication Date:
2011-10-05T17:05:32Z
AUTHORS (8)
ABSTRACT
• Genomic selection is increasingly considered vital to accelerate genetic improvement. However, it is unknown how accurate genomic selection prediction models remain when used across environments and ages. This knowledge is critical for breeders to apply this strategy in genetic improvement. • Here, we evaluated the utility of genomic selection in a Pinus taeda population of c. 800 individuals clonally replicated and grown on four sites, and genotyped for 4825 single-nucleotide polymorphism (SNP) markers. Prediction models were estimated for diameter and height at multiple ages using genomic random regression best linear unbiased predictor (BLUP). • Accuracies of prediction models ranged from 0.65 to 0.75 for diameter, and 0.63 to 0.74 for height. The selection efficiency per unit time was estimated as 53-112% higher using genomic selection compared with phenotypic selection, assuming a reduction of 50% in the breeding cycle. Accuracies remained high across environments as long as they were used within the same breeding zone. However, models generated at early ages did not perform well to predict phenotypes at age 6 yr. • These results demonstrate the feasibility and remarkable gain that can be achieved by incorporating genomic selection in breeding programs, as long as models are used at the relevant selection age and within the breeding zone in which they were estimated.
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