Author:
Piaskowski J.,Hardner Craig,Cai Lichun,Zhao Yunyang,Iezzoni Amy,Peace Cameron
Abstract
ABSTRACTBackgroundSweet cherry is consumed widely across the world and provides substantial economic benefits in regions where it is grown. While cherry breeding has been conducted in the Pacific Northwest for over half a century, little is known about the genetic architecture of important traits. We used a genome-enabled mixed model to predict the genetic performance of 505 individuals for 32 phenological, disease response and fruit quality traits evaluated in the RosBREED sweet cherry crop data set. Genome-wide predictions were estimated using a repeated measures model for phenotypic data across 3 years, incorporating additive, dominance and epistatic variance components. Genomic relationship matrices were constructed with high-density SNP data and were used to estimate relatedness and account for incomplete replication across years.ResultsHigh broad-sense heritabilities of 0.83, 0.77, and 0.75 were observed for days to maturity, firmness, and fruit weight, respectively. Epistatic variance exceeded 40% of the total genetic variance for maturing timing, firmness and powdery mildew response. Dominance variance was the largest for fruit weight and fruit size at 34% and 27%, respectively. Omission of non-additive sources of genetic variance from the genetic mode resulted in inflation of narrow-sense heritability but minimally influenced prediction accuracy of genetic values in validation. Predicted genetic rankings of individuals from single-year models were inconsistent across years, likely due to incomplete sampling of the population genetic variance.ConclusionsPredicted breeding values and genetic values a measure revealed many high-performing individuals for use as parents and the most promising selections to advance for cultivar release consideration, respectively. This study highlights the importance of using the appropriate genetic model for calculating breeding values to avoid inflation of expected parental contribution to genetic gain. The genomic predictions obtained will enable breeders to efficiently leverage the genetic potential of North American sweet cherry germplasm by identifying high quality individuals more rapidly than with phenotypic data alone.
Publisher
Cold Spring Harbor Laboratory
Reference108 articles.
1. FAOSTAT Data [Internet]. FAOSTAT. [cited 2017 Sep 10]. Available from: http://www.fao.org/faostat/en/#data
2. National Statistics for Cherry [Internet]. NASS. [cited 2017 Sep 10]. Available from: https://quickstats.nass.usda.gov/results/A8988197-374E-3950-BA97-9CBECA511544?pivot=short_desc
3. Sweet Cherry Production Up 36 Percent [Internet]. NASS. [cited 2017 Sep 10]. Available from: https://www.nass.usda.gov/Statistics_by_State/Washington/Publications/Fruit/2017/CH06.pdf
4. An evaluation of U.S. tart and sweet cherry producers trait prioritization: evidence from audience surveys;HortScience.,2014
5. What attributes are consumers looking for in sweet cherries? Evidence from choice experiments;Agric. Resour. Econ. Rev.,2016