Frontiers in Genetics (Mar 2023)

Genomic prediction and selection response for grain yield in safflower

  • Huanhuan Zhao,
  • Huanhuan Zhao,
  • Zibei Lin,
  • Majid Khansefid,
  • Majid Khansefid,
  • Josquin F. Tibbits,
  • Matthew J. Hayden,
  • Matthew J. Hayden

DOI
https://doi.org/10.3389/fgene.2023.1129433
Journal volume & issue
Vol. 14

Abstract

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In plant breeding programs, multiple traits are recorded in each trial, and the traits are often correlated. Correlated traits can be incorporated into genomic selection models, especially for traits with low heritability, to improve prediction accuracy. In this study, we investigated the genetic correlation between important agronomic traits in safflower. We observed the moderate genetic correlations between grain yield (GY) and plant height (PH, 0.272–0.531), and low correlations between grain yield and days to flowering (DF, −0.157–0.201). A 4%–20% prediction accuracy improvement for grain yield was achieved when plant height was included in both training and validation sets with multivariate models. We further explored the selection responses for grain yield by selecting the top 20% of lines based on different selection indices. Selection responses for grain yield varied across sites. Simultaneous selection for grain yield and seed oil content (OL) showed positive gains across all sites with equal weights for both grain yield and oil content. Combining g×E interaction into genomic selection (GS) led to more balanced selection responses across sites. In conclusion, genomic selection is a valuable breeding tool for breeding high grain yield, oil content, and highly adaptable safflower varieties.

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