Genomic prediction of seed nutritional traits in biparental families of oat (Avena sativa)

Author:

Brzozowski Lauren J.12ORCID,Campbell Malachy T.1,Hu Haixiao1ORCID,Yao Linxing3,Caffe Melanie4,Gutiérrez Lucı́a5ORCID,Smith Kevin P.6ORCID,Sorrells Mark E.1,Gore Michael A.1ORCID,Jannink Jean‐Luc12ORCID

Affiliation:

1. Plant Breeding and Genetics Section School of Integrative Plant Science, Cornell University Ithaca New York USA

2. USDA‐ARS Robert W. Holley Center for Agriculture and Health Ithaca New York USA

3. Analytical Resources Core‐Bioanalysis and Omics Colorado State University Fort Collins Colorado USA

4. Department of Agronomy, Horticulture & Plant Science South Dakota State University Brookings South Dakota USA

5. Department of Agronomy University of Wisconsin‐Madison Madison Wisconsin USA

6. Department of Agronomy & Plant Genetics University of Minnesota Saint Paul Minnesota USA

Abstract

AbstractSelection for more nutritious crop plants is an important goal of plant breeding to improve food quality and contribute to human health outcomes. While there are efforts to integrate genomic prediction to accelerate breeding progress, an ongoing challenge is identifying strategies to improve accuracy when predicting within biparental populations in breeding programs. We tested multiple genomic prediction methods for 12 seed fatty acid content traits in oat (Avena sativa L.), as unsaturated fatty acids are a key nutritional trait in oat. Using two well‐characterized oat germplasm panels and other biparental families as training populations, we predicted family mean and individual values within families. Genomic prediction of family mean exceeded a mean accuracy of 0.40 and 0.80 using an unrelated and related germplasm panel, respectively, where the related germplasm panel outperformed prediction based on phenotypic means (0.54). Within family prediction accuracy was more variable: training on the related germplasm had higher accuracy than the unrelated panel (0.14–0.16 and 0.05–0.07, respectively), but variability between families was not easily predicted by parent relatedness, segregation of a locus detected by a genome‐wide association study in the panel, or other characteristics. When using other families as training populations, prediction accuracies were comparable to the related germplasm panel (0.11–0.23), and families that had half‐sib families in the training set had higher prediction accuracy than those that did not. Overall, this work provides an example of genomic prediction of family means and within biparental families for an important nutritional trait and suggests that using related germplasm panels as training populations can be effective.

Funder

National Institute of Food and Agriculture

Agricultural Research Service

Publisher

Wiley

Subject

Plant Science,Agronomy and Crop Science,Genetics

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