4.4 Article

Translating insights from the seed metabolome into improved prediction for lipid-composition traits in oat (Avena sativa L.)

Journal

GENETICS
Volume 217, Issue 3, Pages -

Publisher

OXFORD UNIV PRESS INC
DOI: 10.1093/genetics/iyaa043

Keywords

genomic prediction; factor analysis; GWAS; metabolomics; GenPred; shared data resource

Funding

  1. United States Department of Agriculture -National Institute of Food and Agriculture -Agriculture and Food Research Initiative (USDA-NIFA-AFRI) [2017-67007-26502]

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This study characterized natural variation in the oat seed metabolome and identified latent factors associated with lipid metabolism. Through whole-genome regression and association mapping, the study revealed a complex genetic architecture for factors generating covariance for many metabolites. The associations were used to improve predictions for seed quality traits and provide genomic resources for breeders to enhance selection for health-promoting traits.
Oat (Avena sativa L.) seed is a rich resource of beneficial lipids, soluble fiber, protein, and antioxidants, and is considered a healthful food for humans. Little is known regarding the genetic controllers of variation for these compounds in oat seed. We characterized natural variation in the mature seed metabolome using untargeted metabolomics on 367 diverse lines and leveraged this information to improve prediction for seed quality traits. We used a latent factor approach to define unobserved variables that may drive covariance among metabolites. One hundred latent factors were identified, of which 21% were enriched for compounds associated with lipid metabolism. Through a combination of whole-genome regression and association mapping, we show that latent factors that generate covariance for many metabolites tend to have a complex genetic architecture. Nonetheless, we recovered significant associations for 23% of the latent factors. These associations were used to inform a multi-kernel genomic prediction model, which was used to predict seed lipid and protein traits in two independent studies. Predictions for 8 of the 12 traits were significantly improved compared to genomic best linear unbiased prediction when this prediction model was informed using associations from lipid-enriched factors. This study provides new insights into variation in the oat seed metabolome and provides genomic resources for breeders to improve selection for health-promoting seed quality traits. More broadly, we outline an approach to distill high-dimensional omics data to a set of biologically meaningful variables and translate inferences on these data into improved breeding decisions.

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