Multi‐trait multi‐environment genomic prediction of preliminary yield trial in pulse crop

Author:

Saludares Rica Amor1ORCID,Atanda Sikiru Adeniyi1ORCID,Piche Lisa1,Worral Hannah2ORCID,Dariva Francoise1,McPhee Kevin3,Bandillo Nonoy1ORCID

Affiliation:

1. Department of Plant Sciences North Dakota State University Fargo North Dakota USA

2. North Central Research Extension Center Minot North Dakota USA

3. Department of Plant Science and Plant Pathology Montana State University Bozeman Montana USA

Abstract

AbstractPhenotypic selection of complex traits such as seed yield and protein in the preliminary yield trial (PYT) is often constrained by limited seed availability, resulting in trials with few environments and minimal to no replications. Multi‐trait multi‐environment enabled genomic prediction (MTME‐GP) offers a valuable alternative to predict missing phenotypes of selection candidates for multiple traits and diverse environments. In this study, we assessed the efficiency of MTME‐GP for improving seed protein and seed yield in field pea, the top two breeding targets but highly antagonistic traits in pulse crop. We utilized a set of 300 selection candidates in the PYT that virtually represented all possible families of the North Dakota State University field pea breeding program. Selection candidates were evaluated in three diverse, contrasting environments, as indicated by a range of heritability. Using whole‐ and split‐environment cross validation schemes, MTME‐GP had higher predictive ability than a standard additive G‐BLUP model. Integrating a range of overlapping genotypes in between environments showed improvement on the predictive ability of the MTME‐GP model but tends to plateau at 50%–80% training set size. Regardless of the cross‐validation scheme, accuracy was among the lowest in stressed environments, presumably due to low heritability for seed protein and yield. This study provided insights into the potential of MTME‐GP in a public pulse crop breeding program. The MTME‐GP framework can be further improved with more testing environments and integration of additional orthogonal information in the early stages of the breeding pipeline.

Funder

National Institute of Food and Agriculture

Publisher

Wiley

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