2022
DOI: 10.1002/tpg2.20260
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Multi‐trait genomic prediction improves selection accuracy for enhancing seed mineral concentrations in pea

Abstract: Multi‐trait genomic selection (MT‐GS) has the potential to improve predictive ability by maximizing the use of information across related genotypes and genetically correlated traits. In this study, we extended the use of sparse phenotyping method into the MT‐GS framework by split testing of entries to maximize borrowing of information across genotypes and predict missing phenotypes for targeted traits without additional phenotyping expenditure. Using 300 advanced breeding lines from North Dakota State Universi… Show more

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Cited by 14 publications
(21 citation statements)
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References 57 publications
(98 reference statements)
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“…The breeding lines used in this experiment were carefully chosen and contain both contemporary and past elite germplasm. (Bari et al 2023;Atanda et al 2022).…”
Section: Plant Materialsmentioning
confidence: 99%

Effective Population Size in Field Pea

Johnson,
Piche,
Worral
et al. 2024
Preprint
Self Cite
“…The breeding lines used in this experiment were carefully chosen and contain both contemporary and past elite germplasm. (Bari et al 2023;Atanda et al 2022).…”
Section: Plant Materialsmentioning
confidence: 99%

Effective Population Size in Field Pea

Johnson,
Piche,
Worral
et al. 2024
Preprint
Self Cite
“…Univariate or single-trait (UNI) models have been widely employed in GS, focusing on predicting individual traits independently while assuming no correlation between traits (Atanda et al, 2022; Sandhu et al, 2022; Montesinos-López et al, 2022). Multi-trait GS (MT-GS) models integrate information from correlated traits and shared genetic information between lines to improve the accuracy.…”
Section: Introductionmentioning
confidence: 99%
“…Multi-trait GS (MT-GS) models integrate information from correlated traits and shared genetic information between lines to improve the accuracy. (Jia and Jannink, 2012; Gill et al 2021; Atanda et al, 2022; Montesinos-López et al, 2022;). As traits are genetically correlated, these MT-GS models have demonstrated their ability to enhance prediction accuracy, particularly for traits with inherently low heritability.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…The typical additional information is “omics data.” For example, transcriptome (Li et al ., 2019; Perez et al ., 2022) and metabolome (Riedelsheimer et al ., 2012; Campbell et al ., 2021) are often used together with the genome, and some studies have used both (Xu et al ., 2016; Schrag et al ., 2018). Furthermore, because data in biology are essentially multivariate (i.e., multiple traits can be measured for a genotype at multiple environments), it has been of interest to learn how to utilize multivariate information to improve prediction accuracy for target traits (e.g., Jia and Jannink, 2012; Jarquin et al ., 2016; Atanda et al ., 2022).…”
Section: Introductionmentioning
confidence: 99%