2020
DOI: 10.3390/agronomy10010060
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Genomic Selection at Preliminary Yield Trial Stage: Training Population Design to Predict Untested Lines

Abstract: Genomic selection (GS) is being applied routinely in wheat breeding programs. For the evaluation of preliminary lines, this tool is becoming important because preliminary lines are generally evaluated in few environments with no replications due to the minimal amount of seed available to the breeder. A total of 816 breeding lines belonging to advanced or preliminary yield trials were included in the study. We designed different training populations (TP) to predict lines in preliminary yield trials (PYT) consis… Show more

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Cited by 15 publications
(16 citation statements)
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References 38 publications
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“…In Figure 2, we analyzed the impact of these prediction accuracies when selecting lines based on DON BLUEs, and we observed an increase in proportion of lines correctly selected (up to 70%) when reducing the selection intensity, and with an advantage of 4-8% when selecting lines based on DSK index compare to DON index. These results confirm the usefulness of multiple trait indices as a source of information to distinguish the best genotypes for a trait, and also shows again that a prediction accuracy of 0.49 for example should be considered in terms of the percentage of lines "correctly" selected by the GS model, as discussed by Bassi et al (2015) and Verges and Van Sanford (2020). In our study again with a prediction accuracy of 0.49, a 50 to 70% of the lines are correctly selected at 30-40% SI.…”
Section: Discussionsupporting
confidence: 74%
“…In Figure 2, we analyzed the impact of these prediction accuracies when selecting lines based on DON BLUEs, and we observed an increase in proportion of lines correctly selected (up to 70%) when reducing the selection intensity, and with an advantage of 4-8% when selecting lines based on DSK index compare to DON index. These results confirm the usefulness of multiple trait indices as a source of information to distinguish the best genotypes for a trait, and also shows again that a prediction accuracy of 0.49 for example should be considered in terms of the percentage of lines "correctly" selected by the GS model, as discussed by Bassi et al (2015) and Verges and Van Sanford (2020). In our study again with a prediction accuracy of 0.49, a 50 to 70% of the lines are correctly selected at 30-40% SI.…”
Section: Discussionsupporting
confidence: 74%
“…(2020), who reported, at a selection intensity of 20%, that 44% of lines selected based on DON GEBVs were in common with those selected based on actual DON values. However, both results are in sharp contrast to the findings of Verges and Van Sanford (2020), who observed up to 75% of lines selected for agronomic traits using GS in common with those selected using phenotypic selection.…”
Section: Resultscontrasting
confidence: 99%
“…Genomic selection can also be implemented in the PD pipeline for across and within breeding cycles for selection and advancement (Figure 3) [9,15,24,25]. Early generation GS is superior to conventional PS in line breeding and can be strongly improved by including additional information from later generation PYTs and AYTs [9,25]. For instance, phenotypic data from the PYT or AYT can be used to predict advancements across breeding cycles as early as F2, DH, and inbred lines [26,27].…”
Section: Implementation Of Gs For Within and Across Breeding Cyclesmentioning
confidence: 99%
“…The implementation of GS for selection in PYTs has been extensively studied [15,21,24,25]. The PYT has been intuitively chosen because they are the first time that lines are yield tested and generally constitute the largest filtering stage before subjecting lines to resource-demanding replicated multi-location yield trials.…”
Section: Implementation Of Gs For Within and Across Breeding Cyclesmentioning
confidence: 99%
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