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The Value of Expanding the Training Population to Improve Genomic Selection Models in Tetraploid Potato

Genomic selection (GS) is becoming increasingly applicable to crops as the genotyping costs continue to decrease, which makes it an attractive alternative to traditional selective breeding based on observed phenotypes. With genome-wide molecular markers, selection based on predictions from genotypes...

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Autores principales: Sverrisdóttir, Elsa, Sundmark, Ea Høegh Riis, Johnsen, Heidi Øllegaard, Kirk, Hanne Grethe, Asp, Torben, Janss, Luc, Bryan, Glenn, Nielsen, Kåre Lehmann
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6090097/
https://www.ncbi.nlm.nih.gov/pubmed/30131817
http://dx.doi.org/10.3389/fpls.2018.01118
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author Sverrisdóttir, Elsa
Sundmark, Ea Høegh Riis
Johnsen, Heidi Øllegaard
Kirk, Hanne Grethe
Asp, Torben
Janss, Luc
Bryan, Glenn
Nielsen, Kåre Lehmann
author_facet Sverrisdóttir, Elsa
Sundmark, Ea Høegh Riis
Johnsen, Heidi Øllegaard
Kirk, Hanne Grethe
Asp, Torben
Janss, Luc
Bryan, Glenn
Nielsen, Kåre Lehmann
author_sort Sverrisdóttir, Elsa
collection PubMed
description Genomic selection (GS) is becoming increasingly applicable to crops as the genotyping costs continue to decrease, which makes it an attractive alternative to traditional selective breeding based on observed phenotypes. With genome-wide molecular markers, selection based on predictions from genotypes can be made in the absence of direct phenotyping. The reliability of predictions depends strongly on the number of individuals used for training the predictive algorithms, particularly in a highly genetically diverse organism such as potatoes; however, the relationship between the individuals also has an enormous impact on prediction accuracy. Here we have studied genomic prediction in three different panels of potato cultivars, varying in size, design, and phenotypic profile. We have developed genomic prediction models for two important agronomic traits of potato, dry matter content and chipping quality. We used genotyping-by-sequencing to genotype 1,146 individuals and generated genomic prediction models from 167,637 markers to calculate genomic estimated breeding values with genomic best linear unbiased prediction. Cross-validated prediction correlations of 0.75–0.83 and 0.39–0.79 were obtained for dry matter content and chipping quality, respectively, when combining the three populations. These prediction accuracies were similar to those obtained when predicting performance within each panel. In contrast, but not unexpectedly, predictions across populations were generally lower, 0.37–0.71 and 0.28–0.48 for dry matter content and chipping quality, respectively. These predictions are not limited by the number of markers included, since similar prediction accuracies could be obtained when using merely 7,800 markers (<5%). Our results suggest that predictions across breeding populations in tetraploid potato are presently unreliable, but that individual prediction models within populations can be combined in an additive fashion to obtain high quality prediction models relevant for several breeding populations.
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spelling pubmed-60900972018-08-21 The Value of Expanding the Training Population to Improve Genomic Selection Models in Tetraploid Potato Sverrisdóttir, Elsa Sundmark, Ea Høegh Riis Johnsen, Heidi Øllegaard Kirk, Hanne Grethe Asp, Torben Janss, Luc Bryan, Glenn Nielsen, Kåre Lehmann Front Plant Sci Plant Science Genomic selection (GS) is becoming increasingly applicable to crops as the genotyping costs continue to decrease, which makes it an attractive alternative to traditional selective breeding based on observed phenotypes. With genome-wide molecular markers, selection based on predictions from genotypes can be made in the absence of direct phenotyping. The reliability of predictions depends strongly on the number of individuals used for training the predictive algorithms, particularly in a highly genetically diverse organism such as potatoes; however, the relationship between the individuals also has an enormous impact on prediction accuracy. Here we have studied genomic prediction in three different panels of potato cultivars, varying in size, design, and phenotypic profile. We have developed genomic prediction models for two important agronomic traits of potato, dry matter content and chipping quality. We used genotyping-by-sequencing to genotype 1,146 individuals and generated genomic prediction models from 167,637 markers to calculate genomic estimated breeding values with genomic best linear unbiased prediction. Cross-validated prediction correlations of 0.75–0.83 and 0.39–0.79 were obtained for dry matter content and chipping quality, respectively, when combining the three populations. These prediction accuracies were similar to those obtained when predicting performance within each panel. In contrast, but not unexpectedly, predictions across populations were generally lower, 0.37–0.71 and 0.28–0.48 for dry matter content and chipping quality, respectively. These predictions are not limited by the number of markers included, since similar prediction accuracies could be obtained when using merely 7,800 markers (<5%). Our results suggest that predictions across breeding populations in tetraploid potato are presently unreliable, but that individual prediction models within populations can be combined in an additive fashion to obtain high quality prediction models relevant for several breeding populations. Frontiers Media S.A. 2018-08-06 /pmc/articles/PMC6090097/ /pubmed/30131817 http://dx.doi.org/10.3389/fpls.2018.01118 Text en Copyright © 2018 Sverrisdóttir, Sundmark, Johnsen, Kirk, Asp, Janss, Bryan and Nielsen. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Plant Science
Sverrisdóttir, Elsa
Sundmark, Ea Høegh Riis
Johnsen, Heidi Øllegaard
Kirk, Hanne Grethe
Asp, Torben
Janss, Luc
Bryan, Glenn
Nielsen, Kåre Lehmann
The Value of Expanding the Training Population to Improve Genomic Selection Models in Tetraploid Potato
title The Value of Expanding the Training Population to Improve Genomic Selection Models in Tetraploid Potato
title_full The Value of Expanding the Training Population to Improve Genomic Selection Models in Tetraploid Potato
title_fullStr The Value of Expanding the Training Population to Improve Genomic Selection Models in Tetraploid Potato
title_full_unstemmed The Value of Expanding the Training Population to Improve Genomic Selection Models in Tetraploid Potato
title_short The Value of Expanding the Training Population to Improve Genomic Selection Models in Tetraploid Potato
title_sort value of expanding the training population to improve genomic selection models in tetraploid potato
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6090097/
https://www.ncbi.nlm.nih.gov/pubmed/30131817
http://dx.doi.org/10.3389/fpls.2018.01118
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