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Training Population Optimization for Genomic Selection in Miscanthus

Miscanthus is a perennial grass with potential for lignocellulosic ethanol production. To ensure its utility for this purpose, breeding efforts should focus on increasing genetic diversity of the nothospecies Miscanthus × giganteus (M×g) beyond the single clone used in many programs. Germplasm from...

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Autores principales: Olatoye, Marcus O., Clark, Lindsay V., Labonte, Nicholas R., Dong, Hongxu, Dwiyanti, Maria S., Anzoua, Kossonou G., Brummer, Joe E., Ghimire, Bimal K., Dzyubenko, Elena, Dzyubenko, Nikolay, Bagmet, Larisa, Sabitov, Andrey, Chebukin, Pavel, Głowacka, Katarzyna, Heo, Kweon, Jin, Xiaoli, Nagano, Hironori, Peng, Junhua, Yu, Chang Y., Yoo, Ji H., Zhao, Hua, Long, Stephen P., Yamada, Toshihiko, Sacks, Erik J., Lipka, Alexander E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Genetics Society of America 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7341128/
https://www.ncbi.nlm.nih.gov/pubmed/32457095
http://dx.doi.org/10.1534/g3.120.401402
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author Olatoye, Marcus O.
Clark, Lindsay V.
Labonte, Nicholas R.
Dong, Hongxu
Dwiyanti, Maria S.
Anzoua, Kossonou G.
Brummer, Joe E.
Ghimire, Bimal K.
Dzyubenko, Elena
Dzyubenko, Nikolay
Bagmet, Larisa
Sabitov, Andrey
Chebukin, Pavel
Głowacka, Katarzyna
Heo, Kweon
Jin, Xiaoli
Nagano, Hironori
Peng, Junhua
Yu, Chang Y.
Yoo, Ji H.
Zhao, Hua
Long, Stephen P.
Yamada, Toshihiko
Sacks, Erik J.
Lipka, Alexander E.
author_facet Olatoye, Marcus O.
Clark, Lindsay V.
Labonte, Nicholas R.
Dong, Hongxu
Dwiyanti, Maria S.
Anzoua, Kossonou G.
Brummer, Joe E.
Ghimire, Bimal K.
Dzyubenko, Elena
Dzyubenko, Nikolay
Bagmet, Larisa
Sabitov, Andrey
Chebukin, Pavel
Głowacka, Katarzyna
Heo, Kweon
Jin, Xiaoli
Nagano, Hironori
Peng, Junhua
Yu, Chang Y.
Yoo, Ji H.
Zhao, Hua
Long, Stephen P.
Yamada, Toshihiko
Sacks, Erik J.
Lipka, Alexander E.
author_sort Olatoye, Marcus O.
collection PubMed
description Miscanthus is a perennial grass with potential for lignocellulosic ethanol production. To ensure its utility for this purpose, breeding efforts should focus on increasing genetic diversity of the nothospecies Miscanthus × giganteus (M×g) beyond the single clone used in many programs. Germplasm from the corresponding parental species M. sinensis (Msi) and M. sacchariflorus (Msa) could theoretically be used as training sets for genomic prediction of M×g clones with optimal genomic estimated breeding values for biofuel traits. To this end, we first showed that subpopulation structure makes a substantial contribution to the genomic selection (GS) prediction accuracies within a 538-member diversity panel of predominately Msi individuals and a 598-member diversity panels of Msa individuals. We then assessed the ability of these two diversity panels to train GS models that predict breeding values in an interspecific diploid 216-member M×g F(2) panel. Low and negative prediction accuracies were observed when various subsets of the two diversity panels were used to train these GS models. To overcome the drawback of having only one interspecific M×g F(2) panel available, we also evaluated prediction accuracies for traits simulated in 50 simulated interspecific M×g F(2) panels derived from different sets of Msi and diploid Msa parents. The results revealed that genetic architectures with common causal mutations across Msi and Msa yielded the highest prediction accuracies. Ultimately, these results suggest that the ideal training set should contain the same causal mutations segregating within interspecific M×g populations, and thus efforts should be undertaken to ensure that individuals in the training and validation sets are as closely related as possible.
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spelling pubmed-73411282020-07-21 Training Population Optimization for Genomic Selection in Miscanthus Olatoye, Marcus O. Clark, Lindsay V. Labonte, Nicholas R. Dong, Hongxu Dwiyanti, Maria S. Anzoua, Kossonou G. Brummer, Joe E. Ghimire, Bimal K. Dzyubenko, Elena Dzyubenko, Nikolay Bagmet, Larisa Sabitov, Andrey Chebukin, Pavel Głowacka, Katarzyna Heo, Kweon Jin, Xiaoli Nagano, Hironori Peng, Junhua Yu, Chang Y. Yoo, Ji H. Zhao, Hua Long, Stephen P. Yamada, Toshihiko Sacks, Erik J. Lipka, Alexander E. G3 (Bethesda) Genomic Prediction Miscanthus is a perennial grass with potential for lignocellulosic ethanol production. To ensure its utility for this purpose, breeding efforts should focus on increasing genetic diversity of the nothospecies Miscanthus × giganteus (M×g) beyond the single clone used in many programs. Germplasm from the corresponding parental species M. sinensis (Msi) and M. sacchariflorus (Msa) could theoretically be used as training sets for genomic prediction of M×g clones with optimal genomic estimated breeding values for biofuel traits. To this end, we first showed that subpopulation structure makes a substantial contribution to the genomic selection (GS) prediction accuracies within a 538-member diversity panel of predominately Msi individuals and a 598-member diversity panels of Msa individuals. We then assessed the ability of these two diversity panels to train GS models that predict breeding values in an interspecific diploid 216-member M×g F(2) panel. Low and negative prediction accuracies were observed when various subsets of the two diversity panels were used to train these GS models. To overcome the drawback of having only one interspecific M×g F(2) panel available, we also evaluated prediction accuracies for traits simulated in 50 simulated interspecific M×g F(2) panels derived from different sets of Msi and diploid Msa parents. The results revealed that genetic architectures with common causal mutations across Msi and Msa yielded the highest prediction accuracies. Ultimately, these results suggest that the ideal training set should contain the same causal mutations segregating within interspecific M×g populations, and thus efforts should be undertaken to ensure that individuals in the training and validation sets are as closely related as possible. Genetics Society of America 2020-05-26 /pmc/articles/PMC7341128/ /pubmed/32457095 http://dx.doi.org/10.1534/g3.120.401402 Text en Copyright © 2020 Olatoye et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Genomic Prediction
Olatoye, Marcus O.
Clark, Lindsay V.
Labonte, Nicholas R.
Dong, Hongxu
Dwiyanti, Maria S.
Anzoua, Kossonou G.
Brummer, Joe E.
Ghimire, Bimal K.
Dzyubenko, Elena
Dzyubenko, Nikolay
Bagmet, Larisa
Sabitov, Andrey
Chebukin, Pavel
Głowacka, Katarzyna
Heo, Kweon
Jin, Xiaoli
Nagano, Hironori
Peng, Junhua
Yu, Chang Y.
Yoo, Ji H.
Zhao, Hua
Long, Stephen P.
Yamada, Toshihiko
Sacks, Erik J.
Lipka, Alexander E.
Training Population Optimization for Genomic Selection in Miscanthus
title Training Population Optimization for Genomic Selection in Miscanthus
title_full Training Population Optimization for Genomic Selection in Miscanthus
title_fullStr Training Population Optimization for Genomic Selection in Miscanthus
title_full_unstemmed Training Population Optimization for Genomic Selection in Miscanthus
title_short Training Population Optimization for Genomic Selection in Miscanthus
title_sort training population optimization for genomic selection in miscanthus
topic Genomic Prediction
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7341128/
https://www.ncbi.nlm.nih.gov/pubmed/32457095
http://dx.doi.org/10.1534/g3.120.401402
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