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Leveraging genomic prediction to scan germplasm collection for crop improvement

The objective of this study was to explore the potential of genomic prediction (GP) for soybean resistance against Sclerotinia sclerotiorum (Lib.) de Bary, the causal agent of white mold (WM). A diverse panel of 465 soybean plant introduction accessions was phenotyped for WM resistance in replicated...

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Autores principales: de Azevedo Peixoto, Leonardo, Moellers, Tara C., Zhang, Jiaoping, Lorenz, Aaron J., Bhering, Leonardo L., Beavis, William D., Singh, Asheesh K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5466325/
https://www.ncbi.nlm.nih.gov/pubmed/28598989
http://dx.doi.org/10.1371/journal.pone.0179191
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author de Azevedo Peixoto, Leonardo
Moellers, Tara C.
Zhang, Jiaoping
Lorenz, Aaron J.
Bhering, Leonardo L.
Beavis, William D.
Singh, Asheesh K.
author_facet de Azevedo Peixoto, Leonardo
Moellers, Tara C.
Zhang, Jiaoping
Lorenz, Aaron J.
Bhering, Leonardo L.
Beavis, William D.
Singh, Asheesh K.
author_sort de Azevedo Peixoto, Leonardo
collection PubMed
description The objective of this study was to explore the potential of genomic prediction (GP) for soybean resistance against Sclerotinia sclerotiorum (Lib.) de Bary, the causal agent of white mold (WM). A diverse panel of 465 soybean plant introduction accessions was phenotyped for WM resistance in replicated field and greenhouse tests. All plant accessions were previously genotyped using the SoySNP50K BeadChip. The predictive ability of six GP models were compared, and the impact of marker density and training population size on the predictive ability was investigated. Cross-prediction among environments was tested to determine the effectiveness of the prediction models. GP models had similar prediction accuracies for all experiments. Predictive ability did not improve significantly by using more than 5k SNPs, or by increasing the training population size (from 50% to 90% of the total of individuals). The GP model effectively predicted WM resistance across field and greenhouse experiments when each was used as either the training or validation population. The GP model was able to identify WM-resistant accessions in the USDA soybean germplasm collection that had previously been reported and were not included in the study panel. This study demonstrated the applicability of GP to identify useful genetic sources of WM resistance for soybean breeding. Further research will confirm the applicability of the proposed approach to other complex disease resistance traits and in other crops.
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spelling pubmed-54663252017-06-22 Leveraging genomic prediction to scan germplasm collection for crop improvement de Azevedo Peixoto, Leonardo Moellers, Tara C. Zhang, Jiaoping Lorenz, Aaron J. Bhering, Leonardo L. Beavis, William D. Singh, Asheesh K. PLoS One Research Article The objective of this study was to explore the potential of genomic prediction (GP) for soybean resistance against Sclerotinia sclerotiorum (Lib.) de Bary, the causal agent of white mold (WM). A diverse panel of 465 soybean plant introduction accessions was phenotyped for WM resistance in replicated field and greenhouse tests. All plant accessions were previously genotyped using the SoySNP50K BeadChip. The predictive ability of six GP models were compared, and the impact of marker density and training population size on the predictive ability was investigated. Cross-prediction among environments was tested to determine the effectiveness of the prediction models. GP models had similar prediction accuracies for all experiments. Predictive ability did not improve significantly by using more than 5k SNPs, or by increasing the training population size (from 50% to 90% of the total of individuals). The GP model effectively predicted WM resistance across field and greenhouse experiments when each was used as either the training or validation population. The GP model was able to identify WM-resistant accessions in the USDA soybean germplasm collection that had previously been reported and were not included in the study panel. This study demonstrated the applicability of GP to identify useful genetic sources of WM resistance for soybean breeding. Further research will confirm the applicability of the proposed approach to other complex disease resistance traits and in other crops. Public Library of Science 2017-06-09 /pmc/articles/PMC5466325/ /pubmed/28598989 http://dx.doi.org/10.1371/journal.pone.0179191 Text en © 2017 de Azevedo Peixoto et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
de Azevedo Peixoto, Leonardo
Moellers, Tara C.
Zhang, Jiaoping
Lorenz, Aaron J.
Bhering, Leonardo L.
Beavis, William D.
Singh, Asheesh K.
Leveraging genomic prediction to scan germplasm collection for crop improvement
title Leveraging genomic prediction to scan germplasm collection for crop improvement
title_full Leveraging genomic prediction to scan germplasm collection for crop improvement
title_fullStr Leveraging genomic prediction to scan germplasm collection for crop improvement
title_full_unstemmed Leveraging genomic prediction to scan germplasm collection for crop improvement
title_short Leveraging genomic prediction to scan germplasm collection for crop improvement
title_sort leveraging genomic prediction to scan germplasm collection for crop improvement
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5466325/
https://www.ncbi.nlm.nih.gov/pubmed/28598989
http://dx.doi.org/10.1371/journal.pone.0179191
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