Deep learning methods improve genomic prediction of wheat breeding

In the field of plant breeding, various machine learning models have been developed and studied to evaluate the genomic prediction (GP) accuracy of unseen phenotypes. Deep learning has shown promise. However, most studies on deep learning in plant breeding have been limited to small datasets, and on...

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Autores principales: Montesinos-Lopez, Abelardo, Crespo Herrera, Leonardo A., Dreisigacker, Susanna, Gerard, Guillermo S., Vitale, Paolo, Saint Pierre, Carolina, Velu, Govindan, Tarekegn, Zerihun Tadesse, Chavira-Flores, Moisés, Pérez-Rodríguez, Paulino, Ramos-Pulido, Sofía, Lillemo, Morten, Huihui Li, Montesinos-Lopez, Osval ., Crossa, José
Formato: Journal Article
Lenguaje:Inglés
Publicado: Frontiers Media 2024
Materias:
Acceso en línea:https://hdl.handle.net/10568/159859
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author Montesinos-Lopez, Abelardo
Crespo Herrera, Leonardo A.
Dreisigacker, Susanna
Gerard, Guillermo S.
Vitale, Paolo
Saint Pierre, Carolina
Velu, Govindan
Tarekegn, Zerihun Tadesse
Chavira-Flores, Moisés
Pérez-Rodríguez, Paulino
Ramos-Pulido, Sofía
Lillemo, Morten
Huihui Li
Montesinos-Lopez, Osval .
Crossa, José
author_browse Chavira-Flores, Moisés
Crespo Herrera, Leonardo A.
Crossa, José
Dreisigacker, Susanna
Gerard, Guillermo S.
Huihui Li
Lillemo, Morten
Montesinos-Lopez, Abelardo
Montesinos-Lopez, Osval .
Pérez-Rodríguez, Paulino
Ramos-Pulido, Sofía
Saint Pierre, Carolina
Tarekegn, Zerihun Tadesse
Velu, Govindan
Vitale, Paolo
author_facet Montesinos-Lopez, Abelardo
Crespo Herrera, Leonardo A.
Dreisigacker, Susanna
Gerard, Guillermo S.
Vitale, Paolo
Saint Pierre, Carolina
Velu, Govindan
Tarekegn, Zerihun Tadesse
Chavira-Flores, Moisés
Pérez-Rodríguez, Paulino
Ramos-Pulido, Sofía
Lillemo, Morten
Huihui Li
Montesinos-Lopez, Osval .
Crossa, José
author_sort Montesinos-Lopez, Abelardo
collection Repository of Agricultural Research Outputs (CGSpace)
description In the field of plant breeding, various machine learning models have been developed and studied to evaluate the genomic prediction (GP) accuracy of unseen phenotypes. Deep learning has shown promise. However, most studies on deep learning in plant breeding have been limited to small datasets, and only a few have explored its application in moderate-sized datasets. In this study, we aimed to address this limitation by utilizing a moderately large dataset. We examined the performance of a deep learning (DL) model and compared it with the widely used and powerful best linear unbiased prediction (GBLUP) model. The goal was to assess the GP accuracy in the context of a five-fold cross-validation strategy and when predicting complete environments using the DL model. The results revealed the DL model outperformed the GBLUP model in terms of GP accuracy for two out of the five included traits in the five-fold cross-validation strategy, with similar results in the other traits. This indicates the superiority of the DL model in predicting these specific traits. Furthermore, when predicting complete environments using the leave-one-environment-out (LOEO) approach, the DL model demonstrated competitive performance. It is worth noting that the DL model employed in this study extends a previously proposed multi-modal DL model, which had been primarily applied to image data but with small datasets. By utilizing a moderately large dataset, we were able to evaluate the performance and potential of the DL model in a context with more information and challenging scenario in plant breeding.
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spelling CGSpace1598592025-12-08T10:29:22Z Deep learning methods improve genomic prediction of wheat breeding Montesinos-Lopez, Abelardo Crespo Herrera, Leonardo A. Dreisigacker, Susanna Gerard, Guillermo S. Vitale, Paolo Saint Pierre, Carolina Velu, Govindan Tarekegn, Zerihun Tadesse Chavira-Flores, Moisés Pérez-Rodríguez, Paulino Ramos-Pulido, Sofía Lillemo, Morten Huihui Li Montesinos-Lopez, Osval . Crossa, José genomics forecasting machine learning learning wheat plant breeding In the field of plant breeding, various machine learning models have been developed and studied to evaluate the genomic prediction (GP) accuracy of unseen phenotypes. Deep learning has shown promise. However, most studies on deep learning in plant breeding have been limited to small datasets, and only a few have explored its application in moderate-sized datasets. In this study, we aimed to address this limitation by utilizing a moderately large dataset. We examined the performance of a deep learning (DL) model and compared it with the widely used and powerful best linear unbiased prediction (GBLUP) model. The goal was to assess the GP accuracy in the context of a five-fold cross-validation strategy and when predicting complete environments using the DL model. The results revealed the DL model outperformed the GBLUP model in terms of GP accuracy for two out of the five included traits in the five-fold cross-validation strategy, with similar results in the other traits. This indicates the superiority of the DL model in predicting these specific traits. Furthermore, when predicting complete environments using the leave-one-environment-out (LOEO) approach, the DL model demonstrated competitive performance. It is worth noting that the DL model employed in this study extends a previously proposed multi-modal DL model, which had been primarily applied to image data but with small datasets. By utilizing a moderately large dataset, we were able to evaluate the performance and potential of the DL model in a context with more information and challenging scenario in plant breeding. 2024-03 2024-11-15T19:42:08Z 2024-11-15T19:42:08Z Journal Article https://hdl.handle.net/10568/159859 en Open Access application/pdf Frontiers Media Montesinos-López, A., Crespo-Herrera, L. A., Dreisigacker, S., Gerard, G. S., Vitale, P., Saint Pierre, C., Velu, G., Tarekegn, Z. T., Chavira-Flores, M., Pérez-Rodríguez, P., Ramos-Pulido, S., Lillemo, M., Li, H., Montesinos-López, O. A., & Crossa, J. (2024). Deep learning methods improve genomic prediction of wheat breeding. Frontiers In Plant Science, 15, 1324090. https://doi.org/10.3389/fpls.2024.1324090
spellingShingle genomics
forecasting
machine learning
learning
wheat
plant breeding
Montesinos-Lopez, Abelardo
Crespo Herrera, Leonardo A.
Dreisigacker, Susanna
Gerard, Guillermo S.
Vitale, Paolo
Saint Pierre, Carolina
Velu, Govindan
Tarekegn, Zerihun Tadesse
Chavira-Flores, Moisés
Pérez-Rodríguez, Paulino
Ramos-Pulido, Sofía
Lillemo, Morten
Huihui Li
Montesinos-Lopez, Osval .
Crossa, José
Deep learning methods improve genomic prediction of wheat breeding
title Deep learning methods improve genomic prediction of wheat breeding
title_full Deep learning methods improve genomic prediction of wheat breeding
title_fullStr Deep learning methods improve genomic prediction of wheat breeding
title_full_unstemmed Deep learning methods improve genomic prediction of wheat breeding
title_short Deep learning methods improve genomic prediction of wheat breeding
title_sort deep learning methods improve genomic prediction of wheat breeding
topic genomics
forecasting
machine learning
learning
wheat
plant breeding
url https://hdl.handle.net/10568/159859
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