Data Augmentation Enhances Plant-Genomic-Enabled Predictions

Author:

Montesinos-López Osval A.1,Solis-Camacho Mario Alberto1ORCID,Crespo-Herrera Leonardo2ORCID,Saint Pierre Carolina2ORCID,Huerta Prado Gloria Isabel3,Ramos-Pulido Sofia4ORCID,Al-Nowibet Khalid5,Fritsche-Neto Roberto6,Gerard Guillermo2,Montesinos-López Abelardo4ORCID,Crossa José2567

Affiliation:

1. Facultad de Telemática, Universidad de Colima, Colima 28040, Colima, Mexico

2. International Maize and Wheat Improvement Center (CIMMYT), Km 45, Carretera Mexico-Veracruz, Texcoco 52640, Edo. de México, Mexico

3. Independent Researcher, Zinacatepec 75960, Puebla, Mexico

4. Centro Universitario de Ciencias Exactas e Ingenierías (CUCEI), Universidad de Guadalajara, Guadalajara 44430, Jalisco, Mexico

5. Distinguish Scientist Fellowship Program and Department of Statistics and Operations Research, King Saud University, Riyah 11451, Saudi Arabia

6. Louisiana State University, Baton Rouge, LA 70803, USA

7. Colegio de Postgraduados, Montecillo 56230, Edo. de México, Mexico

Abstract

Genomic selection (GS) is revolutionizing plant breeding. However, its practical implementation is still challenging, since there are many factors that affect its accuracy. For this reason, this research explores data augmentation with the goal of improving its accuracy. Deep neural networks with data augmentation (DA) generate synthetic data from the original training set to increase the training set and to improve the prediction performance of any statistical or machine learning algorithm. There is much empirical evidence of their success in many computer vision applications. Due to this, DA was explored in the context of GS using 14 real datasets. We found empirical evidence that DA is a powerful tool to improve the prediction accuracy, since we improved the prediction accuracy of the top lines in the 14 datasets under study. On average, across datasets and traits, the gain in prediction performance of the DA approach regarding the Conventional method in the top 20% of lines in the testing set was 108.4% in terms of the NRMSE and 107.4% in terms of the MAAPE, but a worse performance was observed on the whole testing set. We encourage more empirical evaluations to support our findings.

Funder

Bill and Melinda Gates Foundation

USAID projects

Foundation for Research Levy on Agricultural Products (FFL) and the Agricultural Agreement Research Fund

Distinguish Scientist Fellowship Program and the Department of Statistics and Operations of the King Saud University, Riyah, Saudi Arabia

Publisher

MDPI AG

Reference24 articles.

1. Prediction of total genetic value using genome-wide dense marker map;Meuwissen;Genetics,2001

2. Genome-enabled prediction for sparse testing in multi-environmental wheat trials;Howard;Plant Genome,2021

3. Genomic Selection in the Era of Next Generation Sequencing for Complex Traits in Plant Breeding;Bhat;Front. Genet.,2016

4. Genomics combined with UAS data enhances prediction of grain yield in winter wheat;Herr;Front. Genet.,2023

5. Genomic Selection: A Tool for Accelerating the Efficiency of Molecular Breeding for Development of ClimateResilient Crops;Budhlakoti;Front. Genet.,2022

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