4.6 Article

Partial Least Squares Enhances Genomic Prediction of New Environments

Journal

FRONTIERS IN GENETICS
Volume 13, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fgene.2022.920689

Keywords

Bayesian genomic-enabled prediction; genotype x environment interaction; partial least squares; disease data; Bayesian analysis; maize and wheat data

Funding

  1. Bill & Melinda Gates Foundation [9 MTO 069033]
  2. Wheat for Improved Livelihoods
  3. USAID projects [267806]
  4. CIMMYT CRP (maize and wheat)
  5. Foundation for Research Levy on Agricultural Products (FFL)
  6. Agricultural Agreement Research Fund (JA) in Norway through NFR
  7. [INV-003439]

Ask authors/readers for more resources

Improved prediction of future seasons or new environments is crucial for plant breeding. This study demonstrates that the partial least squares regression method outperforms the Bayesian genomic best linear unbiased predictor method in predicting future seasons or new environments.
In plant breeding, the need to improve the prediction of future seasons or new locations and/or environments, also denoted as leave one environment out, is of paramount importance to increase the genetic gain in breeding programs and contribute to food and nutrition security worldwide. Genomic selection (GS) has the potential to increase the accuracy of future seasons or new locations because it is a predictive methodology. However, most statistical machine learning methods used for the task of predicting a new environment or season struggle to produce moderate or high prediction accuracies. For this reason, in this study we explore the use of the partial least squares (PLS) regression methodology for this specific task, and we benchmark its performance with the Bayesian Genomic Best Linear Unbiased Predictor (GBLUP) method. The benchmarking process was done with 14 real datasets. We found that in all datasets the PLS method outperformed the popular GBLUP method by margins between 0% (in the Indica data) and 228.28% (in the Disease data) across traits, environments, and types of predictors. Our results show great empirical evidence of the power of the PLS methodology for the prediction of future seasons or new environments.

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