Abstract

BackgroundSeveral conventional genomic Bayesian (or no Bayesian) prediction methods have been proposed including the standard additive genetic effect model for which the variance components are estimated with mixed model equations. In recent years, deep learning (DL) methods have been considered in the context of genomic prediction. The DL methods are nonparametric models providing flexibility to adapt to complicated associations between data and output with the ability to adapt to very complex patterns.Main bodyWe review the applications of deep learning (DL) methods in genomic selection (GS) to obtain a meta-picture of GS performance and highlight how these tools can help solve challenging plant breeding problems. We also provide general guidance for the effective use of DL methods including the fundamentals of DL and the requirements for its appropriate use. We discuss the pros and cons of this technique compared to traditional genomic prediction approaches as well as the current trends in DL applications.ConclusionsThe main requirement for using DL is the quality and sufficiently large training data. Although, based on current literature GS in plant and animal breeding we did not find clear superiority of DL in terms of prediction power compared to conventional genome based prediction models. Nevertheless, there are clear evidences that DL algorithms capture nonlinear patterns more efficiently than conventional genome based. Deep learning algorithms are able to integrate data from different sources as is usually needed in GS assisted breeding and it shows the ability for improving prediction accuracy for large plant breeding data. It is important to apply DL to large training-testing data sets.

Highlights

  • Several conventional genomic Bayesian prediction methods have been proposed including the standard additive genetic effect model for which the variance components are estimated with mixed model equations

  • Deep learning algorithms are able to integrate data from different sources as is usually needed in genomic selection (GS) assisted breeding and it shows the ability for improving prediction accuracy for large plant breeding data

  • Based on the considered publications on the use of deep learning (DL) for genomic selection, we did not find strong evidence for its clear superiority in terms of prediction power compared to conventional genomic prediction models

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Summary

Introduction

Several conventional genomic Bayesian (or no Bayesian) prediction methods have been proposed including the standard additive genetic effect model for which the variance components are estimated with mixed model equations. Main body: We review the applications of deep learning (DL) methods in genomic selection (GS) to obtain a metapicture of GS performance and highlight how these tools can help solve challenging plant breeding problems. Montesinos-López et al BMC Genomics (2021) 22:19 costs, GS has become a standard tool in many plant and animal breeding programs with the main application of reducing the length of breeding cycles [5–9]. Many empirical studies have shown that GS can increase the selection gain per year when used appropriately. Vivek et al [10] compared GS to conventional phenotypic selection (PS) for maize, and found that the gain per cycle under drought conditions was 0.27 (t/ha) when using PS, which increased to 0.50 (t/ha) when GS was implemented. Other studies have considered the use of GS for strawberry [17], cassava [18], soybean [19], cacao [20], barley [21], millet [22], carrot [23], banana [24], maize [25], wheat [26], rice [27] and sugar cane [28]

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