Abstract

Fusarium head blight (FHB) incited by Fusarium graminearum Schwabe is a devastating disease of barley and other cereal crops worldwide. Fusarium head blight is associated with trichothecene mycotoxins such as deoxynivalenol (DON), which contaminates grains, making them unfit for malting or animal feed industries. While genetically resistant cultivars offer the best economic and environmentally responsible means to mitigate disease, parent lines with adequate resistance are limited in barley. Resistance breeding based upon quantitative genetic gains has been slow to date, due to intensive labor requirements of disease nurseries. The production of a high-throughput genome-wide molecular marker assembly for barley permits use in development of genomic prediction models for traits of economic importance to this crop. A diverse panel consisting of 400 two-row spring barley lines was assembled to focus on Canadian barley breeding programs. The panel was evaluated for FHB and DON content in three environments and over 2 years. Moreover, it was genotyped using an Illumina Infinium High-Throughput Screening (HTS) iSelect custom beadchip array of single nucleotide polymorphic molecular markers (50 K SNP), where over 23 K molecular markers were polymorphic. Genomic prediction has been demonstrated to successfully reduce FHB and DON content in cereals using various statistical models. Herein, we have studied an alternative method based on machine learning and compare it with a statistical approach. The bi-allelic SNPs represented pairs of alleles and were encoded in two ways: as categorical (–1, 0, 1) or using Hardy-Weinberg probability frequencies. This was followed by selecting essential genomic markers for phenotype prediction. Subsequently, a Transformer-based deep learning algorithm was applied to predict FHB and DON. Apart from the Transformer method, a Residual Fully Connected Neural Network (RFCNN) was also applied. Pearson correlation coefficients were calculated to compare true vs. predicted outputs. Models which included all markers generally showed marginal improvement in prediction. Hardy-Weinberg encoding generally improved correlation for FHB (6.9%) and DON (9.6%) for the Transformer network. This study suggests the potential of the Transformer based method as an alternative to the popular BLUP model for genomic prediction of complex traits such as FHB or DON, having performed equally or better than existing machine learning and statistical methods.

Highlights

  • Barley (Hordeum vulgare L.) is one of the most ancient grains, and is currently the fourth-most produced cereal globally measured both in area harvested and yield (FAO, 2019)

  • We proposed a Transformer-based genomic prediction model for predicting Fusarium head blight (FHB) and DON for barley

  • We evaluate a Transformer-based deep learning method, GPTransformer, that uses genotypic and phenotypic data to predict FHB severity and DON levels in a two-row barley population

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Summary

Introduction

Barley (Hordeum vulgare L.) is one of the most ancient grains, and is currently the fourth-most produced cereal globally measured both in area harvested and yield (FAO, 2019). As a cash crop, malting barley necessitates maximized yield performance, and requires strict management of numerous grain-quality characteristics with specific parameter ranges (Izydorczyk and Edney, 2017). Barley achieving these superior standards can be sold into the lucrative malting barley market, where it returns a significant premium to the barley producer. Fusarium head blight (FHB), caused by Fusarium graminearum Schwabe [teleomorph: Gibberella zeae (Schwein.) Petch], is a devastating disease of barley. Due to potential adverse toxic effects, DON along with its alternative forms are highly regulated with maximum consumption limits set for humans and livestock (EFSA CONTAM Panel, 2017)

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