基因组和基于高光谱成像的预测混合可以选择小麦籽粒中脱氧雪腐烯醇含量的降低。

IF 2.2 3区 生物学 Q3 GENETICS & HEREDITY
Jonathan S Concepcion, Amanda D Noble, Addie M Thompson, Yanhong Dong, Eric L Olson
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引用次数: 0

摘要

小麦脱氧雪腐镰刀菌醇(DON)真菌毒素含量低,由于性状的复杂性和表型的局限性,育种具有挑战性。由于表型预测依赖于非加性效应,而基因组预测依赖于加性效应,因此它们的互补性可以提高选择的准确性。在这项研究中,使用高光谱相机对don感染的小麦籽粒进行成像,以产生在可见光和近红外光光谱上的反射率值,这些值用于现象预测。利用2021年和2022年评估的先进软质冬小麦育种品系的表型和基因组预测,对5个贝叶斯广义线性回归模型和2个机器学习模型进行了训练。在所有训练集和模型中,使用可见光光谱波段(400-700 nm)的现象预测比使用全波段范围(400-1000 nm)的基因组预测或现象预测具有更高的预测能力。采用2021年试验、2022年试验和组合试验作为训练集,对2022年和2023年独立评估的两组F4:5选择候选者进行模型混合进行前向预测。表型和遗传相关性以及表型和基因组联合预测的模型平均值的间接选择准确性高于单独的基因组预测。准确率依赖于训练集和选择候选者的组合。使用混合预测值的无监督K-Means聚类将选择候选者分为高和低平均观察到的DON含量两组。本研究证明了基于高光谱成像的表型预测对基因组预测的补充潜力,并强调了基于预测的小麦低DON选择的考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Genomic and hyperspectral imaging-based prediction blending enables selection for reduced deoxynivalenol content in wheat grains.

Genomic and hyperspectral imaging-based prediction blending enables selection for reduced deoxynivalenol content in wheat grains.

Genomic and hyperspectral imaging-based prediction blending enables selection for reduced deoxynivalenol content in wheat grains.

Genomic and hyperspectral imaging-based prediction blending enables selection for reduced deoxynivalenol content in wheat grains.

Breeding for low deoxynivalenol (DON) mycotoxin content in wheat is challenging due to the complexity of the trait and phenotyping limitations. Since phenomic prediction relies on nonadditive effects and genomic prediction on additive effects, their complementarity can improve selection accuracy. In this study DON-infected wheat kernels were imaged using a hyperspectral camera to generate reflectance values across the spectrum of visible and near-infrared light that were used in phenomic predictions. Five Bayesian generalized linear regression models and 2 machine learning models were trained using phenomic and genomic predictions from advanced soft winter wheat breeding lines evaluated in 2021 and 2022. Across all training sets and models, phenomic predictions using wavebands in the visible light spectrum (400 to 700 nm) had higher predictive ability than genomic predictions or phenomic predictions using the full waveband range (400 to 1,000 nm). Forward prediction using 2021 trial, 2022 trial, and combined trials as the training set was performed using model blending on 2 sets of F4:5 selection candidates evaluated independently in 2022 and 2023. The phenotypic and genetic correlations, as well as indirect selection accuracies, of the model averages of phenomic predictions and combined phenomic and genomic predictions were higher than genomic predictions alone. Accuracies depended on the combination of training set and selection candidates. Unsupervised K-means clustering using the blended predicted values partitioned selection candidates into 2 groups with high and low mean observed DON content. This study demonstrates the potential of hyperspectral imaging-based phenomic prediction to complement genomic prediction and highlights considerations for prediction-based selection of low DON in wheat.

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来源期刊
G3: Genes|Genomes|Genetics
G3: Genes|Genomes|Genetics GENETICS & HEREDITY-
CiteScore
5.10
自引率
3.80%
发文量
305
审稿时长
3-8 weeks
期刊介绍: G3: Genes, Genomes, Genetics provides a forum for the publication of high‐quality foundational research, particularly research that generates useful genetic and genomic information such as genome maps, single gene studies, genome‐wide association and QTL studies, as well as genome reports, mutant screens, and advances in methods and technology. The Editorial Board of G3 believes that rapid dissemination of these data is the necessary foundation for analysis that leads to mechanistic insights. G3, published by the Genetics Society of America, meets the critical and growing need of the genetics community for rapid review and publication of important results in all areas of genetics. G3 offers the opportunity to publish the puzzling finding or to present unpublished results that may not have been submitted for review and publication due to a perceived lack of a potential high-impact finding. G3 has earned the DOAJ Seal, which is a mark of certification for open access journals, awarded by DOAJ to journals that achieve a high level of openness, adhere to Best Practice and high publishing standards.
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