Integrative multi-environmental genomic prediction in apple

IF 8.7 1区 农林科学 Q1 Agricultural and Biological Sciences Horticulture Research Pub Date : 2024-11-20 DOI:10.1093/hr/uhae319
Michaela Jung, Carles Quesada-Traver, Morgane Roth, Maria José Aranzana, Hélène Muranty, Marijn Rymenants, Walter Guerra, Elias Holzknecht, Nicole Pradas, Lidia Lozano, Frédérique Didelot, François Laurens, Steven Yates, Bruno Studer, Giovanni A L Broggini, Andrea Patocchi
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Abstract

Genomic prediction for multiple environments can aid the selection of genotypes suited to specific soil and climate conditions. Methodological advances allow effective integration of phenotypic, genomic (additive, non-additive), and large-scale environmental (enviromic) data into multi-environmental genomic prediction models. These models can also account for genotype-by-environment interaction, utilize alternative relationship matrices (kernels), or substitute statistical approaches with deep learning. However, the application of multi-environmental genomic prediction in apple remained limited, likely due to the challenge of building multi-environmental datasets and structurally complex models. Here, we applied efficient statistical and deep learning models for multi-environmental genomic prediction of eleven apple traits with contrasting genetic architectures by integrating genomic- and enviromic-based model components. Incorporating genotype-by-environment interaction effects into statistical models improved predictive ability by up to 0.08 for nine traits compared to the benchmark model. This outcome, based on Gaussian and Deep kernels, shows these alternatives can effectively substitute the standard G-BLUP. Including non-additive and enviromic-based effects resulted in a predictive ability very similar to the benchmark model. The deep learning approach achieved the highest predictive ability for three traits with oligogenic genetic architectures, outperforming the benchmark by up to 0.10. Our results demonstrate that the tested statistical models capture genotype-by-environment interactions particularly well, and the deep learning models efficiently integrate data from diverse sources. This study will foster the adoption of multi-environmental genomic prediction to select apple cultivars adapted to diverse environmental conditions, providing an opportunity to address climate change impacts.
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苹果多环境基因组综合预测
多环境基因组预测有助于选择适合特定土壤和气候条件的基因型。随着方法学的进步,表型、基因组(加成、非加成)和大规模环境(环境组)数据可以有效整合到多环境基因组预测模型中。这些模型还可以考虑基因型与环境之间的相互作用,利用替代关系矩阵(核),或用深度学习替代统计方法。然而,多环境基因组预测在苹果中的应用仍然有限,这可能是由于建立多环境数据集和结构复杂的模型所面临的挑战。在这里,我们通过整合基于基因组和环境组的模型成分,将高效的统计和深度学习模型应用于具有不同遗传结构的11个苹果性状的多环境基因组预测。与基准模型相比,将基因型与环境的交互效应纳入统计模型可将九个性状的预测能力提高多达 0.08。基于高斯核和深度核的这一结果表明,这些替代方法可以有效替代标准的 G-BLUP。将非加成效应和基于环境的效应包括在内后,预测能力与基准模型非常相似。深度学习方法对具有寡基因结构的三个性状的预测能力最高,比基准模型高出 0.10。我们的研究结果表明,测试的统计模型能很好地捕捉基因型与环境之间的相互作用,而深度学习模型能有效地整合来自不同来源的数据。这项研究将促进采用多环境基因组预测来选择适应不同环境条件的苹果栽培品种,为应对气候变化的影响提供机会。
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来源期刊
Horticulture Research
Horticulture Research Biochemistry, Genetics and Molecular Biology-Biochemistry
CiteScore
11.20
自引率
6.90%
发文量
367
审稿时长
20 weeks
期刊介绍: Horticulture Research, an open access journal affiliated with Nanjing Agricultural University, has achieved the prestigious ranking of number one in the Horticulture category of the Journal Citation Reports ™ from Clarivate, 2022. As a leading publication in the field, the journal is dedicated to disseminating original research articles, comprehensive reviews, insightful perspectives, thought-provoking comments, and valuable correspondence articles and letters to the editor. Its scope encompasses all vital aspects of horticultural plants and disciplines, such as biotechnology, breeding, cellular and molecular biology, evolution, genetics, inter-species interactions, physiology, and the origination and domestication of crops.
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