Prediction of resistance, virulence, and host-by-pathogen interactions using dual-genome prediction models.

IF 4.4 1区 农林科学 Q1 AGRONOMY Theoretical and Applied Genetics Pub Date : 2024-08-06 DOI:10.1007/s00122-024-04698-7
Owen Hudson, Marcio F R Resende, Charlie Messina, James Holland, Jeremy Brawner
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Abstract

Key message: Integrating disease screening data and genomic data for host and pathogen populations into prediction models provides breeders and pathologists with a unified framework to develop disease resistance. Developing disease resistance in crops typically consists of exposing breeding populations to a virulent strain of the pathogen that is causing disease. While including a diverse set of pathogens in the experiments would be desirable for developing broad and durable disease resistance, it is logistically complex and uncommon, and limits our capacity to implement dual (host-by-pathogen)-genome prediction models. Data from an alternative disease screening system that challenges a diverse sweet corn population with a diverse set of pathogen isolates are provided to demonstrate the changes in genetic parameter estimates that result from using genomic data to provide connectivity across sparsely tested experimental treatments. An inflation in genetic variance estimates was observed when among isolate relatedness estimates were included in prediction models, which was moderated when host-by-pathogen interaction effects were incorporated into models. The complete model that included genomic similarity matrices for host, pathogen, and interaction effects indicated that the proportion of phenotypic variation in lesion size that is attributable to host, pathogen, and interaction effects was similar. Estimates of the stability of lesion size predictions for host varieties inoculated with different isolates and the stability of isolates used to inoculate different hosts were also similar. In this pathosystem, genetic parameter estimates indicate that host, pathogen, and host-by-pathogen interaction predictions may be used to identify crop varieties that are resistant to specific virulence mechanisms and to guide the deployment of these sources of resistance into pathogen populations where they will be more effective.

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利用双基因组预测模型预测抗药性、毒力和宿主与病原体之间的相互作用。
关键信息:将宿主和病原体种群的病害筛选数据和基因组数据整合到预测模型中,可为育种者和病理学家提供开发抗病性的统一框架。培养作物的抗病性通常包括让育种群体接触致病病原体的毒株。虽然在实验中加入多种病原体是开发广泛而持久的抗病性的理想选择,但这在逻辑上非常复杂,而且并不常见,限制了我们实施双(宿主-病原体)基因组预测模型的能力。本研究提供了一个替代性病害筛选系统的数据,该系统用一组不同的病原体分离物对一个多样化的甜玉米群体进行挑战,以证明利用基因组数据提供稀疏试验处理间的连通性所导致的遗传参数估计的变化。当预测模型中包含分离株之间的亲缘关系估计值时,遗传变异估计值出现膨胀,而当模型中包含宿主与病原体之间的交互效应时,这种膨胀有所缓和。包含宿主、病原体和交互作用效应基因组相似性矩阵的完整模型表明,病斑大小表型变异中宿主、病原体和交互作用效应所占比例相似。对接种不同分离物的宿主品种的病斑大小预测的稳定性以及用于接种不同宿主的分离物的稳定性的估计也相似。在这一病理系统中,遗传参数估计表明,宿主、病原体和宿主与病原体之间的交互作用预测可用于确定对特定毒力机制具有抗性的作物品种,并指导将这些抗性来源部署到病原体种群中,使其更加有效。
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来源期刊
CiteScore
9.60
自引率
7.40%
发文量
241
审稿时长
2.3 months
期刊介绍: Theoretical and Applied Genetics publishes original research and review articles in all key areas of modern plant genetics, plant genomics and plant biotechnology. All work needs to have a clear genetic component and significant impact on plant breeding. Theoretical considerations are only accepted in combination with new experimental data and/or if they indicate a relevant application in plant genetics or breeding. Emphasizing the practical, the journal focuses on research into leading crop plants and articles presenting innovative approaches.
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