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草莓基因组预测在多个周期中的独立验证

Independent Validation of Genomic Prediction in Strawberry Over Multiple Cycles.

作者信息

Osorio Luis F, Gezan Salvador A, Verma Sujeet, Whitaker Vance M

机构信息

Gulf Coast Research and Education Center, University of Florida, Wimauma, FL, United States.

School of Forest Resources and Conservation, University of Florida, Gainesville, FL, United States.

出版信息

Front Genet. 2021 Jan 22;11:596258. doi: 10.3389/fgene.2020.596258. eCollection 2020.

Abstract

The University of Florida strawberry ( × ) breeding program has implemented genomic prediction (GP) as a tool for choosing outstanding parents for crosses over the last five seasons. This has allowed the use of some parents 1 year earlier than with traditional methods, thus reducing the duration of the breeding cycle. However, as the number of breeding cycles increases over time, greater knowledge is needed on how multiple cycles can be used in the practical implementation of GP in strawberry breeding. Advanced selections and cultivars totaling 1,558 unique individuals were tested in field trials for yield and fruit quality traits over five consecutive years and genotyped for 9,908 SNP markers. Prediction of breeding values was carried out using Bayes B models. Independent validation was carried out using separate trials/years as training (TRN) and testing (TST) populations. Single-trial predictive abilities for five polygenic traits averaged 0.35, which was reduced to 0.24 when individuals common across trials were excluded, emphasizing the importance of relatedness among training and testing populations. Training populations including up to four previous breeding cycles increased predictive abilities, likely due to increases in both training population size and relatedness. Predictive ability was also strongly influenced by heritability, but less so by changes in linkage disequilibrium and effective population size. Genotype by year interactions were minimal. A strategy for practical implementation of GP in strawberry breeding is outlined that uses multiple cycles to predict parental performance and accounts for traits not included in GP models when constructing crosses. Given the importance of relatedness to the success of GP in strawberry, future work could focus on the optimization of relatedness in the design of TRN and TST populations to increase predictive ability in the short-term without compromising long-term genetic gains.

摘要

在过去五个种植季中,佛罗里达大学的草莓(×)育种项目已将基因组预测(GP)作为一种工具,用于选择优秀的杂交亲本。这使得一些亲本的使用时间比传统方法提前了一年,从而缩短了育种周期。然而,随着时间的推移,育种周期的数量不断增加,对于如何在草莓育种中实际应用GP时利用多个周期,还需要更多的了解。连续五年对1558个独特个体的高级选系和品种进行了田间试验,测试其产量和果实品质性状,并对9908个单核苷酸多态性(SNP)标记进行基因分型。使用贝叶斯B模型进行育种值预测。使用单独的试验/年份作为训练(TRN)和测试(TST)群体进行独立验证。五个多基因性状的单试验预测能力平均为0.35,当排除试验间的共同个体时,该能力降至0.24,这强调了训练和测试群体间亲缘关系的重要性。包含多达四个先前育种周期的训练群体提高了预测能力,这可能是由于训练群体规模和亲缘关系的增加。预测能力也受到遗传力的强烈影响,但受连锁不平衡和有效群体大小变化的影响较小。基因型与年份的相互作用最小。概述了一种在草莓育种中实际应用GP的策略,该策略利用多个周期来预测亲本表现,并在构建杂交组合时考虑GP模型中未包含的性状。鉴于亲缘关系对草莓GP成功的重要性,未来的工作可以集中在优化TRN和TST群体设计中的亲缘关系,以在不影响长期遗传增益的情况下,短期内提高预测能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a8e9/7862747/0b99a6ce336d/fgene-11-596258-g001.jpg

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