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Comparison of Marker-Based Genomic Estimated Breeding Values and Phenotypic Evaluation for Selection of Bacterial Spot Resistance in Tomato

机译:基于标志物的基因组估计育种值和表型评价对番茄细菌斑抗性的表型评价

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摘要

Bacterial spot affects tomato crops (Solanum lycopersicum) grown under humid conditions. Major genes and quantitative trait loci (QTL) for resistance have been described, and multiple loci from diverse sources need to be combined to improve disease control. We investigated genomic selection (GS) prediction models for resistance to Xanthomonas euvesicatoria and experimentally evaluated the accuracy of these models. The training population consisted of 109 families combining resistance from four sources and directionally selected from a population of 1,100 individuals. The families were evaluated on a plot basis in replicated inoculated trials and genotyped with single nucleotide polymorphisms (SNP). We compared the prediction ability of models developed with 14 to 387 SNP. Genomic estimated breeding values (GEBV) were derived using Bayesian least absolute shrinkage and selection operator regression (BL) and ridge regression (RR). Evaluations were based on leave-one-out cross validation and on empirical observations in replicated field trials using the next generation of inbred progeny and a hybrid population resulting from selections in the training population. Prediction ability was evaluated based on correlations between GEBV and phenotypes (r(g)), percentage of coselection between genomic and phenotypic selection, and relative efficiency of selection (r(g)/r(p)). Results were similar with BL and RR models. Models using only markers previously identified as significantly associated with resistance but weighted based on GEBVand mixed models with markers associated with resistance treated as fixed effects and markers distributed in the genome treated as random effects offered greater accuracy and a high percentage of coselection. The accuracy of these models to predict the performance of progeny and hybrids exceeded the accuracy of phenotypic selection.
机译:细菌点影响潮湿条件下生长的番茄作物(Solanum Lycopersicum)。已经描述了用于抗性的主要基因和定量性状基因座(QTL),并且需要组合来自不同来源的多个基因座以改善疾病控制。我们研究了基因组选择(GS)预测模型,用于Xanthomonas euvessicatoria,并通过实验评估这些模型的准确性。培训人口由109个家庭组成,组合四个来源的抵抗,并从1,100人的人口方向定向。在复制的接种试验中,在绘制基础上评估该系列,并用单核苷酸多态性(SNP)进行基因分型。我们比较了用14到387 SNP开发的模型的预测能力。基因组估计的繁殖值(GeBV)使用贝叶斯最不绝对收缩和选择操作员回归(BL)和RADE回归(RR)来得出。评估基于休假交叉验证以及使用下一代近代后代和培训人口中的选择产生的混合人口的经验观察。基于GeBV和表型之间的相关性评估预测能力(R(g)),基因组和表型选择之间的雌切除百分比,以及选择的相对效率(R(g)/ R(p))。结果与BL和RR模型类似。仅使用先前鉴定为显着与电阻相关的标记的模型,而是基于Gebvand混合模型的加权,其具有与抗性相关的标记物作为固定效应和分布在作为随机效应的基因组中的标记提供了更大的准确性和高比例的益处理。这些模型预测后代和杂种性能的准确性超过了表型选择的准确性。

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  • 来源
    《Phytopathology》 |2018年第3期|共10页
  • 作者单位

    Ohio State Univ Ohio Agr Res &

    Dev Ctr Dept Hort &

    Crop Sci 1680 Madison Ave Wooster OH 44691 USA;

    Sejong Univ Korea Dept Bioresources Engn 209 Neungdon Ro Seoul South Korea;

    Ohio State Univ Ohio Agr Res &

    Dev Ctr Dept Hort &

    Crop Sci 1680 Madison Ave Wooster OH 44691 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 植物病理学;
  • 关键词

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