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Genomic Prediction in Maize Breeding Populations with Genotyping-by-Sequencing

机译:通过测序进行基因分型的玉米育种群体的基因组预测。

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摘要

Genotyping-by-sequencing (GBS) technologies have proven capacity for delivering large numbers of marker genotypes with potentially less ascertainment bias than standard single nucleotide polymorphism (SNP) arrays. Therefore, GBS has become an attractive alternative technology for genomic selection. However, the use of GBS data poses important challenges, and the accuracy of genomic prediction using GBS is currently undergoing investigation in several crops, including maize, wheat, and cassava. The main objective of this study was to evaluate various methods for incorporating GBS information and compare them with pedigree models for predicting genetic values of lines from two maize populations evaluated for different traits measured in different environments (experiments 1 and 2). Given that GBS data come with a large percentage of uncalled genotypes, we evaluated methods using nonimputed, imputed, and GBS-inferred haplotypes of different lengths (short or long). GBS and pedigree data were incorporated into statistical models using either the genomic best linear unbiased predictors (GBLUP) or the reproducing kernel Hilbert spaces (RKHS) regressions, and prediction accuracy was quantified using cross-validation methods. The following results were found: relative to pedigree or marker-only models, there were consistent gains in prediction accuracy by combining pedigree and GBS data; there was increased predictive ability when using imputed or nonimputed GBS data over inferred haplotype in experiment 1, or nonimputed GBS and information-based imputed short and long haplotypes, as compared to the other methods in experiment 2; the level of prediction accuracy achieved using GBS data in experiment 2 is comparable to those reported by previous authors who analyzed this data set using SNP arrays; and GBLUP and RKHS models with pedigree with nonimputed and imputed GBS data provided the best prediction correlations for the three traits in experiment 1, whereas for experiment 2 RKHS provided slightly better prediction than GBLUP for drought-stressed environments, and both models provided similar predictions in well-watered environments.
机译:经测序的基因分型(GBS)技术已被证明可以提供比标准单核苷酸多态性(SNP)阵列潜在的确定性偏低的大量标记基因型。因此,GBS已成为一种有吸引力的基因组选择替代技术。然而,GBS数据的使用提出了重要的挑战,并且目前正在对包括玉米,小麦和木薯在内的几种作物进行使用GBS进行基因组预测的准确性的研究。这项研究的主要目的是评估整合GBS信息的各种方法,并将其与谱系模型进行比较,以预测来自两个玉米种群的品系的遗传价值,这些玉米在不同的环境中进行了不同的性状评估(实验1和2)。鉴于GBS数据带有大量未调用的基因型,我们使用不同长度(短或长)的非插补,插补和GBS推断的单倍型对方法进行了评估。使用基因组最佳线性无偏预测变量(GBLUP)或可再生内核希尔伯特空间(RKHS)回归将GBS和系谱数据纳入统计模型,并使用交叉验证方法对预测准确性进行定量。发现以下结果:相对于谱系或仅基于标记的模型,通过将谱系和GBS数据相结合,预测准确性得到了一致的提高;与实验2中的其他方法相比,在实验1中使用估算的或非估算的GBS数据而不是推断的单倍型或非估算的GBS和基于信息的估算短和长单倍型时,具有更高的预测能力;实验2中使用GBS数据获得的预测准确性水平与之前使用SNP阵列分析该数据集的作者所报告的水平相当;以及具有非估算和估算GBS数据的谱系的GBLUP和RKHS模型提供了针对实验1中三个特征的最佳预测相关性,而对于实验2,对于干旱干旱环境,RKHS的预测要比GBLUP更好,并且两个模型都提供了相似的预测。浇水良好的环境。

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