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面包小麦三个重要性状的全基因组预测

Genome-wide prediction of three important traits in bread wheat.

作者信息

Charmet Gilles, Storlie Eric, Oury François Xavier, Laurent Valérie, Beghin Denis, Chevarin Laetitia, Lapierre Annie, Perretant Marie Reine, Rolland Bernard, Heumez Emmanuel, Duchalais Laure, Goudemand Ellen, Bordes Jacques, Robert Olivier

机构信息

UMR GDEC, INRA-Université Clermont II, 5 chemin de Beaulieu, 63039 Clermont-Ferrand Cedex, France.

UMR GDEC, INRA-Université Clermont II, 5 chemin de Beaulieu, 63039 Clermont-Ferrand Cedex, France ; Colorado State University, Fort Collins, CO 80523 USA.

出版信息

Mol Breed. 2014;34(4):1843-1852. doi: 10.1007/s11032-014-0143-y. Epub 2014 Jul 16.

Abstract

Five genomic prediction models were applied to three wheat agronomic traits-grain yield, heading date and grain test weight-in three breeding populations, each comprising about 350 doubled haploid or recombinant inbred lines evaluated in three locations during a 3-year period. The prediction accuracy, measured as the correlation between genomic estimated breeding value and observed trait, was in the range of previously published values for yield ( = 0.2-0.5), a trait with relatively low heritability. Accuracies for heading date and test weight, with relatively high heritabilities, were about 0.70. There was no improvement of prediction accuracy when two or three breeding populations were merged into one for a larger training set (e.g., for yield ranged between 0.11 and 0.40 in the respective populations and between 0.18 and 0.35 in the merged populations). Cross-population prediction, when one population was used as the training population set and another population was used as the validation set, resulted in no prediction accuracy. This lack of cross-population prediction accuracy cannot be explained by a lower level of relatedness between populations, as measured by a shared SNP similarity, since it was only slightly lower between than within populations. Simulation studies confirm that cross-prediction accuracy decreases as the proportion of shared QTLs decreases, which can be expected from a higher level of QTL × environment interactions.

摘要

五个基因组预测模型被应用于三个小麦农艺性状——籽粒产量、抽穗期和容重——在三个育种群体中进行分析,每个群体包含约350个双单倍体或重组自交系,在3年期间于三个地点进行评估。预测准确性以基因组估计育种值与观察到的性状之间的相关性来衡量,对于产量这一遗传力相对较低的性状,其范围在先前发表的值(=0.2 - 0.5)之内。抽穗期和容重的遗传力相对较高,预测准确性约为0.70。当将两个或三个育种群体合并为一个更大的训练集时,预测准确性没有提高(例如,对于产量,各个群体中的范围在0.11至0.40之间,合并群体中的范围在0.18至0.35之间)。当一个群体用作训练群体集而另一个群体用作验证集时,跨群体预测没有产生预测准确性。这种跨群体预测准确性的缺乏不能用群体之间较低的相关性水平来解释,群体之间的相关性通过共享SNP相似性来衡量,因为群体间的相关性仅略低于群体内的相关性。模拟研究证实,随着共享QTL比例的降低,跨预测准确性会降低,这可以从更高水平的QTL×环境互作中预期得到。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/533e/4544631/e5a534e21cdc/11032_2014_143_Fig1_HTML.jpg

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