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双亲本玉米群体中全基因组选择前的标记填充

Marker Imputation Before Genomewide Selection in Biparental Maize Populations.

作者信息

Jacobson Amy, Lian Lian, Zhong Shengqiang, Bernardo Rex

机构信息

Dep. of Agronomy and Plant Genetics, Univ. of Minnesota, 1991 Upper Buford Cir., Saint Paul, MN, 55108.

Monsanto, 3302 SE Convenience Blvd, Ankeny, IA, 50021.

出版信息

Plant Genome. 2015 Jul;8(2):eplantgenome2014.10.0078. doi: 10.3835/plantgenome2014.10.0078.

DOI:10.3835/plantgenome2014.10.0078
PMID:33228308
Abstract

Marker imputation can be used to increase the number of markers in genomewide selection. Our objectives were to determine (i) if marker imputation increases the response to selection (R) and prediction accuracy (r ) among the progeny of two maize (Zea mays L.) parental inbreds (A and B); (ii) the number of imputed single nucleotide polymorphism (SNP) markers needed to reach a plateau in r for grain yield, moisture, and test weight; and (iii) the lowest number of assayed SNP markers that can be used for imputation without a significant decrease in r . The progeny of 27 biparental crosses between A and B (A/B) were assayed with 49 to 100 SNP markers, and imputation was conducted to increase the number of markers to 2911. For each A/B test population, the training population in the general combining ability (GCA) model consisted of 4 to 26 maize crosses with A and B as one of the parents, whereas the training population in the A/B model was the A/B population itself. Marker imputation made the GCA model as good as or better than the A/B model in terms of R and r for all traits. The r values did not increase significantly beyond 500 imputed markers for grain yield and beyond 1000 imputed markers for moisture and test weight. We recommend that maize breeders assay an elite biparental cross with only around 50 polymorphic SNP markers, increase marker coverage to around 1000 markers by imputation, and use the GCA model with imputed markers for genomewide selection within the cross.

摘要

标记填充可用于增加全基因组选择中的标记数量。我们的目标是确定:(i)标记填充是否能提高两个玉米(Zea mays L.)亲本自交系(A和B)后代的选择响应(R)和预测准确性(r);(ii)达到籽粒产量、含水量和容重的r值平台所需的填充单核苷酸多态性(SNP)标记数量;(iii)在不显著降低r值的情况下可用于填充的最低检测SNP标记数量。对A和B之间27个双亲亲本杂交组合(A/B)的后代进行了49至100个SNP标记的检测,并进行填充以使标记数量增加到2911个。对于每个A/B测试群体,一般配合力(GCA)模型中的训练群体由4至26个以A和B为亲本之一的玉米杂交组合组成,而A/B模型中的训练群体则是A/B群体本身。在所有性状的R和r方面,标记填充使GCA模型与A/B模型一样好或更好。对于籽粒产量,超过500个填充标记后r值没有显著增加;对于含水量和容重,超过1000个填充标记后r值没有显著增加。我们建议玉米育种者仅用约50个多态性SNP标记检测一个优良双亲亲本杂交组合,通过填充将标记覆盖率提高到约1000个标记,并使用带有填充标记的GCA模型在杂交组合内进行全基因组选择。

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