Suppr超能文献

利用与数量性状基因座相关的AFLP标记预测玉米单交种的籽粒产量和籽粒干物质含量杂种表现。

Prediction of single-cross hybrid performance for grain yield and grain dry matter content in maize using AFLP markers associated with QTL.

作者信息

Schrag T A, Melchinger A E, Sørensen A P, Frisch M

机构信息

Institute of Plant Breeding, Seed Science and Population Genetics, University of Hohenheim, 70593 Stuttgart, Germany.

出版信息

Theor Appl Genet. 2006 Oct;113(6):1037-47. doi: 10.1007/s00122-006-0363-6. Epub 2006 Aug 3.

Abstract

Prediction methods to identify single-cross hybrids with superior yield performance have the potential to greatly improve the efficiency of commercial maize (Zea mays L.) hybrid breeding programs. Our objectives were to (1) identify marker loci associated with quantitative trait loci for hybrid performance or specific combining ability (SCA) in maize, (2) compare hybrid performance prediction by genotypic value estimates with that based on general combining ability (GCA) estimates, and (3) investigate a newly proposed combination of the GCA model with SCA predictions from genotypic value estimates. A total of 270 hybrids was evaluated for grain yield and grain dry matter content in four Dent x Flint factorial mating experiments, their parental inbred lines were genotyped with 20 AFLP primer-enzyme combinations. Markers associated significantly with hybrid performance and SCA were identified, genotypic values and SCA effects were estimated, and four hybrid performance prediction approaches were evaluated. For grain yield, between 38 and 98 significant markers were identified for hybrid performance and between zero and five for SCA. Estimates of prediction efficiency (R (2)) ranged from 0.46 to 0.86 for grain yield and from 0.59 to 0.96 for grain dry matter content. Models enhancing the GCA approach with SCA estimates resulted in the highest prediction efficiency if the SCA to GCA ratio was high. We conclude that it is advantageous for prediction of single-cross hybrids to enhance a GCA-based model with SCA effects estimated from molecular marker data, if SCA variances are of similar or larger importance as GCA variances.

摘要

识别具有优异产量表现的单交杂种的预测方法,有潜力极大地提高商业化玉米(Zea mays L.)杂交育种计划的效率。我们的目标是:(1)鉴定与玉米杂交表现或特殊配合力(SCA)的数量性状位点相关的标记位点;(2)比较基于基因型值估计的杂交表现预测与基于一般配合力(GCA)估计的预测;(3)研究一种新提出的将GCA模型与基于基因型值估计的SCA预测相结合的方法。在四个马齿型×硬粒型析因交配试验中,对总共270个杂种的籽粒产量和籽粒干物质含量进行了评估,用20种AFLP引物-酶组合对其亲本自交系进行了基因分型。鉴定出与杂交表现和SCA显著相关的标记,估计了基因型值和SCA效应,并评估了四种杂交表现预测方法。对于籽粒产量,鉴定出38至98个与杂交表现显著相关的标记,与SCA相关的标记为0至5个。籽粒产量的预测效率(R²)估计值范围为0.46至0.86,籽粒干物质含量的预测效率范围为0.59至0.96。如果SCA与GCA的比率较高,用SCA估计增强GCA方法的模型可产生最高的预测效率。我们得出结论,如果SCA方差与GCA方差具有相似或更大的重要性,那么用分子标记数据估计的SCA效应增强基于GCA的模型,对于单交杂种的预测是有利的。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验