Department of Agronomy and Plant Genetics, University of Minnesota, St. Paul, MN, 55108, USA.
Theor Appl Genet. 2012 Jan;124(1):111-24. doi: 10.1007/s00122-011-1691-8. Epub 2011 Sep 7.
Over the past two decades many quantitative trait loci (QTL) have been detected; however, very few have been incorporated into breeding programs. The recent development of genome-wide association studies (GWAS) in plants provides the opportunity to detect QTL in germplasm collections such as unstructured populations from breeding programs. The overall goal of the barley Coordinated Agricultural Project was to conduct GWAS with the intent to couple QTL detection and breeding. The basic idea is that breeding programs generate a vast amount of phenotypic data and combined with cheap genotyping it should be possible to use GWAS to detect QTL that would be immediately accessible and used by breeding programs. There are several constraints to using breeding program-derived phenotype data for conducting GWAS namely: limited population size and unbalanced data sets. We chose the highly heritable trait heading date to study these two variables. We examined 766 spring barley breeding lines (panel #1) grown in balanced trials and a subset of 384 spring barley breeding lines (panel #2) grown in balanced and unbalanced trials. In panel #1, we detected three major QTL for heading date that have been detected in previous bi-parental mapping studies. Simulation studies showed that population sizes greater than 384 individuals are required to consistently detect QTL. We also showed that unbalanced data sets from panel #2 can be used to detect the three major QTL. However, unbalanced data sets resulted in an increase in the false-positive rate. Interestingly, one-step analysis performed better than two-step analysis in reducing the false-positive rate. The results of this work show that it is possible to use phenotypic data from breeding programs to detect QTL, but that careful consideration of population size and experimental design are required.
在过去的二十年中,已经检测到许多数量性状位点(QTL);然而,很少有被纳入到育种计划中。最近在植物中开展的全基因组关联研究(GWAS)为检测育种计划中无结构群体等种质资源中的 QTL 提供了机会。大麦协调农业项目的总体目标是开展 GWAS,旨在将 QTL 检测与育种相结合。其基本思路是,育种计划生成大量表型数据,结合廉价的基因分型,应该有可能利用 GWAS 来检测 QTL,这些 QTL 可以立即被育种计划所利用。使用育种计划衍生的表型数据进行 GWAS 存在几个限制,即:群体规模有限和数据集不平衡。我们选择了高度遗传的抽穗期性状来研究这两个变量。我们研究了 766 个春大麦育种系(第 1 组),这些系在平衡试验中种植,以及 384 个春大麦育种系(第 2 组)的子集,这些系在平衡和不平衡试验中种植。在第 1 组中,我们检测到三个与抽穗期相关的主要 QTL,这些 QTL 在以前的双亲作图研究中已经被检测到。模拟研究表明,需要超过 384 个个体的群体规模才能一致地检测到 QTL。我们还表明,第 2 组不平衡数据集可用于检测三个主要 QTL。然而,不平衡数据集会导致假阳性率增加。有趣的是,一步分析在降低假阳性率方面优于两步分析。这项工作的结果表明,利用育种计划的表型数据来检测 QTL 是可行的,但需要仔细考虑群体规模和实验设计。