Rowe Heather C, Hansen Bjarne Gram, Halkier Barbara Ann, Kliebenstein Daniel J
Genetics Graduate Group and Department of Plant Sciences, University of California Davis, Davis, California 95616, USA.
Plant Cell. 2008 May;20(5):1199-216. doi: 10.1105/tpc.108.058131. Epub 2008 May 30.
Genomic approaches have accelerated the study of the quantitative genetics that underlie phenotypic variation. These approaches associate genome-scale analyses such as transcript profiling with targeted phenotypes such as measurements of specific metabolites. Additionally, these approaches can help identify uncharacterized networks or pathways. However, little is known about the genomic architecture underlying data sets such as metabolomics or the potential of such data sets to reveal networks. To describe the genetic regulation of variation in the Arabidopsis thaliana metabolome and test our ability to integrate unknown metabolites into biochemical networks, we conducted a replicated metabolomic analysis on 210 lines of an Arabidopsis population that was previously used for targeted metabolite quantitative trait locus (QTL) and global expression QTL analysis. Metabolic traits were less heritable than the average transcript trait, suggesting that there are differences in the power to detect QTLs between transcript and metabolite traits. We used statistical analysis to identify a large number of metabolite QTLs with moderate phenotypic effects and found frequent epistatic interactions controlling a majority of the variation. The distribution of metabolite QTLs across the genome included 11 QTL clusters; 8 of these clusters were associated in an epistatic network that regulated plant central metabolism. We also generated two de novo biochemical network models from the available data, one of unknown function and the other associated with central plant metabolism.
基因组学方法加速了对表型变异背后的数量遗传学的研究。这些方法将转录谱分析等基因组规模分析与特定代谢物测量等目标表型联系起来。此外,这些方法有助于识别未表征的网络或途径。然而,对于代谢组学等数据集的基因组结构以及此类数据集揭示网络的潜力,我们知之甚少。为了描述拟南芥代谢组变异的遗传调控,并测试我们将未知代谢物整合到生化网络中的能力,我们对一个拟南芥群体的210个株系进行了重复代谢组分析,该群体先前用于目标代谢物数量性状位点(QTL)和全基因组表达QTL分析。代谢性状的遗传力低于平均转录性状,这表明转录和代谢物性状在检测QTL的能力上存在差异。我们使用统计分析来鉴定大量具有中等表型效应的代谢物QTL,并发现频繁的上位性相互作用控制了大部分变异。代谢物QTL在基因组中的分布包括11个QTL簇;其中8个簇在一个调控植物中心代谢的上位性网络中相关联。我们还根据现有数据生成了两个全新的生化网络模型,一个功能未知,另一个与植物中心代谢相关。