Pauli Duke, Ziegler Greg, Ren Min, Jenks Matthew A, Hunsaker Douglas J, Zhang Min, Baxter Ivan, Gore Michael A
Plant Breeding and Genetics Section, School of Integrative Plant Science, Cornell University, Ithaca, NY 14853.
Donald Danforth Plant Science Center, St. Louis, Missouri 63132.
G3 (Bethesda). 2018 Mar 28;8(4):1147-1160. doi: 10.1534/g3.117.300479.
To mitigate the effects of heat and drought stress, a better understanding of the genetic control of physiological responses to these environmental conditions is needed. To this end, we evaluated an upland cotton ( L.) mapping population under water-limited and well-watered conditions in a hot, arid environment. The elemental concentrations (ionome) of seed samples from the population were profiled in addition to those of soil samples taken from throughout the field site to better model environmental variation. The elements profiled in seeds exhibited moderate to high heritabilities, as well as strong phenotypic and genotypic correlations between elements that were not altered by the imposed irrigation regimes. Quantitative trait loci (QTL) mapping results from a Bayesian classification method identified multiple genomic regions where QTL for individual elements colocalized, suggesting that genetic control of the ionome is highly interrelated. To more fully explore this genetic architecture, multivariate QTL mapping was implemented among groups of biochemically related elements. This analysis revealed both additional and pleiotropic QTL responsible for coordinated control of phenotypic variation for elemental accumulation. Machine learning algorithms that utilized only ionomic data predicted the irrigation regime under which genotypes were evaluated with very high accuracy. Taken together, these results demonstrate the extent to which the seed ionome is genetically interrelated and predictive of plant physiological responses to adverse environmental conditions.
为减轻高温和干旱胁迫的影响,需要更好地了解对这些环境条件生理反应的遗传控制。为此,我们在炎热干旱的环境中,对一个陆地棉(L.)作图群体在水分受限和水分充足条件下进行了评估。除了对取自整个田间的土壤样本进行分析外,还对该群体种子样本的元素浓度(离子组)进行了分析,以便更好地模拟环境变异。种子中分析的元素表现出中度到高度的遗传力,以及在不同灌溉处理下未改变的元素之间的强表型和基因型相关性。贝叶斯分类方法的数量性状位点(QTL)定位结果确定了多个基因组区域,其中单个元素的QTL共定位,表明离子组的遗传控制高度相关。为了更全面地探索这种遗传结构,在生物化学相关元素组之间进行了多变量QTL定位。该分析揭示了负责协调控制元素积累表型变异的额外和多效性QTL。仅利用离子组数据的机器学习算法以非常高的准确性预测了评估基因型所采用的灌溉方式。综上所述,这些结果证明了种子离子组在遗传上相互关联的程度以及对植物对不利环境条件生理反应的预测能力。