INRA/USTL UMR 1281 SADV, Estrées-Mons, BP 50136, 80203, Péronne Cedex, France.
Theor Appl Genet. 2010 Nov;121(8):1501-17. doi: 10.1007/s00122-010-1406-6. Epub 2010 Aug 10.
Yield is known to be a complex trait, the expression of which interacts strongly with environmental conditions. Understanding the genetic basis of these genotype × environment interactions, particularly under limited input levels, is a key objective when selecting wheat genotypes adapted to specific environments. Our principal objectives were thus: (1) to identify genomic regions [quantitative trait loci (QTL)] involving QTL × environment interactions (QEI) and (2) to develop a strategy to understand the specificity of these regions to certain environments. The two main components of yield were studied: kernel number (KN) and thousand-kernel weight (TKW). The Arche × Récital doubled-haploid population of 222 lines was grown in replicated field trials during 2000 and 2001 at three locations in France, under two nitrogen levels. The 12 environments were characterized in terms of water deficit, radiation, temperature and nitrogen stress based on measurements conducted on the four-probe genotypes: Arche, Récital, Ritmo and Soissons. A four-step strategy was developed to explain QTL specificity to some environments: (1) the detection of QTL for KN and TKW in each environment; (2) the estimation of genotypic sensitivities as the factorial regression slope of KN and TKW to environmental covariates and the detection of QTL for these genotypic sensitivities; (3) study of the co-locations of QTL for KN and TKW and of the QTL for sensitivities; in the event of a co-location partitioning the QEI, appropriate covariates were employed; (4) a description of the environments where QTL were detected for KN and TKW using the environmental covariates. A total of 131 QTL were found to be associated with KN, TKW and their sensitivity to environmental covariates across the 12 environments. Four of these QTL, for both KN and TKW, were located on linkage groups 1B, 2D1, 4B and 5A1, and displayed pleiotropic effects. Factorial regression explained from 15.1 to 83.2% of the QEI for KN and involved three major environmental covariates: cumulative radiation-days ±3 days at meiosis, cumulative degree-days >25°C ±3 days at meiosis and nitrogen stress at flowering. For TKW, 13.5-81.8% of the effect of the QEI was partitioned and involved three major environmental covariates: water deficit from flowering to the milk stage, cumulative degree-days >0°C from the milk stage to maturity and soil water deficit at maturity. A comparative analysis was then performed on the QTL detected during this and previous studies published on QEI and some interacting QTL may be common to different genetic backgrounds. Focusing on these QTL common to different genetic backgrounds would give some guidance to understand genotype × environment interaction.
产量是一个复杂的性状,其表达与环境条件密切相关。了解这些基因型与环境互作(QEI)的遗传基础,特别是在有限投入水平下,是选择适应特定环境的小麦基因型的一个关键目标。因此,我们的主要目标是:(1)鉴定涉及 QEI 的基因组区域[数量性状位点(QTL)];(2)制定一种策略来了解这些区域对特定环境的特异性。研究了产量的两个主要组成部分:穗粒数(KN)和千粒重(TKW)。Arche × Récital 加倍单倍体群体的 222 条系在 2000 年和 2001 年在法国的三个地点进行了复制田间试验,在两个氮水平下进行。根据在四个探针基因型(Arche、Récital、Ritmo 和 Soissons)上进行的测量,用水分亏缺、辐射、温度和氮胁迫来描述 12 种环境。开发了一个四步策略来解释对某些环境的 QTL 特异性:(1)在每个环境中检测 KN 和 TKW 的 QTL;(2)估计基因型敏感性,即 KN 和 TKW 对环境协变量的因子回归斜率,并检测这些基因型敏感性的 QTL;(3)研究 KN 和 TKW 的 QTL 以及敏感性的 QTL 的共定位;如果存在 QEI 的共定位分区,则使用适当的协变量;(4)使用环境协变量描述检测到 KN 和 TKW 的 QTL 的环境。共鉴定到 131 个与 KN、TKW 及其对环境协变量的敏感性相关的 QTL,分布在 12 个环境中。其中 4 个 QTL,同时与 KN 和 TKW 相关,位于连锁群 1B、2D1、4B 和 5A1 上,表现出多效性。因子回归解释了 KN 的 QEI 的 15.1%至 83.2%,涉及三个主要的环境协变量:减数分裂期的累积辐射天数±3 天,减数分裂期的累积度日>25°C±3 天,开花期的氮胁迫。对于 TKW,QEI 效应的 13.5%-81.8%被分区,涉及三个主要的环境协变量:开花至乳熟期的水分亏缺、乳熟期至成熟的>0°C 的累积度日和成熟时的土壤水分亏缺。然后对本研究和以前发表的关于 QEI 的研究中检测到的 QTL 进行了比较分析,一些相互作用的 QTL 可能在不同的遗传背景下是共同的。关注这些在不同遗传背景下共同的 QTL 将有助于理解基因型与环境互作。