Institut Jean-Pierre Bourgin, INRA, AgroParisTech, CNRS, Université Paris-Saclay, 78000, Versailles, France.
PLoS Genet. 2019 Apr 22;15(4):e1007954. doi: 10.1371/journal.pgen.1007954. eCollection 2019 Apr.
One of the main outcomes of quantitative genetics approaches to natural variation is to reveal the genetic architecture underlying the phenotypic space. Complex genetic architectures are described as including numerous loci (or alleles) with small-effect and/or low-frequency in the populations, interactions with the genetic background, environment or age. Linkage or association mapping strategies will be more or less sensitive to this complexity, so that we still have an unclear picture of its extent. By combining high-throughput phenotyping under two environmental conditions with classical QTL mapping approaches in multiple Arabidopsis thaliana segregating populations as well as advanced near isogenic lines construction and survey, we have attempted to improve our understanding of quantitative phenotypic variation. Integrative traits such as those related to vegetative growth used in this work (highlighting either cumulative growth, growth rate or morphology) all showed complex and dynamic genetic architecture with respect to the segregating population and condition. The more resolutive our mapping approach, the more complexity we uncover, with several instances of QTLs visible in near isogenic lines but not detected with the initial QTL mapping, indicating that our phenotyping accuracy was less limiting than the mapping resolution with respect to the underlying genetic architecture. In an ultimate approach to resolve this complexity, we intensified our phenotyping effort to target specifically a 3Mb-region known to segregate for a major quantitative trait gene, using a series of selected lines recombined every 100kb. We discovered that at least 3 other independent QTLs had remained hidden in this region, some with trait- or condition-specific effects, or opposite allelic effects. If we were to extrapolate the figures obtained on this specific region in this particular cross to the genome- and species-scale, we would predict hundreds of causative loci of detectable phenotypic effect controlling these growth-related phenotypes.
定量遗传学方法对自然变异的主要结果之一是揭示表型空间背后的遗传结构。复杂的遗传结构被描述为包括在群体中具有小效应和/或低频率的众多基因座(或等位基因)、与遗传背景、环境或年龄的相互作用。连锁或关联作图策略或多或少会对这种复杂性敏感,因此我们对其程度仍然没有清晰的认识。通过在两个环境条件下进行高通量表型分析,并结合拟南芥多个分离群体中的经典 QTL 作图方法以及先进的近等基因系构建和调查,我们试图提高对定量表型变异的理解。在这项工作中使用的整合性状(突出累积生长、生长速率或形态)都表现出复杂和动态的遗传结构,与分离群体和条件有关。我们的作图方法越具分辨率,我们发现的复杂性就越大,在近等基因系中可以看到几个 QTL,但在初始 QTL 作图中没有检测到,这表明我们的表型准确性相对于遗传结构的作图分辨率来说,限制因素较少。为了解决这种复杂性,我们加强了表型分析,专门针对一个已知分离出主要数量性状基因的 3Mb 区域,使用一系列每隔 100kb 重组的选定系。我们发现,至少还有另外 3 个独立的 QTL 隐藏在这个区域中,有些具有特定性状或条件的效应,或者相反的等位基因效应。如果我们将在这个特定的交叉中获得的这个特定区域的数据外推到基因组和物种规模,我们将预测有数百个可检测表型效应的因果基因座控制这些与生长相关的表型。