Institut de Recherche pour le Développement, UMR DIAPC IRD/INRA/Université de Montpellier II/ Montpellier SupAgro, BP64501, 34394 Montpellier, France.
BMC Genet. 2014 Jan 6;15:3. doi: 10.1186/1471-2156-15-3.
Association mapping studies offer great promise to identify polymorphisms associated with phenotypes and for understanding the genetic basis of quantitative trait variation. To date, almost all association mapping studies based on structured plant populations examined the main effects of genetic factors on the trait but did not deal with interactions between genetic factors and environment. In this paper, we propose a methodological prospect of mixed linear models to analyze genotype by environment interaction effects using association mapping designs. First, we simulated datasets to assess the power of linear mixed models to detect interaction effects. This simulation was based on two association panels composed of 90 inbreds (pearl millet) and 277 inbreds (maize).
Based on the simulation approach, we reported the impact of effect size, environmental variation, allele frequency, trait heritability, and sample size on the power to detect the main effects of genetic loci and diverse effect of interactions implying these loci. Interaction effects specified in the model included SNP by environment interaction, ancestry by environment interaction, SNP by ancestry interaction and three way interactions. The method was finally used on real datasets from field experiments conducted on the two considered panels. We showed two types of interactions effects contributing to genotype by environment interactions in maize: SNP by environment interaction and ancestry by environment interaction. This last interaction suggests differential response at the population level in function of the environment.
Our results suggested the suitability of mixed models for the detection of diverse interaction effects. The need of samples larger than that commonly used in current plant association studies is strongly emphasized to ensure rigorous model selection and powerful interaction assessment. The use of ancestry interaction component brought valuable information complementary to other available approaches.
关联映射研究为鉴定与表型相关的多态性以及理解数量性状变异的遗传基础提供了巨大的可能性。迄今为止,几乎所有基于结构植物群体的关联映射研究都考察了遗传因素对性状的主效应,但没有处理遗传因素与环境之间的相互作用。在本文中,我们提出了一种混合线性模型的方法学前景,用于使用关联映射设计分析基因型与环境互作效应。首先,我们模拟了数据集,以评估线性混合模型检测互作效应的能力。该模拟基于由 90 个近交系(珍珠粟)和 277 个近交系(玉米)组成的两个关联面板。
基于模拟方法,我们报告了效应大小、环境变异、等位基因频率、性状遗传力和样本量对检测遗传位点主效应和多种互作效应的能力的影响,这些效应涉及这些位点。模型中指定的互作效应包括 SNP 与环境互作、祖先与环境互作、SNP 与祖先互作以及三向互作。该方法最终应用于在两个考虑的面板上进行的田间实验的真实数据集。我们展示了玉米中导致基因型与环境互作的两种互作效应:SNP 与环境互作和祖先与环境互作。这种最后一种互作表明,在种群水平上,根据环境的不同,会有不同的响应。
我们的结果表明,混合模型适用于检测多种互作效应。强烈强调需要比当前植物关联研究中常用的样本更大,以确保严格的模型选择和强大的互作评估。使用祖先互作成分提供了与其他可用方法互补的有价值的信息。