Department of Forest Resources and Environmental Conservation, Virginia Polytechnic Institute and State University, Blacksburg, Virginia 24061-0001, USA.
G3 (Bethesda). 2012 Sep;2(9):1085-93. doi: 10.1534/g3.112.002733. Epub 2012 Sep 1.
Climate is the primary driver of the distribution of tree species worldwide, and the potential for adaptive evolution will be an important factor determining the response of forests to anthropogenic climate change. Although association mapping has the potential to improve our understanding of the genomic underpinnings of climatically relevant traits, the utility of adaptive polymorphisms uncovered by such studies would be greatly enhanced by the development of integrated models that account for the phenotypic effects of multiple single-nucleotide polymorphisms (SNPs) and their interactions simultaneously. We previously reported the results of association mapping in the widespread conifer Sitka spruce (Picea sitchensis). In the current study we used the recursive partitioning algorithm 'Random Forest' to identify optimized combinations of SNPs to predict adaptive phenotypes. After adjusting for population structure, we were able to explain 37% and 30% of the phenotypic variation, respectively, in two locally adaptive traits--autumn budset timing and cold hardiness. For each trait, the leading five SNPs captured much of the phenotypic variation. To determine the role of epistasis in shaping these phenotypes, we also used a novel approach to quantify the strength and direction of pairwise interactions between SNPs and found such interactions to be common. Our results demonstrate the power of Random Forest to identify subsets of markers that are most important to climatic adaptation, and suggest that interactions among these loci may be widespread.
气候是全球树种分布的主要驱动因素,而适应进化的潜力将是决定森林对人为气候变化反应的一个重要因素。虽然关联作图有可能增进我们对与气候相关特征的基因组基础的理解,但通过同时考虑多个单核苷酸多态性(SNP)及其相互作用的表型效应,开发综合模型将极大地增强此类研究所揭示的适应性多态性的效用。我们之前报告了广泛分布的针叶树——西加云杉(Picea sitchensis)的关联作图研究结果。在当前研究中,我们使用递归分区算法“随机森林”来识别 SNP 的最佳组合,以预测适应性表型。在调整了种群结构后,我们分别能够解释两个局部适应性特征——秋季芽形成时间和抗寒性的 37%和 30%的表型变异。对于每个特征,前五个 SNP 捕获了大部分表型变异。为了确定上位性在塑造这些表型中的作用,我们还使用了一种新方法来量化 SNP 之间的相互作用的强度和方向,发现这种相互作用很常见。我们的结果表明随机森林在识别对气候适应最重要的标记子集方面的强大功能,并表明这些位点之间的相互作用可能很普遍。