Faculty of Forestry and Environmental Management, University of New Brunswick, PO Box 44000, 28 Dineen Drive, Fredericton, NB, E3B 5A3, Canada.
Mol Ecol. 2013 Dec;22(23):5877-89. doi: 10.1111/mec.12546. Epub 2013 Nov 7.
One of the most important drivers of local adaptation for forest trees is climate. Coupled to these patterns, however, are human-induced disturbances through habitat modification and pollution. The confounded effects of climate and disturbance have rarely been investigated with regard to selective pressure on forest trees. Here, we have developed and used a population genetic approach to search for signals of selection within a set of 36 candidate genes chosen for their putative effects on adaptation to climate and human-induced air pollution within five populations of red spruce (Picea rubens Sarg.), distributed across its natural range and air pollution gradient in eastern North America. Specifically, we used FST outlier and environmental correlation analyses to highlight a set of seven single nucleotide polymorphisms (SNPs) that were overly correlated with climate and levels of sulphate pollution after correcting for the confounding effects of population history. Use of three age cohorts within each population allowed the effects of climate and pollution to be separated temporally, as climate-related SNPs (n = 7) showed the strongest signals in the oldest cohort, while pollution-related SNPs (n = 3) showed the strongest signals in the youngest cohorts. These results highlight the usefulness of population genetic scans for the identification of putatively nonneutral evolution within genomes of nonmodel forest tree species, but also highlight the need for the development and application of robust methodologies to deal with the inherent multivariate nature of the genetic and ecological data used in these types of analyses.
森林树木适应的最重要驱动因素之一是气候。然而,与这些模式相关的还有人类通过栖息地改造和污染引起的干扰。对于森林树木的选择压力,气候和干扰的复杂影响很少被调查。在这里,我们开发并使用了一种群体遗传学方法,在北美东部的五个红云杉(Picea rubens Sarg.)种群中,选择了一组 36 个候选基因,对这些基因进行了搜索,这些候选基因被认为对适应气候和人类引起的空气污染有影响。具体来说,我们使用了 FST 异常值和环境相关性分析,突出了一组七个单核苷酸多态性 (SNP),这些 SNP 与气候和硫酸盐污染水平过度相关,在纠正了种群历史的混杂影响后。在每个种群中使用三个年龄组允许在时间上分离气候和污染的影响,因为与气候相关的 SNP(n=7) 在最年长的队列中显示出最强的信号,而与污染相关的 SNP(n=3) 在最年轻的队列中显示出最强的信号。这些结果突出了群体遗传学扫描在识别非模型森林树种基因组中可能的非中性进化方面的有用性,但也突出了需要开发和应用稳健的方法来处理这些类型分析中遗传和生态数据固有的多变量性质。