Borrell James S, Zohren Jasmin, Nichols Richard A, Buggs Richard J A
Jodrell Laboratory Royal Botanic Gardens, Kew Surrey UK.
Sex Chromosome Biology Lab The Francis Crick Institute London UK.
Evol Appl. 2019 Nov 24;13(1):161-175. doi: 10.1111/eva.12883. eCollection 2020 Jan.
When populations of a rare species are small, isolated and declining under climate change, some populations may become locally maladapted. Detecting this maladaptation may allow effective rapid conservation interventions, even if based on incomplete knowledge. Population maladaptation may be estimated by finding genome-environment associations (GEA) between allele frequencies and environmental variables across a local species range, and identifying populations whose allele frequencies do not fit with these trends. We can then design assisted gene flow strategies for maladapted populations, to adjust their allele frequencies, entailing lower levels of intervention than with undirected conservation action. Here, we investigate this strategy in Scottish populations of the montane plant dwarf birch (). In genome-wide restriction site-associated single nucleotide polymorphism (SNP) data, we found 267 significant associations between SNP loci and environmental variables. We ranked populations by maladaptation estimated using allele frequency deviation from the general trends at these loci; this gave a different prioritization for conservation action than the Shapely Index, which seeks to preserve rare neutral variation. Populations estimated to be maladapted in their allele frequencies at loci associated with annual mean temperature were found to have reduced catkin production. Using an environmental niche modelling (ENM) approach, we found annual mean temperature (35%), and mean diurnal range (15%), to be important predictors of the dwarf birch distribution. Intriguingly, there was a significant correlation between the number of loci associated with each environmental variable in the GEA and the importance of that variable in the ENM. Together, these results suggest that the same environmental variables determine both adaptive genetic variation and species range in Scottish dwarf birch. We suggest an assisted gene flow strategy that aims to maximize the local adaptation of dwarf birch populations under climate change by matching allele frequencies to current and future environments.
当珍稀物种的种群数量稀少、相互隔离且在气候变化下不断减少时,一些种群可能会出现局部适应不良的情况。即便基于不完整的知识来检测这种适应不良,也可能有助于采取有效的快速保护措施。通过在当地物种分布范围内找到等位基因频率与环境变量之间的基因组-环境关联(GEA),并识别出其等位基因频率不符合这些趋势的种群,就可以估算种群的适应不良情况。然后,我们可以为适应不良的种群设计辅助基因流动策略,以调整其等位基因频率,与无针对性的保护行动相比,所需的干预水平更低。在此,我们在山地植物矮桦(Betula nana)的苏格兰种群中研究了这一策略。在全基因组限制性位点相关单核苷酸多态性(SNP)数据中,我们发现SNP位点与环境变量之间存在267个显著关联。我们根据等位基因频率偏离这些位点的总体趋势所估算的适应不良程度对种群进行排名;这给出了与旨在保护罕见中性变异的沙普利指数不同的保护行动优先级。在与年平均温度相关的位点上,等位基因频率被估计为适应不良的种群,其柔荑花序产量有所降低。使用环境生态位建模(ENM)方法,我们发现年平均温度(35%)和平均昼夜温差(15%)是矮桦分布的重要预测因子。有趣的是,GEA中与每个环境变量相关的位点数量与该变量在ENM中的重要性之间存在显著相关性。这些结果共同表明,相同的环境变量决定了苏格兰矮桦的适应性遗传变异和物种分布范围。我们提出了一种辅助基因流动策略,旨在通过使等位基因频率与当前和未来环境相匹配,在气候变化下最大限度地提高矮桦种群的局部适应性。