Bekkevold Dorte, Höjesjö Johan, Nielsen Einar Eg, Aldvén David, Als Thomas Damm, Sodeland Marte, Kent Matthew Peter, Lien Sigbjørn, Hansen Michael Møller
National Institute of Aquatic Resources Technical University of Denmark Silkeborg Denmark.
Department of Biological & Environmental Sciences University of Gothenburg Gothenburg Sweden.
Evol Appl. 2019 Nov 1;13(2):400-416. doi: 10.1111/eva.12877. eCollection 2020 Feb.
The salmonid fish Brown trout is iconic as a model for the application of conservation genetics to understand and manage local interspecific variation. However, there is still scant information about relationships between local and large-scale population structure, and to what extent geographical and environmental variables are associated with barriers to gene flow. We used information from 3,782 mapped SNPs developed for the present study and conducted outlier tests and gene-environment association (GEA) analyses in order to examine drivers of population structure. Analyses comprised >2,600 fish from 72 riverine populations spanning a central part of the species' distribution in northern Europe. We report hitherto unidentified genetic breaks in population structure, indicating strong barriers to gene flow. GEA loci were widely spread across genomic regions and showed correlations with climatic, abiotic and geographical parameters. In some cases, individual loci showed consistent GEA across the geographical regions Britain, Europe and Scandinavia. In other cases, correlations were observed only within a sub-set of regions, suggesting that locus-specific variation was associated with local processes. A paired-population sampling design allowed us to evaluate sampling effects on detection of outlier loci and GEA. Two widely applied methods for outlier detection ( and ) showed low overlap in loci identified as statistical outliers across sub-sets of data. Two GEA analytical approaches (LFMM and RDA) showed good correspondence concerning loci associated with specific variables, but LFMM identified five times more statistically significant associations than RDA. Our results emphasize the importance of carefully considering the statistical methods applied for the hypotheses being tested in outlier analysis. Sampling design may have lower impact on results if the objective is to identify GEA loci and their population distribution. Our study provides new insights into trout populations, and results have direct management implications in serving as a tool for identification of conservation units.
鲑科鱼类褐鳟作为保护遗传学应用的模型,用以理解和管理当地种间变异,具有代表性。然而,关于当地种群结构与大规模种群结构之间的关系,以及地理和环境变量在多大程度上与基因流动障碍相关,仍然缺乏相关信息。我们利用为本研究开发的3782个定位单核苷酸多态性(SNP)的信息,进行了异常值检验和基因-环境关联(GEA)分析,以研究种群结构的驱动因素。分析包括来自72个河流种群的2600多条鱼,这些种群分布在该物种在北欧分布的中部地区。我们报告了迄今为止在种群结构中未被识别的遗传断点,这表明存在强大的基因流动障碍。GEA位点广泛分布于基因组区域,并与气候、非生物和地理参数相关。在某些情况下,单个位点在英国、欧洲和斯堪的纳维亚半岛等地理区域显示出一致的GEA。在其他情况下,仅在部分区域内观察到相关性,这表明位点特异性变异与局部过程相关。配对种群抽样设计使我们能够评估抽样对异常值位点检测和GEA的影响。两种广泛应用的异常值检测方法在跨数据子集识别为统计异常值的位点上显示出低重叠。两种GEA分析方法(LFMM和RDA)在与特定变量相关的位点上显示出良好的一致性,但LFMM识别出的统计显著关联比RDA多五倍。我们的结果强调了在异常值分析中仔细考虑应用于所测试假设的统计方法的重要性。如果目标是识别GEA位点及其种群分布,抽样设计对结果的影响可能较小。我们的研究为鳟鱼种群提供了新的见解,其结果作为识别保护单元的工具具有直接的管理意义。