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Spatial genetic structure and landscape connectivity in black bears: Investigating the significance of using different land cover datasets and classifications in landscape genetics analyses

机译:黑熊空间遗传结构和景观连通性:研究使用不同陆地数据集的意义及景观遗传学分析中的分类

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摘要

Landscape genetic analyses allow detection of fine‐scale spatial genetic structure (SGS) and quantification of effects of landscape features on gene flow and connectivity. Typically, analyses require generation of resistance surfaces. These surfaces characteristically take the form of a grid with cells that are coded to represent the degree to which landscape or environmental features promote or inhibit animal movement. How accurately resistance surfaces predict association between the landscape and movement is determined in large part by (a) the landscape features used, (b) the resistance values assigned to features, and (c) how accurately resistance surfaces represent landscape permeability. Our objective was to evaluate the performance of resistance surfaces generated using two publicly available land cover datasets that varied in how accurately they represent the actual landscape. We genotyped 365 individuals from a large black bear population (Ursus americanus) in the Northern Lower Peninsula (NLP) of Michigan, USA at 12 microsatellite loci, and evaluated the relationship between gene flow and landscape features using two different land cover datasets. We investigated the relative importance of land cover classification and accuracy on landscape resistance model performance. We detected local spatial genetic structure in Michigan's NLP black bears and found roads and land cover were significantly correlated with genetic distance. We observed similarities in model performance when different land cover datasets were used despite 21% dissimilarity in classification between the two land cover datasets. However, we did find the performance of land cover models to predict genetic distance was dependent on the way the land cover was defined. Models in which land cover was finely defined (i.e., eight land cover classes) outperformed models where land cover was defined more coarsely (i.e., habitaton‐habitat or foreston‐forest). Our results show that landscape genetic researchers should carefully consider how land cover classification changes inference in landscape genetic studies.
机译:景观遗传遗传学分析允许检测微尺度空间遗传结构(SGS)和景观特征对基因流动和连接的影响。通常,分析需要产生电阻表面。这些表面特征性地采用与编码的细胞的网格形式,以表示景观或环境特征促进或抑制动物运动的程度。精确的电阻表面预测景观和移动之间的关联是大部分确定的(a)所使用的景观特征,(b)分配给特征的电阻值,(c)如何准确阻力表面代表景观渗透性。我们的目标是评估使用两种公共土地覆盖数据集产生的阻力表面的性能,这些数据集多种多样,它们如何准确地代表实际景观。我们在美国密歇根州密歇根州密歇根州的北部半岛(NLP)中的大型黑熊人口(Ursus Masersus)的基因365个个体,并评估了使用两个不同的陆地覆盖数据集的基因流动和景观特征之间的关系。我们调查了土地覆盖分类和准确性对景观阻力模型性能的相对重要性。我们在密歇根州的NLP黑熊中检测到局部空间遗传结构,发现道路和陆地覆盖与遗传距离显着相关。我们观察到在使用不同的陆地覆盖数据集时,在使用不同的陆地覆盖数据集时,在两个陆地覆盖数据集之间的分类中不同,因此使用了模型性能的相似之处。但是,我们确实发现陆地覆盖模型的性能预测遗传距离取决于陆地覆盖所定义的方式。陆地覆盖的模型是精细定义的(即,八个陆地覆盖类别)优于陆地覆盖的型号更加粗糙(即,栖息地/非栖息地或森林/非森林)。我们的研究结果表明,景观遗传遗传学研究人员应仔细考虑土地覆盖分类如何改变景观遗传学研究的推断。

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