Kierepka E M, Latch E K
Department of Biological Sciences, University of Wisconsin-Milwaukee, Milwaukee, WI, USA.
Heredity (Edinb). 2016 Jan;116(1):33-43. doi: 10.1038/hdy.2015.67. Epub 2015 Aug 5.
Landscape genetics is a powerful tool for conservation because it identifies landscape features that are important for maintaining genetic connectivity between populations within heterogeneous landscapes. However, using landscape genetics in poorly understood species presents a number of challenges, namely, limited life history information for the focal population and spatially biased sampling. Both obstacles can reduce power in statistics, particularly in individual-based studies. In this study, we genotyped 233 American badgers in Wisconsin at 12 microsatellite loci to identify alternative statistical approaches that can be applied to poorly understood species in an individual-based framework. Badgers are protected in Wisconsin owing to an overall lack in life history information, so our study utilized partial redundancy analysis (RDA) and spatially lagged regressions to quantify how three landscape factors (Wisconsin River, Ecoregions and land cover) impacted gene flow. We also performed simulations to quantify errors created by spatially biased sampling. Statistical analyses first found that geographic distance was an important influence on gene flow, mainly driven by fine-scale positive spatial autocorrelations. After controlling for geographic distance, both RDA and regressions found that Wisconsin River and Agriculture were correlated with genetic differentiation. However, only Agriculture had an acceptable type I error rate (3-5%) to be considered biologically relevant. Collectively, this study highlights the benefits of combining robust statistics and error assessment via simulations and provides a method for hypothesis testing in individual-based landscape genetics.
景观遗传学是一种强大的保护工具,因为它能识别出对于在异质景观中维持种群间遗传连通性至关重要的景观特征。然而,在对了解甚少的物种中使用景观遗传学面临诸多挑战,即目标种群的生活史信息有限以及空间采样偏差。这两个障碍都会降低统计效力,尤其是在基于个体的研究中。在本研究中,我们对威斯康星州的233只美洲獾在12个微卫星位点进行了基因分型,以确定可应用于基于个体框架下对了解甚少的物种的替代统计方法。由于总体缺乏生活史信息,獾在威斯康星州受到保护,因此我们的研究利用偏冗余分析(RDA)和空间滞后回归来量化三种景观因素(威斯康星河、生态区和土地覆盖)如何影响基因流。我们还进行了模拟以量化由空间采样偏差产生的误差。统计分析首先发现地理距离对基因流有重要影响,主要由精细尺度的正空间自相关驱动。在控制地理距离后,RDA和回归分析均发现威斯康星河和农业与遗传分化相关。然而,只有农业具有可接受的I型错误率(3 - 5%),可被认为具有生物学相关性。总体而言,本研究突出了通过模拟结合稳健统计和误差评估的益处,并提供了一种在基于个体的景观遗传学中进行假设检验的方法。