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首页> 外文期刊>Evolution: International Journal of Organic Evolution >INTEGRATING LANDSCAPE GENOMICS AND SPATIALLY EXPLICIT APPROACHES TO DETECT LOCI UNDER SELECTION IN CLINAL POPULATIONS
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INTEGRATING LANDSCAPE GENOMICS AND SPATIALLY EXPLICIT APPROACHES TO DETECT LOCI UNDER SELECTION IN CLINAL POPULATIONS

机译:整合景观基因组学和空间显式方法,以选择当地人中的当地人

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摘要

Uncovering the genetic basis of adaptation hinges on the ability to detect loci under selection. However, population genomics outlier approaches to detect selected loci may be inappropriate for clinal populations or those with unclear population structure because they require that individuals be clustered into populations. An alternate approach, landscape genomics, uses individualbased approaches to detect loci under selection and reveal potential environmental drivers of selection. We tested four landscape genomics methods on a simulated clinal population to determine their effectiveness at identifying a locus under varying selection strengths along an environmental gradient.We found all methods produced very low type I error rates across all selection strengths, but elevated type II error rates under "weak" selection. We then applied these methods to an AFLP genome scan of an alpine plant, Campanula barbata, and identified five highly supported candidate loci associated with precipitation variables. These loci also showed spatial autocorrelation and cline patterns indicative of selection along a precipitation gradient. Our results suggest that landscape genomics in combination with other spatial analyses provides a powerful approach for identifying loci potentially under selection and explaining spatially complex interactions between species and their environment.
机译:揭示适应性的遗传基础取决于检测选择位点的能力。但是,用于检测选定基因座的人群基因组异常方法可能不适用于临床人群或人群结构不明确的人群,因为它们要求将个体聚集到人群中。景观基因组学是一种替代方法,它使用基于个体的方法来检测选择下的基因座并揭示选择的潜在环境驱动因素。我们在模拟的滨海种群上测试了四种景观基因组学方法,以确定它们在沿着环境梯度变化的选择强度下识别基因座的有效性,我们发现所有方法在所有选择强度下产生的I型错误率都非常低,但是II型错误率却升高了在“弱”选择下。然后,我们将这些方法应用于高山植物Campanula barbata的AFLP基因组扫描,并确定了五个与降水变量相关的高度支持的候选基因座。这些位点还显示出空间自相关和谱线模式,指示沿降水梯度的选择。我们的结果表明,景观基因组学与其他空间分析相结合提供了一种强大的方法,可用于识别可能处于选择状态的基因座并解释物种与环境之间空间复杂的相互作用。

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