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A spatial analysis method (SAM) to detect candidate loci for selection: towards a landscape genomics approach to adaptation

机译:一种用于选择候选基因座的空间分析方法(SAM):面向景观基因组学的适应方法

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The detection of adaptive loci in the genome is essential as it gives the possibility of understanding what proportion of a genome or which genes are being shaped by natural selection. Several statistical methods have been developed which make use of molecular data to reveal genomic regions under selection. In this paper, we propose an approach to address this issue from the environmental angle, in order to complement results obtained by population genetics. We introduce a new method to detect signatures of natural selection based on the application of spatial analysis, with the contribution of geographical information systems (GIS), environmental variables and molecular data. Multiple univariate logistic regressions were carried out to test for association between allelic frequencies at marker loci and environmental variables. This spatial analysis method (SAM) is similar to current population genomics approaches since it is designed to scan hundreds of markers to assess a putative association with hundreds of environmental variables. Here, by application to studies of pine weevils and breeds of sheep we demonstrate a strong correspondence between SAM results and those obtained using population genetics approaches. Statistical signals were found that associate loci with environmental parameters, and these loci behave atypically in comparison with the theoretical distribution for neutral loci. The contribution of this new tool is not only to permit the identification of loci under selection but also to establish hypotheses about ecological factors that could exert the selection pressure responsible. In the future, such an approach may accelerate the process of hunting for functional genes at the population level.
机译:检测基因组中的适应性基因座是必不可少的,因为它使您有可能了解基因组的比例或通过自然选择形成的基因。已经开发了几种统计方法,这些方法利用分子数据来揭示选择中的基因组区域。在本文中,我们提出一种从环境角度解决此问题的方法,以补充通过群体遗传学获得的结果。在空间分析的基础上,结合地理信息系统(GIS),环境变量和分子数据,我们引入了一种检测自然选择特征的新方法。进行了多个单变量逻辑回归,以检验标记位点的等位基因频率与环境变量之间的关联。这种空间分析方法(SAM)与当前的人口基因组学方法相似,因为它旨在扫描数百个标记以评估与数百个环境变量的假定关联。在这里,通过对松树象鼻虫和绵羊品种的研究应用,我们证明了SAM结果与使用群体遗传学方法获得的结果之间有很强的对应性。发现统计信号使基因座与环境参数相关联,并且与中性基因座的理论分布相比,这些基因座表现出非典型的行为。这个新工具的贡献不仅在于可以识别选择中的基因座,而且可以建立有关生态因素的假设,这些假设可能会施加选择压力。将来,这种方法可能会加快在人群水平上寻找功能基因的过程。

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