Arkansas Conservation and Molecular Ecology Laboratory, Department of Biological Sciences, University of Arkansas, Fayetteville, AR, USA.
University of Arkansas Global Campus, Fayetteville, AR, 72701, USA.
BMC Bioinformatics. 2021 Oct 16;22(1):501. doi: 10.1186/s12859-021-04423-x.
Patterns of multi-locus differentiation (i.e., genomic clines) often extend broadly across hybrid zones and their quantification can help diagnose how species boundaries are shaped by adaptive processes, both intrinsic and extrinsic. In this sense, the transitioning of loci across admixed individuals can be contrasted as a function of the genome-wide trend, in turn allowing an expansion of clinal theory across a much wider array of biodiversity. However, computational tools that serve to interpret and consequently visualize 'genomic clines' are limited, and users must often write custom, relatively complex code to do so.
Here, we introduce the ClineHelpR R-package for visualizing genomic clines and detecting outlier loci using output generated by two popular software packages, bgc and Introgress. ClineHelpR bundles both input generation (i.e., filtering datasets and creating specialized file formats) and output processing (e.g., MCMC thinning and burn-in) with functions that directly facilitate interpretation and hypothesis testing. Tools are also provided for post-hoc analyses that interface with external packages such as ENMeval and RIdeogram.
Our package increases the reproducibility and accessibility of genomic cline methods, thus allowing an expanded user base and promoting these methods as mechanisms to address diverse evolutionary questions in both model and non-model organisms. Furthermore, the ClineHelpR extended functionality can evaluate genomic clines in the context of spatial and environmental features, allowing users to explore underlying processes potentially contributing to the observed patterns and helping facilitate effective conservation management strategies.
多位点分化模式(即基因组渐变群)通常广泛延伸到杂交区,其量化可以帮助诊断物种边界如何受到内在和外在的适应过程的影响。从这个意义上说,混合个体中基因座的转变可以作为全基因组趋势的函数来对比,从而使渐变群理论在更广泛的生物多样性范围内扩展。然而,用于解释和可视化“基因组渐变群”的计算工具是有限的,用户通常必须编写自定义的、相对复杂的代码来实现。
在这里,我们引入了 ClineHelpR R 包,用于可视化基因组渐变群和检测外显子基因座,使用两个流行的软件包 bgc 和 Introgress 生成的输出。ClineHelpR 捆绑了输入生成(即过滤数据集和创建专门的文件格式)和输出处理(例如,MCMC 变薄和预热)功能,这些功能直接促进解释和假设检验。还提供了用于与外部包(如 ENMeval 和 RIdeogram)接口的后分析工具。
我们的软件包提高了基因组渐变群方法的可重复性和可访问性,从而扩大了用户基础,并促进了这些方法作为解决模型和非模型生物中各种进化问题的机制。此外,ClineHelpR 的扩展功能可以在空间和环境特征的背景下评估基因组渐变群,允许用户探索潜在的过程,这些过程可能导致观察到的模式,并有助于促进有效的保护管理策略。