sandwrm: an R package for estimating Wright's neighborhood size and species-level genetic diversity.

Zachary B Hancock, Gideon S Bradburd
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Abstract

In most natural populations, individuals in close proximity are more related on average than those at greater distances; this pattern gives rise to geographic population genetic structure. Despite extensive theoretical work on spatial population genetics, few empirical methods exist to estimate the components of theoretical models of genetic relatedness in continuous space. One classic model of relatedness in continuous space is the Wright-Malécot model, which predicts that the probability of identity-by-descent decays as a function of geographic distances. The shape of this decay curve is dictated by the dynamics of local dispersal and mating, as well as population density. This model can be reformulated to describe the probability of identity-by-state, in which case it decays to an asymptote, the value of which is determined by the historical demography of the population. Collectively, these features can be modeled in a likelihood-based framework to estimate neighborhood size and long-term diversity from pairwise genetic and geographic distance. In this article, we introduce the R package sandwrm Spatial Analysis of Neighborhood size and Diversity using WRight-Malécot), which takes a Bayesian approach to estimate key parameters of populations that are both dispersal-limited and distributed continuously across a landscape.

sandwrm:一个估算Wright's邻域大小和物种水平遗传多样性的R包。
在大多数自然种群中,距离较近的个体平均比距离较远的个体更有亲缘关系;这种模式产生了地理种群遗传结构。尽管空间群体遗传学的理论研究非常广泛,但很少有实证方法来估计连续空间遗传亲缘性理论模型的组成部分。连续空间中一个经典的亲缘关系模型是wright - malsamicot模型,该模型预测,血统识别的概率随着地理距离的变化而衰减。这条衰减曲线的形状是由当地扩散和交配的动态以及种群密度决定的。这个模型可以被重新表述为描述按州身份的概率,在这种情况下,它衰减到渐近线,其值由人口的历史人口统计决定。总的来说,这些特征可以在基于似然的框架中建模,以估计两两遗传和地理距离的邻域大小和长期多样性。在本文中,我们介绍了R包sandwrm邻域大小和多样性的空间分析(使用wright - malsamacom),它采用贝叶斯方法来估计在景观中分散有限和连续分布的种群的关键参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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