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Using genetic data to estimate diffusion rates in heterogeneous landscapes

机译:利用遗传数据估算异质景观中的扩散速率

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摘要

Having a precise knowledge of the dispersal ability of a population in a heterogeneous environment is of critical importance in agroecology and conservation biology as it can provide management tools to limit the effects of pests or to increase the survival of endangered species. In this paper, we propose a mechanistic-statistical method to estimate space-dependent diffusion parameters of spatially-explicit models based on stochastic differential equations, using genetic data. Dividing the total population into subpopulations corresponding to different habitat patches with known allele frequencies, the expected proportions of individuals from each subpopulation at each position is computed by solving a system of reaction-diffusion equations. Modelling the capture and genotyping of the individuals with a statistical approach, we derive a numerically tractable formula for the likelihood function associated with the diffusion parameters. In a simulated environment made of three types of regions, each associated with a different diffusion coefficient, we successfully estimate the diffusion parameters with a maximum-likelihood approach. Although higher genetic differentiation among subpopulations leads to more accurate estimations, once a certain level of differentiation has been reached, the finite size of the genotyped population becomes the limiting factor for accurate estimation.
机译:准确了解种群在异质环境中的扩散能力在农业生态学和保护生物学中至关重要,因为它可以提供管理工具以限制有害生物的影响或增加濒危物种的生存。在本文中,我们提出了一种机械统计方法,利用遗传数据,基于随机微分方程估计空间显式模型的空间相关扩散参数。将总种群划分为对应于具有已知等位基因频率的不同栖息地斑块的亚群,通过求解反应扩散方程组,计算每个位置上每个亚群的个体预期比例。用统计方法对个体的捕获和基因分型进行建模,我们得出了与扩散参数相关的似然函数的易于计算的公式。在由三种类型的区域组成的模拟环境中,每种类型的区域都具有不同的扩散系数,我们使用最大似然法成功地估计了扩散参数。尽管亚群之间较高的遗传分化导致更准确的估计,但一旦达到一定的分化水平,基因型种群的有限大小便成为进行精确估计的限制因素。

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