Patterson Gilia, Goodfellow Claire K, Ting Nelson, Kern Andrew D, Ralph Peter L
Institute of Ecology and Evolution, University of Oregon, Eugene, OR.
Department of Fisheries, Wildlife, and Conservation Sciences, Oregon State University, Corvallis, OR.
bioRxiv. 2025 Jun 3:2025.05.31.656892. doi: 10.1101/2025.05.31.656892.
Estimating the size of wild populations is a critical priority for ecologists and conservation biologists, but tools to do so are often labor intensive and expensive. A promising set of newer approaches are based on genetic data, which can be cheaper to obtain and less invasive than information from more direct observation. One of these approaches is close-kin mark-recapture (CKMR), a type of method that uses genetic data to identify kin pairs and estimates population size from these pairs. Although CKMR methods are promising, a major limitation to using them more broadly is a lack of CKMR models that can deal with spatial heterogeneity both in population density and sample effort. We introduce a simulation-based approach to CKMR that uses spatially explicit individual-based simulation in concert with a deep convolutional neural network to estimate population sizes. Using extensive simulation, we show that our method, CKMRnn, is highly accurate, even in the face of spatial heterogeneity, and demonstrate that it can account for potential confounders such as unknown population histories. Finally, to demonstrate the accuracy of our method in an empirical system, we apply CKMRnn to data from a Ugandan elephant population, and show that point estimates from our method recapitulate those from traditional estimators but that the confidence interval on our estimator is reduced by approximately 30%.
估计野生种群的规模是生态学家和保护生物学家的一项关键优先任务,但用于此目的的工具往往需要大量人力且成本高昂。一组有前景的新方法基于遗传数据,与来自更直接观察的信息相比,获取遗传数据成本更低且侵入性更小。其中一种方法是近亲标记重捕法(CKMR),这是一种利用遗传数据识别亲属对并从这些对中估计种群规模的方法。尽管CKMR方法很有前景,但更广泛应用它们的一个主要限制是缺乏能够处理种群密度和样本采集努力方面空间异质性的CKMR模型。我们引入了一种基于模拟的CKMR方法,该方法将空间明确的个体模拟与深度卷积神经网络相结合来估计种群规模。通过广泛的模拟,我们表明我们的方法CKMRnn即使面对空间异质性也具有高度准确性,并证明它可以考虑诸如未知种群历史等潜在混杂因素。最后,为了在一个实证系统中证明我们方法的准确性,我们将CKMRnn应用于乌干达大象种群的数据,并表明我们方法的点估计与传统估计方法的结果一致,但我们估计方法的置信区间缩小了约30%。