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A new method for estimating the size of small populations from genetic mark-recapture data

机译:一种从遗传标记捕获数据估算小种群规模的新方法

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摘要

The use of non-invasive genetic sampling to estimate population size in elusive or rare species is increasing. The data generated from this sampling differ from traditional mark-recapture data in that individuals may be captured multiple times within a session or there may only be a single sampling event. To accommodate this type of data, we develop a method, named capwire, based on a simple urn model containing individuals of two capture probabilities. The method is evaluated using simulations of an urn and of a more biologically realistic system where individuals occupy space, and display heterogeneous movement and DNA deposition patterns. We also analyse a small number of real data sets. The results indicate that when the data contain capture heterogeneity the method provides estimates with small bias and good coverage, along with high accuracy and precision. Performance is not as consistent when capture rates are homogeneous and when dealing with populations substantially larger than 100. For the few real data sets where N is approximately known, capwire's estimates are very good. We compare capwire's performance to commonly used rarefaction methods and to two heterogeneity estimators in program CAPTURE: M-h(h)-Chao and M-jackknife. No method works best in all situations. While less precise, the Chao estimator is very robust. We also examine how large samples should be to achieve a given level of accuracy using capwire. We conclude that capwire provides an improved way to estimate N for some DNA-based data sets.
机译:越来越多地使用非侵入性基因抽样来估计难以捉摸或稀有物种的种群数量。从这种采样生成的数据与传统的标记重获数据不同,在一个会话中可能会多次捕获个人,或者可能只有一个采样事件。为了容纳这种类型的数据,我们基于包含两个捕获概率的个体的简单缸模型,开发了一种名为capwire的方法。该方法是使用骨灰盒和更具生物现实性的系统(其中个人占据空间并显示异质运动和DNA沉积模式)的模拟进行评估的。我们还分析了少量的真实数据集。结果表明,当数据包含捕获异质性时,该方法提供的估计值偏差小,覆盖范围好,并且具有较高的准确性和精度。当捕获率是同质的并且处理人口数量大于100的种群时,性能就不太稳定。对于少数几个已知N的实际数据集,capwire的估计非常好。我们将capwire的性能与常用的稀疏方法以及程序CAPTURE中的两个异质性估计量进行了比较:M-h(h)-Chao和M-折刀。没有一种方法在所有情况下都效果最佳。尽管不那么精确,但Chao估计量却非常可靠。我们还检查了使用capwire达到给定精度水平应有多少样本。我们得出结论,对于一些基于DNA的数据集,capwire提供了一种改进的估算N的方法。

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