Wildlife Ecology Group, Institute of Natural Resources, Massey University, Palmerston North, Private Bag 11 222, New Zealand.
Conserv Biol. 2012 Feb;26(1):97-106. doi: 10.1111/j.1523-1739.2011.01794.x. Epub 2011 Nov 18.
We devised a novel approach to model reintroduced populations whereby demographic data collected from multiple sites are integrated into a Bayesian hierarchical model. Integrating data from multiple reintroductions allows more precise population-growth projections to be made, especially for populations for which data are sparse, and allows projections that account for random site-to-site variation to be made before new reintroductions are attempted. We used data from reintroductions of the North Island Robin (Petroica longipes), an endemic New Zealand passerine, to 10 sites where non-native mammalian predators are controlled. A comparison of candidate models that we based on deviance information criterion showed that rat-tracking rate (an index of rat density) was a useful predictor of robin fecundity and adult female survival, that landscape connectivity and a binary measure of whether sites were on a peninsula were useful predictors of apparent juvenile survival (probably due to differential dispersal away from reintroduction sites), and that there was unexplained random variation among sites in all demographic rates. We used the two best supported models to estimate the finite rate of increase (λ) for populations at each of the 10 sites, and for a proposed reintroduction site, under different levels of rat control. Only three of the reintroduction sites had λ distributions completely >1 for either model. At two sites, λ was expected to be >1 if rat-tracking rates were <5%. At the other five reintroduction sites, λ was predicted to be close to 1, and it was unclear whether growth was expected. Predictions of λ for the proposed reintroduction site were less precise than for other sites because distributions incorporated the full range of site-to-site random variation in vital rates. Our methods can be applied to any species for which postrelease data on demographic rates are available and potentially can be extended to model multiple species simultaneously.
我们设计了一种新方法来模拟重新引入的种群,即将从多个地点收集的人口统计数据整合到贝叶斯层次模型中。整合来自多个重新引入的数据可以更精确地进行种群增长预测,尤其是对于数据稀疏的种群,并且可以在尝试新的重新引入之前进行考虑到站点间随机变化的预测。我们使用了来自新西兰特有雀形目鸟类北岛知更鸟(Petroica longipes)的 10 个重新引入地点的数据,这些地点的非本地哺乳动物捕食者受到控制。我们根据偏差信息准则比较了候选模型,结果表明,鼠类追踪率(鼠密度的一个指标)是罗宾鸟繁殖力和成年雌性存活率的有用预测因子,景观连通性和一个二元指标(表明地点是否在半岛上)是明显幼鸟存活率的有用预测因子(可能是由于从重新引入地点的不同扩散),并且所有人口统计数据率都存在站点间无法解释的随机变异。我们使用两种最受支持的模型来估计每个 10 个地点的种群的有限增长率(λ),以及在不同的灭鼠水平下的拟议重新引入地点的 λ。只有三个重新引入的地点在两个模型中 λ 的分布完全大于 1。在两个地点,如果鼠类追踪率<5%,则 λ 预计将大于 1。在其他五个重新引入的地点,λ 预计接近 1,是否存在增长尚不清楚。对于拟议的重新引入地点的 λ 预测不如其他地点准确,因为分布包含了所有地点间的关键率的随机变化。我们的方法可应用于任何具有可用的人口统计数据的物种,并且可以扩展到同时模拟多个物种。