University of Georgia, 203 D.W. Brooks Drive, Athens, Georgia, 30602, USA.
U.S. Geological Survey, Forest and Rangeland Ecosystem Science Center, 3200 SW Jefferson Way, Corvallis, Oregon, 97331, USA.
Ecology. 2019 Jan;100(1):e02538. doi: 10.1002/ecy.2538. Epub 2018 Nov 29.
Population viability analysis (PVA) uses concepts from theoretical ecology to provide a powerful tool for quantitative estimates of population dynamics and extinction risks. However, conventional statistical PVA requires long-term data from every population of interest, whereas many species of concern exist in multiple isolated populations that are only monitored occasionally. We present a hierarchical multi-population viability analysis model that increases inference power from sparse data by sharing information among populations to assess extinction risks while accounting for incomplete detection and sampling biases with explicit observation and sampling sub-models. We present a case study in which we customized this model for historical population monitoring data (1985-2015) from federally threatened Lahontan cutthroat trout populations in the Great Basin, USA. Data were counts of fish captured during backpack electrofishing surveys from locations associated with 155 isolated populations. Some surveys (25%) included multi-pass removal sampling, which provided valuable information about capture efficiency. GIS and remote sensing were used to estimate August stream temperatures, peak flows, and riparian vegetation condition in each population each year. Field data were used to derive an annual index of nonnative trout densities. Results indicated that population growth rates were higher in colder streams and that nonnative trout reduced carrying capacities of native trout. Extinction risks increased with more environmental stochasticity and were also related to population extent, water temperatures, and nonnative densities. We developed a graphical user interface to interact with the fitted model results and to simulate future habitat scenarios and management actions to assess their influence on extinction risks in each population. Hierarchical multi-population viability analysis bridges the gap between site-level field observations and population-level processes, making effective use of existing datasets to support management decisions with robust estimates of population dynamics, extinction risks, and uncertainties.
种群生存力分析 (PVA) 使用理论生态学概念为种群动态和灭绝风险的定量估计提供了强有力的工具。然而,传统的统计 PVA 需要从每个感兴趣的种群中获得长期数据,而许多受关注的物种存在于多个孤立的种群中,这些种群只是偶尔监测。我们提出了一种分层多种群生存力分析模型,通过在种群之间共享信息来增加从稀疏数据中推断的能力,以评估灭绝风险,同时通过显式观测和采样子模型来考虑不完全检测和采样偏差。我们提出了一个案例研究,我们针对美国大盆地联邦受威胁的拉洪坦小口脂鲤种群的历史种群监测数据(1985-2015 年)定制了这个模型。数据是从与 155 个孤立种群相关的位置在背包电鱼调查中捕获的鱼类数量。一些调查(25%)包括多轮移除采样,这提供了有关捕获效率的宝贵信息。GIS 和遥感用于估算每年每个种群的 8 月溪流温度、峰值流量和河岸植被状况。现场数据用于推导出每年非本地鳟鱼密度的指数。结果表明,在较冷的溪流中,种群增长率更高,而非本地鳟鱼降低了本地鳟鱼的承载能力。灭绝风险随着环境随机性的增加而增加,也与种群范围、水温和非本地密度有关。我们开发了一个图形用户界面,用于与拟合模型结果交互,并模拟未来的栖息地情景和管理行动,以评估它们对每个种群灭绝风险的影响。分层多种群生存力分析弥合了现场观测和种群水平过程之间的差距,有效地利用现有数据集,通过对种群动态、灭绝风险和不确定性的稳健估计来支持管理决策。