Gotelli Nicholas J, Ellison Aaron M
Department of Biology, University of Vermont, Burlington, Vermont 05405, USA.
Ecol Appl. 2006 Feb;16(1):51-61. doi: 10.1890/04-0479.
Matrix population growth models are standard tools for forecasting population change and for managing rare species, but they are less useful for predicting extinction risk in the face of changing environmental conditions. Deterministic models provide point estimates of lambda, the finite rate of increase, as well as measures of matrix sensitivity and elasticity. Stationary matrix models can be used to estimate extinction risk in a variable environment, but they assume that the matrix elements are randomly sampled from a stationary (i.e., non-changing) distribution. Here we outline a method for using nonstationary matrix models to construct realistic forecasts of population fluctuation in changing environments. Our method requires three pieces of data: (1) field estimates of transition matrix elements, (2) experimental data on the demographic responses of populations to altered environmental conditions, and (3) forecasting data on environmental drivers. These three pieces of data are combined to generate a series of sequential transition matrices that emulate a pattern of long-term change in environmental drivers. Realistic estimates of population persistence and extinction risk can be derived from stochastic permutations of such a model. We illustrate the steps of this analysis with data from two populations of Sarracenia purpurea growing in northern New England. Sarracenia purpurea is a perennial carnivorous plant that is potentially at risk of local extinction because of increased nitrogen deposition. Long-term monitoring records or models of environmental change can be used to generate time series of driver variables under different scenarios of changing environments. Both manipulative and natural experiments can be used to construct a linking function that describes how matrix parameters change as a function of the environmental driver. This synthetic modeling approach provides quantitative estimates of extinction probability that have an explicit mechanistic basis.
矩阵种群增长模型是预测种群变化和管理珍稀物种的标准工具,但在面对不断变化的环境条件时,它们在预测灭绝风险方面的作用较小。确定性模型提供了有限增长率λ的点估计,以及矩阵敏感性和弹性的度量。静态矩阵模型可用于估计可变环境中的灭绝风险,但它们假设矩阵元素是从静态(即不变)分布中随机抽样的。在这里,我们概述了一种使用非静态矩阵模型来构建不断变化环境中种群波动的现实预测的方法。我们的方法需要三类数据:(1)转移矩阵元素的实地估计;(2)种群对环境条件变化的人口统计学响应的实验数据;(3)环境驱动因素的预测数据。这三类数据结合起来生成一系列连续的转移矩阵,以模拟环境驱动因素的长期变化模式。可以从此类模型的随机排列中得出种群持续性和灭绝风险的现实估计。我们用生长在新英格兰北部的两个紫瓶子草种群的数据说明了这一分析步骤。紫瓶子草是一种多年生食肉植物,由于氮沉降增加,它可能面临局部灭绝的风险。长期监测记录或环境变化模型可用于生成不同环境变化情景下驱动变量的时间序列。操纵性实验和自然实验都可用于构建一个联系函数,该函数描述矩阵参数如何随环境驱动因素而变化。这种综合建模方法提供了具有明确机制基础的灭绝概率的定量估计。