Codeço Claudia Torres, Lele Subhash, Pascual Mercedes, Bouma Menno, Ko Albert I
Oswaldo Cruz Foundation, Avenida Brasil, 4365, Residência Oficial, Rio de Janeiro, RJ 21045-900, Brazil.
J R Soc Interface. 2008 Feb 6;5(19):247-52. doi: 10.1098/rsif.2007.1135.
Ecological systems with threshold behaviour show drastic shifts in population abundance or species diversity in response to small variation in critical parameters. Examples of threshold behaviour arise in resource competition theory, epidemiological theory and environmentally driven population dynamics, to name a few. Although expected from theory, thresholds may be difficult to detect in real datasets due to stochasticity, finite population size and confounding effects that soften the observed shifts and introduce variability in the data. Here, we propose a modelling framework for threshold responses to environmental drivers that allows for a flexible treatment of the transition between regimes, including variation in the sharpness of the transition and the variance of the response. The model assumes two underlying stochastic processes whose mixture determines the system's response. For environmentally driven systems, the mixture is a function of an environmental covariate and the response may exhibit strong nonlinearity. When applied to two datasets for water-borne diseases, the model was able to capture the effect of rainfall on the mean number of cases as well as the variance. A quantitative description of this kind of threshold behaviour is of more general application to predict the response of ecosystems and human health to climate change.
具有阈值行为的生态系统会因关键参数的微小变化而在种群丰度或物种多样性上出现急剧转变。阈值行为的例子出现在资源竞争理论、流行病学理论以及环境驱动的种群动态等领域,仅举几例。尽管从理论上可以预期,但由于随机性、有限的种群规模以及混淆效应会使观测到的转变变得缓和并在数据中引入变异性,所以在实际数据集中可能难以检测到阈值。在此,我们提出一个针对环境驱动因素的阈值响应建模框架,该框架允许灵活处理不同状态之间的转变,包括转变的尖锐程度变化和响应的方差。该模型假设两个潜在的随机过程,它们的混合决定了系统的响应。对于环境驱动的系统,混合是环境协变量的函数,并且响应可能表现出很强的非线性。当应用于两个水传播疾病的数据集时,该模型能够捕捉降雨对病例平均数以及方差的影响。这种阈值行为的定量描述在预测生态系统和人类健康对气候变化的响应方面具有更广泛的应用。