Biology and Geology Department, Rey Juan Carlos University, Tulipán sn., Móstoles, 28933, Spain.
Glob Chang Biol. 2015 Apr;21(4):1422-33. doi: 10.1111/gcb.12655. Epub 2014 Jul 28.
Species distribution models (SDM) are a useful tool for predicting species range shifts in response to global warming. However, they do not explore the mechanisms underlying biological processes, making it difficult to predict shifts outside the environmental gradient where the model was trained. In this study, we combine correlative SDMs and knowledge on physiological limits to provide more robust predictions. The thermal thresholds obtained in growth and survival experiments were used as proxies of the fundamental niches of two foundational marine macrophytes. The geographic projections of these species' distributions obtained using these thresholds and existing SDMs were similar in areas where the species are either absent-rare or frequent and where their potential and realized niches match, reaching consensus predictions. The cold-temperate foundational seaweed Himanthalia elongata was predicted to become extinct at its southern limit in northern Spain in response to global warming, whereas the occupancy of southern-lusitanic Bifurcaria bifurcata was expected to increase. Combined approaches such as this one may also highlight geographic areas where models disagree potentially due to biotic factors. Physiological thresholds alone tended to over-predict species prevalence, as they cannot identify absences in climatic conditions within the species' range of physiological tolerance or at the optima. Although SDMs tended to have higher sensitivity than threshold models, they may include regressions that do not reflect causal mechanisms, constraining their predictive power. We present a simple example of how combining correlative and mechanistic knowledge provides a rapid way to gain insight into a species' niche resulting in consistent predictions and highlighting potential sources of uncertainty in forecasted responses to climate change.
物种分布模型(SDM)是预测物种对全球变暖响应的范围变化的有用工具。然而,它们并没有探索生物过程背后的机制,使得难以预测模型训练的环境梯度之外的变化。在这项研究中,我们将相关 SDM 和关于生理极限的知识相结合,以提供更可靠的预测。在生长和生存实验中获得的热阈值被用作两种基础海洋大型植物基本生态位的代表。使用这些阈值和现有的 SDM 获得的这些物种分布的地理投影在物种不存在或罕见或频繁的区域以及它们的潜在和实际生态位相匹配的区域是相似的,达到了共识预测。预测由于全球变暖,冷水温带基础海藻 Himanthalia elongata 将在其西班牙北部的南部极限处灭绝,而南部 Lusitanic Bifurcaria bifurcata 的占据率预计将增加。像这样的组合方法也可能突出模型因生物因素而产生分歧的地理区域。生理阈值本身往往会过高预测物种的流行度,因为它们无法在物种生理耐受范围内或在最佳条件下识别出气候条件下的缺失。尽管 SDM 往往比阈值模型具有更高的敏感性,但它们可能包含不反映因果机制的回归,从而限制了它们的预测能力。我们提出了一个简单的例子,说明如何将相关和机制知识相结合,快速深入了解物种的生态位,从而产生一致的预测,并突出预测对气候变化响应的潜在不确定性来源。