School of Aquatic and Fishery Sciences, University of Washington, Seattle, Washington 98195, USA.
Ecol Appl. 2011 Oct;21(7):2587-99. doi: 10.1890/10-2051.1.
Despite the widespread introduction of nonnative species and the heterogeneity of ecosystems in their sensitivity to ecological impacts, few studies have assessed ecosystem vulnerability to the entire invasion process, from arrival to establishment and impacts. Our study addresses this challenge by presenting a probabilistic, spatially explicit approach to predicting ecosystem vulnerability to species invasions. Using the freshwater-rich landscapes of Wisconsin, USA, we model invasive rusty crayfish (Orconectes rusticus) as a function of exposure risk (i.e., likelihood of introduction and establishment of O. rusticus based on a species distribution model) and the sensitivity of the recipient community (i.e., likelihood of impacts on native O. virilis and O. propinquus based on a retrospective analysis of population changes). Artificial neural networks predicted that approximately 10% of 4200 surveyed lakes (n = 388) and approximately 25% of mapped streams (23 523 km total length) are suitable for O. rusticus introduction and establishment. A comparison of repeated surveys before vs. post-1985 revealed that O. virilis was six times as likely and O. propinquus was twice as likely to be extirpated in streams invaded by O. rusticus, compared to streams that were not invaded. Similarly, O. virilis was extirpated in over three-quarters of lakes invaded by O. rusticus compared to half of the uninvaded lakes, whereas no difference was observed for O. propinquus. We identified 115 lakes (approximately 3% of lakes) and approximately 5000 km of streams (approximately 6% of streams) with a 25% chance of introduction, establishment, and extirpation by O. rusticus of either native congener. By identifying highly vulnerable ecosystems, our study offers an effective strategy for prioritizing on-the-ground management action and informing decisions about the most efficient allocation of resources. Moreover, our results provide the flexibility for stakeholders to identify priority sites for prevention efforts given a maximum level of acceptable risk or based on budgetary or time restrictions. To this end, we incorporate the model predictions into a new online mapping tool with the intention of closing the communication gap between academic research and stakeholders that requires information on the prospects of future invasions.
尽管引入了非本地物种,且生态系统的异质性使其对生态影响的敏感性存在差异,但很少有研究评估生态系统对整个入侵过程(从到达、建立到影响)的脆弱性。我们的研究通过提出一种概率性的、空间明确的方法来预测物种入侵对生态系统的脆弱性,从而解决了这一挑战。我们使用美国威斯康星州富含淡水的景观,将铁锈红螯虾(Orconectes rusticus)作为暴露风险(即根据物种分布模型,O. rusticus 引入和建立的可能性)和受体群落的敏感性(即根据对种群变化的回顾性分析,对本地 O. virilis 和 O. propinquus 产生影响的可能性)的函数进行建模。人工神经网络预测,在调查的 4200 个湖泊中(n = 388),约有 10%和约 25%的溪流(总长度为 23523 公里)适合 O. rusticus 的引入和建立。将 1985 年前后的重复调查进行比较后发现,与未受入侵的溪流相比,O. rusticus 入侵的溪流中 O. virilis 的灭绝可能性是其六倍,O. propinquus 的灭绝可能性是其两倍。同样,O. rusticus 入侵的湖泊中,超过四分之三的 O. virilis 灭绝,而未受入侵的湖泊中只有一半灭绝,而 O. propinquus 则没有观察到差异。我们确定了 115 个湖泊(约占湖泊的 3%)和约 5000 公里的溪流(约占溪流的 6%),这些湖泊和溪流有 25%的可能性会引入、建立和灭绝 O. rusticus 对任何本地近缘种的影响。通过确定高度脆弱的生态系统,我们的研究提供了一种有效的策略,可以优先进行实地管理行动,并为最有效地分配资源做出决策。此外,我们的研究结果为利益相关者提供了灵活性,可以根据最大可接受风险或基于预算或时间限制,确定预防工作的优先地点。为此,我们将模型预测纳入一个新的在线地图工具中,旨在缩小学术研究与利益相关者之间的沟通差距,利益相关者需要了解未来入侵的前景信息。