Plant survival and keystone pollinator species in stochastic coextinction models: role of intrinsic dependence on animal-pollination

传粉者 授粉 互惠主义(生物学) 稳健性(进化) 生物 梯形物种 消光(光学矿物学) 生态学 花粉 生态系统 古生物学 生物化学 基因
作者
Anna Traveset,Cristina Tur,Vı́ctor M. Eguı́luz
出处
期刊:Scientific Reports [Nature Portfolio]
卷期号:7 (1) 被引量:25
标识
DOI:10.1038/s41598-017-07037-7
摘要

Coextinction models are useful to understand community robustness to species loss and resilience to disturbances. We simulated pollinator extinctions in pollination networks by using a hybrid model that combined a recently developed stochastic coextinction model (SCM) for plant extinctions and a topological model (TCM) for animal extinctions. Our model accounted for variation in interaction strengths and included empirical estimates of plant dependence on pollinators to set seeds. The stochastic nature of such model allowed us determining plant survival to single (and multiple) extinction events, and identifying which pollinators (keystone species) were more likely to trigger secondary extinctions. Consistently across three different pollinator removal sequences, plant robustness was lower than in a pure TCM, and plant survival was more determined by dependence on the mutualism than by interaction strength. As expected, highly connected and dependent plants were the most sensitive to pollinator loss and collapsed faster in extinction cascades. We predict that the relationship between dependence and plant connectivity is crucial to determine network robustness to interaction loss. Finally, we showed that honeybees and several beetles were keystone species in our communities. This information is of great value to foresee consequences of pollinator losses facing current global change and to identify target species for effective conservation.

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