Di Marco Moreno, Collen Ben, Rondinini Carlo, Mace Georgina M
Global Mammal Assessment Program, Department of Biology and Biotechnologies, Sapienza Università di Roma, Viale dell' Università 32, Rome 00185, Italy ARC Centre of Excellence for Environmental Decisions, Centre for Biodiversity and Conservation Science, University of Queensland, Brisbane, Queensland 4072, Australia School of Geography, Planning and Environmental Management, University of Queensland, Brisbane, Queensland 4072, Australia
Centre for Biodiversity and Environment Research, Department of Genetics, Evolution and Environment, University College London, Gower Street, London WC1E 6BT, UK.
Proc Biol Sci. 2015 Aug 22;282(1813):20150928. doi: 10.1098/rspb.2015.0928.
Global commitments to halt biodiversity decline mean that it is essential to monitor species' extinction risk. However, the work required to assess extinction risk is intensive. We demonstrate an alternative approach to monitoring extinction risk, based on the response of species to external conditions. Using retrospective International Union for Conservation of Nature Red List assessments, we classify transitions in the extinction risk of 497 mammalian carnivores and ungulates between 1975 and 2013. Species that moved to lower Red List categories, or remained Least Concern, were classified as 'lower risk'; species that stayed in a threatened category, or moved to a higher category of risk, were classified as 'higher risk'. Twenty-four predictor variables were used to predict transitions, including intrinsic traits (species biology) and external conditions (human pressure, distribution state and conservation interventions). The model correctly classified up to 90% of all transitions and revealed complex interactions between variables, such as protected areas (PAs) versus human impact. The most important predictors were: past extinction risk, PA extent, geographical range size, body size, taxonomic family and human impact. Our results suggest that monitoring a targeted set of metrics would efficiently identify species facing a higher risk, and could guide the allocation of resources between monitoring species' extinction risk and monitoring external conditions.
全球致力于遏制生物多样性下降,这意味着监测物种的灭绝风险至关重要。然而,评估灭绝风险所需的工作强度很大。我们展示了一种基于物种对外部条件的反应来监测灭绝风险的替代方法。利用国际自然保护联盟红色名录的回顾性评估,我们对1975年至2013年间497种哺乳类食肉动物和有蹄类动物的灭绝风险转变进行了分类。转移到较低红色名录类别的物种,或仍为“无危”的物种,被归类为“风险降低”;仍处于受威胁类别的物种,或转移到更高风险类别的物种,被归类为“风险增加”。使用24个预测变量来预测转变,包括内在特征(物种生物学)和外部条件(人类压力、分布状态和保护干预)。该模型正确分类了高达90%的所有转变,并揭示了变量之间的复杂相互作用,如保护区与人类影响之间的相互作用。最重要的预测因素是:过去的灭绝风险、保护区范围、地理分布范围大小、体型、分类科和人类影响。我们的结果表明,监测一组有针对性的指标将有效地识别面临更高风险的物种,并可指导在监测物种灭绝风险和监测外部条件之间分配资源。