Global Conservation Prioritisation Approach Provides Credible Results at a Regional Scale

IF 4.6 2区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION
Michael Roswell, Anahí Espíndola
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引用次数: 0

Abstract

Aim

Conservationists and managers must direct resources and enact measures to protect species, despite uncertainty about their present status. One approach to covering the data gap is borrowing information from data-rich species or populations to guide decisions about data-poor ones via machine learning. Recent efforts demonstrated proof-of-concept at the global scale, leaving unclear whether similar approaches are feasible at the local and regional scales at which conservation actions most typically occur. To address this gap, we tested a global-scale predictive approach at a regional scale, using two groups of taxa.

Location

State of Maryland, USA.

Taxa

Vascular land plants and lepidopterans.

Methods

Using publicly available occurrence and biogeographic data, we trained random forest classifiers to predict the state-level conservation status of species in each of the two focal taxa. We assessed model performance with cross-validation, and explored trends in the predictions.

Results

Our models had strong discriminatory ability, accurately predicting status for species with existing status assessments. They predict that the northwestern part of Maryland, USA, which overlaps the Appalachian Mountains, harbours a higher concentration of unassessed, but likely threatened plants and lepidopterans. Our predictions track known biogeographic patterns, and unassessed species predicted as most likely threatened in Maryland were often recognised as also needing conservation in nearby jurisdictions, providing external validation to our results.

Main Conclusions

We demonstrate that a modelling approach developed for global analysis can be downscaled and credible when applied at a regional scale that is smaller than typical species ranges. We identified select unassessed plant and lepidopteran species, and the western, montane region of Maryland as priority targets for additional monitoring, assessment and conservation. By rapidly aggregating disparate data and integrating information across taxa, models like those we used can complement traditional assessment tools and assist in prioritisation for formal assessments, as well as protection.

Abstract Image

全球保护优先排序方法在区域范围内提供了可信的结果
目的自然资源保护主义者和管理者必须引导资源并制定保护物种的措施,尽管它们目前的状况尚不确定。弥补数据缺口的一种方法是从数据丰富的物种或种群中借用信息,通过机器学习来指导对数据不足的物种的决策。最近的努力在全球范围内证明了概念,但不清楚类似的方法在最典型的保护行动发生的地方和区域范围内是否可行。为了解决这一差距,我们在区域尺度上测试了一种全球尺度的预测方法,使用了两组分类群。位置:美国马里兰州。分类群维管陆生植物和鳞翅目。方法利用公开的发生和生物地理数据,训练随机森林分类器来预测两个焦点分类群中物种的国家级保护状况。我们通过交叉验证评估了模型的性能,并探索了预测的趋势。结果该模型具有较强的判别能力,能较准确地预测现有物种的状态。他们预测,美国马里兰州西北部与阿巴拉契亚山脉重叠的地方,有更多未被评估但可能受到威胁的植物和鳞翅目动物。我们的预测跟踪了已知的生物地理模式,而在马里兰州被预测为最有可能受到威胁的未评估物种通常也被认为在附近的司法管辖区需要保护,这为我们的结果提供了外部验证。我们证明了为全球分析开发的建模方法在小于典型物种范围的区域尺度上应用时可以缩小规模并具有可信度。我们确定了一些未评估的植物和鳞翅目物种,以及马里兰州西部山区作为额外监测、评估和保护的优先目标。通过快速汇总不同的数据和整合不同分类群的信息,我们使用的模型可以补充传统的评估工具,并有助于确定正式评估和保护的优先级。
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来源期刊
Diversity and Distributions
Diversity and Distributions 环境科学-生态学
CiteScore
8.90
自引率
4.30%
发文量
195
审稿时长
8-16 weeks
期刊介绍: Diversity and Distributions is a journal of conservation biogeography. We publish papers that deal with the application of biogeographical principles, theories, and analyses (being those concerned with the distributional dynamics of taxa and assemblages) to problems concerning the conservation of biodiversity. We no longer consider papers the sole aim of which is to describe or analyze patterns of biodiversity or to elucidate processes that generate biodiversity.
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