Effectiveness of South Africa's network of protected areas: Unassessed vascular plants predicted to be threatened using deep neural networks are all located in protected areas

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Bahati Samuel Kandolo, Kowiyou Yessoufou, Mahlatse Kganyago
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Abstract

Globally, we are in the midst of a biodiversity crisis and megadiverse countries become key targets for conservation. South Africa, the only country in the world hosting three biodiversity hotspots within its borders, harbours a tremendous diversity of at-risk species deserving to be protected. However, the lengthy risk assessment process and the lack of required data to complete assessments is a serious limitation to conservation since several species may slide into extinction while awaiting risk assessment. Here, we employed a deep neural network model integrating species climatic and geographic features to predict the conservation status of 116 unassessed plant species. Our analysis involved in total of 1072 plant species and 96,938 occurrence points. The best-performing model exhibits high accuracy, reaching up to 83.6% at the binary classification and 56.8% at the detailed classification. Our best-performing model at the binary classification predicts that 32% (25 species) and 8% (3 species) of Data Deficient and Not-Evaluated species respectively, are likely threatened, amounting to a proportion of 24.1% of unassessed species facing a risk of extinction. Interestingly, all unassessed species predicted to be threatened are in protected areas, revealing the effectiveness of South Africa's network of protected areas in conservation, although these likely threatened species are more abundant outside protected areas. Considering the limitation in assessing only species with available data, there remains a possibility of a higher proportion of unassessed species being imperilled.

Abstract Image

南非保护区网络的有效性:利用深度神经网络预测受到威胁的未评估维管植物全部位于保护区内。
在全球范围内,我们正处于生物多样性危机之中,而生物多样性丰富的国家则成为重点保护对象。南非是世界上唯一一个境内拥有三个生物多样性热点地区的国家,拥有种类繁多的濒危物种,值得保护。然而,漫长的风险评估过程和缺乏完成评估所需的数据严重限制了保护工作,因为一些物种可能会在等待风险评估期间濒临灭绝。在此,我们采用了一个深度神经网络模型,综合物种的气候和地理特征来预测 116 个未评估植物物种的保护状况。我们的分析共涉及 1072 个植物物种和 96938 个出现点。表现最佳的模型具有很高的准确率,二元分类准确率高达 83.6%,详细分类准确率高达 56.8%。在二元分类法中,我们的最佳模型分别预测了 32%(25 个物种)和 8%(3 个物种)的 "数据不足 "物种和 "未评估 "物种可能受到威胁,即 24.1%的未评估物种面临灭绝风险。有趣的是,所有预测受到威胁的未评估物种都位于保护区内,这表明南非的保护区网络在保护方面非常有效,尽管这些可能受到威胁的物种在保护区外更为丰富。考虑到仅对有可用数据的物种进行评估的局限性,仍有可能有更高比例的未评估物种处于濒危状态。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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