MARBEC, Univ Montpellier, CNRS, Ifremer, IRD, Montpellier, France.
Institut Universitaire de France, Paris, France.
PLoS Biol. 2024 Aug 29;22(8):e3002773. doi: 10.1371/journal.pbio.3002773. eCollection 2024 Aug.
While extinction risk categorization is fundamental for building robust conservation planning for marine fishes, empirical data on occurrence and vulnerability to disturbances are still lacking for most marine teleost fish species, preventing the assessment of their International Union for the Conservation of Nature (IUCN) status. In this article, we predicted the IUCN status of marine fishes based on two machine learning algorithms, trained with available species occurrences, biological traits, taxonomy, and human uses. We found that extinction risk for marine fish species is higher than initially estimated by the IUCN, increasing from 2.5% to 12.7%. Species predicted as Threatened were mainly characterized by a small geographic range, a relatively large body size, and a low growth rate. Hotspots of predicted Threatened species peaked mainly in the South China Sea, the Philippine Sea, the Celebes Sea, the west coast Australia and North America. We also explored the consequences of including these predicted species' IUCN status in the prioritization of marine protected areas through conservation planning. We found a marked increase in prioritization ranks for subpolar and polar regions despite their low species richness. We suggest to integrate multifactorial ensemble learning to assess species extinction risk and offer a more complete view of endangered taxonomic groups to ultimately reach global conservation targets like the extending coverage of protected areas where species are the most vulnerable.
虽然灭绝风险分类对于制定强有力的海洋鱼类保护规划至关重要,但大多数海洋硬骨鱼类的出现和对干扰的脆弱性的经验数据仍然缺乏,这使得评估它们的国际自然保护联盟 (IUCN) 地位变得不可能。在本文中,我们使用现有的物种出现、生物特征、分类学和人类用途,通过两种机器学习算法来预测海洋鱼类的 IUCN 状况。我们发现,海洋鱼类的灭绝风险高于 IUCN 的初步估计,从 2.5%上升到 12.7%。被预测为受威胁的物种主要特征是地理分布范围小、体型相对较大、生长速度较慢。预测的受威胁物种的热点主要集中在南海、菲律宾海、西里伯斯海、澳大利亚西海岸和北美洲。我们还通过保护规划探索了将这些预测物种的 IUCN 状况纳入海洋保护区优先排序的后果。我们发现,尽管亚极区和极地地区的物种丰富度较低,但它们的优先排序等级却有明显提高。我们建议整合多因素集成学习来评估物种灭绝风险,并为濒危分类群提供更全面的视图,以最终实现保护面积的扩展等全球保护目标,这些区域是物种最脆弱的地区。