German Centre for Integrative Biodiversity Research (iDiv) Halle-Jena-Leipzig, Leipzig, Germany.
Leipzig University, Leipzig, Germany.
Conserv Biol. 2023 Dec;37(6):e14139. doi: 10.1111/cobi.14139. Epub 2023 Sep 26.
Despite being central to the implementation of conservation policies, the usefulness of the International Union for Conservation of Nature (IUCN) Red List of Threatened Species is hampered by the 14% of species classified as data-deficient (DD) because information to evaluate these species' extinction risk was lacking when they were last assessed or because assessors did not appropriately account for uncertainty. Robust methods are needed to identify which DD species are more likely to be reclassified in one of the data-sufficient IUCN Red List categories. We devised a reproducible method to help red-list assessors prioritize reassessment of DD species and tested it with 6887 DD species of mammals, reptiles, amphibians, fishes, and Odonata (dragonflies and damselflies). For each DD species in these groups, we calculated its probability of being classified in a data-sufficient category if reassessed today from covariates measuring available knowledge (e.g., number of occurrence records or published articles available), knowledge proxies (e.g., remoteness of the range), and species characteristics (e.g., nocturnality); calculated change in such probability since last assessment from the increase in available knowledge (e.g., new occurrence records); and determined whether the species might qualify as threatened based on recent rate of habitat loss determined from global land-cover maps. We identified 1907 species with a probability of being reassessed in a data-sufficient category of >0.5; 624 species for which this probability increased by >0.25 since last assessment; and 77 species that could be reassessed as near threatened or threatened based on habitat loss. Combining these 3 elements, our results provided a list of species likely to be data-sufficient such that the comprehensiveness and representativeness of the IUCN Red List can be improved.
尽管国际自然保护联盟濒危物种红色名录(IUCN Red List of Threatened Species)对保护政策的实施至关重要,但由于 14%的物种被归类为数据缺乏(DD),其有用性受到了阻碍。这是因为在最后一次评估这些物种时,缺乏评估它们灭绝风险的信息,或者评估者没有适当考虑不确定性。需要强有力的方法来确定哪些 DD 物种更有可能被重新分类为 IUCN 红色名录中数据充足的类别之一。我们设计了一种可重复的方法来帮助红色名录评估者优先考虑对 DD 物种进行重新评估,并在 6887 种哺乳动物、爬行动物、两栖动物、鱼类和蜻蜓目(蜻蜓和豆娘)的 DD 物种中进行了测试。对于这些类群中的每一个 DD 物种,我们根据可用知识(例如,出现记录或可用已发表文章的数量)、知识代理(例如,范围的偏远程度)和物种特征(例如,夜间活动)来衡量,计算了如果今天重新评估,该物种被归类为数据充足类别的概率;从可用知识的增加中计算出自上次评估以来这种概率的变化(例如,新的出现记录);并根据全球土地覆盖图确定的最近栖息地丧失率,确定该物种是否有资格被列为受威胁物种。我们确定了 1907 种具有大于 0.5 的被重新评估为数据充足类别的概率的物种;624 种自上次评估以来这种概率增加了大于 0.25 的物种;以及 77 种可以根据栖息地丧失被重新评估为近危或受威胁的物种。综合这 3 个要素,我们的结果提供了一份可能具有数据充足性的物种清单,从而可以提高 IUCN 红色名录的全面性和代表性。