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Details zur Publikation

Referenztyp Zeitschriften
DOI / URL Link
Creative Commons Lizenz creative commons licence
Titel (primär) Automated conservation assessment of the orchid family with deep learning
Autor Zizka, A.; Silvestro, D.; Vitt, P.; Knight, T.M.;
Journal / Serie Conservation Biology
Erscheinungsjahr 2020
Department BZF; iDiv;
Sprache englisch;
POF III (gesamt) T12;
Supplements https://conbio.onlinelibrary.wiley.com/action/downloadSupplement?doi=10.1111%2Fcobi.13616&file=cobi13616-sup-0001-AppendixS1.pdf
Keywords biodiversity, data quality, IUCN Red list, IUC-NN, machine learning, Orchidaceae, sampling bias
Abstract IUCN Red List assessments are essential for prioritizing conservation needs but are resource‐intensive and therefore only available for a fraction of global species richness. Automated conservation assessments based on digitally available geographic occurrence records can be a rapid alternative, but it is unclear how reliable these assessments are. Here, we present automated conservation assessments for 13,910 species (47.3% of the known species in the family) of the diverse and globally distributed Orchid family (Orchidaceae), based on a novel method using a deep neural network (IUC‐NN), most of which (13,049) were previously unassessed by the IUCN Red List. We identified 4,342 Orchid species (31.2 % of the evaluated species) as Possibly Threatened with extinction (equivalent to the IUCN categories CR, EN, or VU) and point to Madagascar, East Africa, south‐east Asia, and several oceanic islands as priority areas for orchid conservation. Furthermore, the Orchid family provides a model, to test the sensitivity of automated assessment methods to issues with data availability, data quality and geographic sampling bias. IUC‐NN identified threatened species with an accuracy of 84.3%, with significantly lower geographic evaluation bias compared to the IUCN Red List and was robust against low data availability and geographic errors in the input data. Overall, our results demonstrate that automated assessments have an important role to play in achieving goals of identifying the species that are at greatest risk of extinction.
ID 23613
dauerhafte UFZ-Verlinkung https://www.ufz.de/index.php?en=20939&ufzPublicationIdentifier=23613
Zizka, A., Silvestro, D., Vitt, P., Knight, T.M. (2020):
Automated conservation assessment of the orchid family with deep learning
Conserv. Biol.