AUTHOR=Silva Sandro Valerio , Andermann Tobias , Zizka Alexander , Kozlowski Gregor , Silvestro Daniele TITLE=Global Estimation and Mapping of the Conservation Status of Tree Species Using Artificial Intelligence JOURNAL=Frontiers in Plant Science VOLUME=Volume 13 - 2022 YEAR=2022 URL=https://www.frontiersin.org/journals/plant-science/articles/10.3389/fpls.2022.839792 DOI=10.3389/fpls.2022.839792 ISSN=1664-462X ABSTRACT=Trees are fundamental for Earth’s biodiversity as primary producers and ecosystem engineers and are responsible for many of nature’s contributions to people. Yet, many tree species today are threatened with extinction by human activity. An accurate identification of threatened tree species is necessary to quantify the current biodiversity crisis and to prioritize conservation efforts. However, the most comprehensive dataset of tree species extinction risk—the Red List of the International Union for the Conservation of Nature (RL)—lacks assessments for a substantial number of known tree species. The RL is based on a time-consuming expert-based assessment process, which hampers the inclusion of little-known species and the continued updating of extinction risk assessments. Here, we use a computational pipeline to approximate RL extinction risk assessments for more than 21,000 tree species (leading to an overall assessment 89% of all known tree species) using a supervised learning approach trained based on available IUCN RL assessments. We harvest occurrence data for tree species worldwide from online databases which we use with other publicly available data to design features characterizing species geographic range, biome and climatic affinities, and human footprint. We train a deep neural network model to predict their conservation status, based on these features. We estimated 43% of the assessed tree species to be threatened with extinction and found taxonomic and geographic heterogeneities in the distribution of threatened species. The results are consistent with the recent estimates by the Global Tree Assessment initiative, indicating that our approach provides robust and time-efficient approximations of species IUCN RL extinction risk assessments.