Estimating and forecasting spatial population dynamics of apex predators using transnational genetic monitoring

Proceedings of the National Academy of Sciences of the USA
By: , and 

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Abstract

The ongoing recovery of terrestrial large carnivores in North America and Europe is accompanied by intense controversy. On the one hand, reestablishment of large carnivores entails a recovery of their most important ecological role, predation. On the other hand, societies are struggling to relearn how to live with apex predators that kill livestock, compete for game species, and occasionally injure or kill people. Those responsible for managing these species and mitigating conflict often lack fundamental information due to a long-standing challenge in ecology: How do we draw robust population-level inferences for elusive animals spread over immense areas? Here we showcase the application of an effective tool for spatially explicit tracking and forecasting of wildlife population dynamics at scales that are relevant to management and conservation. We analyzed the world’s largest dataset on carnivores comprising more than 35,000 noninvasively obtained DNA samples from over 6,000 individual brown bears (Ursus arctos), gray wolves (Canis lupus), and wolverines (Gulo gulo). Our analyses took into account that not all individuals are detected and, even if detected, their fates are not always known. We show unequivocal quantitative evidence of large carnivore recovery in northern Europe, juxtaposed with the finding that humans are the single-most important factor driving the dynamics of these apex predators. We present maps and forecasts of the spatiotemporal dynamics of large carnivore populations, transcending national boundaries and management regimes.
Publication type Article
Publication Subtype Journal Article
Title Estimating and forecasting spatial population dynamics of apex predators using transnational genetic monitoring
Series title Proceedings of the National Academy of Sciences of the USA
DOI 10.1073/pnas.2011383117
Volume 11
Issue 48
Year Published 2020
Language English
Publisher National Academy of Science
Contributing office(s) Eastern Ecological Science Center
Description 8 p.
First page 30531
Last page 30538
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