| Literature DB >> 33613997 |
Lucretia E Olson1, Nichole Bjornlie2, Gary Hanvey3, Joseph D Holbrook4, Jacob S Ivan5, Scott Jackson3, Brian Kertson6, Travis King7, Michael Lucid8,9, Dennis Murray10, Robert Naney11, John Rohrer11, Arthur Scully10, Daniel Thornton7, Zachary Walker2, John R Squires1.
Abstract
The application of species distribution models (SDMs) to areas outside of where a model was created allows informed decisions across large spatial scales, yet transferability remains a challenge in ecological modeling. We examined how regional variation in animal-environment relationships influenced model transferability for Canada lynx (Lynx canadensis), with an additional conservation aim of modeling lynx habitat across the northwestern United States. Simultaneously, we explored the effect of sample size from GPS data on SDM model performance and transferability. We used data from three geographically distinct Canada lynx populations in Washington (n = 17 individuals), Montana (n = 66), and Wyoming (n = 10) from 1996 to 2015. We assessed regional variation in lynx-environment relationships between these three populations using principal components analysis (PCA). We used ensemble modeling to develop SDMs for each population and all populations combined and assessed model prediction and transferability for each model scenario using withheld data and an extensive independent dataset (n = 650). Finally, we examined GPS data efficiency by testing models created with sample sizes of 5%-100% of the original datasets. PCA results indicated some differences in environmental characteristics between populations; models created from individual populations showed differential transferability based on the populations' similarity in PCA space. Despite population differences, a single model created from all populations performed as well, or better, than each individual population. Model performance was mostly insensitive to GPS sample size, with a plateau in predictive ability reached at ~30% of the total GPS dataset when initial sample size was large. Based on these results, we generated well-validated spatial predictions of Canada lynx distribution across a large portion of the species' southern range, with precipitation and temperature the primary environmental predictors in the model. We also demonstrated substantial redundancy in our large GPS dataset, with predictive performance insensitive to sample sizes above 30% of the original.Entities:
Keywords: Canada lynx; GPS telemetry data; Lynx canadensis; generalizability; local adaptation; niche similarity; regional variation; sample size; species distribution model; transferability
Year: 2021 PMID: 33613997 PMCID: PMC7882975 DOI: 10.1002/ece3.7157
Source DB: PubMed Journal: Ecol Evol ISSN: 2045-7758 Impact factor: 2.912