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Bayesian species distribution models integrate presence-only and presence-absence data to predict deer distribution and relative abundance

View ORCID ProfileVirginia Morera-Pujol, View ORCID ProfilePhilip S. Mostert, View ORCID ProfileKilian Murphy, Tim Burkitt, Barry Coad, View ORCID ProfileBarry J. McMahon, View ORCID ProfileMaarten Nieuwenhuis, View ORCID ProfileKevin Morelle, View ORCID ProfileAlastair Ward, View ORCID ProfileSimone Ciuti
doi: https://doi.org/10.1101/2022.05.23.493051
Virginia Morera-Pujol
1Laboratory of Wildlife Ecology and Behaviour, School of Biology and Environmental Science, University College Dublin, Dublin, Ireland
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  • For correspondence: morera.virginia@gmail.com
Philip S. Mostert
2Department of Mathematical Sciences, NTNU Norwegian University of Science and Technology, Gløshaugen, Norway
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Kilian Murphy
1Laboratory of Wildlife Ecology and Behaviour, School of Biology and Environmental Science, University College Dublin, Dublin, Ireland
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Tim Burkitt
3Deer Biologist and Management Consultant, DEER MANAGEMENT SOLUTIONS, Coolies, Muckross, Killarney, Co. Kerry V93R380
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Barry Coad
4Coillte Forest, Coillte, Dublin Road, Newtownmountkennedy, Co Wicklow, Ireland A63 DN25
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Barry J. McMahon
5UCD School of Agriculture & Food Science, University College Dublin, Belfield, Dublin, Ireland
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Maarten Nieuwenhuis
6UCD Forestry, School of Agriculture and Food Science, University College Dublin, Belfield, Dublin, Ireland
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Kevin Morelle
7Department of Migration, Max Planck Institute of Animal Behaviour, Radolfzell, Germany
8Department of Game Management and Wildlife Biology, Czech University of Life Science, Prague, Czech Republic
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Alastair Ward
9School of Biology, University of Leeds, Leeds, LS2 9JT
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Simone Ciuti
1Laboratory of Wildlife Ecology and Behaviour, School of Biology and Environmental Science, University College Dublin, Dublin, Ireland
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Abstract

The use of georeferenced information on the presence of a species to predict its distribution across a geographic area is one of the most common tools in management and conservation. The collection of high-quality presence-absence data through structured surveys is, however, expensive, and managers usually have more abundant low-quality presence-only data collected by citizen scientists, opportunistic observations, and culling returns for game species. Integrated Species Distribution Models (ISDMs) have been developed to make the most of the data available by combining the higher-quality, but usually less abundant and more spatially restricted presence-absence data, with the lower quality, unstructured, but usually more extensive and abundant presence-only data. Joint-likelihood ISDMs can be run in a Bayesian context using INLA (Integrated Nested Laplace Approximation) methods that allow the addition of a spatially structured random effect to account for data spatial autocorrelation. These models, however, have only been applied to simulated data so far. Here, for the first time, we apply this approach to empirical data, using presence-absence and presence-only data for the three main deer species in Ireland: red, fallow and sika deer. We collated all deer data available for the past 15 years and fitted models predicting distribution and relative abundance at a 25 km2 resolution across the island. Models’ predictions were associated to spatial estimate of uncertainty, allowing us to assess the quality of the model and the effect that data scarcity has on the certainty of predictions. Furthermore, we validated the three species-specific models using independent deer hunting returns. Our work clearly demonstrates the applicability of spatially-explicit ISDMs to empirical data in a Bayesian context, providing a blueprint for managers to exploit unused and seemingly unusable data that can, when modelled with the proper tools, serve to inform management and conservation policies.

Competing Interest Statement

The authors have declared no competing interest.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted May 23, 2022.
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Bayesian species distribution models integrate presence-only and presence-absence data to predict deer distribution and relative abundance
Virginia Morera-Pujol, Philip S. Mostert, Kilian Murphy, Tim Burkitt, Barry Coad, Barry J. McMahon, Maarten Nieuwenhuis, Kevin Morelle, Alastair Ward, Simone Ciuti
bioRxiv 2022.05.23.493051; doi: https://doi.org/10.1101/2022.05.23.493051
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Bayesian species distribution models integrate presence-only and presence-absence data to predict deer distribution and relative abundance
Virginia Morera-Pujol, Philip S. Mostert, Kilian Murphy, Tim Burkitt, Barry Coad, Barry J. McMahon, Maarten Nieuwenhuis, Kevin Morelle, Alastair Ward, Simone Ciuti
bioRxiv 2022.05.23.493051; doi: https://doi.org/10.1101/2022.05.23.493051

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