Cargando…

Accounting for detection probability with overestimation by integrating double monitoring programs over 40 years

In the context of wildlife population declines, increasing computer power over the last 20 years allowed wildlife managers to apply advanced statistical techniques that has improved population size estimates. However, respecting the assumptions of the models that consider the probability of detectio...

Descripción completa

Detalles Bibliográficos
Autores principales: Vallecillo, David, Guillemain, Matthieu, Authier, Matthieu, Bouchard, Colin, Cohez, Damien, Vialet, Emmanuel, Massez, Grégoire, Vandewalle, Philippe, Champagnon, Jocelyn
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8956176/
https://www.ncbi.nlm.nih.gov/pubmed/35333894
http://dx.doi.org/10.1371/journal.pone.0265730
_version_ 1784676512242335744
author Vallecillo, David
Guillemain, Matthieu
Authier, Matthieu
Bouchard, Colin
Cohez, Damien
Vialet, Emmanuel
Massez, Grégoire
Vandewalle, Philippe
Champagnon, Jocelyn
author_facet Vallecillo, David
Guillemain, Matthieu
Authier, Matthieu
Bouchard, Colin
Cohez, Damien
Vialet, Emmanuel
Massez, Grégoire
Vandewalle, Philippe
Champagnon, Jocelyn
author_sort Vallecillo, David
collection PubMed
description In the context of wildlife population declines, increasing computer power over the last 20 years allowed wildlife managers to apply advanced statistical techniques that has improved population size estimates. However, respecting the assumptions of the models that consider the probability of detection, such as N-mixture models, requires the implementation of a rigorous monitoring protocol with several replicate survey occasions and no double counting that are hardly adaptable to field conditions. When the logistical, economic and ecological constraints are too strong to meet model assumptions, it may be possible to combine data from independent surveys into the modelling framework in order to understand population dynamics more reliably. Here, we present a state-space model with an error process modelled on the log scale to evaluate wintering waterfowl numbers in the Camargue, southern France, while taking a conditional probability of detection into consideration. Conditional probability of detection corresponds to estimation of a detection probability index, which is not a true probability of detection, but rather conditional on the difference to a particular baseline. The large number of sites (wetlands within the Camargue delta) and years monitored (44) provide significant information to combine both terrestrial and aerial surveys (which constituted spatially and temporally replicated counts) to estimate a conditional probability of detection, while accounting for false-positive counting errors and changes in observers over the study period. The model estimates abundance indices of wintering Common Teal, Mallard and Common Coot, all species abundant in the area. We found that raw counts were underestimated compared to the predicted population size. The model-based data integration approach as described here seems like a promising solution that takes advantage of as much as possible of the data collected from several methods when the logistic constraints do not allow the implementation of a permanent monitoring and analysis protocol that takes into account the detectability of individuals.
format Online
Article
Text
id pubmed-8956176
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-89561762022-03-26 Accounting for detection probability with overestimation by integrating double monitoring programs over 40 years Vallecillo, David Guillemain, Matthieu Authier, Matthieu Bouchard, Colin Cohez, Damien Vialet, Emmanuel Massez, Grégoire Vandewalle, Philippe Champagnon, Jocelyn PLoS One Research Article In the context of wildlife population declines, increasing computer power over the last 20 years allowed wildlife managers to apply advanced statistical techniques that has improved population size estimates. However, respecting the assumptions of the models that consider the probability of detection, such as N-mixture models, requires the implementation of a rigorous monitoring protocol with several replicate survey occasions and no double counting that are hardly adaptable to field conditions. When the logistical, economic and ecological constraints are too strong to meet model assumptions, it may be possible to combine data from independent surveys into the modelling framework in order to understand population dynamics more reliably. Here, we present a state-space model with an error process modelled on the log scale to evaluate wintering waterfowl numbers in the Camargue, southern France, while taking a conditional probability of detection into consideration. Conditional probability of detection corresponds to estimation of a detection probability index, which is not a true probability of detection, but rather conditional on the difference to a particular baseline. The large number of sites (wetlands within the Camargue delta) and years monitored (44) provide significant information to combine both terrestrial and aerial surveys (which constituted spatially and temporally replicated counts) to estimate a conditional probability of detection, while accounting for false-positive counting errors and changes in observers over the study period. The model estimates abundance indices of wintering Common Teal, Mallard and Common Coot, all species abundant in the area. We found that raw counts were underestimated compared to the predicted population size. The model-based data integration approach as described here seems like a promising solution that takes advantage of as much as possible of the data collected from several methods when the logistic constraints do not allow the implementation of a permanent monitoring and analysis protocol that takes into account the detectability of individuals. Public Library of Science 2022-03-25 /pmc/articles/PMC8956176/ /pubmed/35333894 http://dx.doi.org/10.1371/journal.pone.0265730 Text en © 2022 Vallecillo et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Vallecillo, David
Guillemain, Matthieu
Authier, Matthieu
Bouchard, Colin
Cohez, Damien
Vialet, Emmanuel
Massez, Grégoire
Vandewalle, Philippe
Champagnon, Jocelyn
Accounting for detection probability with overestimation by integrating double monitoring programs over 40 years
title Accounting for detection probability with overestimation by integrating double monitoring programs over 40 years
title_full Accounting for detection probability with overestimation by integrating double monitoring programs over 40 years
title_fullStr Accounting for detection probability with overestimation by integrating double monitoring programs over 40 years
title_full_unstemmed Accounting for detection probability with overestimation by integrating double monitoring programs over 40 years
title_short Accounting for detection probability with overestimation by integrating double monitoring programs over 40 years
title_sort accounting for detection probability with overestimation by integrating double monitoring programs over 40 years
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8956176/
https://www.ncbi.nlm.nih.gov/pubmed/35333894
http://dx.doi.org/10.1371/journal.pone.0265730
work_keys_str_mv AT vallecillodavid accountingfordetectionprobabilitywithoverestimationbyintegratingdoublemonitoringprogramsover40years
AT guillemainmatthieu accountingfordetectionprobabilitywithoverestimationbyintegratingdoublemonitoringprogramsover40years
AT authiermatthieu accountingfordetectionprobabilitywithoverestimationbyintegratingdoublemonitoringprogramsover40years
AT bouchardcolin accountingfordetectionprobabilitywithoverestimationbyintegratingdoublemonitoringprogramsover40years
AT cohezdamien accountingfordetectionprobabilitywithoverestimationbyintegratingdoublemonitoringprogramsover40years
AT vialetemmanuel accountingfordetectionprobabilitywithoverestimationbyintegratingdoublemonitoringprogramsover40years
AT massezgregoire accountingfordetectionprobabilitywithoverestimationbyintegratingdoublemonitoringprogramsover40years
AT vandewallephilippe accountingfordetectionprobabilitywithoverestimationbyintegratingdoublemonitoringprogramsover40years
AT champagnonjocelyn accountingfordetectionprobabilitywithoverestimationbyintegratingdoublemonitoringprogramsover40years