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A Suite of Models to Support the Quantitative Assessment of Spread in Pest Risk Analysis

Pest Risk Analyses (PRAs) are conducted worldwide to decide whether and how exotic plant pests should be regulated to prevent invasion. There is an increasing demand for science-based risk mapping in PRA. Spread plays a key role in determining the potential distribution of pests, but there is no sui...

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Autores principales: Robinet, Christelle, Kehlenbeck, Hella, Kriticos, Darren J., Baker, Richard H. A., Battisti, Andrea, Brunel, Sarah, Dupin, Maxime, Eyre, Dominic, Faccoli, Massimo, Ilieva, Zhenya, Kenis, Marc, Knight, Jon, Reynaud, Philippe, Yart, Annie, van der Werf, Wopke
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3467266/
https://www.ncbi.nlm.nih.gov/pubmed/23056174
http://dx.doi.org/10.1371/journal.pone.0043366
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author Robinet, Christelle
Kehlenbeck, Hella
Kriticos, Darren J.
Baker, Richard H. A.
Battisti, Andrea
Brunel, Sarah
Dupin, Maxime
Eyre, Dominic
Faccoli, Massimo
Ilieva, Zhenya
Kenis, Marc
Knight, Jon
Reynaud, Philippe
Yart, Annie
van der Werf, Wopke
author_facet Robinet, Christelle
Kehlenbeck, Hella
Kriticos, Darren J.
Baker, Richard H. A.
Battisti, Andrea
Brunel, Sarah
Dupin, Maxime
Eyre, Dominic
Faccoli, Massimo
Ilieva, Zhenya
Kenis, Marc
Knight, Jon
Reynaud, Philippe
Yart, Annie
van der Werf, Wopke
author_sort Robinet, Christelle
collection PubMed
description Pest Risk Analyses (PRAs) are conducted worldwide to decide whether and how exotic plant pests should be regulated to prevent invasion. There is an increasing demand for science-based risk mapping in PRA. Spread plays a key role in determining the potential distribution of pests, but there is no suitable spread modelling tool available for pest risk analysts. Existing models are species specific, biologically and technically complex, and data hungry. Here we present a set of four simple and generic spread models that can be parameterised with limited data. Simulations with these models generate maps of the potential expansion of an invasive species at continental scale. The models have one to three biological parameters. They differ in whether they treat spatial processes implicitly or explicitly, and in whether they consider pest density or pest presence/absence only. The four models represent four complementary perspectives on the process of invasion and, because they have different initial conditions, they can be considered as alternative scenarios. All models take into account habitat distribution and climate. We present an application of each of the four models to the western corn rootworm, Diabrotica virgifera virgifera, using historic data on its spread in Europe. Further tests as proof of concept were conducted with a broad range of taxa (insects, nematodes, plants, and plant pathogens). Pest risk analysts, the intended model users, found the model outputs to be generally credible and useful. The estimation of parameters from data requires insights into population dynamics theory, and this requires guidance. If used appropriately, these generic spread models provide a transparent and objective tool for evaluating the potential spread of pests in PRAs. Further work is needed to validate models, build familiarity in the user community and create a database of species parameters to help realize their potential in PRA practice.
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spelling pubmed-34672662012-10-10 A Suite of Models to Support the Quantitative Assessment of Spread in Pest Risk Analysis Robinet, Christelle Kehlenbeck, Hella Kriticos, Darren J. Baker, Richard H. A. Battisti, Andrea Brunel, Sarah Dupin, Maxime Eyre, Dominic Faccoli, Massimo Ilieva, Zhenya Kenis, Marc Knight, Jon Reynaud, Philippe Yart, Annie van der Werf, Wopke PLoS One Research Article Pest Risk Analyses (PRAs) are conducted worldwide to decide whether and how exotic plant pests should be regulated to prevent invasion. There is an increasing demand for science-based risk mapping in PRA. Spread plays a key role in determining the potential distribution of pests, but there is no suitable spread modelling tool available for pest risk analysts. Existing models are species specific, biologically and technically complex, and data hungry. Here we present a set of four simple and generic spread models that can be parameterised with limited data. Simulations with these models generate maps of the potential expansion of an invasive species at continental scale. The models have one to three biological parameters. They differ in whether they treat spatial processes implicitly or explicitly, and in whether they consider pest density or pest presence/absence only. The four models represent four complementary perspectives on the process of invasion and, because they have different initial conditions, they can be considered as alternative scenarios. All models take into account habitat distribution and climate. We present an application of each of the four models to the western corn rootworm, Diabrotica virgifera virgifera, using historic data on its spread in Europe. Further tests as proof of concept were conducted with a broad range of taxa (insects, nematodes, plants, and plant pathogens). Pest risk analysts, the intended model users, found the model outputs to be generally credible and useful. The estimation of parameters from data requires insights into population dynamics theory, and this requires guidance. If used appropriately, these generic spread models provide a transparent and objective tool for evaluating the potential spread of pests in PRAs. Further work is needed to validate models, build familiarity in the user community and create a database of species parameters to help realize their potential in PRA practice. Public Library of Science 2012-10-09 /pmc/articles/PMC3467266/ /pubmed/23056174 http://dx.doi.org/10.1371/journal.pone.0043366 Text en © 2012 Robinet et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Robinet, Christelle
Kehlenbeck, Hella
Kriticos, Darren J.
Baker, Richard H. A.
Battisti, Andrea
Brunel, Sarah
Dupin, Maxime
Eyre, Dominic
Faccoli, Massimo
Ilieva, Zhenya
Kenis, Marc
Knight, Jon
Reynaud, Philippe
Yart, Annie
van der Werf, Wopke
A Suite of Models to Support the Quantitative Assessment of Spread in Pest Risk Analysis
title A Suite of Models to Support the Quantitative Assessment of Spread in Pest Risk Analysis
title_full A Suite of Models to Support the Quantitative Assessment of Spread in Pest Risk Analysis
title_fullStr A Suite of Models to Support the Quantitative Assessment of Spread in Pest Risk Analysis
title_full_unstemmed A Suite of Models to Support the Quantitative Assessment of Spread in Pest Risk Analysis
title_short A Suite of Models to Support the Quantitative Assessment of Spread in Pest Risk Analysis
title_sort suite of models to support the quantitative assessment of spread in pest risk analysis
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3467266/
https://www.ncbi.nlm.nih.gov/pubmed/23056174
http://dx.doi.org/10.1371/journal.pone.0043366
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