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Species Distribution Models for Crop Pollination: A Modelling Framework Applied to Great Britain

Insect pollination benefits over three quarters of the world's major crops. There is growing concern that observed declines in pollinators may impact on production and revenues from animal pollinated crops. Knowing the distribution of pollinators is therefore crucial for estimating their availa...

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Autores principales: Polce, Chiara, Termansen, Mette, Aguirre-Gutiérrez, Jesus, Boatman, Nigel D., Budge, Giles E., Crowe, Andrew, Garratt, Michael P., Pietravalle, Stéphane, Potts, Simon G., Ramirez, Jorge A., Somerwill, Kate E., Biesmeijer, Jacobus C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3796555/
https://www.ncbi.nlm.nih.gov/pubmed/24155899
http://dx.doi.org/10.1371/journal.pone.0076308
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author Polce, Chiara
Termansen, Mette
Aguirre-Gutiérrez, Jesus
Boatman, Nigel D.
Budge, Giles E.
Crowe, Andrew
Garratt, Michael P.
Pietravalle, Stéphane
Potts, Simon G.
Ramirez, Jorge A.
Somerwill, Kate E.
Biesmeijer, Jacobus C.
author_facet Polce, Chiara
Termansen, Mette
Aguirre-Gutiérrez, Jesus
Boatman, Nigel D.
Budge, Giles E.
Crowe, Andrew
Garratt, Michael P.
Pietravalle, Stéphane
Potts, Simon G.
Ramirez, Jorge A.
Somerwill, Kate E.
Biesmeijer, Jacobus C.
author_sort Polce, Chiara
collection PubMed
description Insect pollination benefits over three quarters of the world's major crops. There is growing concern that observed declines in pollinators may impact on production and revenues from animal pollinated crops. Knowing the distribution of pollinators is therefore crucial for estimating their availability to pollinate crops; however, in general, we have an incomplete knowledge of where these pollinators occur. We propose a method to predict geographical patterns of pollination service to crops, novel in two elements: the use of pollinator records rather than expert knowledge to predict pollinator occurrence, and the inclusion of the managed pollinator supply. We integrated a maximum entropy species distribution model (SDM) with an existing pollination service model (PSM) to derive the availability of pollinators for crop pollination. We used nation-wide records of wild and managed pollinators (honey bees) as well as agricultural data from Great Britain. We first calibrated the SDM on a representative sample of bee and hoverfly crop pollinator species, evaluating the effects of different settings on model performance and on its capacity to identify the most important predictors. The importance of the different predictors was better resolved by SDM derived from simpler functions, with consistent results for bees and hoverflies. We then used the species distributions from the calibrated model to predict pollination service of wild and managed pollinators, using field beans as a test case. The PSM allowed us to spatially characterize the contribution of wild and managed pollinators and also identify areas potentially vulnerable to low pollination service provision, which can help direct local scale interventions. This approach can be extended to investigate geographical mismatches between crop pollination demand and the availability of pollinators, resulting from environmental change or policy scenarios.
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spelling pubmed-37965552013-10-23 Species Distribution Models for Crop Pollination: A Modelling Framework Applied to Great Britain Polce, Chiara Termansen, Mette Aguirre-Gutiérrez, Jesus Boatman, Nigel D. Budge, Giles E. Crowe, Andrew Garratt, Michael P. Pietravalle, Stéphane Potts, Simon G. Ramirez, Jorge A. Somerwill, Kate E. Biesmeijer, Jacobus C. PLoS One Research Article Insect pollination benefits over three quarters of the world's major crops. There is growing concern that observed declines in pollinators may impact on production and revenues from animal pollinated crops. Knowing the distribution of pollinators is therefore crucial for estimating their availability to pollinate crops; however, in general, we have an incomplete knowledge of where these pollinators occur. We propose a method to predict geographical patterns of pollination service to crops, novel in two elements: the use of pollinator records rather than expert knowledge to predict pollinator occurrence, and the inclusion of the managed pollinator supply. We integrated a maximum entropy species distribution model (SDM) with an existing pollination service model (PSM) to derive the availability of pollinators for crop pollination. We used nation-wide records of wild and managed pollinators (honey bees) as well as agricultural data from Great Britain. We first calibrated the SDM on a representative sample of bee and hoverfly crop pollinator species, evaluating the effects of different settings on model performance and on its capacity to identify the most important predictors. The importance of the different predictors was better resolved by SDM derived from simpler functions, with consistent results for bees and hoverflies. We then used the species distributions from the calibrated model to predict pollination service of wild and managed pollinators, using field beans as a test case. The PSM allowed us to spatially characterize the contribution of wild and managed pollinators and also identify areas potentially vulnerable to low pollination service provision, which can help direct local scale interventions. This approach can be extended to investigate geographical mismatches between crop pollination demand and the availability of pollinators, resulting from environmental change or policy scenarios. Public Library of Science 2013-10-14 /pmc/articles/PMC3796555/ /pubmed/24155899 http://dx.doi.org/10.1371/journal.pone.0076308 Text en © 2013 Polce 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
Polce, Chiara
Termansen, Mette
Aguirre-Gutiérrez, Jesus
Boatman, Nigel D.
Budge, Giles E.
Crowe, Andrew
Garratt, Michael P.
Pietravalle, Stéphane
Potts, Simon G.
Ramirez, Jorge A.
Somerwill, Kate E.
Biesmeijer, Jacobus C.
Species Distribution Models for Crop Pollination: A Modelling Framework Applied to Great Britain
title Species Distribution Models for Crop Pollination: A Modelling Framework Applied to Great Britain
title_full Species Distribution Models for Crop Pollination: A Modelling Framework Applied to Great Britain
title_fullStr Species Distribution Models for Crop Pollination: A Modelling Framework Applied to Great Britain
title_full_unstemmed Species Distribution Models for Crop Pollination: A Modelling Framework Applied to Great Britain
title_short Species Distribution Models for Crop Pollination: A Modelling Framework Applied to Great Britain
title_sort species distribution models for crop pollination: a modelling framework applied to great britain
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3796555/
https://www.ncbi.nlm.nih.gov/pubmed/24155899
http://dx.doi.org/10.1371/journal.pone.0076308
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