Modelling the spatial distribution of Culicoides biting midges at the local scale. [237]

Purpose: The Culicoides midge vectors of bluetongue (BT) are ubiquitous on farms in the UK, but little research has explored their spatial abundance, an important determinant of disease risk. Models to explain and predict variation in their abundance are needed for effective targeting of BT control methods. Although epidemiological models are commonplace at the national scale, no investigations have taken place at a finer spatial scale. Our aim is to identify determinants of midge abundance at a local 1 km scale. Methods: Midge abundances were estimated using light traps on 35 farms in north Wales. Culicoides catches were combined with remotely-sensed ecological correlates, and on-farm host and environmental data, within a general linear model. Drivers of local scale variation were determined at the 1 km resolution. Results: Local-scale variation in Obsoletus Group abundance exhibited an almost 500-fold difference (74 to 33,720) between farms, but the Obsoletus Group model explained 81% of this variance. The variance explained was consistently high for the Pulicaris Group, C. pulicaris and C. punctatus (80%, 73%, and 74%), the other possible BTV vector species in the UK. The abundance of all vector species increased with the number of sheep on farms, but this relationship was missing from any of the non-vector models. Performance of the non-vector models was also high (65-87% variance explained), but species differed in their associations with satellite variables. Conclusions: At a large spatial scale, there is significant variation in Culicoides Obsoletus Group abundance, undermining attempts to record their nationwide distribution in larger scale models, which have historically explained the abundance of these vectors poorly. Satellite data can be used to explain a high proportion of this variation and may produce effective predictive models of disease vector abundance. Relevance: This work highlights how novel local-scale modelling of disease vectors can explain a large degree of spatial variation that national-scale models fail to explain. This should be of note to policy makers when deciding upon guidelines for entomological surveys before, during and after disease outbreaks. (Texte intégral)

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Main Authors: Kluiters, Georgette, Sugden, David, Guis, Hélène, McIntyre, K. Marie, Labuschagne, Karien, Baylis, Matthew
Format: conference_item biblioteca
Language:eng
Published: Online Abstract Submission and Invitation System
Subjects:L72 - Organismes nuisibles des animaux, L73 - Maladies des animaux, U30 - Méthodes de recherche,
Online Access:http://agritrop.cirad.fr/581809/
http://agritrop.cirad.fr/581809/1/ID581809.pdf
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spelling dig-cirad-fr-5818092021-01-04T12:17:15Z http://agritrop.cirad.fr/581809/ http://agritrop.cirad.fr/581809/ Modelling the spatial distribution of Culicoides biting midges at the local scale. [237]. Kluiters Georgette, Sugden David, Guis Hélène, McIntyre K. Marie, Labuschagne Karien, Baylis Matthew. 2016. In : 14th Conference of the International Society for Veterinary Epidemiology and Economics: planning our future. ISVEE. Mérida : Online Abstract Submission and Invitation System, Résumé, 1 p. ISVEE : Veterinary epidemiology and economics: Planning our future. 14, Mérida, Mexique, 3 Novembre 2015/7 Novembre 2015.http://isvee2015.org/ <http://isvee2015.org/> Researchers Modelling the spatial distribution of Culicoides biting midges at the local scale. [237] Kluiters, Georgette Sugden, David Guis, Hélène McIntyre, K. Marie Labuschagne, Karien Baylis, Matthew eng 2016 Online Abstract Submission and Invitation System 14th Conference of the International Society for Veterinary Epidemiology and Economics: planning our future L72 - Organismes nuisibles des animaux L73 - Maladies des animaux U30 - Méthodes de recherche Purpose: The Culicoides midge vectors of bluetongue (BT) are ubiquitous on farms in the UK, but little research has explored their spatial abundance, an important determinant of disease risk. Models to explain and predict variation in their abundance are needed for effective targeting of BT control methods. Although epidemiological models are commonplace at the national scale, no investigations have taken place at a finer spatial scale. Our aim is to identify determinants of midge abundance at a local 1 km scale. Methods: Midge abundances were estimated using light traps on 35 farms in north Wales. Culicoides catches were combined with remotely-sensed ecological correlates, and on-farm host and environmental data, within a general linear model. Drivers of local scale variation were determined at the 1 km resolution. Results: Local-scale variation in Obsoletus Group abundance exhibited an almost 500-fold difference (74 to 33,720) between farms, but the Obsoletus Group model explained 81% of this variance. The variance explained was consistently high for the Pulicaris Group, C. pulicaris and C. punctatus (80%, 73%, and 74%), the other possible BTV vector species in the UK. The abundance of all vector species increased with the number of sheep on farms, but this relationship was missing from any of the non-vector models. Performance of the non-vector models was also high (65-87% variance explained), but species differed in their associations with satellite variables. Conclusions: At a large spatial scale, there is significant variation in Culicoides Obsoletus Group abundance, undermining attempts to record their nationwide distribution in larger scale models, which have historically explained the abundance of these vectors poorly. Satellite data can be used to explain a high proportion of this variation and may produce effective predictive models of disease vector abundance. Relevance: This work highlights how novel local-scale modelling of disease vectors can explain a large degree of spatial variation that national-scale models fail to explain. This should be of note to policy makers when deciding upon guidelines for entomological surveys before, during and after disease outbreaks. (Texte intégral) conference_item info:eu-repo/semantics/conferenceObject Conference info:eu-repo/semantics/publishedVersion http://agritrop.cirad.fr/581809/1/ID581809.pdf text Cirad license info:eu-repo/semantics/openAccess https://agritrop.cirad.fr/mention_legale.html http://isvee2015.org/ info:eu-repo/semantics/altIdentifier/purl/http://isvee2015.org/
institution CIRAD FR
collection DSpace
country Francia
countrycode FR
component Bibliográfico
access En linea
databasecode dig-cirad-fr
tag biblioteca
region Europa del Oeste
libraryname Biblioteca del CIRAD Francia
language eng
topic L72 - Organismes nuisibles des animaux
L73 - Maladies des animaux
U30 - Méthodes de recherche
L72 - Organismes nuisibles des animaux
L73 - Maladies des animaux
U30 - Méthodes de recherche
spellingShingle L72 - Organismes nuisibles des animaux
L73 - Maladies des animaux
U30 - Méthodes de recherche
L72 - Organismes nuisibles des animaux
L73 - Maladies des animaux
U30 - Méthodes de recherche
Kluiters, Georgette
Sugden, David
Guis, Hélène
McIntyre, K. Marie
Labuschagne, Karien
Baylis, Matthew
Modelling the spatial distribution of Culicoides biting midges at the local scale. [237]
description Purpose: The Culicoides midge vectors of bluetongue (BT) are ubiquitous on farms in the UK, but little research has explored their spatial abundance, an important determinant of disease risk. Models to explain and predict variation in their abundance are needed for effective targeting of BT control methods. Although epidemiological models are commonplace at the national scale, no investigations have taken place at a finer spatial scale. Our aim is to identify determinants of midge abundance at a local 1 km scale. Methods: Midge abundances were estimated using light traps on 35 farms in north Wales. Culicoides catches were combined with remotely-sensed ecological correlates, and on-farm host and environmental data, within a general linear model. Drivers of local scale variation were determined at the 1 km resolution. Results: Local-scale variation in Obsoletus Group abundance exhibited an almost 500-fold difference (74 to 33,720) between farms, but the Obsoletus Group model explained 81% of this variance. The variance explained was consistently high for the Pulicaris Group, C. pulicaris and C. punctatus (80%, 73%, and 74%), the other possible BTV vector species in the UK. The abundance of all vector species increased with the number of sheep on farms, but this relationship was missing from any of the non-vector models. Performance of the non-vector models was also high (65-87% variance explained), but species differed in their associations with satellite variables. Conclusions: At a large spatial scale, there is significant variation in Culicoides Obsoletus Group abundance, undermining attempts to record their nationwide distribution in larger scale models, which have historically explained the abundance of these vectors poorly. Satellite data can be used to explain a high proportion of this variation and may produce effective predictive models of disease vector abundance. Relevance: This work highlights how novel local-scale modelling of disease vectors can explain a large degree of spatial variation that national-scale models fail to explain. This should be of note to policy makers when deciding upon guidelines for entomological surveys before, during and after disease outbreaks. (Texte intégral)
format conference_item
topic_facet L72 - Organismes nuisibles des animaux
L73 - Maladies des animaux
U30 - Méthodes de recherche
author Kluiters, Georgette
Sugden, David
Guis, Hélène
McIntyre, K. Marie
Labuschagne, Karien
Baylis, Matthew
author_facet Kluiters, Georgette
Sugden, David
Guis, Hélène
McIntyre, K. Marie
Labuschagne, Karien
Baylis, Matthew
author_sort Kluiters, Georgette
title Modelling the spatial distribution of Culicoides biting midges at the local scale. [237]
title_short Modelling the spatial distribution of Culicoides biting midges at the local scale. [237]
title_full Modelling the spatial distribution of Culicoides biting midges at the local scale. [237]
title_fullStr Modelling the spatial distribution of Culicoides biting midges at the local scale. [237]
title_full_unstemmed Modelling the spatial distribution of Culicoides biting midges at the local scale. [237]
title_sort modelling the spatial distribution of culicoides biting midges at the local scale. [237]
publisher Online Abstract Submission and Invitation System
url http://agritrop.cirad.fr/581809/
http://agritrop.cirad.fr/581809/1/ID581809.pdf
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