Predicting the spatio-temporal distribution of <it>Culicoides imicola</it> in Sardinia using a discrete-time population model

<p>Abstract</p> <p>Background</p> <p><it>Culicoides imicola</it> KIEFFER, 1913 (Diptera: Ceratopogonidae) is the principal vector of Bluetongue disease in the Mediterranean basin, Africa and Asia. Previous studies have identified a range of eco-climatic vari...

Full description

Bibliographic Details
Main Authors: Rigot Thibaud, Conte Annamaria, Goffredo Maria, Ducheyne Els, Hendrickx Guy, Gilbert Marius
Format: Article
Language:English
Published: BMC 2012-11-01
Series:Parasites & Vectors
Subjects:
Online Access:http://www.parasitesandvectors.com/content/5/1/270
id doaj-e2a70a9a178445dbacc4fb6d214460d9
record_format Article
spelling doaj-e2a70a9a178445dbacc4fb6d214460d92020-11-24T21:13:35ZengBMCParasites & Vectors1756-33052012-11-015127010.1186/1756-3305-5-270Predicting the spatio-temporal distribution of <it>Culicoides imicola</it> in Sardinia using a discrete-time population modelRigot ThibaudConte AnnamariaGoffredo MariaDucheyne ElsHendrickx GuyGilbert Marius<p>Abstract</p> <p>Background</p> <p><it>Culicoides imicola</it> KIEFFER, 1913 (Diptera: Ceratopogonidae) is the principal vector of Bluetongue disease in the Mediterranean basin, Africa and Asia. Previous studies have identified a range of eco-climatic variables associated with the distribution of <it>C. imicola</it>, and these relationships have been used to predict the large-scale distribution of the vector. However, these studies are not temporally-explicit and can not be used to predict the seasonality in <it>C. imicola</it> abundances. Between 2001 and 2006, longitudinal entomological surveillance was carried out throughout Italy, and provided a comprehensive spatio-temporal dataset of <it>C. imicola</it> catches in Onderstepoort-type black-light traps, in particular in Sardinia where the species is considered endemic.</p> <p>Methods</p> <p>We built a dynamic model that allows describing the effect of eco-climatic indicators on the monthly abundances of <it>C. imicola</it> in Sardinia. Model precision and accuracy were evaluated according to the influence of process and observation errors.</p> <p>Results</p> <p>A first-order autoregressive cofactor, a digital elevation model and MODIS Land Surface Temperature (LST)/or temperatures acquired from weather stations explained ~77% of the variability encountered in the samplings carried out in 9 sites during 6 years. Incorporating Normalized Difference Vegetation Index (NDVI) or rainfall did not increase the model's predictive capacity. On average, dynamics simulations showed good accuracy (predicted vs. observed r corr = 0.9). Although the model did not always reproduce the absolute levels of monthly abundances peaks, it succeeded in reproducing the seasonality in population level and allowed identifying the periods of low abundances and with no apparent activity. On that basis, we mapped <it>C. imicola</it> monthly distribution over the entire Sardinian region.</p> <p>Conclusions</p> <p>This study demonstrated prospects for modelling data arising from <it>Culicoides</it> longitudinal entomological surveillance. The framework explicitly incorporates the influence of eco-climatic factors on population growth rates and accounts for observation and process errors. Upon validation, such a model could be used to predict monthly population abundances on the basis of environmental conditions, and hence can potentially reduce the amount of entomological surveillance.</p> http://www.parasitesandvectors.com/content/5/1/270Spatial ecologyInfectious diseaseRemote-sensingDynamic modelLongitudinal entomological surveillance networkMediterranean basin
collection DOAJ
language English
format Article
sources DOAJ
author Rigot Thibaud
Conte Annamaria
Goffredo Maria
Ducheyne Els
Hendrickx Guy
Gilbert Marius
spellingShingle Rigot Thibaud
Conte Annamaria
Goffredo Maria
Ducheyne Els
Hendrickx Guy
Gilbert Marius
Predicting the spatio-temporal distribution of <it>Culicoides imicola</it> in Sardinia using a discrete-time population model
Parasites & Vectors
Spatial ecology
Infectious disease
Remote-sensing
Dynamic model
Longitudinal entomological surveillance network
Mediterranean basin
author_facet Rigot Thibaud
Conte Annamaria
Goffredo Maria
Ducheyne Els
Hendrickx Guy
Gilbert Marius
author_sort Rigot Thibaud
title Predicting the spatio-temporal distribution of <it>Culicoides imicola</it> in Sardinia using a discrete-time population model
title_short Predicting the spatio-temporal distribution of <it>Culicoides imicola</it> in Sardinia using a discrete-time population model
title_full Predicting the spatio-temporal distribution of <it>Culicoides imicola</it> in Sardinia using a discrete-time population model
title_fullStr Predicting the spatio-temporal distribution of <it>Culicoides imicola</it> in Sardinia using a discrete-time population model
title_full_unstemmed Predicting the spatio-temporal distribution of <it>Culicoides imicola</it> in Sardinia using a discrete-time population model
title_sort predicting the spatio-temporal distribution of <it>culicoides imicola</it> in sardinia using a discrete-time population model
publisher BMC
series Parasites & Vectors
issn 1756-3305
publishDate 2012-11-01
description <p>Abstract</p> <p>Background</p> <p><it>Culicoides imicola</it> KIEFFER, 1913 (Diptera: Ceratopogonidae) is the principal vector of Bluetongue disease in the Mediterranean basin, Africa and Asia. Previous studies have identified a range of eco-climatic variables associated with the distribution of <it>C. imicola</it>, and these relationships have been used to predict the large-scale distribution of the vector. However, these studies are not temporally-explicit and can not be used to predict the seasonality in <it>C. imicola</it> abundances. Between 2001 and 2006, longitudinal entomological surveillance was carried out throughout Italy, and provided a comprehensive spatio-temporal dataset of <it>C. imicola</it> catches in Onderstepoort-type black-light traps, in particular in Sardinia where the species is considered endemic.</p> <p>Methods</p> <p>We built a dynamic model that allows describing the effect of eco-climatic indicators on the monthly abundances of <it>C. imicola</it> in Sardinia. Model precision and accuracy were evaluated according to the influence of process and observation errors.</p> <p>Results</p> <p>A first-order autoregressive cofactor, a digital elevation model and MODIS Land Surface Temperature (LST)/or temperatures acquired from weather stations explained ~77% of the variability encountered in the samplings carried out in 9 sites during 6 years. Incorporating Normalized Difference Vegetation Index (NDVI) or rainfall did not increase the model's predictive capacity. On average, dynamics simulations showed good accuracy (predicted vs. observed r corr = 0.9). Although the model did not always reproduce the absolute levels of monthly abundances peaks, it succeeded in reproducing the seasonality in population level and allowed identifying the periods of low abundances and with no apparent activity. On that basis, we mapped <it>C. imicola</it> monthly distribution over the entire Sardinian region.</p> <p>Conclusions</p> <p>This study demonstrated prospects for modelling data arising from <it>Culicoides</it> longitudinal entomological surveillance. The framework explicitly incorporates the influence of eco-climatic factors on population growth rates and accounts for observation and process errors. Upon validation, such a model could be used to predict monthly population abundances on the basis of environmental conditions, and hence can potentially reduce the amount of entomological surveillance.</p>
topic Spatial ecology
Infectious disease
Remote-sensing
Dynamic model
Longitudinal entomological surveillance network
Mediterranean basin
url http://www.parasitesandvectors.com/content/5/1/270
work_keys_str_mv AT rigotthibaud predictingthespatiotemporaldistributionofitculicoidesimicolaitinsardiniausingadiscretetimepopulationmodel
AT conteannamaria predictingthespatiotemporaldistributionofitculicoidesimicolaitinsardiniausingadiscretetimepopulationmodel
AT goffredomaria predictingthespatiotemporaldistributionofitculicoidesimicolaitinsardiniausingadiscretetimepopulationmodel
AT ducheyneels predictingthespatiotemporaldistributionofitculicoidesimicolaitinsardiniausingadiscretetimepopulationmodel
AT hendrickxguy predictingthespatiotemporaldistributionofitculicoidesimicolaitinsardiniausingadiscretetimepopulationmodel
AT gilbertmarius predictingthespatiotemporaldistributionofitculicoidesimicolaitinsardiniausingadiscretetimepopulationmodel
_version_ 1716748754114052096