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Article Dans Une Revue Parasites & Vectors Année : 2020

Modelling the monthly abundance of Culicoides biting midges in nine European countries using Random Forests machine learning

Wesley Tack
  • Fonction : Auteur

Résumé

Background: Culicoides biting midges transmit viruses resulting in disease in ruminants and equids such as bluetongue, Schmallenberg disease and African horse sickness. In the past decades, these diseases have led to important economic losses for farmers in Europe. Vector abundance is a key factor in determining the risk of vector-borne disease spread and it is, therefore, important to predict the abundance of Culicoides species involved in the transmission of these pathogens. The objectives of this study were to model and map the monthly abundances of Culicoides in Europe. Methods: We obtained entomological data from 904 farms in nine European countries (and Norway) from 2007 to 2013. Using environmental and climatic predictors from satellite imagery and the machine learning technique Random Forests, we predicted the monthly average abundance at a 1 km 2 resolution. We used independent test sets for validation and to assess model performance. Results: The predictive power of the resulting models varied according to month and the Culicoides species/ensem-bles predicted. Model performance was lower for winter months. Performance was higher for the Obsoletus ensemble , followed by the Pulicaris ensemble, while the model for Culicoides imicola showed a poor performance. Distribution and abundance patterns corresponded well with the known distributions in Europe. The Random Forests model approach was able to distinguish differences in abundance between countries but was not able to predict vector abundance at individual farm level.
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hal-02619376 , version 1 (25-05-2020)

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Ana Carolina Cuéllar, Jung Kjaer, Andreas Baum, Anders Stockmarr, Henrik Skovgard, et al.. Modelling the monthly abundance of Culicoides biting midges in nine European countries using Random Forests machine learning. Parasites & Vectors, 2020, 13 (1), ⟨10.1186/s13071-020-04053-x⟩. ⟨hal-02619376⟩
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