2020
DOI: 10.3389/fvets.2020.00068
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Near Real-Time Monitoring of Clinical Events Detected in Swine Herds in Northeastern Spain

Abstract: Novel techniques of data mining and time series analyses allow the development of new methods to analyze information relating to the health status of the swine population in near real-time. A swine health monitoring system based on the reporting of clinical events detected at farm level has been in operation in Northeastern Spain since 2012. This initiative was supported by swine stakeholders and veterinary practitioners of the Catalonia, Aragon, and Navarra regions. The system aims to evidence the occurrence … Show more

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Cited by 4 publications
(2 citation statements)
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“…Used in a statistical model, these data could facilitate the creation of an early warning system, when combined with a time-series modelling framework such as that proposed by Meyer et al 33 . This modelling framework has previously been applied in human health modelling 34 37 , as well as modelling rabies in foxes 38 , Campylobacter in poultry 39 , and diseases in pigs 40 . Thus, this modelling framework has yet unexplored potential for use in modelling the risk of AIV transmission.…”
Section: Introductionmentioning
confidence: 99%
“…Used in a statistical model, these data could facilitate the creation of an early warning system, when combined with a time-series modelling framework such as that proposed by Meyer et al 33 . This modelling framework has previously been applied in human health modelling 34 37 , as well as modelling rabies in foxes 38 , Campylobacter in poultry 39 , and diseases in pigs 40 . Thus, this modelling framework has yet unexplored potential for use in modelling the risk of AIV transmission.…”
Section: Introductionmentioning
confidence: 99%
“…That kind of data is essential for detecting changes in the incidence or prevalence of the disease, deciding whether control measures are needed, or evaluating the implementation of those measures. While technological progress has contributed to the development of tools that allow monitoring the occurrence of endemic diseases in almost real-time, e.g., Alba-Casals et al ( 49 ), their application is still restricted to a limited number of farms/companies, which are not necessarily representative of the whole swine sector. Therefore, alternative methods need to be used for the assessment of endemic diseases and their impact at the country level.…”
Section: Discussionmentioning
confidence: 99%