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Use of spatiotemporal analysis of laboratory submission data to identify potential outbreaks of new or emerging diseases in cattle in Great Britain
Authors:Kieran Hyder  Alberto Vidal-Diez  Joanna Lawes  A Robin Sayers  Ailsa Milnes  Linda Hoinville  Alasdair JC Cook
Institution:(1) Centre for Epidemiology & Risk Analysis, Veterinary Laboratories Agency, KT15 3NB New Haw, Addlestone, Surrey, UK;(2) Veterinary Laboratories Agency, Langford House, BS40 5DX Langford, Bristol, UK;(3) Centre for Environment, Fisheries and Aquaculture Science, Pakefield Road, NR33 0HT Lowestoft, Suffolk, UK
Abstract:

Background  

New and emerging diseases of livestock may impact animal welfare, trade and public health. Early detection of outbreaks can reduce the impact of these diseases by triggering control measures that limit the number of cases that occur. The aim of this study was to investigate whether prospective spatiotemporal methods could be used to identify outbreaks of new and emerging diseases in scanning surveillance data. SaTScan was used to identify clusters of unusually high levels of submissions where a diagnosis could not be reached (DNR) using different probability models and baselines. The clusters detected were subjected to a further selection process to reduce the number of false positives and a more detailed epidemiological analysis to ascertain whether they were likely to represent real outbreaks.
Keywords:
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