TY - JOUR
T1 - Spatial-temporal clustering of companion animal enteric syndrome
T2 - Detection and investigation through the use of electronic medical records from participating private practices
AU - Anholt, R. M.
AU - Berezowski, J.
AU - Robertson, C.
AU - Stephen, C.
PY - 2015/9/1
Y1 - 2015/9/1
N2 - There is interest in the potential of companion animal surveillance to provide data to improve pet health and to provide early warning of environmental hazards to people. We implemented a companion animal surveillance system in Calgary, Alberta and the surrounding communities. Informatics technologies automatically extracted electronic medical records from participating veterinary practices and identified cases of enteric syndrome in the warehoused records. The data were analysed using time-series analyses and a retrospective space-time permutation scan statistic. We identified a seasonal pattern of reports of occurrences of enteric syndromes in companion animals and four statistically significant clusters of enteric syndrome cases. The cases within each cluster were examined and information about the animals involved (species, age, sex), their vaccination history, possible exposure or risk behaviour history, information about disease severity, and the aetiological diagnosis was collected. We then assessed whether the cases within the cluster were unusual and if they represented an animal or public health threat. There was often insufficient information recorded in the medical record to characterize the clusters by aetiology or exposures. Space-time analysis of companion animal enteric syndrome cases found evidence of clustering. Collection of more epidemiologically relevant data would enhance the utility of practice-based companion animal surveillance.
AB - There is interest in the potential of companion animal surveillance to provide data to improve pet health and to provide early warning of environmental hazards to people. We implemented a companion animal surveillance system in Calgary, Alberta and the surrounding communities. Informatics technologies automatically extracted electronic medical records from participating veterinary practices and identified cases of enteric syndrome in the warehoused records. The data were analysed using time-series analyses and a retrospective space-time permutation scan statistic. We identified a seasonal pattern of reports of occurrences of enteric syndromes in companion animals and four statistically significant clusters of enteric syndrome cases. The cases within each cluster were examined and information about the animals involved (species, age, sex), their vaccination history, possible exposure or risk behaviour history, information about disease severity, and the aetiological diagnosis was collected. We then assessed whether the cases within the cluster were unusual and if they represented an animal or public health threat. There was often insufficient information recorded in the medical record to characterize the clusters by aetiology or exposures. Space-time analysis of companion animal enteric syndrome cases found evidence of clustering. Collection of more epidemiologically relevant data would enhance the utility of practice-based companion animal surveillance.
KW - Community outbreaks
KW - gastrointestinal infections
KW - GP surveillance systems
KW - spatial modelling
KW - veterinary epidemiology
UR - http://www.scopus.com/inward/record.url?scp=84938423413&partnerID=8YFLogxK
U2 - 10.1017/S0950268814003574
DO - 10.1017/S0950268814003574
M3 - Article
C2 - 25543461
AN - SCOPUS:84938423413
SN - 0950-2688
VL - 143
SP - 2547
EP - 2558
JO - Epidemiology and Infection
JF - Epidemiology and Infection
IS - 12
ER -