Real-Time Surveillance of Dog Bite Incidence in Islamabad: A Cross-Sectional Study from December 2019 to July 2020

Zoonotic Diseases(2023)

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摘要
Rabies is a neglected viral zoonotic disease with an almost 100% fatality rate. A pilot project was initiated by the National Institute of Health (NIH), Islamabad, in collaboration with Health Security Partners (HSP) to establish a real-time dog bite surveillance in humans in public sector secondary care hospitals of Islamabad. The main objective of this study was to analyze different characteristics of dog bite cases, identify gaps in surveillance, and recommend suggestions to improve and strengthen real-time dog bite surveillance systems. An observational cross-sectional study was conducted in two major public sector hospitals in Islamabad from December 2019 to July 2020. Data on demographic information, site of the dog bite, category of the dog bite, and treatment was collected via a WVS mobile-based application. Descriptive analysis was carried out for different variables at a p-value of <0.05. A total of 338 dog bite cases were captured in the World Veterinary Service (WVS) application, and most cases (n = 226, 85.6%) were reported in December 2019 with a male-to-female ratio of 2:1. Most cases were reported from the age group of 22 to 31 years (n = 178, 53%). Out of the total number of cases, 263 (78%) presented with a single anatomical location, and 174 (51%) had Category II wounds. All dog bite patients were given only the first dose of the anti-rabies vaccine at the hospital level. Real-time dog bite surveillance via a mobile-based application proved to be effective for the timely recording and management of dog bite cases. Young people were reported to be mostly affected by dog bites, and nearly half of the cases were managed in hospitals. Refresher training was conducted for medics and paramedics for mobile-based applications, dog bite management, and proper referral of cases to tertiary care hospitals.
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关键词
dog bite incidence,islamabad,real-time,cross-sectional
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