Mehnaz Adnan, Ben Waite, Richard Dean, C. Newbern, T. Wood, Raewyn Campbell, Nooriyan Poonawala-Lohani
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Enabling Near Real-time Surveillance of Influenza-like Illness
Traditional public health surveillance systems would benefit from near real-time data integration and visualization that combines information from traditional and internet sources. In this paper, we describe a prototype system implemented to better automate the process of data collection, analysis and visualization of Influenza-Like Illness surveillance data. This approach enables timelier responses to abnormal events such as clusters, outbreaks and trends.