This document discusses the application of a dynamic clustering algorithm in medical surveillance, emphasizing the need for real-time analysis of continuously generated medical data. It introduces a system called Sentinel that leverages a clustering algorithm to conduct real-time data analysis and issue early alerts for public health monitoring. The paper also details the challenges of analyzing streaming data and proposes methods to enhance the efficiency of clustering algorithms tailored for dynamic data.
Related topics: