Node-IBD: A Dynamic Isolation Optimization Algorithm for Infection Prevention and Control Based on Influence Diffusion
Abstract: In the infection prevention and control of epidemics, isolation has always been an important means for mankind to curb the spread of the epidemic. Isolation targets not only confirmed patients, their close contacts and sub-close contacts, and other groups at risk. It is clearly impractical to isolate all the groups with risk. In this paper, we propose an isolation optimization algorithm Node-IBD maximizing influence blocking, aiming to isolate a certain percentage of these close contacts or sub-close contacts to maximize the prevention effect and curb the spread of the epidemic. The possibility of spread of the epidemic can be minimized even when potentially infected persons in the risk population cannot be identified. This paper proves the feasibility and effectiveness of the isolation algorithm through the experiments of static contact network and dynamic contact network. It is expected to provide a useful strategy for future epidemic prevention.
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