Abstract:Objective Hopfield neural network model was established to assessment the risk of sporadic measles outbreaks and identify high risk areas. Methods 9 indicators were determined as parameters to model the Hopfield neural network using Matrix lab software. The indicators included four types of the incidence, vaccination rate, running quality of measles monitoring system, and disposition of epidemic spot. Results The level of the risk of sporadic measles outbreaks in Xiangzhou District was identified as "extreme high risk". The risk level of Jinwan District, Doumen District was "high risk"and"low risk",respectively. Conclusions Hopfield neural network model could be used to assessment the risk of sporadic measles outbreaks and identify high risk areas preliminarily.
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