Yan Wei-Rong, Shi Lv-Yuan, Zhang Hui-Juan, Zhou Yi-Kai
Department of Epidemiology and Biostatistics, School of Public Health, Tongji Medical College, Wuhan 430030, China.
Zhonghua Liu Xing Bing Xue Za Zhi. 2007 Dec;28(12):1219-22.
It is important to forecast incidence rates of infectious disease for the development of a better program on its prevention and control. Since the incidence rate of infectious disease is influenced by multiple factors, and the action mechanisms of these factors are usually unable to be described with accurate mathematical linguistic forms, the radial basis function (RBF) neural network is introduced to solve the nonlinear approximation issues and to predict incidence rates of infectious disease. The forecasting model is constructed under data from hepatitis B monthly incidence rate reports from 1991-2002. After learning and training on the basic concepts of the network, simulation experiments are completed, and then the incidence rates from Jan. 2003-Jun. 2003 forecasted by the established model. Through comparing with the actual incidence rate, the reliability of the model is evaluated. When comparing with ARIMA model, RBF network model seems to be more effective and feasible for predicting the incidence rates of infectious disease, observed in the short term.
预测传染病发病率对于制定更好的防控计划至关重要。由于传染病发病率受多种因素影响,且这些因素的作用机制通常无法用精确的数学语言形式描述,因此引入径向基函数(RBF)神经网络来解决非线性逼近问题并预测传染病发病率。基于1991 - 2002年乙肝月发病率报告数据构建预测模型。在对网络基本概念进行学习和训练后,完成模拟实验,然后用所建立的模型预测2003年1月至2003年6月的发病率。通过与实际发病率进行比较,评估模型的可靠性。与ARIMA模型相比,在短期预测传染病发病率方面,RBF网络模型似乎更有效且可行。