Guo Xiaojun, Liu Sifeng, Wu Lifeng, Tang Lingling
School of Science, Nantong University, Nantong, Jiangsu Province, China; College of Economics and Management, Nanjing University of Aeronautics and Astronautics, Nanjing, Jiangsu Province, China.
College of Economics and Management, Nanjing University of Aeronautics and Astronautics, Nanjing, Jiangsu Province, China.
PLoS One. 2014 Dec 29;9(12):e115664. doi: 10.1371/journal.pone.0115664. eCollection 2014.
In this study, a novel grey self-memory coupling model was developed to forecast the incidence rates of two notifiable infectious diseases (dysentery and gonorrhea); the effectiveness and applicability of this model was assessed based on its ability to predict the epidemiological trend of infectious diseases in China.
The linear model, the conventional GM(1,1) model and the GM(1,1) model with self-memory principle (SMGM(1,1) model) were used to predict the incidence rates of the two notifiable infectious diseases based on statistical incidence data. Both simulation accuracy and prediction accuracy were assessed to compare the predictive performances of the three models. The best-fit model was applied to predict future incidence rates.
Simulation results show that the SMGM(1,1) model can take full advantage of the systematic multi-time historical data and possesses superior predictive performance compared with the linear model and the conventional GM(1,1) model. By applying the novel SMGM(1,1) model, we obtained the possible incidence rates of the two representative notifiable infectious diseases in China.
The disadvantages of the conventional grey prediction model, such as sensitivity to initial value, can be overcome by the self-memory principle. The novel grey self-memory coupling model can predict the incidence rates of infectious diseases more accurately than the conventional model, and may provide useful references for making decisions involving infectious disease prevention and control.
本研究开发了一种新型灰色自记忆耦合模型,用于预测两种法定传染病(痢疾和淋病)的发病率;基于其预测中国传染病流行趋势的能力,评估该模型的有效性和适用性。
基于统计发病率数据,使用线性模型、传统GM(1,1)模型和具有自记忆原理的GM(1,1)模型(SMGM(1,1)模型)预测两种法定传染病的发病率。评估模拟精度和预测精度,以比较三种模型的预测性能。应用最佳拟合模型预测未来发病率。
模拟结果表明,SMGM(1,1)模型能够充分利用系统的多期历史数据,与线性模型和传统GM(1,1)模型相比,具有卓越的预测性能。通过应用新型SMGM(1,1)模型,我们得出了中国两种代表性法定传染病的可能发病率。
自记忆原理可以克服传统灰色预测模型对初始值敏感等缺点。新型灰色自记忆耦合模型比传统模型能更准确地预测传染病发病率,可为传染病预防控制决策提供有益参考。