Peng Ying, Yu Bin, Wang Peng, Kong De-Guang, Chen Bang-Hua, Yang Xiao-Bing
Wuhan Centers for Disease Prevention and Control, Wuhan, 430015, China.
J Huazhong Univ Sci Technolog Med Sci. 2017 Dec;37(6):842-848. doi: 10.1007/s11596-017-1815-8. Epub 2017 Dec 21.
Outbreaks of hand-foot-mouth disease (HFMD) have occurred many times and caused serious health burden in China since 2008. Application of modern information technology to prediction and early response can be helpful for efficient HFMD prevention and control. A seasonal auto-regressive integrated moving average (ARIMA) model for time series analysis was designed in this study. Eighty-four-month (from January 2009 to December 2015) retrospective data obtained from the Chinese Information System for Disease Prevention and Control were subjected to ARIMA modeling. The coefficient of determination (R ), normalized Bayesian Information Criterion (BIC) and Q-test P value were used to evaluate the goodness-of-fit of constructed models. Subsequently, the best-fitted ARIMA model was applied to predict the expected incidence of HFMD from January 2016 to December 2016. The best-fitted seasonal ARIMA model was identified as (1,0,1)(0,1,1), with the largest coefficient of determination (R =0.743) and lowest normalized BIC (BIC=3.645) value. The residuals of the model also showed non-significant autocorrelations (P =0.299). The predictions by the optimum ARIMA model adequately captured the pattern in the data and exhibited two peaks of activity over the forecast interval, including a major peak during April to June, and again a light peak for September to November. The ARIMA model proposed in this study can forecast HFMD incidence trend effectively, which could provide useful support for future HFMD prevention and control in the study area. Besides, further observations should be added continually into the modeling data set, and parameters of the models should be adjusted accordingly.
自2008年以来,中国多次发生手足口病(HFMD)疫情,造成了严重的健康负担。应用现代信息技术进行预测和早期应对有助于高效防控手足口病。本研究设计了一种用于时间序列分析的季节性自回归积分滑动平均(ARIMA)模型。从中国疾病预防控制信息系统获取的84个月(2009年1月至2015年12月)回顾性数据用于ARIMA建模。使用决定系数(R)、标准化贝叶斯信息准则(BIC)和Q检验P值来评估构建模型的拟合优度。随后,将最佳拟合的ARIMA模型应用于预测2016年1月至2016年12月手足口病的预期发病率。最佳拟合的季节性ARIMA模型被确定为(1,0,1)(0,1,1),其决定系数最大(R =0.743),标准化BIC值最低(BIC=3.645)。该模型的残差也显示出非显著的自相关性(P =0.299)。最优ARIMA模型的预测充分捕捉了数据中的模式,并在预测区间内呈现出两个活动高峰,包括4月至6月的一个主要高峰,以及9月至11月的再次一个小高峰。本研究提出的ARIMA模型能够有效预测手足口病的发病趋势,可为研究地区未来手足口病的防控提供有用支持。此外,应持续将更多观测数据添加到建模数据集中,并相应调整模型参数。