Xiao Yuhan, Li Yanyan, Li Yuhong, Yu Chongchong, Bai Yichun, Wang Lei, Wang Yongbin
Department of Epidemiology and Health Statistics, School of Public Health, Xinxiang Medical University, Xinxiang, Henan Province, People's Republic of China.
National Center for Tuberculosis Control and Prevention, China Center for Disease Control and Prevention, Beijing, People's Republic of China.
Infect Drug Resist. 2021 Sep 21;14:3849-3862. doi: 10.2147/IDR.S325787. eCollection 2021.
We aim to examine the adequacy of an innovation state-space modeling framework (called TBATS) in forecasting the long-term epidemic seasonality and trends of hemorrhagic fever with renal syndrome (HFRS).
The HFRS morbidity data from January 1995 to December 2020 were taken, and subsequently, the data were split into six different training and testing segments (including 12, 24, 36, 60, 84, and 108 holdout monthly data) to investigate its predictive ability of the TBATS method, and its forecasting performance was compared with the seasonal autoregressive integrated moving average (SARIMA).
The TBATS (0.27, {0,0}, -, {<12,4>}) and SARIMA (0,1,(1,3))(0,1,1) were selected as the best TBATS and SARIMA methods, respectively, for the 12-step ahead prediction. The mean absolute deviation, root mean square error, mean absolute percentage error, mean error rate, and root mean square percentage error were 91.799, 14.772, 123.653, 0.129, and 0.193, respectively, for the preferred TBATS method and were 144.734, 25.049, 161.671, 0.203, and 0.296, respectively, for the preferred SARIMA method. Likewise, for the 24-, 36-, 60-, 84-, and 108-step ahead predictions, the preferred TBATS methods produced smaller forecasting errors over the best SARIMA methods. Further validations also suggested that the TBATS model outperformed the Error-Trend-Seasonal framework, with little exception. HFRS had dual seasonal behaviors, peaking in May-June and November-December. Overall a notable decrease in the HFRS morbidity was seen during the study period (average annual percentage change=-6.767, 95% confidence intervals: -10.592 to -2.778), and yet different stages had different variation trends. Besides, the TBATS model predicted a plateau in the HFRS morbidity in the next ten years.
The TBATS approach outperforms the SARIMA approach in estimating the long-term epidemic seasonality and trends of HFRS, which is capable of being deemed as a promising alternative to help stakeholders to inform future preventive policy or practical solutions to tackle the evolving scenarios.
我们旨在检验一种创新的状态空间建模框架(称为TBATS)在预测肾综合征出血热(HFRS)长期流行季节性和趋势方面的适用性。
获取1995年1月至2020年12月的HFRS发病数据,随后将数据分为六个不同的训练和测试部分(包括12、24、36、60、84和108个留出的月度数据),以研究TBATS方法的预测能力,并将其预测性能与季节性自回归积分移动平均(SARIMA)进行比较。
TBATS(0.27, {0,0}, -, {<12,4>})和SARIMA(0,1,(1,3))(0,1,1)分别被选为12步超前预测的最佳TBATS和SARIMA方法。对于首选的TBATS方法,平均绝对偏差、均方根误差、平均绝对百分比误差、平均误差率和均方根百分比误差分别为91.799、14.772、123.653、0.129和0.193,对于首选的SARIMA方法分别为144.734、25.049、161.671、0.203和0.296。同样,对于24步、36步、60步、84步和108步超前预测,首选的TBATS方法比最佳的SARIMA方法产生的预测误差更小。进一步验证还表明,TBATS模型除了极少数情况外,优于误差-趋势-季节性框架。HFRS具有双重季节性特征,在5月至6月和11月至12月达到高峰。总体而言,在研究期间HFRS发病率显著下降(年均变化百分比=-6.767,95%置信区间:-10.592至-2.778),但不同阶段有不同的变化趋势。此外,TBATS模型预测未来十年HFRS发病率将趋于平稳。
在估计HFRS的长期流行季节性和趋势方面,TBATS方法优于SARIMA方法,可被视为一种有前景的替代方法,有助于利益相关者制定未来的预防政策或应对不断变化情况的实际解决方案。