School of Public Health and Management, Chongqing Medical University, Chongqing 400016, China.
Chongqing Municipal Center for Disease Control and Prevention, Chongqing 400042, China.
Int J Environ Res Public Health. 2022 May 29;19(11):6625. doi: 10.3390/ijerph19116625.
(1) Background: To explore whether meteorological factors have an impact on the prevalence of mumps, and to make a short−term prediction of the case number of mumps in Chongqing. (2) Methods: K−means clustering algorithm was used to divide the monthly mumps cases of each year into the high and low case number clusters, and Student t−test was applied for difference analysis. The cross−correlation function (CCF) was used to evaluate the correlation between the meteorological factors and mumps, and an ARIMAX model was constructed by additionally incorporating meteorological factors as exogenous variables in the ARIMA model, and a short−term prediction was conducted for mumps in Chongqing, evaluated by MAE, RMSE. (3) Results: All the meteorological factors were significantly different (p < 0.05), except for the relative humidity between the high and low case number clusters. The CCF and ARIMAX model showed that monthly precipitation, temperature, relative humidity and wind velocity were associated with mumps, and there were significant lag effects. The ARIMAX model could accurately predict mumps in the short term, and the prediction errors (MAE, RMSE) were lower than those of the ARIMA model. (4) Conclusions: Meteorological factors can affect the occurrence of mumps, and the ARIMAX model can effectively predict the incidence trend of mumps in Chongqing, which can provide an early warning for relevant departments.
(1) 背景:探讨气象因素是否对流行性腮腺炎发病有影响,并对重庆市流行性腮腺炎发病例数进行短期预测。(2) 方法:采用 K−means 聚类算法将每年的流行性腮腺炎月发病例数分为高发和低发病例聚类,应用 Student t−检验进行差异分析。采用交叉相关函数(CCF)评价气象因素与流行性腮腺炎的相关性,将气象因素作为外生变量加入到 ARIMA 模型中构建 ARIMAX 模型,并对重庆市流行性腮腺炎进行短期预测,通过平均绝对误差(MAE)和均方根误差(RMSE)进行评价。(3) 结果:除高发和低发病例聚类的相对湿度外,各气象因素均有显著性差异(p < 0.05)。CCF 和 ARIMAX 模型表明,月降水量、月平均气温、月相对湿度和月风速与流行性腮腺炎有关,且存在明显的滞后效应。ARIMAX 模型可较准确地对短期流行性腮腺炎进行预测,预测误差(MAE、RMSE)均低于 ARIMA 模型。(4) 结论:气象因素可影响流行性腮腺炎的发生,ARIMAX 模型可有效预测重庆市流行性腮腺炎发病趋势,为相关部门提供早期预警。