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Time series analysis of influenza incidence in Chinese provinces from 2004 to 2011

机译:2004年至2011年中国各省流感发病率的时间序列分析

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Influenza as a severe infectious disease has caused catastrophes throughout human history, and every pandemic of influenza has produced a great social burden. We compiled monthly data of influenza incidence from all provinces and autonomous regions in mainland China from January 2004 to December 2011, comprehensively evaluated and classified these data, and then randomly selected 4 provinces with higher incidence (Hebei, Gansu, Guizhou, and Hunan), 2 provinces with median incidence (Tianjin and Henan), 1 province with lower incidence (Shandong), using time series analysis to construct an ARIMA model, which is based on the monthly incidence from 2004 to 2011 as the training set. We exerted the X-12-ARIMA procedure for modeling due to the seasonality these data implied. Autocorrelation function (ACF), partial autocorrelation function (PACF), and automatic model selection were to determine the order of the model parameters. The optimal model was decided by a nonseasonal and seasonal moving average test. Finally, we applied this model to predict the monthly incidence of influenza in 2012 as the test set, and the simulated incidence was compared with the observed incidence to evaluate the model's validity by the criterion of both percentage variability in regression analyses (R-2) and root mean square error (RMSE). It is conceivable that SARIMA (0,1,1)(0,1,1)(12) could simultaneously forecast the influenza incidence of the Hebei Province, Guizhou Province, Henan Province, and Shandong Province; SARIMA (1,0,0)(0,1,1)(12) could forecast the influenza incidence in Gansu Province; SARIMA (3,1,1)(0,1,1)(12) could forecast the influenza incidence in Tianjin City; and SARIMA (0,1,1)(0,0,1)(12) could forecast the influenza incidence in Hunan Province. Time series analysis is a good tool for prediction of disease incidence.
机译:流感作为一种严重的传染病,已经在整个人类历史上造成了灾难,而每一次流感大流行都产生了巨大的社会负担。我们汇总了2004年1月至2011年12月中国大陆各省市自治区的流感发病率月度数据,对这些数据进行了综合评估和分类,然后随机选择4个发病率较高的省(河北,甘肃,贵州和湖南),使用时间序列分析构建ARIMA模型,以2004年至2011年的月度发病率为基础,对2个发病率中位数的省份(天津和河南),1个发病率较低的省份(山东)进行了建模。由于这些数据暗示的季节性,我们采用了X-12-ARIMA程序进行建模。自相关函数(ACF),部分自相关函数(PACF)和自动模型选择将确定模型参数的顺序。最佳模型由非季节性和季节性移动平均值检验确定。最后,我们将该模型作为测试集预测了2012年的每月流感发病率,并将模拟发病率与观察到的发病率进行了比较,以回归分析中两个百分比变异性的标准来评估模型的有效性(R-2)和均方根误差(RMSE)。可以想象,SARIMA(0,1,1)(0,1,1)(12)可以同时预测河北省,贵州省,河南省和山东省的流感发病率; SARIMA(1,0,0)(0,1,1)(12)可以预测甘肃省的流感发病率; SARIMA(3,1,1)(0,1,1)(12)可以预测天津市的流感发生率; SARIMA(0,1,1)(0,0,1)(12)可以预测湖南省的流感发病率。时间序列分析是预测疾病发生率的好工具。

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