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季节分解法和ARIMA法预测乌鲁木齐市肺结核发病趋势效果分析
引用本文:温亮,张秀山,李承毅,褚宸一,王勇,陈阳贵,李申龙.季节分解法和ARIMA法预测乌鲁木齐市肺结核发病趋势效果分析[J].军事医学,2017,41(4).
作者姓名:温亮  张秀山  李承毅  褚宸一  王勇  陈阳贵  李申龙
作者单位:1. 军事医学科学院疾病预防控制所,北京,100071;2. 新疆乌鲁木齐市疾病预防控制中心,乌鲁木齐,830026
基金项目:全军后勤科研重大项目,全军后勤科研重点项目,新疆维吾尔自治区自然科学基金资助项目
摘    要:目的 比较时间序列季节分解法和差分自回归滑动平均(ARIMA)法预测肺结核发病趋势的效果,为肺结核预测预警提供科学依据.方法 对新疆乌鲁木齐市2005年1月至2014年12月肺结核月发病率时间序列分别构建季节分解拟合模型和ARIMA拟合模型,对2015年各月发病率分别进行预测并与实际发病率进行比较.结果 乌鲁木齐市肺结核流行表现出春季高发的年度周期性.应用季节分解法构建的拟合模型中,线性模型和三次曲线模型对2015年各月发病率预测结果的平均绝对百分误差(MAPE)分别为18.75%和92.25%,线性模型预测值整体上低于实际值,三次曲线模型预测值整体上高于实际值;应用ARIMA方法构建的拟合模型为ARIMA(2,1,1)(1,1,0)12,对2015年各月发病率预测结果的MAPE为9.46%,整体上预测值和实际值无明显差异.结论ARIMA法较季节分解法对乌鲁木齐市肺结核发病率的预测效果更佳.

关 键 词:时间序列分析  季节分解  ARIMA模型  肺结核  预测

Seasonal decomposition and ARIMA methods in prediction of tuberculosis incidence in Urumqi,China
Authors:WEN Liang  ZHANG Xiu-shan  LI Cheng-yi  CHU Chen-yi  WANG Yong  CHEN Yang-gui  LI Shen-long
Abstract:Objective To compare the accuracy of the seasonal time series decomposition method and autoregressive integrated moving average (ARIMA) in the prediction of incidence of tuberculosis(TB) in order to facilitate early-warning.Methods The seasonal decomposition model and ARIMA model were constructed by SPSS20.0 software based on time series of monthly TB incidence between January 2005 and December 2014 in Urumqi,China.The obtained models were used to forecast the monthly incidence in 2015 and compared with the actual incidence respectively.Results Between 2005 and 2014,the incidence of TB was higher during March,April and May in Urumqi.A linear fitting model and a cubic curve fitting model were constructed by the time series seasonal decomposition method.The mean absolute percentage error (MAPE) of each predicted monthly incidence in 2015 was 18.75% and 92.25%,respectively.The predicted values of the linear model were lower than actual values and the predicted values of the cubic curve model were higher than actual values.An ARIMA (2,1,1) (1,1,0)12 fitting model was established by ARIMA method.The MAPE of each predicted monthly incidence in 2015 was 9.46% and there were no significant differences between the predicted and actual values.Conclusion The ARIMA method is better than the seasonal decomposition method for predicting the monthly incidence of TB in Urumqi.
Keywords:time series analysis  seasonal decomposition  autoregressive integrated moving average model  tuberculosis  prediction
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