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利用一个开发的模型预测2005 - 2011年中国辽宁省大连市基于气象变量的月度病例报告中临床诊断的痢疾发病率。

PREDICTING CLINICALLY DIAGNOSED DYSENTERY INCIDENCE OBTAINED FROM MONTHLY CASE REPORTING BASED ON METEOROLOGICAL VARIABLES IN DALIAN, LIAONING PROVINCE, CHINA, 2005-2011 USING A DEVELOPED MODEL.

作者信息

An Qingyu, Yao Wei, Wu Jun

出版信息

Southeast Asian J Trop Med Public Health. 2015 Mar;46(2):285-95.

Abstract

This study describes our development of a model to predict the incidence of clinically diagnosed dysentery in Dalian, Liaoning Province, China, using time series analysis. The model was developed using the seasonal autoregressive integrated moving average (SARIMA). Spearman correlation analysis was conducted to explore the relationship between meteorological variables and the incidence of clinically diagnosed dysentery. The meteorological variables which significantly correlated with the incidence of clinically diagnosed dysentery were then used as covariables in the model, which incorporated the monthly incidence of clinically diagnosed dysentery from 2005 to 2010 in Dalian. After model development, a simulation was conducted for the year 2011 and the results of this prediction were compared with the real observed values. The model performed best when the temperature data for the preceding month was used to predict clinically diagnosed dysentery during the following month. The developed model was effective and reliable in predicting the incidence of clinically diagnosed dysentery for most but not all months, and may be a useful tool for dysentery disease control and prevention, but further studies are needed to fine tune the model.

摘要

本研究描述了我们利用时间序列分析建立一个预测中国辽宁省大连市临床诊断痢疾发病率模型的过程。该模型是使用季节性自回归积分滑动平均模型(SARIMA)建立的。进行Spearman相关性分析以探讨气象变量与临床诊断痢疾发病率之间的关系。然后,将与临床诊断痢疾发病率显著相关的气象变量用作模型中的协变量,该模型纳入了2005年至2010年大连市临床诊断痢疾的月发病率。模型建立后,对2011年进行了模拟,并将该预测结果与实际观测值进行了比较。当使用前一个月的温度数据来预测下一个月的临床诊断痢疾时,该模型表现最佳。所建立的模型在预测大多数但并非所有月份的临床诊断痢疾发病率方面是有效且可靠的,可能是痢疾疾病控制和预防的有用工具,但需要进一步研究来对模型进行微调。

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