Sharmin Sifat, Rayhan Md Israt
University of Dhaka, Dhaka, Bangladesh
University of Dhaka, Dhaka, Bangladesh.
Asia Pac J Public Health. 2015 Mar;27(2):NP816-23. doi: 10.1177/1010539512461668. Epub 2012 Nov 18.
In this article, a stochastic modeling approach was employed for the detection of epidemics in advance that was based on a negative binomial model with 2 components: an endemic component and an epidemic component. This study used monthly measles cases from January 2000 to August 2009 collected from the Expanded Program on Immunization, Bangladesh. General optimization routines provided the maximum likelihood estimates with corresponding standard errors. The negative binomial model with both seasonal endemic and epidemic components was shown to provide adequate fit with no measles epidemic during September 2008 to August 2009.
在本文中,采用了一种随机建模方法来提前检测疫情,该方法基于一个具有两个组成部分的负二项式模型:地方病部分和流行部分。本研究使用了从2000年1月至2009年8月期间从孟加拉国扩大免疫规划收集的每月麻疹病例。通用优化程序提供了具有相应标准误差的最大似然估计。结果表明,具有季节性地方病和流行部分的负二项式模型能够很好地拟合2008年9月至2009年8月期间无麻疹疫情的情况。