首页 | 本学科首页   官方微博 | 高级检索  
     

采用北京市麻疹的暴发模拟数据比较几种预警模型的功效
引用本文:王小莉,王全意,刘东磊,曾大军,程贺,李素,段玮,黎新宇,栾荣生,贺雄. 采用北京市麻疹的暴发模拟数据比较几种预警模型的功效[J]. 中华流行病学杂志, 2009, 30(2): 159-162. DOI: 10.3760/cma.j.issn.0254-6450.2009.02.015
作者姓名:王小莉  王全意  刘东磊  曾大军  程贺  李素  段玮  黎新宇  栾荣生  贺雄
作者单位:1. 北京市疾病预防控制中心,100013
2. 中国科学院自动化研究所
3. 四川大学华西医学中心公共卫生学院
基金项目:北京市自然科学基金,北京市优秀人才培养资助项目 
摘    要:目的 优选出北京市麻疹的最佳预警模型及其参数,为其自动预警提供技术支持.方法 利用暴发模拟软件生成一系列不同性质的暴发信号,将其添加到北京市2005-2007年麻疹的实际日报数中.综合采用指数加权移动平均(EWMA)、C1-MILD(C1)、C2-MEDIUM(C2)、C3.ULTRA(C3)及时空重排扫描统计等预警模型识别加入的暴发信号,比较各模型不同参数的约登指数(YD指数)和检出时间(DT),优选出最佳模型参数,进而比较各模型最优参数下的预警功效,优选出最佳预警模型.结果 EWMA模型的最优参数为λ=0.6,κ=1.0;CI的最优参数为k=0.1,H=3σ;C2的最优参数为k=0.I,H=30;C3的最优参数为K=1.0,H=40;时空重排扫描模型的最优参数为时间聚集性最大值为7 d,空问聚集性最大值为5 km.各模型的预警功效评价结果:EWMA的YD指数为90.8%,DT为0.121 d;CI的YD指数为88.7%,DT为0.142 d;c2的YD指数为92.9%,DT为0.121 d:C3的YD指数为87.9%.DT为0.058 d;时空重排扫描的YD指数为94.3%,DT为0.176 d.结论 5种模型中,时空重排扫描的预警功效最优.

关 键 词:麻疹  预警  指数加权移动平均  时空重排扫描
收稿时间:2008-07-31

Comparison between early outbreak detection models and simulated Outbreaks of measles in Beijing
WANG Xiao-li,WANG Quan-yi,LIU Dong-lei,ZENG Da-jun,CHENG He,LI Su,DUAN Wei,LI Xin-yu,LUANG Rong-sheng and HE Xiong. Comparison between early outbreak detection models and simulated Outbreaks of measles in Beijing[J]. Chinese Journal of Epidemiology, 2009, 30(2): 159-162. DOI: 10.3760/cma.j.issn.0254-6450.2009.02.015
Authors:WANG Xiao-li  WANG Quan-yi  LIU Dong-lei  ZENG Da-jun  CHENG He  LI Su  DUAN Wei  LI Xin-yu  LUANG Rong-sheng  HE Xiong
Affiliation:Beijing Center for Disease Control and Prevention, Beijing 100013, China;Beijing Center for Disease Control and Prevention, Beijing 100013, China;Beijing Center for Disease Control and Prevention, Beijing 100013, China;Beijing Center for Disease Control and Prevention, Beijing 100013, China;Beijing Center for Disease Control and Prevention, Beijing 100013, China;Beijing Center for Disease Control and Prevention, Beijing 100013, China
Abstract:Objective Using simulated outbreaks to choose the optimal model and its related parameters on measles so as to provide technical support for developing an Auto Warning System(AWS).Methods AEGiS-Cluster Creation Tool was applied to simulate a range oftmique outbreak signals.Then these simulations were added to the aetnal daily counts of measles from the National Disease Surveillance System,between 2005 and 2007.Exponential weighted moving average(EWMA),C1-MILD(C1),C2.MEDIUM(C2).C3-ULTRA(C3)and space.time permutation scar statistic model were comprehensively applied to detect these simulations.Tools for evaluation as Youden's index and detection time were calculated to optimize parameters before an optimal model was finally chosen.Results EWMA(λ=0.6,κ=1.0),C1(κ=0.1,H=3σ),C2(k=0.1,H=30),C3(κ=1.0,H=4σ)and space-time permutation scan statistic(maximum temporal cluster size=7 d,maximum spatial cluster size=5 km)appeared to be the optimal parameters among these models.Youden's index of EWMA was 90.8%and detection time being 0.121 d.Youden's index of C1 was 88.7%and detection time being 0.142 d.Youden's index of C2 was 92.9%and detection time being 0.121 d.Youden's index of C3 was 87.9%and detection time being 0.058 d.Youden's index of space-time permutation scan statistic was 94.3%and detection time being 0.176 d.Conelusion Among these five early warning detection models.space-time permutation scan statistic model had the highest efficacy.
Keywords:Measles  Early outbreak detection  Exponential weighted moving average  Space-time permutation scan-statistic
本文献已被 万方数据 等数据库收录!
点击此处可从《中华流行病学杂志》浏览原始摘要信息
点击此处可从《中华流行病学杂志》下载免费的PDF全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号