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基于传染病自动预警信息系统的“流行标准”最优化选择分析 被引量:14
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作者 王瑞平 姜永根 +1 位作者 郭晓芹 赵根明 《中国卫生统计》 CSCD 北大核心 2017年第2期214-217,221,共5页
目的通过纳入"流行标准"备选模型,探讨各模型对不同传染病类型预警阈值设定的适用性,进而优选出各传染病的适宜预警阈值,改善预警效果。方法按照控制图预警模型原理,分别计算各重点传染病2014年周病例数指定的12个百分位数,... 目的通过纳入"流行标准"备选模型,探讨各模型对不同传染病类型预警阈值设定的适用性,进而优选出各传染病的适宜预警阈值,改善预警效果。方法按照控制图预警模型原理,分别计算各重点传染病2014年周病例数指定的12个百分位数,然后分别应用备选"流行标准"对各重点传染病2014年相应周的疫情进行预警,通过比较备选模型和控制图预警模型预警结果,优选出预警阈值,然后依据2015年传染病聚集性疫情的实际发生情况验证预警界值预警效果。结果纳入松江区3种重点传染病,流行性腮腺炎整体疫情呈下降趋势,定为"TYPE A",C2、累积和控制图(CUSUM)和季节趋势模型(SM)推荐P_(50),"μ+2σ"推荐P_(80);流行性感冒整体疫情平稳,定为"TYPE B",C2、CUSUM和SM推荐P_(40),"μ+2σ"推荐P_(75);猩红热整体疫情呈上升趋势,为"TYPE C",C2和SM推荐P_(90),CUSUM推荐P75,"μ+2σ"推荐P_(80)。结论 C2、CUSUM和SM适合"TYPE A"型传染病,推荐预警阈值低,结果保守;4种模型均适合"TYPE B"型传染病,但μ+2σ的预警的成本效益好;4种模型也均适合"TYPE C"型传染病,但倾向于推荐大的预警阈值,建议根据传染病社会影响和现有防治水平对预警阈值进行适当调整。 展开更多
关键词 传染病自动预警信息系统 流行标准 优化选择 C2 CUSUM SM
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‘Outbreak Gold Standard’Selection to Provide Optimized Threshold for Infectious Diseases Early-alert Based on China Infectious Disease Automated-alert and Response System 被引量:5
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作者 王瑞平 姜永根 +2 位作者 赵根明 郭晓芹 Engelgau Michael 《Journal of Huazhong University of Science and Technology(Medical Sciences)》 SCIE CAS 2017年第6期833-841,共9页
The China Infectious Disease Automated-alert and Response System(CIDARS) was successfully implemented and became operational nationwide in 2008. The CIDARS plays an important role in and has been integrated into the... The China Infectious Disease Automated-alert and Response System(CIDARS) was successfully implemented and became operational nationwide in 2008. The CIDARS plays an important role in and has been integrated into the routine outbreak monitoring efforts of the Center for Disease Control(CDC) at all levels in China. In the CIDARS, thresholds are determined using the ?Mean+2SD? in the early stage which have limitations. This study compared the performance of optimized thresholds defined using the ?Mean +2SD? method to the performance of 5 novel algorithms to select optimal ?Outbreak Gold Standard(OGS)? and corresponding thresholds for outbreak detection. Data for infectious disease were organized by calendar week and year. The ?Mean+2 SD?, C1, C2, moving average(MA), seasonal model(SM), and cumulative sum(CUSUM) algorithms were applied. Outbreak signals for the predicted value(Px) were calculated using a percentile-based moving window. When the outbreak signals generated by an algorithm were in line with a Px generated outbreak signal for each week, this Px was then defined as the optimized threshold for that algorithm. In this study, six infectious diseases were selected and classified into TYPE A(chickenpox and mumps), TYPE B(influenza and rubella) and TYPE C [hand foot and mouth disease(HFMD) and scarlet fever]. Optimized thresholds for chickenpox(P_(55)), mumps(P_(50)), influenza(P_(40), P_(55), and P_(75)), rubella(P_(45) and P_(75)), HFMD(P_(65) and P_(70)), and scarlet fever(P_(75) and P_(80)) were identified. The C1, C2, CUSUM, SM, and MA algorithms were appropriate for TYPE A. All 6 algorithms were appropriate for TYPE B. C1 and CUSUM algorithms were appropriate for TYPE C. It is critical to incorporate more flexible algorithms as OGS into the CIDRAS and to identify the proper OGS and corresponding recommended optimized threshold by different infectious disease types. 展开更多
关键词 outbreak gold standard optimized threshold algorithms early-alert signal china infectious disease automated-alert and response system
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