Sequential detection framework for real-time biosurveillance based on Shiryaev-Roberts procedure with illustrations using COVID-19 incidence data

IF 0.6 4区 数学 Q4 STATISTICS & PROBABILITY
K. Zamba, P. Tsiamyrtzis
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引用次数: 0

Abstract

Abstract This article develops a detection framework using Bayesian philosophy by adaptation of Shiryaev's and Roberts' methodology. We propose two unifying versions directly applicable in industrial process control and easily extendable to public health infectious disease surveillance via some data detrending and/or demodulation. The root idea uses the sum of likelihood ratios upon which an optimal stopping criterion is based. It sets a prior on the epoch of a change, allows the flexibility to elicit a prior distribution on other process parameters, and attempts to minimize an expected loss function. A sensitivity analysis is conducted for validation and performance assessment and analytical formulas are derived. The methods are successfully applied to the European Union Centre for Disease Control (ECDC) open-source global COVID-19 incidence data. We further lay out scenarios where interest may switch to the detection of separate outbreaks with similar syndromes during an already evolving epidemic. We view our approach as a toolkit with a potential to augment early reports to sentinels in syndromic surveillance and in biosurveillance.
基于Shiryaev-Roberts程序的实时生物监测顺序检测框架,并附有使用COVID-19发病率数据的插图
摘要本文通过改编Shiryaev和Roberts的方法,使用贝叶斯哲学开发了一个检测框架。我们提出了两个统一的版本,可直接应用于工业过程控制,并可通过一些数据去趋势和/或解调轻松扩展到公共卫生传染病监测。根思想使用了最佳停止标准所基于的似然比之和。它设置了变化时期的先验,允许灵活地引出其他工艺参数的先验分布,并试图最小化预期损失函数。进行了灵敏度分析以进行验证和性能评估,并推导了分析公式。这些方法已成功应用于欧盟疾病控制中心(ECDC)开源全球新冠肺炎发病率数据。我们进一步列出了在已经演变的流行病中,兴趣可能转向检测具有类似综合征的单独疫情的场景。我们将我们的方法视为一个工具包,有可能在症状监测和生物监测中增加对哨兵的早期报告。
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来源期刊
CiteScore
1.40
自引率
12.50%
发文量
20
期刊介绍: The purpose of Sequential Analysis is to contribute to theoretical and applied aspects of sequential methodologies in all areas of statistical science. Published papers highlight the development of new and important sequential approaches. Interdisciplinary articles that emphasize the methodology of practical value to applied researchers and statistical consultants are highly encouraged. Papers that cover contemporary areas of applications including animal abundance, bioequivalence, communication science, computer simulations, data mining, directional data, disease mapping, environmental sampling, genome, imaging, microarrays, networking, parallel processing, pest management, sonar detection, spatial statistics, tracking, and engineering are deemed especially important. Of particular value are expository review articles that critically synthesize broad-based statistical issues. Papers on case-studies are also considered. All papers are refereed.
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