首页> 外文期刊>Quality engineering >A Sequential Bayesian Control Model for Influenza-Like Illnesses and Early Detection of Intentional Outbreaks
【24h】

A Sequential Bayesian Control Model for Influenza-Like Illnesses and Early Detection of Intentional Outbreaks

机译:流感样疾病和有意暴发的早期检测的顺序贝叶斯控制模型

获取原文
获取原文并翻译 | 示例
           

摘要

Data pertaining to influenza and influenza-like illnesses (ILI) are being used in the United States and around the globe to assess evidence of influenza activity, whether it is the natural course of the flu or intentional release of a biological agent with flu-like symptoms. These data, used in surveillance, are unstable, serially correlated, and non-stationary. An important goal is to detect, as soon as possible, either emergence of an epidemic or release of biological agent whose symptoms may be initially classified as ILI. Statistical methodologies for analyzing these data are currently short of being able to capture all their important structural details and are generally deficient. Tools from statistical process control (SPC) are, on the face of it, ideally suited for the task since they address a problem of detecting sudden shift against a background of random variability. However, traditional SPC methods are generally deficient in assuming exact knowledge of the background prevalence and in relying on over simplified models. The objective of this article is to use a Bayesian model to find statistical and data-driven evidence for a surveillance problem based on the U.S. Sentinel ILI data. Bayesian statistical methodologies applied to SPC are very well suited for this setting of partial but imperfect information on the parameters describing these data. This article provides a control algorithm capable to act in detect-to-warn fashion on near-real-time data, to increase the ability to detect unusual surges in the prevalence of ILIs. We defined a model that uses sequential update methods to chart the discrepancy between the observed and predicted incidence of ILI.
机译:在美国和全球范围内,有关流感和类似流感的疾病(ILI)的数据正在用于评估流感活动的证据,无论它是流感的自然过程还是故意释放带有类似流感的生物制剂症状。这些用于监视的数据是不稳定的,序列相关的且不稳定的。一个重要的目标是尽早发现流行病的出现或生物制剂的释放,其症状最初可能被归类为ILI。当前,用于分析这些数据的统计方法尚不足以捕获其所有重要的结构细节,并且通常是不足的。从表面上看,统计过程控制(SPC)的工具非常适合该任务,因为它们解决了在随机可变性的背景下检测突然偏移的问题。但是,传统的SPC方法通常在假设背景患病率的确切知识以及依赖于简化模型方面均存在不足。本文的目的是使用贝叶斯模型基于美国前哨ILI数据查找监视问题的统计和数据驱动证据。适用于SPC的贝叶斯统计方法非常适合这种关于描述这些数据的参数的部分但不完美信息的设置。本文提供了一种控制算法,该算法能够对近实时数据采取“检测到警告”的方式,以增强检测ILI患病率异常波动的能力。我们定义了一个模型,该模型使用顺序更新方法来绘制ILI观察到的和预测的发生率之间的差异。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号