Johns Hopkins University Applied Physics Laboratory, MD, USA.
Stat Med. 2011 Feb 28;30(5):470-9. doi: 10.1002/sim.3976. Epub 2011 Feb 3.
This paper describes the problem of public health monitoring for waterborne disease outbreaks using disparate evidence from health surveillance data streams and environmental sensors. We present a combined monitoring approach along with examples from a recent project at the Johns Hopkins University Applied Physics Laboratory in collaboration with the U.S. Environmental Protection Agency. The project objective was to build a module for the Electronic Surveillance System for the Early Notification of Community-based Epidemics (ESSENCE) to include water quality data with health indicator data for the early detection of waterborne disease outbreaks. The basic question in the fused surveillance application is 'What is the likelihood of the public health threat of interest given recent information from available sources of evidence?' For a scientific perspective, we formulate this question in terms of the estimation of positive predictive value customary in classical epidemiology, and we present a solution framework using Bayesian Networks (BN). An overview of the BN approach presents advantages, disadvantages, and required adaptations needed for a fused surveillance capability that is scalable and robust relative to the practical data environment. In the BN project, we built a top-level health/water-quality fusion BN informed by separate waterborne-disease-related networks for the detection of water contamination and human health effects. Elements of the art of developing networks appropriate to this environment are discussed with examples. Results of applying these networks to a simulated contamination scenario are presented.
本文描述了使用来自健康监测数据流和环境传感器的不同证据进行水传播疾病暴发公共卫生监测的问题。我们提出了一种联合监测方法,并结合了约翰霍普金斯大学应用物理实验室与美国环境保护署最近合作开展的一个项目的实例。该项目的目标是为电子监测系统用于早期社区流行传染病预警(ESSENCE)构建一个模块,将水质数据与健康指标数据相结合,以便早期发现水传播疾病暴发。融合监测应用中的基本问题是“考虑到最近来自现有证据来源的信息,公众健康威胁的可能性有多大?”从科学的角度来看,我们根据经典流行病学中常用的阳性预测值估计来表述这个问题,并使用贝叶斯网络(BN)提出解决方案框架。贝叶斯网络方法概述介绍了相对于实际数据环境的可扩展性和稳健性,融合监测能力所需的优势、劣势和必要调整。在 BN 项目中,我们构建了一个顶层健康/水质融合 BN,由单独的与水传播疾病相关的网络提供信息,用于检测水污染和人类健康影响。讨论了适合这种环境的网络开发技术的要点,并给出了示例。还展示了将这些网络应用于模拟污染场景的结果。