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A Bayesian Network Model for Analysis of Detection Performance in Surveillance Systems

机译:用于监视系统检测性能分析的贝叶斯网络模型

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摘要

Worldwide developments concerning infectious diseases and bioterrorism are driving forces for improving aberrancy detection in public health surveillance. The performance of an aberrancy detection algorithm can be measured in terms of sensitivity, specificity and timeliness. However, these metrics are probabilistically dependent variables and there is always a trade-off between them. This situation raises the question of how to quantify this tradeoff. The answer to this question depends on the characteristics of the specific disease under surveillance, the characteristics of data used for surveillance, and the algorithmic properties of detection methods. In practice, the evidence describing the relative performance of different algorithms remains fragmented and mainly qualitative. In this paper, we consider the development and evaluation of a Bayesian network framework for analysis of performance measures of aberrancy detection algorithms. This framework enables principled comparison of algorithms and identification of suitable algorithms for use in specific public health surveillance settings.
机译:关于传染病和生物恐怖主义的全球发展是改善公共卫生监测中的异常检测的动力。可以根据敏感性,特异性和及时性来测量异常检测算法的性能。但是,这些度量标准是概率相关的变量,因此它们之间始终需要权衡。这种情况提出了如何量化此折衷的问题。该问题的答案取决于要监视的特定疾病的特征,用于监视的数据的特征以及检测方法的算法特性。实际上,描述不同算法的相对性能的证据仍然是零散的,并且主要是定性的。在本文中,我们考虑了贝叶斯网络框架的开发和评估,以分析异常检测算法的性能指标。该框架可以对算法进行原则上的比较,并确定适用于特定公共卫生监视环境的算法。

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