Evaluating multi-purpose syndromic surveillance systems - a complex problem.

Online journal of public health informatics Pub Date : 2021-12-24 eCollection Date: 2021-01-01 DOI:10.5210/ojphi.v13i3.10818
Roger Morbey, Gillian Smith, Isabel Oliver, Obaghe Edeghere, Iain Lake, Richard Pebody, Dan Todkill, Noel McCarthy, Alex J Elliot
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引用次数: 1

Abstract

Surveillance systems need to be evaluated to understand what the system can or cannot detect. The measures commonly used to quantify detection capabilities are sensitivity, positive predictive value and timeliness. However, the practical application of these measures to multi-purpose syndromic surveillance services is complex. Specifically, it is very difficult to link definitive lists of what the service is intended to detect and what was detected. First, we discuss issues arising from a multi-purpose system, which is designed to detect a wide range of health threats, and where individual indicators, e.g. 'fever', are also multi-purpose. Secondly, we discuss different methods of defining what can be detected, including historical events and simulations. Finally, we consider the additional complexity of evaluating a service which incorporates human decision-making alongside an automated detection algorithm. Understanding the complexities involved in evaluating multi-purpose systems helps design appropriate methods to describe their detection capabilities.

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评估多用途综合征监测系统——一个复杂的问题。
需要对监测系统进行评估,以了解该系统能检测到什么或不能检测到什么。通常用于量化检测能力的指标是灵敏度、阳性预测值和及时性。然而,这些措施在多用途综合征监测服务中的实际应用是复杂的。具体来说,很难将服务打算检测的内容和检测到的内容的确定列表链接起来。首先,我们讨论多用途系统产生的问题,该系统旨在检测广泛的健康威胁,其中个别指标,例如:“发烧”,也是多用途的。其次,我们讨论了定义可检测内容的不同方法,包括历史事件和模拟。最后,我们考虑了评估包含人类决策和自动检测算法的服务的额外复杂性。了解评估多用途系统所涉及的复杂性有助于设计适当的方法来描述其检测能力。
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