Real-time Syndromic Surveillance Team, Field Services, Health Protection Operations, UK Health Security Agency, Birmingham, UK.
UKHSA, Statistics, Modelling & Economics, Data Analytics & Surveillance, London, UK.
Epidemiol Infect. 2023 Mar 15;151:e56. doi: 10.1017/S0950268823000444.
Syndromic surveillance was originally developed to provide early warning compared to laboratory surveillance, but it is increasing used for real-time situational awareness. When a potential threat to public health is identified, a rapid assessment of its impact is required for public health management. When threats are localised, analysis is more complex as local trends need to be separated from national trends and differences compared to unaffected areas may be due to confounding factors such as deprivation or age distributions. Accounting for confounding factors usually requires an in-depth study, which takes time. Therefore, a tool is required which can provide a rapid estimate of local incidents using syndromic surveillance data.Here, we present 'DiD IT?', a new investigation tool designed to measure the impact of local threats to public health. 'DiD IT?' uses a difference-in-differences statistical approach to account for temporal and spatial confounding and provide a direct estimate of impact due to incidents. Temporal confounding differences are estimated by comparing unaffected locations during and outside of exposure periods. Whilst spatial confounding differences are estimated by comparing unaffected and exposed locations outside of the exposure period. Any remaining differences can be considered to be the direct effect of the local incident.We illustrate the potential utility of the tool through four examples of localised health protection incidents in England. The examples cover a range of data sources including general practitioner (GP) consultations, emergency department (ED) attendances and a telehealth call and online health symptom checker; and different types of incidents including, infectious disease outbreak, mass-gathering, extreme weather and an industrial fire. The examples use the UK Health Security Agency's ongoing real-time syndromic surveillance systems to show how results can be obtained in near real-time.The tool identified 700 additional online difficulty breathing assessments associated with a severe thunderstorm, 53 additional GP consultations during a mumps outbreak, 2-3 telehealth line calls following an industrial fire and that there was no significant increase in ED attendances during the G7 summit in 2021.DiD IT? can provide estimates for the direct impact of localised events in real-time as part of a syndromic surveillance system. Thus, it has the potential for enhancing surveillance and can be used to evaluate the effectiveness of extending national surveillance to a more granular local surveillance.
症状监测最初是为了与实验室监测相比提供早期预警而开发的,但它越来越多地用于实时态势感知。当发现对公共卫生的潜在威胁时,需要对其影响进行快速评估,以便进行公共卫生管理。当威胁本地化时,分析会更加复杂,因为需要将本地趋势与全国趋势区分开来,并且与未受影响地区的差异可能归因于贫困或年龄分布等混杂因素。通常需要进行深入的研究来解决混杂因素,这需要时间。因此,需要一种工具,该工具可以使用症状监测数据快速估算本地事件。在这里,我们介绍了一种新的调查工具“Did IT?”,旨在衡量对公共卫生的本地威胁的影响。“Did IT?”使用差异中的差异统计方法来解释时间和空间混杂,并提供由于事件而导致的直接影响的估计。未受影响的位置在暴露期内和暴露期外进行比较,以估计时间混杂差异。而未受影响和暴露的位置在暴露期外进行比较,以估计空间混杂差异。任何剩余的差异都可以被认为是本地事件的直接影响。我们通过英格兰四个本地化卫生保护事件的示例说明了该工具的潜在用途。这些示例涵盖了一系列数据源,包括全科医生(GP)咨询,急诊部(ED)就诊以及远程医疗呼叫和在线健康症状检查器;以及不同类型的事件,包括传染病暴发,大规模集会,极端天气和工业火灾。这些示例使用英国卫生安全局正在进行的实时症状监测系统来展示如何在近乎实时的情况下获得结果。该工具确定了与严重雷暴相关的 700 次额外的在线呼吸困难评估,在腮腺炎暴发期间增加了 53 次 GP 咨询,在工业火灾发生后增加了 2-3 次远程医疗电话,并且在 2021 年 G7 峰会期间 ED 就诊人数没有显著增加。Did IT?可以作为症状监测系统的一部分实时提供本地化事件的直接影响的估计。因此,它有可能增强监测能力,并可用于评估将国家监测扩展到更精细的本地监测的有效性。