Nikolay Birgit, Salje Henrik, Sturm-Ramirez Katharine, Azziz-Baumgartner Eduardo, Homaira Nusrat, Ahmed Makhdum, Iuliano A Danielle, Paul Repon C, Rahman Mahmudur, Hossain M Jahangir, Luby Stephen P, Cauchemez Simon, Gurley Emily S
Mathematical Modelling of Infectious Diseases Unit, Institut Pasteur, Paris, France.
Centre National de la Recherche Scientifique, URA3012, Paris, France.
PLoS Med. 2017 Jan 17;14(1):e1002218. doi: 10.1371/journal.pmed.1002218. eCollection 2017 Jan.
The International Health Regulations outline core requirements to ensure the detection of public health threats of international concern. Assessing the capacity of surveillance systems to detect these threats is crucial for evaluating a country's ability to meet these requirements.
We propose a framework to evaluate the sensitivity and representativeness of hospital-based surveillance and apply it to severe neurological infectious diseases and fatal respiratory infectious diseases in Bangladesh. We identified cases in selected communities within surveillance hospital catchment areas using key informant and house-to-house surveys and ascertained where cases had sought care. We estimated the probability of surveillance detecting different sized outbreaks by distance from the surveillance hospital and compared characteristics of cases identified in the community and cases attending surveillance hospitals. We estimated that surveillance detected 26% (95% CI 18%-33%) of severe neurological disease cases and 18% (95% CI 16%-21%) of fatal respiratory disease cases residing at 10 km distance from a surveillance hospital. Detection probabilities decreased markedly with distance. The probability of detecting small outbreaks (three cases) dropped below 50% at distances greater than 26 km for severe neurological disease and at distances greater than 7 km for fatal respiratory disease. Characteristics of cases attending surveillance hospitals were largely representative of all cases; however, neurological disease cases aged <5 y or from the lowest socioeconomic group and fatal respiratory disease cases aged ≥60 y were underrepresented. Our estimates of outbreak detection rely on suspected cases that attend a surveillance hospital receiving laboratory confirmation of disease and being reported to the surveillance system. The extent to which this occurs will depend on disease characteristics (e.g., severity and symptom specificity) and surveillance resources.
We present a new approach to evaluating the sensitivity and representativeness of hospital-based surveillance, making it possible to predict its ability to detect emerging threats.
《国际卫生条例》概述了确保发现国际关注的公共卫生威胁的核心要求。评估监测系统发现这些威胁的能力对于评估一个国家满足这些要求的能力至关重要。
我们提出了一个框架来评估基于医院的监测的敏感性和代表性,并将其应用于孟加拉国的严重神经传染病和致命呼吸道传染病。我们通过关键信息提供者和挨家挨户调查在监测医院服务区域内的选定社区中识别病例,并确定病例寻求治疗的地点。我们估计了监测系统根据与监测医院的距离发现不同规模疫情的概率,并比较了在社区中识别出的病例与到监测医院就诊的病例的特征。我们估计,对于居住在距离监测医院10公里处的严重神经疾病病例,监测系统能发现26%(95%置信区间18%-33%),对于致命呼吸道疾病病例能发现18%(95%置信区间16%-21%)。发现概率随距离显著下降。对于严重神经疾病,在距离大于26公里时,发现小规模疫情(3例)的概率降至50%以下;对于致命呼吸道疾病,在距离大于7公里时,该概率降至50%以下。到监测医院就诊的病例特征在很大程度上代表了所有病例;然而,年龄小于5岁或来自社会经济地位最低群体的神经疾病病例以及年龄≥60岁的致命呼吸道疾病病例的代表性不足。我们对疫情发现的估计依赖于到监测医院就诊并接受疾病实验室确诊且被报告给监测系统的疑似病例。这种情况发生的程度将取决于疾病特征(如严重程度和症状特异性)以及监测资源。
我们提出了一种评估基于医院的监测的敏感性和代表性的新方法,使得预测其发现新出现威胁的能力成为可能。