Buckeridge David L
McGill Clinical and Health Informatics, Department of Epidemiology and Biostatistics, McGill University, 1140 Pine Avenue West, Montreal, Que., Canada H3A 1A3.
J Biomed Inform. 2007 Aug;40(4):370-9. doi: 10.1016/j.jbi.2006.09.003. Epub 2006 Oct 5.
Public health agencies and other groups have invested considerable resources in automated surveillance systems over the last decade. These systems generally follow syndromes in pre-diagnostic data drawn from sources such as emergency department visits. A main goal of syndromic surveillance systems is to detect outbreaks rapidly and the number of studies evaluating outbreak detection has increased recently. This paper reviews these studies with the goal of identifying the determinants of outbreak detection in automated syndromic surveillance systems. The review identified 35 studies with 22 studies (63%) relying on naturally occurring outbreaks and 13 studies (37%) relying on simulated outbreaks. In general, the results from these studies suggest that syndromic surveillance systems are capable of detecting some types of disease outbreaks rapidly with high sensitivity. The determinants of detection included characteristics of the system and of the outbreak. Influential system characteristics included representativeness, the outbreak detection algorithm, and the specificity of the algorithm. Important outbreak characteristics included the magnitude and shape of the signal and the timing of the outbreak. Future evaluations should aim to address inconsistencies in the evidence noted in this review and to identify the potential influence of other factors on outbreak detection.
在过去十年中,公共卫生机构和其他组织在自动监测系统方面投入了大量资源。这些系统通常追踪从诸如急诊科就诊等来源获取的诊断前数据中的症状。症状监测系统的一个主要目标是快速检测疫情,最近评估疫情检测的研究数量有所增加。本文回顾这些研究,目的是确定自动症状监测系统中疫情检测的决定因素。该综述确定了35项研究,其中22项研究(63%)依赖自然发生的疫情,13项研究(37%)依赖模拟疫情。总体而言,这些研究结果表明,症状监测系统能够以高灵敏度快速检测某些类型的疾病疫情。检测的决定因素包括系统和疫情的特征。有影响力的系统特征包括代表性、疫情检测算法以及算法的特异性。重要的疫情特征包括信号的强度和形状以及疫情发生的时间。未来的评估应旨在解决本综述中指出的证据不一致问题,并确定其他因素对疫情检测的潜在影响。