Reis Ben Y, Mandl Kenneth D
Children's Hospital Boston, MA, USA.
AMIA Annu Symp Proc. 2003;2003:549-53.
Syndromic surveillance systems are being deployed widely to monitor for signals of covert bioterrorist attacks. Regional systems are being established through the integration of local surveillance data across multiple facilities. We studied how different methods of data integration affect outbreak detection performance. We used a simulation relying on a semi-synthetic dataset, introducing simulated outbreaks of different sizes into historical visit data from two hospitals. In one simulation, we introduced the synthetic outbreak evenly into both hospital datasets (aggregate model). In the second, the outbreak was introduced into only one or the other of the hospital datasets (local model). We found that the aggregate model had a higher sensitivity for detecting outbreaks that were evenly distributed between the hospitals. However, for outbreaks that were localized to one facility, maintaining individual models for each location proved to be better. Given the complementary benefits offered by both approaches, the results suggest building a hybrid system that includes both individual models for each location, and an aggregate model that combines all the data. We also discuss options for multi-level signal integration hierarchies.
症状监测系统正在广泛部署,以监测隐蔽生物恐怖袭击的信号。通过整合多个机构的本地监测数据来建立区域系统。我们研究了不同的数据整合方法如何影响疾病爆发检测性能。我们使用了一个基于半合成数据集的模拟,将不同规模的模拟疫情引入两家医院的历史就诊数据中。在一次模拟中,我们将合成疫情均匀地引入两家医院的数据集中(汇总模型)。在第二次模拟中,疫情仅被引入其中一家医院的数据集中(局部模型)。我们发现,汇总模型在检测在两家医院之间均匀分布的疫情时具有更高的灵敏度。然而,对于局限于一个机构的疫情,为每个地点维护单独的模型被证明更好。鉴于两种方法都有互补的优势,结果表明应构建一个混合系统,该系统既包括每个地点的单独模型,也包括一个整合所有数据的汇总模型。我们还讨论了多级信号整合层次结构的选项。