Department of Biomedical Informatics, University of Pittsburgh, Pittsburgh, PA, United States.
Department of Pediatrics, University of Pittsburgh School of Medicine, UPMC Children's Hospital of Pittsburgh, Pittsburgh, PA, United States.
JMIR Public Health Surveill. 2024 Aug 13;10:e57349. doi: 10.2196/57349.
The early identification of outbreaks of both known and novel influenza-like illnesses (ILIs) is an important public health problem.
This study aimed to describe the design and testing of a tool that detects and tracks outbreaks of both known and novel ILIs, such as the SARS-CoV-2 worldwide pandemic, accurately and early.
This paper describes the ILI Tracker algorithm that first models the daily occurrence of a set of known ILIs in hospital emergency departments in a monitored region using findings extracted from patient care reports using natural language processing. We then show how the algorithm can be extended to detect and track the presence of an unmodeled disease that may represent a novel disease outbreak.
We include results based on modeling diseases like influenza, respiratory syncytial virus, human metapneumovirus, and parainfluenza for 5 emergency departments in Allegheny County, Pennsylvania, from June 1, 2014, to May 31, 2015. We also include the results of detecting the outbreak of an unmodeled disease, which in retrospect was very likely an outbreak of the enterovirus D68 (EV-D68).
The results reported in this paper provide support that ILI Tracker was able to track well the incidence of 4 modeled influenza-like diseases over a 1-year period, relative to laboratory-confirmed cases, and it was computationally efficient in doing so. The system was also able to detect a likely novel outbreak of EV-D68 early in an outbreak that occurred in Allegheny County in 2014 as well as clinically characterize that outbreak disease accurately.
早期识别已知和新型流感样疾病 (ILI) 的爆发是一个重要的公共卫生问题。
本研究旨在描述一种工具的设计和测试,该工具能够准确和早期地检测和跟踪已知和新型 ILI 的爆发,例如 SARS-CoV-2 全球大流行。
本文描述了 ILI Tracker 算法,该算法首先使用自然语言处理从患者护理报告中提取的发现,对监测区域内医院急诊部门中一组已知 ILI 的每日发生情况进行建模。然后,我们展示了如何扩展该算法以检测和跟踪可能代表新疾病爆发的未建模疾病的存在。
我们包括了基于对宾夕法尼亚州阿勒格尼县 5 家急诊部门的流感、呼吸道合胞病毒、人类偏肺病毒和副流感病毒等疾病进行建模的结果,时间跨度为 2014 年 6 月 1 日至 2015 年 5 月 31 日。我们还包括了检测到未建模疾病爆发的结果,事后看来,这很可能是肠病毒 D68 (EV-D68) 的爆发。
本文报告的结果提供了支持,表明 ILI Tracker 能够在 1 年内相对实验室确诊病例很好地跟踪 4 种已建模的流感样疾病的发病率,并且在计算上效率很高。该系统还能够早期检测到 2014 年在阿勒格尼县发生的 EV-D68 可能的新型爆发,并准确地对该爆发疾病进行临床特征描述。