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影响用于传染病暴发早期检测的流行病情报中基于互联网的生物监测系统性能的因素。

Factors influencing performance of internet-based biosurveillance systems used in epidemic intelligence for early detection of infectious diseases outbreaks.

作者信息

Barboza Philippe, Vaillant Laetitia, Le Strat Yann, Hartley David M, Nelson Noele P, Mawudeku Abla, Madoff Lawrence C, Linge Jens P, Collier Nigel, Brownstein John S, Astagneau Pascal

机构信息

International Department, French Institute for Public Health Surveillance (Institut de Veille Sanitaire), Saint Maurice, France.

Infectious Department, French Institute for Public Health Surveillance (Institut de Veille Sanitaire), Saint Maurice, France.

出版信息

PLoS One. 2014 Mar 5;9(3):e90536. doi: 10.1371/journal.pone.0090536. eCollection 2014.

Abstract

BACKGROUND

Internet-based biosurveillance systems have been developed to detect health threats using information available on the Internet, but system performance has not been assessed relative to end-user needs and perspectives.

METHOD AND FINDINGS

Infectious disease events from the French Institute for Public Health Surveillance (InVS) weekly international epidemiological bulletin published in 2010 were used to construct the gold-standard official dataset. Data from six biosurveillance systems were used to detect raw signals (infectious disease events from informal Internet sources): Argus, BioCaster, GPHIN, HealthMap, MedISys and ProMED-mail. Crude detection rates (C-DR), crude sensitivity rates (C-Se) and intrinsic sensitivity rates (I-Se) were calculated from multivariable regressions to evaluate the systems' performance (events detected compared to the gold-standard) 472 raw signals (Internet disease reports) related to the 86 events included in the gold-standard data set were retrieved from the six systems. 84 events were detected before their publication in the gold-standard. The type of sources utilised by the systems varied significantly (p<0001). I-Se varied significantly from 43% to 71% (p=0001) whereas other indicators were similar (C-DR: p=020; C-Se, p=013). I-Se was significantly associated with individual systems, types of system, languages, regions of occurrence, and types of infectious disease. Conversely, no statistical difference of C-DR was observed after adjustment for other variables.

CONCLUSION

Although differences could result from a biosurveillance system's conceptual design, findings suggest that the combined expertise amongst systems enhances early detection performance for detection of infectious diseases. While all systems showed similar early detection performance, systems including human moderation were found to have a 53% higher I-Se (p=00001) after adjustment for other variables. Overall, the use of moderation, sources, languages, regions of occurrence, and types of cases were found to influence system performance.

摘要

背景

基于互联网的生物监测系统已被开发出来,利用互联网上可得的信息来检测健康威胁,但尚未根据最终用户的需求和观点对系统性能进行评估。

方法与结果

利用法国公共卫生监测研究所(InVS)2010年发布的每周国际流行病学公报中的传染病事件构建黄金标准官方数据集。来自六个生物监测系统的数据用于检测原始信号(来自非正式互联网来源的传染病事件):阿格斯系统(Argus)、生物广播系统(BioCaster)、全球公共卫生情报网络(GPHIN)、健康地图(HealthMap)、医疗信息系统(MedISys)和专业医学全球监测网(ProMED-mail)。通过多变量回归计算粗检测率(C-DR)、粗敏感度率(C-Se)和内在敏感度率(I-Se),以评估系统性能(与黄金标准相比检测到的事件)。从六个系统中检索到与黄金标准数据集中包含的86个事件相关的472个原始信号(互联网疾病报告)。84个事件在其在黄金标准中发布之前被检测到。系统使用的来源类型差异显著(p<0.001)。I-Se在43%至71%之间差异显著(p=0.001),而其他指标相似(C-DR:p=0.20;C-Se,p=0.13)。I-Se与单个系统、系统类型、语言、发生地区和传染病类型显著相关。相反,在对其他变量进行调整后,未观察到C-DR的统计学差异。

结论

虽然差异可能源于生物监测系统的概念设计,但研究结果表明,系统之间的综合专业知识可提高传染病检测的早期检测性能。虽然所有系统都表现出相似的早期检测性能,但在对其他变量进行调整后,发现包括人工审核的系统的I-Se高53%(p=0.00001)。总体而言,发现审核、来源、语言、发生地区和病例类型的使用会影响系统性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ac11/3944226/7aee37578e31/pone.0090536.g001.jpg

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