Evaluating real-time syndromic surveillance signals from ambulatory care data in four states
- PMID: 20402203
- PMCID: PMC2789823
- DOI: 10.1177/003335491012500115
Evaluating real-time syndromic surveillance signals from ambulatory care data in four states
Abstract
Objectives: We evaluated a real-time ambulatory care-based syndromic surveillance system in four metropolitan areas of the United States.
Methods: Health-care organizations and health departments in California, Massachusetts, Minnesota, and Texas participated during 2007-2008. Syndromes were defined using International Classification of Diseases, Ninth Revision diagnostic codes in electronic medical records. Health-care organizations transmitted daily counts of new episodes of illness by syndrome, date, and patient zip code. A space-time permutation scan statistic was used to detect unusual clustering. Health departments followed up on e-mailed alerts. Distinct sets of related alerts ("signals") were compared with known outbreaks or clusters found using traditional surveillance.
Results: The 62 alerts generated corresponded to 17 distinct signals of a potential outbreak. The signals had a median of eight cases (range: 3-106), seven zip code areas (range: 1-88), and seven days (range: 3-14). Two signals resulted from true clusters of varicella; six were plausible but unconfirmed indications of disease clusters, six were considered spurious, and three were not investigated. The median investigation time per signal by health departments was 50 minutes (range: 0-8 hours). Traditional surveillance picked up 124 clusters of illness in the same period, with a median of six ill per cluster (range: 2-75). None was related to syndromic signals.
Conclusions: The system was able to detect two true clusters of illness, but none was of public health interest. Possibly due to limited population coverage, the system did not detect any of 124 known clusters, many of which were small. The number of false alarms was reasonable.
References
-
- Buehler JW, Hopkins RS, Overhage JM, Sosin DM, Tong V. Framework for evaluating public health surveillance systems for early detection of outbreaks: recommendations from the CDC Working Group. MMWR Recomm Rep. 2004;53(RR05):1–11. - PubMed
-
- Reingold A. If syndromic surveillance is the answer, what is the question? Biosecur Bioterror. 2003;1:77–81. - PubMed
-
- Buehler JW, Sonricker A, Paladini M, Soper P, Mostashari F. Syndromic surveillance practice in the United States: findings from a survey of state, territorial, and selected local health departments. [cited 2009 Feb 25];Adv Dis Surveill. 2008 6:1–20. Also available from: URL: http://www.syndromic.org/ADS/prepub/Buehler20080503.pdf.
-
- Heffernan R, Mostashari F, Das D, Karpati A, Kulldorff M, Weiss D. Syndromic surveillance in public health practice, New York City. Emerg Infect Dis. 2004;10:858–64. [published erratum appears in Emerg Infect Dis 2006;12:1472] - PubMed
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