Using automated medical records for rapid identification of illness syndromes (syndromic surveillance): the example of lower respiratory infection

<p>Abstract</p> <p>Background</p> <p>Gaps in disease surveillance capacity, particularly for emerging infections and bioterrorist attack, highlight a need for efficient, real time identification of diseases.</p> <p>Methods</p> <p>We studied autom...

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Main Authors: Dashevsky Inna, Kleinman Ken P, Lazarus Ross, DeMaria Alfred, Platt Richard
Format: Article
Language:English
Published: BMC 2001-10-01
Series:BMC Public Health
Online Access:http://www.biomedcentral.com/1471-2458/1/9
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spelling doaj-5b3c9daae7364928bc272297250367b42020-11-24T23:53:57ZengBMCBMC Public Health1471-24582001-10-0111910.1186/1471-2458-1-9Using automated medical records for rapid identification of illness syndromes (syndromic surveillance): the example of lower respiratory infectionDashevsky InnaKleinman Ken PLazarus RossDeMaria AlfredPlatt Richard<p>Abstract</p> <p>Background</p> <p>Gaps in disease surveillance capacity, particularly for emerging infections and bioterrorist attack, highlight a need for efficient, real time identification of diseases.</p> <p>Methods</p> <p>We studied automated records from 1996 through 1999 of approximately 250,000 health plan members in greater Boston.</p> <p>Results</p> <p>We identified 152,435 lower respiratory infection illness visits, comprising 106,670 episodes during 1,143,208 person-years. Three diagnoses, cough (ICD9CM 786.2), pneumonia not otherwise specified (ICD9CM 486) and acute bronchitis (ICD9CM 466.0) accounted for 91% of these visits, with expected age and sex distributions. Variation of weekly occurrences corresponded closely to national pneumonia and influenza mortality data. There was substantial variation in geographic location of the cases.</p> <p>Conclusion</p> <p>This information complements existing surveillance programs by assessing the large majority of episodes of illness for which no etiologic agents are identified. Additional advantages include: a) sensitivity, uniformity and efficiency, since detection of events does not depend on clinicians' to actively report diagnoses, b) timeliness, the data are available within a day of the clinical event; and c) ease of integration into automated surveillance systems.</p> <p>These features facilitate early detection of conditions of public health importance, including regularly occurring events like seasonal respiratory illness, as well as unusual occurrences, such as a bioterrorist attack that first manifests as respiratory symptoms. These methods should also be applicable to other infectious and non-infectious conditions. Knowledge of disease patterns in real time may also help clinicians to manage patients, and assist health plan administrators in allocating resources efficiently.</p> http://www.biomedcentral.com/1471-2458/1/9
collection DOAJ
language English
format Article
sources DOAJ
author Dashevsky Inna
Kleinman Ken P
Lazarus Ross
DeMaria Alfred
Platt Richard
spellingShingle Dashevsky Inna
Kleinman Ken P
Lazarus Ross
DeMaria Alfred
Platt Richard
Using automated medical records for rapid identification of illness syndromes (syndromic surveillance): the example of lower respiratory infection
BMC Public Health
author_facet Dashevsky Inna
Kleinman Ken P
Lazarus Ross
DeMaria Alfred
Platt Richard
author_sort Dashevsky Inna
title Using automated medical records for rapid identification of illness syndromes (syndromic surveillance): the example of lower respiratory infection
title_short Using automated medical records for rapid identification of illness syndromes (syndromic surveillance): the example of lower respiratory infection
title_full Using automated medical records for rapid identification of illness syndromes (syndromic surveillance): the example of lower respiratory infection
title_fullStr Using automated medical records for rapid identification of illness syndromes (syndromic surveillance): the example of lower respiratory infection
title_full_unstemmed Using automated medical records for rapid identification of illness syndromes (syndromic surveillance): the example of lower respiratory infection
title_sort using automated medical records for rapid identification of illness syndromes (syndromic surveillance): the example of lower respiratory infection
publisher BMC
series BMC Public Health
issn 1471-2458
publishDate 2001-10-01
description <p>Abstract</p> <p>Background</p> <p>Gaps in disease surveillance capacity, particularly for emerging infections and bioterrorist attack, highlight a need for efficient, real time identification of diseases.</p> <p>Methods</p> <p>We studied automated records from 1996 through 1999 of approximately 250,000 health plan members in greater Boston.</p> <p>Results</p> <p>We identified 152,435 lower respiratory infection illness visits, comprising 106,670 episodes during 1,143,208 person-years. Three diagnoses, cough (ICD9CM 786.2), pneumonia not otherwise specified (ICD9CM 486) and acute bronchitis (ICD9CM 466.0) accounted for 91% of these visits, with expected age and sex distributions. Variation of weekly occurrences corresponded closely to national pneumonia and influenza mortality data. There was substantial variation in geographic location of the cases.</p> <p>Conclusion</p> <p>This information complements existing surveillance programs by assessing the large majority of episodes of illness for which no etiologic agents are identified. Additional advantages include: a) sensitivity, uniformity and efficiency, since detection of events does not depend on clinicians' to actively report diagnoses, b) timeliness, the data are available within a day of the clinical event; and c) ease of integration into automated surveillance systems.</p> <p>These features facilitate early detection of conditions of public health importance, including regularly occurring events like seasonal respiratory illness, as well as unusual occurrences, such as a bioterrorist attack that first manifests as respiratory symptoms. These methods should also be applicable to other infectious and non-infectious conditions. Knowledge of disease patterns in real time may also help clinicians to manage patients, and assist health plan administrators in allocating resources efficiently.</p>
url http://www.biomedcentral.com/1471-2458/1/9
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