Literature DB >> 15714644

Benchmark data and power calculations for evaluating disease outbreak detection methods.

Martin Kulldorff1, Z Zhang, J Hartman, R Heffernan, L Huang, F Mostashari.   

Abstract

INTRODUCTION: Early detection of disease outbreaks enables public health officials to implement immediate disease control and prevention measures. Computer-based syndromic surveillance systems are being implemented to complement reporting by physicians and other health-care professionals to improve the timeliness of disease-outbreak detection. Space-time disease-surveillance methods have been proposed as a supplement to purely temporal statistical methods for outbreak detection to detect localized outbreaks before they spread to larger regions.
OBJECTIVE: The aims of this study were twofold: 1) to design and make available benchmark data sets for evaluating the statistical power of space-time early detection methods and 2) to evaluate the power of the prospective purely temporal and space-time scan statistics by applying them to the benchmark data sets at different parameter settings.
METHODS: Simulated data sets based on the geography and population of New York City were created, including effects of outbreaks of varying size and location. Data sets with no outbreak effects were also created. Scan statistics were then run on these data sets, and the resulting power performances were analyzed and compared.
RESULTS: The prospective space-time scan statistic performs well for a spectrum of outbreak models. By comparison, the prospective purely temporal scan statistic has higher power for detecting citywide outbreaks but lower power for detecting geographically localized outbreaks.
CONCLUSIONS: The benchmark data sets created for this study can be used successfully for formal statistical power evaluations and comparisons. If an anomaly caused by an outbreak is local, purely temporal surveillance methods might be unable to detect it, in which case space-time methods would be necessary for early detection.

Entities:  

Mesh:

Year:  2004        PMID: 15714644

Source DB:  PubMed          Journal:  MMWR Suppl        ISSN: 2380-8942


  22 in total

Review 1.  Review of syndromic surveillance: implications for waterborne disease detection.

Authors:  Magdalena Berger; Rita Shiau; June M Weintraub
Journal:  J Epidemiol Community Health       Date:  2006-06       Impact factor: 3.710

2.  A susceptible-infected model of early detection of respiratory infection outbreaks on a background of influenza.

Authors:  Mojdeh Mohtashemi; Peter Szolovits; James Dunyak; Kenneth D Mandl
Journal:  J Theor Biol       Date:  2006-03-23       Impact factor: 2.691

3.  Using health information exchange to improve public health.

Authors:  Jason S Shapiro; Farzad Mostashari; George Hripcsak; Nicholas Soulakis; Gilad Kuperman
Journal:  Am J Public Health       Date:  2011-02-17       Impact factor: 9.308

4.  Rank-based spatial clustering: an algorithm for rapid outbreak detection.

Authors:  Jialan Que; Fu-Chiang Tsui
Journal:  J Am Med Inform Assoc       Date:  2011-05-01       Impact factor: 4.497

5.  Relative risk estimates from spatial and space-time scan statistics: are they biased?

Authors:  Marcos O Prates; Martin Kulldorff; Renato M Assunção
Journal:  Stat Med       Date:  2014-03-18       Impact factor: 2.373

Review 6.  Public health delivery in the information age: the role of informatics and technology.

Authors:  F Williams; A Oke; I Zachary
Journal:  Perspect Public Health       Date:  2019-02-13

7.  Simulated anthrax attacks and syndromic surveillance.

Authors:  James D Nordin; Michael J Goodman; Martin Kulldorff; Debra P Ritzwoller; Allyson M Abrams; Ken Kleinman; Mary Jeanne Levitt; James Donahue; Richard Platt
Journal:  Emerg Infect Dis       Date:  2005-09       Impact factor: 6.883

8.  Validity of evaluation approaches for outbreak detection methods in syndromic surveillance systems.

Authors:  M Karami
Journal:  Iran J Public Health       Date:  2012-11-01       Impact factor: 1.429

9.  Public Discussion of Anthrax on Twitter: Using Machine Learning to Identify Relevant Topics and Events.

Authors:  Michele Miller; William Romine; Terry Oroszi
Journal:  JMIR Public Health Surveill       Date:  2021-06-18

10.  Mapping HIV clustering: a strategy for identifying populations at high risk of HIV infection in sub-Saharan Africa.

Authors:  Diego F Cuadros; Susanne F Awad; Laith J Abu-Raddad
Journal:  Int J Health Geogr       Date:  2013-05-22       Impact factor: 3.918

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