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Introduction to Statistical Methods for Biosurveillance
With an Emphasis on Syndromic Surveillance
Presents basic and advanced methods with a focus on demonstrated added value for a broad class of public health surveillance problems.
Ronald D. Fricker (Author)
9780521191340, Cambridge University Press
Hardback, published 25 February 2013
411 pages, 143 b/w illus. 3 maps 30 tables
24.2 x 16.2 x 2.6 cm, 0.67 kg
Bioterrorism is not a new threat, but in an increasingly interconnected world, the potential for catastrophic outcomes is greater today than ever. The medical and public health communities are establishing biosurveillance systems designed to proactively monitor populations for possible disease outbreaks as a first line of defense. The ideal biosurveillance system should identify trends not visible to individual physicians and clinicians in near-real time. Many of these systems use statistical algorithms to look for anomalies and to trigger epidemiologic investigation, quantification, localization and outbreak management. This book discusses the design and evaluation of statistical methods for effective biosurveillance for readers with minimal statistical training. Weaving public health and statistics together, it presents basic and more advanced methods, with a focus on empirically demonstrating added value. Although the emphasis is on epidemiologic and syndromic surveillance, the statistical methods can be applied to a broad class of public health surveillance problems.
Part I. Introduction to Biosurveillance: 1. Overview
2. Biosurveillance data
Part II. Situational Awareness: 3. Situational awareness for biosurveillance
4. Descriptive statistics for displaying the situation
5. Statistical models for evaluating the situation
Part III. Early Event Detection: 6. Design and performance evaluation
7. Univariate temporal methods
8. Multivariate temporal methods
9. Spatio-temporal methods
Part IV. Putting It All Together: 10. Simulating biosurveillance data
11. Applying the temporal methods to real data
12. Comparing methods to better understand and improve
13. Frontiers, open questions, and future research.
Subject Areas: Probability & statistics [PBT], Epidemiology & medical statistics [MBNS], Public health & preventive medicine [MBN]