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Bayesian Disease Mapping: Hierarchical Modeling in Spatial Epidemiology
Contributor(s): Lawson, Andrew B. (Author)
ISBN: 1466504811     ISBN-13: 9781466504813
Publisher: CRC Press
OUR PRICE:   $90.20  
Product Type: Hardcover
Published: March 2013
Qty:
Temporarily out of stock - Will ship within 2 to 5 weeks
Additional Information
BISAC Categories:
- Medical | Epidemiology
Dewey: 614.4
LCCN: 2012048692
Series: Chapman & Hall/CRC Interdisciplinary Statistics
Physical Information: 0.9" H x 6.2" W x 9.3" (1.45 lbs) 378 pages
 
Descriptions, Reviews, Etc.
Publisher Description:

Since the publication of the first edition, many new Bayesian tools and methods have been developed for space-time data analysis, the predictive modeling of health outcomes, and other spatial biostatistical areas. Exploring these new developments, Bayesian Disease Mapping: Hierarchical Modeling in Spatial Epidemiology, Second Edition provides an up-to-date, cohesive account of the full range of Bayesian disease mapping methods and applications. A biostatistics professor and WHO advisor, the author illustrates the use of Bayesian hierarchical modeling in the geographical analysis of disease through a range of real-world datasets.

New to the Second Edition

  • Three new chapters on regression and ecological analysis, putative hazard modeling, and disease map surveillance
  • Expanded material on case event modeling and spatiotemporal analysis
  • New and updated examples
  • Two new appendices featuring examples of integrated nested Laplace approximation (INLA) and conditional autoregressive (CAR) models

In addition to these new topics, the book covers more conventional areas such as relative risk estimation, clustering, spatial survival analysis, and longitudinal analysis. After an introduction to Bayesian inference, computation, and model assessment, the text focuses on important themes, including disease map reconstruction, cluster detection, regression and ecological analysis, putative hazard modeling, analysis of multiple scales and multiple diseases, spatial survival and longitudinal studies, spatiotemporal methods, and map surveillance. It shows how Bayesian disease mapping can yield significant insights into georeferenced health data. WinBUGS and R are used throughout for data manipulation and simulation.