+353-1-416-8900REST OF WORLD
+44-20-3973-8888REST OF WORLD
1-917-300-0470EAST COAST U.S
1-800-526-8630U.S. (TOLL FREE)

Analyzing and Modeling Spatial and Temporal Dynamics of Infectious Diseases. Edition No. 1

  • Book

  • 496 Pages
  • January 2015
  • John Wiley and Sons Ltd
  • ID: 2638656

Features modern research and methodology on the spread of infectious diseases and showcases a broad range of multi-disciplinary and state-of-the-art techniques on geo-simulation, geo-visualization, remote sensing, metapopulation modeling, cloud computing, and pattern analysis

Given the ongoing risk of infectious diseases worldwide, it is crucial to develop appropriate analysis methods, models, and tools to assess and predict the spread of disease and evaluate the risk. Analyzing and Modeling Spatial and Temporal Dynamics of Infectious Diseases features mathematical and spatial modeling approaches that integrate applications from various fields such as geo-computation and simulation, spatial analytics, mathematics, statistics, epidemiology, and health policy. In addition, the book captures the latest advances in the use of geographic information system (GIS), global positioning system (GPS), and other location-based technologies in the spatial and temporal study of infectious diseases.

Highlighting the current practices and methodology via various infectious disease studies, Analyzing and Modeling Spatial and Temporal Dynamics of Infectious Diseases features:

  • Approaches to better use infectious disease data collected from various sources for analysis and modeling purposes
  • Examples of disease spreading dynamics, including West Nile virus, bird flu, Lyme disease, pandemic influenza (H1N1), and schistosomiasis
  • Modern techniques such as Smartphone use in spatio-temporal usage data, cloud computing-enabled cluster detection, and communicable disease geo-simulation based on human mobility
  • An overview of different mathematical, statistical, spatial modeling, and geo-simulation techniques

Analyzing and Modeling Spatial and Temporal Dynamics of Infectious Diseases is an excellent resource for researchers and scientists who use, manage, or analyze infectious disease data, need to learn various traditional and advanced analytical methods and modeling techniques, and become aware of different issues and challenges related to infectious disease modeling and simulation. The book is also a useful textbook and/or supplement for upper-undergraduate and graduate-level courses in bioinformatics, biostatistics, public health and policy, and epidemiology.

Table of Contents

Foreword ix
Nicholas Chrisman

Acknowledgements xi

Editors xiii

Contributors xv

PART I OVERVIEW

1 Introduction to Analyzing and Modeling Spatial and Temporal Dynamics of Infectious Diseases 3
Dongmei Chen, Bernard Moulin, and Jianhong Wu

2 Modeling the Spread of Infectious Diseases: A Review 19
Dongmei Chen

PART II MATHEMATICAL MODELING OF INFECTIOUS DISEASES

3 West Nile Virus: A Narrative from Bioinformatics and Mathematical Modeling Studies 45
U.S.N. Murty, Amit K. Banerjee, and Jianhong Wu

4 West Nile Virus Risk Assessment and Forecasting Using Statistical and Dynamical Models 77
Ahmed Abdelrazec, Yurong Cao, Xin Gao, Paul Proctor, Hui Zheng, and Huaiping Zhu

5 Using Mathematical Modeling to Integrate Disease Surveillance and Global Air Transportation Data 97
Julien Arino and Kamran Khan

6 Malaria Models with Spatial Effects 109
Daozhou Gao and Shigui Ruan

7 Avian Influenza Spread and Transmission Dynamics 137
Lydia Bourouiba, Stephen Gourley, Rongsong Liu, John Takekawa, and Jianhong Wu

PART III SPATIAL ANALYSIS AND STATISTICAL MODELING OF INFECTIOUS DISEASES

8 Analyzing the Potential Impact of Bird Migration on the Global Spread of H5N1 Avian Influenza (2007–2011) Using Spatiotemporal Mapping Methods 163
Heather Richardson and Dongmei Chen

9 Cloud Computing–Enabled Cluster Detection Using a Flexibly Shaped Scan Statistic for Real-Time Syndromic Surveillance 177
Paul Belanger and Kieran Moore

10 Mapping the Distribution of Malaria: Current Approaches and Future Directions 189
Leah R. Johnson, Kevin D. Lafferty, Amy McNally, Erin Mordecai, Krijn P. Paaijmans, Samraat Pawar, and Sadie J. Ryan

11 Statistical Modeling of Spatiotemporal Infectious Disease Transmission 211
Rob Deardon, Xuan Fang, and Grace P.S. Kwong

12 Spatiotemporal Dynamics of Schistosomiasis in China: Bayesian-Based Geostatistical Analysis 233
Zhi-Jie Zhang

13 Spatial Analysis and Statistical Modeling of 2009 H1N1 Pandemic in the Greater Toronto Area 247
Frank Wen, Dongmei Chen, and Anna Majury

14 West Nile Virus Mosquito Abundance Modeling Using Nonstationary Spatiotemporal Geostatistics 263
Eun-Hye Yoo, Dongmei Chen, and Curtis Russel

15 Spatial Pattern Analysis of Multivariate Disease Data 283
Cindy X. Feng and Charmaine B. Dean

PART IV GEOSIMULATION AND TOOLS FOR ANALYZING AND SIMULATING SPREADS OF INFECTIOUS DISEASES

16 The ZoonosisMAGS Project (Part 1): Population-Based Geosimulation of Zoonoses in an Informed Virtual Geographic Environment 299
Bernard Moulin, Mondher Bouden, and Daniel Navarro

17 ZoonosisMAGS Project (Part 2): Complementarity of a Rapid-Prototyping Tool and of a Full-Scale Geosimulator for Population-Based Geosimulation of Zoonoses 341
Bernard Moulin, Daniel Navarro, Dominic Marcotte, Said Sedrati, and Mondher Bouden

18 Web Mapping and Behavior Pattern Extraction Tools to Assess Lyme Disease Risk for Humans in Peri-urban Forests 371
Hedi Haddad, Bernard Moulin, Franck Manirakiza, Christelle M´eha, Vincent Godard, and Samuel Mermet

19 An Integrated Approach for Communicable Disease Geosimulation Based on Epidemiological, Human Mobility and Public Intervention Models 403
Hedi Haddad, Bernard Moulin, and Marius Thériault

20 Smartphone Trajectories as Data Sources for Agent-based Infection-spread Modeling 443
Marcia R. Friesen and Robert D. McLeod

Index 473

Authors

Dongmei Chen Bernard Moulin Jianhong Wu