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Contents | p. v |
Abbreviations | p. ix |
Preface | p. xi |
Introduction | p. 1 |
Framework for spatial analysis | p. 2 |
Scientific literature and conferences | p. 3 |
Software | p. 4 |
Spatial data | p. 5 |
Book content and structure | p. 6 |
Datasets used | p. 6 |
Bovine tuberculosis data | p. 6 |
Environmental data | p. 6 |
Spatial data | p. 9 |
Introduction | p. 9 |
Spatial data and GIS | p. 9 |
Data types | p. 9 |
Data storage and interchange | p. 11 |
Data collection and management | p. 12 |
Data quality | p. 13 |
Spatial effects | p. 14 |
Spatial heterogeneity and dependence | p. 14 |
Edge effects | p. 14 |
Representing neighbourhood relationships | p. 15 |
Statistical significance testing with spatial data | p. 15 |
Conclusion | p. 16 |
Spatial visualization | p. 17 |
Introduction | p. 17 |
Point data | p. 17 |
Aggregated data | p. 17 |
Continuous data | p. 23 |
Effective data display | p. 23 |
Media, scale, and area | p. 23 |
Dynamic display | p. 24 |
Cartography | p. 26 |
Distance or scale | p. 26 |
Projection | p. 26 |
Direction | p. 27 |
Legends | p. 27 |
Neatlines, and locator and inset maps | p. 27 |
Symbology | p. 27 |
Dealing with statistical generalization | p. 28 |
Conclusion | p. 31 |
Spatial clustering of disease and global estimates of spatial clustering | p. 32 |
Introduction | p. 32 |
Disease cluster alarms and cluster investigation | p. 32 |
Statistical concepts relevant to cluster analysis | p. 33 |
Stationarity, isotropy, and first- and second-order effects | p. 33 |
Monte Carlo simulation | p. 33 |
Statistical power of clustering methods | p. 34 |
Methods for aggregated data | p. 34 |
Moran's I | p. 35 |
Geary's c | p. 37 |
Tango's excess events test (EET) and maximized excess events test (MEET) | p. 37 |
Methods for point data | p. 37 |
Cuzick and Edwards' k-nearest neighbour test | p. 37 |
Ripley's K-function | p. 39 |
Rogerson's cumulative sum (CUSUM) method | p. 41 |
Investigating space-time clustering | p. 41 |
The Knox test | p. 42 |
The space-time k-function | p. 42 |
The Ederer-Myers-Mantel (EMM) test | p. 43 |
Mantel's test | p. 43 |
Barton's test | p. 43 |
Jacquez's k nearest neighbours test | p. 44 |
Conclusion | p. 44 |
Local estimates of spatial clustering | p. 45 |
Introduction | p. 45 |
Methods for aggregated data | p. 46 |
Getis and Ord's local Gi(d) statistic | p. 46 |
Local Moran test | p. 47 |
Methods for point data | p. 49 |
Openshaw's Geographical Analysis Machine (GAM) | p. 49 |
Turnbull's Cluster Evaluation Permutation Procedure (CEPP) | p. 49 |
Besag and Newell's method | p. 50 |
Kulldorff's spatial scan statistic | p. 51 |
Non-parametric spatial scan statistics | p. 52 |
Example of local cluster detection | p. 53 |
Detecting clusters around a source (focused tests) | p. 56 |
Stone's test | p. 60 |
The Lawson-Waller score test | p. 61 |
Bithell's linear risk score tests | p. 62 |
Diggle's test | p. 62 |
Kulldorff's focused spatial scan statistic | p. 62 |
Space-time cluster detection | p. 63 |
Kulldorff's space-time scan statistic | p. 63 |
Example of space-time cluster detection | p. 64 |
Conclusion | p. 64 |
Spatial variation in risk | p. 67 |
Introduction | p. 67 |
Smoothing based on kernel functions | p. 67 |
Smoothing based on Bayesian models | p. 70 |
Spatial interpolation | p. 73 |
Conclusion | p. 80 |
Identifying factors associated with the spatial distribution of disease | p. 81 |
Introduction | p. 81 |
Principles of regression modelling | p. 81 |
Linear regression | p. 81 |
Poisson regression | p. 83 |
Logistic regression | p. 86 |
Multilevel models | p. 87 |
Accounting for spatial effects | p. 90 |
Area data | p. 92 |
Frequentist approaches | p. 93 |
Bayesian approaches | p. 94 |
Point data | p. 97 |
Frequentist approaches | p. 97 |
Bayesian approaches | p. 99 |
Continuous data | p. 100 |
Trend surface analysis | p. 100 |
Generalized least squares models | p. 102 |
Discriminant analysis | p. 103 |
Variable selection within discriminant analysis | p. 106 |
Conclusions | p. 107 |
Spatial risk assessment and management of disease | p. 110 |
Introduction | p. 110 |
Spatial data in disease risk assessment | p. 110 |
Spatial analysis in disease risk assessment | p. 111 |
Data-driven models of disease risk | p. 112 |
Knowledge-driven models of disease risk | p. 113 |
Static knowledge-driven models | p. 113 |
Dynamic knowledge-driven models | p. 117 |
Conclusion | p. 118 |
References | p. 120 |
Index | p. 137 |
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