Spatial cluster analysis is a uniquely interdisciplinary endeavour, and so it is important to communicate and disseminate ideas, innovations, best practices and challenges across practitioners, applied epidemiology researchers and spatial statisticians. In this research we conducted a scoping review to systematically search peer-reviewed journal databases for research that has employed spatial cluster analysis methods on individual-level, address location, or x and y coordinate derived data. To illustrate the thematic issues raised by our results, methods were tested using a dataset where known clusters existed. Point pattern methods, spatial clustering and cluster detection tests, and a locally weighted spatial regression model were most c...
Abstract This comparative analysis examines the suitability of commonly applied local cluster detect...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Overlaying maps using a desktop GIS is often the first step of a multivariate spatial analysis. The ...
Spatial cluster analysis is a uniquely interdisciplinary endeavour, and so it is important to commun...
The spatial scan statistic method has been widely used for detecting disease clusters. Its results m...
Spatial data mining seeks to discover meaningful patterns in data where a prime dimension of interes...
Popular approaches to spatial cluster detection, such as the spatial scan statistic, are defined in ...
An approach to analysing data for spatial clustering is outlined, with special reference to environm...
An approach to analysing data for spatial clustering is outlined, with special reference to environm...
Large quantities of spatiotemporal (ST) data can be easily collected from various domains such as tr...
It has been established that spatial clustering patterns are scale-dependent. However, scale is stil...
Background Cluster detection is an important part of spatial epidemiology because it can help identi...
Background Cluster detection is an important part of spatial epidemiology because it can help identi...
The significant volume of work accidents in the cities causes an expressive loss to society. The dev...
Background Cluster detection is an important part of spatial epidemiology because it...
Abstract This comparative analysis examines the suitability of commonly applied local cluster detect...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Overlaying maps using a desktop GIS is often the first step of a multivariate spatial analysis. The ...
Spatial cluster analysis is a uniquely interdisciplinary endeavour, and so it is important to commun...
The spatial scan statistic method has been widely used for detecting disease clusters. Its results m...
Spatial data mining seeks to discover meaningful patterns in data where a prime dimension of interes...
Popular approaches to spatial cluster detection, such as the spatial scan statistic, are defined in ...
An approach to analysing data for spatial clustering is outlined, with special reference to environm...
An approach to analysing data for spatial clustering is outlined, with special reference to environm...
Large quantities of spatiotemporal (ST) data can be easily collected from various domains such as tr...
It has been established that spatial clustering patterns are scale-dependent. However, scale is stil...
Background Cluster detection is an important part of spatial epidemiology because it can help identi...
Background Cluster detection is an important part of spatial epidemiology because it can help identi...
The significant volume of work accidents in the cities causes an expressive loss to society. The dev...
Background Cluster detection is an important part of spatial epidemiology because it...
Abstract This comparative analysis examines the suitability of commonly applied local cluster detect...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Overlaying maps using a desktop GIS is often the first step of a multivariate spatial analysis. The ...