Spatial epidemiology Flashcards
Basic knowledge
1
Q
GIS - definition, types of data (2), tools (3)
A
A GIS provides an integrated set of tools that allow input, storage, manipulation, analysis and visual representation of spatial data.Spatial data: measurements taken at a specific location or within specific regions (e.g. census tract, health district).
Deal with different types of data:
- Vector (series of pairs of coordinates) including points, lines, polygons; and
- Raster (arrays of pixels - grids/cells).
Tools:
- Data manipulation tools - buffers
- Spatial analytical tools - interpolation, measuring distance, i.e. characterizing spatial properties of the layer (derived from geography)
- Spatial statistical tools - assessing autocorrelation/identifying clusters
2
Q
GIS - applications (3)
A
- Disease mapping (depict spatial variation in risk e.g. disease atlas)
- Ecological analysis (distribution of disease in relation to explanatory covariates e.g. etiological questions)
- Cluster detection (assess whether clusters exist and where they are located e.g. surveillance)
3
Q
Mapping disease - methods (2), representation (3)
A
Methods:
- Standardized rates - e.g. estimates of incidence or prevalence
- Significant deviations from the area average e.g. observed vs expected counts
Representation:
- Dot density maps
- Proportional circles
- Cloropleth (grey-scale)
Smoothing
4
Q
Cluster detection - methods (2)
A
Clustering - test null hypothesis that cases are randomly distributed
- Global statistics: indicate whether clustering (spatial autocorrelation) is somewhere in a study area (e.g. Moran’s I - compares the differences between neighboring pixels and the mean to provide a measure of local homogeneity. The value range is between +1 and -1, where +1 = strong positive spatial autocorrelation (clustering), 0 = spatially uncorrelated data (random dispersion), and -1 = strong negative spatial autocorrelation (perfect dispersion - think chess board)
- Local statistics: identify location of clusters (e.g. Scan statistics - superimposes a number of circular or elliptical windows of varying sizes to determine the group of contiguous areas with the most significant risk)