Spatial Analysis
Beyond representing your data in a map, GIS can help you to answer questions by using spatial analysis methods. Where have case rates been increasing over the last ten years? What factors are associated with county-level rates of low birth weights? How many people in Texas live more than an hour away from a dental clinic?
Spatial analysis is the process of exploring the locations, attributes, and relationships of features in spatial data to answer questions or better understand phenomena. Some common objectives that we can help you to address through spatial analysis include:
Describe features and distributions
Determine how places are related
- Find the nearest facility for a given population
- Identify areas outside of a specific distance or driving time of service provider
Example: Drive-time analysis showing areas within different driving times of the hospital emergency department in Fredericksburg, Texas. Darker areas indicate a short drive.
Identify and quantify patterns
Find places that meet certain criteria
Explain or predict an outcome
- Use spatial interpolation to estimate missing values and create a smooth surface
- Identify and characterize different types of emerging hotspots and create future projections
- Regression-based modeling, including geographically weighted regression
Example: Projected probability of West Nile virus detection based on logistic regression model in Hunt County.