Litcius/Paper detail

Spatial autocorrelation mixtures in geospatial disease data: An important global epidemiologic/public health assessment ingredient?

Daniel A. Griffith

2023Transactions in GIS11 citationsDOI

Abstract

Abstract Geographic‐oriented public health has a time‐honored history, beginning with such classic assessments as John Snow's cholera deaths vis‐à‐vis London's Broad Street water pump. His constructed map illustrates how gathering locational information about diseases and mapping its static as well as diffusion map patterns benefit society in the long run. Spatial autocorrelation (SA)—a habitual manifestation of geospatial data locational tagging/indexing characterizing their nonrandom mixture of attribute values across a geographic landscape—latent in georeferenced disease data, is a key feature of such assessment instruments. The objective of this article is to highlight the presence of positive–negative SA mixtures, rather than solely positive SA, in global epidemiologic/public health data, regardless of the place on Earth that houses them, and consequential impacts on the assessment of such data.

Topics & Concepts

Geospatial analysisSpatial analysisGeographyPublic healthHealth geographyCartographyData scienceGeovisualizationGeographic information systemEnvironmental healthData miningComputer scienceRemote sensingVisualizationMedicineInformation visualizationHealth policyInternational healthNursingData-Driven Disease SurveillanceSpatial and Panel Data AnalysisHealth disparities and outcomes
Spatial autocorrelation mixtures in geospatial disease data: An important global epidemiologic/public health assessment ingredient? | Litcius