ropensci / chopin

Computation of Spatial Data by Hierarchical and Objective Partitioning of Inputs for Parallel Processing
https://niehs.github.io/chopin/
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Existing R packages for spatial analysis for spatial epidemiology #1

Closed sigmafelix closed 1 year ago

sigmafelix commented 1 year ago
  1. SpatialEpi (CRAN Link)

    • Statistical tests (i.e., spatial clusters by Besag-Newell's and Kulldorff's methods)
    • Taking datasets that are readily analyzed are assumed
    • Inputs are points: polygons should be converted to centroids for analysis
  2. SpatialEpiApp (Moraga 2017)

    • A R-Shiny app leveraging multiple external packages including INLA and SaTScan
    • Functions are mostly for statistical analysis, not for geospatial data handling to obtain variables from geospatial datasets
    • Seemingly not maintained by the author
  3. aegis (Application for Epidemiological Geographic Information System) (Cho et al. 2020)

    • A R-Shiny app supporting cohort definition, temporal exploration, disease mapping, clustering, and interactive visualization of health outcomes/modeling results
    • Modeling module is based on R-INLA
    • Data standardization functions for Korean National Health Insurance System cohort data to be compliant of Observational Medical Outcomes Partnership-Common Data Model (OMOP-CDM)
    • Uses Database of Global Administrative Areas (GADM) for potential users outside Korea
sigmafelix commented 1 year ago
  1. exposome: not an explicitly spatial, but a good overview to manage exposome data

    • Developed by a team at the Barcelona Institute of Global Health (ISGlobal)
    • "Three table" approach: description, exposure, and phenotype in separate text files
    • Features missing data treatment, neat visualization functions, "Exposure/Enviroment/Exposome Wide Association Studies (ExWAS)" analysis
    • Vignette
  2. cf. Scalable spatial join in R and Spark