The files in this repository correspond to the paper "Bayesian Spatial Modelling of Geostatistical Data using INLA and SPDE methods: A Case Study Predicting Malaria Risk in Mozambique" published in Spatial and Spatio-temporal Epidemiology.
Data d.csv
contains prevalence survey data for Mozambique and selected covariates in surveyed locations (altitude alt
, maximum temperature temp
, precipitation prec
, humidity hum
, population density pop
and distance to nearest inland water bodies dist_aqua
).
Data dp.csv
specifies the locations where we wish to predict the prevalence together with values of covariates in these locations.
Code code.R
contains the R code to run the analysis and visualize the results.