Scalable Bayesian disease mapping models (univariate and multivariate) for high-dimensional data using a divide and conquer approach.
This package implements several (scalable) spatial and spatio-temporal Poisson mixed models for high-dimensional areal count data in a fully Bayesian setting using the integrated nested Laplace approximation (INLA) technique.
Below, there is a list with a brief overview of all package functions:
add_neighbour
Adds isolated areas (polygons) to its nearest neighbour.CAR_INLA
Fits several spatial CAR models for high-dimensional count data.clustering_partition
Obtain a spatial partition using the DBSC algorithm.connect_subgraphs
Merges disjoint connected subgraphs.divide_carto
Divides the spatial domain into subregions.MCAR_INLA
Fits several spatial multivariate CAR models for high-dimensional count data.mergeINLA
Merges inla objects for partition models.Mmodel_compute_cor
Computes between-disease correlation coefficients for M-models.Mmodel_idd
Implements the spatially non-structured multivariate latent effect.Mmodel_icar
Implements the intrinsic multivariate latent effect.Mmodel_lcar
Implements the Leroux et al. (1999) multivariate latent effect.Mmodel_pcar
Implements the proper multivariate latent effect.random_partition
Defines a random partition of the spatial domain based on a regular grid.STCAR_INLA
Fits several spatio-temporal CAR models for high-dimensional count data.Installing Rtools44 for Windows
R version 4.4.0 and newer for Windows requires the new Rtools44 to build R packages with C/C++/Fortran code from source.
install.packages("bigDM")
# Install devtools package from CRAN repository
install.packages("devtools")
# Load devtools library
library(devtools)
# Install the R-INLA package
install.packages("INLA", repos=c(getOption("repos"), INLA="https://inla.r-inla-download.org/R/stable"), dep=TRUE)
# In some Linux OS, it might be necessary to first install the following packages
install.packages(c("cpp11","proxy","progress","tzdb","vroom"))
# Install bigDM from GitHub repositoy
install_github("spatialstatisticsupna/bigDM")
IMPORTANT NOTE: At least the stable version of INLA 22.11.22 (or newest) must be installed for the correct use of the bigDM package.
See the following vignettes for further details and examples using this package:
When using this package, please cite the following papers:
news(package="bigDM")
Changes in version 0.5.5 (2024 Aug 19)
tmap
v4spdep
version 1.3-6Data_MultiCancer
objectChanges in version 0.5.4 (2024 May 30)
Changes in version 0.5.3 (2023 Oct 17)
divide_carto()
functionChanges in version 0.5.2 (2023 Jun 14)
mergeINLA()
functionSTCAR_INLA()
functionChanges in version 0.5.1 (2023 Feb 14)
inla.mode
and num.threads
arguments for CAR_INLA()
, STCAR_INLA()
and MCAR_INLA()
functionsSTCAR_INLA()
function for spatio-temporal predictionsChanges in version 0.5.0 (2022 Oct 27)
MCAR_INLA()
function to fit scalable spatial multivariate CAR modelsmergeINLA()
functionChanges in version 0.4.2 (2022 Jun 27)
Changes in version 0.4.1 (2022 Feb 01)
Changes in version 0.4.0 (2022 Jan 21)
STCAR_INLA()
function to fit scalable spatio-temporal CAR modelsChanges in version 0.3.2 (2021 Nov 05)
X
and confounding
arguments included to CAR_INLA()
functionclustering_partition()
Changes in version 0.3.1 (2021 May 03)
W
argument included to CAR_INLA()
functionChanges in version 0.3.0 (2021 Apr 19)
CAR_INLA()
functionChanges in version 0.2.2 (2021 Mar 12)
random_partition()
functionChanges in version 0.2.1 (2021 Feb 25)
Carto_SpainMUN
data changedChanges in version 0.2.0 (2020 Oct 01)
mergeINLA()
functionThis work has been supported by Project MTM2017-82553-R (AEI/FEDER, UE) and Project PID2020-113125RB-I00/MCIN/AEI/10.13039/501100011033. It has also been partially funded by the Public University of Navarra (project PJUPNA2001) and by la Caixa Foundation (ID 1000010434), Caja Navarra Foundation and UNED Pamplona, under agreement LCF/PR/PR15/51100007 (project REF P/13/20).