## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 6, fig.height = 4 ) ## ----setup-------------------------------------------------------------------- library(neuromapr) ## ----vertices-to-parcels------------------------------------------------------ set.seed(42) n_vertices <- 1000 vertex_data <- rnorm(n_vertices) labels <- sample( c(0, 1:10), n_vertices, replace = TRUE, prob = c(0.1, rep(0.09, 10)) ) parcel_values <- vertices_to_parcels(vertex_data, labels) parcel_values ## ----custom-summary----------------------------------------------------------- parcel_sd <- vertices_to_parcels( vertex_data, labels, summary_func = sd ) parcel_sd ## ----parcels-to-vertices------------------------------------------------------ vertex_filled <- parcels_to_vertices(parcel_values, labels) head(vertex_filled, 20) ## ----custom-fill-------------------------------------------------------------- vertex_filled_zero <- parcels_to_vertices( parcel_values, labels, fill = 0 ) sum(vertex_filled_zero == 0) ## ----parcellate-vectors------------------------------------------------------- parcellated <- parcellate(vertex_data, labels) unparcellated <- unparcellate(parcellated, labels) all.equal( parcels_to_vertices(parcel_values, labels), unparcellated ) ## ----centroids-setup---------------------------------------------------------- vertices <- matrix(rnorm(n_vertices * 3), ncol = 3) ## ----centroid-average--------------------------------------------------------- centroids_avg <- get_parcel_centroids( vertices, labels, method = "average" ) head(centroids_avg) ## ----centroid-surface--------------------------------------------------------- centroids_surf <- get_parcel_centroids( vertices, labels, method = "surface" ) head(centroids_surf) ## ----parcel-distmat----------------------------------------------------------- parcel_distmat <- as.matrix(dist(centroids_avg)) dim(parcel_distmat) ## ----parcel-nulls------------------------------------------------------------- parcel_map <- rnorm(nrow(centroids_avg)) nulls <- generate_nulls( parcel_map, method = "moran", distmat = parcel_distmat, n_perm = 100L, seed = 1 ) nulls ## ----parcel-spin-------------------------------------------------------------- n_lh <- 680 n_rh <- 680 sphere_coords <- list( lh = matrix(rnorm(n_lh * 3), ncol = 3), rh = matrix(rnorm(n_rh * 3), ncol = 3) ) parcellation <- rep(1:68, each = 20) parcel_data <- rnorm(68) nulls_baum <- null_baum( parcel_data, sphere_coords, parcellation, n_perm = 50L, seed = 1 ) nulls_baum