## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----install-cran, eval = FALSE----------------------------------------------- # install.packages("deprivateR") ## ----install-gh, eval = FALSE------------------------------------------------- # # install.packages("remotes") # remotes::install_github("pfizer-opensource/deprivateR") ## ----api-key, eval = FALSE---------------------------------------------------- # tidycensus::census_api_key("YOUR_KEY_HERE", install = TRUE) ## ----load--------------------------------------------------------------------- library(deprivateR) ## ----sample-calc-------------------------------------------------------------- # load sample data for the Messer NDI ndi_data <- dep_sample_data(index = "ndi_m") # calculate the index ndi_results <- dep_calc_index( ndi_data, geography = "county", index = "ndi_m", year = 2022, return_percentiles = TRUE ) # view the results ndi_results[, c("GEOID", "NAME", "NDI_M")] ## ----quantiles---------------------------------------------------------------- # split NDI into quartiles ndi_results <- dep_quantiles( ndi_results, source_var = NDI_M, new_var = ndi_quartile, n = 4L, return = "label" ) # view the distribution table(ndi_results$ndi_quartile) ## ----map-breaks--------------------------------------------------------------- # calculate Fisher-Jenks breaks with 5 classes ndi_results <- dep_map_breaks( ndi_results, var = "NDI_M", new_var = "map_class", classes = 5, style = "fisher" ) # view the break labels levels(ndi_results$map_class) ## ----manual-breaks------------------------------------------------------------ # define custom break points my_breaks <- c( min(ndi_results$NDI_M, na.rm = TRUE), 25, 50, 75, max(ndi_results$NDI_M, na.rm = TRUE) ) # apply manual breaks ndi_results <- dep_map_breaks( ndi_results, var = "NDI_M", new_var = "map_class_manual", breaks = my_breaks ) levels(ndi_results$map_class_manual) ## ----get-index, eval = FALSE-------------------------------------------------- # # download and calculate SVI for Missouri tracts # mo_svi <- dep_get_index( # # geography = "tract", # index = "svi20", # year = 2020, # state = "MO" # ) ## ----multi-index, eval = FALSE------------------------------------------------ # # calculate ADI and Gini together for Missouri counties # mo_multi <- dep_get_index( # geography = "county", # index = c("adi", "gini"), # year = 2022, # state = "MO" # ) ## ----sf-output, eval = FALSE-------------------------------------------------- # # get SVI with geometry for mapping # mo_svi_sf <- dep_get_index( # geography = "tract", # index = "svi20", # year = 2020, # state = "MO", # output = "sf" # ) # # # plot with ggplot2 # library(ggplot2) # ggplot(mo_svi_sf) + # geom_sf(aes(fill = SVI20), color = NA) + # scale_fill_viridis_c(direction = -1) + # theme_void() + # labs(title = "Social Vulnerability Index, Missouri Tracts (2020)") ## ----subscales, eval = FALSE-------------------------------------------------- # # keep SVI theme subscales and all component variables # mo_detailed <- dep_get_index( # geography = "county", # index = "svi20", # year = 2020, # state = "MO", # keep_subscales = TRUE, # keep_components = TRUE # ) ## ----two-step, eval = FALSE--------------------------------------------------- # # step 1: build the variable list and download data # library(tidycensus) # # vars <- dep_build_varlist( # geography = "county", # index = "ndi_m", # year = 2022 # ) # # raw_data <- get_acs( # geography = "county", # variables = vars, # year = 2022, # state = "MO", # output = "wide" # ) # # # step 2: calculate the index on your data # results <- dep_calc_index( # raw_data, # geography = "county", # index = "ndi_m", # year = 2022 # )