## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) knitr::opts_chunk$set(echo = FALSE) options(repos = c(CRAN = "http://cran.rstudio.com")) quiet_load_all_CRAN <- function(...) { for (pkg in list(...)) { if (require(pkg, quietly = TRUE, character.only = TRUE)) next invisible(install.packages( pkg, quiet = TRUE, verbose = FALSE, character.only = TRUE )) suppressPackageStartupMessages(invisible( require(pkg, quietly = TRUE, character.only = TRUE) )) } } # load packages quiet_load_all_CRAN("ggplot2", "cowplot", "Seurat", "dplyr") ## ----setup-------------------------------------------------------------------- suppressPackageStartupMessages(library(APackOfTheClones)) # load data pbmc <- get(data("combined_pbmc")) ## ----load_data, eval = TRUE, echo = FALSE, include = FALSE-------------------- pbmc <- get(data("combined_pbmc")) ## ----setup_seurat, echo = TRUE, eval = FALSE---------------------------------- # library(scRepertoire) # # # A seurat object named `pbmc` is loaded with a corresponding `contig_list` # pbmc <- scRepertoire::combineExpression( # scRepertoire::combineTCR( # contig_list, # samples = c("P17B", "P17L", "P18B", "P18L", "P19B", "P19L", "P20B", "P20L"), # removeNA = FALSE, # removeMulti = FALSE, # filterMulti = FALSE # ), # pbmc, # cloneCall = "gene", # proportion = TRUE # ) ## ----actual_print_pbmc, eval = TRUE, echo = TRUE------------------------------ print(pbmc) ## ----echo = TRUE, eval = FALSE------------------------------------------------ # # Here is the function ran with its default parameters # pbmc <- RunAPOTC(pbmc) # # #> Initializing APOTC run... # #> * Setting `clone_scale_factor` to 0.3 # #> * id for this run: umap;CTstrict;_;_ # #> # #> Packing clones into clusters # #> [==================================================] 100% # #> # #> repulsing all clusters | max iterations = 20 # #> [==================================================] 100% # #> # #> Completed successfully, time elapsed: 0.155 seconds # #> ## ----runapotc_default, include = FALSE---------------------------------------- pbmc <- RunAPOTC(pbmc, verbose = FALSE) ## ----runapotc2, echo = TRUE--------------------------------------------------- pbmc <- RunAPOTC( pbmc, run_id = "sample17", orig.ident = c("P17B", "P17L"), verbose = FALSE ) ## ----apotcplot_subset_params, eval = FALSE------------------------------------ # reduction_base = NULL, # clonecall = NULL, # ..., # extra_filter = NULL, # alt_ident = NULL ## ----apotcplot, echo = TRUE--------------------------------------------------- # Here, plots for samples 17 - 20 as seen in the previous vignette are made, where # `orig.ident` is a custom column in the example data with levels corresponding to sample ids: # ("P17B" "P17L" "P18B" "P18L" "P19B" "P19L" "P20B" "P20L"). pbmc <- RunAPOTC( pbmc, run_id = "P17", orig.ident = c("P17B", "P17L"), verbose = FALSE ) pbmc <- RunAPOTC( pbmc, run_id = "P18", orig.ident = c("P18B", "P18L"), verbose = FALSE ) pbmc <- RunAPOTC( pbmc, run_id = "P19", orig.ident = c("P19B", "P19L"), verbose = FALSE ) pbmc <- RunAPOTC( pbmc, run_id = "P20", orig.ident = c("P20B", "P20L"), verbose = FALSE ) cowplot::plot_grid( APOTCPlot(pbmc, run_id = "P17", retain_axis_scales = TRUE, add_size_legend = FALSE), APOTCPlot(pbmc, run_id = "P18", retain_axis_scales = TRUE, add_size_legend = FALSE), APOTCPlot(pbmc, run_id = "P19", retain_axis_scales = TRUE, add_size_legend = FALSE), APOTCPlot(pbmc, retain_axis_scales = TRUE, add_size_legend = FALSE), # defaults to latest labels = c("17", "18", "19", "20") ) ## ----echo = TRUE, eval = FALSE------------------------------------------------ # new_rad_scale_factor = NULL, # new_clone_scale_factor = NULL, # relocate_cluster = NULL, # relocation_coord = NULL, # nudge_cluster = NULL, # nudge_vector = NULL, # recolor_cluster = NULL, # new_color = NULL, # rename_label = NULL, # new_label = NULL, # relocate_label = NULL, # label_relocation_coord = NULL, # nudge_label = NULL, # label_nudge_vector = NULL, # verbose = TRUE ## ----first_four_labeled, echo = TRUE------------------------------------------ # Do a run with just the first 4 seurat clusters, and rename labels pbmc <- RunAPOTC( pbmc, run_id = "first_four", seurat_clusters = 1:4, verbose = FALSE ) pbmc <- AdjustAPOTC( pbmc, run_id = "first_four", rename_label = 1:4, new_label = letters[1:4], verbose = FALSE ) APOTCPlot( pbmc, run_id = "first_four", show_labels = TRUE, retain_axis_scales = TRUE ) ## ----repulse_again, echo = TRUE----------------------------------------------- pbmc <- pbmc %>% RunAPOTC(run_id = "foo", verbose = FALSE) %>% AdjustAPOTC( run_id = "foo", repulse = TRUE, repulsion_threshold = 0.5, verbose = FALSE ) APOTCPlot( pbmc, show_labels = TRUE, retain_axis_scales = TRUE, add_size_legend = FALSE )