--- title: "Quick Start: An Introduction to wompwomp" output: rmarkdown::html_vignette: toc: true toc_depth: 2 vignette: > %\VignetteIndexEntry{Quick Start: An Introduction to wompwomp} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r} library(wompwomp) set.seed(43) ``` We create a toy data frame that maps tissues (BRAIN, STOMACH, HEART, T CELL, B CELL) to clustering (1-4) ```{r} df <- data.frame( tissue = c( "BRAIN", "BRAIN", "BRAIN", "STOMACH", "STOMACH", "STOMACH", "STOMACH", "STOMACH", "STOMACH", "HEART", "HEART", "HEART", "HEART", "HEART", "HEART", "HEART", "T CELL", "T CELL", "B CELL", "B CELL", "B CELL", "B CELL", "B CELL", "B CELL", "B CELL", "B CELL", "B CELL" ), cluster = c( 1, 1, 2, 1, 2, 2, 2, 2, 2, 1, 3, 3, 3, 3, 3, 3, 4, 4, 4, 4, 4, 4, 4, 4, 4, 4, 4 ) ) graphing_columns <- c("tissue", "cluster") # write.csv(df, file = "vignette_intro_df_ungrouped.csv", row.names = FALSE, quote = FALSE) print(df) ``` Group by tissue and cluster, counting the values in a new column value ```{r} clus_df_gather <- prep_for_lodes(df, cols = graphing_columns) # write.csv(clus_df_gather, file = "vignette_intro_df_grouped.csv", row.names = FALSE, quote = FALSE) print(clus_df_gather) ``` ```{r} clus_df_gather_tsp <- sort_to_uncross(clus_df_gather, cols = graphing_columns, wt = "value", method = "tsp") print(clus_df_gather_tsp) ``` ```{r} # clus_df_gather_tsp <- clus_df_gather_tsp stratum_to_color_mapping <- get_lode_clusters(clus_df_gather_tsp, cols = graphing_columns, wt = "value", method = "advanced") print(stratum_to_color_mapping) # jsonlite::toJSON(stratum_to_color_mapping, pretty = TRUE, auto_unbox = TRUE) ``` ```{r} crossing_edges_out <- compute_crossing_objective(clus_df_gather_tsp, cols = graphing_columns, wt = "value") print(crossing_edges_out$output_objective) ``` ```{r} sessionInfo() ```