## ----include=FALSE------------------------------------------------------------ knitr::opts_chunk$set(comment = "", warning = FALSE, message = FALSE) ## ----------------------------------------------------------------------------- library(knitr) library(ClustIRR) library(ggplot2) library(patchwork) library(ggforce) library(rBLAST) theme_set(new = theme_bw(base_size = 10)) ## ----include = FALSE---------------------------------------------------------- # only run code if blast+ is installed run <- has_blast() ## ----echo = FALSE, eval = !run, results='asis'-------------------------------- cat("**Note: BLAST was not installed when this vignette was built!**") ## ----eval=run----------------------------------------------------------------- # # System requirements # # The BLAST+ software needs to be installed on your system. Installation # # instructions are available in this package's # # [INSTALL](https://github.com/mhahsler/rBLAST/blob/devel/INSTALL) file and # # at \url{https://www.ncbi.nlm.nih.gov/books/NBK569861/}. # # # R needs to be able to find the executable. After installing the software, # # try in R # Sys.which("blastp") # # # If the command returns "" instead of the path to the executable, # # then you need to set the environment variable called PATH. In R # Sys.setenv(PATH = paste(Sys.getenv("PATH"), # "path_to_your_BLAST_installation", sep=.Platform$path.sep)) ## ----eval=run----------------------------------------------------------------- # data("D2", package = "ClustIRR") ## ----eval=run----------------------------------------------------------------- # cl <- clustirr(s = D2, control = list(blast_gmi = 0.8)) ## ----eval=run----------------------------------------------------------------- # gcd <- detect_communities(graph = cl$graph, # algorithm = "leiden", # metric = "average", # resolution = 1, # iterations = 100, # chains = c("CDR3a", "CDR3b")) ## ----eval=run----------------------------------------------------------------- # dim(gcd$community_occupancy_matrix) ## ----fig.width=8, fig.height=9, eval=run-------------------------------------- # honeycomb <- get_honeycombs(com = gcd$community_occupancy_matrix) # wrap_plots(honeycomb, nrow = 5, ncol = 3)+ # plot_annotation(tag_levels = 'A') ## ----eval=run----------------------------------------------------------------- # d <- dco(community_occupancy_matrix = gcd$community_occupancy_matrix, # groups = c(1, 1, 1, 2, 2, 2), # mcmc_control = list(mcmc_warmup = 300, # mcmc_iter = 600, # mcmc_chains = 2, # mcmc_cores = 1, # mcmc_algorithm = "NUTS", # adapt_delta = 0.9, # max_treedepth = 10)) ## ----fig.width=6, fig.height=3, eval=run-------------------------------------- # ggplot(data = d$posterior_summary$beta)+ # geom_sina(aes(x = sample, y = mean))| # ggplot(data = d$posterior_summary$beta_mu)+ # geom_sina(aes(x = as.character(g), y = mean)) ## ----fig.width=7, fig.height=3, eval=run-------------------------------------- # ggplot(data = d$posterior_summary$epsilon)+ # facet_wrap(facets = ~contrast, ncol = 2)+ # geom_errorbar(aes(x = community, y = mean, ymin = L95, ymax = H95), # col = "lightgray", width = 0)+ # geom_point(aes(x = community, y = mean), shape = 21, fill = "black", # stroke = 0.4, col = "white", size = 1.25)+ # theme(legend.position = "top")+ # ylab(label = expression(delta))+ # scale_x_continuous(expand = c(0,0))