## ----include = FALSE----------------------------------------------------------
knitr::opts_chunk$set(
  collapse = TRUE,
  comment = "#>",
  tidy = TRUE,
  fig.width = 11,
  tidy.opts = list(width.cutoff = 95),
  message = FALSE,
  warning = FALSE,
  time_it = TRUE
)
all_times <- list()  # store the time for each chunk
knitr::knit_hooks$set(time_it = local({
  now <- NULL
  function(before, options) {
    if (before) {
      now <<- Sys.time()
    } else {
      res <- difftime(Sys.time(), now, units = "secs")
      all_times[[options$label]] <<- res
    }
  }
}))

## ----eval=FALSE---------------------------------------------------------------
# githubURL <- "https://github.com/feiyoung/PRECAST/blob/main/vignettes_data/dlpfc_151672.rda?raw=true"
# download.file(githubURL,"dlpfc_151672.rda",mode='wb')
# 

## ----eval = FALSE-------------------------------------------------------------
# load("dlpfc_151672.rda")

## ----eval = FALSE-------------------------------------------------------------
# library(PRECAST)
# library(Seurat)

## ----eval = FALSE-------------------------------------------------------------
# dlpfc_151672 ## a list including two Seurat object

## ----eval = FALSE-------------------------------------------------------------
# meta_data <- dlpfc_151672@meta.data
# all(c("row", "col") %in% colnames(meta_data)) ## the names are correct!
# head(meta_data[,c("row", "col")])

## ----eval = FALSE-------------------------------------------------------------
# set.seed(2023)
# library(PRECAST)
# preobj <- CreatePRECASTObject(seuList = list(dlpfc_151672), selectGenesMethod="HVGs",
#                               gene.number = 2000) #

## ----eval = FALSE-------------------------------------------------------------
# ## check the number of genes/features after filtering step
# preobj@seulist
# ## Add adjacency matrix list for a PRECASTObj object to prepare for PRECAST model fitting.
# PRECASTObj <-  AddAdjList(preobj, platform = "Visium")
# ## Add a model setting in advance for a PRECASTObj object. verbose =TRUE helps outputing the
# ## information in the algorithm.
# PRECASTObj <- AddParSetting(PRECASTObj, Sigma_equal = FALSE, coreNum = 1, init.nstart = 5,
#                             int.model = 'mclust', maxIter=30, verbose = TRUE)
# 

## ----eval = FALSE-------------------------------------------------------------
# ### Given K
# PRECASTObj <- PRECAST(PRECASTObj, K= 7)

## ----eval = FALSE-------------------------------------------------------------
# ## backup the fitting results in resList
# resList <- PRECASTObj@resList
# PRECASTObj <- SelectModel(PRECASTObj)
# ari_precast <- mclust::adjustedRandIndex(PRECASTObj@resList$cluster[[1]], PRECASTObj@seulist[[1]]$layer_guess_reordered)

## ----eval =FALSE--------------------------------------------------------------
# PRECASTObj2 <- AddParSetting(PRECASTObj, Sigma_equal = FALSE, coreNum = 4,
#                             maxIter=30, verbose = TRUE) # set 4 cores to run in parallel.
# PRECASTObj2 <- PRECAST(PRECASTObj2, K= 5:8)
# ## backup the fitting results in resList
# resList2 <- PRECASTObj2@resList
# PRECASTObj2 <- SelectModel(PRECASTObj2)
# str(PRECASTObj2@resList)
# mclust::adjustedRandIndex(PRECASTObj2@resList$cluster[[1]], PRECASTObj2@seulist[[1]]$layer_guess_reordered)

## ----eval = FALSE-------------------------------------------------------------
# seuInt <- PRECASTObj@seulist[[1]]
# seuInt@meta.data$cluster <- factor(unlist(PRECASTObj@resList$cluster))
# seuInt@meta.data$batch <- 1
# seuInt <- Add_embed(PRECASTObj@resList$hZ[[1]], seuInt, embed_name = 'PRECAST')
# posList <- lapply(PRECASTObj@seulist, function(x) cbind(x$row, x$col))
# seuInt <- Add_embed(posList[[1]], seuInt, embed_name = 'position')
# Idents(seuInt) <- factor(seuInt@meta.data$cluster)
# 
# seuInt
# ## The low-dimensional embeddings obtained by PRECAST are saved in PRECAST reduction slot.

## ----eval = FALSE-------------------------------------------------------------
# p_sp1 <- SpaPlot(seuInt, item='cluster', point_size = 3, combine = F)[[1]] + cowplot::theme_cowplot() +
#   ggplot2::ggtitle(paste0("PRECAST: ARI=", round(ari_precast, 2)) ) +
#   ggplot2::xlab("row") + ggplot2::ylab("col")
# seuInt <- AddTSNE(seuInt,n_comp = 2)
# p_tsne <- dimPlot(seuInt, item='cluster')
# p_tsne <- p_tsne + cowplot::theme_cowplot() + ggplot2::ggtitle("PRECAST")

## ----eval = FALSE-------------------------------------------------------------
# seu_drsc <- DR.SC::DR.SC(PRECASTObj@seulist[[1]], K=7, verbose=T)
# ari_drsc <- mclust::adjustedRandIndex(seu_drsc$spatial.drsc.cluster, PRECASTObj@seulist[[1]]$layer_guess_reordered)
# p_tsne_drsc <- DR.SC::drscPlot(seu_drsc)
# p_tsne_drsc <- p_tsne_drsc + ggplot2::ggtitle("DR-SC")
# p_sp2 <- DR.SC::spatialPlotClusters(seu_drsc)+ cowplot::theme_cowplot()  +
#   ggplot2::ggtitle(paste0("DR-SC ARI=", round(ari_drsc, 2)) )

## ----eval = FALSE, fig.width=10, fig.height=4---------------------------------
# drawFigs(list(p_sp1, p_sp2), layout.dim = c(1,2))
# 

## ----eval = FALSE, fig.width=10, fig.height=4---------------------------------
# drawFigs(list(p_tsne, p_tsne_drsc), layout.dim = c(1,2))

## -----------------------------------------------------------------------------
sessionInfo()

