Name Mode Size
R 040000
data 040000
inst 040000
man 040000
tests 040000
vignettes 040000
.Rbuildignore 100644 0 kb
.gitignore 100644 0 kb
DESCRIPTION 100644 1 kb
NAMESPACE 100644 1 kb
README.md 100644 18 kb
README.md
# **Understanding Intrasample Heterogeneity from ST data with RegionalST** Spatial transcriptomics is a rapidly evolving field that has recently led to a better understanding of spatial and intra-sample heterogeneity, which could be crucial to understand the molecular basis of human diseases. However, the lack of computational tools for exploiting cross-regional information and the limited spatial resolution of current technologies present major obstacles to elucidating tissue heterogeneity.Here we present **RegionalST**, an R software package that enables quantifying cell type mixture and interactions, identifying sub-regions of interest, and performing cross-region cell type-specific differential analysis. RegionalST provides a one-stop destination for researchers seeking to better understand the complexities of spatial transcriptomics data. # Install the package ```{r install1, message=FALSE, warning=FALSE,eval=FALSE} devtools::install_github("ziyili20/RegionalST") ``` To view the package vignette in HTML format, run the following lines in R ```{r vig, message=FALSE, warning=FALSE} library(RegionalST) browseVignettes("RegionalST") ``` **See HTML tutorial at [Tutorial](https://ziyili20.github.io/RegionalST.html).** # Preparing your data for RegionalST through BayesSpace The data input step of RegionalST package relies on the package `r Biocpkg("BayesSpace")`. BayesSpace supports three ways of loading the data for analysis. First, reading Visium data through `readVisium()`: This function takes only the path to the Space Ranger output directory (containing the `spatial/` and `filtered_feature_bc_matrix/` subdirectories) and returns a `SingleCellExperiment`. ```{r readVisium, eval=FALSE} sce <- readVisium("path/to/spaceranger/outs/") ``` Second, you can create a SingleCellExperiment object directly from the count matrix: ```{r manual.sce, eval=FALSE} library(Matrix) rowData <- read.csv("path/to/rowData.csv", stringsAsFactors=FALSE) colData <- read.csv("path/to/colData.csv", stringsAsFactors=FALSE, row.names=1) counts <- read.csv("path/to/counts.csv.gz", row.names=1, check.names=F, stringsAsFactors=FALSE)) sce <- SingleCellExperiment(assays=list(counts=as(counts, "dgCMatrix")), rowData=rowData, colData=colData) ``` Lastly is to use the `getRDS()` function. Please check the manual of `r Biocpkg("BayesSpace")` if this step runs into any question. # Analysis with the incorporation of cell type proportions ## Obtain cell deconvolution proportions For Visium platform, a single spot is usually consisting of multiple cells and thus analyzing it as a whole could reduce the accuracy. As a result, we suggest perform cell deconvolution analysis using `r Githubpkg("YingMa0107/CARD")` or RCTD (`r Githubpkg("dmcable/spacexr")`) or `r Githubpkg("BayraktarLab/cell2location")`. Below we show some example code of obtaining cell type proportions using CARD: ```{r CARDexample, eval=FALSE} ### read in spatial transcriptomics data for analysis library(BayesSpace) outdir = "/Dir/To/Data/BreastCancer_10x" sce <- readVisium(outdir) sce <- spatialPreprocess(sce, platform="Visium", log.normalize=TRUE) spatial_count <- sce@assays@data$counts spatial_location <- data.frame(x = sce$imagecol, y = max(sce$imagerow) - sce$imagerow) rownames(spatial_location) <- colnames(spatial_count) ### assuming the single cell reference data for BRCA has been loaded ### BRCA_countmat: the count matrix of the BRCA single cell reference ### cellType: the cell types of the BRCA reference data sc_count <- BRCA_countmat sc_meta <- data.frame(cellID = colnames(BRCA_countmat), cellType = cellType) rownames(sc_meta) <- colnames(BRCA_countmat) library(CARD) CARD_obj <- createCARDObject( sc_count = sc_count, sc_meta = sc_meta, spatial_count = spatial_count, spatial_location = spatial_location, ct.varname = "cellType", ct.select = unique(sc_meta$cellType), sample.varname = "sampleInfo", minCountGene = 100, minCountSpot = 5) CARD_obj <- CARD_deconvolution(CARD_object = CARD_obj) ## add proportion to the sce object sce@metadata$Proportions <- CARD_obj@Proportion_CARD ``` ## Load example dataset In our package, we create a small example dataset by subsetting the breast cancer Visium data from 10X. We already added the cell type proportion from deconvolution. In case deconvolution couldn't be performed or the data is of single cell resolution, we also provided the cell type label for each spot. Note that the Visium data is actually not single cell resolution, so the cell type label indicates the major cell type for each spot. ```{r loadExample, eval=TRUE} library(RegionalST) data(example_sce) ## the proportion information is saved under the metadata example_sce@metadata$Proportions[seq_len(5),seq_len(5)] ## the cell type information is saved under a cell type variable head(example_sce$celltype) ``` ## Identify Regions of Interest (ROIs) with incorporation of proportions First, we want to preprocess the data using the functions from BayesSpace: ```{r pre1, eval=TRUE, message = FALSE} library(BayesSpace) example_sce <- example_sce[, colSums(counts(example_sce)) > 0] example_sce <- spatialPreprocess(example_sce, platform="Visium", log.normalize=TRUE) ``` Second, we assign weights to each cell type and check the entropy at different radii. ```{r addweight, eval=TRUE, message=FALSE, progress=FALSE, results='hide'} weight <- data.frame(celltype = c("Cancer Epithelial", "CAFs", "T-cells", "Endothelial", "PVL", "Myeloid", "B-cells", "Normal Epithelial", "Plasmablasts"), weight = c(0.25,0.05, 0.25,0.05, 0.025,0.05, 0.25,0.05,0.025)) OneRad <- GetOneRadiusEntropy_withProp(example_sce, selectN = length(example_sce$spot), weight = weight, radius = 5, doPlot = TRUE, mytitle = "Radius 5 weighted entropy") ``` <span style="color:blue">Note</span>: Here the `GetOneRadiusEntropy()` will calculate the entropy for all the spots (as `length(example_sce$spot)` is the length of all the spots). If this is too slow with a large dataset, you can specify to compute only a subset of the spots by argument, e.g., `selectN = round(length(example_sce$spot)/10)`. I use one tenth as an example, depending on the size of your data, you can try 1/3, 1/5, or 1/20 to generate entropy figures with different sparsities. The smaller `selectN` is, the faster this function will be. ### Automatic ROI selection Then, we can use automatic functions to select ROIs: ```{r selectROI1, eval=TRUE, message=FALSE, progress=FALSE, results='hide'} example_sce <- RankCenterByEntropy_withProp(example_sce, weight, selectN = round(length(example_sce$spot)/5), topN = 3, min_radius = 10, radius_vec = c(5,10), doPlot = TRUE) ### visualize one selected ROI: PlotOneSelectedCenter(example_sce,ploti = 1) ``` <span style="color:blue">Note</span>: The `min_radius` argument controls the minimum distance between two closest identified ROI centers. If you specify a large min_radius, the ROIs will tend to have no or less overlaps. Let's visualize all the selected ROIs: ```{r vis1, eval=TRUE, message=FALSE, progress=FALSE, fig.show='hide'} ## let's visualize the selected regions: palette <- colorspace::qualitative_hcl(9, palette = "Set2") library("gridExtra") selplot <- list() topN = 3 for(i in seq_len(topN)) { selplot[[i]] <- print(PlotOneSelectedCenter(example_sce,ploti = i)) } selplot[[topN+1]] <- print(clusterPlot(example_sce, palette=palette, label = "celltype", size=0.1) ) ``` ```{r vis2, eval = TRUE} do.call("grid.arrange", c(selplot, ncol = 2)) ``` You can save your selected ROIs to an `.RData` file for future analysis and reproducible purposes: ```{r saveres, eval=FALSE} thisSelection <- metadata(sce)$selectCenters save(thisSelection, file = "/Your/Directory/SelectionResults_withProportions.RData") ``` ### Manual ROI selection In addition to automatic selections, we can also manually select ROIs through a shiny app: ```{r shiny1, eval=FALSE} example_sce <- ManualSelectCenter(example_sce) metadata(example_sce)$selectCenters ``` ![Example of the shiny app](manuselect.PNG) ### Draw cell type proportions for the selected ROIs ```{r draw1, eval=TRUE} DrawRegionProportion_withProp(example_sce, label = "CellType", selCenter = c(1,2,3)) ``` ## Perform Cross-regional Differential Analysis with proportions One important downloaded analysis after we identified the ROIs is to understand the differentially expressed genes comparing one ROI to the other. Let's compare the first and the second ROIs. ```{r DE1, eval=TRUE, message=FALSE, progress=FALSE} CR12_DE <- GetCrossRegionalDE_withProp(example_sce, twoCenter = c(1,2), label = "celltype", angle = 30, hjust = 0, size = 3, padj_filter = 0.05, doHeatmap = TRUE) dim(CR12_DE$allDE) table(CR12_DE$allDE$Comparison) ## we find very few DE genes in the current dataset as the example data is very small and truncated. ``` We can similarly compare the first and third, the second and the third ROIs. ```{r DE2, eval=FALSE} CR13_DE <- GetCrossRegionalDE_withProp(example_sce, twoCenter = c(1,3), label = "celltype", padj_filter = 0.05, doHeatmap = TRUE) CR23_DE <- GetCrossRegionalDE_withProp(example_sce, twoCenter = c(2,3), label = "celltype", padj_filter = 0.05, doHeatmap = TRUE) exampleRes <- list(CR12_DE, CR13_DE, CR23_DE) ``` As our current dataset is very small, we couldn't find much signals from it. We prepared another example DE output. This result has been truncated and thus it is not a full list of genes. Let's take a look: ```{r DE3, eval=TRUE} data("exampleRes") ## check the number of DEs for each cell type-specific comparison table(exampleRes[[1]]$allDE$Comparison) table(exampleRes[[2]]$allDE$Comparison) table(exampleRes[[3]]$allDE$Comparison) ``` # Analysis with cell type information ## Obtain cell type labels Here is some example code of annotating cell types for Visium 10X data when the cell type deconvolution is not feasible. ```{r anno, eval=FALSE} outdir = "/Users/zli16/Dropbox/TrySTData/Ovarian_10x" sce <- readVisium(outdir) sce <- sce[, colSums(counts(sce)) > 0] sce <- spatialPreprocess(sce, platform="Visium", log.normalize=TRUE) sce <- qTune(sce, qs=seq(2, 10), platform="Visium", d=15) sce <- spatialCluster(sce, q=10, platform="Visium", d=15, init.method="mclust", model="t", gamma=2, nrep=50000, burn.in=1000, save.chain=FALSE) clusterPlot(sce) markers <- list() markers[["Epithelial"]] <- c("EPCAM") markers[["Tumor"]] <- c("EPCAM","MUC6", "MMP7") markers[["Macrophages"]] <- c("CD14", "CSF1R") markers[["Dendritic cells"]] <- c("CCR7") markers[["Immune cells"]] <- c("CD19", "CD79A", "CD79B", "PTPRC") sum_counts <- function(sce, features) { if (length(features) > 1) { colSums(logcounts(sce)[features, ]) } else { logcounts(sce)[features, ] } } spot_expr <- purrr::map(markers, function(xs) sum_counts(sce, xs)) library(ggplot2) plot_expression <- function(sce, expr, name, mylimits) { # fix.sc <- scale_color_gradientn(colours = c('lightgrey', 'blue'), limits = c(0, 6)) featurePlot(sce, expr, color=NA) + viridis::scale_fill_viridis(option="A") + labs(title=name, fill="Log-normalized\nexpression") } spot_plots <- purrr::imap(spot_expr, function(x, y) plot_expression(sce, x, y)) patchwork::wrap_plots(spot_plots, ncol=3) #### assign celltype based on marker distribution sce$celltype <- sce$spatial.cluster sce$celltype[sce$spatial.cluster %in% c(1,2,6,8)] <- "Epithelial" sce$celltype[sce$spatial.cluster %in% c(3)] <- "Macrophages" sce$celltype[sce$spatial.cluster %in% c(4,5)] <- "Immune" sce$celltype[sce$spatial.cluster %in% c(9,7,10)] <- "Tumor" colData(sce)$celltype <- sce$celltype ``` ## Load example dataset We still use the same example dataset as the section above for illustration. ```{r loadExample2, eval=FALSE} library(RegionalST) data(example_sce) ## the cell type information is saved under a cell type variable table(example_sce$celltype) ``` ## Identify Regions of Interest (ROIs) with cell type information ```{r weight2, eval=TRUE, message=FALSE, warning=FALSE, results=FALSE} weight <- data.frame(celltype = c("Cancer Epithelial", "CAFs", "T-cells", "Endothelial", "PVL", "Myeloid", "B-cells", "Normal Epithelial", "Plasmablasts"), weight = c(0.25,0.05, 0.25,0.05, 0.025,0.05, 0.25,0.05,0.025)) OneRad <- GetOneRadiusEntropy(example_sce, selectN = length(example_sce$spot), weight = weight, label = "celltype", radius = 5, doPlot = TRUE, mytitle = "Radius 5 weighted entropy") ``` ### Automatic selection of the ROIs ```{r select2, eval=TRUE, message=FALSE, warning=FALSE, fig.show='hide', results=FALSE} example_sce <- RankCenterByEntropy(example_sce, weight, selectN = round(length(example_sce$spot)/2), label = "celltype", topN = 3, min_radius = 10, radius_vec = c(5,10), doPlot = TRUE) ``` <span style="color:blue">Note</span>: The `min_radius` argument controls the minimum distance between two closest identified ROI centers. If you specify a large min_radius, the ROIs will tend to have no or less overlaps. Let's visualize all the selected ROIs: ```{r vis12, eval=TRUE, message=FALSE, progress=FALSE, fig.show='hide'} ## let's visualize the selected regions: palette <- colorspace::qualitative_hcl(9, palette = "Set2") library("gridExtra") selplot <- list() topN = 3 for(i in seq_len(topN)) { selplot[[i]] <- print(PlotOneSelectedCenter(example_sce,ploti = i)) } selplot[[topN+1]] <- print(clusterPlot(example_sce, palette=palette, label = "celltype", size=0.1) ) ``` ```{r vis22, eval = TRUE} do.call("grid.arrange", c(selplot, ncol = 2)) ``` You can save your selected ROIs to an `.RData` file for future analysis and reproducible purposes: ```{r saveres2, eval=FALSE} thisSelection <- metadata(example_sce)$selectCenters save(thisSelection, file = "/Your/Directory/SelectionResults_withProportions.RData") ``` ### Manual ROI selection with cell type information This section is exactly the same with or without proportion information. See Section \@ref(manual-roi-selection). ## Perform Cross-regional Differential Analysis with cell type information ```{r DE122, eval=FALSE} ## I didn't run this in the vignette as the current dataset has been truncated and couldn't find any DE genes CR12_DE <- GetCrossRegionalDE_raw(example_sce, twoCenter = c(1,2), label = "celltype", logfc.threshold = 0.1, min.pct = 0.1, angle = 30, hjust = 0, size = 3, padj_filter = 0.05, doHeatmap = FALSE) ``` Similarly we can perform cross regional analysis for other pairs: ```{r DE123, eval=FALSE} CR13_DE <- GetCrossRegionalDE_raw(example_sce, twoCenter = c(1,3), label = "celltype", padj_filter = 0.05, doHeatmap = FALSE) CR23_DE <- GetCrossRegionalDE_raw(example_sce, twoCenter = c(2,3), label = "celltype", padj_filter = 0.05, doHeatmap = FALSE) ``` # Pathway GSEA analysis based on the cross-regional DEs ```{r gsea1, eval=TRUE, message=FALSE, warning=FALSE, fig.show='hide', results=FALSE} allfigure <- list() allCTres <- DoGSEA(exampleRes, whichDB = "hallmark", withProp = TRUE) for(i in seq_len(3)) { allfigure[[i]] <- DrawDotplot(allCTres, CT = i, angle = 15, vjust = 1, chooseP = "padj") } ``` ```{r,gsea2, eval=TRUE, fig.width=20, message=FALSE, warning=FALSE,fig.height=8, results=FALSE} do.call("grid.arrange", c(allfigure[c(1,2,3)], ncol = 3)) ``` ```{r,gsea22, eval=TRUE, message=FALSE, warning=FALSE, results=FALSE} ### draw each cell type individually, here I am drawing cell type = 3 DrawDotplot(allCTres, CT = 3, angle = 15, vjust = 1, chooseP = "padj") ``` <span style="color:blue">Note</span>: In addition to "hallmark", the pathway database can also be "kegg" or "reactome". If you prefer other databases, you can set the `gmtdir=` argument as the directory to the gmt file of another database in `DoGSEA()` function. ```{r gsea3, eval=TRUE, warning=FALSE, message=FALSE} allCTres <- DoGSEA(exampleRes, whichDB = "kegg", withProp = TRUE) DrawDotplot(allCTres, CT = 3, angle = 15, vjust = 1, chooseP = "padj") ``` ```{r gsea4, eval=TRUE, warning=FALSE, message=FALSE, fig.width=15, fig.height=8} allCTres <- DoGSEA(exampleRes, whichDB = "reactome", withProp = TRUE) DrawDotplot(allCTres, CT = 3, angle = 15, vjust = 1, chooseP = "padj") ```