In this vignette, we provide an overview of the basic functionality and usage of the scds
package, which interfaces with SingleCellExperiment
objects.
Install the scds
package using Bioconductor:
if (!requireNamespace("BiocManager", quietly = TRUE)) install.packages("BiocManager") BiocManager::install("scds", version = "3.9")
Or from github:
library(devtools) devtools::install_github('kostkalab/scds')
scds
takes as input a SingleCellExperiment
object (see here r BiocStyle::Biocpkg("SingleCellExperiment")
), where raw counts are stored in a counts
assay, i.e. assay(sce,"counts")
. An example dataset created by sub-sampling the cell-hashing cell-lines data set (see https://satijalab.org/seurat/hashing_vignette.html) is included with the package and accessible via data("sce")
.Note that scds
is designed to workd with larger datasets, but for the purposes of this vignette, we work with a smaller example dataset. We apply scds
to this data and compare/visualize reasults:
Get example data set provided with the package.
library(scds) library(scater) library(rsvd) library(Rtsne) library(cowplot) set.seed(30519) data("sce_chcl") sce = sce_chcl #- less typing dim(sce)
We see it contains 2,000 genes and 2,000 cells, 216 of which are identified as doublets:
table(sce$hto_classification_global)
We can visualize cells/doublets after projecting into two dimensions:
logcounts(sce) = log1p(counts(sce)) vrs = apply(logcounts(sce),1,var) pc = rpca(t(logcounts(sce)[order(vrs,decreasing=TRUE)[1:100],])) ts = Rtsne(pc$x[,1:10],verb=FALSE) reducedDim(sce,"tsne") = ts$Y; rm(ts,vrs,pc) plotReducedDim(sce,"tsne",color_by="hto_classification_global")
We now run the scds
doublet annotation approaches. Briefly, we identify doublets in two complementary ways: cxds
is based on co-expression of gene pairs and works with absence/presence calls only, while bcds
uses the full count information and a binary classification approach using artificially generated doublets. cxds_bcds_hybrid
combines both approaches, for more details please consult (this manuscript). Each of the three methods returns a doublet score, with higher scores indicating more "doublet-like" barcodes.
#- Annotate doublet using co-expression based doublet scoring: sce = cxds(sce,retRes = TRUE) sce = bcds(sce,retRes = TRUE,verb=TRUE) sce = cxds_bcds_hybrid(sce) par(mfcol=c(1,3)) boxplot(sce$cxds_score ~ sce$doublet_true_labels, main="cxds") boxplot(sce$bcds_score ~ sce$doublet_true_labels, main="bcds") boxplot(sce$hybrid_score ~ sce$doublet_true_labels, main="hybrid")
For cxds
we can identify and visualize gene pairs driving doublet annoataions, with the expectation that the two genes in a pair might mark different types of cells (see manuscript). In the following we look at the top three pairs, each gene pair is a row in the plot below:
scds = top3 = metadata(sce)$cxds$topPairs[1:3,] rs = rownames(sce) hb = rowData(sce)$cxds_hvg_bool ho = rowData(sce)$cxds_hvg_ordr[hb] hgs = rs[ho] l1 = ggdraw() + draw_text("Pair 1", x = 0.5, y = 0.5) p1 = plotReducedDim(sce,"tsne",color_by=hgs[top3[1,1]]) p2 = plotReducedDim(sce,"tsne",color_by=hgs[top3[1,2]]) l2 = ggdraw() + draw_text("Pair 2", x = 0.5, y = 0.5) p3 = plotReducedDim(sce,"tsne",color_by=hgs[top3[2,1]]) p4 = plotReducedDim(sce,"tsne",color_by=hgs[top3[2,2]]) l3 = ggdraw() + draw_text("Pair 3", x = 0.5, y = 0.5) p5 = plotReducedDim(sce,"tsne",color_by=hgs[top3[3,1]]) p6 = plotReducedDim(sce,"tsne",color_by=hgs[top3[3,2]]) plot_grid(l1,p1,p2,l2,p3,p4,l3,p5,p6,ncol=3, rel_widths = c(1,2,2))
sessionInfo()
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