License: Artistic-2.0
GSVA provides now specific support for single-cell data in the
algorithm that runs through the gsvaParam() parameter
constructor, and originally described in the publication by Hänzelmann et al. (2013). At the moment, this
specific support consists of the following features:
dgCMatrix, SVT_SparseArray,
HDF5Matrix and DelayedMatrix. The currently
available container for single-cell data that allows one to input
additional row and column metadata is a
SingleCellExperiment object.matrix or a dense DelayedMatrix object using
an HDF5Matrix backend. The latter will be particularly used
when the total number of values exceeds 2^31, which is the largest
32-bit standard integer value in R.sparse=FALSE in the call to gsvaParam(), the
classical GSVA algorithm will be used, which for a typical single-cell
data set will result in longer running times and larger memory
consumption than running it in the default sparse regime for this type
of data.gsva() with a parameter object or in three steps: (1) row
normalization with gsvaRowNorm(); (2) column rank
transformation with gsvaColRanks(); and (3) column
enrichment scores calculation with gsvaColScores().
Splitting the GSVA algorithm into these three steps allows one to
distribute and balance the computational load of the algorithm in a
high-performance computing (HPC) environment with multiple nodes, and to
reuse the output of the first two steps, which are independent of the
gene sets, to calculate enrichment scores for different collections of
gene sets, without having to repeat the first two steps.In what follows, we will illustrate the use of GSVA on a publicly available single-cell transcriptomics data set of peripheral blood mononuclear cells (PBMCs) published by Zheng et al. (2017).
We import the PBMC data using the TENxPBMCData package, as a SingleCellExperiment object.
library(SingleCellExperiment)
library(TENxPBMCData)
sce <- TENxPBMCData(dataset="pbmc4k")
sce
class: SingleCellExperiment
dim: 33694 4340
metadata(0):
assays(1): counts
rownames(33694): ENSG00000243485 ENSG00000237613 ... ENSG00000277475
ENSG00000268674
rowData names(3): ENSEMBL_ID Symbol_TENx Symbol
colnames: NULL
colData names(11): Sample Barcode ... Individual Date_published
reducedDimNames(0):
mainExpName: NULL
altExpNames(0):Here, we perform a quality control (QC) and pre-processing steps using the package scrapper (Lun and Kancherla 2022). We start identifying mitochondrial genes.
library(scrapper)
is_mito <- grepl("^MT-", rowData(sce)$Symbol_TENx)
table(is_mito)
is_mito
FALSE TRUE
33681 13 Calculate QC metrics and filter out low-quality cells.
sce <- quickRnaQc.se(sce, subsets=list(mito=is_mito))
sce <- sce[, sce$keep]
dim(sce)
[1] 33694 4147We filter out genes that are expressed in less than 1% of the cells.
cellsxgene <- rowSums(counts(sce) > 0)
sce <- sce[cellsxgene > floor(ncol(sce)*0.01), ]
dim(sce)
[1] 10799 4147Calculate library size factors and normalized units of expression in logarithmic scale.
Here, we illustrate how to annotate cell types in the PBMC data using GSVA and a collection of relevant gene sets.
First, we fetch a collection of 22 leukocyte gene set signatures,
containing a total 547 genes, which should help to distinguish among 22
mature human hematopoietic cell type populations isolated from
peripheral blood or in vitro culture conditions, including
seven T cell types: naïve and memory B cells, plasma cells, NK cell, and
myeloid subsets. These gene sets have been used in the benchmarking
publication by Diaz-Mejia et al. (2019),
and were originally compiled by the CIBERSORT developers, where
they called it the LM22 signature (Newman et al.
2015). The LM22 signature is stored in the GSVAdata
experiment data package as a compressed text file in GMT
format, which can be read into R using the readGMT()
function from the GSVA
package, which will return the gene sets, by default, into a
GeneSetCollection object, defined in the GSEABase
package. This default argument can be changed to return the gene sets
into a base list object by setting
valueType="list" in the call to readGMT().
library(GSEABase)
library(GSVA)
fname <- file.path(system.file("extdata", package="GSVAdata"),
"pbmc_cell_type_gene_set_signatures.gmt.gz")
gsets <- readGMT(fname)
gsets
GeneSetCollection
names: B_CELLS_MEMORY, B_CELLS_NAIVE, ..., T_CELLS_REGULATORY_TREGS (22 total)
unique identifiers: AIM2, BANK1, ..., SKAP1 (248 total)
types in collection:
geneIdType: SymbolIdentifier (1 total)
collectionType: NullCollection (1 total)Note that while gene identifers in the sce object
correspond to Ensembl
stable identifiers (ENSG...), the gene identifiers in
the gene sets are HGNC gene
symbols. This, in principle, precludes matching directly what gene in
the single-cell data object sce corresponds to what gene
set in the GeneSetCollection object gsets.
However, the GSVA package
can do that matching as long as the appropriate metadata is present in
both objects.
In the case of a GeneSetCollection object, its
geneIdType metadata slot stores the type of gene
identifier. In the case of a SingleCellExperiment object,
such as the previous sce object, such metadata is not
present. However, using the function gsvaAnnotation() from
the GSVA
package, and the helper function ENSEMBLIdentifier() from
the GSEABase
package, we add such metadata to the sce object as
follows.
We first build a parameter object using the function
gsvaParam(). By default, the expression values in the
logcounts assay will be selected for downstream
analysis.
While at this point, we could already run the entire GSVA algorithm
with a call to the gsva(gsvapar) function. We show here how
to do it in three steps. First we calculate row-normalized expression
values using the function gsvaRowNorm(), which if, as in
this example, the given input is a SingleCellExperiment
object, then the output will be the same object with an additional assay
called gsvarownr containing the row-normalized expression
values.
gsvarownorm <- gsvaRowNorm(gsvapar)
gsvarownorm
class: SingleCellExperiment
dim: 10799 4147
metadata(3): qc annotation gsvaParam
assays(3): counts logcounts gsvarownr
rownames(10799): ENSG00000279457 ENSG00000228463 ... ENSG00000273748
ENSG00000278817
rowData names(3): ENSEMBL_ID Symbol_TENx Symbol
colnames: NULL
colData names(16): Sample Barcode ... keep sizeFactor
reducedDimNames(0):
mainExpName: NULL
altExpNames(0):
assayNames(gsvarownorm)
[1] "counts" "logcounts" "gsvarownr"Second, we calculate GSVA column rank values using the function
gsvaColRanks(), which takes as input the output of
gsvaRowNorm(), and returns the column rank values in a new
assay called gsvaranks, if the input is a
SingleCellExperiment object.
gsvacolranks <- gsvaColRanks(gsvarownorm)
gsvacolranks
class: SingleCellExperiment
dim: 10799 4147
metadata(3): qc annotation gsvaParam
assays(4): counts logcounts gsvarownr gsvaranks
rownames(10799): ENSG00000279457 ENSG00000228463 ... ENSG00000273748
ENSG00000278817
rowData names(3): ENSEMBL_ID Symbol_TENx Symbol
colnames: NULL
colData names(16): Sample Barcode ... keep sizeFactor
reducedDimNames(0):
mainExpName: NULL
altExpNames(0):
assayNames(gsvacolranks)
[1] "counts" "logcounts" "gsvarownr" "gsvaranks"Third, we finally calculate the GSVA scores using the output of
gsvaColRanks() as input to the function
gsvaColScores(). By default, this function will calculate
the scores for all gene sets specified in the input parameter object
given in the call to gsvaRowNorm().
es <- gsvaColScores(gsvacolranks)
es
class: SingleCellExperiment
dim: 22 4147
metadata(2): qc gsvaParam
assays(1): es
rownames(22): B_CELLS_MEMORY B_CELLS_NAIVE ... T_CELLS_GAMMA_DELTA
T_CELLS_REGULATORY_TREGS
rowData names(1): gs
colnames: NULL
colData names(16): Sample Barcode ... keep sizeFactor
reducedDimNames(0):
mainExpName: NULL
altExpNames(0):However, we could calculate the scores for another collection of gene
sets, without having to calculate the column ranks again, by giving this
other collection of gene sets as second argument to the call to
gsvaColScores().
Following Amezquita et
al. (2020), and some of the steps described in “Chapter 5
Clustering” of the first version of the OSCA
book, we use GSVA scores to build a nearest-neighbor graph of the
cells using the function makeSNNGraph() from the bluster
package. The parameter k in the call to
makeSNNGraph() specifies the number of nearest neighbors to
consider during graph construction, and here we set k=20
because it leads to a number of clusters close to the expected number of
cell types.
Second, we use the function cluster_walktrap() from the
igraph
package (Csardi and Nepusz 2006), to
cluster cells by finding densely connected subgraphs. We store the
resulting vector of cluster indicator values into the sce
object using the function colLabels().
library(igraph)
colLabels(es) <- factor(cluster_walktrap(g)$membership)
table(colLabels(es))
1 2 3 4 5 6
919 1081 1017 589 205 336 Similarly to Diaz-Mejia et al. (2019),
we apply a simple cell type assignment algorithm, which consists of
selecting at each cell the gene set with highest GSVA score, tallying
the selected gene sets per cluster, and assigning to the cluster the
most frequent gene set, storing that assignment into the
sce object with the function colLabels().
whmax <- apply(assay(es), 2, which.max)
gsxlab <- split(rownames(es)[whmax], colLabels(es))
gsxlab <- names(sapply(sapply(gsxlab, table), which.max))
colLabels(es) <- factor(gsub("[0-9]\\.", "", gsxlab))[colLabels(es)]
table(colLabels(es))
B_CELLS_NAIVE MONOCYTES NK_CELLS_RESTING T_CELLS_CD4_NAIVE
589 1017 205 2000
T_CELLS_CD8
336 We can visualize the cell type assignments by projecting cells dissimilarity in two dimensions with a principal components analysis (PCA) on the GSVA scores, and coloring cells using the previously assigned clusters.
library(RColorBrewer)
res <- prcomp(assay(es))
varexp <- res$sdev^2 / sum(res$sdev^2)
nclusters <- nlevels(colLabels(es))
hmcol <- colorRampPalette(brewer.pal(nclusters, "Set1"))(nclusters)
par(mar=c(4, 5, 1, 1))
plot(res$rotation[, 1], res$rotation[, 2], col=hmcol[colLabels(es)], pch=19,
xlab=sprintf("PCA 1 (%.0f%%)", varexp[1]*100),
ylab=sprintf("PCA 2 (%.0f%%)", varexp[2]*100),
las=1, cex.axis=1.2, cex.lab=1.5)
mask <- colLabels(es) == "NK_CELLS_RESTING"
points(res$rotation[mask, 1], res$rotation[mask, 2], ## show the overlap better
col=hmcol[colLabels(es)[mask]], pch=19)
legend("bottomright", gsub("_", " ", levels(colLabels(es))), fill=hmcol, inset=0.01)Cell type assignments of PBMC scRNA-seq data, based on GSVA scores.
Finally, if we want to better understand why a specific cell type is
annotated to a given cell, we can use the gsvaEnrichment()
function, which will show a GSEA enrichment plot. This function takes as
input the output of gsvaRanks(), a given column (cell) in
the input single-cell data, and a given gene set. In Figure
@ref(fig:gsvaenrichment) below, we show such a plot for the first cell
annotated to the monocytes cell type.
firstmonocytecell <- which(colLabels(es) == "MONOCYTES")[1]
par(mar=c(4, 5, 1, 1))
gsvaEnrichment(gsvacolranks, column=firstmonocytecell, geneSet="MONOCYTES",
cex.axis=1.2, cex.lab=1.5, plot="ggplot")GSVA enrichment plot of the EOSINOPHILS gene set in the expression profile of the first cell annotated to that cell type.
In the previous call to gsvaEnrichment() we used the
argument plot="ggplot" to produce a plot with the ggplot2 package.
By default, if we call gsvaEnrichment() interactively, it
will produce a plot using “base R”, but either when we do it
non-interactively, or when we set plot="no" it will return
a data.frame object with the enrichment data.
We are still benchmarking and testing this version of GSVA for single-cell data. If you encounter problems or have suggestions, do not hesitate to contact us by opening an issue in the GSVA GitHub repo.
Here is the output of sessionInfo() on the system on
which this document was compiled running pandoc 3.8.3:
sessionInfo()
R version 4.6.0 (2026-04-24)
Platform: x86_64-pc-linux-gnu
Running under: Ubuntu 24.04.4 LTS
Matrix products: default
BLAS: /usr/lib/x86_64-linux-gnu/openblas-pthread/libblas.so.3
LAPACK: /usr/lib/x86_64-linux-gnu/openblas-pthread/libopenblasp-r0.3.26.so; LAPACK version 3.12.0
locale:
[1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C
[3] LC_TIME=en_US.UTF-8 LC_COLLATE=en_US.UTF-8
[5] LC_MONETARY=en_US.UTF-8 LC_MESSAGES=en_US.UTF-8
[7] LC_PAPER=en_US.UTF-8 LC_NAME=C
[9] LC_ADDRESS=C LC_TELEPHONE=C
[11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C
time zone: Etc/UTC
tzcode source: system (glibc)
attached base packages:
[1] stats4 stats graphics grDevices utils datasets methods
[8] base
other attached packages:
[1] RColorBrewer_1.1-3 igraph_2.3.1
[3] bluster_1.23.0 scrapper_1.7.3
[5] TENxPBMCData_1.31.0 HDF5Array_1.41.0
[7] h5mread_1.5.0 rhdf5_2.57.0
[9] DelayedArray_0.39.2 SparseArray_1.13.2
[11] S4Arrays_1.13.0 abind_1.4-8
[13] Matrix_1.7-5 SingleCellExperiment_1.35.1
[15] org.Hs.eg.db_3.23.1 GSVAdata_1.49.0
[17] GSEABase_1.75.0 graph_1.91.0
[19] annotate_1.91.0 XML_3.99-0.23
[21] AnnotationDbi_1.75.0 GSVA_2.7.3
[23] SummarizedExperiment_1.43.0 Biobase_2.73.1
[25] GenomicRanges_1.65.0 Seqinfo_1.3.0
[27] IRanges_2.47.1 S4Vectors_0.51.2
[29] BiocGenerics_0.59.3 generics_0.1.4
[31] MatrixGenerics_1.25.0 matrixStats_1.5.0
[33] BiocStyle_2.41.0
loaded via a namespace (and not attached):
[1] DBI_1.3.0 httr2_1.2.2
[3] rlang_1.2.0 magrittr_2.0.5
[5] otel_0.2.0 compiler_4.6.0
[7] RSQLite_3.53.1 DelayedMatrixStats_1.35.0
[9] png_0.1-9 vctrs_0.7.3
[11] pkgconfig_2.0.3 SpatialExperiment_1.23.0
[13] crayon_1.5.3 memuse_4.2-3
[15] fastmap_1.2.0 dbplyr_2.5.2
[17] magick_2.9.1 XVector_0.53.0
[19] labeling_0.4.3 rmarkdown_2.31
[21] purrr_1.2.2 bit_4.6.0
[23] xfun_0.57 cachem_1.1.0
[25] beachmat_2.29.0 jsonlite_2.0.0
[27] blob_1.3.0 rhdf5filters_1.25.0
[29] Rhdf5lib_2.1.0 BiocParallel_1.47.0
[31] cluster_2.1.8.2 irlba_2.3.7
[33] parallel_4.6.0 R6_2.6.1
[35] bslib_0.11.0 jquerylib_0.1.4
[37] Rcpp_1.1.1-1.1 knitr_1.51
[39] tidyselect_1.2.1 yaml_2.3.12
[41] codetools_0.2-20 curl_7.1.0
[43] lattice_0.22-9 tibble_3.3.1
[45] S7_0.2.2 withr_3.0.2
[47] KEGGREST_1.53.0 evaluate_1.0.5
[49] BiocFileCache_3.3.0 ExperimentHub_3.3.0
[51] Biostrings_2.81.2 pillar_1.11.1
[53] BiocManager_1.30.27 filelock_1.0.3
[55] ggplot2_4.0.3 BiocVersion_3.24.0
[57] scales_1.4.0 sparseMatrixStats_1.25.0
[59] xtable_1.8-8 glue_1.8.1
[61] maketools_1.3.2 tools_4.6.0
[63] AnnotationHub_4.3.0 BiocNeighbors_2.7.2
[65] sys_3.4.3 ScaledMatrix_1.21.0
[67] buildtools_1.0.0 grid_4.6.0
[69] BiocSingular_1.29.0 cli_3.6.6
[71] rsvd_1.0.5 rappdirs_0.3.4
[73] dplyr_1.2.1 gtable_0.3.6
[75] sass_0.4.10 digest_0.6.39
[77] farver_2.1.2 rjson_0.2.23
[79] memoise_2.0.1 htmltools_0.5.9
[81] lifecycle_1.0.5 httr_1.4.8
[83] bit64_4.8.2