Description Usage Arguments Value Examples
Extract cluster/group gene sets from MCA
1 2 3 4 5 6 7 8 9 10 | GetGroupGeneSet(X, group.by, reduction, dims, features, n.features)
## S3 method for class 'Seurat'
GetGroupGeneSet(X, group.by = NULL, reduction = "mca",
dims = seq(50), features = NULL, n.features = 200)
## S3 method for class 'SingleCellExperiment'
GetGroupGeneSet(X, group.by = NULL,
reduction = "MCA", dims = seq(50), features = NULL,
n.features = 200)
|
X |
Seurat or SingleCellExperiment object, alternatively a matrix. |
group.by |
column name of meta.data (Seurat) or ColData (SingleCellExperiment). |
reduction |
Which dimensionality reduction to use, must be based on MCA. |
dims |
A vector of integers indicating which dimensions to use with reduction for distance calculation. |
features |
A character vector of features name to subset feature coordinates for distance calculation. |
n.features |
A single integer specifying how many top features will be extracted from ranking. |
Distance Matrix between groups (column) and genes (row)
1 2 | seuratPbmc <- RunMCA(seuratPbmc, nmcs = 5)
GroupGeneSet <- GetGroupGeneSet(seuratPbmc, dims = 1:5, group.by = "seurat_clusters")
|
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