BuildClusterTree: Phylogenetic Analysis of Identity Classes
Description
Constructs a phylogenetic tree relating the 'average' cell from each
identity class. Tree is estimated based on a distance matrix constructed in
either gene expression space or PCA space.
Usage
BuildClusterTree(object, features = NULL, dims = NULL, graph = NULL,
reorder = FALSE, reorder.numeric = FALSE, verbose = TRUE)
Arguments
features
Genes to use for the analysis. Default is the set of
variable genes (VariableFeatures(object = object)
)
dims
If set, tree is calculated in PCA space; overrides features
graph
If graph is passed, build tree based on graph connectivity between
clusters; overrides dims
and features
reorder
Re-order identity classes (factor ordering), according to
position on the tree. This groups similar classes together which can be
helpful, for example, when drawing violin plots.
reorder.numeric
Re-order identity classes according to position on
the tree, assigning a numeric value ('1' is the leftmost node)
Value
A Seurat object where the cluster tree can be accessed with Tool
Details
Note that the tree is calculated for an 'average' cell, so gene expression
or PC scores are averaged across all cells in an identity class before the
tree is constructed.
Examples
Run this code# NOT RUN {
pbmc_small
pbmc_small <- BuildClusterTree(object = pbmc_small)
Tool(object = pbmc_small, slot = 'BuildClusterTree')
# }
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