Learn R Programming

Signac (version 1.14.0)

SortIdents: Sorts cell metadata variable by similarity using hierarchical clustering

Description

Compute distance matrix from a feature/variable matrix and perform hierarchical clustering to order variables (for example, cell types) according to their similarity.

Usage

SortIdents(
  object,
  layer = "data",
  assay = NULL,
  label = NULL,
  dendrogram = FALSE,
  method = "euclidean",
  verbose = TRUE
)

Value

The Seurat object with metadata variable reordered by similarity. If the metadata variable was a character vector, it will be converted to a factor and the factor levels set according to the similarity ordering. If active identities were used (label=NULL), the levels will be updated according to similarity ordering.

Arguments

object

A Seurat object containing single-cell data.

layer

The layer of the data to use (default is "data").

assay

Name of assay to use. If NULL, use the default assay

label

Metadata attribute to sort. If NULL, uses the active identities.

dendrogram

Logical, whether to plot the dendrogram (default is FALSE).

method

The distance method to use for hierarchical clustering (default is 'euclidean', other options from dist are 'maximum', 'manhattan', 'canberra', 'binary' and 'minkowski').

verbose

Display messages

Examples

Run this code
atac_small$test <- sample(1:10, ncol(atac_small), replace = TRUE)
atac_small <- SortIdents(object = atac_small, label = 'test')
print(levels(atac_small$test))

Run the code above in your browser using DataLab