mergeClusters
¶
mergeClusters
Description¶
Merge selected clusters based on pairwise correlation scores and size of cluster.
Usage¶
mergeClusters(
gobject,
expression_values = c("normalized", "scaled", "custom"),
cluster_column,
cor = c("pearson", "spearman"),
new_cluster_name = "merged_cluster",
min_cor_score = 0.8,
max_group_size = 20,
force_min_group_size = 10,
max_sim_clusters = 10,
return_gobject = TRUE,
verbose = TRUE
)
Arguments¶
Argument |
Description |
---|---|
|
giotto object |
|
expression values to use |
|
name of column to use for clusters |
|
correlation score to calculate distance |
|
new name for merged clusters |
|
min correlation score to merge pairwise clusters |
|
max cluster size that can be merged |
|
size of clusters that will be merged with their most similar neighbor(s) |
|
maximum number of clusters to potentially merge to reach force_min_group_size |
|
return giotto object |
|
be verbose |
Details¶
- Merge selected clusters based on pairwise correlation scores and size of cluster.
To avoid large clusters to merge the max_group_size can be lowered. Small clusters can be forcibly merged with their most similar pairwise cluster by adjusting the force_min_group_size parameter. Clusters smaller than this value will be merged independent on the provided min_cor_score value. The force_min_group_size might not always be reached if clusters have already been merged before list() A giotto object is returned by default, if FALSE then the merging vector will be returned.
Value¶
Giotto object
Examples¶
data("mini_giotto_single_cell")
pDataDT(mini_giotto_single_cell)
mini_giotto_single_cell = mergeClusters(mini_giotto_single_cell,
cluster_column = 'leiden_clus',
min_cor_score = 0.7,
force_min_group_size = 4)
pDataDT(mini_giotto_single_cell)
plotUMAP_2D(mini_giotto_single_cell, cell_color = 'merged_cluster', point_size = 3)