a vector of clusters for each enriched term in the enrichment results.
Arguments
kappa_mat
matrix of kappa statistics (output of create_kappa_matrix)
enrichment_res
data frame of pathfindR enrichment results. Must-have
columns are 'Term_Description' (if use_description = TRUE) or 'ID'
(if use_description = FALSE), 'Down_regulated', and 'Up_regulated'.
If use_active_snw_genes = TRUE, 'non_Signif_Snw_Genes' must also be
provided.
num_clusters
number of clusters to be formed (default = NULL).
If NULL, the optimal number of clusters is determined as the number
which yields the highest average silhouette width.
use_description
Boolean argument to indicate whether term descriptions
(in the 'Term_Description' column) should be used. (default = FALSE)
clu_method
the agglomeration method to be used
(default = 'average', see hclust)
plot_hmap
boolean to indicate whether to plot the kappa statistics
clustering heatmap or not (default = FALSE)
plot_dend
boolean to indicate whether to plot the clustering
dendrogram partitioned into the optimal number of clusters (default = TRUE)
Details
The function initially performs hierarchical clustering
of the enriched terms in enrichment_res using the kappa statistics
(defining the distance as 1 - kappa_statistic). Next,
the clustering dendrogram is cut into k = 2, 3, ..., n - 1 clusters
(where n is the number of terms). The optimal number of clusters is
determined as the k value which yields the highest average silhouette width.
(if num_clusters not specified)