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ggcorrheatmap is a convenient package for generating correlation heatmaps made with ggplot2, with support for triangular layouts, clustering and annotation. As the output is a ggplot2 object you can further customise the appearance using familiar ggplot2 functions. Besides correlation heatmaps, there is also support for making general heatmaps.
You can install ggcorrheatmap from CRAN using:
install.packages("ggcorrheatmap")
Or you can install the development version from GitHub with:
# install.packages("devtools")
::install_github("leod123/ggcorrheatmap") devtools
Below is an example of how to generate a correlation heatmap with clustered rows and columns and row annotation, using a triangular layout that excludes redundant cells.
library(ggcorrheatmap)
set.seed(123)
# Make a correlation heatmap with a triangular layout, annotations and clustering
<- data.frame(.names = colnames(mtcars),
row_annot annot1 = sample(letters[1:3], ncol(mtcars), TRUE),
annot2 = rnorm(ncol(mtcars)))
ggcorrhm(mtcars, layout = "bottomright",
cluster_rows = TRUE, cluster_cols = TRUE,
show_dend_rows = FALSE, annot_rows_df = row_annot)
Or a mixed layout that displays different things in the different triangles.
# With correlation values and p-values
ggcorrhm(mtcars, layout = c("topright", "bottomleft"),
cell_labels = c(FALSE, TRUE), p_values = c(FALSE, TRUE))
It is also possible to make a normal heatmap, for a more flexible output.
gghm(scale(mtcars), cluster_rows = TRUE, cluster_cols = TRUE)
There are many more options for customisation, covered in the different articles of the package:
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.