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Plotting a clustered heatmap with dendrograms using R's plotly

I'm following this example on how to create a clustered heatmap with dendrograms with R 's plotly . Here's the example:

library(ggplot2)
library(ggdendro)
library(plotly)

#dendogram data
x <- as.matrix(scale(mtcars))
dd.col <- as.dendrogram(hclust(dist(x)))
dd.row <- as.dendrogram(hclust(dist(t(x))))
dx <- dendro_data(dd.row)
dy <- dendro_data(dd.col)

# helper function for creating dendograms
ggdend <- function(df) {
  ggplot() +
    geom_segment(data = df, aes(x=x, y=y, xend=xend, yend=yend)) +
    labs(x = "", y = "") + theme_minimal() +
    theme(axis.text = element_blank(), axis.ticks = element_blank(),
          panel.grid = element_blank())
}

# x/y dendograms
px <- ggdend(dx$segments)
py <- ggdend(dy$segments) + coord_flip()

# heatmap
col.ord <- order.dendrogram(dd.col)
row.ord <- order.dendrogram(dd.row)
xx <- scale(mtcars)[col.ord, row.ord]
xx_names <- attr(xx, "dimnames")
df <- as.data.frame(xx)
colnames(df) <- xx_names[[2]]
df$car <- xx_names[[1]]
df$car <- with(df, factor(car, levels=car, ordered=TRUE))
mdf <- reshape2::melt(df, id.vars="car")
p <- ggplot(mdf, aes(x = variable, y = car)) + geom_tile(aes(fill = value))

mat <- matrix(unlist(dplyr::select(df,-car)),nrow=nrow(df))
colnames(mat) <- colnames(df)[1:ncol(df)-1]
rownames(mat) <- rownames(df)

# hide axis ticks and grid lines
eaxis <- list(
  showticklabels = FALSE,
  showgrid = FALSE,
  zeroline = FALSE
)

p_empty <- plot_ly(filename="r-docs/dendrogram") %>%
  # note that margin applies to entire plot, so we can
  # add it here to make tick labels more readable
  layout(margin = list(l = 200),
         xaxis = eaxis,
         yaxis = eaxis)

subplot(px, p_empty, p, py, nrows = 2, margin = 0.01)

which gives:

在此输入图像描述

I changed the code a bit so that in my case the heatmap is generated with plotly rather than ggplot since it runs faster on my real big data, hence I do:

heatmap.plotly <- plot_ly() %>% add_heatmap(z=~mat,x=factor(colnames(mat),lev=colnames(mat)),y=factor(rownames(mat),lev=rownames(mat)))

And then:

subplot(px, p_empty, heatmap.plotly, py, nrows = 2, margin = 0.01)

which gives: 在此输入图像描述

My questions are:

  1. How do I get the row and column labels of the heatmap not get cut off as they do in both plots?

  2. The label of the colorer is changed to "mat" in the second figure. Any idea how to prevent that?

  3. How do I change the margins between the heatmap and the dendrograms?

Making a fully working cluster heatmap with plotly is not as simple as it may seem in the beginning. Luckily, there is an R package called heatmaply which does just that. You can see many examples of features in the online vignette .

For example:

install.packages("ggplot2")
install.packages("plotly")
install.packages("heatmaply")

library(heatmaply)
heatmaply(scale(mtcars), k_row = 3, k_col = 2)

在此输入图像描述

This figure is fully interactive (both from the heatmap and the dendrogram). Notice that it uses dendextend (a more developed version of ggdendro, which also can, just for example, account for branch colors/line-type/line-width)

Specifically setting the margins of the dendrograms is an open issue (from just today), but this will probably get resolved soon.

How do I get the row and column labels of the heatmap not get cut off > as they do in both plots?

Try setting the margin s after the plot was generated

sply <- subplot(px, p_empty, heatmap.plotly, py, nrows = 2)
sply <- layout(sply,
               margin = list(l = 150,
                             r = 0,
                             b = 50,
                             t = 0
                            )
               )

The label of the colorer is changed to "mat" in the second figure. Any idea how to prevent that?

No idea how to prevent it but you can overwrite the label.

sply$x$data[[3]]$colorbar$title <- 'mat'

How do I change the margins between the heatmap and the dendrograms?

You can specify the domain for each axis of each subplot. yaxis corresponds to the plot in the left upper corner, yaxis2 to the plot in right next to it, etc.

Increasing the distance works better than decreasing it.

sply <- layout(sply,
               yaxis = list(domain=c(0.47, 1)),
               xaxis = list(domain=c(0, 0.5)),
               xaxis3 = list(domain=c(0, 0.5)),
               xaxis4 = list(domain=c(0.5, 1)),
               )

在此输入图像描述

pl <- subplot(px, p_empty, p, py, nrows = 2)
heatmap.plotly <- plot_ly() %>% add_heatmap(z=~mat,x=factor(colnames(mat),lev=colnames(mat)),y=factor(rownames(mat),lev=rownames(mat)))
sply <- subplot(px, p_empty, heatmap.plotly, py, nrows = 2)
sply$x$data[[3]]$colorbar$title <- 'mat'
sply <- layout(sply,
               yaxis = list(domain=c(0.47, 1)),
               xaxis = list(domain=c(0, 0.5)),
               xaxis3 = list(domain=c(0, 0.5)),
               xaxis4 = list(domain=c(0.5, 1)),
               margin = list(l = 150,
                             r = 0,
                             b = 50,
                             t = 0
                             )


               )

sply

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