First I thought I need to it manually in powerpoint, then I thought may be try with R, if there is a solution. Here is my example data:

myd<- expand.grid('cat' = LETTERS[1:5], 'cond'= c(F,T), 'phase' = c("Interphase", "Prophase", "Metaphase", "Anaphase", "Telophase"))
myd$value <- floor((rnorm(nrow(myd)))*100)
myd$value[myd$value < 0] <- 0

ggplot() +
  geom_bar(data=myd, aes(y = value, x = phase, fill = cat), stat="identity",position='dodge') +

Here is what output should look like: enter image description here

The jpeg image can be randomly generated (to demo examples) or example figures at the links:

Interphase prophase , metaphase, anaphase , telophase


Suggestion @bapste

enter image description here

  • 2
    it should be a job for annotation_raster but it doesn't seem to work with a discrete axis, unfortunately. – baptiste Dec 28 '12 at 21:06

Using grid package, and playing with viewports, you can have this

enter image description here

## transform the jpeg to raster grobs
names.axis <-  c("Interphase", "Prophase", "Metaphase", "Anaphase", "Telophase")
images <- lapply(names.axis,function(x){
  img <- readJPEG(paste('lily_',x,'.jpg',sep=''), native=TRUE)
  img <- rasterGrob(img, interpolate=TRUE)
  } )
## main viewports, I divide the scene in 10 rows ans 5 columns(5 pictures)
pushViewport(plotViewport(margins = c(1,1,1,1),
             layout=grid.layout(nrow=10, ncol=5),xscale =c(1,5)))
## I put in the 1:7 rows the plot without axis
## I define my nested viewport then I plot it as a grob.
pushViewport(plotViewport(layout.pos.col=1:5, layout.pos.row=1:7,
             margins = c(1,1,1,1)))
pp <- ggplot() +
  geom_bar(data=myd, aes(y = value, x = phase, fill = cat), 
                 stat="identity",position='dodge') +
  theme_bw()+theme(legend.position="none", axis.title.y=element_blank(),
gg <- ggplotGrob(pp)
## I draw my pictures in between rows 8/9 ( visual choice)
## I define a nested Viewport for each picture than I draw it.
  pushViewport(viewport(layout.pos.col=x, layout.pos.row=8:9,just=c('top')))
  pushViewport(plotViewport(margins = c(5.2,3,4,3)))
  ## I do same thing for text 
  pushViewport(viewport(layout.pos.col=x, layout.pos.row=10,just=c('top')))
  pushViewport(plotViewport(margins = c(1,3,1,1)))
    grid.text(names.axis[x],gp = gpar(cex=1.5))
pushViewport(plotViewport(layout.pos.col=1:5, layout.pos.row=1:9,
             margins = c(1,1,1,1)))
| improve this answer | |
  • Thank you for the answer. May be I would try to organize it better - particularly align and put the label in axis as in my manual layout ... thank you for the idea again – jon Dec 28 '12 at 16:11
  • @jon it is a first attempt. it can be easily performed. – agstudy Dec 28 '12 at 16:13
  • @jon maybe it is better like this ? – agstudy Dec 28 '12 at 16:38
  • 2
    @jon definitely yes !you need to play with margins! I change it. I think it looks good now. – agstudy Dec 28 '12 at 16:52
  • 3
    @SHRram I upadte my answer with a dummy list of images. The order is classic since you manipulate 2 lists (images and names.axis) – agstudy Dec 28 '12 at 20:38

You can create a custom element function for axis.text.x, but it's quite fiddly and convoluted. Similar requests have been made in the past, it would be nice to have a clean solution for this and other custom changes (strip labels, axes, etc.) Feature request, anyone?

enter image description here

img <- lapply(list.files(pattern="jpg"), readJPEG )
names(img) <- c("Anaphase", "Interphase", "Metaphase", "Prophase", "Telophase")


# user-level interface to the element grob
my_axis = function(img) {
      class = c("element_custom","element_blank", "element") # inheritance test workaround
# returns a gTree with two children: the text label, and a rasterGrob below
element_grob.element_custom <- function(element, x,...)  {
  stopifnot(length(x) == length(element$img))
  tag <- names(element$img)
  # add vertical padding to leave space
  g1 <- textGrob(paste0(tag, "\n\n\n\n\n"), x=x,vjust=0.6)
  g2 <- mapply(rasterGrob, x=x, image = element$img[tag], 
               MoreArgs = list(vjust=0.7,interpolate=FALSE,
               SIMPLIFY = FALSE)

  gTree(children=do.call(gList,c(g2,list(g1))), cl = "custom_axis")
# gTrees don't know their size and ggplot would squash it, so give it room
grobHeight.custom_axis = heightDetails.custom_axis = function(x, ...)
  unit(6, "lines")

ggplot(myd) +
  geom_bar(aes(y = value, x = phase, fill = cat), stat="identity", position='dodge') +
  theme_bw() +
  theme(axis.text.x = my_axis(img),
          axis.title.x = element_blank())

| improve this answer | |
  • @bapsite thank you for the solution. I believe that the function applies to n number of categories . I would like to see alternative version if that gives better if we make 5 different plots rather a single grouped barplot ... – jon Dec 29 '12 at 15:14
  • 1
    @baptiste good result! but isn't a little complicated to get it? it seems that we need to to know in details how to build custom geoms/elements with ggplot2! – agstudy Dec 29 '12 at 16:51
  • @agstudy as it stands, it's probably not worth it; I'd do it in Illustrator. Food for thoughts though, I would like to see such custom elements more easily inserted into the ggplot2 framework. Lattice offers more flexibility in this regard, with every element being a function that can be overwritten by the user. – baptiste Dec 29 '12 at 23:40
  • 1
    @baptiste my approach is different. I assume we can't integrate all user customizations in neither framework, that why I take the best of lattice/ggplot2 to do a first draw, than I post process my draw with the base grid farmework. e.g I can use my the same code above with a lattice bwplot. I think this approach will be enhanced in R.2.16 with the new makeContent() hook. – agstudy Dec 30 '12 at 7:23
  • sure, this is an old answer. gtable certainly has the potential of solving many tricky ggplot2 questions, unfortunately its development stopped long ago. – baptiste Jul 6 '15 at 8:09

Note: I would now recommend the approach described here. It is more principled and simpler to understand.

Generating such a figure has become relatively straightforward with functions available in the cowplot package, specifically the axis_canvas() and insert_xaxis_grob() functions. (Disclaimer: I'm the package author.)


# create the data
myd <- expand.grid('cat' = LETTERS[1:5], 'cond'= c(F,T), 'phase' = c("Interphase", "Prophase", "Metaphase", "Anaphase", "Telophase"))
myd$value <- floor((rnorm(nrow(myd)))*100)
myd$value[myd$value < 0] <- 0

# make the barplot
pbar <- ggplot(myd) +
  geom_bar(aes(y = value, x = phase, fill = cat), stat="identity", position='dodge') +
  scale_y_continuous(limits = c(0, 224), expand = c(0, 0)) +
  theme_minimal(14) +
  theme(axis.ticks.length = unit(0, "in"))

# make the image strip
pimage <- axis_canvas(pbar, axis = 'x') + 
  draw_image("http://www.microbehunter.com/wp/wp-content/uploads/2009/lily_interphase.jpg", x = 0.5, scale = 0.9) +
  draw_image("http://www.microbehunter.com/wp/wp-content/uploads/2009/lily_prophase.jpg", x = 1.5, scale = 0.9) +
  draw_image("http://www.microbehunter.com/wp/wp-content/uploads/2009/lily_metaphase2.jpg", x = 2.5, scale = 0.9) +
  draw_image("http://www.microbehunter.com/wp/wp-content/uploads/2009/lily_anaphase2.jpg", x = 3.5, scale = 0.9) +
  draw_image("http://www.microbehunter.com/wp/wp-content/uploads/2009/lily_telophase.jpg", x = 4.5, scale = 0.9)

# insert the image strip into the bar plot and draw  
ggdraw(insert_xaxis_grob(pbar, pimage, position = "bottom"))

enter image description here

I'm reading the images straight from the web here, but the draw_image() function will also work with local files.

In theory, it should be possible to draw the image strip using geom_image() from the ggimage package, but I couldn't get it to work without having distorted images, so I resorted to five draw_image() calls.

| improve this answer | |

I would now do this with the ggtext package. This is conceptually similar to the solution suggested here but with the hard work done in the package.



data <- expand.grid(
  cat = LETTERS[1:5],
  cond= c(FALSE, TRUE),
  phase = c("Interphase", "Prophase", "Metaphase", "Anaphase", "Telophase")
) %>%
    value = floor(rnorm(n())*100),
    value = ifelse(value < 0, 0, value)

# images from: http://www.microbehunter.com/mitosis-stages-of-the-lily/

labels <- c(
  Interphase = "<img src='img/interphase.jpg' width='60' /><br>Interphase",
  Prophase = "<img src='img/prophase.jpg' width='60' /><br>Prophase",
  Metaphase = "<img src='img/metaphase.jpg' width='60' /><br>Metaphase",
  Anaphase = "<img src='img/anaphase.jpg' width='60' /><br>Anaphase",
  Telophase = "<img src='img/telophase.jpg' width='60' /><br>Telophase"

ggplot(data, aes(phase, value, fill = cat)) +
  geom_col(position = "dodge") +
  scale_x_discrete(name = NULL, labels = labels) +
  theme(axis.text.x = element_markdown(lineheight = 1.2))

Created on 2020-01-29 by the reprex package (v0.3.0)

| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.