I want to plot a very simple boxplot like this in R:

desired graph

enter image description here

It is a log-link (Gamma distributed: jh_conc is a hormone concentration variable) Generalized linear model of a continuous dependent variable (jh_conc) for a categorical grouping variable (group: type of bee)

My script that I already have is:

> jh=read.csv("data_jh_titer.csv",header=T)
> jh
           group     jh_conc
1         Queens  6.38542714
2         Queens 11.22512563
3         Queens  7.74472362
4         Queens 11.56834171
5         Queens  3.74020100
6  Virgin Queens  0.06080402
7  Virgin Queens  0.12663317
8  Virgin Queens  0.08090452
9  Virgin Queens  0.04422111
10 Virgin Queens  0.14673367
11       Workers  0.03417085
12       Workers  0.02449749
13       Workers  0.02927136
14       Workers  0.01648241
15       Workers  0.02150754

fit1=glm(jh_conc~group,family=Gamma(link=log), data=jh) 

ggplot(fit, aes(group, jh_conc))+
      geom_boxplot(aes(fill=group))+
      coord_trans(y="log")

the resulting plot looks like this:

enter image description here

My question is: what (geom) extensions can I use to split the y-axis and rescale them different? Also how do I add the black circles (averages; which are calculated on a log scale and then back-transformed to the original scale) horizontal lines which are significance levels based on posthoc tests performed on log transformed data: ** : p<0.01, *** :p< 0.001?

up vote 0 down vote accepted

You can't create a broken numeric axis in ggplot2 by design, mainly because it visually distorts the data/differences being represented and is considered misleading.

You can however use scale_log10() + annotation_logticks() to help condense data across a wide range of values or better show heteroskedastic data. You can also use annotate to build out your p-value representation stars and bars.

Also you can easily grab information from a model using it's named attributes, here we care about fit$coef:

# make a zero intercept version for easy plotting
fit2 <- glm(jh_conc ~ 0 + group, family = Gamma(link = log), data = jh)
# extract relevant group means and use exp() to scale back
means <- data.frame(group = gsub("group", "",names(fit2$coef)), means = exp(fit2$coef))

ggplot(fit, aes(group, jh_conc)) +
    geom_boxplot(aes(fill=group)) +
    # plot the circles from the model extraction (means)
    geom_point(data = means, aes(y = means),size = 4, shape = 21, color = "black", fill = NA) +
    # use this instead of coord_trans
    scale_y_log10() + annotation_logticks(sides = "l") +
    # use annotate "segment" to draw the horizontal lines
    annotate("segment", x = 1, xend = 2, y = 15, yend = 15) +
    # use annotate "text" to add your pvalue *'s
    annotate("text", x = 1.5, y = 15.5, label = "**", size = 4) +
    annotate("segment", x = 1, xend = 3, y = 20, yend = 20) +
    annotate("text", x = 2, y = 20.5, label = "***", size = 4) +
    annotate("segment", x = 2, xend = 3, y = .2, yend = .2) +
    annotate("text", x = 2.5, y = .25, label = "**", size = 4) 

enter image description here

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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