Using plotor

library(plotor)
library(dplyr)
library(datasets)
library(tidyr)
library(stats)
library(broom)
library(forcats)
library(ggplot2)

plotor produces Odds-Ratio plots from a given logistic regression model, as produced using the general linear model (glm) package.

Installing plotor

plotor can be installed via GitHub using the devtools package:

# install.packages("devtools")
devtools::install_github("craig-parylo/plotor")

You can also install the latest released version from Cran with:

install.packages("plotor")

Example 1 - using the Titanic survivors data set

Let’s start by exploring the likelihood of surviving the Titanic disaster based on passenger economic status (class), sex, and age group.

Get and prepare data from the datasets package.

df <- datasets::Titanic |> 
  as_tibble() |> 
  # convert counts to observations
  filter(n > 0) |>
  uncount(weights = n) |>
  # convert categorical variables to factors.
  # we specify an order for levels in Class and Survival, otherwise ordering
  # in descending order of frequency
  mutate(
    Class = Class |>
      fct(levels = c('1st', '2nd', '3rd', 'Crew')),
    Sex = Sex |>
      fct_infreq(),
    Age = Age |>
      fct_infreq(),
    Survived = Survived |>
      fct(levels = c('No', 'Yes'))
  )

# preview the data
df |> glimpse()
#> Rows: 2,201
#> Columns: 4
#> $ Class    <fct> 3rd, 3rd, 3rd, 3rd, 3rd, 3rd, 3rd, 3rd, 3rd, 3rd, 3rd, 3rd, 3…
#> $ Sex      <fct> Male, Male, Male, Male, Male, Male, Male, Male, Male, Male, M…
#> $ Age      <fct> Child, Child, Child, Child, Child, Child, Child, Child, Child…
#> $ Survived <fct> No, No, No, No, No, No, No, No, No, No, No, No, No, No, No, N…

We now have a tibble of data containing four columns:

We next conduct a logistic regression of survival (as a binary factor: ‘yes’ and ‘no’) against the characteristics of passenger class, sex and age group. For this we use the Generalised Linear Model function (glm) from the stats package, specifying:

# conduct a logistic regression of survival against the other variables
lr <- glm(
  data = df,
  family = 'binomial',
  formula = Survived ~ Class + Sex + Age
)

# preview the model as a tidy table
lr |> 
  tidy() |> 
  glimpse()
#> Rows: 6
#> Columns: 5
#> $ term      <chr> "(Intercept)", "Class2nd", "Class3rd", "ClassCrew", "SexFema…
#> $ estimate  <dbl> -0.3762229, -1.0180950, -1.7777622, -0.8576762, 2.4200603, 1…
#> $ std.error <dbl> 0.1361769, 0.1959969, 0.1715657, 0.1573387, 0.1404093, 0.244…
#> $ statistic <dbl> -2.762751, -5.194443, -10.361993, -5.451147, 17.235750, 4.35…
#> $ p.value   <dbl> 5.731642e-03, 2.053331e-07, 3.691891e-25, 5.004592e-08, 1.43…

Finally, we can plot the Odds Ratio of survival using the plot_or function.

# using plot_or
plot_or(glm_model_results = lr)

This plot makes it clear that:

Note on plot features

The primary components of an Odds-Ratio plot are dots, whiskers and the line of no effect.

The dot represents the point estimate for the Odds-Ratio, which indicates how much more likely the event is than the comparator event.

The width of the whiskers represents the 95% Confidence Interval, a range of values the point estimate (the dot) is likely to fall within if the study were to be repeated, with a probability of 95%.

The line of no effect is set at a value of 1. Events whose confidence intervals touch or cross this line are considered to show no difference in likelihood than the comparator event.

The size of the dots is proportional to the number of observations. In the above, the size of the Adult square is much larger than the Child square, because there were 20 times more adults on the ship than children. This feature can help contextualise the findings from OR plots.

Change base font size

To increase the size of the font you can extend the returned plot using the theme function from ggplot2. Here we set the base size of all fonts in the plot to size 16.

plot_or(glm_model_results = lr) + 
  theme(text = element_text(size = 16))

Specify the breaks

Odds Ratio (OR) plots produced by plotor are displayed using a log10 x-axis.

By default ten breaks are shown, however, this can be altered by extending the scale_x_log10 function from ggplot2. Here we provide a manual list of breaks to use:

plot_or(glm_model_results = lr) + 
  scale_x_log10(breaks = c(0.1, 0.5, 1, 5, 10))

Change the dot and whisker colours

There are three types of colours used for the dots and whiskers in the OR plot, depending on their category.

The colours for these points can be changed by extending the output using scale_colour_manual function from ggplot2 with a named vector specifying colour values for the three types of colours:

plot_or(glm_model_results = lr) +
  scale_colour_manual(values = c(
    'Significant' = '#44bd32',
    'Comparator' = '#8c7ae6',
    'Not significant' = '#e84118')
  )

Change the title, subtitle and add a caption

plotor uses the dependent variable as the title of the plot by default with a subtitle indicating this it is an Odds Ratio plot with a 95% confidence interval.

The plot can be customised with your own title, subtitle and add a caption by extending the labs function of ggplot2.

plot_or(glm_model_results = lr) +
  labs(
    title = 'Passenger survival from the Titanic disaster',
    subtitle = 'Odds Ratio of survival by Class, Age and Gender',
    caption = 'Data source: Dawson, Robert J. MacG. (1995), The ‘Unusual Episode’ Data Revisited. Journal of Statistics Education, 3. doi:10.1080/10691898.1995.11910499'
  )

Example 2 - using the Smoking, Alcohol and Oesophageal Cancer data set

This data set comes from a case-control study of oesophageal cancer in Ile-et-Vilaine, France. In addition to the outcome variable, Group, identifying who is a case (developed cancer) or a control (disease free), it contains three explanatory variables:

To look at the likelihood of a participant to develop oesophageal cancer we can perform logistic regression against these variables.

df <- datasets::esoph |> 
  # convert aggregated data to tidy observational data
  tidyr::pivot_longer(
    cols = c(ncases, ncontrols),
    names_to = 'Group',
    values_to = 'people'
  ) |> 
  uncount(weights = people) |> 
  # prepare the variables
  mutate(
    # convert the intervention group to a factor
    Group = Group |> 
      case_match('ncases' ~ 'Case', 'ncontrols' ~ 'Control') |> 
      fct(levels = c('Control', 'Case')),
    # remove the ordering from these factors so the glm model doesn't treat
    # them as numeric
    agegp = agegp |> factor(ordered = F),
    alcgp = alcgp |> factor(ordered = F),
    tobgp = tobgp |> factor(ordered = F)
  )

# preview the data
df |> glimpse()
#> Rows: 975
#> Columns: 4
#> $ agegp <fct> 25-34, 25-34, 25-34, 25-34, 25-34, 25-34, 25-34, 25-34, 25-34, 2…
#> $ alcgp <fct> 0-39g/day, 0-39g/day, 0-39g/day, 0-39g/day, 0-39g/day, 0-39g/day…
#> $ tobgp <fct> 0-9g/day, 0-9g/day, 0-9g/day, 0-9g/day, 0-9g/day, 0-9g/day, 0-9g…
#> $ Group <fct> Control, Control, Control, Control, Control, Control, Control, C…

Next we carry out the logistic regression and then plot the results.

# conduct the logistic regression
lr <- glm(
  data = df,
  family = 'binomial',
  formula = Group ~ agegp + alcgp + tobgp
)

# plot the odds ratio plot with customised title
plot_or(lr) +
  labs(title = 'Likelihood of developing oesophageal cancer')

From this we can see there is a strong link between age and likelihood of cancer. Compared with those in the 25-34 years group there is a statistically significant increased likelihood of being in the case cohort of those in the 45-54 years group (43 times more likely), 55-64 years group (76 times more likely), 65-74 years group (133 times more likely), and 75+ years group (124 times more likely).

There is also a strong link between alcohol consumption and likelihood of cancer. Compared with those who consumed the least alcohol, defined as between 0 and 39 g/day, those who consumed more alcohol are more at risk of developing cancer with the greatest risk in those who consumed more than 119 g/day, putting them at 36 times more likely to develop cancer.

Tobacco use is a more nuanced picture. There was no detectable difference in the likelihood of developing cancer for those in the first three groups (0-9g/day, 10-19g/day and 20-29g/day) - seen by the confidence intervals crossing the line of no effect. However, there was a statistically significant increased risk of developing cancer in those who consumed the most tobacco, 30+g/day, putting them at 5 times the risk.

Use variable labels

Replacing variable names with a more descriptive label makes the plots more accessible to those not involved in the analysis. For example, Alcohol consumption (g/day) is a more user-friendly label than the name of the variable, alcgp.

There are some amazing packages designed to help label your data. In the below example we use the labelled package to label our data before analysing and plotting it.

# library to apply labels to data
library(labelled)

# create a list of variable = labels
var_labels <- list(
  agegp = 'Age group',
  alcgp = 'Alcohol consumption',
  tobgp = 'Tobacco consumption',
  Group = 'Developing oesophageal cancer'
)

# label the variables in our data
labelled::var_label(df) <- var_labels

# preview the data with labels appplied 
labelled::look_for(df)
#>  pos variable label                         col_type missing values   
#>  1   agegp    Age group                     fct      0       25-34    
#>                                                              35-44    
#>                                                              45-54    
#>                                                              55-64    
#>                                                              65-74    
#>                                                              75+      
#>  2   alcgp    Alcohol consumption           fct      0       0-39g/day
#>                                                              40-79    
#>                                                              80-119   
#>                                                              120+     
#>  3   tobgp    Tobacco consumption           fct      0       0-9g/day 
#>                                                              10-19    
#>                                                              20-29    
#>                                                              30+      
#>  4   Group    Developing oesophageal cancer fct      0       Control  
#>                                                              Case

Analyse the data using logistic regression as before and plot the result.

# conduct the logistic regression
lr <- glm(
  data = df,
  family = 'binomial',
  formula = Group ~ agegp + alcgp + tobgp
)

# plot the odds ratio plot using variable labels
plot_or(lr)

plot_or recognises the use of labels and uses these in preference to variable names wherever available.

Using variable labels makes plots easier to read and more accessible, and is especially useful where you want to include the chart in reports or publications.