The “Frame
and Origin” tab in Prism allows you to change the appearance of the
graph’s axes. Some of these options have been implemented in
ggprism
as axis guides. This vignette will go through how
to use the 4 axis guides included in this package.
Adding minor ticks to graphs is very simple. There are two mains
ways, using the continuous scale functions such as
scale_x_continuous()
or using the guides()
function, both from ggplot2
. Note that
guide_prism_minor()
does not work with discrete
axes as they do not have minor breaks.
# Compare methods for adding minor ticks
p <- ggplot(ToothGrowth, aes(x = factor(supp), y = len)) +
geom_boxplot(aes(fill = factor(supp))) +
theme_prism() +
theme(legend.position = "none")
p1 <- p + scale_y_continuous(guide = guide_prism_minor())
p2 <- p + guides(y = guide_prism_minor())
p1 + p2
#> Warning: The S3 guide system was deprecated in ggplot2 3.5.0.
#> ℹ It has been replaced by a ggproto system that can be extended.
#> This warning is displayed once every 8 hours.
#> Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
#> generated.
Note that if you are happy with the defaults you can refer to the axis guide as a string instead of calling the function.
# refer to guide as string
p <- ggplot(ToothGrowth, aes(x = factor(supp), y = len)) +
geom_boxplot(aes(fill = factor(supp))) +
theme_prism() +
theme(legend.position = "none")
p1 <- p + scale_y_continuous(guide = "prism_minor")
p2 <- p + guides(y = "prism_minor")
p1 + p2
To adjust the number of minor ticks, you just change the number of
minor breaks using the minor_breaks
argument of the
continuous scale functions. The vector you give the
minor_breaks
argument will define the position of each
minor tick.
# compare 1 minor ticks (default) vs 4 minor ticks per major tick
p <- ggplot(ToothGrowth, aes(x = factor(dose), y = len)) +
stat_summary(aes(fill = factor(dose)), na.rm = TRUE,
geom = "col", fun = mean, colour = "black", linewidth = 0.9) +
theme_prism() +
theme(legend.position = "none")
p1 <- p + scale_y_continuous(guide = "prism_minor",
limits = c(0, 30),
expand = c(0, 0))
p2 <- p + scale_y_continuous(guide = "prism_minor",
limits = c(0, 30),
expand = c(0, 0),
minor_breaks = seq(0, 30, 2))
p1 + p2
To get log10 minor ticks, just use a log10 scale and then modify the
n minor_breaks
argument as above. Remember the vector you
give the minor_breaks
argument will define the position of
each minor tick.
p <- ggplot(msleep, aes(bodywt, brainwt)) +
geom_point(na.rm = TRUE) +
theme_prism()
p1 <- p + scale_x_log10(limits = c(1e0, 1e4),
guide = "prism_minor")
p2 <- p + scale_x_log10(limits = c(1e0, 1e4),
minor_breaks = rep(1:9, 4)*(10^rep(0:3, each = 9)),
guide = "prism_minor")
p1 + p2
You can use the theme()
function with the
prism.ticks.length
argument to change the length of the
minor ticks. This works in the same way as the
axis.ticks.length
argument to change the length of major
ticks.
# change minor tick length
p <- ggplot(ToothGrowth, aes(x = factor(dose), y = len)) +
stat_summary(aes(fill = factor(dose)), na.rm = TRUE,
geom = "col", fun = mean, colour = "black", linewidth = 0.9) +
theme_prism() +
scale_y_continuous(guide = "prism_minor",
limits = c(0, 30),
expand = c(0, 0),
minor_breaks = seq(0, 30, 2))
p1 <- p + theme(legend.position = "none")
p2 <- p + theme(legend.position = "none",
prism.ticks.length.y = unit(20, "pt"))
p1 + p2
You can change the direction of minor ticks just by making their length negative.
# change minor tick length
p <- ggplot(ToothGrowth, aes(x = factor(dose), y = len)) +
stat_summary(aes(fill = factor(dose)), na.rm = TRUE,
geom = "col", fun = mean, colour = "black", linewidth = 0.9) +
theme_prism() +
scale_y_continuous(guide = "prism_minor",
limits = c(0, 30),
expand = c(0, 0),
minor_breaks = seq(0, 30, 2))
p1 <- p + theme(legend.position = "none",
prism.ticks.length.y = unit(20, "pt"))
p2 <- p + theme(legend.position = "none",
prism.ticks.length.y = unit(-20, "pt"))
p1 + p2
The colour (and other aesthetic attributes) of minor ticks will
change when you change the colour of major ticks using the
axis.ticks
argument of the theme()
function.
# change how ticks look
p <- ggplot(ToothGrowth, aes(x = factor(dose), y = len)) +
stat_summary(aes(fill = factor(dose)), na.rm = TRUE,
geom = "col", fun = mean, colour = "black", linewidth = 0.9) +
theme_prism() +
scale_y_continuous(guide = "prism_minor",
limits = c(0, 30),
expand = c(0, 0),
minor_breaks = seq(0, 30, 2))
p1 <- p + theme(legend.position = "none")
p2 <- p + theme(legend.position = "none",
axis.ticks.y = element_line(colour = "blue",
linewidth = 2,
lineend = "round"))
p1 + p2
One popular axis option in Prism is the offset axis. This has been
implemented in ggprism
as the
guide_prism_offset()
function. This function works by only
drawing the axis line to the outer most tick mark (either major or minor
tick). Technically, it works with both continuous and discrete scales,
but it should probably only be used with continuous scales.
If you want an offset axis with minor ticks, see the
guide_prism_offset_minor()
function below.
# show that offset axis looks better when you specify the axis limits
p <- ggplot(ToothGrowth, aes(x = factor(supp), y = len)) +
geom_boxplot(aes(fill = factor(supp))) +
theme_prism() +
theme(legend.position = "none")
p1 <- p + scale_y_continuous(guide = "prism_offset")
p2 <- p + scale_y_continuous(limits = c(0, 40), guide = "prism_offset")
p1 + p2
As with a normal ggplot, you can adjust the appearance of the offset
axis line with the theme()
function and the
axis.line
argument.
# change appearance of offset axis
p <- ggplot(ToothGrowth, aes(x = factor(supp), y = len)) +
geom_boxplot(aes(fill = factor(supp))) +
theme_prism() +
scale_y_continuous(limits = c(0, 40), guide = "prism_offset")
p1 <- p + theme(legend.position = "none")
p2 <- p + theme(legend.position = "none",
axis.line.y = element_line(colour = "blue",
linewidth = 2,
lineend = "round"))
p1 + p2
The guide_prism_offset_minor()
function is similar to
guide_prism_minor()
except the axis line is offset.
# compare prism_minor with prism_offset_minor
p <- ggplot(ToothGrowth, aes(x = factor(supp), y = len)) +
geom_boxplot(aes(fill = factor(supp))) +
theme_prism() +
theme(legend.position = "none")
p1 <- p + scale_y_continuous(guide = "prism_offset")
p2 <- p + scale_y_continuous(guide = "prism_offset_minor")
p1 + p2
As with guide_prism_offset()
, the axis tends to look
better if you explicitly set the axis limits.
p <- ggplot(ToothGrowth, aes(x = factor(supp), y = len)) +
geom_boxplot(aes(fill = factor(supp))) +
theme_prism() +
theme(legend.position = "none")
p1 <- p + scale_y_continuous(guide = "prism_offset_minor")
p2 <- p + scale_y_continuous(limits = c(0, 40),
guide = "prism_offset_minor")
p1 + p2
As with guide_prism_minor()
you can change the number of
minor ticks by adjusting the minor_breaks
.
# compare 1 minor tick to 4 minor ticks per major
p <- ggplot(ToothGrowth, aes(x = factor(supp), y = len)) +
geom_boxplot(aes(fill = factor(supp))) +
theme_prism() +
theme(legend.position = "none")
p1 <- p + scale_y_continuous(limits = c(0, 40),
guide = "prism_offset_minor")
p2 <- p + scale_y_continuous(limits = c(0, 40),
minor_breaks = seq(0, 40, 2),
guide = "prism_offset_minor")
p1 + p2
And as with guide_prism_minor()
you can change the
length of minor ticks by adjusting the prism_ticks_length
argument of the theme()
function.
# change minor tick length and direction
p <- ggplot(ToothGrowth, aes(x = factor(supp), y = len)) +
geom_boxplot(aes(fill = factor(supp))) +
theme_prism() +
scale_y_continuous(limits = c(0, 40),
minor_breaks = seq(0, 40, 2),
guide = "prism_offset_minor")
p1 <- p + theme(legend.position = "none",
prism.ticks.length.y = unit(20, "pt"))
p2 <- p + theme(legend.position = "none",
prism.ticks.length.y = unit(-20, "pt"))
p1 + p2
Lastly, the colour (and other aesthetic attributes) of minor ticks
will change when you change the colour of major ticks using the
axis.ticks
argument of the theme()
function.
# change minor tick colour, thickness, and lineend
p <- ggplot(ToothGrowth, aes(x = factor(supp), y = len)) +
geom_boxplot(aes(fill = factor(supp))) +
theme_prism() +
scale_y_continuous(limits = c(0, 40),
minor_breaks = seq(0, 40, 2),
guide = "prism_offset_minor")
p1 <- p + theme(legend.position = "none",
prism.ticks.length.y = unit(20, "pt"))
p2 <- p + theme(legend.position = "none",
prism.ticks.length.y = unit(20, "pt"),
axis.ticks.y = element_line(colour = "blue",
linewidth = 2,
lineend = "round"))
p1 + p2
Brackets are not an axis option in GraphPad Prism. Rather the idea
comes from the lemon
package functions brackets_horisontal()
and
brackets_vertical()
. I wanted brackets for my graphs,
therefore they have been re-implemented in ggprism
as the
guide_prism_brackets()
axis guide.
This axis guide works best with discrete axes.
# show bracket axis guide
p1 <- ggplot(ToothGrowth, aes(x = factor(dose), y = len)) +
geom_jitter(aes(shape = factor(dose)), width = 0.2, size = 2) +
scale_shape_prism() +
theme_prism() +
theme(legend.position = "none") +
scale_y_continuous(limits = c(0, 40), guide = "prism_offset")
p2 <- p1 + scale_x_discrete(guide = "prism_bracket")
p1 + p2
The guide works fine with flipped plots.
# show bracket axis guide with flipped plot
p1 <- ggplot(ToothGrowth, aes(x = factor(dose), y = len)) +
geom_jitter(aes(shape = factor(dose)), width = 0.2, size = 2) +
scale_shape_prism() +
theme_prism() +
theme(legend.position = "none") +
scale_y_continuous(limits = c(0, 40), guide = "prism_offset") +
scale_x_discrete(guide = "prism_bracket")
p2 <- p1 + coord_flip()
p1 + p2
By default, the function tries to guess how wide the brackets should
be. However you can control the bracket width with the
width
argument. Try numbers between 0 and 1. In this
example we make the width of geom_jitter()
and the width of
guide_prism_bracket()
both 0.2 which seems to work
well.
# control bracket width
p <- ggplot(ToothGrowth, aes(x = factor(dose), y = len)) +
geom_jitter(aes(shape = factor(dose)), width = 0.2, size = 2) +
scale_shape_prism() +
theme_prism() +
theme(legend.position = "none") +
scale_y_continuous(limits = c(0, 40), guide = "prism_offset")
p1 <- p + scale_x_discrete(guide = "prism_bracket")
p2 <- p + scale_x_discrete(guide = guide_prism_bracket(width = 0.2))
p1 + p2
You can change the bracket direction with the outside
argument. By default, outside = TRUE
which means the
brackets point outward.
# compare brackets outside or inside
p <- ggplot(ToothGrowth, aes(x = factor(dose), y = len)) +
geom_jitter(aes(shape = factor(dose)), width = 0.2, size = 2) +
scale_shape_prism() +
theme_prism() +
theme(legend.position = "none") +
scale_y_continuous(limits = c(0, 40), guide = "prism_offset")
p1 <- p + scale_x_discrete(guide = "prism_bracket")
p2 <- p + scale_x_discrete(guide = guide_prism_bracket(outside = FALSE))
p1 + p2
Making the brackets point inside makes the space between the axis
text and the brackets smaller. You can increase this distance again by
changing the margin of the relevent axis.text
element.
# adjust text spacing with inside pointing brackets
p <- ggplot(ToothGrowth, aes(x = factor(dose), y = len)) +
geom_jitter(aes(shape = factor(dose)), width = 0.2, size = 2) +
scale_shape_prism() +
theme_prism() +
scale_y_continuous(limits = c(0, 40), guide = "prism_offset") +
scale_x_discrete(guide = guide_prism_bracket(outside = FALSE))
p1 <- p + theme(legend.position = "none")
p2 <- p + theme(legend.position = "none",
axis.text.x = element_text(margin = margin(t = 10)))
p1 + p2
Say you want a graph, with a border, and with minor ticks. There are a couple of ways one might do this, one of which is outlined here. The other way involved messing around with secondary axes and is buggy so we’ll ignore it for now.
First we define a base plot.
# define a base plot
base <- ggplot(mpg, aes(x = displ, y = cty)) +
geom_point(aes(colour = class))
base
Then we’ll apply theme_prism()
with a border, move the
legend into the plotting area, and turn clipping off so the border
thickness is accurate.
# apply theme_prism and turn clipping off for the border
p <- base + theme_prism(border = TRUE) +
guides(colour = guide_legend(position = "inside")) +
theme(legend.position.inside = c(0.8, 0.75)) +
coord_cartesian(clip = "off")
p
Now we’ll add minor ticks to both primary axes.
One way to add minor ticks all around the border is to use the
annotation_ticks()
function in ggprism
. This
is the way I would recommend to avoid the issues that arise using
secondary axes.
Here we add ticks as a plot annotation (i.e. not a proper axis) with the following arguments:
"minor"
or "major"
)# add tick annotations
p_annot <- p + annotation_ticks(sides = "tr", type = "both", linewidth = 1,
outside = TRUE,
tick.length = unit(14/2, "pt"),
minor.length = unit(14/4, "pt"))
p_annot
You can adjust the number of minor ticks using the continuous scale functions as before.
Generally using discontinuous axes is discouraged. However as it is
an option in GraphPad Prism, an example of how to do this with
ggprism
is given below.
First we’ll take the ToothGrowth
data set and change a
value in the len
column to be an obvious outlier.
Next we’ll see what a plot without a discontinuous axis would look
like. The majority of the data has been compressed near the bottom of
the plot in an attempt to fit the outlier point. In this situation one
might want to use a discontinuous axis (although honestly it is probably
better to add an inset plot using the patchwork
package).
ggplot(tg, aes(x = factor(dose), y = len)) +
geom_jitter(aes(shape = factor(dose)), width = 0.2, size = 2) +
scale_shape_prism() +
theme_prism() +
theme(legend.position = "none")
We’ll use the patchwork
package to create our
discontinuous axis plot. Indeed, we will be making two plots (one zoomed
in on the main data and the other zoomed in on the outlier), using a
slightly different theme for each plot, and then combining them.
First we’ll make a plot zoomed in on the main data. It is important
to use coord_cartesian()
to change the axis limits instead
of scale_y_continuous()
as coord_cartesian()
does not exclude any data, unlike scale_y_continuous()
.
p_bottom <- ggplot(tg, aes(x = factor(dose), y = len)) +
geom_jitter(aes(shape = factor(dose)), width = 0.2, size = 2) +
scale_shape_prism() +
coord_cartesian(ylim = c(0, 60)) +
guides(x = "prism_bracket", y = "prism_offset_minor") +
theme_prism() +
theme(legend.position = "none")
p_bottom
Next we’ll make a plot zoomed in on the outlier, and we’ll make a new
theme for the top plot specifically, called
theme_outlier()
.
p_top <- ggplot(tg, aes(x = factor(dose), y = len)) +
geom_jitter(aes(shape = factor(dose)), width = 0.2, size = 2) +
scale_shape_prism() +
coord_cartesian(ylim = c(1140, 1160)) +
scale_y_continuous(breaks = c(1140, 1160)) +
guides(y = "prism_offset_minor")
theme_outlier <- function(palette = "black_and_white",
base_size = 14,
base_family = "sans",
base_fontface = "bold",
base_line_size = base_size/14,
base_rect_size = base_size/14,
axis_text_angle = 0,
border = FALSE) {
theme_prism(palette = palette,
base_size = base_size,
base_family = base_family,
base_fontface = base_fontface,
base_line_size = base_line_size,
base_rect_size = base_rect_size,
axis_text_angle = axis_text_angle,
border = border) %+replace%
theme(axis.title = element_blank(),
axis.text.x = element_blank(),
axis.ticks.x = element_blank(),
axis.line.x = element_blank(),
legend.position = "none")
}
p_top <- p_top + theme_outlier()
p_top
Now we’ll combine the two plots with patchwork
. We can
easily change theme elements of both plots using
& theme()
.