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Forest plots are commonly used in medical research publications, especially in meta-analysis. It can also be used to report the coefficients and confidence intervals (CIs) of the regression models.
There are lots of packages out there that can be used to draw a forest plot. The most popular one is forestplot. Packages specialized for the meta-analysis, like meta, metafor, and rmeta. Some other packages, like ggforestplot use ggplot2 to draw a forest plot, it is not available on the CRAN yet.
The main differences between the forestploter
from the
other packages are:
The layout of the forest plot is determined by the dataset provided. Please check out the other vignette if you want to change the text or background, add or insert text, add borders to cells, and edit the color of the CI in some cells.
The first step is to prepare a data.frame
to be used as
a basic layout of the forest plot. Column names of the data will be
drawn as the header, and the contents inside the data will be displayed
in the forest plot. One or multiple blank columns without any content
(blanks) should be provided to draw a confidence interval. The
width of the box to draw the CI is determined by the width of this
column. Increase the number of spaces in the column to give more space
to draw CI.
First, we need to get the data ready to plot.
library(grid)
library(forestploter)
# Read provided sample example data
dt <- read.csv(system.file("extdata", "example_data.csv", package = "forestploter"))
# Keep needed columns
dt <- dt[,1:6]
# Indent the subgroup if there is a number in the placebo column
dt$Subgroup <- ifelse(is.na(dt$Placebo),
dt$Subgroup,
paste0(" ", dt$Subgroup))
# NA to blank or NA will be transformed to carachter.
dt$Treatment <- ifelse(is.na(dt$Treatment), "", dt$Treatment)
dt$Placebo <- ifelse(is.na(dt$Placebo), "", dt$Placebo)
dt$se <- (log(dt$hi) - log(dt$est))/1.96
# Add a blank column for the forest plot to display CI.
# Adjust the column width with space, and increase the number of spaces below
# to have a larger area to draw the CI.
dt$` ` <- paste(rep(" ", 20), collapse = " ")
# Create a confidence interval column to display
dt$`HR (95% CI)` <- ifelse(is.na(dt$se), "",
sprintf("%.2f (%.2f to %.2f)",
dt$est, dt$low, dt$hi))
head(dt)
#> Subgroup Treatment Placebo est low hi se
#> 1 All Patients 781 780 1.869694 0.13245636 3.606932 0.3352463
#> 2 Sex NA NA NA NA
#> 3 Male 535 548 1.449472 0.06834426 2.830600 0.3414741
#> 4 Female 246 232 2.275120 0.50768005 4.042560 0.2932884
#> 5 Age NA NA NA NA
#> 6 <65 yr 297 333 1.509242 0.67029394 2.348190 0.2255292
#> HR (95% CI)
#> 1 1.87 (0.13 to 3.61)
#> 2
#> 3 1.45 (0.07 to 2.83)
#> 4 2.28 (0.51 to 4.04)
#> 5
#> 6 1.51 (0.67 to 2.35)
The data we have above will be used as the basic layout of the forest plot. The example below shows how to draw a simple forest plot. A footnote was added as a demonstration.
p <- forest(dt[,c(1:3, 8:9)],
est = dt$est,
lower = dt$low,
upper = dt$hi,
sizes = dt$se,
ci_column = 4,
ref_line = 1,
arrow_lab = c("Placebo Better", "Treatment Better"),
xlim = c(0, 4),
ticks_at = c(0.5, 1, 2, 3),
footnote = "This is the demo data. Please feel free to change\nanything you want.")
# Print plot
plot(p)
Now we will use the same data above, and add a summary point. We also
want to change the graphical parameters for the confidence interval and
other parts of the plot. The theme of the forest plot can be adjusted
with forest_theme
function, check out the manual for more
details.
dt_tmp <- rbind(dt[-1, ], dt[1, ])
dt_tmp[nrow(dt_tmp), 1] <- "Overall"
dt_tmp <- dt_tmp[1:11, ]
# Define theme
tm <- forest_theme(base_size = 10,
# Confidence interval point shape, line type/color/width
ci_pch = 15,
ci_col = "#762a83",
ci_fill = "black",
ci_alpha = 0.8,
ci_lty = 1,
ci_lwd = 1.5,
ci_Theight = 0.2, # Set a T end at the end of CI
# Reference line width/type/color
refline_lwd = gpar(lwd = 1, lty = "dashed", col = "grey20"),
# Vertical line width/type/color
vertline_lwd = 1,
vertline_lty = "dashed",
vertline_col = "grey20",
# Change summary color for filling and borders
summary_fill = "#4575b4",
summary_col = "#4575b4",
# Footnote font size/face/color
footnote_gp = gpar(cex = 0.6, fontface = "italic", col = "blue"))
#> refline_lwd will be deprecated, use refline_gp instead.
#> Warning in numnotnull("lwd"): NAs introduced by coercion
#> Warning in numnotnull("lwd"): NAs introduced by coercion
pt <- forest(dt_tmp[,c(1:3, 8:9)],
est = dt_tmp$est,
lower = dt_tmp$low,
upper = dt_tmp$hi,
sizes = dt_tmp$se,
is_summary = c(rep(FALSE, nrow(dt_tmp)-1), TRUE),
ci_column = 4,
ref_line = 1,
arrow_lab = c("Placebo Better", "Treatment Better"),
xlim = c(0, 4),
ticks_at = c(0.5, 1, 2, 3),
footnote = "This is the demo data. Please feel free to change\nanything you want.",
theme = tm)
# Print plot
plot(pt)
By default, all cells are left aligned. But it is possible to justify
any cells in the forest plot by setting parameters in
forest_theme
. Set
core=list(fg_params=list(hjust=0, x=0))
to left align
content, and rowhead=list(fg_params=list(hjust=0.5, x=0.5)
to center header. Set hjust=1
and x=0.9
to
right align text. You can also change the justification of text
by with edit_plot
, see details in another
vignette.
The same rule applies to change the background color by setting
core=list(bg_params=list(fill = c("#edf8e9", "#c7e9c0", "#a1d99b")))
.
Change settings in core
if you want to change graphical
parameters of contents, colhead
for header. Change settings
in fg_params
to modify the text, see parameters for
textGrob()
in grid
package. Change
bg_params
to modify settings for background graphical
parameters, see gpar()
in grid
package. You
should pass parameters as a list. More details can be found here.
Provide a single value if you want cells to have the same justification or vector for each cell. As you can notice the second example justifies text by row using the provided vector, and the vector will be recycled.
dt <- dt[1:4, ]
# Header center and content right
tm <- forest_theme(core=list(fg_params=list(hjust = 1, x = 0.9),
bg_params=list(fill = c("#edf8e9", "#c7e9c0", "#a1d99b"))),
colhead=list(fg_params=list(hjust=0.5, x=0.5)))
p <- forest(dt[,c(1:3, 8:9)],
est = dt$est,
lower = dt$low,
upper = dt$hi,
sizes = dt$se,
ci_column = 4,
title = "Header center content right",
theme = tm)
# Print plot
plot(p)
# Mixed justification
tm <- forest_theme(core=list(fg_params=list(hjust=c(1, 0, 0, 0.5),
x=c(0.9, 0.1, 0, 0.5)),
bg_params=list(fill = c("#f6eff7", "#d0d1e6", "#a6bddb", "#67a9cf"))),
colhead=list(fg_params=list(hjust=c(1, 0, 0, 0, 0.5),
x=c(0.9, 0.1, 0, 0, 0.5))))
p <- forest(dt[,c(1:3, 8:9)],
est = dt$est,
lower = dt$low,
upper = dt$hi,
sizes = dt$se,
ci_column = 4,
title = "Mixed justification",
theme = tm)
plot(p)
Similar to the text justification, you can parse text in any cells. Parsing all text will remove the blanks in the data, this will also applies to the blank columns to draw the whisker.
# Check out the `plotmath` function for math expression.
dt <- data.frame(
Study = c("Study ~1^a", "Study ~2^b", "NO[2]"),
low = c(0.2, -0.03, 1.11),
est = c(0.71, 0.35, 1.79),
hi = c(1.22, 0.74, 2.47)
)
dt$SMD <- sprintf("%.2f (%.2f, %.2f)", dt$est, dt$low, dt$hi)
dt$` ` <- paste(rep(" ", 20), collapse = " ")
fig_dt <- dt[,c(1,5:6)]
# Get a matrix of which row and columns to parse
parse_mat <- matrix(FALSE,
nrow = nrow(fig_dt),
ncol = ncol(fig_dt))
# Here we want to parse the first column only, you can amend this to whatever you want.
parse_mat[,1] <- TRUE
# Remove this fi you don't want parse the column head.
tm <- forest_theme(colhead=list(fg_params = list(parse=TRUE)),
core=list(fg_params = list(parse=parse_mat)))
p <- forest(fig_dt,
est = dt$est,
lower = dt$low,
upper = dt$hi,
ci_column = 3,
theme = tm)
# Add customised footnote.
# Due to the limitation of the textGrob, passing a parsed text with linebreak
# has some issue. We use different approach here.
txt <- "<sup>a</sup> This is study A<br><sup>b</sup> This is study B"
add_grob(p,
row = 4,
col = 1:2,
order = "background",
gb_fn = gridtext::richtext_grob,
text = txt,
gp = gpar(fontsize = 8),
hjust = 0, vjust = 1, halign = 0, valign = 1,
x = unit(0, "npc"), y = unit(1, "npc"))
Sometimes one may want to have multiple CI columns, each column may
represent a different outcome. If this is the case, one only needs to
provide a vector of the position of the columns to be drawn in the data.
If the number of columns provided to draw the CI columns are same as the
number of est
, one CI will be drawn into each CI column. If
the number of columns provided is less than the number of
est
, the extra est
will be considered as a
group and will be drawn to the CI columns sequentially. In the latter
case, the group number equals to number of est
divided by
the number of ci_column
and multiple columns will be drawn
into one cell. As seen in the example below, the CI will be drawn in
columns 3 and 5. The first and second elements in est
,
lower
, and upper
will be drawn in columns 3
and column 5.
In a multiple groups example, two or more CI in one cell. The
solution is simple, provide all the values sequentially to
est
, lower
, and upper
. This means
that the first n
elements in the est
,
lower
, and upper
are considered as the same
group, same for the next n
elements. The n
is
determined by the number of ci_column
. As it is shown in
the example below, est_gp1
and est_gp2
will be
drawn in column 3 and column 5, considered as group 1.
The est_gp3
and est_gp4
will be drawn in
column 3 and column 5, considered as group 2.
This is an example of multiple CI columns and groups:
dt <- read.csv(system.file("extdata", "example_data.csv", package = "forestploter"))
dt <- dt[1:7, ]
# Indent the subgroup if there is a number in the placebo column
dt$Subgroup <- ifelse(is.na(dt$Placebo),
dt$Subgroup,
paste0(" ", dt$Subgroup))
# NA to blank or NA will be transformed to carachter.
dt$n1 <- ifelse(is.na(dt$Treatment), "", dt$Treatment)
dt$n2 <- ifelse(is.na(dt$Placebo), "", dt$Placebo)
# Add two blank columns for CI
dt$`CVD outcome` <- paste(rep(" ", 20), collapse = " ")
dt$`COPD outcome` <- paste(rep(" ", 20), collapse = " ")
# Generate point estimation and 95% CI. Paste two CIs together and separate by line break.
dt$ci1 <- paste(sprintf("%.1f (%.1f, %.1f)", dt$est_gp1, dt$low_gp1, dt$hi_gp1),
sprintf("%.1f (%.1f, %.1f)", dt$est_gp3, dt$low_gp3, dt$hi_gp3),
sep = "\n")
dt$ci1[grepl("NA", dt$ci1)] <- "" # Any NA to blank
dt$ci2 <- paste(sprintf("%.1f (%.1f, %.1f)", dt$est_gp2, dt$low_gp2, dt$hi_gp2),
sprintf("%.1f (%.1f, %.1f)", dt$est_gp4, dt$low_gp4, dt$hi_gp4),
sep = "\n")
dt$ci2[grepl("NA", dt$ci2)] <- ""
# Set-up theme
tm <- forest_theme(base_size = 10,
refline_lty = "solid",
ci_pch = c(15, 18),
ci_col = c("#377eb8", "#4daf4a"),
footnote_gp = gpar(col = "blue"),
legend_name = "Group",
legend_value = c("Trt 1", "Trt 2"),
vertline_lty = c("dashed", "dotted"),
vertline_col = c("#d6604d", "#bababa"),
# Table cell padding, width 4 and heights 3
core = list(padding = unit(c(4, 3), "mm")))
#> refline_lty will be deprecated, use refline_gp instead.
p <- forest(dt[,c(1, 19, 23, 21, 20, 24, 22)],
est = list(dt$est_gp1,
dt$est_gp2,
dt$est_gp3,
dt$est_gp4),
lower = list(dt$low_gp1,
dt$low_gp2,
dt$low_gp3,
dt$low_gp4),
upper = list(dt$hi_gp1,
dt$hi_gp2,
dt$hi_gp3,
dt$hi_gp4),
ci_column = c(4, 7),
ref_line = 1,
vert_line = c(0.5, 2),
nudge_y = 0.4,
theme = tm)
plot(p)
It is obvious that the forest
uses whatever you provided as
the skeleton of the forest plot. You can use your imagination and put
whatever you want in a cell, including linebreaks. Please check out the
other vignette to modify the alignment of the text.
If the desired forest plot is multiple columns, some may want to have
different settings for different columns. For example, different CI
column has different xlim
, x-axis ticks, x-axis labels,
x_trans, reference line, vertical line, or arrow labels. This can be
easily done by providing a list or vector. Provide a list for
xlim
, vert_line
, arrow_lab
, and
ticks_at
, atomic vector for xlab
,
x_trans
and ref_line
. See the example
below.
dt$`HR (95% CI)` <- ifelse(is.na(dt$est_gp1), "",
sprintf("%.2f (%.2f to %.2f)",
dt$est_gp1, dt$low_gp1, dt$hi_gp1))
dt$`Beta (95% CI)` <- ifelse(is.na(dt$est_gp2), "",
sprintf("%.2f (%.2f to %.2f)",
dt$est_gp2, dt$low_gp2, dt$hi_gp2))
tm <- forest_theme(arrow_type = "closed",
arrow_label_just = "end")
p <- forest(dt[,c(1, 21, 23, 22, 24)],
est = list(dt$est_gp1,
dt$est_gp2),
lower = list(dt$low_gp1,
dt$low_gp2),
upper = list(dt$hi_gp1,
dt$hi_gp2),
ci_column = c(2, 4),
ref_line = c(1, 0),
vert_line = list(c(0.3, 1.4), c(0.6, 2)),
x_trans = c("log", "none"),
arrow_lab = list(c("L1", "R1"), c("L2", "R2")),
xlim = list(c(0, 3), c(-1, 3)),
ticks_at = list(c(0.1, 0.5, 1, 2.5), c(-1, 0, 2)),
xlab = c("OR", "Beta"),
nudge_y = 0.2,
theme = tm)
plot(p)
It is possible to pass a custom CI drawing function to
forest
. The fn_ci
accepts the CI drawing
function for normal confidence interval and fn_summary
for
summary CI. Other parameters for those functions can be passed via
forest
. If you need to row values as est
and
lower
to those functions, you need to define the name of
the parameters you have passed via index_args
. This is an
advanced technique and not the purpose of this vignette is to show how
to create a function to draw CI, but you can find some tutorial here
if you are interested. Below is an example of the usage for a box plot
CI with the built-in make_boxplot
function.
# Function to calculate Box plot values
box_func <- function(x){
iqr <- IQR(x)
q3 <- quantile(x, probs = c(0.25, 0.5, 0.75), names = FALSE)
c("min" = q3[1] - 1.5*iqr, "q1" = q3[1], "med" = q3[2],
"q3" = q3[3], "max" = q3[3] + 1.5*iqr)
}
# Prepare data
val <- split(ToothGrowth$len, list(ToothGrowth$supp, ToothGrowth$dose))
val <- lapply(val, box_func)
dat <- do.call(rbind, val)
dat <- data.frame(Dose = row.names(dat),
dat, row.names = NULL)
dat$Box <- paste(rep(" ", 20), collapse = " ")
# Draw a single group box plot
tm <- forest_theme(ci_Theight = 0.2)
p <- forest(dat[,c(1, 7)],
est = dat$med,
lower = dat$min,
upper = dat$max,
# sizes = sizes,
fn_ci = make_boxplot,
ci_column = 2,
lowhinge = dat$q1,
uphinge = dat$q3,
hinge_height = 0.2,
# values of the lowhinge and uphinge will be used as row values
index_args = c("lowhinge", "uphinge"),
gp_box = gpar(fill = "black", alpha = 0.4),
theme = tm
)
p
One can use the base method or use ggsave
function to
save the plot. For the ggsave
function, please don’t ignore
the plot
parameter. The width and height should be tuned to
get the desired plot. You can also set autofit=TRUE
in the
print
or plot
function to auto-fit the plot,
but this may change and not be as compact as it should be.
# Base method
png('rplot.png', res = 300, width = 7.5, height = 7.5, units = "in")
p
dev.off()
# ggsave function
ggplot2::ggsave(filename = "rplot.png", plot = p,
dpi = 300,
width = 7.5, height = 7.5, units = "in")
Or you can get the width and height of the forestplot with
get_wh
, and use this width and height for saving.
# Get width and height
p_wh <- get_wh(plot = p, unit = "in")
png('rplot.png', res = 300, width = p_wh[1], height = p_wh[2], units = "in")
p
dev.off()
# Or get scale
get_scale <- function(plot,
width_wanted,
height_wanted,
unit = "in"){
h <- convertHeight(sum(plot$heights), unit, TRUE)
w <- convertWidth(sum(plot$widths), unit, TRUE)
max(c(w/width_wanted, h/height_wanted))
}
p_sc <- get_scale(plot = p, width_wanted = 6, height_wanted = 4, unit = "in")
ggplot2::ggsave(filename = "rplot.png",
plot = p,
dpi = 300,
width = 6,
height = 4,
units = "in",
scale = p_sc)
Q: The whisker/CI plot area is too narrow, please help!
A: I have to admit that the vignettes were not well written, but you should be able to get the idea if you look at the vignette carefully and check the examples. Increase the widths by having more blank space in the column where the CI is to be drawn. Please check out the first example for how to do this.
Q: Can I modify the width and height of each row and column?
A: Yes, although the content of the data decides the
heights and widths of the rows and columns, you can also modify these
after you have finished plotting. See this
here for details. You can also use
core = list(padding = unit(c(4, 3), "mm"))
in the
forest_theme
to add some padding to the width and height of
each cell.
Q: How should I use weight for sizes?
A: The forest
function will not
transform the size thus it will be used as it is. If you want to weigh
the size on your own, check here
for some options
Q: How can I plot grouped forestplot?
A: You can leave a few blank lines to indicate the
group break. You can also use arrangeGrob
from
gridExtra
package or wrap_elements
from
patchwork
to combine two or more forestplot.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.