UPDATE: robvis
now exists as a
web-app, aimed at those who are
not familiar with R or who want to explore the package’s functionality
before installing it locally.
The robvis
(Risk-Of-Bias VISualization) package facilitates the rapid
production of publication-quality risk-of-bias assessment figures,
correctly formatted according to the assessment tool used.
The motivation for this package is more fully described in the (open access) article introducing the tool, available here.
Install the development version which contains new functionality and a range of bug fixes:
install.packages("devtools")
devtools::install_github("mcguinlu/robvis")
To update the package, run the install_github("mcguinlu/robvis")
command again.
If you wish to use the older CRAN version of the package, use the following command:
install.packages("robvis")
To load your own data from a .csv file:
mydata <- read.csv("path/to/mydata.csv", header = TRUE)
To help users explore robvis
, we have included example datasets in the
package, one for each of the tool templates that currently exist within
the package. The data_rob2
dataset (view it
here),
which contains example risk-of-bias assessments performed using the
RoB2.0 tool for randomized controlled trials, is used to create the
plots in subsequent sections.
The package contains two plotting functions:
Returns a ggplot object displaying a bar-chart of the risk of bias of included studies across the domains of the specified tool. [Note: the defaults used in this function have changed from their original settings, so that a un-weighted barplot is now produced by default. See the NEWS.md file for further information.]
summary_rob <- rob_summary(data = data_rob2, tool = "ROB2")
summary_rob
Returns a ggplot object displaying a “traffic light plot”, displaying the risk of bias judgment in each domain for each study.
trafficlight_rob <- rob_traffic_light(data = data_rob2,
tool = "ROB2",
psize = 10)
trafficlight_rob
Pass the robvis
to this function, along with a destination file, to
save your risk-of-bias plots using sensible defaults.
rob_save(trafficlight_rob, "rob_fig.png")
Outputs a list of the risk of bias assessment tools for which a template currently exists in rob_summary(). We expect this list to be updated in the near future to include tools such as ROBIS (tool for assessing risk of bias in systematic reviews).
rob_tools()
#> Note: the "ROB2-Cluster" template is only available for the rob_traffic_light() function.
#> [1] "ROB2" "ROB2-Cluster" "ROBINS-I" "ROBINS-E" "QUADAS-2"
#> [6] "QUIPS" "Generic"
The colour
argument of both plotting functions allows users to select
from two predefined colour schemes (“cochrane” or “colourblind”) or to
define their own palette by providing a vector of hex codes.
For example, to use the predefined “colourblind” palette:
rob_summary(data = data_rob2,
tool = "ROB2",
colour = "colourblind")
And to define your own colour scheme:
rob_summary(
data = data_rob2,
tool = "ROB2",
colour = c("#f442c8",
"#bef441",
"#000000",
"#d16684")
)
By default, both functions include an “Overall” risk of bias domain. To
prevent this, remove the overall column from your dataset and set
overall = FALSE
.
summary_rob <- rob_summary(data = data_rob2[1:6], tool = "ROB2", overall = FALSE)
summary_rob
rob_traffic_light(data = data_rob2[1:6],
tool = "ROB2",
overall = FALSE)
Finally, because the output (summary_rob
and trafficlight_rob
in the
examples above) is a ggplot2 object, it is easy to adjust the plot to
your own preferences.
For example, to add a title:
library(ggplot2)
rob_summary(data = data_rob2, tool = "ROB2") +
ggtitle("Summary of RoB 2.0 assessments")
To date, robvis
has been cited in more than 1500 academic articles -
these can be explored
here.
Please note that the ‘robvis’ project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.
This project is licensed under the MIT License - see the LICENSE.md file for details.
- The
rob_summary()
function was based on code forwarded by a colleague. I recently discovered that this code was adapted from that presented in the wonderful “Doing Meta-Analysis in R” guide, so I would like to acknowledge the authors here. - Emily Kothe for help in fixing
ggplot2
coding issues. - Eliza Grames for creating the
robvis
hex sticker.