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Author: Robin Denz
contsurvplot
is an R-Package which can be used to
visualize the causal effect of a continuous variable on a time-to-event
outcome. It includes multiple different plot types, such as survival
area plots, contour plots, heatmaps, survival quantile plots and more.
All of them can be adjusted for confounders and all of them have a lot
of build in options to customize them according to the users needs.
Also, most of the plot functions are based on the ggplot2
package, allowing the user to use the standard ggplot2
syntax to customize the plots further.
The stable release version can be installed directly from CRAN using:
install.packages("contsurvplot")
Alternatively, the development version can be installed using the
devtools
R-Package:
library(devtools)
::install_github("RobinDenz1/contsurvplot") devtools
or the remotes
R-Package:
library(remotes)
::install_github("RobinDenz1/contsurvplot") remotes
If you encounter any bugs or have any specific feature requests, please file an Issue.
Here are two quick examples using the colon
dataset from
the survival
R-Package. Suppose we want to visualize the
effect of the number of lymph nodes with detectable cancer (column
nodes
) on the survival time. A survival area plot can be
produced using the following code:
library(contsurvplot)
library(ggplot2)
library(survival)
library(riskRegression)
# load colon data
data(cancer)
# fit cox model, adjusting for age and sex
<- coxph(Surv(time, status) ~ age + sex + nodes, data=colon, x=TRUE)
model
# plot survival area
plot_surv_area(time="time",
status="status",
variable="nodes",
data=colon,
model=model)
Alternatively, we can plot a contour plot to visualize the effect:
plot_surv_contour(time="time",
status="status",
variable="nodes",
data=colon,
model=model)
Or we can use a simple plot of the median survival time as a function
of nodes
:
plot_surv_quantiles(time="time",
status="status",
variable="nodes",
data=colon,
model=model,
p=0.5)
More examples can be found in the documentation and the vignette.
The main paper associated with this R-Package is:
Robin Denz, Nina Timmesfeld (2023). Visualizing the (causal) effect of a continuous variable on a time-to-event outcome. Epidemiology. 34.5 doi:10.1097/EDE.0000000000001630
In addition, some relevant literature can be found in the documentation pages.
© 2022 Robin Denz
The contents of this repository are distributed under the GNU General Public License. You can find the full text of this License in this github repository. Alternatively, see http://www.gnu.org/licenses/.
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.