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The easysurv
R package provides tools to simplify
survival data analysis and model fitting.
This includes tools to inspect survival data, plot Kaplan-Meier curves, assess the proportional hazards assumption, fit parametric survival models, predict and plot survival and hazards, and export the outputs to Excel.
For fitting survival models, the package provides a simple interface
to flexsurv::flexsurvreg()
,
flexsurv::flexsurvspline()
,
flexsurvcure::flexsurvcure()
, and
survival::survreg()
.
By default, the package uses the flexsurv
engine
(flexsurv::flexsurvreg()
) and provides a helpful starting
point to explore survival extrapolations across frequently used
distributions (such as exponential, generalized gamma, gamma, Gompertz,
log-logistic, log-normal and Weibull).
If you haven’t already, install R and consider using RStudio as your integrated development environment (IDE).
# You will need to have the pak package installed.
install.packages("pak")
# Then, install easysurv either from GitHub for the latest version:
::pkg_install("Maple-Health-Group/easysurv")
pak
# Or from CRAN for the latest stable version:
::pkg_install("easysurv") pak
# Attach the easysurv library
library(easysurv)
# Open an example script
quick_start()
## Note: The default file name is "easysurv_start.R", but you can define your own, e.g.
## quick_start("my_file_name.R")
# Access help files
help(package = "easysurv")
# Load the easy_lung data from the easysurv package
# Recode the "status" variable to create an event indicator (0/1)
<- easy_lung |>
surv_data ::mutate(
dplyrtime = time,
event = status - 1,
group = sex,
.after = time
|>
) ::select(-c(inst, ph.karno, pat.karno)) # remove some unused columns
dplyr
# Make the group variable a factor and assign level labels.
<- surv_data |>
surv_data ::mutate_at("group", as.factor)
dplyrlevels(surv_data$group) <- c("Male", "Female")
inspect_surv_data()
inspect_surv_data(
data = surv_data,
time = "time",
event = "event",
group = "group"
)
get_km()
<- get_km(
km_check data = surv_data,
time = "time",
event = "event",
group = "group"
)
print(km_check)
test_ph()
<- test_ph(
ph_check data = surv_data,
time = "time",
event = "event",
group = "group"
)
print(ph_check)
fit_models()
<- fit_models(
separate_models data = surv_data,
time = "time",
event = "event",
predict_by = "group"
)
print(separate_models)
predict_and_plot()
<- predict_and_plot(fit_models = separate_models)
plots
print(plots)
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.