The simIC
package provides tools for simulating and
analyzing interval-censored survival data, including
left-, right-, and uncensored observations, using a variety of
parametric distributions. It is useful for teaching, model development,
and method evaluation in survival analysis.
Supports commonly used parametric distributions:
Simulates survival data with interval,
left, right, and
uncensored observations using user-defined visit
schedules (start_time
, end_time
) and an
optional tolerance (uncensored_tol
) for detecting exact
event times.
Provides two estimation functions:
mle_int()
F(Ri) - F(Li)
F(Ri)
1 - F(Li)
f(ti)
mle_imp()
(Li, Ri)
using midpoint, random, medians, or survival-based
methodsF(Ri)
1 - F(Li)
f(ti)
You can install the development version of simIC
from
GitHub:
```r install.packages(“remotes”) remotes::install_github(“jayarasan/simIC”) library(simIC)
🧪 Simulate Survival Data # Interval-censored data only (no visit window) data <- simIC(n = 100, dist = “weibull”, shape = 1.5, scale = 5, width = 2)
data <- simIC(n = 100, dist = “weibull”, shape = 1.5, scale = 5, width = 2, start_time = 0, end_time = 10, uncensored_tol = 0.1)
📈 Model Fitting Examples
fit_int <- mle_int(data\(left, data\)right, dist = “weibull”) print(fit_int$estimates)
fit_imp <- mle_imp(data\(left, data\)right, dist = “weibull”, impute = “midpoint”) print(fit_imp$estimates)