Simulate Survival Data from a Log-Logistic Proportional Hazard Model
SimSurvivalLogLogistic.Rd
Simulate Survival Data from a Log-Logistic Proportional Hazard Model
Usage
SimSurvivalLogLogistic(
a,
b,
time_max = 2000,
time_step = 1,
lambda_censor = 1/3000,
beta_cont = 0.2,
beta_cat = c(A = 0, B = -0.4, C = 0.2)
)
Arguments
- a
(
number
)
the scale parameter.- b
(
number
)
the shape parameter.- time_max
(
number
)
the maximum time to simulate to.- time_step
(
number
)
the time interval between evaluating the log-hazard function.- lambda_censor
(
number
)
the censoring rate.- beta_cont
(
number
)
the continuous covariate coefficient.- beta_cat
(
numeric
)
the categorical covariate coefficients.
Hazard Evaluation
Event times are simulated by sampling a cumulative hazard limit from a \(U(0, 1)\) distribution
for
each subject and then counting how much hazard they've been exposed to by evaluating the
log-hazard function at a set interval. The time_max
argument sets the upper bound for the
number of time points to evaluate the log-hazard function at with subjects who have not had an
event being censored at time_max
. The time_step
argument sets the interval at which to
evaluate the log-hazard function. Setting smaller values for time_step
will increase the
precision of the simulation at the cost of increased computation time. Likewise, setting large
values for time_max
will minimize the number of censored subjects at the cost of
increased computation time.
See also
Other SimSurvival:
SimSurvival-class
,
SimSurvivalExponential()
,
SimSurvivalWeibullPH()