pseudo_stratified {eventglm} | R Documentation |
Compute pseudo observations using stratified jackknife
Description
Assuming that the censoring depends on covariates with a finite set of levels, the pseudo observations are calculated with the jackknife approach stratified on those covariates.
Usage
pseudo_stratified(
formula,
time,
cause = 1,
data,
type = c("cuminc", "survival", "rmean"),
formula.censoring = NULL,
ipcw.method = NULL
)
Arguments
formula |
A formula specifying the model. The left hand side must be a Surv object specifying a right censored survival or competing risks outcome. The status indicator, normally 0=alive, 1=dead. Other choices are TRUE/FALSE (TRUE = death) or 1/2 (2=death). For competing risks, the event variable will be a factor, whose first level is treated as censoring. The right hand side is the usual linear combination of covariates. |
time |
Numeric constant specifying the time at which the cumulative incidence or survival probability effect estimates are desired. |
cause |
Numeric or character constant specifying the cause indicator of interest. |
data |
Data frame in which all variables of formula can be interpreted. |
type |
One of "survival", "cuminc", or "rmean" |
formula.censoring |
A right-sided formula specifying which variables to stratify on. All variables in this formula must be categorical. |
ipcw.method |
Not used with this method |
Value
A vector of jackknife pseudo observations
Examples
POi <- pseudo_stratified(Surv(time, status) ~ 1, 1500, cause = 1,
data = colon, formula.censoring = ~ sex, type = "rmean")
mean(POi)