The muhaz package estimates the hazard function from right censored data using kernel smoothing methods. My question is, is there any way to obtain confidence intervals for the hazard function that muhaz calculates?
options(scipen=999)
library(muhaz)
data(ovarian, package="survival")
attach(ovarian)
fit1 <- muhaz(futime, fustat)
plot(fit1, lwd=3, ylim=c(0,0.002))

In the above example the muhaz.object fit has some entries fit1$msemin, fit1$var.min, fit1$haz.est however their length is half of the fit1$haz.est.
Any ideas if it is possible to extract confidence intervals for the hazard function?
EDIT: I tried the following based with what @user20650 suggested
options(scipen=999)
library(muhaz)
data(ovarian, package="survival")
fit1 <- muhaz(ovarian$futime, ovarian$fustat,min.time=0, max.time=744)
h.df<-data.frame(est=fit1$est.grid, h.orig=fit1$haz.est)
for (i in 1:10000){
d.s.onarian<-ovarian[sample(1:nrow(ovarian), nrow(ovarian), replace = T),]
d.s.muhaz<-muhaz(d.s.onarian$futime, d.s.onarian$fustat, min.time=0, max.time=744 )
h.df<-cbind(h.df, d.s.muhaz$haz.est)
}
h.df$upper.ci<-apply(h.df[,c(-1,-2)], 1, FUN=function(x) quantile(x, probs = 0.975))
h.df$lower.ci<-apply(h.df[,c(-1,-2)], 1, FUN=function(x) quantile(x, probs = 0.025))
plot(h.df$est, h.df$h.orig, type="l", ylim=c(0,0.003), lwd=3)
lines(h.df$est, h.df$upper.ci, lty=3, lwd=3)
lines(h.df$est, h.df$lower.ci, lty=3, lwd=3)
Setting max.time seems to works, every bootstrap sample hast the same estimating grid points. However the CI obtained, make little sense. Normally I would expect that the intervals are narrow at t=0 and get wider with time (less information, more uncertainty) but the intervals obtained seem to be more or less constant with time.
