If all that you say is true, then this is a typical way of generating a list using indices as arguments:

```
t4list <- lapply(1:11, function(x) summary(survplot[x], times=4)[1] )
t4list
```

If you really meant that you wanted a vector of survival estimates based at that time, then `sapply`

would make an attempt to simply the result to an atomic form such as a numeric vector or a matrix in the case where the results were "multidimensional". I would have thought that you could have gotten a useful result with just:

```
summary(survplot, times=4)[1]
```

That should have succeeded in giving you a vector of predicted survival times (assuming such times exist.) If you get too greedy and push out the 'times' value past where there are estimates, then you will throw an error. Ironically that error will not be thrown if there is at least one time where all levels of the covariates have an estimate. Using the example in the help page as a starting point:

```
fit <- survfit(Surv(time, status) ~ x, data = aml)
summary(fit, times=c(10, 20, 60) )[1]
#$surv
#[1] 0.9090909 0.7159091 0.1840909 0.6666667 0.5833333
# not very informative about which times and covariates were estimated
# and which are missing
# this is more informative
as.data.frame( summary(fit, times=c(10, 20, 60) )[c("surv", "time", "strata")])
surv time strata
1 0.9090909 10 x=Maintained
2 0.7159091 20 x=Maintained
3 0.1840909 60 x=Maintained
4 0.6666667 10 x=Nonmaintained
5 0.5833333 20 x=Nonmaintained
```

Whereas if you just use 60 you get an error message:

```
> summary(fit, times=c( 60) )[1]
Error in factor(rep(1:nstrat, scount), labels = names(fit$strata)) :
invalid labels; length 2 should be 1 or 1
```