I'm trying to create an actuarial survival analysis in R (I'm following some worked examples). I think the best way to do this is using the `survival`

package. So something like:

```
library(survival)
surv.test <- survfit(Surv(TIME,STATUS), data=test)
```

However, to get the correct answer I will need to divide the `TIME`

variable into 365 day intervals and I can't quite work out how to do this so it matches the given result.

As far as I can make out, there is no option within the `survfit`

function that will do this. I went through several document examples and none of them were trying to create a stairstep type of plot (there is a `type='interval'`

option, but seems to do something different). So I guess I need to regroup my data before I apply the `survival`

function?

Any ideas?

P.S: In SPSS this would be `INTERVAL = THRU 10000 BY 365`

; in Stata `intervals(365) ... connect(stairsteps)`

`TIME`

variable into intervals? Are you trying to plot the Kaplan-Meier curve (sometimes called a stairstep plot)? Or are you trying to add time-varying covariates to your model? It makes a big difference. – nograpes Aug 9 '12 at 17:19