# Extract survival probabilities in Survfit by groups

I am new to survival analysis and survfit in R. I want to extract survival probabilities for 4 groups (diseases) at specified time periods (0,10,20,30 years since diagnosis) in a table. Here is the setup:

``````fit <- survfit((time=time,event=death)~group)

surv.prob <- summary(fit,time=c(0,10,20,30))\$surv
``````

`surv.prob` contains 16 probabilities, that is, survival probabilities for 4 groups estimated at 4 different time periods listed above. I want to create a table like this:

``````Group  time.period  prob

1       0        0.9

1       10       0.8

1       20       0.7

1       30       0.6
``````

and so on for all 4 groups.

Any suggestions on how a table like this can be easily created? I will be putting this command in loop to estimate results using different combinations of covariates. I looked at \$table in survfit but that seems to only provide events, median etc. Appreciate any help on this.

SK

I can do it fairly easily with package 'rms' which has a `survest` function:

``````install.packages(rms, dependencies=TRUE);require(rms)
cfit <- cph(Surv(time, status) ~ x, data = aml, surv=TRUE)
survest(cfit, newdata=expand.grid(x=levels(aml\$x)) ,
times=seq(0,50,by=10)
)\$surv

0        10        20        30        40         50
1  1 0.8690765 0.7760368 0.6254876 0.4735880 0.21132505
2  1 0.7043047 0.5307801 0.3096943 0.1545671 0.02059005
Warning message:
In survest.cph(cfit, newdata = expand.grid(x = levels(aml\$x)), times = seq(0,  :
S.E. and confidence intervals are approximate except at predictor means.
Use cph(...,x=TRUE,y=TRUE) (and don't use linear.predictors=) for better estimates.
``````

With package survival you can find a worked example on pages 264-265 of Therneau and Grambsch's book, but this would still require code to put out the values at particular times.

`````` fit <- coxph(Surv(time, status) ~ x, data = aml)
temp=data.frame(x=levels(aml\$x))
expfit <- survfit(fit, temp)
plot(expfit, xscale=365.25, ylab="Expected")
`````` ``````> expfit\$surv
1          2
[1,] 0.9508567 0.88171694
[2,] 0.8975825 0.76343993
[3,] 0.8690765 0.70430463
[4,] 0.8405707 0.64800519
[5,] 0.8105393 0.59170883
[6,] 0.8105393 0.59170883
[7,] 0.7760369 0.53078004
[8,] 0.7057873 0.41876588
[9,] 0.6686309 0.36584513
[10,] 0.6686309 0.36584513
[11,] 0.6254878 0.30969426
[12,] 0.5773770 0.25357160
[13,] 0.5292685 0.20403922
[14,] 0.4735881 0.15456706
[15,] 0.4179153 0.11309373
[16,] 0.3484162 0.07179820
[17,] 0.2113251 0.02059003
[18,] 0.2113251 0.02059003

> expfit\$time
   5   8   9  12  13  16  18  23  27  28  30  31  33  34  43
  45  48 161
``````

As noted by @Skaul below: In survival package, the specific times can be inserted as: `summary(expfit,time=c(0,10,20,30))\$surv`

• I am new to stackoverflow. Thank you again. – Skaul Oct 30 '14 at 17:24
• In survival package, the specific times can be inserted as: `summary(expfit,time=c(0,10,20,30))\$surv' – Skaul Oct 30 '14 at 17:27
• Excellent. I had been looking at `?summary.coxph`, `?predict.survfit` and should have been checking `?summary.survfit` – 42- Oct 30 '14 at 17:36
• @Skaul's comment is very useful to me too. Just to make it clearer, the way to get predicted survival probabilities from a `survfit` object at specific times is `summary(survfitObj, times=myTimes)\$surv`. (I had been trying to use `findInterval` etc. but I should have realized that there would be a proper way of doing it in the survival package.) – user1310503 May 31 '16 at 10:09