# Kaplan-Meier including survival and transplant data

What I have is a Kaplan-Meier Analysis of patients with mechanical heart support using R.

What I need is adding the following data into the plot (like in the example):

• patients who survived due to a heart transplantation (HTX)
• patients who died

In other words, there are two groups where one is a subset (transplanted patients) of the other (all patients). These two curves must start at 0/0 and will increase.

My own plot is done by:

``````pump <- read.table(file=datafile, header=FALSE,
col.names=c('TIME', 'CENSUS', 'DEVICE'))
# convert days to months
pump\$TIME <- pump\$TIME/(730/24)
mfit.overall <- survfit(Surv(TIME, CENSUS==0) ~ 1, data=pump)
plot(mfit.overall, xlab="months on device", ylab="cum. survival", xaxt="n")
axis(1, at=seq(from=0, to=24, by=6), las=0)
``````

Kind Regards Johann

Sample Kaplan Meier Curve: http://i.stack.imgur.com/158e8.jpg

Demo Data:

Survival Data, which goes into pump:

``````TIME    CENSUS  DEVICE
426     1       1
349     1       1
558     1       1
402     1       1
12      0       1
84      0       1
308     1       1
174     1       1
315     1       1
734     1       1
544     1       2
1433    1       2
1422    1       2
262     1       2
318     1       2
288     1       2
1000    1       2
``````

TX data:

``````TIME    CENSUS  DEVICE
426     1        1
288     1        2
308     1        1
``````

deaths:

``````TIME    CENSUS  DEVICE
12      0        1
84      0        1
``````
• Can you provide the data you use for the plot or dummy data on the same form, in case you cannot share the actual data? – Backlin Nov 13 '12 at 10:49
• To be honest, even though `par(new=TRUE)` is a useful hack, I think @Gavin has the better answer. If I had known about it I would also have solved it his way. – Backlin Nov 14 '12 at 8:50

With `par(new=TRUE)` you can draw a second plot in the same figure as the first.

Normally I would recommend using `lines()` for adding curves to a plot, since `par(new=TRUE)` performs the filosophically different task of overlaying plots. When using functions in a way they are not intended to be used you risk commiting misstakes, e.g. I nearly forgot the vital `xlim` argument. However, it is not trivial to extract the curves from the `survfit` objects, so I figured it was the lesser of two evils.

``````# Fake data for the plots
pump <- data.frame(TIME=rweibull(40, 2, 20),
CENSUS=runif(40) < .3,
DEVICE=rep(0:1, c(20,20)))
library("survival")

# Fit models
mfit.overall <-survfit(Surv(TIME, CENSUS==0) ~ 1, data=pump)
mfit.htx <- survfit(Surv(TIME, CENSUS==0) ~ 1, data=pump, subset=DEVICE==1)

# Plot
plot(mfit.overall, col=1, xlim=range(pump\$TIME), fun=function(x) 1-x)
# `xlim` makes sure the x-axis is the same in both plots
# `fun` flips the curve to start at 0 and increase
par(new=TRUE)
plot(mfit.htx, col=2, xlim=range(pump\$TIME), fun=function(x) 1-x,
ann=FALSE, axes=FALSE, bty="n") # This hides the annotations of the 2nd plot
legend("topright", c("All", "HTX"), col=1:2, lwd=1)
``````

• Backlin, Thanks! Yeah, I know that... The point is how to insert the data from 0,0 (lower left corner), which will increase to the upper right corner... – Johann Horvat Nov 13 '12 at 12:32
• Backlin, Perfect! This works! The trick is: fun=function(x) 1-x – Johann Horvat Nov 13 '12 at 13:00
• There is a `lines()` method so no need to hack the curves out of the survfit object. – Gavin Simpson Nov 13 '12 at 13:13

No need for `plot.new()` (though this is a nice illustartion of that paradigm). This can all be achieved via the `lines()` method for class `"surfit"`.

``````plot(mfit.overall, col=1, xlim=range(pump\$TIME), fun=function(x) 1-x)
lines(mfit.htx, col=2, fun=function(x) 1-x)
lines(mfit.htx, col=2, fun=function(x) 1-x, lty = "dashed", conf.int = "only")
legend("topleft", c("All", "HTX"), col=1:2, lwd=1, bty = "n")
``````

This gives, using @Backlin's example data (but different seeds, hence different data)

The reason for the two calls to `lines()` is to arrange for the confidence interval to be drawn with a dashed line and I couldn't see a way to pass multiple `lty`'s to `lines()` (that worked!) in the single `lines()` call.

• Thanks a lot! I didn't know there was a `lines.survfit` function, but this is a better solution than `par(new=TRUE)`. – Backlin Nov 13 '12 at 14:04