quantile.survfit {survival} | R Documentation |
Retrieve quantiles and confidence intervals for them from a survfit object.
## S3 method for class 'survfit' quantile(x, probs = c(0.25, 0.5, 0.75), conf.int = TRUE, tolerance= sqrt(.Machine$double.eps), ...) ## S3 method for class 'survfitms' quantile(x, probs = c(0.25, 0.5, 0.75), conf.int = TRUE, tolerance= sqrt(.Machine$double.eps), ...)
x |
a result of the survfit function |
probs |
numeric vector of probabilities with values in [0,1] |
conf.int |
should lower and upper confidence limits be returned? |
tolerance |
tolerance for checking that the survival curve exactly equals one of the quantiles |
... |
optional arguments for other methods |
The kth quantile for a survival curve S(t) is the location at which a horizontal line at height p= 1-k intersects the plot of S(t). Since S(t) is a step function, it is possible for the curve to have a horizontal segment at exactly 1-k, in which case the midpoint of the horizontal segment is returned. This mirrors the standard behavior of the median when data is uncensored. If the survival curve does not fall to 1-k, then that quantile is undefined.
In order to be consistent with other quantile functions, the argument
prob
of this function applies to the cumulative distribution
function F(t) = 1-S(t).
Confidence limits for the values are based on the intersection of the
horizontal line at 1-k with the upper and lower limits for the
survival curve. Hence confidence limits use the same
p-value as was in effect when the curve was created, and will differ
depending on the conf.type
option of survfit
.
If the survival curves have no confidence bands, confidence limits for
the quantiles are not available.
When a horizontal segment of the survival curve exactly matches one of
the requested quantiles the returned value will be the midpoint of the
horizontal segment; this agrees with the usual definition of a median
for uncensored data. Since the survival curve is computed as a series
of products, however, there may be round off error.
Assume for instance a sample of size 20 with no tied times and no
censoring. The survival curve after the 10th death is
(19/20)(18/19)(17/18) ... (10/11) = 10/20, but the computed result will
not be exactly 0.5. Any horizontal segment whose absolute difference
with a requested percentile is less than tolerance
is
considered to be an exact match.
The quantiles will be a vector if the survfit
object contains
only a single curve, otherwise it will be a matrix or array. In
this case the last dimension will index the quantiles.
If confidence limits are requested, then result will be a list with
components
quantile
, lower
, and upper
, otherwise it is the
vector or matrix of quantiles.
Terry Therneau
survfit
, print.survfit
,
qsurvreg
fit <- survfit(Surv(time, status) ~ ph.ecog, data=lung) quantile(fit) cfit <- coxph(Surv(time, status) ~ age + strata(ph.ecog), data=lung) csurv<- survfit(cfit, newdata=data.frame(age=c(40, 60, 80)), conf.type ="none") temp <- quantile(csurv, 1:5/10) temp[2,3,] # quantiles for second level of ph.ecog, age=80 quantile(csurv[2,3], 1:5/10) # quantiles of a single curve, same result