Description Usage Arguments Value Author(s) References See Also Examples
The function is a wrapper for the survivalROC
function in order to compute the time-dependent ROC curves.
1 2 |
x |
vector of risk scores. |
surv.time |
vector of times to event occurrence. |
surv.event |
vector of event occurrence indicators. |
surv.entry |
entry time for the subjects. |
time |
time point for the ROC curve. |
cutpts |
cut points for the risk score. |
na.rm |
|
verbose |
verbosity of the function. |
span |
Span for the NNE, need either lambda or span for NNE. |
lambda |
smoothing parameter for NNE. |
... |
additional arguments to be passed to the |
spec |
specificity estimates |
sens |
sensitivity estimates |
rule |
rule to compute the predictions at each cutoff |
cuts |
cutoffs |
time |
time point at which the time-dependent ROC is computed |
survival |
overall survival at the time point |
AUC |
Area Under the Curve (AUC) of teh time-dependent ROC curve |
data |
survival data and risk score used to compute the time-dependent ROC curve |
Benjamin Haibe-Kains
Heagerty, P. J. and Lumley, T. L. and Pepe, M. S. (2000) "Time-Dependent ROC Curves for Censored Survival Data and a Diagnostic Marker", Biometrics, 56, pages 337–344.
1 2 3 4 5 6 7 8 9 10 11 12 | set.seed(12345)
age <- rnorm(100, 50, 10)
stime <- rexp(100)
cens <- runif(100,.5,2)
sevent <- as.numeric(stime <= cens)
stime <- pmin(stime, cens)
tdroc <- tdrocc(x=age, surv.time=stime, surv.event=sevent, time=1,
na.rm=TRUE, verbose=FALSE)
##plot the time-dependent ROC curve
plot(x=1-tdroc$spec, y=tdroc$sens, type="l", xlab="1 - specificity",
ylab="sensitivity", xlim=c(0, 1), ylim=c(0, 1))
lines(x=c(0,1), y=c(0,1), lty=3, col="red")
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