\name{iauc.comp} \alias{iauc.comp} %- Also NEED an '\alias' for EACH other topic documented here. \title{ Function to compare two IAUCs through time-dependent ROC curves } \description{ This function compares two integrated areas under the curves (IAUC) through the results of time-dependent ROC curves at some points in time. The statistical test is a Wilcoxon rank sum test for dependent samples. } \usage{ iauc.comp(auc1, auc2, time) } %- maybe also 'usage' for other objects documented here. \arguments{ \item{auc1}{ vector of AUCs computed from the first time-dependent ROC curves for some points in time } \item{auc2}{ vector of AUCs computed from the second time-dependent ROC curves for some points in time } \item{time}{ vector of points in time for which the AUCs are computed } } \details{ The two vectors of AUCs must be computed from the same samples (and corresponding survival data) and for the same points in time. The function uses a Wilcoxon rank sum test for dependent samples. } \value{ \item{p.value }{p-value from the Wilcoxon rank sum test for the comparison iauc1 > iauc2} \item{iauc1 }{value of the IAUC for the first set of time-depdent ROC curves} \item{iauc2 }{value of the IAUC for the second set of time-depdent ROC curves} } \references{ Wilcoxon, F. (1945) "Individual comparisons by ranking methods", \emph{Biometrics Bulletin}, \bold{1}, pages 80--83. Haibe-Kains, B. and Desmedt, C. and Sotiriou, C. and Bontempi, G. (2008) "A comparative study of survival models for breast cancer prognostication based on microarray data: does a single gene beat them all?", \emph{Bioinformatics}, \bold{24}, 19, pages 2200--2208. } \author{ Benjamin Haibe-Kains } %\note{} \seealso{ \code{\link{tdrocc}}, \code{\link{wilcox.test}} } \examples{ set.seed(12345) age <- rnorm(30, 50, 10) size <- rexp(30,1) stime <- rexp(30) cens <- runif(30,.5,2) sevent <- as.numeric(stime <= cens) stime <- pmin(stime, cens) ##time-dependent ROC curves tt <- unique(sort(stime[sevent == 1])) ##size mytdroc1 <- NULL for(i in 1:length(tt)) { rr <- tdrocc(x=size, surv.time=stime, surv.event=sevent, time=tt[i], na.rm=TRUE, verbose=FALSE) mytdroc1 <- c(mytdroc1, list(rr)) } auc1 <- unlist(lapply(mytdroc1, function(x) { return(x$AUC) })) ##age mytdroc2 <- NULL for(i in 1:length(tt)) { rr <- tdrocc(x=age, surv.time=stime, surv.event=sevent, time=tt[i], na.rm=TRUE, verbose=FALSE) mytdroc2 <- c(mytdroc2, list(rr)) } auc2 <- unlist(lapply(mytdroc2, function(x) { return(x$AUC) })) iauc.comp(auc1=auc1, auc2=auc2, time=tt) } % Add one or more standard keywords, see file 'KEYWORDS' in the % R documentation directory. \keyword{ survival } \keyword{ htest }% __ONLY ONE__ keyword per line