Description Usage Arguments Details Value Author(s) References See Also Examples
This function compares two hazard ratios from their betas and standard errors as computed by a Cox model for instance. The statistical test is a Student t test for dependent samples. The two hazard ratios must be computed from the same survival data.
1 | hr.comp(hr1, hr2)
|
hr1 |
first hazard ratio. |
hr2 |
second hazard ratio. |
The two hazard ratios must be computed from the same samples (and corresponding survival data). The function uses a Student t test for dependent samples.
p.value |
p-value from the Student t test for the comparison beta1 > beta2 (equivalently hr1 > hr2) |
hr1 |
value of the first hazard ratio |
hr2 |
value of the second hazard ratio |
Benjamin Haibe-Kains
Student 1908) "The Probable Error of a Mean", Biometrika, 6, 1, pages 1–25.
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?", Bioinformatics, 24, 19, pages 2200–2208.
1 2 3 4 5 6 7 8 9 10 | set.seed(12345)
age <- as.numeric(rnorm(100, 50, 10) >= 50)
size <- as.numeric(rexp(100,1) > 1)
stime <- rexp(100)
cens <- runif(100,.5,2)
sevent <- as.numeric(stime <= cens)
stime <- pmin(stime, cens)
hr1 <- hazard.ratio(x=age, surv.time=stime, surv.event=sevent)
hr2 <- hazard.ratio(x=size, surv.time=stime, surv.event=sevent)
hr.comp(hr1=hr1, hr2=hr2)
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