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This package provides several confidence interval and testing procedures using event-specific win ratios for semi-competing risks data with non-terminal and terminal events, as developed in Yang et al. (2021). The event-specific win ratios were introduced in Yang and Troendle (2021).
The main function wr.test provides various confidence interval and testing procedures with event-specific win ratios:
Tests of the global null - testing the null hypothesis of no treatment effect on either the terminal event or the non-terminal event. A set of three tests are provided: the maximum test, the linear combination test, and the chi-squared test.
Test of proportional hazards - testing the null hypothesis of the proportionality assumptions for the terminal event and the non-terminal event.
Test of equal hazard ratios - testing the null hypothesis of equal hazard ratios for the terminal event and the non-terminal event when they both have proportional hazards.
Confidence intervals
Note that the wr.test
function uses transformations that
yield better control of the type one error rates for moderately sized
data sets.
install.packages("EventWinRatios")
The following arguments must be inputted into the
wr.test
function.
yh
: time to the non-terminal event or censoringhcen
: censoring indicator for the non-terminal event
(event = 1, censored = 0)yd
: time to the terminal event or censoringdcen
: censoring indicator for the terminal event (event
= 1, censored = 0)z
: group indicator (treatment = 1, control = 0)The linear combination of the event-specific win ratios can be
supplied using the lin
argument. The significance level for
confidence intervals can be controlled by the alpha
argument. If they are not supplied by users, the function uses
lin = c(0.5, 0.5)
and alpha = 0.5
by
default.
Linear combination tests can be used to detect an overall effect,
which is measured by using a weighted average of the win ratios of the
terminal and non-terminal events. The weights can be either a
data-driven weights or pre-determined weights. The pre-determined
weights can be supplied with the lin
argument.
The data set SimuData
in the package is used as an
example.
library(EventWinRatios)
data(SimuData)
# non-terminal events
<- SimuData$yh
yh <- SimuData$hcen
hcen
# terminal events
<- SimuData$yd
yd <- SimuData$dcen
dcen
# group indicator
<- SimuData$z
z
# Win Ratio tests
<- wr.test(yh, hcen, yd, dcen, z)
result print(result)
Yang, S., Troendle, J., Pak, D., & Leifer, E. (2022). Event‐specific win ratios for inference with terminal and non‐terminal events. Statistics in medicine, 41(7), 1225-1241.
Yang, S., & Troendle, J. (2021). Event-specific win ratios and testing with terminal and non-terminal events. Clinical Trials, 18(2), 180-187.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.