CG.test: Testing survival difference of two groups via the CG estimators
Description
Testing survival difference of two prognostic groups separated by a prognostic index (PI).
Survival probabilities are computed by the CG estimators (Yeh, et al. 2023).
Vector of survival times (time to either death or censoring)
d.vec
Vector of censoring indicators, 1=death, 0=censoring
PI
Vector of real numbers (the values of a prognostic index)
cutoff
A number determining the cut-off value of a prognostic index
alpha
Copula parameter
copula
Copula function: "CG.Clayton","CG.Gumbel" or "CG.Frank"
S.plot
If TRUE, the survival curve is displayed
N
The number of permutations
mark.time
If TRUE, then curves are marked at each censoring time
Author
Takeshi Emura, Pauline Baur
Details
Two-sample comparison based on estimated survival functions
via copula-graphic estimators under dependent censoring.
The D statistic (the mean vertical difference betewen two
estimated survival functions) is used for testing the null
hypothesis of no difference in survival.
See Yeh et al.(2023) for details.
References
Emura T, Chen YH (2018). Analysis of Survival Data with Dependent Censoring,
Copula-Based Approaches, JSS Research Series in Statistics, Springer, Singapore.
Rivest LP, Wells MT (2001). A Martingale Approach to the Copula-graphic Estimator for the
Survival Function under Dependent Censoring, J Multivar Anal; 79: 138-55.
Yeh CT, Liao GY, Emura T (2023). Sensitivity analysis for survival prognostic prediction
with gene selection: a copula method for dependent censoring, Biomedicines 11(3):797.