Bivariate, semi-competing risk data are survival endpoints where a terminal event can
censor a non-terminal event, but not vice versa. An example is the endpoints of graft
failure and death; death can censor graft failure, but graft failure cannot censor death.
There are potential correlations between these endpoints as they are measured on the
same individual. Traditional methods of calculating correlations cannot be used directly
as censoring can occur on one or both survival endpoints.
We develop methods using a copula-based approach to study the dependence structures
between two survival endpoints while the marginal distributions are fixed. We use several
copulas to estimate the correlation between survival endpoints as each copula has
a different dependence structure. We apply these methods to clinical examples in renal
transplantation and HIV/AIDS. We include covariates to examine how the correlation
and the hazard rates are associated with individual characteristics. The misspecification
of both the copula function and the marginal survival distributions are investigated
using simulation studies. Finally, we extend our methods to include individuals with
incomplete survival outcomes.
Our analysis indicates that the correlation between graft failure and death following
transplant is affected by covariates. Our simulation studies conclude that the copula
models with both the marginal distribution and the association parameters having a
dependence on covariates provide improved estimates of the hazard ratios for the non-terminal
event, compared to the Cox proportional hazards model. Simulation studies
investigating misspeci cation find that the misspecification of both the survival distribution
and copula function can increase the bias of the hazard ratios and correlation
coeffcients. We use the AIC to choose between the survival distributions and copula
functions. We found that the correct model is chosen in the majority of data sets at
strong correlations. The presented copula models can be used to analyse bivariate,
semi-competing risk data with a variety of univariate and multivariate structures.
Date of Award | 2021 |
---|
Original language | English |
---|
Awarding Institution | |
---|
Supervisor | Yinghui Wei (Director of Studies (First Supervisor)) |
---|
- Survival Analysis
- Copulas
- Renal Transplant
- Regression Modelling
- Correlation
- Semi-comping Risk
Statistical inference about bivariate survival data with semi-competing risks using copulas
Sorrell, L. (Author). 2021
Student thesis: PhD