Survival data analysis becomes complex when the proportional hazards assumption is violated at population level or when crude hazard rates are no longer estimators of marginal ones. We develop a Bayesian survival analysis method to deal with these situations, on the basis of assuming that the complexities are induced by latent cohort or disease heterogeneity that is not captured by covariates and that proportional hazards hold at the level of individuals. This leads to a description from which risk-specific marginal hazard rates and survival functions are fully accessible, ‘decontaminated’ of the effects of informative censoring, and which includes Cox, random effects and latent class models as special cases. Simulated data confirm that our...
Background:Relative survival is the most common method used for measuring survival from population-b...
Master's thesis in Mathematics and physicsSurvival data analysis is a set of statistical methodologi...
Competing-risks survival regression provides a useful alternative to Cox regression in the presence ...
In heterogeneous cohorts and those where censoring by non-primary risks is informative many conventi...
Summary. Most papers implicitly assume competing risks to be induced by residual cohort heterogeneit...
Competing risks occur frequently in the analysis of survival data. A competing risk is an event whos...
In chapter 1 we study explained variation under the additive hazards regression model for right-cens...
Objective: Competing events are often ignored in epidemiological studies. Conventional methods for t...
This work discusses the problem of informative censoring in survival studies. A joint model for the ...
The analysis of cause of death is increasingly becoming a topic in oncology. It is usually distingui...
Competing risks data are routinely encountered in various medical applications due to the fact that ...
In survival analysis, end of follow-up can be caused by the occurrence of the event of primary inter...
Cause-specific analyses under a competing risks framework have received considerable attention in th...
Item does not contain fulltextBACKGROUND: In studies of all-cause mortality, the fundamental epidemi...
When modelling competing risks survival data, several techniques have been proposed in both the stat...
Background:Relative survival is the most common method used for measuring survival from population-b...
Master's thesis in Mathematics and physicsSurvival data analysis is a set of statistical methodologi...
Competing-risks survival regression provides a useful alternative to Cox regression in the presence ...
In heterogeneous cohorts and those where censoring by non-primary risks is informative many conventi...
Summary. Most papers implicitly assume competing risks to be induced by residual cohort heterogeneit...
Competing risks occur frequently in the analysis of survival data. A competing risk is an event whos...
In chapter 1 we study explained variation under the additive hazards regression model for right-cens...
Objective: Competing events are often ignored in epidemiological studies. Conventional methods for t...
This work discusses the problem of informative censoring in survival studies. A joint model for the ...
The analysis of cause of death is increasingly becoming a topic in oncology. It is usually distingui...
Competing risks data are routinely encountered in various medical applications due to the fact that ...
In survival analysis, end of follow-up can be caused by the occurrence of the event of primary inter...
Cause-specific analyses under a competing risks framework have received considerable attention in th...
Item does not contain fulltextBACKGROUND: In studies of all-cause mortality, the fundamental epidemi...
When modelling competing risks survival data, several techniques have been proposed in both the stat...
Background:Relative survival is the most common method used for measuring survival from population-b...
Master's thesis in Mathematics and physicsSurvival data analysis is a set of statistical methodologi...
Competing-risks survival regression provides a useful alternative to Cox regression in the presence ...