BACKGROUND In survival analysis a large literature using frailty models, or models with unobserved heterogeneity, exists. In the growing literature and modelling on multistate models, this issue is only in its infant phase. Ignoring frailty can, however, produce incorrect results. OBJECTIVE This paper presents how frailties can be incorporated into multistate models, with an emphasis on semi-Markov multistate models with a mixed proportional hazard structure. METHODS First, the aspects of frailty modeling in univariate (proportional hazard, Cox) and multivariate event history models are addressed. The implications of choosing shared or correlated frailty is highlighted. The relevant differences with recurrent events data are covered next. M...
Many biomedical studies collect data on times of occurrence for a health event that can oc-cur repea...
In survival analysis recurrent event times are often observed on the same subject. These event times...
Frailty models are useful for handling dependence in multivariate times to events data, where the de...
BACKGROUND In survival analysis a large literature using frailty models, or models with unobserved h...
In survival analysis a large literature using frailty models, or models with unobserved heterogeneit...
The inclusion of latent frailties in survival models can serve two purposes: (1) the modelling of de...
Proportional hazards models are among the most popular regression models in survival analysis. Multi...
In survival analysis a large literature using frailty models, or models with unobserved heterogeneit...
Often intermediate events provide more detailed information about the disease process or recovery, f...
Proportional hazards models are among the most popular regression models in survival analysis. Multi...
Multi-state models describe a process where individuals move among a series of states over time. The...
The hazard function plays a central role in survival analysis. In a homogeneous population, the dist...
The emphasis of this thesis lies on complex survival data and on the modelling of this kind of data....
Heterogeneity in survival and recurrent event data is often due to unknown, unmeasured, or immeasura...
Random effect models are extremely useful for multivariate times to events analysis (Hougaard, 2000)...
Many biomedical studies collect data on times of occurrence for a health event that can oc-cur repea...
In survival analysis recurrent event times are often observed on the same subject. These event times...
Frailty models are useful for handling dependence in multivariate times to events data, where the de...
BACKGROUND In survival analysis a large literature using frailty models, or models with unobserved h...
In survival analysis a large literature using frailty models, or models with unobserved heterogeneit...
The inclusion of latent frailties in survival models can serve two purposes: (1) the modelling of de...
Proportional hazards models are among the most popular regression models in survival analysis. Multi...
In survival analysis a large literature using frailty models, or models with unobserved heterogeneit...
Often intermediate events provide more detailed information about the disease process or recovery, f...
Proportional hazards models are among the most popular regression models in survival analysis. Multi...
Multi-state models describe a process where individuals move among a series of states over time. The...
The hazard function plays a central role in survival analysis. In a homogeneous population, the dist...
The emphasis of this thesis lies on complex survival data and on the modelling of this kind of data....
Heterogeneity in survival and recurrent event data is often due to unknown, unmeasured, or immeasura...
Random effect models are extremely useful for multivariate times to events analysis (Hougaard, 2000)...
Many biomedical studies collect data on times of occurrence for a health event that can oc-cur repea...
In survival analysis recurrent event times are often observed on the same subject. These event times...
Frailty models are useful for handling dependence in multivariate times to events data, where the de...