The topic non-parametric estimation of transition probabilities in non-Markov multi-state models has seen a remarkable surge of activity recently. Two recent papers have used the idea of subsampling in this context. The first paper, by de Uña Álvarez and Meira-Machado, uses a procedure based on (differences between) Kaplan–Meier estimators derived from a subset of the data consisting of all subjects observed to be in the given state at the given time. The second, by Titman, derived estimators of transition probabilities that are consistent in general non-Markov multi-state models. Here, we show that the same idea of subsampling, used in both these papers, combined with the Aalen–Johansen estimate of the state occupation probabilities derive...
One major goal in clinical applications of multi-state models is the estimation of transition proba...
The inference in multi-state models is traditionally performed under a Markov assumption that claims...
In this paper the R package TP.idm to compute an empirical transition probability matrix for the ill...
The topic non-parametric estimation of transition probabilities in non-Markov multi-state models has...
Development and application of statistical models for medical scientific researc
In non-Markov multi-state models, the traditional Aalen–Johansen (AJ) estimator for state transition...
Multi-state models are increasingly being used to model complex epidemiological and clinical outcome...
Non-parametric estimation of the transition probabilities in multi-state models is considered for no...
We consider estimation of integrated transition hazard and stage occupation probabilities using righ...
The Aalen-Johansen estimator for calculation of transition probabilities in a multi-state model, bui...
One major goal in clinical applications of multi-state models is the estimation of transition probab...
Multi-state models are often used for modeling complex event history data. In these models the estim...
Multi-state models can be successfully used for modelling complex event history data. In these model...
Multi-state models can be successfully used for describing complicated event history data, for examp...
In longitudinal studies of disease, patients can experience several events across a follow-up perio...
One major goal in clinical applications of multi-state models is the estimation of transition proba...
The inference in multi-state models is traditionally performed under a Markov assumption that claims...
In this paper the R package TP.idm to compute an empirical transition probability matrix for the ill...
The topic non-parametric estimation of transition probabilities in non-Markov multi-state models has...
Development and application of statistical models for medical scientific researc
In non-Markov multi-state models, the traditional Aalen–Johansen (AJ) estimator for state transition...
Multi-state models are increasingly being used to model complex epidemiological and clinical outcome...
Non-parametric estimation of the transition probabilities in multi-state models is considered for no...
We consider estimation of integrated transition hazard and stage occupation probabilities using righ...
The Aalen-Johansen estimator for calculation of transition probabilities in a multi-state model, bui...
One major goal in clinical applications of multi-state models is the estimation of transition probab...
Multi-state models are often used for modeling complex event history data. In these models the estim...
Multi-state models can be successfully used for modelling complex event history data. In these model...
Multi-state models can be successfully used for describing complicated event history data, for examp...
In longitudinal studies of disease, patients can experience several events across a follow-up perio...
One major goal in clinical applications of multi-state models is the estimation of transition proba...
The inference in multi-state models is traditionally performed under a Markov assumption that claims...
In this paper the R package TP.idm to compute an empirical transition probability matrix for the ill...