Multi-state models can be used to describe processes in which an individual moves through a finite number of states in continuous time. These models allow a detailed view of the evolution or recovery of the process and can be used to study the effect of a vector of explanatory variables on the transition intensities or to obtain prediction probabilities of future events after a given event history. In both cases, before using these models, we have to evaluate whether the Markov assumption is tenable. This paper introduces the markovMSM package, a software application for R, which considers tests of the Markov assumption that are applicable to general multi-state models. Three approaches using existing methodology are considered: a simple me...
The topic of joint modeling of longitudinal and survival data has received remarkable attention in r...
Multi-state models are considered in the field of survival analysis for modelling illnesses that ev...
One major goal in clinical applications of multi-state models is the estimation of transitionprobabi...
The inference in multi-state models is traditionally performed under a Markov assumption that claims...
Multi-state models for event history analysis most commonly assume the process is Markov. This artic...
Panel data are observations of a continuous-time process at arbitrary times, for example, visits to ...
Multi-state models can be successfully used for describing complicated event history data, for examp...
The multi-state Markov model is a useful way of describing a process in which an individual moves th...
In longitudinal studies of disease, patients can experience several events across a followup period....
In this paper the R package TP.idm to compute an empirical transition probability matrix for the ill...
aim Present different approaches for the estimation of transition probabilities in multi-state survi...
The Aalen-Johansen estimator for calculation of transition probabilities in a multi-state model, bui...
Multi-state models are a useful way of describing a process in which an individual moves through a n...
Non-parametric estimation of the transition probabilities in multi-state models is considered for no...
One major goal in clinical applications of multi-state models is the estimation of transition probab...
The topic of joint modeling of longitudinal and survival data has received remarkable attention in r...
Multi-state models are considered in the field of survival analysis for modelling illnesses that ev...
One major goal in clinical applications of multi-state models is the estimation of transitionprobabi...
The inference in multi-state models is traditionally performed under a Markov assumption that claims...
Multi-state models for event history analysis most commonly assume the process is Markov. This artic...
Panel data are observations of a continuous-time process at arbitrary times, for example, visits to ...
Multi-state models can be successfully used for describing complicated event history data, for examp...
The multi-state Markov model is a useful way of describing a process in which an individual moves th...
In longitudinal studies of disease, patients can experience several events across a followup period....
In this paper the R package TP.idm to compute an empirical transition probability matrix for the ill...
aim Present different approaches for the estimation of transition probabilities in multi-state survi...
The Aalen-Johansen estimator for calculation of transition probabilities in a multi-state model, bui...
Multi-state models are a useful way of describing a process in which an individual moves through a n...
Non-parametric estimation of the transition probabilities in multi-state models is considered for no...
One major goal in clinical applications of multi-state models is the estimation of transition probab...
The topic of joint modeling of longitudinal and survival data has received remarkable attention in r...
Multi-state models are considered in the field of survival analysis for modelling illnesses that ev...
One major goal in clinical applications of multi-state models is the estimation of transitionprobabi...