SUMMARY Multi-state models of chronic disease are becoming increasingly important in medical research to describe the progression of complicated diseases. However, studies seldom observe health outcomes over long time periods. Therefore, current clinical research focuses on the secondary data analysis of the published literature to estimate a single transition probability within the entire model. Unfortunately, there are many difficulties when using secondary data, especially since the states and transitions of published studies may not be consistent with the proposed multi-state model. Early approaches to reconciling published studies with the theoretical framework of a multi-state model have been limited to data available as cumulative co...
The article of record as published may be found at http://dx.doi.org/10.1002/sim.5808Markov models o...
Multi-state models are a flexible tool for analyzing complex time-to-event problems with mul-tiple e...
This study develops a discrete multiple state duration model that al- lows for duration dependence, ...
Multi-state models of chronic disease are becoming increasingly important in medical research to des...
We develop a new approach to modeling transitions between states of progression for a chronic diseas...
This research was motivated by a desire to model the progression of a chronic disease through variou...
The paper deals with discrete state transition models in the context of exploratory research, where ...
Abstract Background We propose a simple new method for estimating progression of a chronic disease w...
Longitudinal studies are a useful tool for investigating the course of chronic diseases. Many chroni...
Summary. Multistate models are used to characterize individuals ’ natural histories through diseases...
This paper considers the analysis of longitudinal data complicated by the fact that during follow-up...
In longitudinal studies of disease, patients can experience several events across a follow-up perio...
Multi-state models provide a convenient statistical framework for a wide variety of medical applicat...
Multistate models are used to characterize individuals' natural histories through diseases with disc...
From the clinical setting, the capability for clinicians to predict prognosis of disease progression...
The article of record as published may be found at http://dx.doi.org/10.1002/sim.5808Markov models o...
Multi-state models are a flexible tool for analyzing complex time-to-event problems with mul-tiple e...
This study develops a discrete multiple state duration model that al- lows for duration dependence, ...
Multi-state models of chronic disease are becoming increasingly important in medical research to des...
We develop a new approach to modeling transitions between states of progression for a chronic diseas...
This research was motivated by a desire to model the progression of a chronic disease through variou...
The paper deals with discrete state transition models in the context of exploratory research, where ...
Abstract Background We propose a simple new method for estimating progression of a chronic disease w...
Longitudinal studies are a useful tool for investigating the course of chronic diseases. Many chroni...
Summary. Multistate models are used to characterize individuals ’ natural histories through diseases...
This paper considers the analysis of longitudinal data complicated by the fact that during follow-up...
In longitudinal studies of disease, patients can experience several events across a follow-up perio...
Multi-state models provide a convenient statistical framework for a wide variety of medical applicat...
Multistate models are used to characterize individuals' natural histories through diseases with disc...
From the clinical setting, the capability for clinicians to predict prognosis of disease progression...
The article of record as published may be found at http://dx.doi.org/10.1002/sim.5808Markov models o...
Multi-state models are a flexible tool for analyzing complex time-to-event problems with mul-tiple e...
This study develops a discrete multiple state duration model that al- lows for duration dependence, ...