Decision-making processes in medicine rely increasingly on modelling and simulation techniques; they are especially useful when combining evidence from multiple sources. Markov models are frequently used to synthesize the available evidence for such simulation studies, by describing disease and treatment progress, as well as associated factors such as the treatment's effects on a patient's life and the costs to society. When the same decision problem is investigated by multiple stakeholders, differing modelling assumptions are often applied, making synthesis and interpretation of the results difficult. This paper proposes a standardized approach towards the creation of Markov models. It introduces the notion of ‘general Markov models’, prov...
Markov models are often used to evaluate the cost-effectiveness of new healthcare interventions but ...
Clinical decisions often have long-term implications. Analysts encounter difficulties when employing...
Markov multistate models in continuous-time are commonly used to understand the progression over tim...
National audienceThis paper develops and analyzes a Markov chain model for the treatment of cancer. ...
We provide a tutorial on the construction and evalua-tion of Markov decision processes (MDPs), which...
This paper concerns knowledge acquisition for supporting therapy decision making (TDM) within the fo...
In this thesis, we have proposed a Markov chain modeling of the cell and tumor behaviors during radi...
When constructing decision-analytic models to evaluate the cost-effectiveness of alternative treatme...
Objectives: The aim of this study was to assess if the use of Markov modeling (MM) or discrete event...
Abstract: A new continuous-time statistical model for modelling the effect of radiotherapy treatment...
The prediction by classification of side effects incidence in a given medical treatment is a common ...
Markov models are often used to evaluate the cost-effectiveness of new healthcare interventions but ...
Markov models are often used to evaluate the cost-effectiveness of new healthcare interventions but ...
A paradigm shift from current population based medicine to personalized and participative medicine i...
Prognostic studies of progression and mortality in different diseases are essential to understand th...
Markov models are often used to evaluate the cost-effectiveness of new healthcare interventions but ...
Clinical decisions often have long-term implications. Analysts encounter difficulties when employing...
Markov multistate models in continuous-time are commonly used to understand the progression over tim...
National audienceThis paper develops and analyzes a Markov chain model for the treatment of cancer. ...
We provide a tutorial on the construction and evalua-tion of Markov decision processes (MDPs), which...
This paper concerns knowledge acquisition for supporting therapy decision making (TDM) within the fo...
In this thesis, we have proposed a Markov chain modeling of the cell and tumor behaviors during radi...
When constructing decision-analytic models to evaluate the cost-effectiveness of alternative treatme...
Objectives: The aim of this study was to assess if the use of Markov modeling (MM) or discrete event...
Abstract: A new continuous-time statistical model for modelling the effect of radiotherapy treatment...
The prediction by classification of side effects incidence in a given medical treatment is a common ...
Markov models are often used to evaluate the cost-effectiveness of new healthcare interventions but ...
Markov models are often used to evaluate the cost-effectiveness of new healthcare interventions but ...
A paradigm shift from current population based medicine to personalized and participative medicine i...
Prognostic studies of progression and mortality in different diseases are essential to understand th...
Markov models are often used to evaluate the cost-effectiveness of new healthcare interventions but ...
Clinical decisions often have long-term implications. Analysts encounter difficulties when employing...
Markov multistate models in continuous-time are commonly used to understand the progression over tim...