Recommendations for actions included in a Clinical Practice Guideline (CPG) provide a reference framework for medical experts during diagnostic processes. To support the implementation of these recommendations, we propose an interactive decision support. In order to realize this, the diagnostic processes in the CPGs of Mantle Cell Lymphoma (MCL) and Multiple Myeloma (MM) are formalized using activities of the Unified Modeling Language (UML). Based on UML activities, a Bayesian Network is generated. The resulting models enable an assistance function allowing for patient specific CPG recommendations and subsequently for a suitable as well as personalized diagnosis embedded in an interactive Decision Support System (DSS)
Artificial intelligence can help physicians improve the accuracy of breast cancer diagnosis. However...
Bayesian networks have proven their value in solving complex diagnostic problems. The main bottlenec...
This paper describes the development of a Bayesian model for diagnosis of patients suspected of Lyme...
Clinical Practice Guidelines (CPGs) include recommendations for actions and therefore provide a fram...
Treatment decision-making in head and neck oncology is gaining complexity by the increasing evidence...
In contemporary medicine, diagnostic processes provided by Clinical Practice Guidelines (CPGs) play ...
This dissertation deals with decision support in the context of clinical oncology. (Dynamic) Bayesia...
Background: Clinical practice guidelines (CPG) represent the current state of research. Usually they...
Medical judgments are tough and challenging as the decisions are often based on the deficient and am...
We describe a method of building a decision support system for clinicians deciding between intervent...
In this thesis, we present an approach to integration of case-based reasoning and Bayesian reasoning...
This thesis investigates the use of Bayesian Networks (BNs), augmented by the Dynamic Dis- cretizati...
Computer-based diagnostic decision support systems (DSS) will play an increasingly important role in...
International audienceDecision support is a probabilistic and quantitative method designed for model...
Serie : Lecture notes in computer science, ISSN 0302-9743, vol. 8073Choosing an appropriate support ...
Artificial intelligence can help physicians improve the accuracy of breast cancer diagnosis. However...
Bayesian networks have proven their value in solving complex diagnostic problems. The main bottlenec...
This paper describes the development of a Bayesian model for diagnosis of patients suspected of Lyme...
Clinical Practice Guidelines (CPGs) include recommendations for actions and therefore provide a fram...
Treatment decision-making in head and neck oncology is gaining complexity by the increasing evidence...
In contemporary medicine, diagnostic processes provided by Clinical Practice Guidelines (CPGs) play ...
This dissertation deals with decision support in the context of clinical oncology. (Dynamic) Bayesia...
Background: Clinical practice guidelines (CPG) represent the current state of research. Usually they...
Medical judgments are tough and challenging as the decisions are often based on the deficient and am...
We describe a method of building a decision support system for clinicians deciding between intervent...
In this thesis, we present an approach to integration of case-based reasoning and Bayesian reasoning...
This thesis investigates the use of Bayesian Networks (BNs), augmented by the Dynamic Dis- cretizati...
Computer-based diagnostic decision support systems (DSS) will play an increasingly important role in...
International audienceDecision support is a probabilistic and quantitative method designed for model...
Serie : Lecture notes in computer science, ISSN 0302-9743, vol. 8073Choosing an appropriate support ...
Artificial intelligence can help physicians improve the accuracy of breast cancer diagnosis. However...
Bayesian networks have proven their value in solving complex diagnostic problems. The main bottlenec...
This paper describes the development of a Bayesian model for diagnosis of patients suspected of Lyme...