This thesis investigates the use of Bayesian Networks (BNs), augmented by the Dynamic Dis- cretization Algorithm, to model a variety of clinical problems. In particular, the thesis demon- strates four novel applications of BN and dynamic discretization to clinical problems. Firstly, it demonstrates the flexibility of the Dynamic Discretization Algorithm in modeling existing medical knowledge using appropriate statistical distributions. Many practical applications ofBNs use the relative frequency approach while translating existing medical knowledge to a prior distribution in a BN model. This approach does not capture the full uncertainty surrounding the prior knowledge. Secondly, it demonstrates a novel use of the multinomial BN formulation...
Bayesian networks (BN) are a valid method to analyze causal dependencies with uncertainties and to c...
Bayesian networks (BNs) are tools for representing expert knowledge or evidence. They are especially...
In patients with major traumatic injuries, early intervention can be lifesaving. However, identifyin...
This dissertation deals with decision support in the context of clinical oncology. (Dynamic) Bayesia...
Treatment decision-making in head and neck oncology is gaining complexity by the increasing evidence...
Complex clinical decisions require the decision maker to evaluate multiple factors that may interact...
We describe a method of building a decision support system for clinicians deciding between intervent...
PhDEvidence based medicine (EBM) is defined as the use of best available evidence for decision makin...
AbstractComplex clinical decisions require the decision maker to evaluate multiple factors that may ...
We describe a method of building a decision support system for clinicians deciding between intervent...
There is poor uptake of prognostic decision support models by clinicians regardless of their accurac...
PhD thesisBayesian networks have been widely proposed to assist clinical decision making. Their popu...
Abstract The method proposed here uses Bayesian non-linear classifier to select optimal subset of a...
dissertationliad is a medical diagnostic decision support system with a very large knowledge base (K...
To address the classification problem when the number of cases is too small to effectively use just ...
Bayesian networks (BN) are a valid method to analyze causal dependencies with uncertainties and to c...
Bayesian networks (BNs) are tools for representing expert knowledge or evidence. They are especially...
In patients with major traumatic injuries, early intervention can be lifesaving. However, identifyin...
This dissertation deals with decision support in the context of clinical oncology. (Dynamic) Bayesia...
Treatment decision-making in head and neck oncology is gaining complexity by the increasing evidence...
Complex clinical decisions require the decision maker to evaluate multiple factors that may interact...
We describe a method of building a decision support system for clinicians deciding between intervent...
PhDEvidence based medicine (EBM) is defined as the use of best available evidence for decision makin...
AbstractComplex clinical decisions require the decision maker to evaluate multiple factors that may ...
We describe a method of building a decision support system for clinicians deciding between intervent...
There is poor uptake of prognostic decision support models by clinicians regardless of their accurac...
PhD thesisBayesian networks have been widely proposed to assist clinical decision making. Their popu...
Abstract The method proposed here uses Bayesian non-linear classifier to select optimal subset of a...
dissertationliad is a medical diagnostic decision support system with a very large knowledge base (K...
To address the classification problem when the number of cases is too small to effectively use just ...
Bayesian networks (BN) are a valid method to analyze causal dependencies with uncertainties and to c...
Bayesian networks (BNs) are tools for representing expert knowledge or evidence. They are especially...
In patients with major traumatic injuries, early intervention can be lifesaving. However, identifyin...