AbstractMany medical conditions are only indirectly observed through symptoms and tests. Developing predictive models for such conditions is challenging since they can be thought of as ‘latent’ variables. They are not present in the data and often get confused with measurements. As a result, building a model that fits data well is not the same as making a prediction that is useful for decision makers. In this paper, we present a methodology for developing Bayesian network (BN) models that predict and reason with latent variables, using a combination of expert knowledge and available data. The method is illustrated by a case study into the prediction of acute traumatic coagulopathy (ATC), a disorder of blood clotting that significantly incre...
PhDBayesian Networks (BNs) have been considered as a potentially useful technique in the health se...
Many prognostic models are not adopted in clinical practice regardless of their reported accuracy. D...
A key purpose of building a model from clinical data is to predict the outcomes of future individual...
Many medical conditions are only indirectly observed through symptoms and tests. Developing predicti...
In patients with major traumatic injuries, early intervention can be lifesaving. However, identifyin...
One fascinating aspect of tool building for datamining is the application of a generalized dataminin...
PhD thesisBayesian networks have been widely proposed to assist clinical decision making. Their popu...
PhDEvidence based medicine (EBM) is defined as the use of best available evidence for decision makin...
This paper focuses on identification of the relationships between a disease and its potential risk f...
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...
Complex clinical decisions require the decision maker to evaluate multiple factors that may interact...
AbstractComplex clinical decisions require the decision maker to evaluate multiple factors that may ...
OBJECTIVE: The aim of this study was to develop and validate a risk prediction tool for trauma-induc...
Discovery of precise biomarkers are crucial for improved clinical diagnostic, prognostic, and therap...
PhDBayesian Networks (BNs) have been considered as a potentially useful technique in the health se...
Many prognostic models are not adopted in clinical practice regardless of their reported accuracy. D...
A key purpose of building a model from clinical data is to predict the outcomes of future individual...
Many medical conditions are only indirectly observed through symptoms and tests. Developing predicti...
In patients with major traumatic injuries, early intervention can be lifesaving. However, identifyin...
One fascinating aspect of tool building for datamining is the application of a generalized dataminin...
PhD thesisBayesian networks have been widely proposed to assist clinical decision making. Their popu...
PhDEvidence based medicine (EBM) is defined as the use of best available evidence for decision makin...
This paper focuses on identification of the relationships between a disease and its potential risk f...
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...
Complex clinical decisions require the decision maker to evaluate multiple factors that may interact...
AbstractComplex clinical decisions require the decision maker to evaluate multiple factors that may ...
OBJECTIVE: The aim of this study was to develop and validate a risk prediction tool for trauma-induc...
Discovery of precise biomarkers are crucial for improved clinical diagnostic, prognostic, and therap...
PhDBayesian Networks (BNs) have been considered as a potentially useful technique in the health se...
Many prognostic models are not adopted in clinical practice regardless of their reported accuracy. D...
A key purpose of building a model from clinical data is to predict the outcomes of future individual...