This thesis presents a new probability-based framework which exploits existing domain knowledge in the form of mathematical models and uses real-time data streams to individualise model parameters. We apply this new framework to personalising drug dosage regimes in critically ill patients, using routinely collected bedside and lab data. However, it can equally be applied to engineering, medical and scientific problems where noisy temporal data must be analysed and domain knowledge in the form of ordinary differential equation (ODE) models is available. The first contribution of this thesis is a methodology for incorporating ODEs in a Dynamic Bayesian Network (DBN) framework. By doing this, we can handle data and model uncertainty in a pri...
Physiological systems are well recognised to be nonlinear, stochastic and complex. In situations whe...
This paper introduces a Dynamic Bayesian network (DBN) model for representing survival of patients s...
This paper describes the use of the object oriented Bayesian network framework in two applications i...
This thesis presents a new probability-based framework which exploits existing domain knowledge in t...
For many clinical problems in patients the underlying pathophysiological process changes in the cour...
We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) — ...
Modeling a system's temporal behaviour in reaction to external stimuli is a fundamental problem in m...
AbstractIn intensive care medicine close monitoring of organ failure status is important for the pro...
We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) - c...
AbstractThe increasing prevalence of diabetes and its related complications is raising the need for ...
A Bayesian network is a graphical model that encodes probabilistic relationships among variables of ...
One fascinating aspect of tool building for datamining is the application of a generalized dataminin...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
We consider a Bayesian statistical approach to model-based prediction of a future patient's response...
Bridging the gap between the theory of Bayesian networks and solving an actual problem is still a bi...
Physiological systems are well recognised to be nonlinear, stochastic and complex. In situations whe...
This paper introduces a Dynamic Bayesian network (DBN) model for representing survival of patients s...
This paper describes the use of the object oriented Bayesian network framework in two applications i...
This thesis presents a new probability-based framework which exploits existing domain knowledge in t...
For many clinical problems in patients the underlying pathophysiological process changes in the cour...
We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) — ...
Modeling a system's temporal behaviour in reaction to external stimuli is a fundamental problem in m...
AbstractIn intensive care medicine close monitoring of organ failure status is important for the pro...
We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) - c...
AbstractThe increasing prevalence of diabetes and its related complications is raising the need for ...
A Bayesian network is a graphical model that encodes probabilistic relationships among variables of ...
One fascinating aspect of tool building for datamining is the application of a generalized dataminin...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
We consider a Bayesian statistical approach to model-based prediction of a future patient's response...
Bridging the gap between the theory of Bayesian networks and solving an actual problem is still a bi...
Physiological systems are well recognised to be nonlinear, stochastic and complex. In situations whe...
This paper introduces a Dynamic Bayesian network (DBN) model for representing survival of patients s...
This paper describes the use of the object oriented Bayesian network framework in two applications i...