Objective: To develop dynamic predictive models for real-time outcome predictions of hospitalised patients. Design: Dynamic Bayesian networks (DBNs) were built to model patient outcomes that dynamically depend on patient's clinical profiles, temporal patterns of ward transfers and surgery data. These models were applied to predict remaining days of hospitalisation (RDH) for patients undergoing multiple surgeries and their performance compared against a static model based on Bayesian networks (BNs). Datasets: Hospital data from a Sydney metropolitan hospital. Results: The basic model uses static information at time of prediction. The DBN model uses static and temporal information extracted from a series of surgeries; DBNs show a significant ...
This thesis investigates the use of Bayesian Networks (BNs), augmented by the Dynamic Dis- cretizati...
Coping with an ageing population is a major concern for healthcare organisations around the world. T...
AbstractIn intensive care medicine close monitoring of organ failure status is important for the pro...
A prognostic model is a formal combination of multiple predictors from which risk probability of a s...
Objective: To develop a predictive model for real-time predictions of length of stay, mortality, and...
Dynamic Bayesian networks (DBNs) are temporal probabilistic graphical models that model temporal eve...
This paper introduces a Dynamic Bayesian network (DBN) model for representing survival of patients s...
Contains fulltext : 72212.pdf (publisher's version ) (Closed access
Critical care medicine has been a field for Bayesian networks (BNs) application for investigating re...
dissertationMedicine is the art and science of diagnosis and treatment of disease - maintenance of o...
Temporal data abstraction (TA) is a set of techniques aiming to abstract time-points into higher-lev...
Bridging the gap between the theory of Bayesian networks and solving an actual problem is still a bi...
Advances in technology have allowed for the collection of diverse data types along with evolution in...
© 2016 IEEE. Many studies have focused on prognosis for oncology patients with the following charact...
When we face patients arriving to a hospital suffering from the effects of some illness, one of the ...
This thesis investigates the use of Bayesian Networks (BNs), augmented by the Dynamic Dis- cretizati...
Coping with an ageing population is a major concern for healthcare organisations around the world. T...
AbstractIn intensive care medicine close monitoring of organ failure status is important for the pro...
A prognostic model is a formal combination of multiple predictors from which risk probability of a s...
Objective: To develop a predictive model for real-time predictions of length of stay, mortality, and...
Dynamic Bayesian networks (DBNs) are temporal probabilistic graphical models that model temporal eve...
This paper introduces a Dynamic Bayesian network (DBN) model for representing survival of patients s...
Contains fulltext : 72212.pdf (publisher's version ) (Closed access
Critical care medicine has been a field for Bayesian networks (BNs) application for investigating re...
dissertationMedicine is the art and science of diagnosis and treatment of disease - maintenance of o...
Temporal data abstraction (TA) is a set of techniques aiming to abstract time-points into higher-lev...
Bridging the gap between the theory of Bayesian networks and solving an actual problem is still a bi...
Advances in technology have allowed for the collection of diverse data types along with evolution in...
© 2016 IEEE. Many studies have focused on prognosis for oncology patients with the following charact...
When we face patients arriving to a hospital suffering from the effects of some illness, one of the ...
This thesis investigates the use of Bayesian Networks (BNs), augmented by the Dynamic Dis- cretizati...
Coping with an ageing population is a major concern for healthcare organisations around the world. T...
AbstractIn intensive care medicine close monitoring of organ failure status is important for the pro...