The Intensive Care Unit (ICU) is a hospital department where machine learning has the potential to provide valuable assistance in clinical decision making. Classical machine learning models usually only provide point-estimates and no uncertainty of predictions. In practice, uncertain predictions should be presented to doctors with extra care in order to prevent potentially catastrophic treatment decisions. In this work we show how Bayesian modelling and the predictive uncertainty that it provides can be used to mitigate risk of misguided prediction and to detect out-of-domain examples in a medical setting. We derive analytically a bound on the prediction loss with respect to predictive uncertainty. The bound shows that uncertainty can mitig...
Deep learning (DL), which involves powerful black box predictors, has achieved a remarkable performa...
Patients in intensive care units (ICU) are acutely ill and have the highest mortality rates for hosp...
Clinical decision making is challenging because of pathological complexity, as well as large amounts...
This dissertation is composed of three chapters that deal with fairly distinct concepts. In the firs...
Mistrust is a major barrier to implementing deep learning in healthcare settings. Entrustment could ...
In domains with high stakes, like healthcare and medicine, trustworthy and robust decision-making is...
Interest in Machine Learning applications to tackle clinical and biological problems is increasing. ...
Machine learning (ML) is increasingly applied to predict adverse postoperative outcomes in cardiac ...
Bayesian networks can be used to model the respiratory system. Their structure indicate how risk fac...
One major impediment to the wider use of deep learning for clinical decision making is the difficult...
We describe the Bedside Patient Rescue (BPR) project, the goal of which is risk prediction of advers...
Health care practitioners analyse possible risks of misleading decisions and need to estimate and qu...
An intensive care unit mortality prediction model for the PhysioNet/Computing in Cardiology Challeng...
Deep learning is now ubiquitous in the research field of medical image computing. As such technologi...
In patients with major traumatic injuries, early intervention can be lifesaving. However, identifyin...
Deep learning (DL), which involves powerful black box predictors, has achieved a remarkable performa...
Patients in intensive care units (ICU) are acutely ill and have the highest mortality rates for hosp...
Clinical decision making is challenging because of pathological complexity, as well as large amounts...
This dissertation is composed of three chapters that deal with fairly distinct concepts. In the firs...
Mistrust is a major barrier to implementing deep learning in healthcare settings. Entrustment could ...
In domains with high stakes, like healthcare and medicine, trustworthy and robust decision-making is...
Interest in Machine Learning applications to tackle clinical and biological problems is increasing. ...
Machine learning (ML) is increasingly applied to predict adverse postoperative outcomes in cardiac ...
Bayesian networks can be used to model the respiratory system. Their structure indicate how risk fac...
One major impediment to the wider use of deep learning for clinical decision making is the difficult...
We describe the Bedside Patient Rescue (BPR) project, the goal of which is risk prediction of advers...
Health care practitioners analyse possible risks of misleading decisions and need to estimate and qu...
An intensive care unit mortality prediction model for the PhysioNet/Computing in Cardiology Challeng...
Deep learning is now ubiquitous in the research field of medical image computing. As such technologi...
In patients with major traumatic injuries, early intervention can be lifesaving. However, identifyin...
Deep learning (DL), which involves powerful black box predictors, has achieved a remarkable performa...
Patients in intensive care units (ICU) are acutely ill and have the highest mortality rates for hosp...
Clinical decision making is challenging because of pathological complexity, as well as large amounts...