The credibility of threshold-based alarms in anesthesia monitors is low and most of the warnings they produce are not informative. This study aims to show that Machine Learning techniques have a potential to generate meaningful alarms during general anesthesia without putting constraints on the type of procedure. Two distinct approaches were tested - Complication Detection and Anomaly Detection. The former is a generic supervised learning problem and for this a simple feed-forward Neural Network performed best. For the latter, we used an Encoder-Decoder Long Short-Term Memory architecture that does not require a large manually-labeled dataset. We show this approach to be more flexible and in the spirit of Explainable Artificial Intelligence...
Abstract. The growing availability of measurement devices in the op-erating room enables the collect...
Despite the common use of anesthetics to modulate consciousness in the clinic, brain-based monitorin...
Treballs Finals de Grau d'Enginyeria Biomèdica. Facultat de Medicina i Ciències de la Salut. Univers...
The credibility of threshold-based alarms in anesthesia monitors is low and most of the warnings the...
The credibility of threshold-based alarms in anesthesia monitors is low and most of the warnings the...
The credibility of threshold-based alarms in anesthesia monitors is low and most of the warnings the...
This project considers the need to use machine learning for supporting anaesthesiologists to predict...
Machine learning (ML) is revolutionizing anesthesiology research. Unlike classical research methods ...
This thesis focused on the application of artificial intelligence techniques in the field ofanesthes...
International audienceEvery year, millions of patients regain consciousness during surgery and can p...
Background: Machine learning (ML) is developing fast with promising prospects within medicine and al...
This research study investigates the potential of machine learning techniques to improve healthcare ...
Funding Information: This research was funded by the Flanders Innovation and Entrepreneurship Fund, ...
Physiologic data from anesthesia monitors are automatically captured. Yet erroneous data are stored ...
Background: Intraoperative awareness with explicit recall (AWR) is a feared complication of surgery ...
Abstract. The growing availability of measurement devices in the op-erating room enables the collect...
Despite the common use of anesthetics to modulate consciousness in the clinic, brain-based monitorin...
Treballs Finals de Grau d'Enginyeria Biomèdica. Facultat de Medicina i Ciències de la Salut. Univers...
The credibility of threshold-based alarms in anesthesia monitors is low and most of the warnings the...
The credibility of threshold-based alarms in anesthesia monitors is low and most of the warnings the...
The credibility of threshold-based alarms in anesthesia monitors is low and most of the warnings the...
This project considers the need to use machine learning for supporting anaesthesiologists to predict...
Machine learning (ML) is revolutionizing anesthesiology research. Unlike classical research methods ...
This thesis focused on the application of artificial intelligence techniques in the field ofanesthes...
International audienceEvery year, millions of patients regain consciousness during surgery and can p...
Background: Machine learning (ML) is developing fast with promising prospects within medicine and al...
This research study investigates the potential of machine learning techniques to improve healthcare ...
Funding Information: This research was funded by the Flanders Innovation and Entrepreneurship Fund, ...
Physiologic data from anesthesia monitors are automatically captured. Yet erroneous data are stored ...
Background: Intraoperative awareness with explicit recall (AWR) is a feared complication of surgery ...
Abstract. The growing availability of measurement devices in the op-erating room enables the collect...
Despite the common use of anesthetics to modulate consciousness in the clinic, brain-based monitorin...
Treballs Finals de Grau d'Enginyeria Biomèdica. Facultat de Medicina i Ciències de la Salut. Univers...