Over and under-sedation are common in critically ill patients admitted to the Intensive Care Unit. Clinical assessments provide limited time resolution and are based on behavior rather than the brain itself. Existing brain monitors have been developed primarily for non-ICU settings. Here, we use a clinical dataset from 154 ICU patients in whom the Richmond Agitation-Sedation Score is assessed about every 2 hours. We develop a recurrent neural network (RNN) model to discriminate between deep vs. no sedation, trained end-to-end from raw EEG spectrograms without any feature extraction. We obtain an average area under the ROC of 0.8 on 10-fold cross validation across patients. Our RNN is able to provide reliable estimates of sedation levels con...
The reliable monitoring of the depth of anesthesia (DoA) is essential to control the anesthesia proc...
sedation by automatic classi®cation of EEG signals, using a scale ®rst used for visual evaluation of...
Assessing the integrity of neural functions in coma after cardiac arrest remains an open challenge. ...
Over and under-sedation are common in critically ill patients admitted to the Intensive Care Unit. C...
Over- and under-sedation are common in the ICU, and contribute to poor ICU outcomes including deliri...
In Intensive Care Unit, the sedation level of patients is usually monitored by periodically assessin...
Objective: To develop a personalizable algorithm to discriminate between sedation levels in ICU pati...
BACKGROUND: Sedation indicators based on a single quantitative EEG (QEEG) feature have been criticis...
Brain monitors which track quantitative electroencephalogram (EEG) signatures to monitor sedation le...
Objectives: Several sedation scores have been developed, but still a need exists for an objective me...
Background: The use of processed electroencephalography (pEEG) for depth of sedation (DOS) monitorin...
Background. Excessive sedation is associated with adverse patient outcomes during critical illness, ...
Objective: The burst suppression pattern in clinical electroencephalographic (EEG) recordings is an ...
The reliable monitoring of the depth of anesthesia (DoA) is essential to control the anesthesia proc...
sedation by automatic classi®cation of EEG signals, using a scale ®rst used for visual evaluation of...
Assessing the integrity of neural functions in coma after cardiac arrest remains an open challenge. ...
Over and under-sedation are common in critically ill patients admitted to the Intensive Care Unit. C...
Over- and under-sedation are common in the ICU, and contribute to poor ICU outcomes including deliri...
In Intensive Care Unit, the sedation level of patients is usually monitored by periodically assessin...
Objective: To develop a personalizable algorithm to discriminate between sedation levels in ICU pati...
BACKGROUND: Sedation indicators based on a single quantitative EEG (QEEG) feature have been criticis...
Brain monitors which track quantitative electroencephalogram (EEG) signatures to monitor sedation le...
Objectives: Several sedation scores have been developed, but still a need exists for an objective me...
Background: The use of processed electroencephalography (pEEG) for depth of sedation (DOS) monitorin...
Background. Excessive sedation is associated with adverse patient outcomes during critical illness, ...
Objective: The burst suppression pattern in clinical electroencephalographic (EEG) recordings is an ...
The reliable monitoring of the depth of anesthesia (DoA) is essential to control the anesthesia proc...
sedation by automatic classi®cation of EEG signals, using a scale ®rst used for visual evaluation of...
Assessing the integrity of neural functions in coma after cardiac arrest remains an open challenge. ...