[Abstract] Fragmented sleep is commonly caused by arousals that can be detected with the observation of electroencephalographic (EEG) signals. As this is a time consuming task, automatization processes are required. A method using signal processing and machine learning models, for arousal detection, is presented. Relevant events are identified in the EEG signals and in the electromyography, during the signal processing phase. After discarding those events that do not meet the required characteristics, the resulting set is used to extract multiple parameters. Several machine learning models — Fisher’s Linear Discriminant, Artificial Neural Networks and Support Vector Machines — are fed with these parameters. The final proposed mode...
The present thesis discusses advanced polysomnogram signal processing approaches to perform computer...
Tiredness and fatigue can often lead to brief instances of people falling asleep while engaged in ...
Quantitative electroencephalogram analysis (e.g. spectral analysis) has become an important tool in ...
Sleep arousals are sudden awakenings from sleep which can be identified as an abrupt shift in EEG fr...
In sleep electroencephalographic (EEG) signals, artifacts and arousals marking are usually part of t...
Arousals during sleep are transient accelerations of the EEG signal typically detected by visual ins...
Traditionally EEG sleep fragmentation is scored according to simple arbitrary thresholds which ignor...
Foremost sleep event is the sudden change of sleep stages, mainly from deep sleep to light sleep. Th...
International audienceElectroencephalography (EEG) during sleep is used by clinicians to evaluate va...
Ph.D. University of Hawaii at Manoa 2010.Includes bibliographical references.Introduction: Cortical ...
Background and Aim: Monitoring physiological signals during sleep can have substantial impact on det...
Background and Aim: Monitoring physiological signals during sleep can have substantial impact on det...
ABSTRACT OBJECTIVES: Polysomnography is the gold standard for investigating noise effects on sleep, ...
ObjectiveSignificant interscorer variability is found in manual scoring of arousals in polysomnograp...
International audienceBackground: Electroencephalography (EEG) monitors brain activity during ...
The present thesis discusses advanced polysomnogram signal processing approaches to perform computer...
Tiredness and fatigue can often lead to brief instances of people falling asleep while engaged in ...
Quantitative electroencephalogram analysis (e.g. spectral analysis) has become an important tool in ...
Sleep arousals are sudden awakenings from sleep which can be identified as an abrupt shift in EEG fr...
In sleep electroencephalographic (EEG) signals, artifacts and arousals marking are usually part of t...
Arousals during sleep are transient accelerations of the EEG signal typically detected by visual ins...
Traditionally EEG sleep fragmentation is scored according to simple arbitrary thresholds which ignor...
Foremost sleep event is the sudden change of sleep stages, mainly from deep sleep to light sleep. Th...
International audienceElectroencephalography (EEG) during sleep is used by clinicians to evaluate va...
Ph.D. University of Hawaii at Manoa 2010.Includes bibliographical references.Introduction: Cortical ...
Background and Aim: Monitoring physiological signals during sleep can have substantial impact on det...
Background and Aim: Monitoring physiological signals during sleep can have substantial impact on det...
ABSTRACT OBJECTIVES: Polysomnography is the gold standard for investigating noise effects on sleep, ...
ObjectiveSignificant interscorer variability is found in manual scoring of arousals in polysomnograp...
International audienceBackground: Electroencephalography (EEG) monitors brain activity during ...
The present thesis discusses advanced polysomnogram signal processing approaches to perform computer...
Tiredness and fatigue can often lead to brief instances of people falling asleep while engaged in ...
Quantitative electroencephalogram analysis (e.g. spectral analysis) has become an important tool in ...