Automatic Sleep-Arousal Detection with Single-Lead EEG Using Stacking Ensemble Learning.
Ying-Ren ChienCheng-Hsuan WuHen-Wai TsaoPublished in: Sensors (Basel, Switzerland) (2021)
Poor-quality sleep substantially diminishes the overall quality of life. It has been shown that sleep arousal serves as a good indicator for scoring sleep quality. However, patients are conventionally asked to perform overnight polysomnography tests to collect their physiological data, which are used for the manual judging of sleep arousals. Even worse, not only is this process time-consuming and cumbersome, the judgment of sleep-arousal events is subjective and differs widely from expert to expert. Therefore, this work focuses on designing an automatic sleep-arousal detector that necessitates only a single-lead electroencephalogram signal. Based on the stacking ensemble learning framework, the automatic sleep-arousal detector adopts a meta-classifier that stacks four sub-models: one-dimensional convolutional neural networks, recurrent neural networks, merged convolutional and recurrent networks, and random forest classifiers. This meta-classifier exploits both advantages from deep learning networks and conventional machine learning algorithms to enhance its performance. The embedded information for discriminating the sleep-arousals is extracted from waveform sequences, spectrum characteristics, and expert-defined statistics in single-lead EEG signals. Its effectiveness is evaluated using an open-accessed database, which comprises polysomnograms of 994 individuals, provided by PhysioNet. The improvement of the stacking ensemble learning over a single sub-model was up to 9.29%, 7.79%, 11.03%, 8.61% and 9.04%, respectively, in terms of specificity, sensitivity, precision, accuracy, and area under the receiver operating characteristic curve.
Keyphrases
- sleep quality
- deep learning
- neural network
- machine learning
- convolutional neural network
- physical activity
- depressive symptoms
- artificial intelligence
- emergency department
- clinical practice
- computed tomography
- magnetic resonance imaging
- newly diagnosed
- working memory
- obstructive sleep apnea
- prognostic factors
- electronic health record
- sleep apnea
- resting state
- social media
- real time pcr