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Classification of Sleep EEG Václav Gerla (gerlav@fel. cvut
Classification of Sleep EEG Václav Gerla Gerstner laboratory, Department of Cybernetics Technická 2, Prague, Czech Republic Faculty of Electrical Engineering, Czech Technical University in Prague - Stages of Sleep - Sleep Disorders - Measuring Sleep in the Laboratory - Brain Wave Frequencies - Artifacts - Sleep stages analysis
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Stages of Sleep, Hypnogram
1. Wake (wakefulness, waking stage) 2. REM (Rapid Eye Movements) // dreams 3. NREM 1 (shallow/drowsy sleep) 4. NREM 2 (light sleep) 5. NREM 3 (deepening sleep) 6. NREM 4 (deepest sleep) Hypnogram:
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Sleep Disorders Headaches Insomnia (sleep - -)
- difficulty falling asleep - waking up frequently during the night - waking up too early in the morning - unrefreshing sleep Sleepiness (sleep + +) - fall asleep while driving - concentrating at work, school, or home - have difficulty remembering Restless Legs Syndrome - sensations of discomfort in the legs during periods of inactivity Narcolepsy - sudden and irresistible onsets of sleep during normal waking hours Sleep apnea REM sleep disorders
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Proportion of REM/NREM stages
% age (years) The decrease of NREM sleeping is caused partially by decrease of delta waves. (does not meet criteria for delta waves)
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Measuring Sleep in the Laboratory
Electroencephalogram (EEG): Measures electrical activity of the brain. Electrooculogram (EOG): Measures eye movements. An electrode placed near the eye will record a change in voltage as the eye moves. Electromyogram (EMG): Measures electrical activity of the muscles. In humans, sleep researchers usually record from under the chin, as this area undergoes dramatic changes during sleep.
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EEG signal example 19 EEG signals, EKG signal (+50 Hz artifact)
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Brain Wave Frequencies
Delta (0.1 to 3 Hz) deep / dreamless sleep, non-REM sleep Theta (4-8 Hz) connection with creativity, intuition, daydreaming, fantasizing Alpha (8-12 Hz) relaxation, mental work - thinking or calculating Beta (above 12 Hz) normal rhythm, absent or reduced in areas of cortical damage
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Binaural Beat Frequencies
Example of frequencies: // sporadic Hz - depression Hz - wakeful dreaming, vivid images 4-8 Hz - dreaming sleep, deep meditation, subconscious mind Hz - relaxation 5.8 Hz - dizziness 7 Hz - increased reaction time 7.83 Hz - earth resonance Hz - induces sleep, tingling sensations Hz - increased mental ability 18 Hz - significant improvements in memory 55 Hz - Tantric yoga LEFT EAR – 70Hz RIGHT EAR – 74Hz Binaural Beat 4Hz Brain Wave Generator:
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Stage Wake EEG: - rhythmic alpha waves (8-12Hz) // only if the eyes are closed - beta waves (20-30Hz) EOG: - eye movement (observation process) EMG: - continual tonically activity of muscles
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Stage REM EEG: - relatively low voltage - mixed frequency
EOG: - contains rapid eye movements EMG: - tonically suppressed (Sleep Paralysis)
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Stage NREM 1(shallow/drowsy sleep)
EEG: - the absence of alpha activity - Vertex sharp waves EOG: - slow eye movement EMG: - relatively lower amplitude
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Stage NREM 2 (light sleep)
EEG: - sleep spindles (oscillating with the frequency between Hz) - K-complexes (high voltage, sharp rising and sharp falling wave) - relatively low voltage mixed frequency EOG: - the absence eye movements EMG: - constant tonic activity
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Stage NREM 3 (deepening sleep)
EEG: - consists of high-voltage (>=75uV) - slow delta activity (<=2 Hz) // electrodes Fpz-Cz or Pz-Oz EOG: - the absence eye movement - delta waves from EEG EMG: - low tonic activities
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Stage NREM 4 (deepest sleep)
As NREM 3 + delta activity duration more than 50% for epoch
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Artifacts Muscle artifacts: Other artifacts: - ECG artifact
- Eye Flutter, slow and rapid eye movements - ECG artifact - Sweat artifact - Metal contact (touching metal during recording) - Salt Bridge (between two electrodes) - Static electricity artifact - Glossokinetic (movements of tongue)
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System Structure reduce data quantity (speeds up total computing time)
divide signal into 1 second segments compute mean power density in individual frequency bands for each segment
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Feature Extraction Hypnogram (rate by expert) 1Hz …………………………………………….
EEG (Fpz-Cz) 1Hz ……………………………………………. Power spectral density EEG (Pz-Oz) Spectrogram: 29 Hz
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Feature Normalization
The features contain great number of peaks -> normalization NREM4 stage detection: Wake stage detection:
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Decision Rules Searching suitable decision rules:
- convert all features of all patients to the Weka format. - Weka ( is a collection of machine learning algorithmus contains tools for data-preprocessing, classification, regression, clustering, association rules and visualization… The most significant found rules: EEG 16-30Hz > 20% EEG 0.5-3Hz > 85% EEG 0.5-3Hz > 65% WAKE S4 S3 EEG 13-15Hz < 15% and EOG Hz > 50% EEG 13-15Hz > 20% REM S2 EEG 13-15Hz > 10% S1 true false true false
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Markov models (utilization of time-dependence)
Aplication to segments which: - all rules are false - more rules are true Markov models use - contextual information in EEG signa - approximate knowledge of transitions probability
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Results Final classification accuracy approximately 80%
Problem with detection S1 stage
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