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Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

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Page 1: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Clinical Applications ofSpectral Analysis

Winni Hofman, PhD

University of Amsterdam

Medcare Amsterdam

Page 2: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

• Introduction of spectrum calculations

• Spectra and sleep staging• Spectral analysis for differentiating various

night patterns• Spectral analysis and arousals• Frequency analysis of snoring

Outline

4 Examples of applications of Spectral Analysis

Page 3: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Spectral Analysis is a tool to:• Quantify the frequency content of

signals, like EEG or snore signal, for further calculations

• Help you with your manual sleep stage scoring

• Detect problems in the recording, e.g. 60 Hz noise

Page 4: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Frequency content of a signal

EEG frequency bands:Beta - > 12 Hz

Sigma - 12 – 14 Hz

Alpha - 8 – 12 Hz

Theta - 4 – 7 Hz

Delta - 0.5 – 4 Hz

Page 5: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Frequency content of a signalR&K definition of sleep EEG:

• Stage 1: Relatively low voltage, mixed frequency EEG in 2 – 7 cps range without rapid eye movements

• Stage 2: 12-14 cps sleep spindles and K complexes on a background of relatively low voltage, mixed frequency EEG

• Stage 3: 20%-50% of high amplitude, slow wave activity

• Etc…….

Page 6: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Complex signals

• Signals like the EEG are complex signals, existing of many superimposed waveforms with:– Various frequencies– Various amplitudes– Various phase relationships

Page 7: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Describing frequency content of a signal

Sine waves are used for description because they can be defined exactly by their:

– Frequency– Amplitude– Phase

Page 8: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Sine wave

Page 9: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Cosine wave

1 cycle

Page 10: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Spectral Analysis describes a signal:

• By calculating the contributions of the various superimposed frequency components

• Shows these contributions in a Power Spectrum plot

Page 11: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Spectral analysis and Sleep Stages

• Differences in frequencies between sleep stages are visible in a Power Spectrum

Page 12: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

R&K definition of stage Wake:

• Wake: alpha activity and/or low voltage, mixed frequency activity

Page 13: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

WakeAlpha peak

Page 14: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

R&K definition of stage 2:

• Stage 2: 12-14 cps sleep spindles and K complexes on a background of relatively low voltage, mixed frequency EEG

Page 15: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Stage 2

Theta peak

Alpha peak

Page 16: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

R&K definition of stage 4:

• Stage 4: > 50% of high amplitude, slow wave activity

Page 17: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Stage 4

Delta peak

Page 18: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

R&K definition of stage REM:

• Stage REM: a relatively low voltage, mixed frequency EEG (in conjunction with episodic REMs and low amplitude EMG)

Page 19: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Stage REM

Theta peak

Page 20: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Delta waves with superimposed alpha

Page 21: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Power spectrum S4 with alpha

Page 22: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Spectral colour plot

• Shows changes in frequency content of a signal over longer time period (for example a whole night)

– Colour: power– Y-axis: frequency– X-axis: time

• Each point in time in the Spectral colour plot represents a power spectrum of a 30 sec epoch

Page 23: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Spectral analysis and various sleep patterns

• Changes over time in the distribution of the various frequencies follows changes in sleep pattern:– Rhythmicity in delta sleep– REM sleep periodicity– Periods of wakefullness

Page 24: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Delta activity

Low voltage mixed frequency in REM sleep 50 Hz notch

filter

Page 25: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Transition to stage Wake

Page 26: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Delta

Alpha

Page 27: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Normal sleep pattern

Page 28: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Insomnia sleep pattern

Page 29: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

CPAP titration

Sleep pattern during CPAP titration

Page 30: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Heinzer et al., Chest 2002

Page 31: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Spectral analysis and arousal(Black et al., Am.J.Respir.Crit.CareMed., 2000)

• Apnea can be followed by arousal

• Micro-arousals are often not visually recognized as arousals according to ASDA criteria

• Spectral analysis can give more insight into EEG alterations occurring after an apnea

Page 32: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Arousal and Eso

Black et al., 20.., Chest

Page 33: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Arousal and Eso

Black et al., 2000, Am.J.Respir.Crit.CareMed.

Page 34: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Arousal and Eso

Black et al., 2000, Am.J.Respir.Crit.CareMed.

Page 35: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Arousal and Eso

Black et al., 2000, Am.J.Respir.Crit.CareMed.

Page 36: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Spectral analysis of snore sounds

• Differences in frequency content of snoring sounds might be clinically important (high versus low frequency)

Page 37: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Snores with high frequency sound vibrations

Page 38: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Snores with low frequency sound vibrations

Page 39: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

High frequency snore sound vibrations

Page 40: Clinical Applications of Spectral Analysis Winni Hofman, PhD University of Amsterdam Medcare Amsterdam

Low frequency snore sound vibrations