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Electromyography: Processing

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Electromyography: Processing D. Gordon E. Robertson, PhD, FCSB Biomechanics Laboratory, School of Human Kinetics, University of Ottawa, Ottawa, Canada – PowerPoint PPT presentation

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Title: Electromyography: Processing


1
Electromyography Processing
  • D. Gordon E. Robertson, PhD, FCSB
  • Biomechanics Laboratory,
  • School of Human Kinetics,
  • University of Ottawa, Ottawa, Canada

2
Types of Signal Processing
  • Raw (with or without band-pass filtering)
  • Full-wave rectified (absolute value)
  • Averaged or root-mean-square (RMS)
  • Linear envelope
  • Ensemble-averaged
  • Integrated EMG (iEMG)
  • Frequency or power spectrum (Fourier)
  • Fatigue analysis (sequential Fourier)
  • Amplitude probability distribution function
    (APDF) and CAPDF
  • Conduction velocity
  • Wavelet transform

3
Raw EMG
  • wide frequency spectrum (20-500 Hz)
  • most complete information
  • needs 1000 Hz or greater sampling rates
  • requires large memory storage
  • difficult to determine levels of contraction
  • bursts of activity and onset times may be
    determined from this signal
  • best for examining problems with recording
  • following slides show some errors that can be
    detected from the raw signal

4
Errors when Recording EMGs
  • clean signal
  • ECG crosstalk

5
ECG Crosstalk
  • ECG crosstalk occurs when recording near the
    heart (ECG has higher voltages then EMG)
  • EEG crosstalk when near scalp (rare)
  • difficult to resolve
  • use right side of body (away from heart)
  • move electrodes as far away from heart as
    possible
  • signal averaging (average many trials)
  • indwelling electrodes

6
Muscle Crosstalk
  • one muscles EMG is picked up by another muscles
    electrodes
  • can be reduced by careful electrode positioning
    or double differential amplifier
  • can be determined by cross-correlation
  • difficult to distinguish crosstalk from
    synergistic contractions, however, biarticular
    muscles have extra bursts of activity compared
    to monoarticular muscles (thus crosstalk is not a
    problem)

7
Errors when Recording EMGs
  • line (AC) interference
  • DC-offset or DC-bias

8
Solutions
  • To interference (line AC and radio frequency RF
    etc.)
  • Keep away from fluorescent lighting
  • Keep away from large electrical devices and power
    cords (especially leads and cabling)
  • Use room lined with grounded conductive material
  • Keep leads short and braided (vs. radio)
  • Use preamplified electrodes (signal is stronger)
  • Use extremely narrow notch filter in post
    processing (e.g., 59.5-60.5 Hz)
  • For DC-offsets (telemetry systems often have
    DC-offsets)
  • Use a good ground electrode over electrically
    neutral area
  • Use high-pass filter (510 Hz) to remove in
    post-processing

9
Errors when Recording EMGs
  • movement artifact
  • amplifier saturation (/0.5 V)

10
Solutions
  • To movement artifacts
  • Affix leads to subject (tape, wrap, webbing)
  • Prevent electrodes from being struck (use lateral
    muscles)
  • Avoid rapid motions
  • Use strong high-pass filter in post-processing
  • Amplifier saturation
  • Test with maximal contractions before recording
  • Reduce gain if peaks and valleys top out or
    bottom out
  • Use larger range A/D converter (/10 V vs. /5
    V)

11
Full-wave Rectified EMG
  • same as taking the absolute value of the raw
    signal
  • mainly used as an intermediate step before
    another process (e.g., averaging, linear
    envelope, and integration)
  • can be done electronically in real-time

12
Sample EMGs
  • raw EMG (band-passed filtered, 20-500 Hz)
  • full-wave rectified

13
Averaged EMG
  • simple to compute
  • can be done in real-time
  • averaged EMG is a moving average of a
    full-wave rectified EMG
  • must select an appropriate window width that
    changes with sampling rate
  • easy for determining levels of contraction

14
Sample Averaged EMG
  • raw EMG (1010 Hz sampling rate)
  • averaged EMG (moving average, 51 points)

15
Linear Envelope EMG
  • requires two-step process full-wave
    rectification followed by low-pass filter (4-10
    Hz cutoff)
  • can be done electronically (but adds a delay)
  • reduces frequency content of EMG and thus lowers
    sampling rates (e.g., 100 Hz) and memory storage
  • easy to interpret and to detect onset of activity
  • can be ensemble-averaged to obtain patterns
  • difficult to detect artifacts
  • useful as a control (myoelectric) signal

16
Sample LE-EMG
  • raw (band-passed filtered) EMG
  • linear envelope EMG (cutoff 4 Hz)

17
Ensemble-Averaged EMG
  • usually applied to cyclic activities and linear
    envelope EMGs
  • requires method for identifying start of a cycle
    or start and end of an activity
  • foot switches or force platforms can be used for
    gait studies
  • microswitches, optoelectric, or electromagnetic
    sensors for other activities
  • can also use a threshold detector of a kinematic
    or EMG channel
  • each cycle of activity must be time normalized

18
Ensemble-Averaged EMG contd
  • amplitude normalization is often done
  • to maximal voluntary contraction (MVC)
  • to submaximal isometric contraction
  • to EMG of a functional activity (e.g., holding a
    load)
  • mean and standard deviations for each proportion
    of cycle are computed
  • mean and s.d. or 95 confidence interval may be
    presented to show representative contraction
    during activity cycle
  • easier to make comparisons among subjects
  • grand ensemble-averages (average of averages)
    for comparisons among several experimental
    conditions

19
Ensemble-Averages from Squat Lift
20
Integrated EMG (iEMG)
  • important for quantitative EMG relationships (EMG
    vs. force, EMG vs. work)
  • best measure of the total muscular effort
  • useful for quantifying activity for ergonomic
    research
  • various methods
  • mathematical integration (area under absolute
    values of EMG time series)
  • root-mean-square (RMS) times duration is similar
    but does not require taking absolute values
  • electronically (see next page)

21
Electronically Integrated EMG
  • always requires full-wave rectification
  • various methods
  • simple time integration (eventually saturates
    amplifier)
  • integration and reset after a fixed time interval
  • integration and reset after a particular value is
    reached
  • cannot recognize artifacts, noise become included
  • especially important to first remove DC-offsets
  • must compute amount of iEMG from amplitude or
    differences between 2 amplitudes

22
Sample Integrated EMG
  • raw (band-passed filtered) EMG
  • integrated EMG (over contraction)

23
Other iEMGs
  • integrate after preset time (0.1 s)
  • integrate after preset voltage (20 mV.s)

24
Frequency Spectrum
  • useful for determining onset of muscle fatigue
  • mean or median frequency of spectrum in
    unfatigued muscle is usually between 5080 Hz
  • as fatigue progresses fast-twitch fibres drop
    out, shifting frequency spectrum to left
    (lowering mean and median frequencies)
  • mean frequency is less variable and therefore is
    better than median
  • useful for detecting neural abnormalities

25
Sample Power Spectrum
  • flexor digitorum longus (MVC)

26
Fatigue Analysis
  • essentially a series of frequency analyses
  • select duration of window (1 to 5 s)
  • can overlap intervals to increase resolution
  • usually normalized to percentage of initial mean
    or median frequency
  • mean frequencies are less variable than median
  • need to decide a threshold for when fatigue
    occurs (i.e., fatigue has occurred when mean or
    median frequency is below a threshold)

27
Sample Fatigue Analysis
  • erector spinae over 60 seconds (50 overlap)

28
Amplitude Probability Distribution Function (APDF
CAPDF)
  • developed by Hagberg Jonsson for ergonomics
    research (Ergonomics, 18311-319)
  • EMG is amplitude normalized to MVC then sampled
    to compute frequencies of various amplitudes,
    usually for long durations (hours)
  • Cumulative APDF is calculated to compute three
    thresholds
  • 10tile lt 25 MVC for level of rest
  • 50tile lt 1014 MVC for work load
  • 90tile lt 5070 MVC for heavy contractions

29
Sample APDF CAPDF
  • neck flexor (only 5 minutes)

30
Muscle Fibre Conduction Velocity
  • requires two amplifiers and three electrodes
  • electrodes are arranged in a line over a known
    distance (15 mm)
  • middle electrode connected as ground to both
    amplifiers
  • divide distance between electrodes by time
    difference between similar peaks (Andreassen
    Arendt-Neilsen, J Physiology, 319561-71, 1987)

31
Wavelet Analysis
  • decomposition of EMG time series into a
    time-frequency space, to determine the dominant
    modes of variability and their temporal changes
  • figure shows EMG signal and
  • its wavelet transform (SIMI)
  • used to de-noise EMG signals,
  • to detect fatigue and for feature
  • extraction

32
Other Techniques
  • auto-correlation (correlate signal with itself
    shifted in time, gives signal characteristics)
  • cross-correlation (correlate signal with another
    EMG signal, tests for crosstalk)
  • zero-crossings (the more crossings the greater
    the level of recruitment)
  • spike (peak) counting (number of spikes above a
    threshold)
  • single motor unit detection
  • double differential amplifier (velocity of
    propagation)
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