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Analysis of Surface Electromyography
                           Parameters
                                         GUIDED BY
                                 Internal Guide: Ms. Latha
Assistant Professor (Sr. G), Department of Electronics and Communication Engineering,
                        Amrita School of Engineering, Bangalore
                             External Guide: Dr. A. S .Aravind
             Professor and Head, Department of Biomedical Engineering,
                              Institute of Aerospace Medicine

  Sreenivasan Meyyappan                                     BLENU4ECE08098
  Swathi Sivakumar                                          BLENU4ECE08102
  Varun Praveen                                             BLENU4ECE08110
  4/10/2012            Analysis of Surface EMG Parameters                           1
     The human body is an engineering marvel
     Biomedical research has lead to generation of enormous amount
      of information
     Engineers bring problem solving and quantitative skills to
      biomedical research
     Medical and engineering are diverse but Interdependent fields
     Engineering marvels like pacemaker, heart lung machine,
      dialysis machines etc

    4/10/2012          Analysis of Surface EMG Parameters             2
   Only a few bio - signals have been analyzed
   Electromyography (EMG) is an experimental technique
    concerned with the development, recording and analysis of
    myoelectric signals
   Francesco Redi experimented with Electric Eel
   Galvani found direct relation between muscle contraction and
    electricity
   Clinical use of Surface Electromyogram (sEMG) began only in
    1960’s
4/10/2012          Analysis of Surface EMG Parameters              3
   Two types of EMG
   sEMG has applications in sports training, treatment
    planning, performance enhancement etc.
   Shift of focus from manual to machine based analysis
   Our focus is to provide a quantitative solution to clinical
    sEMG analysis
   Hardware design for analysis of signal
   Software code as an aid for parameter extraction
   Standardization by SENIAM
4/10/2012           Analysis of Surface EMG Parameters            4
Phase 1
  Literature Review and understanding the hardware design aspects and signal
                                 processing



                                          Phase 2

            Design of hardware and understanding the bio-correlations




                                          Phase 3
                                    Signal Processing
4/10/2012             Analysis of Surface EMG Parameters                       5
4/10/2012   Analysis of Surface EMG Parameters   6
    Rodney A Rhoades, George A Tanner, “Medical
     Physiology”
    Peter Konrad, “ The ABC of EMG : A Practical
     Introduction to Kinesiological
     Electromyography”, Version 1.0 April 2005


4/10/2012      Analysis of Surface EMG Parameters   7
    For correct electrode placements on the muscle
     body
    To differentiate between Myopathic and
     Neuropathic disorders
     Understanding the bio- correlations



4/10/2012        Analysis of Surface EMG Parameters   8
Stuart Ira Fox, “Human Physiology”, 11th
     edition

4/10/2012              Analysis of Surface EMG Parameters   9
Stuart Ira Fox, “Human
                                                 Physiology”, 11th edition




4/10/2012   Analysis of Surface EMG Parameters                               10
4/10/2012   Analysis of Surface EMG Parameters   11
    Stochastic
    Superimposition of multiple Motor Unit Action
     Potentials
    Amplitude- 0-500µV
    Bandwidth- 0-4kHz
    Usable range- 10-500Hz
4/10/2012         Analysis of Surface EMG Parameters   12
    Peter Konrad, “ The ABC of EMG : A Practical Introduction to
     Kinesiological Electromyography”, Version 1.0 April 2005
    Dr. Roberto Merletti, Politecnico Di Torino, Italy, 1999
     “Standards for Reporting EMG data”, International Society
     of Electrophysiology and Kinesiology, 1999
    Bjorn Gerdle, Stefan Karlsson, Scott Day and Mats
     Djupsjobacka, “Acquisition, Processing and Analysis of
     Surface Electromyogram”, Chap. 26

4/10/2012          Analysis of Surface EMG Parameters               13
     To extract parameters of clinical importance from the sEMG
     Parameters analysed in time and frequency domain
     Time domain analysis
     Full wave rectification:

          absolute value of the signal samples

          removes negative spikes
     Parameters extracted
    ▪ Maximum peak

           Maximum potential attained by muscle

    ▪ Mean Rectified Value

           Average of the rectified signal
    4/10/2012               Analysis of Surface EMG Parameters     14
 Zero crossings

       gives the extent of muscle activity

       gives the number of Action Potentials generated

       based on Intermediate Mean Value Theorem(IMVT)

   Integrated sEMG

       gives the overall performance of the muscle

       based on peak amplitude and Interpolation


4/10/2012          Analysis of Surface EMG Parameters     15
    Gianluca De Luca, “ Fundamental Concepts in
     EMG Signal Acquisition”, Delsys, Revised 2.1,
     March 2003
    Bjorn Gerdle, Stefan Karlsson, Scott Day and
     Mats Djupsjobacka, “Acquisition, Processing and
     Analysis of Surface Electromyogram”, Chap. 26

4/10/2012       Analysis of Surface EMG Parameters     16
Signal Acquisition

    Aspects to be considered
     Factors affecting sEMG acquisition
     Sources of noise affecting sEMG
     Pre-acquisition procedures
     Acquisition Circuit


4/10/2012      Analysis of Surface EMG Parameters   17
Signal Acquisition

Factors Affecting sEMG acquisition
        Tissue Characteristics
        Physiological Cross talk
        Changes in muscle geometry
        Electrode selection
        Electrode Placement


4/10/2012         Analysis of Surface EMG Parameters   18
Signal Acquisition
  Sources of Noise affecting sEMG
         Power hum
         Inherent instability of the signal
         Motion artifacts
         Ambient noise
        ECG artifacts
         Electrode dependent noise

                   Analysis of Surface EMG Parameters   19
4/10/2012
Signal Acquisition
                        Acquisition Circuit


            Sensor          Highpass              Lowpass
                                                             ADC
             Input            filter                filter




                                           Driver
                                           Circuit

4/10/2012            Analysis of Surface EMG Parameters            20
Signal Acquisition
Sensor Input
 This stage consists of
       Electrodes (sensing element)
       Instrumentation amplifier
Electrodes
 Differential inputs are taken from
       Active Electrode
      Reference Electrode
 Picks up electric potentials at skin surface
 Converts ionic current to electrical voltage
4/10/2012           Analysis of Surface EMG Parameters   21
Signal Acquisition

Instrumentation Amplifier
 Amplifies differential input from electrodes
 Removes common mode noise
High pass Filter
Cut off frequency = 10Hz
 Gain = 10V/V
 Removes low frequency motion artifacts


4/10/2012          Analysis of Surface EMG Parameters   22
Signal Acquisition
Low pass filter
 Cut off frequency = 500Hz
 Gain = 100V/V
 Removes out electrode and equipment noise
Notch filters are avoided – loss of usable signal components
ADC
 Digitizing the analog sEMG input
 High bit resolution to depict more levels (16 bit)
 Sampling frequency > Nyquist frequency (>1000Hz)
 4/10/2012        Analysis of Surface EMG Parameters           23
Signal Acquisition
Driver Circuit
 Remove common mode noise
 Provide a proper baseline for the signal
 Prevent high frequency electrical signal from entering the subjects body
 Consists of
        Low pass filter (fc = 8kHz)
        Ground electrode
 Ground electrode features
        Fairly larger than active and reference
        Placed at electrically neutral sites

4/10/2012               Analysis of Surface EMG Parameters                   24
Hardware Front
  Choice of components

  Bread board implementation
  PCB construction

 Software Front
  Implementation of pre-conditioning techniques (SENIAM approved)

 Attempting sound analysis of sEMG
  Implementation and extraction of frequency domain analysis and
 remaining time domain parameters

  Validation on test subjects
4/10/2012             Analysis of Surface EMG Parameters             25
Timeline                           Module of Work to be Completed
  1st March 2012 – 23rd March 2012                Hardware design and construction
  26th March, 2012 – 13th April, 2012             Completion of software design and
                                                  parameter extraction
  16th April, 2012 – 30th April, 2012             Validation on test subject and
                                                  completion of report




4/10/2012             Analysis of Surface EMG Parameters                              26
    Gianluca De Luca, “ Fundamental Concepts in EMG Signal Acquisition”,
     Delsys, Revised 2.1, March 2003
    M.B.I Reaz, M.S. Hussain and F.Mohd-Yasin, “Techniques of EMG signal
     analysis: Detection, Processing, Classification and Applications” Biol.
     Proced. Online 2006;8(1):11-35, March 23, 2006
    Dr. Scott Day, “Important factors in Surface EMG Measurement”, Bortec
     Biomedical Ltd.
    Gary D Klasser, DMD; Jeffrey P Okeson, DMD, “The clinical usefulness of
     surface electromyography in the diagnosis and treatment of
     temporomandibular disorders”, American Dental Association, 2005

4/10/2012              Analysis of Surface EMG Parameters                      27
4/10/2012   Analysis of Surface EMG Parameters   28

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S emg t1_finalone

  • 1. Analysis of Surface Electromyography Parameters GUIDED BY Internal Guide: Ms. Latha Assistant Professor (Sr. G), Department of Electronics and Communication Engineering, Amrita School of Engineering, Bangalore External Guide: Dr. A. S .Aravind Professor and Head, Department of Biomedical Engineering, Institute of Aerospace Medicine Sreenivasan Meyyappan BLENU4ECE08098 Swathi Sivakumar BLENU4ECE08102 Varun Praveen BLENU4ECE08110 4/10/2012 Analysis of Surface EMG Parameters 1
  • 2. The human body is an engineering marvel  Biomedical research has lead to generation of enormous amount of information  Engineers bring problem solving and quantitative skills to biomedical research  Medical and engineering are diverse but Interdependent fields  Engineering marvels like pacemaker, heart lung machine, dialysis machines etc 4/10/2012 Analysis of Surface EMG Parameters 2
  • 3. Only a few bio - signals have been analyzed  Electromyography (EMG) is an experimental technique concerned with the development, recording and analysis of myoelectric signals  Francesco Redi experimented with Electric Eel  Galvani found direct relation between muscle contraction and electricity  Clinical use of Surface Electromyogram (sEMG) began only in 1960’s 4/10/2012 Analysis of Surface EMG Parameters 3
  • 4. Two types of EMG  sEMG has applications in sports training, treatment planning, performance enhancement etc.  Shift of focus from manual to machine based analysis  Our focus is to provide a quantitative solution to clinical sEMG analysis  Hardware design for analysis of signal  Software code as an aid for parameter extraction  Standardization by SENIAM 4/10/2012 Analysis of Surface EMG Parameters 4
  • 5. Phase 1 Literature Review and understanding the hardware design aspects and signal processing Phase 2 Design of hardware and understanding the bio-correlations Phase 3 Signal Processing 4/10/2012 Analysis of Surface EMG Parameters 5
  • 6. 4/10/2012 Analysis of Surface EMG Parameters 6
  • 7. Rodney A Rhoades, George A Tanner, “Medical Physiology”  Peter Konrad, “ The ABC of EMG : A Practical Introduction to Kinesiological Electromyography”, Version 1.0 April 2005 4/10/2012 Analysis of Surface EMG Parameters 7
  • 8. For correct electrode placements on the muscle body  To differentiate between Myopathic and Neuropathic disorders  Understanding the bio- correlations 4/10/2012 Analysis of Surface EMG Parameters 8
  • 9. Stuart Ira Fox, “Human Physiology”, 11th edition 4/10/2012 Analysis of Surface EMG Parameters 9
  • 10. Stuart Ira Fox, “Human Physiology”, 11th edition 4/10/2012 Analysis of Surface EMG Parameters 10
  • 11. 4/10/2012 Analysis of Surface EMG Parameters 11
  • 12. Stochastic  Superimposition of multiple Motor Unit Action Potentials  Amplitude- 0-500µV  Bandwidth- 0-4kHz  Usable range- 10-500Hz 4/10/2012 Analysis of Surface EMG Parameters 12
  • 13. Peter Konrad, “ The ABC of EMG : A Practical Introduction to Kinesiological Electromyography”, Version 1.0 April 2005  Dr. Roberto Merletti, Politecnico Di Torino, Italy, 1999 “Standards for Reporting EMG data”, International Society of Electrophysiology and Kinesiology, 1999  Bjorn Gerdle, Stefan Karlsson, Scott Day and Mats Djupsjobacka, “Acquisition, Processing and Analysis of Surface Electromyogram”, Chap. 26 4/10/2012 Analysis of Surface EMG Parameters 13
  • 14. To extract parameters of clinical importance from the sEMG  Parameters analysed in time and frequency domain  Time domain analysis  Full wave rectification:  absolute value of the signal samples  removes negative spikes  Parameters extracted ▪ Maximum peak  Maximum potential attained by muscle ▪ Mean Rectified Value  Average of the rectified signal 4/10/2012 Analysis of Surface EMG Parameters 14
  • 15.  Zero crossings  gives the extent of muscle activity  gives the number of Action Potentials generated  based on Intermediate Mean Value Theorem(IMVT)  Integrated sEMG  gives the overall performance of the muscle  based on peak amplitude and Interpolation 4/10/2012 Analysis of Surface EMG Parameters 15
  • 16. Gianluca De Luca, “ Fundamental Concepts in EMG Signal Acquisition”, Delsys, Revised 2.1, March 2003  Bjorn Gerdle, Stefan Karlsson, Scott Day and Mats Djupsjobacka, “Acquisition, Processing and Analysis of Surface Electromyogram”, Chap. 26 4/10/2012 Analysis of Surface EMG Parameters 16
  • 17. Signal Acquisition Aspects to be considered  Factors affecting sEMG acquisition  Sources of noise affecting sEMG  Pre-acquisition procedures  Acquisition Circuit 4/10/2012 Analysis of Surface EMG Parameters 17
  • 18. Signal Acquisition Factors Affecting sEMG acquisition  Tissue Characteristics  Physiological Cross talk  Changes in muscle geometry  Electrode selection  Electrode Placement 4/10/2012 Analysis of Surface EMG Parameters 18
  • 19. Signal Acquisition Sources of Noise affecting sEMG  Power hum  Inherent instability of the signal  Motion artifacts  Ambient noise ECG artifacts  Electrode dependent noise Analysis of Surface EMG Parameters 19 4/10/2012
  • 20. Signal Acquisition Acquisition Circuit Sensor Highpass Lowpass ADC Input filter filter Driver Circuit 4/10/2012 Analysis of Surface EMG Parameters 20
  • 21. Signal Acquisition Sensor Input  This stage consists of  Electrodes (sensing element)  Instrumentation amplifier Electrodes  Differential inputs are taken from  Active Electrode Reference Electrode  Picks up electric potentials at skin surface  Converts ionic current to electrical voltage 4/10/2012 Analysis of Surface EMG Parameters 21
  • 22. Signal Acquisition Instrumentation Amplifier  Amplifies differential input from electrodes  Removes common mode noise High pass Filter Cut off frequency = 10Hz  Gain = 10V/V  Removes low frequency motion artifacts 4/10/2012 Analysis of Surface EMG Parameters 22
  • 23. Signal Acquisition Low pass filter  Cut off frequency = 500Hz  Gain = 100V/V  Removes out electrode and equipment noise Notch filters are avoided – loss of usable signal components ADC  Digitizing the analog sEMG input  High bit resolution to depict more levels (16 bit)  Sampling frequency > Nyquist frequency (>1000Hz) 4/10/2012 Analysis of Surface EMG Parameters 23
  • 24. Signal Acquisition Driver Circuit  Remove common mode noise  Provide a proper baseline for the signal  Prevent high frequency electrical signal from entering the subjects body  Consists of  Low pass filter (fc = 8kHz)  Ground electrode  Ground electrode features  Fairly larger than active and reference  Placed at electrically neutral sites 4/10/2012 Analysis of Surface EMG Parameters 24
  • 25. Hardware Front  Choice of components  Bread board implementation  PCB construction Software Front  Implementation of pre-conditioning techniques (SENIAM approved) Attempting sound analysis of sEMG  Implementation and extraction of frequency domain analysis and remaining time domain parameters Validation on test subjects 4/10/2012 Analysis of Surface EMG Parameters 25
  • 26. Timeline Module of Work to be Completed 1st March 2012 – 23rd March 2012 Hardware design and construction 26th March, 2012 – 13th April, 2012 Completion of software design and parameter extraction 16th April, 2012 – 30th April, 2012 Validation on test subject and completion of report 4/10/2012 Analysis of Surface EMG Parameters 26
  • 27. Gianluca De Luca, “ Fundamental Concepts in EMG Signal Acquisition”, Delsys, Revised 2.1, March 2003  M.B.I Reaz, M.S. Hussain and F.Mohd-Yasin, “Techniques of EMG signal analysis: Detection, Processing, Classification and Applications” Biol. Proced. Online 2006;8(1):11-35, March 23, 2006  Dr. Scott Day, “Important factors in Surface EMG Measurement”, Bortec Biomedical Ltd.  Gary D Klasser, DMD; Jeffrey P Okeson, DMD, “The clinical usefulness of surface electromyography in the diagnosis and treatment of temporomandibular disorders”, American Dental Association, 2005 4/10/2012 Analysis of Surface EMG Parameters 27
  • 28. 4/10/2012 Analysis of Surface EMG Parameters 28