Towards a Simplified Estimation of Muscle Activation Pattern from MRI and EMG Using Electrical Network and Graph Theory

Muscle functional MRI (mfMRI) is an imaging technique that assess muscles’ activity, exploiting a shift in the T2-relaxation time between resting and active state on muscles. It is accompanied by the use of electromyography (EMG) to have a better understanding of the muscle electrophysiology; however, a technique merging MRI and EMG information has not been defined yet. In this paper, we present an anatomical and quantitative evaluation of a method our group recently introduced to quantify its validity in terms of muscle pattern estimation for four subjects during four isometric tasks. Muscle activation pattern are estimated using a resistive network to model the morphology in the MRI. An inverse problem is solved from sEMG data to assess muscle activation. The results have been validated with a comparison with physiological information and with the fitting on the electrodes space. On average, over 90% of the input sEMG information was able to be explained with the estimated muscle patterns. There is a match with anatomical information, even if a strong subjectivity is observed among subjects. With this paper we want to proof the method’s validity showing its potential in diagnostic and rehabilitation fields.

[1]  S. Gandevia Spinal and supraspinal factors in human muscle fatigue. , 2001, Physiological reviews.

[2]  N Shiba,et al.  Functional evaluation of hip abductor muscles with use of magnetic resonance imaging , 1997, Journal of orthopaedic research : official publication of the Orthopaedic Research Society.

[3]  G. Dudley,et al.  Magnetic resonance imaging and electromyography as indexes of muscle function. , 1992, Journal of applied physiology.

[4]  Ellen Deschepper,et al.  Magnetic Resonance Imaging and Electromyography to Measure Lumbar Back Muscle Activity , 2010, Spine.

[5]  O. Lippold,et al.  The relation between force and integrated electrical activity in fatigued muscle , 1956, The Journal of physiology.

[6]  M. Naeije,et al.  Relation between EMG power spectrum shifts and muscle fibre action potential conduction velocity changes during local muscular fatigue in man , 1982, European Journal of Applied Physiology and Occupational Physiology.

[7]  Brian C Clark,et al.  The Use of Magnetic Resonance Imaging to Evaluate Lumbar Muscle Activity During Trunk Extension Exercise at Varying Intensities , 2005, Spine.

[8]  Michael K Drew,et al.  Normative MRI, ultrasound and muscle functional MRI findings in the forearms of asymptomatic elite rowers. , 2016, Journal of science and medicine in sport.

[9]  Ryuta Kinugasa,et al.  Neuromuscular activation of triceps surae using muscle functional MRI and EMG. , 2005, Medicine and science in sports and exercise.

[10]  D. Farina,et al.  Estimating motor unit discharge patterns from high-density surface electromyogram , 2009, Clinical Neurophysiology.

[11]  A Vleeming,et al.  Muscle functional MRI analysis of trunk muscle recruitment during extension exercises in asymptomatic individuals , 2015, Scandinavian journal of medicine & science in sports.

[12]  Shaun O'Leary,et al.  Muscle functional MRI as an imaging tool to evaluate muscle activity. , 2011, The Journal of orthopaedic and sports physical therapy.

[13]  P. Madeleine,et al.  Inter‐subject variability of muscle synergies during bench press in power lifters and untrained individuals , 2015, Scandinavian journal of medicine & science in sports.

[14]  Jun Ota,et al.  Source separation and localization of individual superficial forearm extensor muscles using high-density surface electromyography , 2016, 2016 International Symposium on Micro-NanoMechatronics and Human Science (MHS).

[15]  Kirby G. Vosburgh,et al.  3D Slicer: A Platform for Subject-Specific Image Analysis, Visualization, and Clinical Support , 2014 .

[16]  Kevin W Eliceiri,et al.  NIH Image to ImageJ: 25 years of image analysis , 2012, Nature Methods.

[17]  Todd A. Kuiken,et al.  Volume conduction in an anatomically based surface EMG model , 2004, IEEE Transactions on Biomedical Engineering.

[18]  John C Gore,et al.  Comparison of MRI with EMG to study muscle activity associated with dynamic plantar flexion. , 2003, Magnetic resonance imaging.

[19]  Francesco Bullo,et al.  Electrical Networks and Algebraic Graph Theory: Models, Properties, and Applications , 2018, Proceedings of the IEEE.

[20]  T. Fukunaga,et al.  Muscle volume is a major determinant of joint torque in humans. , 2001, Acta physiologica Scandinavica.

[21]  D. Farina,et al.  Accurate identification of motor unit discharge patterns from high-density surface EMG and validation with a novel signal-based performance metric , 2014, Journal of neural engineering.

[22]  J. Ota,et al.  A Simple Method to Estimate Muscle Currents from HD-sEMG and MRI using Electrical Network and Graph Theory * , 2019, 2019 41st Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).

[23]  David Bendahan,et al.  Heterogeneity of muscle recruitment pattern during pedaling in professional road cyclists: a magnetic resonance imaging and electromyography study , 2004, European Journal of Applied Physiology.

[24]  W. Maclennan,et al.  The Locomotor System , 1984 .

[25]  Berthold K. P. Horn,et al.  Closed-form solution of absolute orientation using unit quaternions , 1987 .

[26]  M. Duarte,et al.  On the inter- and intra-subject variability of the electromyographic signal in isometric contractions. , 2000, Electromyography and clinical neurophysiology.

[27]  B. Vicenzino,et al.  Intrinsic foot muscle atrophy in individuals with chronic plantar heel pain: a cross-sectional investigation using ultrasound imaging , 2019, Journal of Science and Medicine in Sport.

[28]  T Moritani,et al.  Electromyographic manifestations of muscular fatigue. , 1982, Medicine and science in sports and exercise.

[29]  Saran Keeratihattayakorn,et al.  An EMG-CT method using multiple surface electrodes in the forearm. , 2014, Journal of electromyography and kinesiology : official journal of the International Society of Electrophysiological Kinesiology.

[30]  J. Ota,et al.  Estimating Deep Muscles Activation from High Density Surface EMG Using Graph Theory , 2019, 2019 IEEE 16th International Conference on Rehabilitation Robotics (ICORR).

[31]  Tine Willems,et al.  Lumbar muscle structure and function in chronic versus recurrent low back pain: a cross-sectional study. , 2017, The spine journal : official journal of the North American Spine Society.

[32]  Barbara Cagnie,et al.  The influence of induced shoulder muscle pain on rotator cuff and scapulothoracic muscle activity during elevation of the arm. , 2017, Journal of shoulder and elbow surgery.

[33]  Roberto Merletti,et al.  Technology and instrumentation for detection and conditioning of the surface electromyographic signal: state of the art. , 2009, Clinical biomechanics.

[34]  Dario Farina,et al.  Decoding the neural drive to muscles from the surface electromyogram , 2010, Clinical Neurophysiology.

[35]  Susan A Saliba,et al.  Ultrasound Assessment of the Transverse Abdominis During Functional Movement , 2018, Journal of ultrasound in medicine : official journal of the American Institute of Ultrasound in Medicine.

[36]  P A Tesch,et al.  Individual Muscle use in Hamstring Exercises by Soccer Players Assessed using Functional MRI , 2016, International Journal of Sports Medicine.