Document Type : Technical note

Authors

1 Msc. Student, Department of Biomedical Engineering, Islamic Azad University of Mashhad, Iran

2 Assitant Professor, Department of Biomedical Engineering, Islamic Azad University of Mashhad, Iran

3 Assitant Professor, Faculty of Engineering, Islamic Azad University of Mashhad, Iran

10.22041/ijbme.2014.13293

Abstract

Multiple muscle groups may be activated simultaneously during the most of activities. So, the appropriate muscle coordination must be emerged during a normal activity. Consequaently, for rehabilitation of movements such as hand writing and paiting in patients for example suffering from carpal channel syndrom or incomplete spinal cord injury, the correct muscle coordination patterns between the finger muscles and wrist muscles must be reestablished. So, in this paper a prediction methodology based on artificial neural networks (ANN) is proposed to approximate the Thumb fingure extensor and flexor muscles desired activation pattern during the hand writing and Painting. In the presented strategy, A nonlinear auto-regressive neural network (NARX), Recurrent Neural Network (RNN), Radial Basis Function (RBF), Multy Layer Perceptron (MLP) and an Adaptive-network-based fuzzy inference system (ANFIS) are trained to forecast the Extensor pollicis longus and Flexor pollicis brevis muscles activity of one thumb finger of hand using Extensor carpi radialis brevis and Flexor carpi ulnaris muscles activity of forearm. Quantitative evaluations show the promising performance of developed neural networks. Eight healthy volunteers participated in the experiments.

Keywords

Main Subjects

[1]     س. احمدزاده، ح. کبروی. ع. شعیبی، ز. طالب زاده، "پیش­بینی الگوی سینرژی عضلات دست درگیر حرکت نوشتن با استفاده­از شبکه­های عصبی مصنوعی" اولین کنفرانس ملی مهندسی برق و کامپیوتر، 1391.
[2]     س. احمدزاده، ح. کبروی. س. طوسی­زاده، ز. طالب زاده. "شناسایی دینامیک فعّال­سازی عضلات بازکننده و جمع کننده انگشت شست هنگام عملکردهای حرکتی دست با شبکه­های عصبی مصنوعی" بیستمین کنفرانس بین­المللی مهندسی زیست پزشکی، 1392.
[3]     J. L. Lujan, P. E. Crago, “Computer-based test-bed for clinical assessment of hand/wrist feedforward     neuroprosthetic controllers using artificial neural networks” Medical & Biological Engineering & Computing Vol 42, pp 754-761,  2004.
[4]     C. Castellini P. V. D. Smag, “Preliminary evidence of dynamic muscular synergies in human  grasping” The 15th International Conference on Advanced Robotics pp 28-33, 2011.
[5]     M. Liu, T. Liu, and G. Wang “A Compact Representation of Handwriting Movements with Mixtures of Primitives” IEEE Proceeding 1629-1634, 2010.
[6]     Y. P. Ivanenko, R. E. Poppele, F. Lacquaniti, “Motor Control Programs and Walking” The Neuroscientist, A review, Vol 12, No 4, pp 339-348, 2006.
[7]     M. Chen, Q. B. Wang, X. X. Lou, K. Xu, X. X. Zheng, “A Foot Drop Correcting FES Envelope Design Method Using Tibialis Anterior EMG During Healthy Gait With A New Walking Speed Control Strategy” IEEE Proceeding pp 4906-4909,  2010.
[8]     H. Bezine, A. M. Alimi, N. Derbel, “Handwriting Trajectory Movements Controlled by a Bêta-Elliptic Model” IEEE Proceeding 2003.
[9]     E. Engeberg, M. Frankel, S. Meek, “Biomimetic Grip Force Compensation Based on Acceleration of a Prosthetic Wrist Under Sliding Mode Control” IEEE Proceeding 210-215, 2008.
[10] S. D. Iftime, L. L. Egsgaard, M. B. Popovic, “Automatic Determination of Synergies by Radial Basis Function Artificial Neural Networks for the Control of a Neural Prosthesis” IEEE Proceeding vol 13, pp 482-489, 2005.
[11] J. K. Shim, A. W. Hooke, Y. S. Kim, J. Park, S. Karol,  Y. H. Kim, “Hand writing: Hand pencontact for cesynergiesin circle drawing tasks” ELSEVIER vol 2249-2253, 2010.
[12] J. Li, Z. J. Wang, J. Eng, M. J. McKeown “Bayesian Network Modeling for Discovering “Dependent Synergies, Among Muscles in Reaching Movements” IEEE Proceeding, vol 55, pp 298-310, 2008.
[13] I. Chihi, C. Ghorbel, A. Abdelkrim, M. Benrejeb “Parametric identification of handwriting system based on RLS algorithm” Automation and Systems pp 1564-1569, 2011.
[14] B. Mijovic, M. B. Popovic D. B. Popovic, “Synergistic control of forearm based on accelerometer data and artificial neural networks” Brazilian Journal of Medical and Biological Research pp 389-397, 2008.
[15] S. B. Thies, P. Tresadern, L. Kenney, D. Howard, J. Y. Goulermas, C. Smith, J. Rigby, “Comparison of linear accelerations from three measurement systems during” Reach & Grasp, Medical Engineering & Physics pp 967-972, 2007.
[16] P. S. Thomas, M. S. Branicky, A. V. D. Bogert, K. Jagodnik, “FES Control of a Human Arm Using Reinforcement Learning” 2007.
[17] M. Popovic, D. Popovic, “Cloning Biological Synergies Improves Control of Elbow Neuroprostheses” IEEE Proceeding, pp 74-81, 2001.
[18] M. Borjkhani, F. Towhidkhah, “Modeling kinematic features of human handwriting using model predictive control” IEEE Proceeding, 2008.
[19] G. Huang, D. Zhang, X. Zheng, X. Zhu, “An EMG-based Handwriting Recognition through Dynamic Time Warping” IEEE Proceeding  2010.