Feasibility of estimating isokinetic knee torque using a neural network model

被引:42
作者
Hahn, Michael E. [1 ]
机构
[1] Montana State Univ, Dept Hlth & Human Dev, Bozeman, MT 59717 USA
关键词
knee; electromyography; torque; neural networks; regression;
D O I
10.1016/j.jbiomech.2006.04.014
中图分类号
Q6 [生物物理学];
学科分类号
071011 ;
摘要
Many studies have investigated the relationships between electromyography (EMG) and torque production. A few investigators have used adjusted learning algorithms and feed-forward artificial neural networks (ANNs) to estimate joint torque in the elbow. This study sought to estimate net isokinetic knee torque using ANN models. Isokinetic knee extensor and flexor torque data were measured simultaneously with agonist and antagonist EMG during concentric and eccentric contractions at joint velocities of 30 degrees/s and 60 degrees/s. Age, gender, height, body mass, agonist EMG, antagonist EMG, joint position and joint velocity were entered as predictive variables of net torque. A three-layer ANN model was developed and trained using an adjusted back-propagation algorithm. Accuracy results were compared against those of forward stepwise regression models. Stepwise regression models included body mass, body height and joint position as the most influential predictors, followed by agonist EMG for concentric and eccentric contractions. Estimation of eccentric torque included antagonist EMG following the agonist activation. ANN models resulted in more accurate torque estimation (R = 0.96), compared to the stepwise regression models (R = 0.71). ANN model accuracy increased greatly when the number of hidden units increased from 5 to 10, continuing to increase gradually with additional hidden units. The average number of training epochs necessary for solution convergence and the relative accuracy of the model indicate a strong ability for the ANN model to generalize these estimations to a broader sample. The ANN model appears to be a feasible technique for estimating joint torque in the knee. (c) 2006 Elsevier Ltd. All rights reserved.
引用
收藏
页码:1107 / 1114
页数:8
相关论文
共 23 条
[1]   A machine learning approach for automated recognition of movement patterns using basic, kinetic and kinematic gait data [J].
Begg, R ;
Kamruzzaman, J .
JOURNAL OF BIOMECHANICS, 2005, 38 (03) :401-408
[2]   THE RELATION BETWEEN FORCE, VELOCITY AND INTEGRATED ELECTRICAL ACTIVITY IN HUMAN MUSCLES [J].
BIGLAND, B ;
LIPPOLD, OCJ .
JOURNAL OF PHYSIOLOGY-LONDON, 1954, 123 (01) :214-224
[3]   A review of analytical techniques for gait data. Part 2: neural network and wavelet methods [J].
Chau, T .
GAIT & POSTURE, 2001, 13 (02) :102-120
[4]   EMG TO FORCE PROCESSING .1. AN ELECTRICAL ANALOG OF THE HILL MUSCLE MODEL [J].
HOF, AL ;
VANDENBERG, J .
JOURNAL OF BIOMECHANICS, 1981, 14 (11) :747-+
[5]   LINEARITY BETWEEN WEIGHTED SUM OF EMGS OF HUMAN TRICEPS-SURAE AND TOTAL TORQUE [J].
HOF, AL ;
VANDENBERG, J .
JOURNAL OF BIOMECHANICS, 1977, 10 (09) :529-539
[6]   EMG TO FORCE PROCESSING .3. ESTIMATION OF MODEL PARAMETERS FOR THE HUMAN TRICEPS SURAE MUSCLE AND ASSESSMENT OF THE ACCURACY BY MEANS OF A TORQUE PLATE [J].
HOF, AL ;
VANDENBERG, J .
JOURNAL OF BIOMECHANICS, 1981, 14 (11) :771-&
[7]   EMG TO FORCE PROCESSING .2. ESTIMATION OF PARAMETERS OF THE HILL MUSCLE MODEL FOR THE HUMAN TRICEPS SURAE BY MEANS OF A CALFERGOMETER [J].
HOF, AL ;
VANDENBERG, J .
JOURNAL OF BIOMECHANICS, 1981, 14 (11) :759-+
[8]   Autolabeling 3D tracks using neural networks [J].
Holzreiter, S .
CLINICAL BIOMECHANICS, 2005, 20 (01) :1-8
[9]   RELATION OF HUMAN ELECTROMYOGRAM TO MUSCULAR TENSION [J].
INMAN, VT ;
RALSTON, HJ ;
SAUNDERS, JBDM ;
FEINSTEIN, B ;
WRIGHT, EW .
ELECTROENCEPHALOGRAPHY AND CLINICAL NEUROPHYSIOLOGY, 1952, 4 (02) :187-194
[10]   ESTIMATION OF DYNAMIC JOINT TORQUES AND TRAJECTORY FORMATION FROM SURFACE ELECTROMYOGRAPHY SIGNALS USING A NEURAL-NETWORK MODEL [J].
KOIKE, Y ;
KAWATO, M .
BIOLOGICAL CYBERNETICS, 1995, 73 (04) :291-300