Towards the application of one-dimensional sonomyography for powered upper-limb prosthetic control using machine learning models.

PROSTHETICS AND ORTHOTICS INTERNATIONAL(2013)

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摘要
Background: The inherent properties of surface electromyography limit its potential for multi-degrees of freedom control. Our previous studies demonstrated that wrist angle could be predicted by muscle thickness measured from B-mode ultrasound, and hence, it could be an alternative signal for prosthetic control. However, an ultrasound imaging machine is too bulky and expensive. Objective: We aim to utilize a portable A-mode ultrasound system to examine the feasibility of using one-dimensional sonomyography (i.e. muscle thickness signals detected by A-mode ultrasound) to predict wrist angle with three different machine learning models - (1) support vector machine (SVM), (2) radial basis function artificial neural network (RBF ANN), and (3) back-propagation artificial neural network (BP ANN). Study Design: Feasibility study using nine healthy subjects. Methods: Each subject performed wrist extension guided at 15, 22.5, and 30 cycles/minute, respectively. Data obtained from 22.5 cycles/minute trials was used to train the models and the remaining trials were used for cross-validation. Prediction accuracy was quantified by relative root mean square error (RMSE) and correlation coefficients (CC). Results: Excellent prediction was noted using SVM (RMSE = 13%, CC = 0.975), which outperformed the other methods. Conclusion: It appears that one-dimensional sonomyography could be an alternative signal for prosthetic control.
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关键词
Artificial neural network (ANN),back-propagation (BP),one-dimensional sonomyography (1D SMG),radial basis function (RBF),skeletal muscles,support vector machine (SVM),surface electromyography (SEMG),ultrasound,wrist angle
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