The use of artificial neural networks to predict the muscle behavior

P. Kutílek, S. Viteckova, Z. Svoboda, P. Smrcka
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引用次数: 10

Abstract

The aim of this article is to introduce methods of prediction of muscle behavior of the lower extremities based on artificial neural networks, which can be used for medical purposes. Our work focuses on predicting muscletendon forces and moments during human gait with the use of angle-time diagram. A group of healthy children and children with cerebral palsy were measured using a Vicon MoCap system. The kinematic data was recorded and the OpenSim software system was used to identify the joint angles, muscle-tendon forces and joint muscle moment, which are presented graphically with time diagrams. The musculus gastrocnemius medialis that is often studied in the context of cerebral palsy have been chosen to study the method of prediction. The diagrams of mean muscle-tendon force and mean moment are plotted and the data about the force-time and moment-time dependencies are used for training neural networks. The new way of prediction of muscle-tendon forces and moments based on neural networks was tested. Neural networks predicted the muscle forces and moments of healthy children and children with cerebral palsy. The designed method of prediction by neural networks could help to identify the difference between muscle behavior of healthy subjects and diseased subjects.
利用人工神经网络来预测肌肉的行为
本文的目的是介绍基于人工神经网络的下肢肌肉行为预测方法,该方法可用于医学目的。我们的工作重点是利用角度-时间图来预测人类步态中肌肉肌腱的力和力矩。一组健康儿童和脑瘫儿童使用Vicon动作捕捉系统进行测量。记录运动数据,利用OpenSim软件系统识别关节角度、肌肉-肌腱力和关节肌力矩,并以时间图图形化呈现。选择在脑瘫中经常被研究的腓肠肌内侧肌来研究预测方法。绘制了平均肌肉-肌腱力和平均弯矩的图,并将力-时间和弯矩-时间的相关数据用于训练神经网络。试验了基于神经网络的肌腱力和力矩预测新方法。神经网络预测了健康儿童和脑瘫儿童的肌肉力量和时刻。所设计的神经网络预测方法有助于识别健康受试者和患病受试者肌肉行为的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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