用神经网络预测下肢膝关节屈伸肌疲劳程度

Shuang Pan, Xichen Xu, Yan Chen, Longhan Xie, Zewei Pan
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摘要

本文的目的是建立一个基于传感器数据预测下肢膝关节屈伸肌疲劳水平的模型。我们使用最大自愿收缩(MVC)来评估肌肉的疲劳程度。我们收集了六名健康成年人在四个MVC级别的步行数据。这些数据来自鞋垫上的16个压力传感器和两只脚上的两个惯性测量单元(imu)。从这些数据中提取了51个步态特征。通过ReliefF算法,提取了与MVC层最相关的14个特征。神经网络分类器的准确率为72.7%。这表明特征的选择和神经网络的使用是合理的。与以前的研究相比,这项研究使用了更少的传感器,并预测了更多细分的疲劳水平。这项研究的发现有助于更好地理解膝关节屈肌和伸肌疲劳如何影响步态特征,并进一步帮助开发早期预警系统来预防膝关节损伤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fatigue Level Prediction of Lower Extremity Knee Flexor and Extensor Muscles using Neural Network
The purpose of this paper is to build a model to predict the fatigue level of lower extremity knee flexor and extensor muscles based on sensor data. We used maximum voluntary contraction (MVC) to assess the fatigue level of muscles. We collected walking data from six healthy adults at four MVC levels. These data come from sixteen pressure sensors on the insoles and two inertial measurement units (IMUs) on the two feet. Fifty-one gait features were extracted from these data. Through using the ReliefF Algorithm, the fourteen features most relevant to the MVC level were extracted. The accuracy of neural network classifier is 72.7%. This indicates that the selection of features and the use of neural networks is reasonable. This study used fewer sensors and predicted more subdivided fatigue levels than previous studies. Findings from this study can help better understand how fatigue of knee flexor and extensor muscles affect gait characteristics, and further aid in developing an early warning system to prevent knee injuries.
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