Multilevel Assessment of Exercise Fatigue Utilizing Multiple Attention and Convolution Network (MACNet) Based on Surface Electromyography

IF 4.8 2区 医学 Q2 ENGINEERING, BIOMEDICAL IEEE Transactions on Neural Systems and Rehabilitation Engineering Pub Date : 2024-12-26 DOI:10.1109/TNSRE.2024.3523332
Guofu Zhang;Banghua Yang;Peng Zan;Dingguo Zhang
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Abstract

Background: Assessment of exercise fatigue is crucial for enhancing work capacity and minimizing the risk of injury. Surface electromyography (sEMG) has been used to quantitatively assess exercise fatigue as a new technology in recent years. However, the currently available research primarily distinguishes between fatigue and non-fatigue states, offering limited and less robust findings in multilevel evaluations. Methods: This study proposes a multiple attention and convolution network (MACNet) for a three-level assessment of muscle fatigue based on sEMG. Under the designed 50% maximum voluntary contraction experimental paradigm, sEMG signals and rate of perceived exertion scale are collected from 48 subjects. MACNet is developed to assess sEMG fatigue, incorporating improved temporal attention based on sliding window, multiscale convolution, and channel-spatial attention. Finally, GradCAM visualization is used to verify the developed model’s interpretation, exploring the effects of sEMG channels and time-domain characteristics on exercise fatigue. Results: The average classification F1-Score and accuracy of MACNet are 83.95% and 84.11% for subject-wise and 82.83% and 82.43% for cross-subject, respectively. The GradCAM visualization highlights the greater contribution of the flexor digitorum superficialis and flexor digitorum profundus in evaluating high fatigue, along with the varied impact of time-domain features on exercise fatigue assessment. Conclusion: MACNet achieves the highest average classification accuracy and F1-Score, significantly higher than other state-of-the-art methods like SVM, RF, MFFNet, TSCNN, LMDANet, Conformer and MSFEnet, enhancing the extraction of exercise fatigue insights from sEMG channels and time-domain features. The codes are available at: https://github.com/ZhangGf94/MACNet
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基于表面肌电图的多重注意卷积网络(MACNet)对运动疲劳的多层次评价
背景:运动疲劳评估对于提高工作能力和减少受伤风险至关重要。表面肌电图(sEMG)是近年来应用于运动疲劳定量评估的一项新技术。然而,目前可用的研究主要区分疲劳和非疲劳状态,在多层次评估中提供有限和不太可靠的发现。方法:本研究提出了一种基于表面肌电信号的多重注意和卷积网络(MACNet),用于肌肉疲劳的三级评估。在设计的50%最大自主收缩实验范式下,采集48名受试者的肌电信号和感知用力率量表。MACNet的开发是为了评估表面肌电信号疲劳,它结合了基于滑动窗口、多尺度卷积和通道空间注意的改进的时间注意。最后,利用GradCAM可视化验证模型的解释,探索肌电信号通道和时域特征对运动疲劳的影响。结果:MACNet分类F1-Score在学科方向上的平均准确率分别为83.95%和84.11%,在跨学科方向上的平均准确率分别为82.83%和82.43%。GradCAM可视化强调了指浅屈肌和指深屈肌在评估高度疲劳方面的更大贡献,以及时域特征对运动疲劳评估的不同影响。结论:MACNet的平均分类准确率和F1-Score最高,显著高于SVM、RF、MFFNet、TSCNN、LMDANet、Conformer和MSFEnet等先进方法,增强了从表面肌电信号通道和时域特征中提取运动疲劳信息的能力。代码可在https://github.com/ZhangGf94/MACNet上获得
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来源期刊
CiteScore
8.60
自引率
8.20%
发文量
479
审稿时长
6-12 weeks
期刊介绍: Rehabilitative and neural aspects of biomedical engineering, including functional electrical stimulation, acoustic dynamics, human performance measurement and analysis, nerve stimulation, electromyography, motor control and stimulation; and hardware and software applications for rehabilitation engineering and assistive devices.
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