Digital Biomarker for Muscle Function Assessment Using Surface Electromyography With Electrical Stimulation and a Non-Invasive Wearable Device

IF 4.8 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Kwangsub Song;Hyung Eun Shin;Wookhyun Park;Daehyun Lee;Jaeyoung Jang;Ga Yang Shim;Sangui Choi;Miji Kim;Hooman Lee;Chang Won Won
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Abstract

Sarcopenia is a comprehensive degenerative disease with the progressive loss of skeletal muscle mass with age, accompanied by the loss of muscle strength and muscle dysfunction. Individuals with unmanaged sarcopenia may experience adverse outcomes. Periodically monitoring muscle function to detect muscle degeneration caused by sarcopenia and treating degenerated muscles is essential. We proposed a digital biomarker measurement technique using surface electromyography (sEMG) with electrical stimulation and wearable device to conveniently monitor muscle function at home. When motor neurons and muscle fibers are electrically stimulated, stimulated muscle contraction signals (SMCSs) can be obtained using an sEMG sensor. As motor neuron activation is important for muscle contraction and strength, their action potentials for electrical stimulation represent the muscle function. Thus, the SMCSs are closely related to muscle function, presumptively. Using the SMCSs data, a feature vector concatenating spectrogram-based features and deep learning features extracted from a convolutional neural network model using continuous wavelet transform images was used as the input to train a regression model for measuring the digital biomarker. To verify muscle function measurement technique, we recruited 98 healthy participants aged 20–60 years including 48 [49%] men who volunteered for this study. The Pearson correlation coefficient between the label and model estimates was 0.89, suggesting that the proposed model can robustly estimate the label using SMCSs, with mean error and standard deviation of -0.06 and 0.68, respectively. In conclusion, measuring muscle function using the proposed system that involves SMCSs is feasible.
利用表面肌电图与电刺激和非侵入性可穿戴设备评估肌肉功能的数字生物标记。
肌肉疏松症是一种综合性退行性疾病,随着年龄的增长,骨骼肌质量会逐渐丧失,并伴有肌力下降和肌肉功能障碍。肌肉疏松症患者如不及时治疗,可能会出现不良后果。定期监测肌肉功能以检测肌肉疏松症导致的肌肉退化,并治疗退化的肌肉至关重要。我们提出了一种数字生物标记测量技术,利用表面肌电图(sEMG)配合电刺激和可穿戴设备,在家中方便地监测肌肉功能。当运动神经元和肌肉纤维受到电刺激时,可通过 sEMG 传感器获得刺激性肌肉收缩信号(SMCS)。由于运动神经元的激活对肌肉收缩和力量非常重要,因此它们在电刺激下的动作电位代表了肌肉功能。因此,推测 SMCS 与肌肉功能密切相关。利用 SMCSs 数据,将基于频谱图的特征和利用连续小波变换图像从卷积神经网络模型中提取的深度学习特征组成特征向量,作为输入来训练回归模型,以测量数字生物标记。为了验证肌肉功能测量技术,我们招募了 98 名 20-60 岁的健康参与者,其中包括 48 名(49%)自愿参加本研究的男性。标签和模型估计值之间的皮尔逊相关系数为 0.89,这表明所提出的模型能够稳健地使用 SMCS 估计标签,平均误差和标准偏差分别为-0.06 和 0.68。总之,使用涉及 SMCS 的拟议系统测量肌肉功能是可行的。
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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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