IF 4.8 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Jiashun Zhao, Rui Yuan, Henry Shin, Run Ji, Yang Zheng
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引用次数: 0

摘要

结合肌电图(EMG)信号反馈的闭环功能性电刺激(FES)系统能更有效地帮助瘫痪病人维持和恢复运动能力。然而,实时调整刺激参数的闭环功能性电刺激系统往往会在 EMG 信号中引入时变刺激伪影,这对旨在更准确监测肌肉收缩状态的消除刺激伪影工作提出了挑战。因此,本研究开发了一种 EMG 采集系统,其中包含刺激伪影生成(SAG)电路和递归最小二乘法(RLS)自适应滤波器,并将其命名为 StimEMG。模拟污染 EMG 信号对 SAG-RLS 策略进行了测试,而 StimEMG 系统则在 8 名受试者的实验研究中进行了测试。模拟和实验研究均表明,与目前基于革兰氏-施密特(GSB)的方法相比,SAG-RLS 方法在去噪 EMG 与相应的干净 EMG 或 EMG 片段之间获得了更高的相关性(R2)(模拟研究,0.98±0.0044 v.s. 0.65±0.3217;实验研究,0.99±0.0024 v.s. 0.52±0.2105)。同时,SAG-RLS 方法能更有效地抑制刺激伪影,从而获得更高的信噪比(模拟研究:12.83±2.1745 v.s. 1.54±1.3106)和更高的噪声抑制比(实验研究:2.32±0.7046 v.s. 1.92±0.8014)。据推测,性能的明显改善是由于 SAG 单元能够准确、及时地捕捉刺激参数变化引起的刺激伪影的变化,而不像以前的方法依赖于受污染肌电信号中刺激伪影特征的稳定性。所开发的 StimEMG 系统为闭环 FES 系统提供了强大的 EMG 采集模块。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
StimEMG: an Electromyogram Recording System with Real-time Removal of Time-varying Electrical Stimulation Artifacts.

A closed-loop Functional Electrical Stimulation (FES) system that incorporates electromyogram (EMG) signal feedback provides more effective assistance to paralytic patients in maintaining and recovering their motor abilities. However, the closed-loop FES system with real-time adjustment of stimulation parameters tends to introduce time-varying stimulation artifacts in EMG signals, challenging the removal of stimulation artifacts that aims at more accurate monitoring of muscle contraction status. Therefore, an EMG acquisition system that embeds a stimulation artifact generation (SAG) circuit and the Recursive Least Squares (RLS) adaptive filter was developed in this study and named StimEMG. The SAG-RLS strategy was tested using the simulated contaminated EMG signals and the StimEMG system was tested in an experimental study with 8 subjects. Both the simulation and the experimental study showed that the SAG-RLS method obtained a higher correlation (R2) between the denoised EMG and the corresponding clean EMG or EMG segments compared with the current Gram-Schmidt-based (GSB) method (simulation study, 0.98±0.0044 v.s. 0.65±0.3217; experimental study, 0.99±0.0024 v.s. 0.52±0.2105). Meanwhile, the SAG-RLS method can suppress stimulation artifact more effectively, resulting a higher signal-to-noise ratio (simulation study: 12.83±2.1745 v.s. 1.54±1.3106) and higher noise rejection ratio (experimental study:2.32±0.7046 v.s. 1.92±0.8014). The significantly improved performance is speculated to result from the ability of the SAG unit to precisely and timely capture the variation of the stimulation artifacts caused by the change of stimulation parameters, unlike previous methods relying on the stability of the characteristic of stimulation artifacts in the contaminated EMG signals. The developed StimEMG system provides a robust EMG acquisition module for the closed-loop FES system.

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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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