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首页> 外文期刊>Muscle and Nerve >Motor unit characteristics in healthy subjects and those with postpoliomyelitis syndrome: a high-density surface EMG study.
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Motor unit characteristics in healthy subjects and those with postpoliomyelitis syndrome: a high-density surface EMG study.

机译:健康受试者和脊髓灰质炎后综合症患者的运动单位特征:高密度表面肌电图研究。

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摘要

The purpose of this study was to identify optimal ways to detect neurogenic changes with high-density surface electromyography (HD-sEMG). For this purpose, we searched for the variables that most clearly discriminated between postpoliomyelitis and healthy subjects. We obtained HD-sEMG from the quadriceps muscle at different force levels in nine subjects with postpoliomyelitis syndrome and in matched healthy controls. Single motor unit action potentials (MUAPs), extracted from the HD-sEMG signal and the raw signal itself, were analyzed. Areas under the curve of the extracted MUAP waveform, indicating motor unit size, perfectly separated both groups. Raw signal analysis showed significant differences between groups for the monopolarly recorded amplitude up to 60% of maximal force and for the level of interference at higher force levels (40-100% force). We conclude that with HD-sEMG it is possible to detect neurogenic motor unit changes noninvasively, both by analysis of the raw signal itself and by analysis of extracted single MUAPs. The diagnostic yield of the single MUAP analysis is clearly higher. These findings point toward applications for clinical practice and invite further studies exploring the diagnostic value of HD-sEMG.
机译:这项研究的目的是确定检测高密度表面肌电图(HD-sEMG)神经源性变化的最佳方法。为此,我们搜索了最清楚地区分小儿麻痹症和健康受试者的变量。我们以不同的力量水平从四头肌肌肉中获得了HD-sEMG,用于9名脊髓灰质炎后综合征和相关健康对照的受试者。分析了从HD-sEMG信号和原始信号本身提取的单个电机单元动作电位(MUAP)。所提取的MUAP波形曲线下的区域(指示电机单元的大小)完美地分隔了两组。原始信号分析显示,对于最大强度的60%的单极记录振幅和较高的作用力水平(40-100%的作用力)下的干扰水平,组之间存在显着差异。我们得出结论,通过分析原始信号本身和通过分析提取的单个MUAP,使用HD-sEMG可以无创地检测神经源性运动单位的变化。单个MUAP分析的诊断率显然更高。这些发现指向临床实践的应用,并邀请进一步研究探讨HD-sEMG的诊断价值。

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