首页> 外文期刊>Journal of Neuroscience Methods >Automatic classification of motor unit potentials in surface EMG recorded from thenar muscles paralyzed by spinal cord injury.
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Automatic classification of motor unit potentials in surface EMG recorded from thenar muscles paralyzed by spinal cord injury.

机译:从脊髓损伤麻痹的narnar肌肉记录的表面肌电图中运动单位电位的自动分类。

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Involuntary electromyographic (EMG) activity has only been analyzed in the paralyzed thenar muscles of spinal cord injured (SCI) subjects for several minutes. It is unknown if this motor unit activity is ongoing. Longer duration EMG recordings can investigate the biological significance of this activity. Since no software is currently capable of classifying 24h of EMG data at a single motor unit level, the goal of this research was to devise an algorithm that would automatically classify motor unit potentials by tracking the firing behavior of motor units over 24h. Two channels of thenar muscle surface EMG were recorded over 24h from seven SCI subjects with a chronic cervical level injury using a custom data logging device with custom software. The automatic motor unit classification algorithm developed here employed multiple passes through these 24-h EMG recordings to segment, cluster, form global templates and classify motor unit potentials, including superimposed potentials. The classification algorithm was able to track an average of 19 global classes in seven 24-h recordings with a mean (+/-SE) accuracy of 89.9% (+/-0.98%) and classify potentials from these individual motor units with a mean accuracy of 90.3% (+/-0.97%). The algorithm could analyze 24h of data in 2-3 weeks with minimal input from a person, while a human operator was estimated to take more than 2 years. This automatic method could be applied clinically to investigate the fasciculation potentials often found in motoneuron disorders such as amyotrophic lateral sclerosis.
机译:非自愿性肌电图(EMG)活性仅在脊髓损伤(SCI)受试者的瘫痪的nar肌中进行了几分钟的分析。不知道该电机单元的活动是否正在进行。较长的EMG记录时间可以调查此活动的生物学意义。由于目前尚无软件能够在单个电机单元级别上对24小时的EMG数据进行分类,因此本研究的目的是设计一种算法,该算法可通过跟踪24小时内的电机单元的点火行为自动对电机单元电势进行分类。使用自定义数据记录设备和自定义软件,在24小时内记录了来自7名患有慢性宫颈水平损伤的SCI受试者的两个肌腱肌表面肌电信号通道。此处开发的自动电机单元分类算法采用了遍历这些24小时EMG记录的多个步骤,以分割,聚类,形成全局模板并对电机单元电势(包括叠加电势)进行分类。该分类算法能够跟踪7个24小时记录中的19个全局类别的平均值,平均(+/- SE)准确度为89.9%(+/- 0.98%),并使用平均值对这些单个电机单元的电势进行分类准确度为90.3%(+/- 0.97%)。该算法可以在2-3个星期内分析24小时的数据,而只需要一个人的最少输入,而操作人员估计要花费2年以上的时间。这种自动方法可在临床上用于调查经常在运动神经元疾病(如肌萎缩性侧索硬化)中发现的束缚电位。

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