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首页> 外文期刊>Muscle and Nerve >Probabilistic muscle characterization using quantitative electromyography: application to facioscapulohumeral muscular dystrophy.
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Probabilistic muscle characterization using quantitative electromyography: application to facioscapulohumeral muscular dystrophy.

机译:使用定量肌电图的概率性肌肉表征:应用于面肩肱肱肌营养不良。

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摘要

Based on quantitative electromyography, a muscle can be categorized as normal or affected by a neuromuscular disorder. The objective of this work was to compare the utility of probabilistic to conventional means and outlier methods of categorization of myopathic and normal muscles. Various sets of motor unit potential (MUP) features detected in biceps brachii muscles of control subjects and patients with facioscapulohumeral muscular dystrophy were used to categorize them as normal or myopathic based on conventional means and outlier categorization (CMC) as well as a new probabilistic muscle categorization (PMC). The sensitivity, specificity, and accuracy provided by each categorization method were compared. The categorizations made using PMC were significantly more accurate (by at least 10%) compared with CMC (P < 10(-10)) for muscles evaluated in this study. Area, duration, and thickness were highly discriminative MUP features.
机译:基于定量肌电图,肌肉可以归类为正常或受神经肌肉疾病影响。这项工作的目的是比较概率方法与传统方法以及对肌病性肌和正常肌进行分类的异常方法的效用。根据常规方法和异常值分类(CMC)以及新的概率性肌肉,在对照受试者的肱二头肌肱二头肌和面部肩肱肱肌营养不良患者中检测到的各种运动单位电位(MUP)功能被分为正常或肌病分类(PMC)。比较了每种分类方法提供的敏感性,特异性和准确性。与CMC(P <10(-10))相比,使用PMC进行的肌肉分类准确得多(至少10%)。面积,持续时间和厚度是高度区分MUP的特征。

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