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Classification between upper and lower motor neurons in amyotrophic lateral sclerosis patients by electromyographic processing and analysis

机译:电拍摄处理和分析对肌营养的侧面硬化症患者的上下电机神经元分类

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Amyotrophic Lateral Sclerosis (ALS) is a specific disease that causes the death of neurons controlling voluntary muscles. The death affects Upper Motor Neurons (UMN) and Lower Motor Neurons (LMN). In this paper, we aim to identify UMN, LMN ALS patients and healthy subjects by studying their Electromyography (EMG) signals. More specifically, the Right Anterior Tibialis (RAT) muscle, responsible of dorsiflexing and inverting the foot during walking is studied. The solution is mainly composed of two blocks: features extraction and classification. A large feature vector, combining statistics, time, frequency and time-frequency domains features is extracted and their relevance is checked. Then, many classification techniques are tested in order to identify the most powerful ones. Finally, a dimensionality reduction, using both Principal Component Analysis and Sequential Forward Selection technique is carried out in order to select the most relevant features. Simulation results achieved 97% of overall accuracy for healthy/LMN/UMN separation and more than 99% for healthy/ALS and LMN/UMN classification.
机译:肌营养的外侧硬化症(ALS)是一种特异性疾病,导致控制自愿肌肉的神经元死亡。死亡会影响上运动神经元(UMN)和下运动神经元(LMN)。在本文中,我们的目的是通过研究其肌电图(EMG)信号来识别UMN,LMN ALS患者和健康受试者。更具体地,研究了右侧胫骨(大鼠)肌肉,负责背光和在步行期间反转脚的抗衡。该解决方案主要由两个块组成:特征提取和分类。提取大特征向量,结合统计,时间,频率和时频域特征,检查它们的相关性。然后,测试许多分类技术以识别最强大的分类技术。最后,使用主要成分分析和顺序前向选择技术的维度降低,以选择最相关的功能。仿真结果达到健康/ LMN / UMN分离的总体精度的97%,而健康/ ALS和LMN / UMN分类超过99%。

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