Artificial Intelligence for the Classification of Neuromuscular Diseases Using Dominant MUAP

P. Maheshwary, W. Vinu, P. Velvadivu, Surendra Kumar Shukla, P. Srivastava, Prakash Pareek
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引用次数: 1

Abstract

Motor-unit-action-potentials in an electromyographic isolated signals shape & sounds are valuable diagnosis information for neuro-muscular disorders-treatment& management. An expert can analyse these parameters qualitatively or quantitative by pattern recognition techniques. Because of benefits of the quantitatively method of EMG, producing robust automated MUAP types is investigated, & many systems is produced for this purpose, but correctness of the previous methods isn't peak enough to use in clinical settings. The developed system uses an EMG signal decomposition mechanism to extract both time &frequency domain for M-U-A-P's retrieved from E-M-G. Un-similar type of algorithms was studied, including 1 & many types with many sub-sets characteristics. The multi-classifier methods proposed here performed well in experiments by real set EMG. The multi-classifier, which aggregates base classifiers using multiple feature sets &both trainable &non-trainable fusion techniques, performed the best of the methods studied, with an average precision is 98%.
基于显性MUAP的神经肌肉疾病分类的人工智能
肌电分离信号的运动单位动作电位对神经肌肉疾病的治疗和管理是有价值的诊断信息。专家可以通过模式识别技术定性或定量地分析这些参数。由于肌电图定量方法的好处,研究人员研究了生成强大的自动化MUAP类型,并且为此目的制作了许多系统,但先前方法的正确性不足以用于临床环境。该系统利用肌电信号分解机制对从E-M-G中提取的M-U-A-P信号进行时域和频域提取。研究了非相似型算法,包括1类和多类具有多子集特征的算法。本文提出的多分类器方法在实际肌电信号实验中取得了良好的效果。多分类器使用多个特征集以及可训练和不可训练的融合技术聚合基分类器,在所研究的方法中表现最好,平均精度为98%。
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