基于体表肌电图的强直-肌阵挛性癫痫发作分类

Achraf Djemal, D. Bouchaala, A. Fakhfakh, O. Kanoun
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引用次数: 5

摘要

癫痫诊断是近年来卫生领域的重要研究课题之一。本文的目的是检测和分类两种类型的癫痫发作:强直性和肌阵挛基于表面肌电信号。基于肱二头肌、尺腕屈肌、腓肠肌和股四头肌的8个表面肌电电极的数据。研究了波形长度、平均绝对值、方差、迁移率、复杂度、峰度、偏度、简单平方积分、综合肌电信号、均方根、平均振幅变化、标准差和熵等时域特征。这些特征被用作人工神经网络(ANN)分类器的输入,以确定数据段是否对应于癫痫发作。在开发了人工神经网络模型之后,给出了准确率的评价性能来验证结果,准确率达到了93.33%。所提出的机器学习算法的整体性能足以用于临床实施。
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Tonic-Myoclonic Epileptic Seizure Classification based on Surface Electromyography
Epilepsy diagnosis is one of the critical subjects of research in health fields in recent years. The aim of this paper is to detect and classify two types of seizures: Tonic and myoclonic based on surface electromyography signals. Based on data from eight sEMG electrodes on the biceps brachii, flexor carpi ulnaris, gastrocnemius and quadriceps muscle. Several time domain features were investigated, including waveform length, mean absolute value, variance, mobility, complexity, kurtosis, skewness, simple square integral, integrated EMG, root mean square, average amplitude change, standard deviation and entropy. These features are used as inputs to the Artificial Neural Network (ANN) classifier to determine if a data segment corresponds to a seizure or not. Following the development of the ANN model, an evaluation performance in terms of accuracy is presented to validate the results, which reached an accuracy of 93.33%. The overall performance of the presented machine learning algorithm is sufficient for clinical implementation.
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