Automatic Epilepsy Seizure Classification Using EEG Signals Based on the CNN-LSTM Model

IF 1.4 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
C. Ruth Vinutha, M. S. P. Subathra, S. Thomas George, Geno Peter, Albert Alexander Stonier, N. J. Sairamya, J. Prasanna, Vivekananda Ganji
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引用次数: 0

Abstract

Epilepsy is a neurological disorder characterized by frequent seizures and abnormal brain activity. It is typically diagnosed by examining electroencephalogram (EEG) recordings from epilepsy patients. Early detection and careful monitoring of children with epilepsy are crucial to preventing damaging spikes before the onset of the first seizure. Traditionally, this condition is examined manually by medical experts, a time-consuming process, especially during prolonged recordings. Therefore, an automated method for diagnosing focal (abnormal) EEG signals is essential. This study proposes an efficient model to classify and provide insights into focal and nonfocal stages. The model is based on an Inception ResNet v2 architecture pooled with a Deep Adagrad (Adaptive Gradient Descent Algorithm) Long Short-Term Memory (LSTM) network. EEG signal features are extracted using the Inception and ResNet layers, and significant features are then trained with a deep convolutional neural network (CNN) integrated with an Adagrad-optimized LSTM layer to classify focal and nonfocal EEG signals. The results demonstrate that the model achieves an impressive 99.76% accuracy in automatically detecting epilepsy abnormalities.

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基于CNN-LSTM模型的脑电信号癫痫发作自动分类
癫痫是一种以频繁发作和大脑活动异常为特征的神经系统疾病。它通常通过检查癫痫患者的脑电图(EEG)记录来诊断。早期发现和仔细监测癫痫儿童对于在第一次癫痫发作之前防止破坏性尖峰至关重要。传统上,这种情况是由医学专家手工检查的,这是一个耗时的过程,特别是在长时间的录音中。因此,一种自动诊断局灶性(异常)脑电图信号的方法至关重要。本研究提出了一个有效的模型来分类并提供焦点和非焦点阶段的见解。该模型基于Inception ResNet v2架构和Deep Adagrad(自适应梯度下降算法)长短期记忆(LSTM)网络。利用Inception层和ResNet层提取脑电信号特征,然后结合adagrad优化的LSTM层,使用深度卷积神经网络(CNN)训练显著特征,对脑电信号进行病灶和非病灶分类。结果表明,该模型在自动检测癫痫异常方面达到了99.76%的准确率。
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来源期刊
IET Signal Processing
IET Signal Processing 工程技术-工程:电子与电气
CiteScore
3.80
自引率
5.90%
发文量
83
审稿时长
9.5 months
期刊介绍: IET Signal Processing publishes research on a diverse range of signal processing and machine learning topics, covering a variety of applications, disciplines, modalities, and techniques in detection, estimation, inference, and classification problems. The research published includes advances in algorithm design for the analysis of single and high-multi-dimensional data, sparsity, linear and non-linear systems, recursive and non-recursive digital filters and multi-rate filter banks, as well a range of topics that span from sensor array processing, deep convolutional neural network based approaches to the application of chaos theory, and far more. Topics covered by scope include, but are not limited to: advances in single and multi-dimensional filter design and implementation linear and nonlinear, fixed and adaptive digital filters and multirate filter banks statistical signal processing techniques and analysis classical, parametric and higher order spectral analysis signal transformation and compression techniques, including time-frequency analysis system modelling and adaptive identification techniques machine learning based approaches to signal processing Bayesian methods for signal processing, including Monte-Carlo Markov-chain and particle filtering techniques theory and application of blind and semi-blind signal separation techniques signal processing techniques for analysis, enhancement, coding, synthesis and recognition of speech signals direction-finding and beamforming techniques for audio and electromagnetic signals analysis techniques for biomedical signals baseband signal processing techniques for transmission and reception of communication signals signal processing techniques for data hiding and audio watermarking sparse signal processing and compressive sensing Special Issue Call for Papers: Intelligent Deep Fuzzy Model for Signal Processing - https://digital-library.theiet.org/files/IET_SPR_CFP_IDFMSP.pdf
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