Effective Detection of Epileptic Seizures through EEG Signals Using Deep Learning Approaches

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-12-11 DOI:10.3390/make5040094
S. Mekruksavanich, A. Jitpattanakul
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Abstract

Epileptic seizures are a prevalent neurological condition that impacts a considerable portion of the global population. Timely and precise identification can result in as many as 70% of individuals achieving freedom from seizures. To achieve this, there is a pressing need for smart, automated systems to assist medical professionals in identifying neurological disorders correctly. Previous efforts have utilized raw electroencephalography (EEG) data and machine learning techniques to classify behaviors in patients with epilepsy. However, these studies required expertise in clinical domains like radiology and clinical procedures for feature extraction. Traditional machine learning for classification relied on manual feature engineering, limiting performance. Deep learning excels at automated feature learning directly from raw data sans human effort. For example, deep neural networks now show promise in analyzing raw EEG data to detect seizures, eliminating intensive clinical or engineering needs. Though still emerging, initial studies demonstrate practical applications across medical domains. In this work, we introduce a novel deep residual model called ResNet-BiGRU-ECA, analyzing brain activity through EEG data to accurately identify epileptic seizures. To evaluate our proposed deep learning model’s efficacy, we used a publicly available benchmark dataset on epilepsy. The results of our experiments demonstrated that our suggested model surpassed both the basic model and cutting-edge deep learning models, achieving an outstanding accuracy rate of 0.998 and the top F1-score of 0.998.
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利用深度学习方法通过脑电信号有效检测癫痫发作
癫痫发作是一种常见的神经系统疾病,影响着全球相当一部分人口。及时准确的识别可使多达 70% 的患者摆脱癫痫发作。要实现这一目标,迫切需要智能自动化系统来协助医疗专业人员正确识别神经系统疾病。以往的研究利用原始脑电图(EEG)数据和机器学习技术对癫痫患者的行为进行分类。然而,这些研究需要放射学和临床程序等临床领域的专业知识来提取特征。传统的机器学习分类依赖于人工特征工程,限制了性能。深度学习擅长直接从原始数据中进行自动特征学习,无需人工操作。例如,深度神经网络目前在分析原始脑电图数据以检测癫痫发作方面大有可为,省去了大量的临床或工程需求。尽管深度神经网络仍处于新兴阶段,但初步研究已经证明了它在医疗领域的实际应用。在这项工作中,我们引入了一种名为 ResNet-BiGRU-ECA 的新型深度残差模型,通过脑电图数据分析大脑活动,从而准确识别癫痫发作。为了评估我们提出的深度学习模型的功效,我们使用了一个公开的癫痫基准数据集。实验结果表明,我们提出的模型超越了基本模型和前沿深度学习模型,准确率高达 0.998,F1 分数也高达 0.998。
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CiteScore
6.30
自引率
0.00%
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0
审稿时长
7 weeks
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