HCLA_CBiGRU: Hybrid convolutional bidirectional GRU based model for epileptic seizure detection

Milind Natu , Mrinal Bachute , Ketan Kotecha
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引用次数: 1

Abstract

Seizure detection from EEG signals is crucial for diagnosing and treating neurological disorders. However, accurately detecting seizures is challenging due to the complexity and variability of EEG signals. This paper proposes a deep learning model, called Hybrid Cross Layer Attention Based Convolutional Bidirectional Gated Recurrent Unit (HCLA_CBiGRU), which combines convolutional neural networks and recurrent neural networks to capture spatial and temporal features in EEG signals. A combinational EEG dataset was created by merging publicly available datasets and applying a preprocessing pipeline to remove noise and artifacts. The dataset was then segmented and split into training and testing sets. The HCLA_CBiGRU model was trained on the training set and evaluated on the testing set, achieving an impressive accuracy of 98.5%, surpassing existing state-of-the-art methods. Sensitivity and specificity, critical metrics in clinical practice, were also assessed, with the model demonstrating a sensitivity of 98.5% and a specificity of 98.9%, highlighting its effectiveness in seizure detection. Visualization techniques were used to analyze the learned features, showing the model's ability to capture distinguishing seizure-related characteristics. In conclusion, the proposed CBiGRU model outperforms existing methods in terms of accuracy, sensitivity, and specificity for seizure detection from EEG signals. Its integration with EEG signal analysis has significant implications for improving the diagnosis and treatment of neurological disorders, potentially leading to better patient outcomes.

HCLA_CBiGRU:基于混合卷积双向GRU的癫痫发作检测模型
从脑电图信号中检测癫痫发作对于诊断和治疗神经系统疾病至关重要。然而,由于脑电图信号的复杂性和可变性,准确检测癫痫发作是具有挑战性的。本文提出了一种将卷积神经网络和递归神经网络相结合的深度学习模型——基于混合交叉层注意的卷积双向门控循环单元(HCLA_CBiGRU),用于捕获脑电信号的时空特征。通过合并公开可用的数据集并应用预处理管道去除噪声和伪影,创建了组合脑电图数据集。然后将数据集分割为训练集和测试集。HCLA_CBiGRU模型在训练集上进行了训练,并在测试集上进行了评估,达到了令人印象深刻的98.5%的准确率,超过了现有的最先进的方法。灵敏度和特异性,临床实践中的关键指标,也进行了评估,与模型显示的灵敏度为98.5%,特异性为98.9%,突出其在癫痫发作检测的有效性。可视化技术被用来分析学习到的特征,显示了该模型捕捉癫痫相关特征的能力。综上所述,CBiGRU模型在脑电图信号检测癫痫发作的准确性、灵敏度和特异性方面优于现有方法。它与脑电图信号分析的结合对改善神经系统疾病的诊断和治疗具有重要意义,可能导致更好的患者预后。
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来源期刊
Neuroscience informatics
Neuroscience informatics Surgery, Radiology and Imaging, Information Systems, Neurology, Artificial Intelligence, Computer Science Applications, Signal Processing, Critical Care and Intensive Care Medicine, Health Informatics, Clinical Neurology, Pathology and Medical Technology
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