Epileptic Seizure Prediction Using Stacked CNN-BiLSTM: A Novel Approach

Zeenat Firdosh Quadri;M. Saqib Akhoon;Sajad A. Loan
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Abstract

In this work, we propose a novel hybrid architecture for epileptic seizure prediction, utilizing a deep learning approach by stacking the convolutional neural network (CNN) and bidirectional long short-term memory (Bi-LSTM) layers. The proposed approach employs a series of 1-D convolution layers, each with several filters with lengths varying exponentially. The deep Bi-LSTM layers are subsequently integrated to the design to create a densely connected feed-forward structure. The model effectively prioritizes spatiotemporal information, thus extracting key insights for identification of interictal and preictal features. The Boston Children’s Hospital–MIT datasets (Children’s Hospital Boston-Massachusetts Institute of Technology (CHB-MIT)) are utilized and fivefold cross validation is applied for training the model. The proposed model has undergone comprehensive evaluations, with sensitivity of 97.63%, precision of 98.30%, F1-Score of 98.25%, and an area under curve (AUC)-receiver operating characteristic (ROC) of 0.9 across six patients. It can predict seizures 30 min before their onset, allowing individuals ample time to take preventive measures. Compared to the state-of-the-art approach, our model achieves a higher accuracy by 3.44% and demonstrating improved prediction times.
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使用堆叠 CNN-BiLSTM 预测癫痫发作:一种新方法
在这项工作中,我们利用深度学习方法,通过堆叠卷积神经网络(CNN)和双向长短期记忆(Bi-LSTM)层,提出了一种用于癫痫发作预测的新型混合架构。所提出的方法采用了一系列一维卷积层,每个卷积层都有多个长度呈指数变化的滤波器。随后,深度 Bi-LSTM 层被整合到设计中,以创建一个密集连接的前馈结构。该模型能有效地优先处理时空信息,从而提取出识别发作间期和发作前特征的关键信息。该模型利用波士顿儿童医院-麻省理工学院数据集(波士顿儿童医院-麻省理工学院(CHB-MIT)),并采用五倍交叉验证来训练模型。该模型经过全面评估,在六名患者中的灵敏度为 97.63%,精确度为 98.30%,F1-Score 为 98.25%,曲线下面积(AUC)-接收器操作特征(ROC)为 0.9。它能在癫痫发作前 30 分钟预测到癫痫发作,让患者有充足的时间采取预防措施。与最先进的方法相比,我们的模型准确率提高了 3.44%,预测时间也有所缩短。
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