Transfer-Learning for Automated Seizure Detection Based on Electric Field Encephalography Reconstructed Signal

Gefei Zhu
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Abstract

Building an automatic seizure onset prediction model based on multi-channel electroencephalography (EEG) signals has been a hot topic in computer science and neuroscience field for a long time. In this research, we collect EEG data from different epilepsy patients and EEG devices and reconstruct and combine the EEG signals using an innovative electric field encephalography (EFEG) method, which establishes a virtual electric field vector, enabling extraction of electric field components and increasing detection accuracy compared to the conventional method. We extract a number of important features from the reconstructed signals and pass them through an ensemble model based on support vector machine (SVM), Random Forest (RF), and deep neural network (DNN) classifiers. By applying this EFEG channel combination method, we can achieve the highest detection accuracy at 87% which is 6% to 17% higher than the conventional channel averaging combination method. Meanwhile, to reduce the potential overfitting problem caused by DNN models on a small dataset and limited training patient, we ensemble the DNN model with two “weaker” classifiers to ensure the best performance in model transferring for different patients. Based on these methods, we can achieve the highest detection accuracy at 82% on a new patient using a different EEG device. Thus, we believe our method has good potential to be applied on different commercial and clinical devices.
基于电场脑电图重构信号的癫痫自动检测迁移学习
建立基于多通道脑电图信号的癫痫发作自动预测模型一直是计算机科学和神经科学领域的研究热点。在本研究中,我们收集了来自不同癫痫患者和EEG设备的脑电图数据,并采用创新的电场脑电图(EFEG)方法对脑电图信号进行重构和组合,该方法建立了虚拟电场矢量,可以提取电场分量,比传统方法提高了检测精度。我们从重构信号中提取了一些重要的特征,并将它们传递给基于支持向量机(SVM)、随机森林(RF)和深度神经网络(DNN)分类器的集成模型。应用该EFEG信道组合方法,检测精度达到87%,比传统的信道平均组合方法提高6% ~ 17%。同时,为了减少DNN模型在小数据集和有限训练患者上可能导致的过拟合问题,我们将DNN模型与两个“较弱”分类器集成在一起,以确保在不同患者的模型转移中具有最佳性能。基于这些方法,我们可以在使用不同EEG设备的新患者上达到82%的最高检测准确率。因此,我们相信我们的方法有很好的潜力应用于不同的商业和临床设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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