基于多分辨率卷积神经网络的癫痫发作预测

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Ali K. Ibrahim, H. Zhuang, E. Tognoli, Ali Muhamed Ali, N. Erdol
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引用次数: 0

摘要

癫痫使患者无法控制自己的身体或意识,使他们在日常生活中处于危险之中。本文致力于开发一种智能神经计算技术,以提醒癫痫患者佩戴脑电图传感器即将发作。与最先进的基准相比,提出了一种创新的癫痫发作预测方法,以提高预测准确性并降低误报率。采用最大重叠离散小波变换对脑电信号进行不同频率分辨率的分解,设计多分辨率卷积神经网络提取各频带的判别特征。该算法自动生成患者特定的特征,以对主题的前段和间隔段进行最佳分类。该方法可以应用于任何数据集的任何病例,而不需要手工制作的特征提取过程。该方法在两个流行的癫痫患者数据集上进行了测试。对于儿童医院波士顿-麻省理工学院头皮EEG数据集,该方法的灵敏度为82%,错误预测率为0.058;对于美国癫痫协会癫痫发作预测挑战数据集,该方法的灵敏度为85%,错误预测率为0.19。这项技术为患者提供了一种个性化的解决方案,提高了灵敏度和特异性,但由于该算法固有的泛化能力,它从依赖癫痫医生的专业知识来调整可穿戴技术辅助装置中解放出来,最终将有助于广泛部署,包括在全球医疗服务不足的地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Epileptic seizure prediction based on multiresolution convolutional neural networks
Epilepsy withholds patients’ control of their body or consciousness and puts them at risk in the course of their daily life. This article pursues the development of a smart neurocomputational technology to alert epileptic patients wearing EEG sensors of an impending seizure. An innovative approach for epileptic seizure prediction has been proposed to improve prediction accuracy and reduce the false alarm rate in comparison with state-of-the-art benchmarks. Maximal overlap discrete wavelet transform was used to decompose EEG signals into different frequency resolutions, and a multiresolution convolutional neural network is designed to extract discriminative features from each frequency band. The algorithm automatically generates patient-specific features to best classify preictal and interictal segments of the subject. The method can be applied to any patient case from any dataset without the need for a handcrafted feature extraction procedure. The proposed approach was tested with two popular epilepsy patient datasets. It achieved a sensitivity of 82% and a false prediction rate of 0.058 with the Children’s Hospital Boston-MIT scalp EEG dataset and a sensitivity of 85% and a false prediction rate of 0.19 with the American Epilepsy Society Seizure Prediction Challenge dataset. This technology provides a personalized solution for the patient that has improved sensitivity and specificity, yet because of the algorithm’s intrinsic ability for generalization, it emancipates from the reliance on epileptologists’ expertise to tune a wearable technological aid, which will ultimately help to deploy it broadly, including in medically underserved locations across the globe.
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