基于卷积神经网络的新生儿癫痫检测

Alison O'Shea, G. Lightbody, G. Boylan, A. Temko
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引用次数: 40

摘要

本研究提出了一种新颖的端到端架构,该架构使用全卷积深度神经网络从原始EEG数据中学习分层表示,用于新生儿癫痫发作检测任务。深度神经网络作为特征提取器和分类器,允许对癫痫检测器进行端到端优化。设计的系统在连续未编辑的多通道新生儿脑电图大数据集上进行评估,总计835小时,包括1389次癫痫发作。所提出的深度架构,与样本级滤波器,实现了与最先进的基于svm的新生儿癫痫检测器相媲美的精度,该检测器在一组精心设计的手工特征上运行。全卷积架构允许脑电图波形和模式的定位,导致高癫痫发作的可能性,进一步的临床检查。
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Neonatal seizure detection using convolutional neural networks
This study presents a novel end-to-end architecture that learns hierarchical representations from raw EEG data using fully convolutional deep neural networks for the task of neonatal seizure detection. The deep neural network acts as both feature extractor and classifier, allowing for end-to-end optimization of the seizure detector. The designed system is evaluated on a large dataset of continuous unedited multichannel neonatal EEG totaling 835 hours and comprising of 1389 seizures. The proposed deep architecture, with sample-level filters, achieves an accuracy that is comparable to the state-of-the-art SVM-based neonatal seizure detector, which operates on a set of carefully designed hand-crafted features. The fully convolutional architecture allows for the localization of EEG waveforms and patterns that result in high seizure probabilities for further clinical examination.
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