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Epileptic Seizure Detection in EEG via Fusion of Multi-View Attention-Gated U-Net Deep Neural Networks

机译:通过多视图融合的U-NET深神​​经网络融合通过融合脑电图癫痫癫痫发作检测

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Electroencephalography (EEG) is an essential tool in clinical practice for the diagnosis and monitoring of people with epilepsy. Manual annotation of epileptic seizures is a time consuming process performed by expert neurologists. Hence, a procedure which automatically detects seizures would be hugely beneficial for a fast and cost-effective diagnosis. Recent progress in machine learning techniques, especially deep learning methods, coupled with the availability of large public EEG seizure databases provide new opportunities towards the design of automatic EEG-based seizure detection algorithms. We propose an epileptic seizure detection pipeline based on the fusion of multiple attention-gated U-nets, each operating on a different view of the EEG data. These different views correspond to distinct signal processing techniques applied on the raw EEG. The proposed model uses a long short term memory (LSTM) network for fusion of the individual attention-gated U-net outputs to detect seizures in EEG. The model outperforms the state-of-the-art models on the TUH EEG seizure dataset and was awarded the first place in the Neureka™ 2020 Epilepsy Challenge.
机译:脑电图(EEG)是诊断和监测癫痫患者的临床实践中的重要工具。手动注释癫痫发作是专家神经科学家进行的耗时过程。因此,自动检测癫痫发作的程序对于快速和经济高效的诊断,这将是非常有益的。最近在机器学习技术中的进展,尤其是深度学习方法,加上大型公共EEG癫痫发作数据库的可用性为自动eEG的癫痫发作检测算法提供了新的机会。我们提出了一种基于多个关注U-Net的融合的癫痫发作检测管道,每个UEG数据在EEG数据的不同视图上运行。这些不同的视图对应于应用于原始EEG上的不同信号处理技术。所提出的模型使用长期内存(LSTM)网络来融合各个关注的U-Net输出,以检测EEG中的癫痫发作。该模型在TUH EEG SEIZURE DataSet上优于最先进的模型,并在Neureka™2020癫痫挑战中获奖。

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