Neuromorphic deep spiking neural networks for seizure detection

Yikai Yang, J. K. Eshraghian, Nhan Duy Truong, A. Nikpour, O. Kavehei
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引用次数: 8

Abstract

The vast majority of studies that process and analyze neural signals are conducted on cloud computing resources, which is often necessary for the demanding requirements of deep neural network workloads. However, applications such as epileptic seizure detection stand to benefit from edge devices that can securely analyze sensitive medical data in a real-time and personalised manner. In this work, we propose a novel neuromorphic computing approach to seizure detection using a surrogate gradient-based deep spiking neural network (SNN), which consists of a novel spiking ConvLSTM unit. We have trained, validated, and rigorously tested the proposed SNN model across three publicly accessible datasets, including Boston Children’s Hospital–MIT (CHB-MIT) dataset from the U.S., and the Freiburg (FB) and EPILEPSIAE intracranial electroencephalogram datasets from Germany. The average leave-one-out cross-validation area under the curve score for FB, CHB-MIT and EPILEPSIAE datasets can reach 92.7 % , 89.0 % , and 81.1 % , respectively, while the computational overhead and energy consumption are significantly reduced when compared to alternative state-of-the-art models, showing the potential for building an accurate hardware-friendly, low-power neuromorphic system. This is the first feasibility study using a deep SNN for seizure detection on several reliable public datasets.
用于癫痫检测的神经形态深脉冲神经网络
绝大多数处理和分析神经信号的研究都是在云计算资源上进行的,这对于深度神经网络工作负载的苛刻要求往往是必要的。然而,癫痫发作检测等应用将受益于能够以实时和个性化方式安全地分析敏感医疗数据的边缘设备。在这项工作中,我们提出了一种新的神经形态计算方法,使用基于代理梯度的深度尖峰神经网络(SNN)来检测癫痫发作,该网络由一个新的尖峰ConvLSTM单元组成。我们在三个可公开访问的数据集上训练、验证并严格测试了提出的SNN模型,包括来自美国的波士顿儿童医院-麻省理工学院(CHB-MIT)数据集,以及来自德国的Freiburg (FB)和EPILEPSIAE颅内脑电图数据集。FB、CHB-MIT和EPILEPSIAE数据集曲线得分下的平均留一交叉验证面积分别达到92.7%、89.0%和81.1%,而与其他最先进的模型相比,计算开销和能耗显著降低,显示了构建精确的硬件友好型、低功耗神经形态系统的潜力。这是第一次在几个可靠的公共数据集上使用深度SNN进行癫痫检测的可行性研究。
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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CiteScore
5.90
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