论文标题

多层平台,用于认识大规模脑电图

Multi-Tier Platform for Cognizing Massive Electroencephalogram

论文作者

Chen, Zheng, Zhu, Lingwei, Yang, Ziwei, Zhang, Renyuan

论文摘要

组装多层层的端到端平台是为精确认识大脑活动而构建的。被喂养大量的脑电图(EEG)数据,时间频谱图通常投影到情节特征矩阵中(被视为Tier-1)。基于尖峰的神经网络(SNN)层旨在从稀有特征中提取原理信息,从而保持了脑电图性质的时间含义。所提出的层3从SNN转移了尖峰模式的时间和空间域;并将转置模式纳学馈送到人工神经网络(ANN,变压器)中,被称为Tier-4,其中提出了一种特殊的跨性拓扑结构以匹配二维输入形式。以这种方式,诸如分类之类的认知是高精度进行的。为了概念验证,通过引入多个脑电图数据集,其中最大的42,560小时记录了5,793名受试者,可以证明睡眠阶段评分问题。从实验结果中,我们的平台通过利用唯一的脑电图来实现87%的总体认知准确性,而唯一的脑电图比最新的脑电图高2%。此外,我们开发的多层方法论通过识别关键事件来提供对脑电图的时间特征的可见和图形解释,这在神经动力学中是在神经动力学中所要求的,但在常规的认知情景中几乎没有出现。

An end-to-end platform assembling multiple tiers is built for precisely cognizing brain activities. Being fed massive electroencephalogram (EEG) data, the time-frequency spectrograms are conventionally projected into the episode-wise feature matrices (seen as tier-1). A spiking neural network (SNN) based tier is designed to distill the principle information in terms of spike-streams from the rare features, which maintains the temporal implication in the nature of EEGs. The proposed tier-3 transposes time- and space-domain of spike patterns from the SNN; and feeds the transposed pattern-matrices into an artificial neural network (ANN, Transformer specifically) known as tier-4, where a special spanning topology is proposed to match the two-dimensional input form. In this manner, cognition such as classification is conducted with high accuracy. For proof-of-concept, the sleep stage scoring problem is demonstrated by introducing multiple EEG datasets with the largest comprising 42,560 hours recorded from 5,793 subjects. From experiment results, our platform achieves the general cognition overall accuracy of 87% by leveraging sole EEG, which is 2% superior to the state-of-the-art. Moreover, our developed multi-tier methodology offers visible and graphical interpretations of the temporal characteristics of EEG by identifying the critical episodes, which is demanded in neurodynamics but hardly appears in conventional cognition scenarios.

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