用神经网络探索大脑和外周生物信号之间的关系

Alexander H. Hatteland, Ricards Marcinkevics, R. Marquis, Thomas Frick, Ilona Hubbard, Julia E. Vogt, T. Brunschwiler, P. Ryvlin
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引用次数: 1

摘要

自主神经外周活动部分由大脑自主神经中枢控制。然而,关于外周和中枢自主生物信号之间的确切联系仍然存在许多不确定性。澄清这些联系可能对可穿戴设备捕获的周边自主生物信号的可解释性和实用性产生深远影响。在这项研究中,我们利用了一个独特的数据集,包括颅内立体脑电图(SEEG)和外周生物信号,同时从4名接受癫痫监测的受试者中采集数天。与之前的工作相比,我们应用深度神经网络来探索脑电波与心率和皮肤电活动(EDA)变化之间的高维非线性相关性。此外,神经网络可解释性方法被应用于识别最相关的脑电波频率、大脑区域和时间信息,以预测特定的生物信号。在位于中枢自主神经网络的接触中,观察到最强的脑-外周相关性,特别是在α、θ和52至58 Hz频段。此外,SEEG信号与EDA信号之间存在12 ~ 14s的时间延迟。最后,我们认为这项初步研究展示了一种有前途的方法,通过利用深度神经网络的表达能力,以数据驱动的方式绘制脑外周关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Relationships between Cerebral and Peripheral Biosignals with Neural Networks
Autonomic peripheral activity is partly governed by brain autonomic centers. However, there is still a lot of uncertainties regarding the precise link between peripheral and central autonomic biosignals. Clarifying these links could have a profound impact on the interpretability, and thus usefulness, of peripheral autonomic biosignals captured with wearable devices. In this study, we take advantage of a unique dataset consisting of intracranial stereo-electroencephalography (SEEG) and peripheral biosignals acquired simultaneously for several days from four subjects undergoing epilepsy monitoring. Compared to previous work, we apply a deep neural network to explore high-dimensional nonlinear correlations between the cerebral brainwaves and variations in heart rate and electrodermal activity (EDA). Further, neural network explainability methods were applied to identify most relevant brainwave frequencies, brain regions and temporal information to predict a specific biosignal. Strongest brain-peripheral correlations were observed from contacts located in the central autonomic network, in particular in the alpha, theta and 52 to 58 Hz frequency band. Furthermore, a temporal delay of 12 to 14 s between SEEG and EDA signal was observed. Finally, we believe that this pilot study demonstrates a promising approach to mapping brain-peripheral relationships in a data-driven manner by leveraging the expressiveness of deep neural networks.
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