An information theoretic technique for harnessing attenuation of high spatial frequencies to design ultra-high-density EEG

P. Grover, J. Weldon, S. Kelly, Praveen Venkatesh, Haewon Jeong
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引用次数: 5

Abstract

It is widely believed in the clinical and biosciences community that Electroencephalography (EEG) is fundamentally limited in the spatial resolution achieved using a few hundred electrodes. This belief rests on the well known decay of high-spatial frequencies as the signal passes from the brain surface to the scalp surface. These high spatial frequencies carry high spatial resolution information about the source. However, recent experimental work as well as our theoretical and numerical analyses strongly suggest that EEG's resolution could be improved significantly through increased electrode density despite this decay. Somewhat counterintuitively, instead of viewing this decay of spatial frequencies as a detriment to signal quality (which it is), in this work we propose an information-theoretic strategy to harness this decay to reduce circuit area and energy needed for high-resolution signal acquisition. This is made possible by the observation that this spatial-low-pass filtering of the signal as it passes from the brain to the scalp induces large spatial correlations that can be exploited information-theoretically. The proposed techniques are shown in idealized head models to reduce requirements on energy required for sensing by 3×. These results are being applied towards an ongoing project on developing the “Neural Web,” a 10,000 electrode portable EEG system at CMU.
利用高空间频率衰减的信息理论技术设计超高密度脑电图
临床和生物科学界普遍认为,脑电图(EEG)基本上局限于使用几百个电极实现的空间分辨率。这种观点基于众所周知的高空间频率衰减,即当信号从大脑表面传递到头皮表面时。这些高空间频率携带有关源的高空间分辨率信息。然而,最近的实验工作以及我们的理论和数值分析强烈表明,尽管存在这种衰减,但通过增加电极密度可以显著提高EEG的分辨率。在这项工作中,我们提出了一种信息理论策略来利用这种衰减来减少高分辨率信号采集所需的电路面积和能量,而不是将这种空间频率的衰减视为对信号质量的损害(事实确实如此)。当信号从大脑传递到头皮时,这种空间低通滤波引起了可以利用信息理论的大空间相关性,这使得这一点成为可能。所提出的技术在理想的头部模型中显示,可以将传感所需的能量要求降低3倍。这些结果正在应用于一个正在进行的开发“神经网络”的项目,这是CMU的一个10,000电极便携式脑电图系统。
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