基于递归神经网络的事件相关电位盲源分离。

IF 5.2 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Jamie A. O’Reilly;Hassapong Sunthornwiriya-Amon;Naradith Aparprasith;Pannapa Kittichalao;Pornnaphas Chairojwong;Thanabodee Klai-On;Edward W. Lannon
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引用次数: 0

摘要

事件相关电位是由与心理生理事件相关的神经生理活动产生的电位差的叠加。底层信号源的时空解离可以补充传统的ERP分析,提高信号源的定位能力。然而,通过独立成分分析(ICA)分离的来源可能具有挑战性,因为冗余或虚幻的成分以及不确定的极性和尺度。因此,我们开发了一种递归神经网络(RNN)盲源分离方法。RNN将表示事件的输入阶跃脉冲信号转换成相应的ERP差分波形。从倒数第二层单元获得源波形,从前馈输出层权重获得头皮图,该权重将这些源波形投影到EEG电极振幅上。在训练过程中,通过结合从网络倒数第二层获得的信号的L1正则化,实现了可解释的稀疏源表示。将RNN方法应用于开放获取的ERP CORE数据库中的4种ERP差分波形(MMN、N170、N400、P3),并将ICA应用于同一数据进行比较。RNN将真实的erp分解为11个空间和时间上独立的源,这些源噪声较小,倾向于更具erp特异性,并且与ica衍生的源相比彼此之间的相似性较小。与ICA源相比,RNN源的波形幅度、头皮电位极性和等效电流偶极子取向之间的模糊性更小。综上所述,所提出的RNN盲源分离方法可以有效地应用于平均ERP波,并有望作为事件相关神经信号的计算模型得到进一步发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind Source Separation of Event-Related Potentials Using Recurrent Neural Network
Event-related potentials (ERPs) are a superposition of electric potential differences generated by neurophysiological activity associated with psychophysiological events. Spatiotemporal dissociation of underlying signal sources can supplement conventional ERP analysis and improve source localization. However, sources separated by independent component analysis (ICA) can be challenging to interpret because of redundant or illusory components and indeterminant polarity and scale. Hence, we have developed a recurrent neural network (RNN) method for blind source separation. The RNN transforms input step pulse signals representing events into corresponding ERP difference waveforms. Source waveforms are obtained from penultimate layer units and scalp maps are obtained from feed-forward output layer weights that project these source waveforms onto EEG electrode amplitudes. An interpretable, sparse source representation is achieved by incorporating L1 regularization of signals obtained from the penultimate layer of the network during training. This RNN method was applied to four ERP difference waveforms (MMN, N170, N400, P3) from the open-access ERP CORE database, and ICA was applied to the same data for comparison. The RNN decomposed real ERPs into eleven spatially and temporally separate sources that were less noisy, tended to be more ERP-specific, and were less similar to each other than ICA-derived sources. The RNN sources also had less ambiguity between source waveform amplitude, scalp potential polarity, and equivalent current dipole orientation than ICA sources. In conclusion, the proposed RNN blind source separation method can be effectively applied to average ERP waves and holds promise for further development as a computational model of event-related neural signals.
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来源期刊
CiteScore
8.60
自引率
8.20%
发文量
479
审稿时长
6-12 weeks
期刊介绍: Rehabilitative and neural aspects of biomedical engineering, including functional electrical stimulation, acoustic dynamics, human performance measurement and analysis, nerve stimulation, electromyography, motor control and stimulation; and hardware and software applications for rehabilitation engineering and assistive devices.
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