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引入混沌码调制正常成年人的编码调制视觉诱发电位(c-VEP)以减少视觉疲劳。

Introducing chaotic codes for the modulation of code modulated visual evoked potentials (c-VEP) in normal adults for visual fatigue reduction.

机构信息

Medical Physics & Biomedical Engineering Department, School of Medicine, Tehran University of Medical Sciences, Tehran, Iran.

Research Center for Biomedical Technologies and Robotics (RCBTR), Tehran University of Medical Sciences, Tehran, Iran.

出版信息

PLoS One. 2019 Mar 6;14(3):e0213197. doi: 10.1371/journal.pone.0213197. eCollection 2019.

Abstract

Code modulated Visual Evoked Potentials (c-VEP) based BCI studies usually employ m-sequences as a modulating codes for their broadband spectrum and correlation property. However, subjective fatigue of the presented codes has been a problem. In this study, we introduce chaotic codes containing broadband spectrum and similar correlation property. We examined whether the introduced chaotic codes could be decoded from EEG signals and also compared the subjective fatigue level with m-sequence codes in normal subjects. We generated chaotic code from one-dimensional logistic map and used it with conventional 31-bit m-sequence code. In a c-VEP based study in normal subjects (n = 44, 21 females) we presented these codes visually and recorded EEG signals from the corresponding codes for their four lagged versions. Canonical correlation analysis (CCA) and spatiotemporal beamforming (STB) methods were used for target identification and comparison of responses. Additionally, we compared the subjective self-declared fatigue using VAS caused by presented m-sequence and chaotic codes. The introduced chaotic code was decoded from EEG responses with CCA and STB methods. The maximum total accuracy values of 93.6 ± 11.9% and 94 ± 14.4% were achieved with STB method for chaotic and m-sequence codes for all subjects respectively. The achieved accuracies in all subjects were not significantly different in m-sequence and chaotic codes. There was significant reduction in subjective fatigue caused by chaotic codes compared to the m-sequence codes. Both m-sequence and chaotic codes were similar in their accuracies as evaluated by CCA and STB methods. The chaotic codes significantly reduced subjective fatigue compared to the m-sequence codes.

摘要

基于编码调制视觉诱发电位(c-VEP)的脑-机接口研究通常使用 m 序列作为调制码,因为它们具有宽带谱和相关特性。然而,呈现的码所引起的主观疲劳一直是一个问题。在这项研究中,我们引入了具有宽带谱和相似相关特性的混沌码。我们检查了引入的混沌码是否可以从 EEG 信号中解码出来,并在正常受试者中比较了它们与 m 序列码的主观疲劳水平。我们从一维 logistic 映射生成混沌码,并将其与传统的 31 位 m 序列码一起使用。在一项基于 c-VEP 的正常受试者研究(n = 44,21 名女性)中,我们通过视觉呈现这些码,并记录了相应码的 EEG 信号,包括其四个滞后版本。我们使用典型相关分析(CCA)和时空波束形成(STB)方法进行目标识别和响应比较。此外,我们比较了使用 VAS 报告的由呈现的 m 序列和混沌码引起的主观疲劳。CCA 和 STB 方法可从 EEG 响应中解码引入的混沌码。STB 方法在所有受试者中分别实现了 93.6±11.9%和 94±14.4%的最大总准确率,用于混沌和 m 序列码。在 m 序列和混沌码中,所有受试者的准确率均无显著差异。与 m 序列码相比,混沌码引起的主观疲劳显著降低。CCA 和 STB 方法评估表明,m 序列和混沌码在准确性上相似。与 m 序列码相比,混沌码显著降低了主观疲劳。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fa63/6402685/e8556cd265e5/pone.0213197.g001.jpg

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