Towards a More Theory-Driven BCI Using Source Reconstructed Dynamics of EEG Time-Series

IF 0.8 Q4 MATERIALS SCIENCE, BIOMATERIALS
Ravichander Janapati, Vishwas Dalal, Rakesh Sengupta, Usha Desai, P. V. Raja Shekar, Sreedhar Kollem
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引用次数: 5

Abstract

Currently, the operational electroencephalography (EEG)-based brain–computer interfaces (BCIs) suffer from problems of BCI latency/lag issues, which restricts the use of interfaces impractical scenarios. One of the reasons behind the present challenges is the application of a purely data-driven approach to the BCI pipeline. Although BCI applications have improved significantly with the research in the fields of artificial intelligence (AI) and machine learning (ML), fundamental issues of data-driven training restrict the latency that can be achieved under current BCI paradigms. This work explores the possibility of future BCI using a combination of data-driven and theory-driven methods. In this study, an EEG-BCI dataset from steady-state visually evoked potentials (SSVEPs) is applied, where the SSVEP signals contain, source components from the occipital, parietal and frontal regions of the brain. Source reconstruction is done with the combination of independent component analysis (ICA) and low-resolution electromagnetic tomography analysis (LORETA). This method was able to predict BCI classification labels 5[Formula: see text]s earlier, based on pre-recorded signals from the scalp. The novelty of the current contribution lies in utilizing the source reconstructed EEG time-series for BCI classification, which allows for retention of classification accuracy up to 70% while working with the reduced data dimensionality. Implementation of this algorithm will allow a significant reduction in lag in online BCIs.
利用脑电时间序列的源重构动力学实现理论驱动的脑机接口
目前,基于操作脑电图(EEG)的脑机接口(BCI)存在脑机接口延迟/滞后问题,这限制了接口在不切实际的场景中的使用。当前挑战背后的原因之一是将纯粹的数据驱动方法应用于脑机接口管道。尽管随着人工智能(AI)和机器学习(ML)领域的研究,脑机接口的应用有了显著改善,但数据驱动训练的基本问题限制了在当前脑机接口范式下可以实现的延迟。这项工作探索了未来使用数据驱动和理论驱动方法相结合的脑机接口的可能性。在这项研究中,应用了来自稳态视觉诱发电位(SSVEP)的EEG-BCI数据集,其中SSVEP信号包含来自大脑枕部、顶叶和额叶区域的源成分。源重建采用独立分量分析(ICA)和低分辨率电磁层析成像分析(LORETA)相结合的方法。该方法能够根据头皮的预先记录信号,提前5秒预测脑机接口分类标签[公式:见正文]。当前贡献的新颖性在于利用源重构的EEG时间序列进行脑机接口分类,这允许在降低数据维度的情况下保持高达70%的分类精度。该算法的实现将显著减少在线脑机接口中的滞后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Nano Life
Nano Life MATERIALS SCIENCE, BIOMATERIALS-
CiteScore
0.70
自引率
12.50%
发文量
14
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