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基于在线线性模型的低成本无线脑机接口用于光标控制的可用性研究

A Usability Study of Low-cost Wireless Brain-Computer Interface for Cursor Control Using Online Linear Model.

作者信息

Abiri Reza, Borhani Soheil, Kilmarx Justin, Esterwood Connor, Jiang Yang, Zhao Xiaopeng

机构信息

Dept. of Neurology at University of California, San Francisco/Berkeley and Dept. of Mechanical, Aerospace, and Biomedical Engineering at the University of Tennessee, Knoxville.

Department of Mechanical, Aerospace, and Biomedical Engineering, The University of Tennessee, Knoxville, TN 37996 USA.

出版信息

IEEE Trans Hum Mach Syst. 2020 Aug;50(4):287-297. doi: 10.1109/thms.2020.2983848. Epub 2020 May 14.

Abstract

Computer cursor control using electroencephalogram (EEG) signals is a common and well-studied brain-computer interface (BCI). The emphasis of the literature has been primarily on evaluation of the objective measures of assistive BCIs such as accuracy of the neural decoder whereas the subjective measures such as user's satisfaction play an essential role for the overall success of a BCI. As far as we know, the BCI literature lacks a comprehensive evaluation of the usability of the mind-controlled computer cursor in terms of decoder efficiency (accuracy), user experience, and relevant confounding variables concerning the platform for the public use. To fill this gap, we conducted a two-dimensional EEG-based cursor control experiment among 28 healthy participants. The computer cursor velocity was controlled by the imagery of hand movement using a paradigm presented in the literature named imagined body kinematics (IBK) with a low-cost wireless EEG headset. We evaluated the usability of the platform for different objective and subjective measures while we investigated the extent to which the training phase may influence the ultimate BCI outcome. We conducted pre- and post- BCI experiment interview questionnaires to evaluate the usability. Analyzing the questionnaires and the testing phase outcome shows a positive correlation between the individuals' ability of visualization and their level of mental controllability of the cursor. Despite individual differences, analyzing training data shows the significance of electrooculogram (EOG) on the predictability of the linear model. The results of this work may provide useful insights towards designing a personalized user-centered assistive BCI.

摘要

使用脑电图(EEG)信号进行计算机光标控制是一种常见且经过充分研究的脑机接口(BCI)。文献的重点主要在于评估辅助性脑机接口的客观指标,如神经解码器的准确性,而诸如用户满意度等主观指标对于脑机接口的整体成功起着至关重要的作用。据我们所知,脑机接口文献缺乏对基于思维控制的计算机光标的可用性进行全面评估,包括解码器效率(准确性)、用户体验以及与公共使用平台相关的混杂变量。为了填补这一空白,我们在28名健康参与者中进行了一项基于二维脑电图的光标控制实验。使用文献中提出的一种名为想象身体运动学(IBK)的范式,通过手部运动的想象来控制计算机光标速度,采用的是低成本无线脑电图耳机。我们在研究训练阶段对最终脑机接口结果的影响程度时,评估了该平台在不同客观和主观指标方面的可用性。我们进行了脑机接口实验前后的访谈问卷来评估可用性。对问卷和测试阶段结果的分析表明,个体的可视化能力与其对光标的心理可控水平之间存在正相关。尽管存在个体差异,但对训练数据的分析表明眼电图(EOG)对线性模型的可预测性具有重要意义。这项工作的结果可能为设计以用户为中心的个性化辅助脑机接口提供有用的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5931/7990128/ed9b48660143/nihms-1612220-f0001.jpg

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