首页> 外文期刊>Frontiers in Neuroscience >Electrode replacement does not affect classification accuracy in dual-session use of a passive brain-computer interface for assessing cognitive workload
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Electrode replacement does not affect classification accuracy in dual-session use of a passive brain-computer interface for assessing cognitive workload

机译:电极的替换不会影响在双阶段使用被动脑计算机接口评估认知负荷的分类准确性

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The passive brain-computer interface (pBCI) framework has been shown to be a very promising construct for assessing cognitive and affective state in both individuals and teams. There is a growing body of work that focuses on solving the challenges of transitioning pBCI systems from the research laboratory environment to practical, everyday use. An interesting issue is what impact methodological variability may have on the ability to reliably identify (neuro)physiological patterns that are useful for state assessment. This work aimed at quantifying the effects of methodological variability in a pBCI design for detecting changes in cognitive workload. Specific focus was directed toward the effects of replacing electrodes over dual sessions (thus inducing changes in placement, electromechanical properties, and/or impedance between the electrode and skin surface) on the accuracy of several machine learning approaches in a binary classification problem. In investigating these methodological variables, it was determined that the removal and replacement of the electrode suite between sessions does not impact the accuracy of a number of learning approaches when trained on one session and tested on a second. This finding was confirmed by comparing to a control group for which the electrode suite was not replaced between sessions. This result suggests that sensors (both neurological and peripheral) may be removed and replaced over the course of many interactions with a pBCI system without affecting its performance. Future work on multi-session and multi-day pBCI system use should seek to replicate this (lack of) effect between sessions in other tasks, temporal time courses, and data analytic approaches while also focusing on non-stationarity and variable classification performance due to intrinsic factors.
机译:被动脑机接口(pBCI)框架已被证明是用于评估个人和团队的认知和情感状态的非常有前途的结构。越来越多的工作专注于解决将pBCI系统从研究实验室环境过渡到日常实际使用的挑战。一个有趣的问题是方法学变异性可能会对可靠地识别对状态评估有用的(神经)生理模式的能力产生什么影响。这项工作旨在量化pBCI设计中方法变异性的影响,以检测认知工作量的变化。在二元分类问题中,特别关注的是针对在两次会话中更换电极(从而引起位置,机电特性和/或电极与皮肤表面之间的阻抗的变化)对几种机器学习方法的准确性的影响。在研究这些方法学变量时,已确定,在一次会话中进行训练并在第二次测试时,两次会话之间电极套件的移除和更换不会影响多种学习方法的准确性。通过与对照组之间没有更换电极套件的对照组进行比较,证实了这一发现。该结果表明,在与pBCI系统进行多次交互作用的过程中,可以删除并更换传感器(神经系统和外围传感器)而不会影响其性能。未来在多会话和多天pBCI系统使用方面的工作应力图在其他任务,时间时程和数据分析方法中的会话之间复制这种(缺乏)影响,同时还要关注非平稳性和变量分类性能,这是由于内在因素。

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