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神经相关的用户学习在长期的脑机接口竞赛训练。

Neural correlates of user learning during long-term BCI training for the Cybathlon competition.

机构信息

Department of Information Engineering, University of Padova, Padua, Italy.

Padova Neuroscience Center, University of Padova, Padua, Italy.

出版信息

J Neuroeng Rehabil. 2022 Jul 5;19(1):69. doi: 10.1186/s12984-022-01047-x.

Abstract

BACKGROUND

Brain-computer interfaces (BCIs) are systems capable of translating human brain patterns, measured through electroencephalography (EEG), into commands for an external device. Despite the great advances in machine learning solutions to enhance the performance of BCI decoders, the translational impact of this technology remains elusive. The reliability of BCIs is often unsatisfactory for end-users, limiting their application outside a laboratory environment.

METHODS

We present the analysis on the data acquired from an end-user during the preparation for two Cybathlon competitions, where our pilot won the gold medal twice in a row. These data are of particular interest given the mutual learning approach adopted during the longitudinal training phase (8 months), the long training break in between the two events (1 year) and the demanding evaluation scenario. A multifaceted perspective on long-term user learning is proposed: we enriched the information gathered through conventional metrics (e.g., accuracy, application performances) by investigating novel neural correlates of learning in different neural domains.

RESULTS

First, we showed that by focusing the training on user learning, the pilot was capable of significantly improving his performance over time even with infrequent decoder re-calibrations. Second, we revealed that the analysis of the within-class modifications of the pilot's neural patterns in the Riemannian domain is more effective in tracking the acquisition and the stabilization of BCI skills, especially after the 1-year break. These results further confirmed the key role of mutual learning in the acquisition of BCI skills, and particularly highlighted the importance of user learning as a key to enhance BCI reliability.

CONCLUSION

We firmly believe that our work may open new perspectives and fuel discussions in the BCI field to shift the focus of future research: not only to the machine learning of the decoder, but also in investigating novel training procedures to boost the user learning and the stability of the BCI skills in the long-term. To this end, the analyses and the metrics proposed could be used to monitor the user learning during training and provide a marker guiding the decoder re-calibration to maximize the mutual adaptation of the user to the BCI system.

摘要

背景

脑机接口(BCI)是一种能够将通过脑电图(EEG)测量的人类脑模式转换为外部设备命令的系统。尽管机器学习解决方案在提高 BCI 解码器性能方面取得了巨大进展,但该技术的转化影响仍难以捉摸。BCI 的可靠性往往不能满足最终用户的要求,限制了它们在实验室环境之外的应用。

方法

我们对一位参加两届 Cybathlon 比赛的最终用户在准备期间采集的数据进行了分析,我们的飞行员在这两届比赛中连续两次获得金牌。鉴于在纵向训练阶段(8 个月)采用的相互学习方法、两次比赛之间的长时间训练中断(1 年)以及要求苛刻的评估场景,这些数据特别有趣。提出了一种长期用户学习的多方面视角:我们通过在不同的神经域中研究新的学习神经相关物,丰富了通过常规指标(例如准确性、应用性能)收集的信息。

结果

首先,我们表明,通过将训练重点放在用户学习上,飞行员即使在解码器频繁重新校准的情况下,也能够随着时间的推移显著提高他的表现。其次,我们发现,在黎曼域中分析飞行员神经模式的类内变化更有效地跟踪 BCI 技能的获取和稳定,特别是在 1 年的中断之后。这些结果进一步证实了相互学习在 BCI 技能获取中的关键作用,特别强调了用户学习作为增强 BCI 可靠性的关键的重要性。

结论

我们坚信,我们的工作可能会为 BCI 领域开辟新的视角,并推动讨论,将未来研究的重点不仅放在解码器的机器学习上,还放在探索新的训练程序上,以促进用户学习和长期 BCI 技能的稳定性。为此,提出的分析和指标可用于在训练期间监测用户学习,并提供指导解码器重新校准的标记,以最大限度地提高用户与 BCI 系统的相互适应。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2f66/9254548/7bb192a61ada/12984_2022_1047_Fig1_HTML.jpg

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