Riemannian geometry-based metrics to measure and reinforce user performance changes during brain-computer interface user training

Author:

Ivanov Nicolas,Chau Tom

Abstract

Despite growing interest and research into brain-computer interfaces (BCI), their usage remains limited outside of research laboratories. One reason for this is BCI inefficiency, the phenomenon where a significant number of potential users are unable to produce machine-discernible brain signal patterns to control the devices. To reduce the prevalence of BCI inefficiency, some have advocated for novel user-training protocols that enable users to more effectively modulate their neural activity. Important considerations for the design of these protocols are the assessment measures that are used for evaluating user performance and for providing feedback that guides skill acquisition. Herein, we present three trial-wise adaptations (running, sliding window and weighted average) of Riemannian geometry-based user-performance metrics (classDistinct reflecting the degree of class separability and classStability reflecting the level of within-class consistency) to enable feedback to the user following each individual trial. We evaluated these metrics, along with conventional classifier feedback, using simulated and previously recorded sensorimotor rhythm-BCI data to assess their correlation with and discrimination of broader trends in user performance. Analysis revealed that the sliding window and weighted average variants of our proposed trial-wise Riemannian geometry-based metrics more accurately reflected performance changes during BCI sessions compared to conventional classifier output. The results indicate the metrics are a viable method for evaluating and tracking user performance changes during BCI-user training and, therefore, further investigation into how these metrics may be presented to users during training is warranted.

Funder

Natural Sciences and Engineering Research Council of Canada

Publisher

Frontiers Media SA

Subject

Cellular and Molecular Neuroscience,Neuroscience (miscellaneous)

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Riemannian geometry metric-based visual feedback for BCI user training: towards exploratory learning of motor imagery;Brain-Apparatus Communication: A Journal of Bacomics;2024-06-30

2. Towards user-centric BCI design: Markov chain-based user assessment for mental imagery EEG-BCIs;Journal of Neural Engineering;2023-12-01

3. Novel BCI paradigm for ALS patients based on EEG and Pupillary Accommodative Response;Proceedings of the 15th Biannual Conference of the Italian SIGCHI Chapter;2023-09-20

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