Magnetoencephalogram-based brain–computer interface for hand-gesture decoding using deep learning

Author:

Bu Yifeng1,Harrington Deborah L23,Lee Roland R23,Shen Qian23,Angeles-Quinto Annemarie23,Ji Zhengwei3,Hansen Hayden2,Hernandez-Lucas Jaqueline3,Baumgartner Jared3,Song Tao3,Nichols Sharon4,Baker Dewleen56,Rao Ramesh1,Lerman Imanuel157,Lin Tuo8,Tu Xin Ming8,Huang Mingxiong123

Affiliation:

1. University of California San Diego Department of Electrical and Computer Engineering, , La Jolla, CA 92093 , USA

2. San Diego Healthcare System Radiology, Research Services, VA, , San Diego, CA 92161 , USA

3. University of California San Diego Department of Radiology, , La Jolla, CA 92093 , USA

4. University of California San Diego Department of Neurosciences, , La Jolla, CA 92093 , USA

5. VA Center of Excellence for Stress and Mental Health , VA San Diego Healthcare System, San Diego, CA 92161 , USA

6. University of California San Diego Department of Psychiatry, , La Jolla, CA 92093 , USA

7. University of California San Diego Department of Anesthesiology, , La Jolla, CA 92093 , USA

8. University of California Division of Biostatistics and Bioinformatics, , San Diego, CA 92093 , USA

Abstract

Abstract Advancements in deep learning algorithms over the past decade have led to extensive developments in brain–computer interfaces (BCI). A promising imaging modality for BCI is magnetoencephalography (MEG), which is a non-invasive functional imaging technique. The present study developed a MEG sensor-based BCI neural network to decode Rock-Paper-scissors gestures (MEG-RPSnet). Unique preprocessing pipelines in tandem with convolutional neural network deep-learning models accurately classified gestures. On a single-trial basis, we found an average of 85.56% classification accuracy in 12 subjects. Our MEG-RPSnet model outperformed two state-of-the-art neural network architectures for electroencephalogram-based BCI as well as a traditional machine learning method, and demonstrated equivalent and/or better performance than machine learning methods that have employed invasive, electrocorticography-based BCI using the same task. In addition, MEG-RPSnet classification performance using an intra-subject approach outperformed a model that used a cross-subject approach. Remarkably, we also found that when using only central-parietal-occipital regional sensors or occipitotemporal regional sensors, the deep learning model achieved classification performances that were similar to the whole-brain sensor model. The MEG-RSPnet model also distinguished neuronal features of individual hand gestures with very good accuracy. Altogether, these results show that noninvasive MEG-based BCI applications hold promise for future BCI developments in hand-gesture decoding.

Funder

Congressionally Directed Medical Research Programs/Department of Defense

Naval Medical Research Center's Advanced Medical Development program

US Department of Veterans Affairs

Publisher

Oxford University Press (OUP)

Subject

Cellular and Molecular Neuroscience,Cognitive Neuroscience

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