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Decoding individual finger movements from one hand using human EEG signals.

Publication ,  Journal Article
Liao, K; Xiao, R; Gonzalez, J; Ding, L
Published in: PloS one
January 2014

Brain computer interface (BCI) is an assistive technology, which decodes neurophysiological signals generated by the human brain and translates them into control signals to control external devices, e.g., wheelchairs. One problem challenging noninvasive BCI technologies is the limited control dimensions from decoding movements of, mainly, large body parts, e.g., upper and lower limbs. It has been reported that complicated dexterous functions, i.e., finger movements, can be decoded in electrocorticography (ECoG) signals, while it remains unclear whether noninvasive electroencephalography (EEG) signals also have sufficient information to decode the same type of movements. Phenomena of broadband power increase and low-frequency-band power decrease were observed in EEG in the present study, when EEG power spectra were decomposed by a principal component analysis (PCA). These movement-related spectral structures and their changes caused by finger movements in EEG are consistent with observations in previous ECoG study, as well as the results from ECoG data in the present study. The average decoding accuracy of 77.11% over all subjects was obtained in classifying each pair of fingers from one hand using movement-related spectral changes as features to be decoded using a support vector machine (SVM) classifier. The average decoding accuracy in three epilepsy patients using ECoG data was 91.28% with the similarly obtained features and same classifier. Both decoding accuracies of EEG and ECoG are significantly higher than the empirical guessing level (51.26%) in all subjects (p<0.05). The present study suggests the similar movement-related spectral changes in EEG as in ECoG, and demonstrates the feasibility of discriminating finger movements from one hand using EEG. These findings are promising to facilitate the development of BCIs with rich control signals using noninvasive technologies.

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Published In

PloS one

DOI

EISSN

1932-6203

ISSN

1932-6203

Publication Date

January 2014

Volume

9

Issue

1

Start / End Page

e85192

Related Subject Headings

  • Support Vector Machine
  • Principal Component Analysis
  • Movement
  • Motor Cortex
  • Male
  • Humans
  • General Science & Technology
  • Fingers
  • Female
  • Epilepsy
 

Citation

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Liao, K., Xiao, R., Gonzalez, J., & Ding, L. (2014). Decoding individual finger movements from one hand using human EEG signals. PloS One, 9(1), e85192. https://doi.org/10.1371/journal.pone.0085192
Liao, Ke, Ran Xiao, Jania Gonzalez, and Lei Ding. “Decoding individual finger movements from one hand using human EEG signals.PloS One 9, no. 1 (January 2014): e85192. https://doi.org/10.1371/journal.pone.0085192.
Liao K, Xiao R, Gonzalez J, Ding L. Decoding individual finger movements from one hand using human EEG signals. PloS one. 2014 Jan;9(1):e85192.
Liao, Ke, et al. “Decoding individual finger movements from one hand using human EEG signals.PloS One, vol. 9, no. 1, Jan. 2014, p. e85192. Epmc, doi:10.1371/journal.pone.0085192.
Liao K, Xiao R, Gonzalez J, Ding L. Decoding individual finger movements from one hand using human EEG signals. PloS one. 2014 Jan;9(1):e85192.

Published In

PloS one

DOI

EISSN

1932-6203

ISSN

1932-6203

Publication Date

January 2014

Volume

9

Issue

1

Start / End Page

e85192

Related Subject Headings

  • Support Vector Machine
  • Principal Component Analysis
  • Movement
  • Motor Cortex
  • Male
  • Humans
  • General Science & Technology
  • Fingers
  • Female
  • Epilepsy