PLoS ONE (Jan 2013)

Prediction of P300 BCI aptitude in severe motor impairment.

  • Sebastian Halder,
  • Carolin Anne Ruf,
  • Adrian Furdea,
  • Emanuele Pasqualotto,
  • Daniele De Massari,
  • Linda van der Heiden,
  • Martin Bogdan,
  • Wolfgang Rosenstiel,
  • Niels Birbaumer,
  • Andrea Kübler,
  • Tamara Matuz

DOI
https://doi.org/10.1371/journal.pone.0076148
Journal volume & issue
Vol. 8, no. 10
p. e76148

Abstract

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Brain-computer interfaces (BCIs) provide a non-muscular communication channel for persons with severe motor impairments. Previous studies have shown that the aptitude with which a BCI can be controlled varies from person to person. A reliable predictor of performance could facilitate selection of a suitable BCI paradigm. Eleven severely motor impaired participants performed three sessions of a P300 BCI web browsing task. Before each session auditory oddball data were collected to predict the BCI aptitude of the participants exhibited in the current session. We found a strong relationship of early positive and negative potentials around 200 ms (elicited with the auditory oddball task) with performance. The amplitude of the P2 (r = -0.77) and of the N2 (r = -0.86) had the strongest correlations. Aptitude prediction using an auditory oddball was successful. The finding that the N2 amplitude is a stronger predictor of performance than P3 amplitude was reproduced after initially showing this effect with a healthy sample of BCI users. This will reduce strain on the end-users by minimizing the time needed to find suitable paradigms and inspire new approaches to improve performance.