Multivariate pattern analysis of electroencephalography data in a demand-selection task

  1. David López-García
  2. Alberto Sobrado
  3. J. M. González-Peñalver
  4. Juan Manuel Górriz
  5. María Ruz
Libro:
Understanding the Brain Function and Emotions: 8th International Work-Conference on the Interplay Between Natural and Artificial Computation, IWINAC 2019 Almería, Spain, June 3–7, 2019 Proceedings, Part I
  1. José Manuel Ferrández Vicente (dir. congr.)
  2. José Ramón Álvarez-Sánchez (dir. congr.)
  3. Félix de la Paz López (dir. congr.)
  4. Javier Toledo Moreo (dir. congr.)
  5. Hojjat Adeli (dir. congr.)

Editorial: Springer Suiza

ISBN: 978-3-030-19591-5

Año de publicación: 2019

Páginas: 403-411

Tipo: Capítulo de Libro

Resumen

Cognitive effort is costly and partly aversive, and thushumans usually avoid it if given the chance. In Demand-Selection Tasks (DST), participants tend to choose the easy option over the hard one.The neural underpinnings of this effect, however, are not well understood. The current study is an initial approximation to adapt a DST to a format that allows measuring concurrent high-density electroencephalography. We used multivariate pattern analysis (MVPA) to decode conflictrelated neural processes associated with congruent or incongruent events in a time-frequency resolved way and determined how different frequency bands contribute to the overall decoding accuracy.The decoding analysis involved the use of Support Vector Machines, a supervised learning algorithm that provides a theoretically elegant, computationally efficient, and very effective solution for many practical pattern recognition problems. Preliminary results show significant differences in activationpatterns for congruent and incongruent trials, yielding 80% of decoding accuracy 400 ms after the stimulus onset. The results of frequency bands contribution analysis suggest that context-dependent proportion of congruency effect may rely on neural processes operating in Delta and Theta-band frequencies