PLoS ONE (Jan 2014)

Classification of self-driven mental tasks from whole-brain activity patterns.

  • Norberto Eiji Nawa,
  • Hiroshi Ando

DOI
https://doi.org/10.1371/journal.pone.0097296
Journal volume & issue
Vol. 9, no. 5
p. e97296

Abstract

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During wakefulness, a constant and continuous stream of complex stimuli and self-driven thoughts permeate the human mind. Here, eleven participants were asked to count down numbers and remember negative or positive autobiographical episodes of their personal lives, for 32 seconds at a time, during which they could freely engage in the execution of those tasks. We then examined the possibility of determining from a single whole-brain functional magnetic resonance imaging scan which one of the two mental tasks each participant was performing at a given point in time. Linear support-vector machines were used to build within-participant classifiers and across-participants classifiers. The within-participant classifiers could correctly discriminate scans with an average accuracy as high as 82%, when using data from all individual voxels in the brain. These results demonstrate that it is possible to accurately classify self-driven mental tasks from whole-brain activity patterns recorded in a time interval as short as 2 seconds.