AI Article Synopsis

  • fMRI is used in neuroscience to study how different brain areas interact, particularly during emotional tasks.
  • Density-based k-means clustering outperforms independent component analysis (ICA) in detecting subtle connections between brain regions involved in cognitive reappraisal of emotions.
  • The study finds significant activation in the frontal lobe, cingulum, and hypothalamus during emotional stimuli, indicating that density-based k-means clustering could improve future research on brain connectivity.

Article Abstract

Functional magnetic resonance imaging (fMRI) is an important tool in neuroscience for assessing connectivity and interactions between distant areas of the brain. To find and characterize the coherent patterns of brain activity as a means of identifying brain systems for the cognitive reappraisal of the emotion task, both density-based k-means clustering and independent component analysis (ICA) methods can be applied to characterize the interactions between brain regions involved in cognitive reappraisal of emotion. Our results reveal that compared with the ICA method, the density-based k-means clustering method provides a higher sensitivity of polymerization. In addition, it is more sensitive to those relatively weak functional connection regions. Thus, the study concludes that in the process of receiving emotional stimuli, the relatively obvious activation areas are mainly distributed in the frontal lobe, cingulum and near the hypothalamus. Furthermore, density-based k-means clustering method creates a more reliable method for follow-up studies of brain functional connectivity.

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http://dx.doi.org/10.3233/THC-161210DOI Listing

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