Network Neuroscience (Feb 2019)

Connectome sorting by consensus clustering increases separability in group neuroimaging studies

  • Javier Rasero,
  • Ibai Diez,
  • Jesus M. Cortes,
  • Daniele Marinazzo,
  • Sebastiano Stramaglia

DOI
https://doi.org/10.1162/netn_a_00074
Journal volume & issue
Vol. 3, no. 2
pp. 325 – 343

Abstract

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A fundamental challenge in preprocessing pipelines for neuroimaging datasets is to increase the signal-to-noise ratio for subsequent analyses. In the same line, we suggest here that the application of the consensus clustering approach to brain connectivity matrices can be a valid additional step for connectome processing to find subgroups of subjects with reduced intragroup variability and therefore increasing the separability of the distinct subgroups when connectomes are used as a biomarker. Moreover, by partitioning the data with consensus clustering before any group comparison (for instance, between a healthy population vs. a pathological one), we demonstrate that unique regions within each cluster arise and bring new information that could be relevant from a clinical point of view.

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