Nature Communications (Jun 2024)

Systematic evaluation of fMRI data-processing pipelines for consistent functional connectomics

  • Andrea I. Luppi,
  • Helena M. Gellersen,
  • Zhen-Qi Liu,
  • Alexander R. D. Peattie,
  • Anne E. Manktelow,
  • Ram Adapa,
  • Adrian M. Owen,
  • Lorina Naci,
  • David K. Menon,
  • Stavros I. Dimitriadis,
  • Emmanuel A. Stamatakis

DOI
https://doi.org/10.1038/s41467-024-48781-5
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 24

Abstract

Read online

Abstract Functional interactions between brain regions can be viewed as a network, enabling neuroscientists to investigate brain function through network science. Here, we systematically evaluate 768 data-processing pipelines for network reconstruction from resting-state functional MRI, evaluating the effect of brain parcellation, connectivity definition, and global signal regression. Our criteria seek pipelines that minimise motion confounds and spurious test-retest discrepancies of network topology, while being sensitive to both inter-subject differences and experimental effects of interest. We reveal vast and systematic variability across pipelines’ suitability for functional connectomics. Inappropriate choice of data-processing pipeline can produce results that are not only misleading, but systematically so, with the majority of pipelines failing at least one criterion. However, a set of optimal pipelines consistently satisfy all criteria across different datasets, spanning minutes, weeks, and months. We provide a full breakdown of each pipeline’s performance across criteria and datasets, to inform future best practices in functional connectomics.