Frontiers in Neuroscience (May 2023)

Quality control in resting-state fMRI: the benefits of visual inspection

  • Rebecca J. Lepping,
  • Rebecca J. Lepping,
  • Hung-Wen Yeh,
  • Hung-Wen Yeh,
  • Brent C. McPherson,
  • Morgan G. Brucks,
  • Morgan G. Brucks,
  • Mohammad Sabati,
  • Mohammad Sabati,
  • Rainer T. Karcher,
  • William M. Brooks,
  • William M. Brooks,
  • Joshua D. Habiger,
  • Vlad B. Papa,
  • Laura E. Martin,
  • Laura E. Martin

DOI
https://doi.org/10.3389/fnins.2023.1076824
Journal volume & issue
Vol. 17

Abstract

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BackgroundA variety of quality control (QC) approaches are employed in resting-state functional magnetic resonance imaging (rs-fMRI) to determine data quality and ultimately inclusion or exclusion of a fMRI data set in group analysis. Reliability of rs-fMRI data can be improved by censoring or “scrubbing” volumes affected by motion. While censoring preserves the integrity of participant-level data, including excessively censored data sets in group analyses may add noise. Quantitative motion-related metrics are frequently reported in the literature; however, qualitative visual inspection can sometimes catch errors or other issues that may be missed by quantitative metrics alone. In this paper, we describe our methods for performing QC of rs-fMRI data using software-generated quantitative and qualitative output and trained visual inspection.ResultsThe data provided for this QC paper had relatively low motion-censoring, thus quantitative QC resulted in no exclusions. Qualitative checks of the data resulted in limited exclusions due to potential incidental findings and failed pre-processing scripts.ConclusionVisual inspection in addition to the review of quantitative QC metrics is an important component to ensure high quality and accuracy in rs-fMRI data analysis.

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