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Assessing dynamic functional connectivity in heterogeneous samples.

B C L Lehmann1, S R White1, R N Henson2

  • 1Medical Research Council (MRC) Biostatistics Unit, Cambridge CB2 0SR, United Kingdom.

Neuroimage
|June 5, 2017
PubMed
Summary
This summary is machine-generated.

Heterogeneity in brain imaging data, like varying hemodynamic response functions and noise, can create false differences in dynamic functional connectivity (dFC) between groups. Researchers must account for these factors before interpreting dFC findings.

Keywords:
Dynamic functional connectivityFMRIGroup studiesResting state

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Area of Science:

  • Neuroimaging
  • Cognitive Neuroscience
  • Computational Neuroscience

Background:

  • Dynamic functional connectivity (dFC) analysis in fMRI aims to capture temporal brain activity patterns.
  • Sliding-window methods are common for dFC estimation, but can be sensitive to data heterogeneity.
  • Group comparisons of dFC, e.g., age-related differences, are a key research objective.

Purpose of the Study:

  • To investigate how individual differences in non-dynamic fMRI data features affect dFC estimation.
  • To determine if common dFC analysis methods can produce spurious group differences.
  • To highlight the need for careful consideration of confounding factors in dFC research.

Main Methods:

  • Utilized a generic simulation framework for functional magnetic resonance imaging (fMRI) data.
  • Introduced variations in parameters like hemodynamic response function (HRF) shape, neural autocorrelation, connectivity strength, and measurement noise.
  • Applied standard dFC analysis techniques (e.g., k-means, multilayer modularity) to simulated data.

Main Results:

  • Simulated individual differences in HRF shape, noise, and other factors led to apparent dFC variations, even without true dFC changes.
  • Common dFC methods detected spurious group differences when hyperparameters were not appropriately set.
  • The study demonstrated that non-dynamic individual differences can mimic dynamic connectivity changes.

Conclusions:

  • Individual variations in fMRI data characteristics (e.g., HRF, noise) can confound dFC group comparisons.
  • Standard dFC methods may erroneously identify group differences due to data heterogeneity.
  • Researchers must address potential sources of individual variability before concluding on group-specific dFC alterations.