Stability and Localization of inter-individual differences in functional connectivity
Raag D. Airan, Joshua T. Vogelstein, Jay J. Pillai, Brian Caffo, James, J. Pekar, and Haris I. Sair

TL;DR
This study introduces a non-parametric metric to quantify individual differences in functional connectivity using resting-state fMRI, revealing optimal acquisition parameters and brain regions critical for individual differentiation.
Contribution
Develops a new statistical metric for assessing individual differentiation in functional connectivity and identifies optimal data acquisition strategies for personalized neuroimaging.
Findings
4-5 minutes of rs-fMRI suffices for perfect individual differentiation
Association cortices are key to individual variability
Tradeoff between sampling frequency and acquisition time
Abstract
Much recent attention has been paid to quantifying anatomic and functional neuroimaging on the individual subject level. For optimal individual subject characterization, specific acquisition and analysis features need to be identified that maximize inter-individual variability while concomitantly minimizing intra-subject variability. Here we develop a non-parametric statistical metric that quantifies the degree to which a parameter set allows this individual subject differentiation. We apply this metric to analyzing publicly available test-retest resting-state fMRI (rs-fMRI) data sets. We find that for the question of maximizing individual differentiation, there is a relative tradeoff between increasing sampling through increased sampling frequency or increased acquisition time; that for the sizes of the interrogated data sets, only 4-5 min of acquisition time is necessary to perfectly…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Neural dynamics and brain function · EEG and Brain-Computer Interfaces
