Abstract
Functional connectivity (FC) refers to the statistical dependencies between activity of distinct brain areas. To study temporal fluctuations in FC within the duration of a functional magnetic resonance imaging (fMRI) scanning session, researchers have proposed the computation of an edge time series (ETS) and their derivatives. Evidence suggests that FC is driven by a few time points of high-amplitude co-fluctuation (HACF) in the ETS, which may also contribute disproportionately to interindividual differences. However, it remains unclear to what degree different time points actually contribute to brain-behaviour associations. Here, we systematically evaluate this question by assessing the predictive utility of FC estimates at different levels of co-fluctuation using machine learning (ML) approaches. We demonstrate that time points of lower and intermediate co-fluctuation levels provide overall highest subject specificity as well as highest predictive capacity of individual-level phenotypes.
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CITATION STYLE
Sasse, L., Larabi, D. I., Omidvarnia, A., Jung, K., Hoffstaedter, F., Jocham, G., … Patil, K. R. (2023). Intermediately synchronised brain states optimise trade-off between subject specificity and predictive capacity. Communications Biology, 6(1). https://doi.org/10.1038/s42003-023-05073-w
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