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Pervasive inter-individual differences in the sensorimotor-association axis of cortical organization

Bignardi, G.; Nivard, M. G.; Schaare, H. L.; Bernhardt, B. C.; Bethlehem, R. A. I.; Fisher, S. E.; Valk, S. L.

2023-07-13 neuroscience
10.1101/2023.07.13.548817 bioRxiv
Show abstract

In humans, many neurobiological features of the cortex--including gene expression patterns, microstructure, and functional connectivity--vary systematically along a sensorimotor-association (S-A) axis of brain organisation. To date, it is still poorly understood whether inter-individual differences in patterns of S-A axis capture these robust spatial relationships across neurobiological properties observed at the group-level. Here, we examine inter-individual differences in structural and functional properties of the S-A axis, namely cortical microstructure, geodesic distances, and the functional gradient, in a sample of young adults from the Human Connectome Project (N = 992, including 328 twins). We quantified heritable variation associated with inter-individual differences in the S-A axis, and assessed whether structural and functional properties that are highly spatially correlated at the group-level also share genetic underpinnings. To consider measurement errors in resting-state functional connectivity data and their impact on properties of the S-A axis, we used a multivariate twin design capable of disentangling individual-level variation in both intra- and inter-individual differences. After accounting for some of the intra-individual variation, we found average heritable individual differences in both the functional gradient (htwin2 = 57%), cortical microstructure (htwin2 = 43%), and geodesic distances (htwin2 = 34%). However, these genetic influences were mostly distinct and deviated from group-level patterns. In particular, we found no significant genetic correlation between the functional gradient and microstructure, while we found both positive and negative genetic associations between the functional gradient and geodesic distances. Our approach highlights the complexity of genetic contributions to brain organisation and may have potential implications for understanding cognitive variability within the S-A axis framework.

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