NeuroImage (Oct 2022)

Structural insight into the individual variability architecture of the functional brain connectome

  • Lianglong Sun,
  • Xinyuan Liang,
  • Dingna Duan,
  • Jin Liu,
  • Yuhan Chen,
  • Xindi Wang,
  • Xuhong Liao,
  • Mingrui Xia,
  • Tengda Zhao,
  • Yong He

Journal volume & issue
Vol. 259
p. 119387

Abstract

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Human cognition and behaviors depend upon the brain's functional connectomes, which vary remarkably across individuals. However, whether and how the functional connectome individual variability architecture is structurally constrained remains largely unknown. Using tractography- and morphometry-based network models, we observed the spatial convergence of structural and functional connectome individual variability, with higher variability in heteromodal association regions and lower variability in primary regions. We demonstrated that functional variability is significantly predicted by a unifying structural variability pattern and that this prediction follows a primary-to-heteromodal hierarchical axis, with higher accuracy in primary regions and lower accuracy in heteromodal regions. We further decomposed group-level connectome variability patterns into individual unique contributions and uncovered the structural-functional correspondence that is associated with individual cognitive traits. These results advance our understanding of the structural basis of individual functional variability and suggest the importance of integrating multimodal connectome signatures for individual differences in cognition and behaviors.

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