Increasingly diverse brain dynamics in the developmental arc: using Pareto-optimization to infer a mechanism

ORAL

Abstract

Motivated by a recent demonstration that the network architecture of white matter supports emerging control of diverse neural dynamics as children mature into adults, we seek to investigate structural mechanisms that support these changes. Beginning from a network representation of diffusion imaging data, we simulate network evolution with a set of simple growth rules built on principles of network control. Notably, the optimal evolutionary trajectory displays a striking correspondence to the progression of child to adult brain, suggesting that network control is a driver of development. More generally, and in comparison to the complete set of available models, we demonstrate that all brain networks – from child to adult – are structured in a manner highly optimized for the control of diverse neural dynamics. Within this near-optimality, we observe differences in the predicted control mechanisms of the child and adult brains, suggesting that the white matter architecture in children has a greater potential to increasingly support brain state transitions, potentially underlying cognitive switching.

Authors

  • Evelyn Tang

    • University of Pennsylvania
  • Chad Giusti

    • University of Pennsylvania
  • Graham Baum

    • University of Pennsylvania
  • Shi Gu

    • University of Pennsylvania
  • Eli Pollock

    • University of Pennsylvania
  • Ari Kahn

    • University of Pennsylvania
  • David Roalf

    • University of Pennsylvania
  • Tyler Moore

    • University of Pennsylvania
  • Kosha Ruparel

    • University of Pennsylvania
  • Ruben Gur

    • University of Pennsylvania
  • Raquel Gur

    • University of Pennsylvania
  • Theodore Satterthwaite

    • University of Pennsylvania
  • Danielle Bassett

    • University of Pennsylvania
    • Univ of Pennsylvania