Optimal hierarchical modular topologies for producing limited sustained activation of neural networks
Marcus Kaiser, Claus C. Hilgetag

TL;DR
This study investigates how hierarchical modular network structures influence the stability of neural activity, revealing that certain configurations support sustained activity across different brain sizes, which may explain increased complexity in larger brains.
Contribution
It identifies specific hierarchical configurations that optimize limited sustained activity in neural networks, extending understanding of brain network organization.
Findings
Optimal configurations have intermediate hierarchy levels and many modules.
Larger networks tend to require more hierarchical levels or modules.
Certain configurations support stable neural activity across brain sizes.
Abstract
An essential requirement for the representation of functional patterns in complex neural networks, such as the mammalian cerebral cortex, is the existence of stable regimes of network activation, typically arising from a limited parameter range. In this range of limited sustained activity (LSA), the activity of neural populations in the network persists between the extremes of either quickly dying out or activating the whole network. Hierarchical modular networks were previously found to show a wider parameter range for LSA than random or small-world networks not possessing hierarchical organization or multiple modules. Here we explored how variation in the number of hierarchical levels and modules per level influenced network dynamics and occurrence of LSA. We tested hierarchical configurations of different network sizes, approximating the large-scale networks linking cortical columns…
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