Controlling the human connectome with spatially diffuse input signals.

Publication Type Academic Article
Authors Betzel R, Puxeddu M, Seguin C, Bazinet V, Luppi A, Podschun A, Singleton S, Faskowitz J, Parakkattu V, Misic B, Markett S, Kuceyeski A, Parkes L
Journal Commun Biol
Volume 9
Issue 1
Date Published 02/28/2026
ISSN 2399-3642
Keywords Connectome, Brain, Models, Neurological, Nerve Net
Abstract The human brain is never at rest: its activity continuously fluctuates, transitioning between whole-brain patterns, or brain states. Network control theory provides a framework for quantifying the energy required to drive these transitions. A particularly relevant approach is optimal control, in which inputs steer the brain toward a target state. Traditionally, inputs are modeled as acting independently on individual network nodes. While convenient, this assumption neglects the spatial continuity of cerebral cortex: neighboring regions are anatomically/functionally coupled, allowing signals to spread. Moreover, brain stimulation techniques have limited spatial specificity, with effects extending beyond the stimulation site. Here, we adapt network control models to incorporate spatially extended inputs whose influence decays exponentially with distance from the input site. We show that this more realistic strategy exploits spatial dependencies in structural connectivity and activity, substantially reducing the energy required for brain state transitions. We identify near-optimal control strategies that reduce the number of inputs, in some cases by two orders of magnitude. This approximation yields network-wide maps of input site density that closely correspond to independent functional, metabolic, genetic, and neurochemical maps. Together, these findings provide an efficient and neurobiologically grounded framework for understanding optimal control of brain dynamics.
DOI 10.1038/s42003-026-09560-8
PubMed ID 41764296
PubMed Central ID PMC13066548
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