Effective Stimulus Propagation in Neural Circuits: Driver Node Selection
Journal:
arXiv
Published Date:
Jun 16, 2025
Abstract
Precise control of signal propagation in modular neural networks represents a
fundamental challenge in computational neuroscience. We establish a framework
for identifying optimal control nodes that maximize stimulus transmission
between weakly coupled neural populations. Using spiking stochastic block model
networks, we systematically compare driver node selection strategies -
including random sampling and topology-based centrality measures (degree,
betweenness, closeness, eigenvector, harmonic, and percolation centrality) - to
determine minimal control inputs for achieving inter-population
synchronization.
Targeted stimulation of just 10-20% of the most central neurons in the source
population significantly enhances spiking propagation fidelity compared to
random selection. This approach yields a 2.7-fold increase in signal transfer
efficiency at critical inter-module connection densities p_inter = 0.04-0.07.
These findings establish a theoretical foundation for precision neuromodulation
in biological neural systems and neurotechnology applications.